Abstract
Background:
Combined diabetic ketoacidosis (DKA) and hyperosmolar hyperglycemic state (HHS) secondary to immune checkpoint inhibitors (ICIs) is extremely rarely reported among ICIs- diabetes mellitus (DM) cases and is always ignored by physicians. This study aimed to conduct a systematic review to recognize better the rare adverse event of combined DKA-HHS associated with immune checkpoints.
Methods:
A electronic search in Pubmed/Cochrane/Web of Science, complemented by manual searches in article references, was conducted to identify clinical features of ICIs-combined DKA-HHS.
Results:
we identified 106 patients with ICIs- type 1 diabetes mellitus (T1DM) from 82 publications: 9 patients presented a coexistence of metabolic acidosis, severe hyperglycemia, and/or DKA; All patients were not diagnosed as combined DKA-HHS. Compared with ICIs-DKA patients, combined DKA-HHS cases were prone to higher hyperglycemia (1020 ± 102.5 vs 686.7 ± 252.6mg/dL). Moreover, acute kidney injury (87.5% vs 28.6%) and prior chemotherapy (66.7% vs 31.6%) showed higher occurrences with the onset of ICIs-HHS or combined DKA-HHS.B
Conclusions:
Combined DKA-HHS portends a poor diagnosis in patients with coexistence features of DKA and HHS, which healthcare professionals and patients should be aware of due to differences in treatment. Our observational retrospective case series shows that patients with more risk factors were more likely to develop combined DKA-HHS. We are the first to report this group of patients’ clinical characteristics and outcomes.
Introduction
Although various treatment methods, such as surgery, chemotherapy, and radiation therapy, have been used to treat various tumors, immune checkpoint inhibitors significantly promote tumor cell death as a new class of drugs. Immune checkpoint inhibitors, such as programmed cell death 1 (PD-1)/program death-ligand 1 (PD-L1) inhibitors and cytotoxic T-lymphocyte antigen 4 (CTLA-4) destroy tumor cells through T-cell-mediated mechanisms by reversing immune escape or evasion. An unfortunate side effect of ICIs treatment is the development of immune-related adverse events (irAEs) due to increased T-cell activation (1).
ICIs-DM, differ from other irAEs in that they are rare (as the incidence is estimated at ~1%) and potentially life-threatening (2–4). Most of them are reported as T1DM or fulminant type 1 diabetes, with half of the cases presenting with DKA (5, 6), while combined DKA-HHS are rarely reported than DKA.
The hyperosmolar hyperglycemic state is characterized by severe hyperglycemia and hyperosmolality without significant ketosis and acidosis. Interestingly, ICIs-induced combined DKA-HHS have combined features of hyperosmolality and metabolic acidosis, and/or DKA (7). In addition, unlike HHS of spontaneous DM that has been frequently reported in adult patients with type 2 DM (T2DM), ICIs-induced combined DKA-HHS was significantly sensitive to insulin therapy and reported in T1DM. Given the limited data available regarding the clinical characteristics and prognosis of patients presenting with combined features of metabolic acidosis, severe hyperglycemia, and/or DKA, there is no accepted definition to characterize this population. Therefore, it is essential for early recognition of patients who present with combined DKA-HHS.
Here we performed a systematic review and compared ICIs- induced combined DKA-HHS with ICIs-DKA cases to describe the clinical characteristics and predisposing factors, as well as the optimal treatment of ICIs- induced combined DKA-HHS. The findings of this study will provide a valuable reference for the recognition of ICIs- induced combined DKA-HHS.
Methods
Search strategy
We conducted a systematic review on PubMed, Web of Science, and Cochrane databases for case reports and series that reported new-onset diabetes after ICIs therapy published before March 2022. The comprehensive search used the terms “immune checkpoint inhibitor” and “diabetes” (details of the search strategy were shown in Supplementary Material S Table 1). Two authors took part in the whole screening process. References in the included reports were also reviewed for additional cases.
Inclusion and exclusion criteria
The inclusion criteria included the following items: 1) case report included ICIs related medication information, blood glucose at admission, and other related laboratory values; 2) the reported case was diagnosed HHS or DKA in published papers or met the DKA/HHS and combined DKA-HHS criterion (8, 9); 3) the paper was reported in English. Conferences, reviews, clinical trials, and cases that had an undefined relationship with ICIs therapy or had insufficient information to diagnose DKA and HHS, were excluded. We extracted data regarding age, gender, ethnicity, cancer type, previous medical history of the patient, usage regimen and cycles of ICIs therapy, diabetes tests of glucose, arterial blood gas, glycated hemoglobin, blood or urine ketone, C-peptide, islet autoantibodies, and human leukocyte antigen (HLA) genotype. Other irAEs, suspected infection, kidney function, and exocrine pancreatic function were also documented.
