Author:
Jones Daniel K.,Eckhardt Christine A.,Sun Haoqi,Tesh Ryan A.,Malik Preeti,Quadri Syed,Firme Marcos Santana,van Sleuwen Meike,Jain Aayushee,Fan Ziwei,Jing Jin,Ge Wendong,Nascimento Fábio A.,Sheikh Irfan S.,Jacobson Caron,Frigault Matthew,Kimchi Eyal Y.,Cash Sydney S.,Lee Jong Woo,Dietrich Jorg,Westover M. Brandon
Abstract
AbstractCAR-T cell therapy is an effective cancer therapy for multiple refractory/relapsed hematologic malignancies but is associated with substantial toxicity, including Immune Effector Cell Associated Neurotoxicity Syndrome (ICANS). Improved detection and assessment of ICANS could improve management and allow greater utilization of CAR-T cell therapy, however, an objective, specific biomarker has not been identified. We hypothesized that the severity of ICANS can be quantified based on patterns of abnormal brain activity seen in electroencephalography (EEG) signals. We conducted a retrospective observational study of 120 CAR-T cell therapy patients who had received EEG monitoring. We determined a daily ICANS grade for each patient through chart review. We used visually assessed EEG features and machine learning techniques to develop the Visual EEG-Immune Effector Cell Associated Neurotoxicity Syndrome (VE-ICANS) score and assessed the association between VE-ICANS and ICANS. We also used it to determine the significance and relative importance of the EEG features. We developed the Visual EEG-ICANS (VE-ICANS) grading scale, a grading scale with a physiological basis that has a strong correlation to ICANS severity (R = 0.58 [0.47–0.66]) and excellent discrimination measured via area under the receiver operator curve (AUC = 0.91 for ICANS ≥ 2). This scale shows promise as a biomarker for ICANS which could help to improve clinical care through greater accuracy in assessing ICANS severity.
Funder
BYU Pre-Med Summer Research Program Grant
NINDS Research Education Grant
NIDDK
Glenn Foundation for Medical Research
American Federation for Aging Research
American Academy of Sleep Medicine
NIH
NSF
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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