Abstract
Introduction:
Chronic pain (CP) is one of the most disabling conditions in the elderly and seems to be a risk factor for the development of Alzheimer’s disease and related dementias (ADRD). Only one study, using national administrative health databases, assessed and demonstrated that chronic pain (all types of pain) was a risk factor for dementia, but without assessing the impact of pain medications.
Method:
To assess the impact of all types of chronic pain and the long-term use of pain medications on the person-years incidence of ADRD, a retrospective nationwide healthcare administrative data study was performed using the national inter-regime health insurance information system (SNIIRAM) to the French national health data system (SNDS). Incident people >50 years old with chronic pain, defined by at least 6-months duration analgesics treatment or by a diagnosis/long-term illness of chronic pain between 2006 and 2010, were included. Chronic pain individuals were matched with non-CP individuals by a propensity score. Individuals were followed up from 9 to 13 years to identify occurrences of ADRD from 2006.
Results:
Among 64,496 French individuals, the incidence of ADRD was higher in the chronic pain population than control (1.13% vs. 0.95%, p <0.001). Chronic pain increases the risk of ADRD (HR = 1.23) and the incidence of ADRD was higher for women and increased significantly with age.
Discussion:
Our study highlights the importance of prevention, diagnosis, and management of chronic pain in elderly to reduce the risk of development and/or worsening of dementia.
Introduction
Alzheimer’s disease and related dementias (ADRD, including vascular dementia, Lewy body dementia, and frontotemporal disorders according to NIH definition) are responsible for approximately 80% of diagnosed dementia cases. In 2015, the number of people affected by dementia worldwide was estimated to be nearly 47 million, and this number is expected to rise to 75 million by 2030 and 131 million by 2050, due to the aging trend in the global population (World Health Organization, 2015). In 2019, the global economic burden of ADRD was estimated at $2.8 trillion. This burden is expected to increase to $4.7 trillion in 2030 and $16.9 trillion in 2050 (Nandi et al., 2022). The care of people with dementia also impacts several sectors of society, the social care and informal care sectors even more so than direct medical care (Wimo et al., 2013). Thus, ADRD should be considered a global public health priority (World Health Organization, 2015).
There is no cure for ADRD and current medical management only slows its progression. Non-pharmacological approaches are favored in an attempt to preserve the patient’s autonomy and cognitive functions, and to adapt the environment to the loss of autonomy and cognitive disorders (Zucchella et al., 2018). Physical activity has also been shown to delay the onset of dementia (Grasset et al., 2017). From the standpoint of pharmacological treatment, four specific ADRD drugs are mainly used (donepezil, galantamine, rivastigmine, memantine; Birks, 2006), but their medical service rendered deemed insufficient. This lack of effective treatment means that medical management is mainly based on prevention, and the identification and management of risk factors (Silva et al., 2019; Zhang et al., 2021).
Chronic pain was one of the top five causes of disability (GBD 2016 Disease and Injury Incidence and Prevalence Collaborators, 2017), especially in the elderly. This prevalence can be as high as 50% among community-dwelling seniors and as high as 80% among institutionalized people (Cravello et al., 2019). Chronic pain and ADRD share common risk factors, such as advanced age, genetic impairment, depressive disorders, diabetes, obesity, social isolation, and low level of education (Van Hecke et al., 2013; Armstrong, 2019). Moreover, alterations of the nervous system are common to both pathologies, such as abnormalities of the noradrenergic system (Hayashida and Obata, 2019), overactivation of microglia and central neuroinflammation (Salter and Stevens, 2017). Certain brain areas of the “pain matrix” (the amygdala, thalamus, prefrontal cortex and hippocampus), are also involved in the development of ADRD (Willis and Westlund, 1997). These data may explain why pain has been shown to be related to dementia or cognitive decline (Whitlock et al., 2017; Khalid et al., 2020; Kao et al., 2021; Rouch et al., 2021; Wang and Liu, 2021). Nevertheless, these studies did not assess all types of pain and/or related treatments and some lack power and representativeness.
To provide additional data, we propose a larger study using national administrative health databases and by specifically assessing the impact of all chronic pain on the incidence of ADRD, and explore the impact of the long-term use of pain medications.
Materials and methods
Regulatory and ethics
This study was approved by the “Centre d’épidémiologie sur les causes médicales de décès (CépiDc)–Institut national de la santé et de la recherche médicale (INSERM),” the French data protection authority (“Commission Nationale de l’Informatique et des Libertés”-CNIL), and by the local Ethics Committee (IRB00013412, “CHU de Clermont-Ferrand IRB #1,” IRB number 2022-CF039) with compliance to the French policy of personal data protection.
Data source
The data were obtained from the EGB (“Echantillon généraliste des Bénéficiaires”) databases created in 2005 and incorporating several databases such as reimbursements and consumption of care, hospitalizations and consultations in hospitals and specialized medical units, and long-term illness (LTI). The EGB databases represent 1/97th of the population covered by the French national health insurance system (~99% of the French population), i.e., about 700,000 individuals (Bezin et al., 2017).
Matching and control population
A control population (without chronic pain) and without dementia history or disorders, was generated by a 3:1 (3 controls for 1 chronic pain) propensity score matching a caliper of 0.005 (using the “PROC PSMATCH” procedure on the SAS Enterprise Guide software). The propensity score incorporated age, sex, comorbidity index [Charlson score, incorporating several chronic disease (Charlson et al., 1987) see Supplementary material for details], and inclusion date (called “index date” as start of follow-up identical to matching individual with chronic pain). The absence of chronic pain was determined by the absence of a diagnosis of chronic pain and the absence of continuity of analgesic treatment for more than 3 months (all analgesics combined).
Study population: chronic pain patient identification
A chronic pain condition was identified over the period 2006–2010 by the Anatomical Therapeutic Classification (ATC) code of recommended treatment for chronic pain (N02, M01, M02A, N03AX12, N03AX16, N06AA04, N06AA09, N06AX16, N06AX21, N01BB02, and N01BB52), with at least 6 months duration of continuous analgesic prescription (all analgesics combined), or by the medical diagnoses of chronic pain according to the International Classification of Disease (ICD-10-R521, R522, M797) or by the LTI for chronic pain (ICD-10 - R521, R522, R529, M00-M09, M10-M19, M255, M353, M40-M49, M50-M54, M79, M890, G43, and G442), as published previously (Chenaf et al., 2018; Delorme et al., 2021). To avoid chronic pain misidentification, patients with a history of mental health disorders (ICD-10 codes F00 to F99) or epilepsy (G40 and G41) were excluded from the analyzes since antidepressants or antiepileptic drugs, used as first and second line analgesics in chronic pain, are also commonly used in these neurological disorders. For code details, see Supplementary material. All individuals aged 50 years and older with chronic pain between 01/01/2006 and 12/31/2010 were included.
Chronic pain had to be incident (no diagnosis or 6-month continuous analgesic treatment before inclusion). The index date was defined as the date of chronic pain onset (diagnosis or end of the first 6-month continual period of analgesic treatment) starting the follow-up of individual. To avoid an immortality bias due to the 6-month period of analgesic treatment, control individuals who developed ADRD during the first 6 months of follow-up were excluded and replaced (matching was rerun until a ratio of 3 controls to 1 case was reached for all individuals analyzed).