Hyperosmolality was defined as an effective plasma osmolality ≥320 mOsm/kg[measured when available, and otherwise calculated 2*[measured serum Na+ (mEq/L)] + glucose (mg/dl)/18 referenced from ref (8)]. Case definition of hyperglycemic crises on admission was:
HHS: HHS include a plasma glucose level >33.3 mmol/l, serum osmolality>320 mmol/kg and no appreciable metabolic acidosis and ketonaemia (8, 9);
DKA: DKA comprises hyperglycaemia(blood glucose ≥200 mg/dL), hyperketonaemia and metabolic acidosis(pH ≤7.3 or bicarbonate ≤15 mEq/L) (8, 9)
Combined DKA-HHS: plasma osmolarity ≥ 320 mOsm/kg, initial blood sugar ≥ 600 mg/dL, pH ≤ 7.3, and ketonuria and/or ketonemia (9)
Statistics
Qualitative and quantitative variables were respectively expressed as frequency (percentage), median with interquartile range (IQR) for abnormal distribution data, and mean with standard deviation for normal distribution data. Differences in qualitative variables between the HHS and DKA cases were assessed with χtwo tests or Fisher exact test. Student’s t-test or Mann-Whitney U test was used for quantitative ones as appropriate. Multivariate analysis for risk factors was unable to perform because of the small cases of HHS. A p-value <0.05 was considered statistically significant. All statistical analyses and data management were performed with SPSS (IBM, version 28).
Results
A total of 106 ICIs-DM cases were identified from 82 papers. The whole screen process was shown in the flow diagram in Figure 1. All detailed data of DKA are provided in Supplementary Material S Table 1. Amongst these 106 patients, 97 (91.5%) patients had DKA alone, while 9 (8.5%) patients had combined DKA-HHS (case 1 (7), case 2 (10), case 3 (11), case 4 (12), case 5 (13), case 6 (14), case 7 (15), case 8 (16)and case 9 (17) in Supplementary Material S Table 3). The detailed data have been presented in Supplementary Material S Table 3. Notably, the use of PD-1 inhibitors was reported in most patients. Most of the patients were male, and lung and melanoma were the two main treated cancer types in both groups. Acute renal failure and pancreatic exocrine dysfunction were developed in 87.5% (7/8) and 75% (3/4) cases, respectively. Two groups had similar risks for pancreatic exocrine dysfunction and concurrent infection.
Figure 1

Flow diagram for the systematic review.
The main clinical characteristics of ICIs- induced combined DKA-HHS
The main clinical characteristics of ICIs- induced combined DKA-HHS were summarized in Table 1. Except for one patient without available data, all others had ICIs-DM with low levels of C-peptide or pH. The effective serum osmolarity of nine patients was further analyzed. All patients were above 320 mOsmol/kg H2O, 3 of which showed even higher than 340 mOsmol/kg H2O, 4 (cases 4, 5, 6, and 7 in Supplementary Material S Table 3) of which did not mention our research group calculated that according to the formula: 2*[measured serum Na+ (mEq/L)] + glucose (mg/dl)/18 referenced from ref (8). The glycemia was lower in the DKA group than in the combined DKA-HHS (686.7 ± 252.6 vs 1020 ± 102.5 mg/dL, p=0.0003). Patients with combined DKA-HHS were more likely to experience acute kidney than DKA ones (87.5% vs 28.6%, p=0.002), and Patients with combined DKA-HHS were more likely to have received chemotherapy prior to immunotherapy than patients with isolated DKA (66.7% vs 31.6%, p=0.034). Patients with combined DKA-HHS had significantly higher HbA1C levels than those without (9.2% vs 7.8%, p=0.027). The HbA1c results from long-term blood glucose control and is used as an indicator in clinical research (18), so we suspect these patients may have had impaired glucose tolerance before, but they have not been found.
