Recent advances in precision oncology have led to significant breakthroughs through the targeting of defined oncogenic drivers. However, the clinical efficacy of single-target therapies is increasingly constrained by the intrinsic complexity and adaptability of cancer. Solid tumors frequently arise from multifactorial oncogenic processes and adapt via diverse resistance mechanisms, ultimately limiting the durability of monotherapies. This review advocates for a paradigm shift toward multi-targeted, AI-enhanced strategies that harness high-throughput multi-omic data to inform the rational design of combination therapies. By leveraging artificial intelligence for drug discovery and repurposing, response prediction, and clinical trial optimization, the field of oncology is poised to transcend reductionist approaches and more fully address the biological intricacy of cancer.

Towards Post-Genomic Oncology: Embracing Cancer Complexity via Artificial Intelligence, Multi-Targeted Therapeutics, Drug Repurposing, and Innovative Study Designs

Berretta, Massimiliano
Secondo
Membro del Collaboration Group
;
2025-01-01

Abstract

Recent advances in precision oncology have led to significant breakthroughs through the targeting of defined oncogenic drivers. However, the clinical efficacy of single-target therapies is increasingly constrained by the intrinsic complexity and adaptability of cancer. Solid tumors frequently arise from multifactorial oncogenic processes and adapt via diverse resistance mechanisms, ultimately limiting the durability of monotherapies. This review advocates for a paradigm shift toward multi-targeted, AI-enhanced strategies that harness high-throughput multi-omic data to inform the rational design of combination therapies. By leveraging artificial intelligence for drug discovery and repurposing, response prediction, and clinical trial optimization, the field of oncology is poised to transcend reductionist approaches and more fully address the biological intricacy of cancer.
2025
Inglese
Inglese
Multidisciplinary Digital Publishing Institute (MDPI)
26
16
1
18
18
Internazionale
Esperti anonimi
artificial intelligence; drug repurposing; next-generation sequencing; precision oncology; target therapy; tumor heterogeneity
no
info:eu-repo/semantics/article
Di Mauro, Annabella; Berretta, Massimiliano; Santorsola, Mariachiara; Ferrara, Gerardo; Picone, Carmine; Savarese, Giovanni; Ottaiano, Alessandro...espandi
14.a Contributo in Rivista::14.a.1 Articolo su rivista
7
262
none
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11570/3353346
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