Machine learning for profile prediction in genomics
Jacob Schreiber, Ritambhara Singh
Abstract
A recent deluge of publicly available multi-omics data has fueled the development of machine learning methods aimed at investigating important questions in genomics. Although the motivations for these methods vary, a task that is commonly adopted is that of profile prediction, where predictions are made for one or more forms of biochemical activity along the genome, for example, histone modification, chromatin accessibility, or protein binding. In this review, we give an overview of the research works performing profile prediction, define two broad categories of profile prediction tasks, and discuss the types of scientific questions that can be answered in each.
Topics & Concepts
GenomicsTask (project management)Computer scienceData scienceGenome BiologyMachine learningComputational biologyArtificial intelligenceGenomeBiologyEngineeringGeneticsGeneSystems engineeringGenomics and Chromatin DynamicsBioinformatics and Genomic NetworksEpigenetics and DNA Methylation