Table 1
| combined DKA-HHS (n=9) | DKA(n=98) | Estimated difference/OR, HHS vs. DKA (95% Cl) | p value | |
|---|---|---|---|---|
| Age, years median (IQR) | 69 (64-73) | 62 (55-70) | 7 (-2 to 12) | 0.135 |
| Sex, Male, n (%) | 7/9 (77.8%) | 59/98 (60.2%) | 2.314(0.46 to 11.41) | 0.477 |
| History of DM, n (%) | 3/9 (33.3%) | 12/98 (12.2%) | 3.58 (0.88 to 14.05) | 0.112 |
| History of immunological agents, n (%) | 0/9 (0%) | 13/98 (13.3%) | 0.00 (0.00 to 3.07) | 0.596 |
| History of chemotherapy, n (%) | 6/9 (66.7%) | 31/98 (31.6%) | 4.32 (1.34 to 16.34) | 0.034 |
| History of steroids usage, n (%) | 2/9 (22.2%) | 8/98 (8.2%) | 3.21 (0.59 to 15.96) | 0.198 |
| Cancer type, n (%) | 0.066 | |||
| Melanoma | 1/9 (11.1%) | 35/98 (35.7%) | 0.23 (0.02 to 1.63) | 0.267 |
| Lung | 4/9(44.4%) | 36/98 (36.7%) | 1.38 (0.40 to 5.03) | 0.725 |
| Others | 4/9 (44.4%) | 27/98 (27.6%) | 2.10 (0.60 to 7.80) | 0.279 |
| ICIs, n (%) | 0.767 | |||
| PD-1 monotherapy | 6/9 (66.7%) | 73/98 (74.5%) | 0.68 (0.18 to 2.66) | 0.694 |
| PD-L1 monotherapy | 2/9 (22.2%) | 11/98 (11.2%) | 2.26 (0.43 to 10.13) | 0.300 |
| CTLA-4 monotherapy | 0/9 (0%) | 1/98 (1.0%) | 0.00 (0.00 to 98.00) | 1 |
| Combination therapy | 1/9 (11.1%) | 13/98 (13.3%) | 0.82 (0.07 to 5.16) | 1 |
| Cycles to onset of ICI-DM | 6 (9, 2.5-11.5) | 3 (76, 2-8) | -3 (-5 to 1) | 0.277 |
| meadian (n, IQR) | ||||
| Glucose, mg/dl (mean ± SEM) | 1020 ± 102.5 | 686.7 ± 252.6 | 333.7 ± 89.6 (156.1 to 511.3) | 0.0003 |
| G3 | 0/9(0%) | 27.5% (27/98) | 0.00 (0.00 to 1.13) | 0.108 |
| G4 | 9/9(100%) | 72.5% (71/98) | 0.00 (0.00 to 1.13) | 0.108 |
| HbA1c (%), meadian (n, IQR) | 9.2 (9, 7.8-10.5) | 7.8 (89, 7.1-8.7) | -1.4 (-2.40 to -0.20) | 0.027 |
| FDM, n (%) | 1/9 (11.1%) | 23/98 (23.5%) | 0.41 (0.04 to 3.05) | 0.680 |
| Low serum C-peptide, n (%) | 6/7 (85.7%) | 66/73 (90.4%) | 0.64 (0.07 to 8.26) | 0.536 |
| Autoantibody positivity, n (%) | 1 | |||
| Anti-GAD | 3/9 (33.3%) | 36/91 (39.6%) | 1.05 (0.28 to 3.98) | 1 |
| Anti-IA2 | 0/3 (0%) | 6/59 (10.2%) | 0.90 (0.82 to 0.98) | 1 |
| Anti-ZnT8 | 0/2 (0%) | 1/28 (3.6%) | 0.96 (0.90 to 1.04) | 1 |
| Anti-ICA | 0/3 (0%) | 6/43 (14.0%) | 0.89 (0.71 to 1.12) | 1 |
| Anti-insulin | 0/2 (0%) | 1/9 (11.1%) | 0.86 (0.76 to 0.97) | 1 |
| HLA genes | 0.712 | |||
| risk factor, n (%) | 3/3 (100%) | 24/37 (64.9%) | 0.64 (0.50 to 0.82) | 0.284 |
| protective factor, n (%) | 0/3 (0%) | 3/37 (8.1%) | 0.92 (0.83 to 1.01) | 1 |
| both, n (%) | 0/3 (0%) | 1/37 (2.7%) | 0.97 (0.92 to 1.03) | 1 |
| Complications | ||||
| acute kidney injury, n (%) | 7/8 (87.5%) | 20/70 (28.6%) | 17.5 (2.69 to 200.10) | 0.002 |
| suspected infection, n (%) | 1/4 (25%) | 12/27 (44.4%) | 0.36 (0.03 to 2.8) | 0.606 |
| elevated pancreatic exocrine gland lesion, n (%) | 3/4 (75%) | 17/39 (43.6%) | 3.88 (0.37 to 40.71) | 0.323 |
The clinical characteristics of combined DKA-HHS and DKA secondary to ICIs therapy.
GAD, glutamic acid decarboxylase; IA2,islet antigen 2; ZnT8, zinc transporter 8; ICA, insulin cell antibodies; IAA, insulin autoantibodies; HLA, human leukocyte antigen.
