Abstract
Introduction:
Using a validated translational model that quantitatively predicts opioid-induced respiratory depression and cardiac arrest, we compared cardiac arrest events caused by synthetic opioids (fentanyl, carfentanil) following rescue by intranasal (IN) administration of the μ-opioid receptor antagonists naloxone and nalmefene.
Methods:
This translational model was originally developed by Mann et al. (Clin Pharmacol Ther 2022) to evaluate the effectiveness of intramuscular (IM) naloxone. We initially implemented this model using published codes, reproducing the effects reported by Mann et al. on the incidence of cardiac arrest events following intravenous doses of fentanyl and carfentanil as well as the reduction in cardiac arrest events following a standard 2 mg IM dose of naloxone. We then expanded the model in terms of pharmacokinetic and µ-opioid receptor binding parameters to simulate effects of 4 mg naloxone hydrochloride IN and 3 mg nalmefene hydrochloride IN, both FDA-approved for the treatment of opioid overdose. Model simulations were conducted to quantify the percentage of cardiac arrest in 2000 virtual patients in both the presence and absence of IN antagonist treatment.
Results:
Following simulated overdoses with both fentanyl and carfentanil in chronic opioid users, IN nalmefene produced a substantially greater reduction in the incidence of cardiac arrest compared to IN naloxone. For example, following a dose of fentanyl (1.63 mg) producing cardiac arrest in 52.1% (95% confidence interval, 47.3-56.8) of simulated patients, IN nalmefene reduced this rate to 2.2% (1.0-3.8) compared to 19.2% (15.5-23.3) for IN naloxone. Nalmefene also produced large and clinically meaningful reductions in the incidence of cardiac arrests in opioid naïve subjects. Across dosing scenarios, simultaneous administration of four doses of IN naloxone were needed to reduce the percentage of cardiac arrest events to levels that approached those produced by a single dose of IN nalmefene.
Conclusion:
Simulations using this validated translational model of opioid overdose demonstrate that a single dose of IN nalmefene produces clinically meaningful reductions in the incidence of cardiac arrest compared to IN naloxone following a synthetic opioid overdose. These findings are especially impactful in an era when >90% of all opioid overdose deaths are linked to synthetic opioids such as fentanyl.
1 Introduction
The number of opioid overdose deaths in the United States has continued to increase for more than two decades () with modeling studies predicting up to 1.2 million additional fatalities over this decade (, ). Illicitly manufactured synthetic opioids (“synthetics”) such as fentanyl have been linked to >90% of the more than 80,000 opioid overdose deaths reported for the 12 months ending in September 2023 (). Counterfeit pills (produced to resemble medications including methylphenidate, oxycodone, and alprazolam) often containing lethal quantities of synthetics have flooded the United States over the past 5 years (, ), and the ready availability of these pills is now the face of what is commonly referred to as the ‘4th wave’ of the opioid epidemic (). The Drug Enforcement Administration estimated 78.4 million counterfeit pills were seized in 2023, with 70% containing a potentially lethal dose of synthetic opioid (). It is likely the number of counterfeit pills seized by law enforcement agencies represents only a fraction of the total number smuggled into the United States. Both the sheer quantities and ready availability of these counterfeit pills on the ‘gray market’ often puts unwitting users at a very high risk of a fatal opioid overdose.
As the initial treatment of opioid overdose shifted from the emergency department () to first responders (e.g., police, fire department, friends and family of overdose victims), intranasal (IN) naloxone has become the standard rescue agent in a community setting (). First approved by the FDA in November 2015, IN naloxone (4 mg) can be administered with little or no training, is absorbed as rapidly as an intramuscular (IM) injection () and eliminates the potential for needlestick injury. While multiple factors (such as the type and quantity of opioid, route of administration, presence of other drugs, and interval between overdose and intervention) ultimately determine a patient’s prognosis (), both clinical and preclinical evidence indicate that higher doses of naloxone are needed to reverse a synthetic opioid overdose than are typically used by first responders. Multiple clinical studies have reported high doses of parenteral naloxone (in some cases followed by a naloxone infusion) are required for rescue, with recommendations of up to 12–15 mg if a synthetic like fentanyl is involved (–). Moreover, preclinical studies examining respiratory depression in the absence of the multiple factors that complicate interpretation of a clinical overdose have demonstrated that up to ten-fold higher doses of naloxone are needed to reverse respiratory depression produced by fentanyl compared to an opium-based alkaloid like morphine () despite comparable affinities at μ-opioid receptors (). More recent studies () have provided key molecular insights which may contribute to this apparent paradox.