Study population: ADRD patient identification
An ADRD condition was identified over the period 2006–2019 by the ATC code of recommended treatment for dementia (N06DA and N06DX) or medical diagnoses according to the ICD-10 or LTI for ADRD (F00, F01, F03, G30, G310, G311 and G319), as published previously (Rochoy et al., 2019b; Elyn et al., 2022). For code details, see Supplementary material. To confirm the presence of ADRD, individuals had to have at least two different dates of diagnosis, or two dispensations of anti-dementia treatment, or have a diagnosis associated with a dispensation of anti-dementia treatment. Diagnosis codes of “dementia with known cause” (F02), such as Parkinson’s disease and toxic dementias, were not considered related to ADRD and are analyzed as comorbidities. Finally, the duration of follow-up was distinguished in three cases:
-
(i). “Onset of ADRD” = the time between inclusion and onset of ADRD,
-
(ii). “Death” = the time between inclusion and death,
-
(iii). “No event” = the time between inclusion and last follow-up.
Assessment of exposure to pain medications
Pain medication exposure was assessed with dispensation claims recorded in the EGB database. All recommended treatments for chronic pain were considered during the study period. Exposure was described according to cumulative dose, combining both the duration of treatment and the somewhat variable daily dose, for each person, each molecule and each therapeutic class. The cumulative dose was computed during the study time window and converted it into a number of defined daily doses (DDDs) by dividing it by the average recommended daily dose for this product, as previously published by Billioti de Gage et al. (2014). Therefore, one DDD corresponded to an average one-day exposure. Exposure was ascertained up to 13 years follow-up (maximum duration of follow-up) before the onset of ADRD. Cumulative doses were categorized according to level of exposure (null = 0 DDD; mild: DDDs <180 days; moderate: DDDs ≥180 days and ≤ median distribution; and strong: DDDs > median distribution). The median distribution of each molecule and therapeutic class was calculated among people with DDDs ≥180 days. People without any claim for pain medications during the study time window served as references for the analyzes. Therapeutic classes corresponded to “NSAIDs”(M01A), “analgesics” (N02B), “antirheumatic”(M01B and M01C), “antiepileptics” (N03AX12 and N03AX16), “Serotonin-Norepinephrine Reuptake Inhibitors - SNRI”(N06AX16 and N06AX21), “TriCyclicAntidepressant - TCA”(N06AA04 and N06AA09), “triptan” (N02C) and “opioids”(N02A). Treatments used topically and only in medical settings were not included in this analysis.
Statistics
After case identification and characterization (gender, year of chronic pain onset, age at onset, and Charlson score at onset), controls were selected using 3 nearest neighbor propensity score matching. The propensity score was computed using logistic regression with the group (case / control) as dependent variable, and gender, index date, age and Charlson score as independent variables. Groups were described after matching using frequency and associated percentage for categorical data and mean ± standard deviation, median, interquartile range and minimum-maximum for continuous data (Table 1). The person time incidence rate of ADRD (number of patients developing ADRD / follow-up time) is presented by groups (cases vs. controls) according to gender and age category in Table 2. To take into account the heterogeneity of follow-up durations, we analyzed ADRD onset using survival methods. The event of interest was defined as the onset of ADRD. Because of the advanced age of our study population and thus the significant risk of death, the latter was considered as a competitive event. Time to event was computed as the time from index date to event or latest follow-up (censor). Survival curves were plotted using the Kaplan–Meier method for crude survival (death), cumulative incidence (ADRD + death), and development of ADRD with death as a competing risk (as defined by Fine and Gray; Fine and Gray, 1999). In the univariate analysis, Log-rank and Gray’s tests were used to compare survival curves between chronic pain and control populations. In the multivariable analysis, an adjusted Fine and Gray regression model was performed to assess the risk of ADRD development (with death as competing event), adjusted on factors that were selected upon their clinical relevance and their statistical significance in univariate analysis. Moreover, collinearity between covariate candidates was carried out and in the case of high collinearity, a clinically driven decision was made to choose the covariate to be kept in univariate and multivariable models. This was the case in our study for opioid and NSAID consumption. Thus, only age, sex, hypertension, diabetes, hyperlipidemia, depression, stroke, head injury, Parkinson’s disease, epilepsy, dementia with known cause, and benzodiazepines use were selected for adjustment in the multivariable model. The main factor of interest (chronic pain) was also adjusted, considering groups (chronic pain vs. controls) that were matched using propensity score (see above).
Table 1
| Chronic pain N = 13,596 | Control N = 40,788 | |
|---|---|---|
| Follow-up (years) | ||
| Mean ± SD (min-max) | 9.2 ± 3.4 (0.08–13.9) | 9.5 ± 3.5 (0.08–13.9) |
| Median (Q1-Q3) | 10.2 (7.8–12.2) | 10.2 (9.1–12.2) |
| Age (years); Mean ± SD (min-max) | 65.6 ± 10.7 (50–102) | 65.6 ± 10.7 (50–102) |
| Age groups (n, %) | ||
| 50–59 years | 4,964 (36.5) | 14,892 (36.5) |
| 60–69 years | 3,731 (27.4) | 11,193 (27.4) |
| 70–79 years | 3,221 (23.7) | 9,663 (23.7) |
| 80–89 years | 1,494 (11.0) | 4,482 (11.0) |
| ≥ 90 years | 186 (1.4) | 558 (1.4) |
| Female sex (n, %) | 8,386 (61.7) | 25,158 (61.7) |
| Comorbidities (n, %) | ||
| Vascular and cerebrovascular diseases | 623 (4.6) | 1,793 (4.4) |
| Cardiac disorders | 502 (3.7) | 1,378 (3.4) |
| Cancers | 1,053 (7.7) | 3,832 (9.4) |
| Diabetes | 570 (4.2) | 930 (2.3) |
| Kidney diseases | 92 (0.7) | 225 (0.6) |
| Chronic lung diseases | 465 (3.4) | 994 (2.4) |
| Paraplegia and hemiplegia | 99 (0.7) | 239 (0.6) |
| Liver diseases | 138 (1.0) | 534 (1.3) |
| Connective tissue or rheumatic diseases | 36 (0.3) | 80 (0.2) |
| Peptic ulcers | 65 (0.5) | 196 (0.5) |
| HIV | 7 (0.1) | 48 (0.1) |
Characteristics of chronic pain and control populations.