G3* represents patients with glucose levels between 13.9-27.8 mmol/L, and G4* includes patients with glucose levels above 27.8 mmol/L, both of which were based on Brahmer JR, Lacchetti C, Schneider BJ, et al. National Comprehensive Cancer Network. Management of Immune-Related Adverse Events in Patients Treated with Immune Checkpoint Inhibitor Therapy: American Society of Clinical Oncology Clinical Practice Guideline. J Clin Oncol 2018; 36: 1714-1768. Acute renal failure*: creatinine or blood urea nitrogen was higher than the normal upper limit after ICIs therapy. Elevated exocrine dysfunction*: lipase or amylase was higher than the normal upper limit after ICIs therapy.
Subgroup analysis of T1DM-related autoantibodies and HLA genotypes
T1DM -associated antibodies and genes within the HLA region are known to predispose a significant risk of developing Type 1 diabetes (19). Based on haplotypes DRB1*0401-DQB1*0302 (HLA-DR4-DQ8) and DRB1*0301-DQB1*0201 (HLA-DR3-DQ2) confer the most significant susceptibility for T1DM (19)and Kyle A et al.’s comprehensive analysis results on genes of immunosuppressant induced diabetes (20), we selected patients with HLA-DR4-DQ8 or HLA-DR3-DQ2 as risk groupings of HLA alleles. Figure 2 and Figure 3 showed the influences of T1DM-related autoantibodies and HLA risk factors on the presentation of ICIs-DM. We found that patients with positive autoantibody assumed significantly more acute onset of hyperglycemia complication as DKA or combined DKA-HHS than negative ones (2 vs 6 cycles, p<0.001) in Figure 2. Moreover, patients with the HLA risk factor genotype presented significantly higher serum glucose than non-risk ones (764.4 ± 297.0 vs 607.4 ± 129.5 mg/dL, p=0.036) shown in Figure 3. Neither autoantibody nor HLA genotype could affect the Hb1Ac level. Further investigation of T1DM-related autoantibody and HLA genotype tests showed anti-glutamic acid decarboxylase (GAD) antibody positivity and risk factor of DR4-DQ8 genotype as the predominance. Due to the limited sample size, we could not draw and rule out conclusions in ICIs - induced combined DKA-HHS groups. However, we found that time from initiation of immunotherapy to a diagnosis of combined DKA-HHS occurred more quickly in GAD antibody positivity (case 3, case 7, case 8 in Supplementary Material S Table 3) than negative (the other six cases). Hopefully, more focus and data on this subgroup will explore ICIs - induced combined DKA-HHS-related autoantibodies and HLA genotypes in the future.
Figure 2

Comparison the influences of T1DM-associated autoantibodies (A) and HLA genotypes (B) on the onset of ICIs-DM.
Figure 3

Comparison the effects of T1DM-associated autoantibodies (A) and HLA genotypes (B) on the BG at the onset of ICIs-DM.
Discussion
No systematic analysis has been conducted on the clinical characteristics of combined DKA-HHS patients associated with ICIs. Based on existing data, clinicians may not pay sufficient attention to ICIs- induced combined DKA-HHS in that DKA remains the most common hyperglycemic emergency after immune checkpoint inhibitors, and combined DKA-HHS was a rare, mixed presentation with a combination of acidosis and/or ketonuria. Our results highlight the importance of identifying patients with combined DKA-HHS.
The reason why the diagnosis of ICIs - induced combined DKA-HHS was neglected
In order to provide a better understanding of the characteristics of ICIs - induced combined DKA-HHS, we compare the clinical diagnosis, clinical manifestations, complications, and treatment. Based on previous reports, a subtype of type 1 diabetes was presented with ICIs- induced combined DKA-HHS according to the clinical course: rapidly increasing blood glucose over a short period of time, rapid pancreatic beta-cell destruction with low serum C-peptide and type 1 diabetes-associated antibody having been reported. From a clinical perspective, the most obvious feature in two groups exhibited hyperglycemic symptoms, such as dry mouth, polydipsia, and polyuria, and the period from the occurrence of hyperglycemic symptoms to the diagnosis of diabetic ketoacidosis or ketosis was approximately two weeks. Moreover, endogenous insulin secretion is depleted within three weeks of the clinical onset of ICIs-DM. Patients with ICIs- induced combined DKA-HHS exhibited unpredictable onset, occurring not only as early as a few weeks after initiation of immunotherapy but also up to a year since the discontinuation of treatment, ranging from 2 to 21 cycles, which still showed similarity. Similar performances were found between the two groups, which may be the main reason why the doctor was little attention and neglected the diagnosis.
