计算机科学
降维
支持向量机
维数之咒
领域(数学)
脚本语言
机器学习
数据挖掘
随机森林
人工智能
数据科学
数学
纯数学
操作系统
作者
Dylan Feldner-Busztin,Panos Firbas Nisantzis,Shelley J. Edmunds,Gergely Boza,Fernando Racimo,Shyam Gopalakrishnan,Morten T. Limborg,Leo Lahti,Gonzalo G. de Polavieja
出处
期刊:Bioinformatics
[Oxford University Press]
日期:2023-01-11
卷期号:39 (2)
被引量:39
标识
DOI:10.1093/bioinformatics/btad021
摘要
Abstract Motivation Machine learning (ML) methods are motivated by the need to automate information extraction from large datasets in order to support human users in data-driven tasks. This is an attractive approach for integrative joint analysis of vast amounts of omics data produced in next generation sequencing and other -omics assays. A systematic assessment of the current literature can help to identify key trends and potential gaps in methodology and applications. We surveyed the literature on ML multi-omic data integration and quantitatively explored the goals, techniques and data involved in this field. We were particularly interested in examining how researchers use ML to deal with the volume and complexity of these datasets. Results Our main finding is that the methods used are those that address the challenges of datasets with few samples and many features. Dimensionality reduction methods are used to reduce the feature count alongside models that can also appropriately handle relatively few samples. Popular techniques include autoencoders, random forests and support vector machines. We also found that the field is heavily influenced by the use of The Cancer Genome Atlas dataset, which is accessible and contains many diverse experiments. Availability and implementation All data and processing scripts are available at this GitLab repository: https://gitlab.com/polavieja_lab/ml_multi-omics_review/ or in Zenodo: https://doi.org/10.5281/zenodo.7361807. Supplementary information Supplementary data are available at Bioinformatics online.
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