Table 2
| Male | Female | |||||||
|---|---|---|---|---|---|---|---|---|
| Chronic pain | Control | Chronic pain | Control | |||||
| n | Incidence* | n | Incidence | n | Incidence | n | Incidence | |
| All | 5,210 | 9.2 | 15,630 | 7.2 | 8,386 | 12.5 | 25,158 | 10.9 |
| 50–54 | 913 | 1.6 | 2,739 | 0.7 | 1,411 | 2.2 | 4,233 | 0.9 |
| 55–59 | 1,092 | 2.6 | 3,276 | 1.2 | 1,548 | 2.8 | 4,644 | 1.4 |
| 60–64 | 804 | 4.8 | 2,412 | 2.3 | 1,258 | 5.1 | 3,774 | 3.0 |
| 65–69 | 709 | 8.0 | 2,127 | 5.2 | 960 | 9.4 | 2,880 | 6.3 |
| 70–74 | 679 | 13.4 | 2,037 | 14.0 | 1,070 | 17.3 | 3,210 | 16.2 |
| 75–79 | 498 | 26.2 | 1,494 | 21.3 | 974 | 28.2 | 2,922 | 30.4 |
| 80–84 | 322 | 40.1 | 966 | 31.9 | 676 | 43.8 | 2,028 | 42.9 |
| 85–89 | 152 | 54.2 | 456 | 43.4 | 344 | 59.4 | 1,032 | 47.9 |
| 90+ | 41 | 76.9 | 123 | 22.4 | 145 | 54.8 | 435 | 37.7 |
Alzheimer’s disease and related dementia incidence rates by age and sex.
*Incidence per 1,000 person-years.
An univariate exploratory analysis of the presence of ADRD (regardless of the delay of onset) in the subgroup of chronic pain patients, taking into account the time of exposure to the different pain medications (according to molecules, therapeutic classes, and the DDDs), was performed to quantify the relationship between ADRD and medication exposure. This analysis was carried out only for exposures to each molecule/therapeutic class with a minimum of 400 individuals, as recommended for odds ratio calculations(Bewick et al., 2005).
The results are shown by frequency, associated percentage and odds ratio with their 95% confidence interval computed in univariate logistic regression (risk of ADRD according to exposure level). Statistics were computed using the SAS software. Tests were two-tailed and a p value <0.05 was considered statistically significant.
Results
Characteristics of study population
During the inclusion period (2006–2010), 15,136 individuals over 50 years old and with chronic pain were identified. After matching, 13,596 chronic pain and 40,788 control individuals were analyzed. As expected from the matching procedure, cases and controls were comparable in terms of age (66 years), sex (62% female), and Charlson score (0.4). Chronic pain and control individuals had a median follow-up time of 10.2 years. For the two groups and with similar proportions, the most common comorbidities were cancer, cerebrovascular disease, heart disease, and diabetes (Table 1). The vast majority of people with chronic pain were undergoing therapeutic management of their pain (94%), but the precise etiology of the chronic pain was not known in 82% of cases. Therapeutic pain management included non-opioid analgesics (~85%, mainly paracetamol), opioids (64%, mainly dextropropoxyphene), and anti-inflammatory drugs (topical and oral, 58 and 74% respectively; Table 3).
Table 3
| Chronic Pain group (n = 13,596) | |
|---|---|
| Types of chronic pain (n, %) | |
| Neuropathic pain | 538 (4.0) |
| Joint/rheumatic pain and arthropathy/spondylopathy | 1,055 (7.8) |
| Back pain/Dorsopathy | 944 (6.9) |
| Migraine/headache | 4 (0.03) |
| Others pain | 214 (1.6) |
| Unknown | 11,197 (82.4) |
| Prescribed pain medications (n, %) | |
| Opioids | 8,725 (64.2) |
| Morphine | 835 (6.1) |
| Opium | 0 |
| Oxycodone | 472 (3.5) |
| Tramadol | 5,779 (42.5) |
| Codeine | 3,478 (25.6) |
| Fentanyl | 680 (5.0) |
| Others | 5,079 (37.4) |
| Non-opioids analgesics (mainly paracetamol) | 11,513 (84.7) |
| Triptans | 695 (5.1) |
| Anti-inflammatory creams | 7,814 (57.5) |
| Oral anti-inflammatory (NSAIDs) | 10,030 (73.8) |
| Antiepileptics | 2,062 (15.2) |
| Gabapentin | 602 (4.4) |
| Pregabalin | 1,758 (12.9) |
| Antidepressants | 2,761 (20.3) |
| TCAs | 1,248 (9.2) |
| SNRIs | 1,915 (14.1) |
| Anesthetics (lidocaine) | 2,720 (20.0) |
| No prescribed drug treatment | 839 (6.2) |
Characteristics of chronic pain and pain medications.
Alzheimer’s disease and related dementia incidence
Survival analyzes with the Kaplan–Meier method showed that the death rate was greater (p < 0.001) in the chronic pain group [2,777 (20.4%)] than the control group [5,644 (13.8%)]. The same result was observed for the ADRD rate (and ADRD + deaths; Figure 1).
Figure 1

Cumulative incidence of Alzheimer’s disease and related dementias according to the presence of chronic pain. The incidence was calculated using the Fine and Gray method with lost of follow-up as censored and death as competitive risk. Blue: Chronic pain group and Red: Control group.
Therefore, Kaplan–Meier survival curves (univariate analysis), according to the Fine and Gray model with death as competing factor, were obtained (Figure 2). Among people with chronic pain, 1,416 (10.4%) developed ADRD with a median time to onset of 3.8 years (1.6–7.2), for a median age of onset of ADRD at 81 years, and an incidence rate of 11.3 cases per 1,000 patient-years. In control people, 3,692 (9.1%) developed dementia with a median time to onset of 4.1 years (2.1–6.8), with a median age at onset of ADRD at 82 years. The comparison of incidence between groups showed that control people had a lower incidence rate than people with chronic pain, with 9.5 cases per 1,000 patient-years (Gray’s test 18.67 and p < 0.0001). The analysis of ADRD onset in survival analysis, taking death as competing event, showed that people with chronic pain are at greater risk of ADRD onset (Gray’s test p < 0.0001).
Figure 2

Multivariable analyze of the association between chronic pain and the risk of Alzheimer’s disease and related dementias. Only factors significantly related to the presence of ADRD in the univariate analysis are shown. HR, Hazard Ratio; LCL, Lower Confidence Limit; UCL, Upper Confidence Limit.
Sensitivity analysis showed that the incidence of ADRD was higher for women (12.5 cases per 1,000 person-years vs. 9.2 cases for men) and increased significantly with age (50–59 year-olds, 1.6–2.2 cases per 1,000 person-years, +90 year-olds: 54.8–76.9 cases per 1,000 person-years, and according to sex; Table 2).
Chronic pain as a risk factor for developing Alzheimer’s disease and related dementia
Univariate analysis of confounding factors related to the development of ADRD showed that chronic pain increased the risk of developing ADRD [HR = 1.15 (1.08–1.22), p < 0.0001]. The same observation was made for confounders, such as Parkinson’s disease, dementia with known cause, stroke, benzodiazepine use, head injury, female sex and hypertension. In contrast, cancer, lung disease, and hyperlipidemia were protective against the development of ADRD (Figure 3). All of these confounders were therefore used for the adjusted model. Diabetes, depression, and epilepsy had no effect on the incidence of ADRD.
Figure 3

Cumulative incidence of Alzheimer’s disease and related dementias and/or death according to the presence of chronic pain. The incidence was calculated using the Kaplan Meier method. (A) Cumulative incidence of Alzheimer’s disease and related dementias with lost of follow-up and death as censored; (B) Cumulative incidence of deaths with lost of follow-up as censored; (C) Cumulative incidence of Alzheimer’s disease and related dementias and deaths with lost of follow-up as censored. Blue: Chronic pain group and Red: Control group.
