Predicting Disease Susceptibility with Machine Learning in Genomics
Abstract
This research paper aims at reviewing the field of genomics and its use of machine learning to find out the chances of one getting a disease. Genetic risk prediction currently incorporates various strategies, and new ideas to conducting analysis based on genome massive dimensionality are introduced here. Paper research focuses on several machine learning algorithms; the ones considered are support vector machines, random forests, and deep neural networks that determine disease risk. We also explore the multi-integration of omics data and how explainable AI can be used to derive biological understanding. These methodologies are thus applied in case studies involving cardiovascular diseases, cancers and inherited genetic disorder conditions. After reviewing the current research, the paper also presents clinical implications, as well as directions for future research for such a rapidly growing topic. Based on these observations, widening the use of integrated machine learning methods can help advance the accuracy of disease risk prediction, and can be applied in the development of a preventive and individualized medicine.
Letters in High Energy Physics (LHEP) is an open access journal. The articles in LHEP are distributed according to the terms of the creative commons license CC-BY 4.0. Under the terms of this license, copyright is retained by the author while use, distribution and reproduction in any medium are permitted provided proper credit is given to original authors and sources.
Terms of Submission
By submitting an article for publication in LHEP, the submitting author asserts that:
1. The article presents original contributions by the author(s) which have not been published previously in a peer-reviewed medium and are not subject to copyright protection.
2. The co-authors of the article, if any, as well as any institution whose approval is required, agree to the publication of the article in LHEP.