| Literature DB >> 35079086 |
Shinobu Takayasu1, Satoru Mizushiri2, Yutaka Watanuki2, Satoshi Yamagata2,3, Mari Usutani2, Yuki Nakada2, Yuko Asari2, Shingo Murasawa2, Kazunori Kageyama2, Makoto Daimon2.
Abstract
Immune checkpoint inhibitors (ICIs) treatment can result in endocrine immune-related adverse events (irAEs), including pituitary dysfunction. Quick diagnosis of secondary adrenal insufficiency (AI) is challenging because no universal definition of ICI-induced secondary AI has been agreed. The aim of this study was to clarify the clinical features of ICI-induced secondary AI that can be used for screening in standard clinical practice. This retrospective study was performed using the medical records of patients who received ICIs at Hirosaki University Hospital between 1 September 2014 and 31 January 2021. Longitudinal clinical data of patients who developed AI were analyzed and compared with the data of thyroid irAEs. Regression analysis showed a significant correlation between ICI-induced secondary AI and absolute or relative eosinophil counts at pre-onset of AI, as well as differences or rate of increase in eosinophil counts at baseline and at pre-onset. Absolute eosinophil counts > 198.36/µL or relative eosinophil counts > 5.6% at pre-onset, and a difference of 65.25/µL or a rate of eosinophil count increase of 1.97 between the baseline and at pre-onset showed the best sensitivity and specificity. This is the first report to demonstrate that eosinophil counts can be a predictor of ICI-induced secondary AI.Entities:
Mesh:
Substances:
Year: 2022 PMID: 35079086 PMCID: PMC8789805 DOI: 10.1038/s41598-022-05400-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Characteristics of the overall cohort.
| n = 525 | |
|---|---|
| Age (y) | 67.1 ± 10.0 |
| Male | 394 |
| Female | 131 |
| Lung cancer | 263 (50.1%) |
| Renal-urinary cancer | 117 (22.3%) |
| Head and neck cancer | 45 (8.6%) |
| Malignant melanoma | 43 (8.2%) |
| Gastric cancer | 37 (7.0%) |
| Esophageal cancer | 10 (1.9%) |
| Others | 10 (1.9%) |
| Thyroid irAEs | 34 (6.5%) |
| Secondary adrenal insufficiency | 19 (3.6%) |
| Diabetes mellitus | 2 (0.4%) |
| Others | 0 (0.0%) |
Age is expressed as average (± standard deviation) at the first administration of immune checkpoint inhibitors.
Abbreviation: irAEs immune-related adverse events.
Clinical course of patients with pituitary AI.
| ICI class | ICI | n | AI (n) | AI for each ICI class (n) | Day of pre-onset visit (d) | Day of symptom onset (d) | Day of diagnosis of AI (d) |
|---|---|---|---|---|---|---|---|
| PD-1 | Niv | 216 | 5 | 13 (3.4%) | 164 | 184 | 198 |
| Pem | 164 | 8 | |||||
| Niv > Pem | 2 | 0 | |||||
| PD-L1 | Atez | 60 | 0 | 1 (1.0%) | 5 | 33 | 72 |
| Avel | 7 | 0 | |||||
| Dur | 29 | 1 | |||||
| Dur > Atez | 1 | 0 | |||||
| PD-1 > PD-L1 | Niv > Atez | 1 | 0 | 0 (0.0%) | 0 | 0 | 0 |
| Pem > Atez | 1 | 0 | |||||
| CTLA-4 or CTLA-4 + PD-1 | Ipi or Ipi + PD-1 | 44 | 5 | 5 (11.4%) | 62 | 64 | 83 |
A > B indicates change of ICI from A to B. ‘Day’ is the median number of days from the first administration of ICI.
Abbreviation: AI adrenal insufficiency, Atez atezolizumab, Avel avelumab, CTLA-4 cytotoxic T-lymphocyte-associated protein 4, Dur durvalumab, ICI immune checkpoint inhibitor, Ipi ipilimumab, Niv nivolumab, PD-1 programmed cell death-1, PD-L1 programmed death-ligand 1, Pem pembrolizumab.
Characteristics of patients with secondary AI.
| n = 17 | |
|---|---|
| Age (y) | 67.1 ± 9.8 |
| Male | 12 |
| Female | 5 |
| Renal-urinary cancer | 8 (47.1%) |
| Lung cancer | 6 (35.3%) |
| Malignant melanoma | 3 (17.6%) |
| PD-1 | |
| Pem | 6 |
| Niv | 5 |
| PD-L1 | |
| Dur | 1 |
| CTLA-4 + PD-1 | |
| Ipi + Niv | 4 |
| Pem > Ipi | 1 |
| Day of pre-onset visit (d) | 119 (163.7) |
| Day of symptom onset (d) | 125 (176.5) |
| Day of diagnosis of AI (d) | 140 (201.9) |
Age is expressed as average ± standard deviation at diagnosis. Pem > Ipi indicates change of immune checkpoint inhibitor from pembrolizumab to ipilimumab. ‘Day’ is expressed as the median (average) number of days from the first administration of ICI.
Abbreviation: CTLA-4 cytotoxic T-lymphocyte-associated protein 4, Dur durvalumab, ICI immune checkpoint inhibitor, Ipi ipilimumab, Niv nivolumab, PD-1 programmed cell death-1, PD-L1 programmed death-ligand 1, Pem pembrolizumab.
Figure 1Longitudinal data in the AI group are shown by box plots. (A) White blood cell counts, (B) absolute eosinophil counts, (C) relative eosinophil counts, (D) C-reactive protein levels, (E) serum urea nitrogen levels, (F) serum creatinine levels, (G), serum sodium levels, (H) serum potassium levels, and (I) plasma glucose levels. ‘Baseline’ represents data before the first administration of ICIs. ‘Pre-onset’ represents data checked-up just before the patients experienced AI symptoms. ‘irAE’ represents data at the diagnosis of ICI-induced secondary AI. Statistical analyses were performed by Friedman’s test corrected by Bonferroni’s method. Significant differences of p < 0.05 were indicated.
Figure 2Eosinophil counts as predictors of AI determined by logistic regression analysis. Odds ratios (ORs) with 95% confidence intervals (CIs) are shown. Adjusted for multiple factors: serum sodium, C-reactive protein, and plasma glucose. Difference: difference in absolute eosinophil counts between the baseline and at pre-onset. Rate of increase: rate of increase in eosinophil counts between the baseline and at pre-onset.
Figure 3Receiver operating characteristic curves for determination of the cut-off values of the eosinophil counts to predict AI. (A) Absolute eosinophil counts, (B) relative eosinophil counts, (C) difference in absolute eosinophil counts between the baseline and at pre-onset, and (D) rate of increase in eosinophil counts between the baseline and at pre-onset.