Rapid identification of inflammatory arthritis and associated adverse events following immune checkpoint therapy: a machine learning approach

Steven D. Tran, Jean Lin, Carlos Galvez, Luke V. Rasmussen, Jennifer Pacheco, Giovanni M. Perottino, Kian J. Rahbari, Charles D. Miller, Jordan D. John, Jonathan Theros, Kelly Vogel, Patrick V. Dinh, Sara Malik, Umar Ramzan, Kyle Tegtmeyer, Nisha Mohindra, Jodi L. Johnson, Yuan Luo, Abel Kho, Jeffrey SosmanTheresa L. Walunas*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Introduction: Immune checkpoint inhibitor-induced inflammatory arthritis (ICI-IA) poses a major clinical challenge to ICI therapy for cancer, with 13% of cases halting ICI therapy and ICI-IA being difficult to identify for timely referral to a rheumatologist. The objective of this study was to rapidly identify ICI-IA patients in clinical data and assess associated immune-related adverse events (irAEs) and risk factors. Methods: We conducted a retrospective study of the electronic health records (EHRs) of 89 patients who developed ICI-IA out of 2451 cancer patients who received ICI therapy at Northwestern University between March 2011 to January 2021. Logistic regression and random forest machine learning models were trained on all EHR diagnoses, labs, medications, and procedures to identify ICI-IA patients and EHR codes indicating ICI-IA. Multivariate logistic regression was then used to test associations between ICI-IA and cancer type, ICI regimen, and comorbid irAEs. Results: Logistic regression and random forest models identified ICI-IA patients with accuracies of 0.79 and 0.80, respectively. Key EHR features from the random forest model included ICI-IA relevant features (joint pain, steroid prescription, rheumatoid factor tests) and features suggesting comorbid irAEs (thyroid function tests, pruritus, triamcinolone prescription). Compared to 871 adjudicated ICI patients who did not develop arthritis, ICI-IA patients had higher odds of developing cutaneous (odds ratio [OR]=2.66; 95% Confidence Interval [CI] 1.63-4.35), endocrine (OR=2.09; 95% CI 1.15-3.80), or gastrointestinal (OR=2.88; 95% CI 1.76-4.72) irAEs adjusting for demographics, cancer type, and ICI regimen. Melanoma (OR=1.99; 95% CI 1.08-3.65) and renal cell carcinoma (OR=2.03; 95% CI 1.06-3.84) patients were more likely to develop ICI-IA compared to lung cancer patients. Patients on nivolumab+ipilimumab were more likely to develop ICI-IA compared to patients on pembrolizumab (OR=1.86; 95% CI 1.01-3.43). Discussion: Our machine learning models rapidly identified patients with ICI-IA in EHR data and elucidated clinical features indicative of comorbid irAEs. Patients with ICI-IA were significantly more likely to also develop cutaneous, endocrine, and gastrointestinal irAEs during their clinical course compared to ICI therapy patients without ICI-IA.

Original languageEnglish (US)
Article number1331959
JournalFrontiers in immunology
Volume15
DOIs
StatePublished - 2024

Funding

TLW receives unrelated research funding from Gilead Sciences. AK is a strategic advisor for Datavant, Inc. The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This project was supported by Grant Number R61-AR076824 from the National Institute of Arthritis and Musculoskeletal and Skin Diseases. SDT is supported by Grant Number 1F31LM014201 from the National Library of Medicine. JL is supported in part by Grant Number T32 AR007611-13 from the National Institute of Arthritis and Musculoskeletal and Skin Diseases. The Northwestern Medicine Enterprise Data Warehouse is supported by Grant Number UL1 TR001422-09.

Keywords

  • big data
  • electronic health records
  • immune checkpoint inhibitor-induced inflammatory arthritis
  • immune checkpoint inhibitors
  • immune-related adverse events
  • machine learning

ASJC Scopus subject areas

  • Immunology and Allergy
  • Immunology

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