Mechanistic modeling studies present an unbiased, alternative approach to estimate the effectiveness of μ-opioid receptor antagonists in a first-responder setting. Model-based approaches have been successfully applied in drug development and can help address information gaps when it is challenging to conduct clinical trials. A translational mechanistic model recently published by Mann et al. () was developed to predict the extent of respiratory depression and incidence of cardiac arrest triggered by a synthetic opioid overdose in the absence of antagonist treatment and following administration of IM naloxone. This model was recently implemented to evaluate the efficacy of IN naloxone given as single or multiple doses ().
In the present study, we leverage and expand this translational model to compare the efficacy of IN nalmefene to IN naloxone, the latter generally considered the “gold standard” for first responders to reverse an opioid overdose. Nalmefene is a more potent μ-opioid receptor antagonist than naloxone and was recently approved for the treatment of opioid overdose (induced by natural or synthetic opioids) in the United States in the form of an IN formulation delivering 3 mg nalmefene hydrochloride (HCl) equivalent to 2.7 mg nalmefene free base.
2 Methods
2.1 Model overview and implementation
We implemented the translational model from Mann et al. () (hereafter referred to as the Mann model), which predicts the respiratory depression and incidence of cardiac arrest triggered by a synthetic opioid overdose in the absence of antagonist treatment and following administration of IM naloxone. As shown in Figure 1, the model integrates several components describing: 1) the pharmacokinetics of synthetic opioids (given as an intravenous [IV] bolus or infusion) and IM naloxone; 2) the competitive binding between synthetic opioids and naloxone at the μ-opioid receptor; 3) the effects of opioid-bound receptors on ventilation by reducing ventilatory drives (central chemoreflex, peripheral chemoreflex, and wakefulness drives); and 4) the physiological feedback mechanisms involving lung gas exchange, blood gas transport, tissue O2 and CO2 metabolism, as well as blood flow control.
Figure 1
Mann et al. (
The translational model maintained on a Github public repository (https://github.com/FDA/Mechanistic-PK-PD-Model-to-Rescue-Opioid-Overdose) was cloned to a local computer system and ordinary differential equations coded in C were successfully compiled. Testing confirmed that all interdependent scripts were successfully executed and the simulation results from the Mann et al. publication (
2.2 Pharmacokinetic submodels
Population pharmacokinetic models (nonlinear mixed-effects model) were developed for IN nalmefene and IN naloxone using plasma concentration data from three clinical studies in healthy volunteers: (i) two pharmacokinetic studies published by Crystal et al. (
All clinical studies were conducted in accordance with principles and requirements of the International Council for Harmonization Good Clinical Practice guidelines. Written informed consent was obtained from all participants before starting any study-related procedure. Clinical study protocols, informed consent forms, and all other appropriate study-related documents were reviewed and approved by institutional review boards.
