Integrating artificial intelligence in drug discovery and early drug development: a transformative approach

被引:0
|
作者
Alberto Ocana [1 ]
Atanasio Pandiella [2 ]
Cristian Privat [3 ]
Iván Bravo [4 ]
Miguel Luengo-Oroz [5 ]
Eitan Amir [6 ]
Balazs Gyorffy [7 ]
机构
[1] Instituto de Investigación Sanitaria San Carlos (IdISSC),Experimental Therapeutics in Cancer Unit, Medical Oncology Department
[2] Hospital Clínico San Carlos and CIBERONC,INTHEOS
[3] Universidad CEU San Pablo,CEU
[4] Instituto de Biología Molecular y Celular del Cáncer,START Catedra, Facultad de Medicina
[5] CSIC,Facultad de Farmacia
[6] IBSAL and CIBERONC,Department of Bioinformatics
[7] Universidad de Castilla La Mancha,Research Centre for Natural Sciences
[8] Princess Margaret Cancer Center,Department of Biophysics, Medical School
[9] Semmelweis University,undefined
[10] Hungarian Research Network,undefined
[11] University of Pecs,undefined
关键词
Artificial intelligence; Drug discovery; Target identification; Early clinical development; Clinical trials; Neural networks; Deep learning; Oncology; AlphaFold;
D O I
10.1186/s40364-025-00758-2
中图分类号
学科分类号
摘要
Artificial intelligence (AI) can transform drug discovery and early drug development by addressing inefficiencies in traditional methods, which often face high costs, long timelines, and low success rates. In this review we provide an overview of how to integrate AI to the current drug discovery and development process, as it can enhance activities like target identification, drug discovery, and early clinical development. Through multiomics data analysis and network-based approaches, AI can help to identify novel oncogenic vulnerabilities and key therapeutic targets. AI models, such as AlphaFold, predict protein structures with high accuracy, aiding druggability assessments and structure-based drug design. AI also facilitates virtual screening and de novo drug design, creating optimized molecular structures for specific biological properties. In early clinical development, AI supports patient recruitment by analyzing electronic health records and improves trial design through predictive modeling, protocol optimization, and adaptive strategies. Innovations like synthetic control arms and digital twins can reduce logistical and ethical challenges by simulating outcomes using real-world or virtual patient data. Despite these advancements, limitations remain. AI models may be biased if trained on unrepresentative datasets, and reliance on historical or synthetic data can lead to overfitting or lack generalizability. Ethical and regulatory issues, such as data privacy, also challenge the implementation of AI. In conclusion, in this review we provide a comprehensive overview about how to integrate AI into current processes. These efforts, although they will demand collaboration between professionals, and robust data quality, have a transformative potential to accelerate drug development.
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