Background:

Chimeric antigen receptor T-cell (CAR-T) therapy is a powerful treatment for hematologic malignancies, but it often leads to serious infections, a major cause of non-relapse mortality. These infections typically occur within the first 30 days post-therapy, a period also characterized by cytokine release syndrome (CRS). Early fever after CAR-T therapy can indicate either an infection or CRS, complicating diagnosis, especially in neutropenic patients. A predictive model is needed to accurately identify infections for prompt and effective management.

Methods:

This multicenter retrospective study involved three phases: model development, internal validation, and external validation. The internal cohort included 443 patients treated with CAR-T therapy at Tongji Hospital, Huazhong University of Science and Technology, from June 2016 to December 2023. The study excluded patients with pre-existing infections, fever unrelated to CRS or infection, incomplete data, or no fever within 30 days post-CAR-T therapy. An external validation cohort of 30 patients was recruited from three hospitals. Febrile events (temperature >38°C) within 30 days post-infusion were recorded, with daily assessments of blood counts and inflammation markers such as C-reactive protein (CRP), interleukin-6 (IL-6), and ferritin. Febrile episodes were classified as infection or CRS. A multivariate logistic regression model identified independent predictors of infection and established a scoring system.

Results:

Among the 443 patients, 514 febrile episodes were recorded, with 86% occurring during the first episode. Infections accounted for 21% of initial episodes, often co-occurring with CRS. The predictive model for infection during the first febrile episode included factors like pre-fever neutropenia (N), ferritin change (FCV) on the second day of fever, lymphocyte count (L), platelet count (Plt), IL-6 level, and CRP level. The model achieved an area under the curve (AUC) of 0.9, with 87% sensitivity and 81% specificity in the training set. The external validation cohort showed an AUC of 0.93, with sensitivity and specificity of 75% and 84%, respectively. The Hosmer-Lemeshow test confirmed a good model fit (P = 0.950), and decision curve analysis indicated a significant net benefit.

Conclusion:

This study developed and validated a robust risk assessment model for predicting infections within 30 days post-CAR-T therapy. The model, based on routine blood tests and febrile episodes, is practical for clinical use and offers high accuracy across different patient cohorts.

Disclosures

No relevant conflicts of interest to declare.

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