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Real-world data to build explainable trustworthy artificial intelligence models for prediction of immunotherapy efficacy in NSCLC patients

Academic Article
Publication Date:
2023
Short description:
Real-world data to build explainable trustworthy artificial intelligence models for prediction of immunotherapy efficacy in NSCLC patients / Prelaj, A., Galli, E.G., Miskovic, V., Pesenti, M., Viscardi, G., Pedica, B., Mazzeo, L., Bottiglieri, A., Provenzano, L., Spagnoletti, A., Marinacci, R., De Toma, A., Proto, C., Ferrara, R., Brambilla, M., Occhipinti, M., Manglaviti, S., Galli, G., Signorelli, D., Giani, C., et al.. - In: FRONTIERS IN ONCOLOGY. - ISSN 2234-943X. - 12:(2023). [10.3389/fonc.2022.1078822]
abstract:
Introduction: Artificial Intelligence (AI) methods are being increasingly investigated as a means to generate predictive models applicable in the clinical practice. In this study, we developed a model to predict the efficacy of immunotherapy (IO) in patients with advanced non-small cell lung cancer (NSCLC) using eXplainable AI (XAI) Machine Learning (ML) methods. Methods: We prospectively collected real-world data from patients with an advanced NSCLC condition receiving immune-checkpoint inhibitors (ICIs) either as a single agent or in combination with chemotherapy. With regards to six different outcomes - Disease Control Rate (DCR), Objective Response Rate (ORR), 6 and 24-month Overall Survival (OS6 and OS24), 3-months Progression-Free Survival (PFS3) and Time to Treatment Failure (TTF3) - we evaluated five different classification ML models: CatBoost (CB), Logistic Regression (LR), Neural Network (NN), Random Forest (RF) and Support Vector Machine (SVM). We used the Shapley Additive Explanation (SHAP) values to explain model predictions. Results: Of 480 patients included in the study 407 received immunotherapy and 73 chemo- and immunotherapy. From all the ML models, CB performed the best for OS6 and TTF3, (accuracy 0.83 and 0.81, respectively). CB and LR reached accuracy of 0.75 and 0.73 for the outcome DCR. SHAP for CB demonstrated that the feature that strongly influences models’ prediction for all three outcomes was Neutrophil to Lymphocyte Ratio (NLR). Performance Status (ECOG-PS) was an important feature for the outcomes OS6 and TTF3, while PD-L1, Line of IO and chemo-immunotherapy appeared to be more important in predicting DCR. Conclusions: In this study we developed a ML algorithm based on real-world data, explained by SHAP techniques, and able to accurately predict the efficacy of immunotherapy in sets of NSCLC patients.
Iris type:
1.1 Articolo in rivista
Keywords:
explainable artificial intelligence; immunotherapy; machine learning; non-small cell lung cancer; treatment
List of contributors:
Prelaj, A.; Galli, E. G.; Miskovic, V.; Pesenti, M.; Viscardi, G.; Pedica, B.; Mazzeo, L.; Bottiglieri, A.; Provenzano, L.; Spagnoletti, A.; Marinacci, R.; De Toma, A.; Proto, C.; Ferrara, R.; Brambilla, M.; Occhipinti, M.; Manglaviti, S.; Galli, G.; Signorelli, D.; Giani, C.; Beninato, T.; Pircher, C. C.; Rametta, A.; Kosta, S.; Zanitti, M.; Di Mauro, M. R.; Rinaldi, A.; Di Gregorio, S.; Antonia, M.; Garassino, M. C.; De Braud, F. G. M.; Restelli, M.; Lo Russo, G.; Ganzinelli, M.; Trovo, F.; Pedrocchi, A. L. G.
Authors of the University:
FERRARA ROBERTO
Handle:
https://iris.unisr.it/handle/20.500.11768/199077
Full Text:
https://iris.unisr.it//retrieve/handle/20.500.11768/199077/322410/fonc-12-1078822.pdf
Published in:
FRONTIERS IN ONCOLOGY
Journal
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