2.3 Integration of new components
Ordinary differential equations and parameter estimates from IN nalmefene and IN naloxone pharmacokinetic models were integrated into the Mann model framework. The Mann model utilizes a competitive binding model at the µ-opioid receptor with binding parameters (association rate constant kon, dissociation rate constant koff, and steepness parameter n) implemented for naloxone, fentanyl, and fentanyl derivatives including carfentanil. A scaling approach was used to estimate nalmefene binding parameters relative to naloxone based on kon and koff estimates from Cassel et al. (
2.4 Model validation
Model simulations were conducted to assess if the expanded model acceptably reproduced minute ventilation recovery data in the pharmacodynamic study described in Section 2.2 and published by Ellison et al. (
Simulations were performed in virtual opioid naïve users since the study was conducted with opioid experienced but nondependent healthy volunteers. A single typical subject with mean parameter values generating an “average” profile was simulated for comparison to average measures of ventilation observed in the study. We used the remifentanil population pharmacokinetic model published by Eleveld et al. (
Modifications of the code were performed to induce a hypercapnic state similar to that observed in the pharmacodynamic study. Specifically, the CO2 partial pressure was altered by changing the “P_a_co2” (arterial CO2 partial pressure) parameter from 40.28 to 45.30 millimeters of mercury (mm Hg) (delaystates.R script). In addition, to allow the partial pressure of CO2 to vary during the simulation, the parameters “P_i_co2” (inspired CO2) and “P_a_co2” were changed from 0 to 34 mm Hg and 40 to 45.30 mm Hg, respectively (delaypars.R script).
2.5 Opioid overdose simulations
Opioid overdose simulations were conducted with the final model to compare the incidence of cardiac arrest following rescue treatment with IN nalmefene compared to IN or IM naloxone. While the model is capable of simulating multiple physiological outcomes resulting from opioid-induced respiratory depression, Mann et al. (2022) focused on cardiac arrest as an endpoint because in a community setting, the cardiovascular complications produced by asphyxia (the hypoxia and hypercapnia resulting from respiratory depression) are inevitably fatal in the absence of intervention (
Multiple variables were explored in the simulations, such as the opioid responsible for the overdose (fentanyl or carfentanil), the opioid dose, antagonist dose, and the type of opioid user (chronic vs. naïve). The percentage of subjects with opioid-induced cardiac arrest from a population of 2000 virtual subjects was used as the outcome of interest for each opioid receptor antagonist formulation and dosing regimen. As in the Mann model, cardiac arrest was defined as occurring when the total blood flow reached a value of 0.01 L/min.
For fentanyl and carfentanil, the same IV bolus doses as in the Mann model were simulated to represent “medium” and “high” overdose severities (1.63 mg and 2.97 mg for fentanyl and 0.012 mg and 0.022 mg for carfentanil, respectively). In order to provide additional context for the doses of fentanyl used in these simulations: a 2 mg dose of fentanyl is considered a potentially lethal dose by the DEA (
As in the Mann model, a residual minute ventilation volume of 40% of baseline was used as the threshold of respiratory depression to trigger administration of the opioid antagonist (naloxone or nalmefene) which occurred with a 1-minute delay to account for potential time lost for product preparation.
Different dosing scenarios for the opioid antagonist were evaluated, including (i) administration of 1 or 2 doses of IN nalmefene (corresponding to 3 mg and 6 mg of the HCl salt, respectively), (ii) administration of 1, 2, 3, or 4 doses of IN naloxone (corresponding to 4 mg, 8 mg, 12 mg and 16 mg of the HCl salt, respectively), and (iii) administration of IM naloxone using the commercially available 2 mg/2 mL formulation. When multiple doses were simulated for IN naloxone or IN nalmefene, doses were administered simultaneously.
The Mann model describes the application of bootstrapping methods for generating a distribution of kon, koff, and n estimates for naloxone, fentanyl, and carfentanil. The variability in experimental data and parameter uncertainty in binding parameters were accounted for by using the distributions of binding parameters (N = 2000) generated by Mann et al. (
A bootstrap resampling method was used to estimate the summary statistics (median, and 2.5th and 97.5th percentiles defining a 95% confidence interval) for the incidence of cardiac arrest. A sample with size of 400 was drawn 2500 times from the 2000 virtual subjects simulated for each dosing scenario. The cardiac arrest rate was estimated for each of the 2500 bootstrap samples.