Multivariable analysis confirmed the previous results with an HR of 1.23 [1.15–1.32] of developing ADRD for the chronic pain group (Figure 4).
Figure 4

Univariate analyze of the association between chronic pain and the risk of Alzheimer’s disease and related dementias. HR, Hazard Ratio; LCL, Lower Confidence Limit; UCL, Upper Confidence Limit.
Exploratory analyzes
Exploratory analyzes were performed to assess the relationship between exposure to classes of pain medications [NSAIDs, opioids, non-opioids (mainly paracetamol), antiepileptics, tricyclic antidepressants, serotonin and noradrenaline reuptake inhibitors, and anti-rheumatic] and the presence of ADRD. The analysis of DDDs showed that only the use of NSAIDs was correlated with a lower presence of ADRD and depended on the duration of exposure [mild exposure = OR 0.93, 95%CI (0.82–1.05); moderate exposure = OR 0.67, 95%CI (0.54–0.85); and strong exposure = OR 0.72, 95%CI (0.58–0.89)]. In contrast, only the use of non-opioid analgesics and opioids was correlated with a more frequent occurrence of ADRD, depending on the duration of exposure [non-opioid analgesics: mild exposure = OR 1.76, 95%CI (1.39–2.23); moderate exposure = OR 2.54, 95%CI (2.00–3.24); and strong exposure = OR 2.83, 95%CI (2.23–3.60); opioids: mild exposure = OR 1.10, 95%CI (0.97–1.24); moderate exposure = OR 1.21, 95%CI (1.00–1.47); and strong exposure = OR 1.24, 95%CI (1.02–1.49)]. Looking at all analgesic treatments, only continuous analgesic use over a 24-month period seems to be linked to the presence of ADRD [OR 1.23, 95%CI (1.10–1.38)] (Table 4). No relationship was found between the presence of ADRD and exposure to other therapeutic classes.
Table 4
| ADRD | Odd Ratio OR [95%CI] | Value of p | |||
|---|---|---|---|---|---|
| NO (n = 12,180) | YES (n = 1,416) | ||||
| NSAIDs–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 3,842 | 493 | REF | REF |
| Frequency (%) | 31,5 | 34,8 | |||
| <3 DDDs | N | 6,064 | 720 | 0.93 [0.82–1.05] | 0.210 |
| Frequency (%) | 49,8 | 50,8 | |||
| ≥3 and < = 12 DDDs** | N | 1,123 | 97 | 0.67 [0.54–0.85] | 0.0007 |
| Frequency (%) | 9,2 | 6,9 | |||
| > 12 DDDs | N | 1,151 | 106 | 0.72 [0.58–0.89] | 0.0031 |
| Frequency (%) | 9,4 | 7,5 | |||
| OPIOIDS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 5,098 | 549 | REF | REF |
| Frequency (%) | 41,9 | 38,8 | |||
| <3 DDDs | N | 4,713 | 551 | 1.10 [0.97–1.24] | 0.153 |
| Frequency (%) | 38,7 | 38,9 | |||
| ≥3 and < = 15 DDDs | N | 1,155 | 150 | 1.21 [1.00–1.47] | 0.050 |
| Frequency (%) | 9,5 | 10,6 | |||
| > 15 DDDs | N | 1,214 | 166 | 1.24 [1.02–1.49] | 0.029 |
| Frequency (%) | 10,0 | 11,7 | |||
| NON-OPIOIDS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 1,535 | 86 | REF | REF |
| Frequency (%) | 12,6 | 6,1 | |||
| <3 DDDs | N | 5,245 | 518 | 1.76 [1.39–2.23] | <0.0001 |
| Frequency (%) | 43,1 | 36,6 | |||
| ≥3 and < = 18 DDDs | N | 2,718 | 387 | 2.54 [2.00–3.24] | <0.0001 |
| Frequency (%) | 22,3 | 27,3 | |||
| > 18 DDDs | N | 2,682 | 425 | 2.83 [2.23–3.60] | <0.0001 |
| Frequency (%) | 22,0 | 30,0 | |||
| ANTI-RHEUMATIC–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 8,807 | 989 | REF | REF |
| Frequency (%) | 72,3 | 69,8 | |||
| <3 DDDs | N | 1,506 | 192 | 1.11 [0.94–1.30] | 0.21 |
| Frequency (%) | 12,4 | 13,6 | |||
| ≥3 and < = 16 DDDs | N | 920 | 118 | 1.11 [0.91–1.36] | 0.32 |
| Frequency (%) | 7,6 | 8,3 | |||
| > 16 DDDs | N | 947 | 117 | 1.07 [0.88–1.31] | 0.55 |
| Frequency (%) | 7,8 | 8,3 | |||
| TRICYCLIC ANTIDEPRESSANTS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 11,060 | 1,288 | REF | REF |
| Frequency (%) | 90,8 | 91,0 | |||
| <3 DDDs | N | 918 | 107 | 1.02 [0.83–1.26] | 0.91 |
| Frequency (%) | 7,5 | 7,6 | |||
| ≥3 and < = 15 DDDs | N | 95 | 15 | NA* | NA |
| Frequency (%) | 0,8 | 1,1 | |||
| > 15 DDDs | N | 107 | 6 | NA | NA |
| Frequency (%) | 0,9 | 0,4 | |||
| ANTIEPILEPTICS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 10,349 | 1,185 | REF | REF |
| Frequency (%) | 85,0 | 83,7 | |||
| <3 DDDs | N | 1,269 | 163 | 1.12 [0.94–1.33] | 0.22 |
| Frequency (%) | 10,4 | 11,5 | |||
| ≥3 and < = 15 DDDs | N | 275 | 38 | NA | NA |
| Frequency (%) | 2,3 | 2,7 | |||
| > 15 DDDs | N | 287 | 30 | NA | NA |
| Frequency (%) | 2,4 | 2,1 | |||
| SNRI ANTIDEPRESSANTS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 12,031 | 1,403 | REF | REF |
| Frequency (%) | 98,8 | 99,1 | |||
| <3 DDDs | N | 52 | 9 | NA | NA |
| Frequency (%) | 0,4 | 0,6 | |||
| ≥3 and < = 22 DDDs | N | 48 | 3 | NA | NA |
| Frequency (%) | 0,4 | 0,2 | |||
| > 22 DDDs | N | 49 | 1 | NA | NA |
| Frequency (%) | 0,4 | 0,1 | |||
| ALL PAIN MEDICATIONS–Defined daily dose DDD (months) | |||||
| 0 DDD | N | 925 | 42 | REF | REF |
| Frequency (%) | 7.6 | 3.0 | |||
| <3 DDDs | N | 2,470 | 265 | 0.91 [0.79; 1.05] | 0.17 |
| Frequency (%) | 20.3 | 18.7 | |||
| ≥3 and < = 24 DDDs | N | 4,384 | 528 | 1.06 [0.95; 1.19] | 0.35 |
| Frequency (%) | 36.0 | 37.3 | |||
| > 24 DDDs | N | 4,401 | 581 | 1.23 [1.10; 1.38] | 0.0003 |
| Frequency (%) | 36.1 | 41.0 | |||
Assessment of relationships between the therapeutic classes of pain medications exposures and development of Alzheimer’s disease and related dementias.
