AI ALGORITHMS FOR GENOMIC DATA ANALYSIS AND DISEASE RISK PREDICTION

loading.default
thumbnail.default.alt

item.page.date

item.page.authors

item.page.journal-title

item.page.journal-issn

item.page.volume-title

item.page.publisher

Modern American Journals

item.page.abstract

Over the past two decades, genomic and omics data generation has increased exponentially. High-throughput sequencing technologies, GWAS, and large-scale biobank projects have produced datasets containing millions of genetic variants across diverse human populations. These data promise deep insights into genetic contributions to disease risk, progression, and therapeutic response. However, conventional statistical models — like linear or logistic regression — frequently fail to capture complex genotype–phenotype relationships, epistasis (gene–gene interactions), nonlinearity, and the influence of regulatory or epigenetic factors (especially for complex diseases) (Cordell, 2009).

item.page.description

item.page.subject

item.page.citation

item.page.collections

item.page.endorsement

item.page.review

item.page.supplemented

item.page.referenced