3 Results
3.1 Pharmacokinetic submodels
Plasma concentrations following IN administration of nalmefene and naloxone were best fitted to 2-compartment models with linear elimination and parallel zero- and first-order absorption with a lag time at the start of the first-order absorption process. The adequacy of the pharmacokinetic models was demonstrated by visual predictive checks showing good concordance between observed plasma concentrations and model predictions (Supplementary Figures 2, 3). Model parameter estimates are displayed in Table 1 for IN nalmefene and in Table 2 for IN naloxone. Body weight was identified as a statistically significant covariate on nalmefene apparent clearance (CL/F) with no clinical relevance. Additionally, the model predicted a slower absorption of IN nalmefene in the pharmacodynamic study, with a 35% decrease in first-order absorption rate compared to the two other pharmacokinetic studies also conducted in healthy volunteers. This decrease was attributed to the drying effect of breathing a hypercapnic mixture on the nasal mucosa, which blunted the effects of the nasal absorption enhancer, dodecyl maltoside (
Table 1
| Parameter | Final Parameter Estimate | Magnitude of Variability | |||
|---|---|---|---|---|---|
| Population Mean | %RSE | Final Estimate | %RSE | ||
| CL/F | Apparent clearance (L/h) | 63.7 | 2.10 | 15.4%CV | 19.3 |
| Exponent of (WT/74.7) for CL/F | 0.572 | 16.6 | – | – | |
| Vc/F | Apparent volume of distribution, central compartment (L) | 15.2 | 11.8 | 211%CV | 10.3 |
| Q/F | Apparent clearance of distribution (L/h) | 81.3 | 7.23 | - | - |
| Vp/F | Apparent volume of distribution, peripheral compartment (L) | 522 | 3.05 | - | - |
| INKA | Intranasal first-order absorption rate constant (1/h) | 0.497 | 9.09 | 39.8%CV | 18.4 |
| IMKA | Intramuscular first-order absorption rate constant (1/h) | 0.156 | 5.45 | 50.4%CV | 18.4 |
| D2 | Zero-order absorption duration (h) | 0.302 | 7.33 | - | - |
| INFK0 | Fraction of intranasal dose with zero-order absorption | 0.0485 | 13.3 | - | - |
| IMFK0 | Fraction of intramuscular dose with zero-order absorption | 0.0170 | 10.9 | - | - |
| ALAG1 | Lag-time of first-order absorption (h) | 0.0615 | 7.58 | - | - |
| FR | Relative bioavailability for intranasal vs. intramuscular route | 0.834 | 2.23 | - | - |
| STDEFF | Proportional shift in INKA in the pharmacodynamic study | -0.349 | 17.7 | - | - |
| σ2 | Residual variability | 0.111 | 4.48 | 33.3%CV | - |
Final population pharmacokinetic model for intranasal (and intramuscular) nalmefene.
%CV, coefficient of variation expressed as a percentage; %RSE, relative standard error expressed as a percentage; WT, body weight in kg (74.7, median body weight in sample).
Table 2
| Parameter | Final Parameter Estimate | Magnitude of Variability | |||
|---|---|---|---|---|---|
| Population Mean | %RSE | Final Estimate | %RSE | ||
| CL/F | Apparent clearance (L/h) | 396 | 5.50 | 39.1%CV | 22.4 |
| Vc/F | Apparent volume of distribution, central compartment (L) | 65.7 | 24.0 | 240%CV | 22.6 |
| Q/F | Apparent clearance of distribution (L/h) | 284 (fixed) 1 | - | - | - |
| Vp/F | Apparent volume of distribution, peripheral compartment (L) | 102 (fixed) 1 | - | - | - |
| KA | First-order absorption rate constant (1/h) | 0.998 | 10.6 | - | - |
| D2 | Zero-order absorption duration (h) | 0.689 | 3.67 | - | - |
| FK0 | Fraction of dose with zero-order absorption | 0.183 | 23.1 | 151%CV | 30.1 |
| ALAG1 | Lag-time of first-order absorption (h) | 0.0717 | 1.82 | - | - |
| σ2 | Residual variability | 0.104 | 12.2 | 32.3%CV | - |
Final population pharmacokinetic model for intranasal naloxone.
