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Current Status and Future Directions: The Application of Artificial Intelligence/Machine Learning for Precision Medicine
54
Zitationen
15
Autoren
2023
Jahr
Abstract
Technological innovations, such as artificial intelligence (AI) and machine learning (ML), have the potential to expedite the goal of precision medicine, especially when combined with increased capacity for voluminous data from multiple sources and expanded therapeutic modalities; however, they also present several challenges. In this communication, we first discuss the goals of precision medicine, and contextualize the use of AI in precision medicine by showcasing innovative applications (e.g., prediction of tumor growth and overall survival, biomarker identification using biomedical images, and identification of patient population for clinical practice) which were presented during the February 2023 virtual public workshop entitled "Application of Artificial Intelligence and Machine Learning for Precision Medicine," hosted by the US Food and Drug Administration (FDA) and University of Maryland Center of Excellence in Regulatory Science and Innovation (M-CERSI). Next, we put forward challenges brought about by the multidisciplinary nature of AI, particularly highlighting the need for AI to be trustworthy. To address such challenges, we subsequently note practical approaches, viz., differential privacy, synthetic data generation, and federated learning. The proposed strategies - some of which are highlighted presentations from the workshop - are for the protection of personal information and intellectual property. In addition, methods such as the risk-based management approach and the need for an agile regulatory ecosystem are discussed. Finally, we lay out a call for action that includes sharing of data and algorithms, development of regulatory guidance documents, and pooling of expertise from a broad-spectrum of stakeholders to enhance the application of AI in precision medicine.
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Autoren
Institutionen
- United States Food and Drug Administration(US)
- Center for Drug Evaluation and Research(US)
- University of Maryland, Baltimore(US)
- Sage Bionetworks(US)
- Fondation pour la Recherche Stratégique(FR)
- FOM University of Applied Sciences for Economics and Management(DE)
- Simulation Technologies (United States)(US)
- Merck (Germany)(DE)
- Maryland Department of Natural Resources(US)