We furthermore compared the clinical characteristics of the two groups regarding age, glucose, comorbidities, infection, acute kidney injury, T1DM-related autoantibody, as well as genetic factors. Apart from blood glucose, acute kidney, and previous exposure to chemotherapy, none of the biochemical parameters and clinical characteristics at presentation was significantly different between the DKA and combined DKA-HHS groups. It is worth noting that the majority of these patients had primary thyroid dysfunction (hypothyroidism or thyroiditis) in the DKA group, which is the most common cooccurrence with type 1 diabetes related to ICIs (21, 22). We recommend that blood glucose be frequently monitored for this population in that thyroid dysfunction is associated with T1DM and T2DM (23–25).
Pathogenesis and predisposing factors of ICIs - induced combined DKA-HHS
Although the relationship between diabetes and immune checkpoint inhibitors has been widely studied, the exact pathophysiological mechanism of ICIs -DM is still not wholly unknown. There is growing evidence supporting such findings (26, 27), and in this autoimmune process, the PD-1/PD-L1 pathway is the most prominent for activating autoreactive T cells (28–30). As pancreatic β cells also express PD-1 ligand (PD-L1) but lack CTLA-4 receptors, the immune response stimulated by the ICIs monoclonal antibodies binding to PD-1/PD-L1 could lead to increased infiltration and destruction of pancreatic beta cells (31). This explained why most cases of ICIs-DM were caused by PD-1 monotherapy and needed permanent insulin therapy even after crisis relief.
We implied that ICIs- induced combined DKA-HHS could be caused by multiple physiological and pathological mechanisms based on the following reasoning: First, type 1 diabetes results from a deficiency of circulating insulin and increased levels of the counter-regulatory hormones catecholamines, glucagon, cortisol, and growth hormone. Immune checkpoint inhibitors destroy the pancreatic β-cells, which leads to loss of insulin secretion and absolute insulin deficiency. Second, infection, T1DM-related autoantibodies, and genetic factors have been identified as important increased risks in the pathogenesis of ICIs-DM (2, 28, 32–39), although it does not completely distinguish who will develop ICIs- induced combined DKA-HHS. In addition, the results of our systematic review confirmed that acute renal injury and chemotherapy history were significantly higher occurrence rates with the ICIs- induced combined DKA-HHS. The chemotherapeutic drugs they used included platinum, pemetrexed, cyclophosphamide, and paclitaxel, all of which can cause kidney damage. A large cohort study confirmed that acute kidney injury was associated with a 5.5-fold increase in mortality in HHS cases (40). It has been reported that cisplatin can cause HHS (33, 34), but the mechanism has not been described. Finally, we found more risk factors in the group with ICIs- induced combined DKA-HHS. We thus hypothesized that multiple factors might act additively or synergistically to contribute to severe hyperglycemia.
Treatment of ICIs- induced combined DKA-HHS
There are limited data to guide the management of ICIs- induced combined DKA-HHS, so management strategies are also not clear for individuals with ICIs- induced combined DKA-HHS. Treatment of this case and other cases with ICIs- induced combined DKA-HHS in our literature were mainly based on ICIs-DM (41), including holding ICIs until the patient is clinically stable and glycemic control is reached, vigorous intravenous rehydration, electrolyte replacement, and insulin therapy. Concerning the management of patients with a mixed presentation, as indicated in the current guidelines (42) and suggestion of ref (40) for combined DKA-HHS patients, it is similar to those of DKA but with greater intravenous fluid administration and close monitoring of circulation to ensure adequate hydration. Besides, ketone production and acidosis begin to resolve with insulin treatment, but insulin drives potassium back into the cell, and the patient can become severely hypokalemic. Therefore, we recommend that providers taking care of patients with ICIs- induced combined DKA-HHS hold immunosuppressive therapy and give insulin treatment. Moreover, clinicians should pay enough attention to frequently monitor sodium and potassium and administer adequate intravenous fluid.
Conclusions
In conclusion, we highlight combined DKA-HHS as an unusual presentation and complication of ICIs-T1DM.A mixed presentation with features of DKA and HHS is a frequent yet underrecognized and underreported emergency in ICIs-DM. Identifying hyperosmolarity is essential, as its treatment requires more-aggressive fluid administration than treatment of ICI-DKA, and improper management may increase the risk of complications. Our data show that increased exposure to more risk factors accounts for the increased incidence of ICIs-induced combined DKA-HHS. It is the first retrospective, observational case series summarizing the clinical characteristics of combined DKA-HHS patients associated with ICIs. We hope that clinicians gain more excellent experience in the side effects of still relatively immune checkpoint inhibitors and that new cases of ICIs-induced combined DKA-HHS will be detected earlier.
