Eosinophil Count as Predictive Biomarker of Immune-Related Adverse Events (irAEs) in Immune Checkpoint Inhibitors (ICIs) Therapies in Oncological Patients
Elisa Giommoni,
Roberta Giorgione,
Agnese Paderi,
Elisa Pellegrini,
Elisabetta Gambale,
Andrea Marini,
Andrea Antonuzzo,
Riccardo Marconcini,
Giandomenico Roviello,
Marco Matucci-Cerinic,
David Capaccioli,
Serena Pillozzi,
Lorenzo Antonuzzo
Affiliations
Elisa Giommoni
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Roberta Giorgione
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Agnese Paderi
Department of Experimental and Clinical Medicine, University of Florence, 50134 Florence, Italy
Elisa Pellegrini
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Elisabetta Gambale
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Andrea Marini
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Andrea Antonuzzo
Medical Oncology 1 and 2, Azienda Ospedaliero-Universitaria Pisana, 56127 Pisa, Italy
Riccardo Marconcini
Medical Oncology 1 and 2, Azienda Ospedaliero-Universitaria Pisana, 56127 Pisa, Italy
Giandomenico Roviello
Department of Experimental and Clinical Medicine, University of Florence, 50134 Florence, Italy
Marco Matucci-Cerinic
Department of Experimental and Clinical Medicine, University of Florence, 50134 Florence, Italy
David Capaccioli
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Serena Pillozzi
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Lorenzo Antonuzzo
Medical Oncology Unit, Careggi University Hospital, 50134 Florence, Italy
Background: To date, no biomarkers are effective in predicting the risk of developing immune-related adverse events (irAEs) in patients treated with immune checkpoint inhibitors (ICIs). This study aims to evaluate the association between basal absolute eosinophil count (AEC) and irAEs during treatment with ICIs for solid tumors. Methods: We retrospectively evaluated 168 patients with metastatic melanoma (mM), renal cell carcinoma (mRCC), and non-small cell lung cancer (mNSCLC) receiving ICIs at our medical oncology unit. By combining baseline AEC with other clinical factors, we developed a mathematical model for predicting the risk of irAEs, which we validated in an external cohort of patients. Results: Median baseline AEC was 135/µL and patients were stratified into two groups accordingly; patients with high baseline AEC (>135/µL) were more likely to experience toxicity (p = 0.043) and have a better objective response rate (ORR) (p = 0.003). By constructing a covariance analysis model, it emerged that basal AEC correlated with the risk of irAEs (p < 0.01). Finally, we validated the proposed model in an independent cohort of 43 patients. Conclusions: Baseline AEC could be a predictive biomarker of ICI-related toxicity, as well as of response to treatment. The use of a mathematical model able to predict the risk of developing irAEs could be useful for clinicians for monitoring patients receiving ICIs.