Issue 5, 2018

Perspectives and applications of machine learning for evolutionary developmental biology

Abstract

Evolutionary Developmental Biology (Evo-Devo) is an ever-expanding field that aims to understand how development was modulated by the evolutionary process. In this sense, “omic” studies emerged as a powerful ally to unravel the molecular mechanisms underlying development. In this scenario, bioinformatics tools become necessary to analyze the growing amount of information. Among computational approaches, machine learning stands out as a promising field to generate knowledge and trace new research perspectives for bioinformatics. In this review, we aim to expose the current advances of machine learning applied to evolution and development. We draw clear perspectives and argue how evolution impacted machine learning techniques.

Graphical abstract: Perspectives and applications of machine learning for evolutionary developmental biology

Article information

Article type
Review Article
Submitted
15 May 2018
Accepted
10 Aug 2018
First published
13 Aug 2018

Mol. Omics, 2018,14, 289-306

Perspectives and applications of machine learning for evolutionary developmental biology

B. C. Feltes, B. I. Grisci, J. D. F. Poloni and M. Dorn, Mol. Omics, 2018, 14, 289 DOI: 10.1039/C8MO00111A

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