%CV, coefficient of variation expressed as a percentage; %RSE, relative standard error expressed as a percentage.
1Population means of Q/F and Vp/F were fixed to values estimated by Yassen et al. (
3.2 Model validation
Once the translational model was expanded with parameters for IN nalmefene and IN naloxone, the predictive validity of the model was assessed by simulation of the pharmacodynamic study which compared the efficacy of IN nalmefene and IN naloxone in reversing remifentanil-induced respiratory depression (
Figure 2

Reproducibility of minute ventilation data in a pharmacodynamic study assessing the effect of intranasal nalmefene (A) and intranasal naloxone (B) in reversing respiratory depression induced by remifentanil. At time 10 minutes, subjects were administered remifentanil as an intravenous bolus (0.5 μg/kg) followed by an infusion (rate 0.175 μg/kg/min) continuing until the end of the study. At time 25 minutes, subjects received either 3 mg IN nalmefene HCl (A) or 4 mg IN naloxone HCl (B) to reverse remifentanil-induced respiratory depression. The study was conducted under hypercapnic conditions, with subjects breathing a hypercapnic gas mixture (50% oxygen, 43% nitrogen, 7% carbon dioxide) through a tight-fitting mask. The black curve represents the model predictions for a typical virtual opioid naïve individual, the red line is the average curve based on observed data, and the closed grey circles are the observed values.
3.3 Opioid overdose simulations
The model was then applied to compare cardiac arrest outcomes following administration of IN nalmefene and IN or IM naloxone. In virtual chronic opioid users, IN nalmefene resulted in a substantially greater reduction in the incidence of cardiac arrest (Table 3). For example, following an IV fentanyl dose of 1.63 mg resulting in cardiac arrest in 52.1% (95% confidence interval: 47.3–56.8) of simulated patients, IN nalmefene 3 mg reduced this rate to 2.2% (1.0–3.8) compared to 19.2% (15.5–23.3) for IN naloxone 4 mg and 29.5% (25.3–34.0) for IM naloxone 2 mg/2 mL. At a higher IV fentanyl dose (2.97 mg) producing cardiac arrest in 77.9% (73.8–81.8) of simulated patients, IN nalmefene 3 mg reduced this rate to 11.6% (8.5–14.8) compared to 47.1% (42.0–52.3) for IN naloxone 4 mg and 54.2% (49.5–59.0) for IM naloxone 2 mg/2 mL. Simultaneous administration of four doses of IN naloxone (4×4 mg) was needed to reduce the incidence of cardiac arrest to values approaching those obtained with a single dose of IN nalmefene, with 3.8% (2.0–5.8) after 1.63 mg fentanyl and 17.0% (13.5–20.8) after 2.97 mg fentanyl (Table 3). Two simultaneous doses of IN nalmefene (2×3 mg) further reduced the simulated cardiac arrest percentage to 0.35% (0–1.0) and 3.8% (2.0–5.5) following fentanyl doses of 1.63 mg and 2.97 mg, respectively.