Statements
Author contributions
WZ and JC took part in all data analysis, writing and editing of the manuscript. JB and ND involved the screening and identification of all case reports. XC reviewed and edited the manuscript especially in language spelling. YJ was responsible for the management of our patient case. ZW mainly contributed to the critical revision of the manuscript and supervision of all edition processes. All authors contributed to the article and approved the submitted version.
Funding
This work was supported by Shanghai “Rising Stars of Medical Talents Youth Development Program-Youth Medical Talents” [Clinical Pharmacist Program(SHWSRS [2021]099)] and the Establishment and Evaluation in Pharmaceutical Care Model Based on Multicenter Clinical Research of tumor immunotherapy-related adverse reactions (2019YXK012).
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/fendo.2022.1084441/full#supplementary-material
Abbreviations
DKA, diabetes ketoacidosis; HHS, hyperosmolar hyperglycemic state; ICIs, immune checkpoint inhibitors; DM, diabetes mellitus; T1DM, type 1 diabetes mellitus; PD-1, anti-programmed cell death-1; CTLA-4, anti-cytotoxic T-lymphocyte antigen-4; irAEs, immune related adverse events; T2DM, type 2 diabetes mellitus; HbA1c, hemoglobin A1c; HLA, human leukocyte antigen; IQR, interquartile range; GAD, glutamic acid decarboxylase; PD-L1, PD-1 ligand.
References
1
MartinsFSofiyaLSykiotisGPLamineFMaillardMFragaMet al. Adverse effects of immune-checkpoint inhibitors: epidemiology, management and surveillance. Nat Rev Clin Oncol (2019) 16(9):563–80. doi: 10.1038/s41571-019-0218-0
2
AkturkHKKahramangilDSarwalAHoffeckerLMuradMHMichelsAW. Immune checkpoint inhibitor-induced type 1 diabetes: a systematic review and meta-analysis. Diabetes Med (2019) 36(9):1075–81. doi: 10.1111/dme.14050
3
AkturkHKMichelsAW. Adverse events associated with immune checkpoint blockade. N Engl J Med (2018) 378(12):1163–4. doi: 10.1056/NEJMc1801663
4
AkturkHKMichelsAW. Adverse events associated with immune checkpoint inhibitors. JAMA (2019) 321(12):1219. doi: 10.1001/jama.2018.22119
5
KyriacouAMelsonEChenWKempegowdaP. Is immune checkpoint inhibitor-associated diabetes the same as fulminant type 1 diabetes mellitus? Clin Med (Lond) (2020) 20(4):417–23. doi: 10.7861/clinmed.2020-0054
6
StamatouliAMQuandtZPerdigotoALClarkPLKlugerHWeissSAet al. Collateral damage: Insulin-dependent diabetes induced with checkpoint inhibitors. Diabetes (2018) 67(8):1471–80. doi: 10.2337/dbi18-0002
7
SalehAOTahaRMohamedSFABashirM. Hyperosmolar hyperglycaemic state and diabetic ketoacidosis in nivolumab-induced insulin-dependent diabetes mellitus. Eur J Case Rep Intern Med (2021) 8(8):2756. doi: 10.12890/2021_002756
8
UmpierrezGKorytkowskiM. Diabetic emergencies - ketoacidosis, hyperglycaemic hyperosmolar state and hypoglycaemia. Nat Rev Endocrinol (2016) 12(4):222–32. doi: 10.1038/nrendo.2016.15
9
AgrawalSBairdGLQuintosJBReinertSEGopalakrishnanGBoneyCMet al. Pediatric diabetic ketoacidosis with hyperosmolarity: Clinical characteristics and outcomes. Endocr Pract (2018) 24(8):726–32. doi: 10.4158/EP-2018-0120
10
BastinMMosbahHCarlierABoudifaAVillemainAHartemannAet al. Variability in clinical presentation of diabetes mellitus during anti-PD-1 immunotherapy. Diabetes Metab (2020) 46(5):406–7. doi: 10.1016/j.diabet.2019.04.005
11
CapitaoRBelloCFonsecaRSaraivaC. New onset diabetes after nivolumab treatment. BMJ Case Rep (2018) 2018:bcr2017220999. doi: 10.1136/bcr-2017-220999
12
YilmazM. Nivolumab-induced type 1 diabetes mellitus as an immune-related adverse event. J Oncol Pharm Pract (2020) 26(1):236–9. doi: 10.1177/1078155219841116
13
ChokrNFarooqHGuadalupeE. Fulminant diabetes in a patient with advanced melanoma on nivolumab. Case Rep Oncol Med (2018) 2018:8981375. doi: 10.1155/2018/8981375
14
HakamiOAIoanaJAhmadSTunTKSreenanSMcDermottJH. A case of pembrolizumab-induced severe DKA and hypothyroidism in a patient with metastatic melanoma. Endocrinol Diabetes Metab Case Rep (2019) 2019:18–0153. doi: 10.1530/EDM-18-0153
15