*NA; not applicable, minimum size not reached for odd ratio analysis. **Median of the distribution of DDDs in individuals with a DDD ≥ 3 months.
Bold value means statistically significant.
A second analysis was also carried out according to exposure to different analgesic molecules (see Supplementary material; Supplementary Table S1 for details). Nevertheless, the low rate of patients receiving certain drugs did not allow us to interpret reliably this results for all pain medications, only paracetamol and dextropropoxyphene widely prescribed were interpreted. We observed that paracetamol (OR from 1.75 to 2.80 according to exposure) and dextropropoxyphene (OR from 1.29 to 1.90 according to exposure) were correlated with the presence of ADRD and dependent on exposure time (Table 5). Nevertheless, these results are only exploratory and need to be confirmed by a dedicated study on more patients.
Table 5
| Pain medications | Defined daily dose DDD (months) | Non-ADRD group n = 12,180 n (%) | ADRD group n = 1,416 n (%) | Odd Ratio OR [95%CI] | Value of p |
|---|---|---|---|---|---|
| Paracetamol | 0 DDD | 3,842 (31.5) | 493 (34.8) | REF | REF |
| <3 DDDs | 6,064 (49.8) | 720 (50.8) | 1.75 [1.38–2.21] | <0.0001 | |
| ≥3 and < = 18 DDDs* | 1,123 (9.2) | 97 (6.8) | 2.51 [1.97–3.19] | <0.0001 | |
| > 18 DDDs | 1,151 (9.4) | 106 (7.5) | 2.80 [2.20–3.55] | <0.0001 | |
| Dextropropoxyphene | 0 DDD | 1,535 (12.6) | 86 (6.1) | REF | REF |
| <3 DDDs | 5,245 (43.1) | 518 (36.6) | 1.28 [1.14–1.45] | <0.0001 | |
| ≥3 and < = 12 DDDs** | 2,718 (22.3) | 387 (27.3) | 1.45 [1.12–1.89] | 0.0051 | |
| > 12 DDDs | 2,682 (22.0) | 425 (30.0) | 1.90 [1.49–2.41] | <0.0001 |
Impact of the exposure of paracetamol and dextropropoxyphene on the presence of Alzheimer’s disease and related dementias.
*Median of the distribution of DDDs in individuals with a DDD ≥ 3 months.
Bold value means statistically significant.
Discussion
This retrospective study using administrative data examined the influence of chronic pain on the incidence of ADRD and provides recent data that are complementary to those in the literature. Our results showed that the presence of chronic pain is associated with a higher incidence and risk of developing ADRD when compared with older adults with no chronic pain. When exploring separately the different pain medications, a greater risk with long-term use of opioids and paracetamol was observed for developing ADRD. Although several cross-sectional/cohort studies reported association between chronic pain and ADRD (Whitlock et al., 2017; Khalid et al., 2020; Van der Leeuw et al., 2020; Kao et al., 2021; Rouch et al., 2021; Wang and Liu, 2021), only 2 studies assessed this relationship using national administrative health databases, but which not assess impact of pain medications. First one, the study by Kao et al. (2021) showed that patients with chronic pain had a higher risk of dementia than those without chronic pain [adjusted hazard ratio (AHR): 1.21; 95% confidence interval (CI): 1.15–1.26]. Second, the study by Khalid et al. (2020) showed that chronic pain was associated with incident ADRD [adjusted odds ratio (AOR) for any vs. no chronic pain = 1.21, 95% confidence interval (CI) = 1.04–1.40]. These results are similar to those in our study which confirms that chronic pain is a risk factor for the development of an ADRD.
Our results concerning the characteristics of people with chronic pain showed a higher comorbidity score than control at the end of the follow-up, consistent with the burden of chronic pain (Breivik et al., 2013; Cohen et al., 2021), and had similar characteristics in line with the few previous epidemiological studies assessing chronic pain (Bouhassira et al., 2008; Rapo-Pylkkö et al., 2016; Foley et al., 2021; Kerckhove et al., 2022). Similarly, ADRD individuals had characteristics found in the literature (Bauer et al., 2014; Eshetie et al., 2019). It should be noted that we find a higher mortality rate in individuals suffering from chronic pain, as previously demonstrated (Holmberg et al., 2020). Thus, in terms of external validity, our study populations can be considered representative of people with chronic pain or ADRD.
An important point concerns the confounding factors associated with chronic pain that impact cognition, such as depression, analgesic and psychotropic medications, and comorbidities. Previous literature has suggested that a number of factors are thought to influence the association between cognition and chronic pain, such as age, gender, depression, and benzodiazepine or opioid use (Armstrong, 2019). Our analysis took these different covariates into account, revealing that chronic pain per se was related to the development of ADRD, independent of these variables. Nevertheless, our study did not find certain risk factors for the development of ADRD previously described in the literature, such as diabetes (Kalaria, 2009; Ahtiluoto et al., 2010; Burillo et al., 2021) and depression (Byers and Yaffe, 2011). These differences in results may be explained by the different methodologies and populations used in the studies. In addition, the health care systems of the countries where these studies were conducted differ, with different prevention and care policies that may influence the weight of certain risk factors.
Although our study was not designed to demonstrate causality, many hypotheses have been advanced to explain potential mechanisms by which chronic pain may interfere with cognition. The characteristics of cognitive dysfunction associated with chronic pain have been described as a decrease in attention span and impaired memory function (Dick and Rashiq, 2007). The cognitive decline associated with chronic pain is consistent with brain imaging findings that reveal an overlap between frontal regions involved in pain modulation and cognitive function (Bushnell et al., 2013), and more broadly with the pain matrix, with a possible reversible effect after pain treatment (Seminowicz et al., 2011). In the literature, chronic pain has been shown to promote detrimental neurostructural and neurofunctional changes. For example, neuroimaging has demonstrated neurodegenerative changes in chronic pain subjects identical to those observed in ADRD (Cao et al., 2019), including a reduction in gray matter volume in the amygdala, hippocampus, and frontal cortices, brain regions integrally involved in cognitive and behavioral functioning (Malfliet et al., 2017). Similarly, chronic pain may contribute to these neurodegenerative changes by promoting neuroinflammation (Calsolaro and Edison, 2016), such as microglial, also involved in the pathogenesis of Alzheimer’s disease through the production of beta-amyloid plaques and neurofibrillary tangles (Cao et al., 2019). Neuroinflammation also affects neuroplasticity and synaptic performance through the reduction of brain-derived neurotrophic factors (Malfliet et al., 2017).
Finally, concerning pain medications exposure, NSAIDs have been shown to be correlated with a lower presence of ADRD. In contrast, non-opioid analgesics (mainly paracetamol) and opioids were associated with a greater presence of ADRD. These results are consistent with those previously published, showing a protective effect of NSAIDs against dementia (Szekely et al., 2008). Likewise for paracetamol (Jones, 2014) and opioids (Dublin et al., 2015), which were shown to be risk factors for the development of dementia. Unfortunately, our results are only exploratory, the low prescription rate of several drugs did not allow us to assess precisely and reliably the correlation with the presence of ADRD for each pain medication. The existing literature demonstrates that there are other risks associated with opioid use in the elderly, but the data available to date do not suggest that opioid use causes substantial long-term cognitive damage. Regarding paracetamol, our results should be taken with caution. To date, there is no reliable study showing a link between paracetamol consumption and the development of cognitive disorders (Jones, 2014). Moreover, the difficulty in separating the effect of pain from the effect of its treatment makes the interpretation of such exploratory results even more complicated. A specific study on a larger number of patients and using an adequate methodology is necessary to answer these issues.