Table 3
| Fentanyl 1.63 mg | Fentanyl 2.97 mg | Carfentanil 0.012 mg | Carfentanil 0.022 mg | |
|---|---|---|---|---|
| No antagonist | 52.1% (47.3–56.8) | 77.9% (73.8–81.8) | 59.2% (54.0–63.8) | 90.2% (87.3–93.0) |
| Intramuscular Simulations | ||||
| 2 mg/2 mL naloxone1 | 29.5% (25.3–34.0)2 | 54.2% (49.5–59.0) | 36.6% (32.0–41.3) | 73.7% (69.5–77.8) |
| Intranasal Simulations | ||||
| 4 mg naloxone | 19.2% (15.5–23.3) | 47.1% (42.0–52.3) | 27.5% (23.0–31.8) | 70.6% (65.8–75.0) |
| 2 × 4 mg naloxone | 10.5% (7.5–13.5) | 31.8% (27.3–36.5) | 15.8% (12.3–19.4) | 57.0% (52.0–61.8) |
| 3 × 4 mg naloxone | 6.6% (4.3–9.3) | 22.6% (18.4–26.8) | 10.4% (7.5–13.3) | 46.6% (42.0–51.5) |
| 4 × 4 mg naloxone | 3.8% (2.0–5.8) | 17.0% (13.5–20.8) | 6.8% (4.5–9.3) | 38.9% (34.0–43.5) |
| 3 mg nalmefene | 2.2% (1.0–3.8) | 11.6% (8.5–14.8) | 3.8% (2.0–5.8) | 32.0% (27.5–36.8) |
| 2 × 3 mg nalmefene | 0.35% (0–1.0) | 3.8% (2.0–5.5) | 0.70% (0–1.6) | 14.5% (11.0–18.3) |
Simulated incidence of cardiac arrest by opioid, opioid dose, antagonist, antagonist dose and route of administration in chronic opioid users.
IN, intranasal.
The table shows median (2.5th and 97.5th percentiles) of the cardiac arrest percentage after randomly sampling 400 out of the 2000 virtual subjects 2500 times.
When multiple doses of naloxone or nalmefene were simulated, doses were administered at the same time. Specifically, two, three, and four IN naloxone doses were simulated by administering a dose equal to 8 mg (2 × 4 mg), 12 mg (3 × 4 mg), or 16 mg (4 × 4 mg), respectively. For nalmefene, two IN doses were simulated as 6 mg (2 × 3 mg).
1 Generic naloxone formulation, 2 mg/2 mL.
2 In Mann et al. publication (
In opioid naïve individuals with no pre-existing tolerance to the pharmacological actions of opioids, simulations revealed a higher percentage of cardiac arrest compared to chronic opioid users (Table 4). Similar to simulation outcomes in chronic opioid users, IN nalmefene administration resulted in marked reductions in the incidence of cardiac arrest compared to IN naloxone across all dosing scenarios. For example, at a fentanyl dose of 1.63 mg which resulted in cardiac arrest in 74.7% (70.3–78.8) of simulated subjects, IN nalmefene reduced this rate to 7.6% (5.0–10.3) compared to 39.1% (34.3–43.8) for IN naloxone and 48.3% (43.5–53.3) for IM naloxone. As was observed in chronic opioid users, simultaneous administration of four doses of IN naloxone was needed in opioid naïve individuals to reduce the incidence of cardiac arrest to values approaching those obtained with one dose of IN nalmefene (Table 4).
Table 4
| Fentanyl 1.63 mg | Fentanyl 2.97 mg | Carfentanil 0.012 mg | Carfentanil 0.022 mg | |
|---|---|---|---|---|
| No antagonist | 74.7% (70.3–78.8) | 90.1% (87.0–93.0) | 75.9% (71.5–80.0) | 96.4% (94.5–98.0) |
| Intramuscular Simulations | ||||
| 2 mg/2 mL naloxone1 | 48.3% (43.5–53.3) | 71.8% (67.3–76.0) | 56.6% (51.8–61.3) | 86.4% (83.0–89.8) |
| Intranasal Simulations | ||||
| 4 mg IN naloxone | 39.1% (34.3–43.8) | 67.6% (63.0–72.0) | 50.5% (45.8–55.5) | 85.8% (82.3–89.0) |
| 2 × 4 mg IN naloxone | 23.8% (19.6–27.8) | 53.0% (48.3–57.5) | 37.1% (32.3–41.8) | 77.1% (73.0–81.3) |
| 3 × 4 mg IN naloxone | 16.3% (12.5–19.8) | 42.4% (37.8–47.3) | 26.8% (22.5–31.3) | 69.8% (65.3–74.0) |
| 4 × 4 mg IN naloxone | 11.8% (8.8–14.8) | 33.4% (28.8–37.8) | 20.6% (16.5–24.8) | 63.5% (58.8–68.0) |
| 3 mg IN nalmefene | 7.6% (5.0–10.3) | 25.7% (21.5–30.0) | 14.9% (11.5–18.6) | 55.0% (50.0–60.0) |
| 2 × 3 mg IN nalmefene | 1.7% (0.5–3.0) | 10.1% (7.3–13.0) | 5.8% (3.8–8.3) | 36.8% (32.1–41.8) |
Simulated incidence of cardiac arrest by opioid, opioid dose, antagonist, antagonist dose and route of administration in opioid naïve individuals.