LopesARRussoALiAYMcCuskerMGKroopnickJMScillaKet al. Development of autoimmune diabetes with severe diabetic ketoacidosis and immune-related thyroiditis secondary to durvalumab: a case report. Transl Lung Cancer Res (2020) 9(5):2149–56. doi: 10.21037/tlcr-20-408
16
AlrifaiTAliFSSaleemSRuizDCMRifaiDYounasSet al. Immune checkpoint inhibitor induced diabetes mellitus treated with insulin and metformin: Evolution of diabetes management in the era of immunotherapy. Case Rep Oncol Med (2019) 2019:8781347. doi: 10.1155/2019/8781347
17
HongARYoonJHKimHKKangHC. Immune checkpoint inhibitor-induced diabetic ketoacidosis: A report of four cases and literature review. Front Endocrinol (Lausanne) (2020) 11:14. doi: 10.3389/fendo.2020.00014
18
RahmaniRStevensERackovskyNO'BrienKOSchwartzGJWeberDR. Female sex and obesity are risk factors for inadequate calcium intake in youth with type 1 diabetes. Front Clin Diabetes Healthc (2021) 2:723855. doi: 10.3389/fcdhc.2021.723855
19
AtkinsonMAEisenbarthGSMichelsAW. Type 1 diabetes. Lancet (2014) 383(9911):69–82. doi: 10.1016/S0140-6736(13)60591-7
20
FarinaKAKaneMP. Programmed cell death-1 monoclonal antibody therapy and type 1 diabetes mellitus: A review of the literature. J Pharm Pract (2021) 34(1):133–40. doi: 10.1177/0897190019850929
21
ZhanLFengHFLiuHQGuoLTChenCYaoXLet al. Immune checkpoint inhibitors-related thyroid dysfunction: Epidemiology, clinical presentation, possible pathogenesis, and management. Front Endocrinol (Lausanne) (2021) 12:649863. doi: 10.3389/fendo.2021.649863
22
CheraAStancuALBucurO. Thyroid-related adverse events induced by immune checkpoint inhibitors. Front Endocrinol (Lausanne) (2022) 13:1010279. doi: 10.3389/fendo.2022.1010279
23
ZhangXLiRChenYDaiYChenLQinLet al. The role of thyroid hormones and autoantibodies in metabolic dysfunction associated fatty liver disease: TgAb may be a potential protective factor. Front Endocrinol (Lausanne) (2020) 11:598836. doi: 10.3389/fendo.2020.598836
24
AkturkHKAlkananiAZhaoZYuLMichelsAW. PD-1 inhibitor immune-related adverse events in patients with preexisting endocrine autoimmunity. J Clin Endocrinol Metab (2018) 103(10):3589–92. doi: 10.1210/jc.2018-01430
25
ZhangALWangFChangLSMcDonnellMEMinL. Coexistence of immune checkpoint inhibitor-induced autoimmune diabetes and pancreatitis. Front Endocrinol (Lausanne) (2021) 12:620522. doi: 10.3389/fendo.2021.620522
26
AnsariMJSalamaADChitnisTSmithRNYagitaHAkibaHet al. The programmed death-1 (PD-1) pathway regulates autoimmune diabetes in nonobese diabetic (NOD) mice. J Exp Med (2003) 198(1):63–9. doi: 10.1084/jem.20022125
27
WuLTsangVHMSassonSCMenziesAMCarlinoMSBrownDAet al. Unravelling checkpoint inhibitor associated autoimmune diabetes: From bench to bedside. Front Endocrinol (Lausanne) (2021) 12:764138. doi: 10.3389/fendo.2021.764138
28
QuandtZYoungAAndersonM. Immune checkpoint inhibitor diabetes mellitus: a novel form of autoimmune diabetes. Clin Exp Immunol (2020) 200(2):131–40. doi: 10.1111/cei.13424
29
MouradDAzarNSEidAAAzarST. Immune checkpoint inhibitor-induced diabetes mellitus: Potential role of T cells in the underlying mechanism. Int J Mol Sci (2021) 22(4):10. doi: 10.3390/ijms22042093
30
PaukenKEJenkinsMKAzumaMFifeBT. PD-1, but not PD-L1, expressed by islet-reactive CD4+ T cells suppresses infiltration of the pancreas during type 1 diabetes. Diabetes (2013) 62(8):2859–69. doi: 10.2337/db12-1475
31
ShiehSJChouFCYuPNLinWCChangDMRofflerSRet al. Transgenic expression of single-chain anti-CTLA-4 fv on beta cells protects nonobese diabetic mice from autoimmune diabetes. J Immunol (2009) 183(4):2277–85. doi: 10.4049/jimmunol.0900679
32
Lo PreiatoVSalvagniSRicciCArdizzoniAPagottoUPelusiC. Diabetes mellitus induced by immune checkpoint inhibitors: type 1 diabetes variant or new clinical entity? review of the literature. Rev Endocr Metab Disord (2021) 22(2):337–49. doi: 10.1007/s11154-020-09618-w
33
SakakuraCHagiwaraAKinSYamamotoKOkamotoKYamaguchiTet al. A case of hyperosmolar nonketotic coma occurring during chemotherapy using cisplatin for gallbladder cancer. Hepatogastroenterology (1999) 46(29):2801–3.
