Introduction Artificial intelligence (AI) has been influencing the way oncology has been practiced. Major issues constituting a bottleneck are the lack of data for training purposes, confidentiality preventing development, or the absence of transparency in clarifying how models operate to generate decisions. Novel Models With explainable AI, trust and utilization barriers among clinicians, researchers, and patients can be removed. With the implementation of federated learning, multiple institutions could contribute to crucial dataset’s learning information. Precise diagnosis and prescription of the right drug are essential in preventing unnecessary life losses, and economic burden to the underling system. Focus This review focuses on new AI models that could make medical diagnosis more precise, quicker and convenient, as well as help with the discovery of new drugs and better selection of certain cancer therapies, in particular for those drugs whose results have been inconsistent across different groups of patients. We then speculate on the transformative role AI could play in predicting ADC therapy efficacy. This would ultimately bestow the medical field of an impeccable selection tool. Such colossal methodology, coupled with seeming monitoring of treatment and recovery, may be granting remedies that have been so longed, and deemed necessary.

Sobhani, N., D’Angelo, A., Kugeratski, F. G., Venturini, S., Roudi, R., Nguyen, T., Generali, D., AI-Based Cancer Models in Oncology: From Diagnosis to ADCDrug Prediction, <<CANCERS>>, 2025; 17 (21): 1-20. [doi:https://doi.org/10.3390/cancers17213419] [https://hdl.handle.net/10807/324458]

AI-Based Cancer Models in Oncology: From Diagnosis to ADC Drug Prediction

Venturini, Sergio
Methodology
;
Generali, Daniele
Conceptualization
2025

Abstract

Introduction Artificial intelligence (AI) has been influencing the way oncology has been practiced. Major issues constituting a bottleneck are the lack of data for training purposes, confidentiality preventing development, or the absence of transparency in clarifying how models operate to generate decisions. Novel Models With explainable AI, trust and utilization barriers among clinicians, researchers, and patients can be removed. With the implementation of federated learning, multiple institutions could contribute to crucial dataset’s learning information. Precise diagnosis and prescription of the right drug are essential in preventing unnecessary life losses, and economic burden to the underling system. Focus This review focuses on new AI models that could make medical diagnosis more precise, quicker and convenient, as well as help with the discovery of new drugs and better selection of certain cancer therapies, in particular for those drugs whose results have been inconsistent across different groups of patients. We then speculate on the transformative role AI could play in predicting ADC therapy efficacy. This would ultimately bestow the medical field of an impeccable selection tool. Such colossal methodology, coupled with seeming monitoring of treatment and recovery, may be granting remedies that have been so longed, and deemed necessary.
2025
Inglese
Sobhani, N., D’Angelo, A., Kugeratski, F. G., Venturini, S., Roudi, R., Nguyen, T., Generali, D., AI-Based Cancer Models in Oncology: From Diagnosis to ADCDrug Prediction, <<CANCERS>>, 2025; 17 (21): 1-20. [doi:https://doi.org/10.3390/cancers17213419] [https://hdl.handle.net/10807/324458]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/324458
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