IN, intranasal.
The table shows median (2.5th and 97.5th percentiles) of the cardiac arrest percentage after randomly sampling 400 out of the 2000 virtual subjects 2500 times.
When multiple doses of naloxone or nalmefene were simulated, doses were administered at the same time. Specifically, two, three, and four IN naloxone doses were simulated by administering a dose equal to 8 mg (2 × 4 mg), 12 mg (3 × 4 mg), or 16 mg (4 × 4 mg), respectively. For nalmefene, two IN doses were simulated as 6 mg (2 × 3 mg).
1 Generic naloxone formulation, 2 mg/2 mL.
Qualitatively similar outcomes were obtained following IV carfentanil in both chronic opioid users and opioid naïve individuals, although the percentage of simulated cardiac arrests was uniformly higher for carfentanil than for fentanyl because of its much higher affinity for and slower dissociation from μ-opioid receptors (Tables 3, 4). The impact of fentanyl and carfentanil administration on physiological variables (minute ventilation, arterial oxygen partial pressure, and cardiac output) after administration of IN nalmefene, IN naloxone, and no intervention is illustrated in Figure 3 for a representative chronic opioid user.
Figure 3

Model simulations evaluating the effect of intranasal nalmefene versus intranasal naloxone on physiological variables and cardiac arrest following an intravenous bolus dose of fentanyl or carfentanil in chronic opioid users. Simulated minute ventilation (A), arterial oxygen partial pressure (B), and cardiac output (C) are plotted versus time (in minutes) for a typical virtual subject. The red X designates when a typical virtual subject had a complete cardiac arrest (that is, total blood flow near zero), which stops the simulation. (D) shows the simulated percentage of virtual subjects experiencing cardiac arrest. A single dose of IN naloxone 4 mg (green) is compared with a single dose IN nalmefene 3 mg (blue) and no antagonist (red). Error bars represent the 2.5th and 97.5th percentiles after randomly sampling 400 out of the 2000 virtual chronic opioid users 2500 times.
4 Discussion
There is a compelling body of evidence, both preclinical (
Among the most compelling evidence that standard IM doses of naloxone (2 mg/2 mL) favored by many first responders would result in a significant loss of life following an IV synthetic opioid overdose is the translational model developed by Mann et al. (
Because of the widespread use of IN naloxone in a community setting (
The “medium” and “high” doses of fentanyl used in the simulations were based on data from approximately 500 cases of fatal fentanyl overdoses, the great majority with a history of opioid use and/or chronic pain (
Because our simulations demonstrated large reductions in the incidence of cardiac arrest after a single dose of IN nalmefene compared to a single dose of IN naloxone, we examined the rates of cardiac arrest following administration of multiple doses of naloxone. Simultaneous dosing of two, three and four doses of naloxone (total amount of 8, 12, and 16 mg) produced dose-related reductions in the incidence of cardiac arrest. However, at both medium and high doses of fentanyl or carfentanil, four doses of IN naloxone (16 mg) administered simultaneously were needed to reduce the incidence of cardiac arrest to values approaching a single dose of nalmefene (Tables 3, 4). The simulation results for IN naloxone were consistent with recent data by Strauss et al. (
In the Mann model, μ-opioid receptor antagonists were administered one minute after ventilation was decreased to 40% of baseline to mimic a delay between recognizing respiratory depression and administering the reversal agent. In practice, recognizing the signs of an opioid overdose requires training, and there is very often a longer delay in administering the reversal agent. Therefore, with the assumption that an opioid overdose would be immediately recognized and treated, our model predictions likely overestimate the effectiveness of both μ-opioid receptor antagonists in a field setting. Strauss et al. (