Limitations
First, the identification of people suffering from chronic pain can only be done by medical diagnosis, LTI or the presence of a continuity of pain medications. This implies that individuals who have not been diagnosed for their chronic pain and who are not treated by reimbursed painkillers are not identified, with a potential underestimation of chronic pain patients. Second limitation is the reliability of the data reported in the administrative databases, with risks of error or non-coding of some pathologies or the care received. This is the case for chronic pain (Lacasse et al., 2020) and ADRD (Carcaillon-Bentata et al., 2016), leading to the potential underestimation of theses pathologies. Nevertheless, the algorithms used to identify chronic pain and ADRD individuals seemed reliable. Indeed, in a previous study (Chenaf et al., 2018) the algorithm used for identifying chronic pain showed a prevalence of chronic pain in France similar to that found in a large French national cohort study (Bouhassira et al., 2008), indirectly validating the algorithm. Concerning the algorithm of identification of ADRD, it has been validated and published previously (Rochoy et al., 2019a; Elyn et al., 2022). Finally, the most important limitation was the time between the identification of chronic pain (index date) and the diagnosis of ADRD. In a similar study of Billioti de Gage et al. (2014) the minimal delay used before dementia onset was 5 years. In our study, the average time from identification of chronic pain to diagnosis of ADRD was approximately 4 years. However, because of a lack of power (not enough patients with a minimum of 5 years between chronic pain and ADRD), we did not impose a delay between the index date and the diagnosis of ADRD. This lack of patients is explained by the advanced age of our population at inclusion (65 years), leaving little time for the onset of ADRD. Moreover, as the EGB database only had data available from 2005 onwards, the follow-up time was too limited to include younger patients and to allow the appearance of ADRD. This limitation raises the question of follow-up bias. Indeed, it is possible that individuals with chronic pain have a more optimal medical follow-up than individuals without chronic pain, and indirectly have an earlier detection of dementia disorders and therefore an earlier diagnosis. However, this follow-up bias needs to be modulated, as control individuals, like those with chronic pain, have similar comorbidities, some of which require extensive medical follow-up. These limitations raises questions about the real impact of chronic pain on the incidence of ADRD. Moreover, certain mechanisms involved in pathological central nervous system aging toward ADRD start very early even before the mild cognitive impairment stages (Jack et al., 2010; Bateman et al., 2012). Moreover, the delay in diagnosis is estimated to be between 2 and 5 years after the onset of symptoms, with more than two-thirds of diagnoses already in moderate to severe stages (Löppönen et al., 2003). Thus, we can hypothesize that chronic pain could be considered as a risk factor, but not the direct cause, of a neurodegenerative pathology and its clinical revelation. Also, symptoms of chronic pain may be a prodromal of ADRD. These questions remain complex and difficult to answer. A larger study, including a minimum delay of 5 years between chronic pain and the diagnosis of ADRD, should be conducted to confirm our results.
In conclusion, our results suggest that chronic pain is a risk factor for the development of an ADRD independently of various confounders. Combined with the fact that chronic pain can lead to decreased mobility, interfere with daily activities, and increase the risk of falls and additional injuries, our study reinforces the importance of prevention, diagnosis, and management of chronic pain with adapted pharmacological and non-pharmacological strategies to limit resulting comorbidities, such as dementias and Alzheimer’s disease. This is especially important in the elderly, who may have difficulty expressing their pain and are at greater risk of developing dementias. Nevertheless, further studies are needed to clarify the pathophysiological mechanisms involved in relationship between chronic pain, long-term use of pain medications and dementia (Cao et al., 2019).
Statements
Data availability statement
The datasets presented in this article are not readily available because French law prohibits the authors from directly sharing the data used for this study, but access can be requested directly from SNDS (website: https://www.health-data-hub.fr).
Ethics statement
The studies involving humans were approved by IRB00013412, “CHU de Clermont-Ferrand IRB #1,” IRB number 2022-CF039. The studies were conducted in accordance with the local legislation and institutional requirements. Written informed consent for participation was not required from the participants or the participants’ legal guardians/next of kin in accordance with the national legislation and institutional requirements.
Author contributions
NK, NB, AM, and CB contributed to conception and design of the study. NB and AM organized the database and performed the statistical analysis. NB wrote the first draft of the manuscript. NK, AM, and NB wrote sections of the manuscript. All authors contributed to the article and approved the submitted version.
Acknowledgments
The authors would like to thank the Caisse Nationale d’Assurance Maladie–CNAM for data accessibility and ReDSiam network for the algorithms. The authors would like to thank Keith Hudson (AccentEurope, Ecully, France) for proofreading.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Supplementary material
The Supplementary material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fnagi.2023.1193108/full#supplementary-material
References
1
Ahtiluoto S. Polvikoski T. Peltonen M. Solomon A. Tuomilehto J. Winblad B. et al . (2010). Diabetes, Alzheimer disease, and vascular dementia: a population-based neuropathologic study. Neurology75, 1195–1202. doi: 10.1212/WNL.0b013e3181f4d7f8
2
Armstrong R. A. (2019). Risk factors for Alzheimer’s disease. Folia Neuropathol.57, 87–105. doi: 10.5114/fn.2019.85929
3
Bateman R. J. Xiong C. Benzinger T. L. S. Fagan A. M. Goate A. Fox N. C. et al . (2012). Clinical and biomarker changes in dominantly inherited Alzheimer’s disease. N. Engl. J. Med.367, 795–804. doi: 10.1056/NEJMoa1202753
4
Bauer K. Schwarzkopf L. Graessel E. Holle R. (2014). A claims data-based comparison of comorbidity in individuals with and without dementia. BMC Geriatr.14:10. doi: 10.1186/1471-2318-14-10
5
Bewick V. Cheek L. Ball J. (2005). Statistics review 14: logistic regression. Crit. Care9, 112–118. doi: 10.1186/cc3045
6
Bezin J. Duong M. Lassalle R. Droz C. Pariente A. Blin P. et al . (2017). The national healthcare system claims databases in France, SNIIRAM and EGB: powerful tools for pharmacoepidemiology. Pharmacoepidemiol. Drug Saf.26, 954–962. doi: 10.1002/pds.4233
7
Billioti de Gage S. Moride Y. Ducruet T. Kurth T. Verdoux H. Tournier M. et al . (2014). Benzodiazepine use and risk of Alzheimer’s disease: case-control study. BMJ349:g5205. doi: 10.1136/bmj.g5205
8
Birks J. S. (2006). Cholinesterase inhibitors for Alzheimer’s disease. Cochrane Database Syst. Rev.2006:CD005593. doi: 10.1002/14651858.CD005593
9
Bouhassira D. Lantéri-Minet M. Attal N. Laurent B. Touboul C. (2008). Prevalence of chronic pain with neuropathic characteristics in the general population. Pain136, 380–387. doi: 10.1016/j.pain.2007.08.013
10
Breivik H. Eisenberg E. O’Brien T. (2013). The individual and societal burden of chronic pain in Europe: the case for strategic prioritisation and action to improve knowledge and availability of appropriate care. BMC Public Health13:1229. doi: 10.1186/1471-2458-13-1229
11
Burillo J. Marqués P. Jiménez B. González-Blanco C. Benito M. Guillén C. (2021). Insulin resistance and diabetes mellitus in Alzheimer’s disease. Cells10:1236. doi: 10.3390/cells10051236
12
Bushnell M. C. Ceko M. Low L. A. (2013). Cognitive and emotional control of pain and its disruption in chronic pain. Nat. Rev. Neurosci.14, 502–511. doi: 10.1038/nrn3516
13
Byers A. L. Yaffe K. (2011). Depression and risk of developing dementia. Nat. Rev. Neurol.7, 323–331. doi: 10.1038/nrneurol.2011.60
14
Calsolaro V. Edison P. (2016). Neuroinflammation in Alzheimer’s disease: current evidence and future directions. Alzheimers Dement.12, 719–732. doi: 10.1016/j.jalz.2016.02.010
15
Cao S. Fisher D. W. Yu T. Dong H. (2019). The link between chronic pain and Alzheimer’s disease. J. Neuroinflammation16:204. doi: 10.1186/s12974-019-1608-z
16
Carcaillon-Bentata L. Quintin C. Moutengou É. Boussac-Zarebska M. Moisan F. Ha C. et al . (2016). Is it possible to estimate the prevalence of Alzheimer’s disease and dementia from national health insurance databases in France? Comparison with data from population-based cohort studies. Bull Epidémiol Hebd.1, 459–467.