34
KomdeurRDerksenJLegdeurMCHylkemaBS. Cisplatin-induced hyperglycemic hyperosmolar coma. Neth J Med (2007) 65(1):36–7.
35
YimCHusseinNArnasonT. Capecitabine-induced hyperosmolar hyperglycaemic state. BMJ Case Rep (2021) 14(3):e241109. doi: 10.1136/bcr-2020-241109
36
SteckAKRewersMJ. Genetics of type 1 diabetes. Clin Chem (2011) 57(2):176–85. doi: 10.1373/clinchem.2010.148221
37
de FiletteJMKPenJJDecosterLVissersTBravenboerBvan der AuweraBJet al. Immune checkpoint inhibitors and type 1 diabetes mellitus: a case report and systematic review. Eur J Endocrinol (2019) 181(3):363–74. doi: 10.1530/EJE-19-0291
38
ClotmanKJanssensKSpecenierPWeetsIDe BlockCEM. Programmed cell death-1 inhibitor-induced type 1 diabetes mellitus. J Clin Endocrinol Metab (2018) 103(9):3144–54. doi: 10.1210/jc.2018-00728
39
de FiletteJJansenYSchreuerMEveraertHVelkeniersBNeynsBet al. Incidence of thyroid-related adverse events in melanoma patients treated with pembrolizumab. J Clin Endocrinol Metab (2016) 101(11):4431–9. doi: 10.1210/jc.2016-2300
40
PasquelFJTsegkaKWangHCardonaSGalindoRJFayfmanMet al. Clinical outcomes in patients with isolated or combined diabetic ketoacidosis and hyperosmolar hyperglycemic state: A retrospective, hospital-based cohort study. Diabetes Care (2020) 43(2):349–57. doi: 10.2337/dc19-1168
41
BrahmerJRLacchettiCSchneiderBJAtkinsMBBrassilKJCaterinoJMet al. Management of immune-related adverse events in patients treated with immune checkpoint inhibitor therapy: American society of clinical oncology clinical practice guideline. J Clin Oncol (2018) 36(17):1714–68. doi: 10.1200/JCO.2017.77.6385
42
ZeitlerPHaqqARosenbloomAGlaserN. Drugs, and therapeutics committee of the Lawson Wilkins pediatric endocrine s, hyperglycemic hyperosmolar syndrome in children: pathophysiological considerations and suggested guidelines for treatment. J Pediatr (2011) 158(1):9–14,14 e1-2. doi: 10.1016/j.jpeds.2010.09.048
Summary
Keywords
immune checkpoint inhibitor, programmed cell death-1, hyperosmolar hyperglycemic state, diabetes mellitus, combined DKA-HHS
Citation
Zhang W, Chen J, Bi J, Ding N, Chen X, Wang Z and Jiao Y (2023) Combined diabetic ketoacidosis and hyperosmolar hyperglycemic state in type 1 diabetes mellitus induced by immune checkpoint inhibitors: Underrecognized and underreported emergency in ICIs-DM. Front. Endocrinol. 13:1084441. doi: 10.3389/fendo.2022.1084441
Received
03 November 2022
Accepted
14 December 2022
Published
04 January 2023
Volume
13 - 2022
Edited by
Aaron Michels, University of Colorado, United States
Reviewed by
Jordan Wright, Vanderbilt University Medical Center, United States; Halis Kaan Akturk, University of Colorado Anschutz Medical Campus, United States
Updates
Copyright
© 2023 Zhang, Chen, Bi, Ding, Chen, Wang and Jiao.
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: Zhuo Wang, zhuowang088@163.com; Yang Jiao, jiaoy321@126.com
†These authors have contributed equally to this work and share first authorship
This article was submitted to Clinical Diabetes, a section of the journal Frontiers in Endocrinology
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.