Other limitations of this work are inherent to the translational model itself. Mann et al. used an extensive set of data to develop, calibrate and validate their model, including in-vitro binding experiments, pharmacokinetic data, clinical studies of opioid effects on ventilation in chronic opioid users and opioid naïve subjects, and animal studies with severe hypoxia-induced cardiac arrest which could not ethically be conducted in humans (
Overall, the difference in the apparent effectiveness between IN nalmefene and IN naloxone is consistent with preclinical and clinical evidence including: a higher affinity of nalmefene at μ-opioid receptors (
Nalmefene has a significantly longer plasma half-life (t1/2 7.1–11 h) (
Whether the risks of underdosing with an opioid antagonist outweigh the risks associated with precipitated withdrawal remains a matter of debate. Although the majority of opioid overdoses are not fatal (
In conclusion, simulations using a validated translational model of opioid overdose demonstrate that a single dose of IN nalmefene produces clinically meaningful reductions in the incidence of cardiac arrest compared to naloxone tools (IN, IM) frequently used by first-responders across a variety of scenarios involving fentanyl and carfentanil. These findings are consistent with converging lines of pharmacological evidence that the rapid delivery of high concentrations of a potent reversal agent favors a successful rescue in the era of synthetic opioids.
Statements
Data availability statement
The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.
Ethics statement
The studies involving humans were approved by WCG IRB, 1019 39th Ave. SE, Suite 120, Puyallup, WA 98374 and IntegReview Institutional Review Board, 3815 S Capital of Texas Hwy, Austin, TX 78704. The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study.
Author contributions
CL: Conceptualization, Supervision, Writing – original draft. PP: Supervision, Writing – review & editing. ND: Formal analysis, Writing – review & editing. IG-G: Formal analysis, Writing – review & editing. PS: Conceptualization, Supervision, Writing – original draft.
Funding
The author(s) declare that financial support was received for the research and/or publication of this article. The research was funded by Indivior Inc.
Acknowledgments
The authors would like to acknowledge the contribution of Daniel Gonzalez, PhD, and Robert Bell, MS, to the modeling and simulation activities.
Conflict of interest
Authors CL, PP, and PS are employees of Indivior Inc. Opiant Pharmaceuticals developed nalmefene nasal spray and was acquired by Indivior Inc. in March 2023. Authors ND and IG-G are employees of Simulations Plus and received funding for conducting modeling and simulation activities.
The author(s) declare that the research was funded by Indivior Inc. The funder was involved in the study design, collection, analysis, interpretation of data, the writing of this article, and the decision to submit it for publication.
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/fpsyt.2024.1399803/full#supplementary-material
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Summary
Keywords
synthetic opioids, fentanyl, carfentanil, cardiac arrest, translational model, opioid antagonists, nalmefene, naloxone
Citation
Laffont CM, Purohit P, Delcamp N, Gonzalez-Garcia I and Skolnick P (2024) Comparison of intranasal naloxone and intranasal nalmefene in a translational model assessing the impact of synthetic opioid overdose on respiratory depression and cardiac arrest. Front. Psychiatry 15:1399803. doi: 10.3389/fpsyt.2024.1399803
Received
12 March 2024
Accepted
10 May 2024
Published
17 June 2024
Volume
15 - 2024
Edited by
Liana Fattore, CNR Neuroscience Institute (IN), Italy
Reviewed by
Sabrine Bilel, University of Ferrara, Italy
Jermaine Jones, Columbia University, United States
Edward Sellers, University of Toronto, Canada
Alexander Infante, University of Illinois Chicago, United States
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Copyright
© 2024 Laffont, Purohit, Delcamp, Gonzalez-Garcia and Skolnick.
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: Celine M. Laffont, celine.laffont@indivior.com
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