17
Charlson M. E. Pompei P. Ales K. L. MacKenzie C. R. (1987). A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J. Chronic Dis.40, 373–383. doi: 10.1016/0021-9681(87)90171-8
18
Chenaf C. Delorme J. Delage N. Ardid D. Eschalier A. Authier N. (2018). Prevalence of chronic pain with or without neuropathic characteristics in France using the capture-recapture method: a population-based study. Pain159, 2394–2402. doi: 10.1097/j.pain.0000000000001347
19
Cohen S. P. Vase L. Hooten W. M. (2021). Chronic pain: an update on burden, best practices, and new advances. Lancet397, 2082–2097. doi: 10.1016/S0140-6736(21)00393-7
20
Cravello L. Di Santo S. Varrassi G. Benincasa D. Marchettini P. de Tommaso M. et al . (2019). Chronic pain in the elderly with cognitive decline: a narrative review. Pain Ther.8, 53–65. doi: 10.1007/s40122-019-0111-7
21
Delorme J. Bertin C. Delage N. Eschalier A. Ardid D. Authier N. et al . (2021). Prevalence of chronic pain in opioid-maintained patients using the capture-recapture method: a nationwide population-based study. Pain162, 195–202. doi: 10.1097/j.pain.0000000000002011
22
Dick B. D. Rashiq S. (2007). Disruption of attention and working memory traces in individuals with chronic pain. Anesth. Analg.104, 1223–1229. doi: 10.1213/01.ane.0000263280.49786.f5
23
Dublin S. Walker R. L. Gray S. L. Hubbard R. A. Anderson M. L. Yu O. et al . (2015). Prescription opioids and risk of dementia or cognitive decline: a prospective cohort study. J. Am. Geriatr. Soc.63, 1519–1526. doi: 10.1111/jgs.13562
24
Elyn A. Gardette V. Renoux A. Sourdet S. Nourhashemi F. Sanou B. et al . (2022). Potential determinants of unfavourable healthcare utilisation trajectories during the last year of life of people with incident Alzheimer disease or related syndromes: a nationwide cohort study using administrative data. Age Ageing51:afac053. doi: 10.1093/ageing/afac053
25
Eshetie T. C. Nguyen T. A. Gillam M. H. Kalisch Ellett L. M. (2019). Medication use for comorbidities in people with Alzheimer’s disease: an Australian population-based study. Pharmacotherapy39, 1146–1156. doi: 10.1002/phar.2341
26
Fine J. P. Gray R. J. (1999). A proportional hazards model for the subdistribution of a competing risk. J. Am. Stat. Assoc.94, 496–509. doi: 10.1080/01621459.1999.10474144
27
Foley H. E. Knight J. C. Ploughman M. Asghari S. Audas R. (2021). Association of chronic pain with comorbidities and health care utilization: a retrospective cohort study using health administrative data. Pain162, 2737–2749. doi: 10.1097/j.pain.0000000000002264
28
GBD 2016 Disease and Injury Incidence and Prevalence Collaborators (2017). Global, regional, and national incidence, prevalence, and years lived with disability for 328 diseases and injuries for 195 countries, 1990-2016: a systematic analysis for the global burden of disease study 2016. Lancet390, 1211–1259. doi: 10.1016/S0140-6736(17)32154-2
29
Grasset L. Joly P. Jacqmin-Gadda H. Letenneur L. Wittwer J. Amieva H. et al . (2017). Real benefit of a protective factor against dementia: importance of controlling for death. Example of sport practice. PLoS One12:e0174950. doi: 10.1371/journal.pone.0174950
30
Hayashida K. Obata H. (2019). Strategies to treat chronic pain and strengthen impaired descending noradrenergic inhibitory system. IJMS20:822. doi: 10.3390/ijms20040822
31
Holmberg T. Davidsen M. Thygesen L. C. Krøll M. J. Tolstrup J. S. (2020). Mortality among persons experiencing musculoskeletal pain: a prospective study among Danish men and women. BMC Musculoskelet. Disord.21:666. doi: 10.1186/s12891-020-03620-8
32
Jack C. R. Knopman D. S. Jagust W. J. Shaw L. M. Aisen P. S. Weiner M. W. et al . (2010). Hypothetical model of dynamic biomarkers of the Alzheimer’s pathological cascade. Lancet Neurol.9, 119–128. doi: 10.1016/S1474-4422(09)70299-6
33
Jones G. R. N. (2014). The Alzheimer pandemic: is paracetamol to blame?Inflamm. Allergy Drug Targets13, 2–14. doi: 10.2174/1871528112666131219163405
34
Kalaria R. N. (2009). Diabetes, microvascular pathology and Alzheimer disease. Nat. Rev. Neurol.5, 305–306. doi: 10.1038/nrneurol.2009.72
35
Kao P.-H. Jang F.-L. Ho C.-H. Chen Y.-C. Hsu C.-C. Lin H.-J. et al . (2021). Chronic pain increases the risk of dementia: a Nationwide population-based cohort study. Pain Physician24, E849–E856. PMID:
36
Kerckhove N. Delage N. Cambier S. Cantagrel N. Serra E. Marcaillou F. et al . (2022). eDOL mHealth app and web platform for self-monitoring and medical follow-up of patients with chronic pain: observational feasibility study. JMIR Form Res6:e30052. doi: 10.2196/30052
37
Khalid S. Sambamoorthi U. Innes K. E. (2020). Non-Cancer chronic pain conditions and risk for incident Alzheimer’s disease and related dementias in community-dwelling older adults: a population-based retrospective cohort study of United States Medicare beneficiaries, 2001–2013. Int. J. Environ. Res. Public Health17:5454. doi: 10.3390/ijerph17155454
38
Lacasse A. Cauvier Charest E. Dault R. Cloutier A.-M. Choinière M. Blais L. et al . (2020). Validity of algorithms for identification of individuals suffering from chronic noncancer pain in administrative databases: a systematic review. Pain Med.21, 1825–1839. doi: 10.1093/pm/pnaa004
39
Löppönen M. Räihä I. Isoaho R. Vahlberg T. Kivelä S.-L. (2003). Diagnosing cognitive impairment and dementia in primary health care -- a more active approach is needed. Age Ageing32, 606–612. doi: 10.1093/ageing/afg097
