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Abstract: The advent of precision medicine marks a transformative shift from traditional symptom-based treatments to more personalized approaches that account for individual genetic variations. Central to this evolution is the integration of genomic data, which offers profound insights into the biological underpinnings of disease and enables the development of targeted therapies. Machine learning (ML) has emerged as a pivotal tool in this domain, capable of deciphering complex patterns in high-dimensional genomic data, thereby enhancing early disease risk prediction and informing tailored therapeutic strategies. This review explores the intersection of machine learning and genomic medicine, highlighting how advanced computational techniques, including deep learning and other ML approaches, are driving innovation in personalized healthcare. By examining the application of these technologies in areas such as disease risk assessment, precision oncology, and pharmacogenomics, this paper elucidates the current state of the field and identifies future directions for research. Ethical considerations, such as data privacy, model transparency, and bias mitigation, are also discussed, emphasizing the need for responsible and equitable implementation of ML in clinical practice. Through this analysis, the paper aims to underscore the potential of machine learning to revolutionize personalized medicine and improve patient outcomes.
Saraswat et al. (Fri,) studied this question.