40
Malfliet A. Coppieters I. Van Wilgen P. Kregel J. De Pauw R. Dolphens M. et al . (2017). Brain changes associated with cognitive and emotional factors in chronic pain: a systematic review. Eur. J. Pain21, 769–786. doi: 10.1002/ejp.1003
41
Nandi A. Counts N. Chen S. Seligman B. Tortorice D. Vigo D. et al . (2022). Global and regional projections of the economic burden of Alzheimer’s disease and related dementias from 2019 to 2050: a value of statistical life approach. eClinicalMedicine51:51. doi: 10.1016/j.eclinm.2022.101580
42
Rapo-Pylkkö S. Haanpää M. Liira H. (2016). Chronic pain among community-dwelling elderly: a population-based clinical study. Scand. J. Prim. Health Care34, 159–164. doi: 10.3109/02813432.2016.1160628
43
Rochoy M. Bordet R. Gautier S. Chazard E. (2019a). Factors associated with the onset of Alzheimer’s disease: data mining in the French nationwide discharge summary database between 2008 and 2014. PLoS One14:e0220174. doi: 10.1371/journal.pone.0220174
44
Rochoy M. Chazard E. Bordet R. (2019b). Epidemiology of neurocognitive disorders in France. Geriatr. Psychol. Neuropsychiatr. Vieil.17, 99–105. doi: 10.1684/pnv.2018.0778
45
Rouch I. Edjolo A. Laurent B. Pongan E. Dartigues J.-F. Amieva H. (2021). Association between chronic pain and long-term cognitive decline in a population-based cohort of elderly participants. Pain162, 552–560. doi: 10.1097/j.pain.0000000000002047
46
Salter M. W. Stevens B. (2017). Microglia emerge as central players in brain disease. Nat. Med.23, 1018–1027. doi: 10.1038/nm.4397
47
Seminowicz D. A. Wideman T. H. Naso L. Hatami-Khoroushahi Z. Fallatah S. Ware M. A. et al . (2011). Effective treatment of chronic low back pain in humans reverses abnormal brain anatomy and function. J. Neurosci.31, 7540–7550. doi: 10.1523/JNEUROSCI.5280-10.2011
48
Silva M. V. F. De Loures C. M. G. Alves L. C. V. De Souza L. C. Borges K. B. G. Das Carvalho M. G. (2019). Alzheimer’s disease: risk factors and potentially protective measures. J. Biomed. Sci.26:33. doi: 10.1186/s12929-019-0524-y
49
Szekely C. A. Breitner J. C. S. Fitzpatrick A. L. Rea T. D. Psaty B. M. Kuller L. H. et al . (2008). NSAID use and dementia risk in the cardiovascular health study: role of APOE and NSAID type. Neurology70, 17–24. doi: 10.1212/01.wnl.0000284596.95156.48
50
Van der Leeuw G. Ayers E. Blankenstein A. H. Van der Horst H. E. Verghese J. (2020). The association between pain and prevalent and incident motoric cognitive risk syndrome in older adults. Arch. Gerontol. Geriatr.87:103991. doi: 10.1016/j.archger.2019.103991
51
Van Hecke O. Torrance N. Smith B. H. (2013). Chronic pain epidemiology and its clinical relevance. Br. J. Anaesth.111, 13–18. doi: 10.1093/bja/aet123
52
Wang K. Liu H. (2021). Association between widespread pain and dementia, Alzheimer’s disease and stroke: a cohort study from the Framingham heart study. Reg. Anesth. Pain Med.46, 879–885. doi: 10.1136/rapm-2021-102733
53
Whitlock E. L. Diaz-Ramirez L. G. Glymour M. M. Boscardin W. J. Covinsky K. E. Smith A. K. (2017). Association between persistent pain and memory decline and dementia in a longitudinal cohort of elders. JAMA Intern. Med.177, 1146–1153. doi: 10.1001/jamainternmed.2017.1622
54
Willis W. D. Westlund K. N. (1997). Neuroanatomy of the pain system and of the pathways that modulate pain. J. Clin. Neurophysiol.14, 2–31. doi: 10.1097/00004691-199701000-00002
55
Wimo A. Jönsson L. Bond J. Prince M. Winblad B. Alzheimer Disease International (2013). The worldwide economic impact of dementia 2010. Alzheimers Dement.9, 1–11.e3. doi: 10.1016/j.jalz.2012.11.006
56
World Health Organization . (2015). First WHO ministerial conference on global action against dementia: Meeting report, WHO headquarters, Geneva, Switzerland, 16–17 March 2015. Geneva: World Health Organization Available at: https://apps.who.int/iris/handle/10665/179537 (Accessed December 12, 2022).
57
Zhang X.-X. Tian Y. Wang Z.-T. Ma Y.-H. Tan L. Yu J.-T. (2021). The epidemiology of Alzheimer’s disease modifiable risk factors and prevention. J. Prev Alzheimers Dis.8, 1–9. doi: 10.14283/jpad.2021.15
58
Zucchella C. Sinforiani E. Tamburin S. Federico A. Mantovani E. Bernini S. et al . (2018). The multidisciplinary approach to Alzheimer’s disease and dementia. A narrative review of non-pharmacological treatment. Front. Neurol.9:1058. doi: 10.3389/fneur.2018.01058
Summary
Keywords
pain, Alzheimer disease, epidemiology–analytic (risk factors), incidence, dementia
Citation
Bornier N, Mulliez A, Chenaf C, Elyn A, Teixeira S, Authier N, Bertin C and Kerckhove N (2023) Chronic pain is a risk factor for incident Alzheimer’s disease: a nationwide propensity-matched cohort using administrative data. Front. Aging Neurosci. 15:1193108. doi: 10.3389/fnagi.2023.1193108
Received
24 March 2023
Accepted
29 August 2023
Published
28 September 2023
Volume
15 - 2023
Edited by
Mahnaz Talebi, Tabriz University of Medical Sciences, Iran
Reviewed by
Ana Cervera-Ferri, University of Valencia, Spain; Charles Dolladille, Centre Hospitalier Universitaire de Caen, France
Updates
Copyright
© 2023 Bornier, Mulliez, Chenaf, Elyn, Teixeira, Authier, Bertin and Kerckhove.
This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Nicolas Kerckhove, nkerckhove@chu-clermontferrand.fr
Disclaimer
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.