What machine learning can do for developmental biology

Development. 2021 Jan 10;148(1):dev188474. doi: 10.1242/dev.188474.

Abstract

Developmental biology has grown into a data intensive science with the development of high-throughput imaging and multi-omics approaches. Machine learning is a versatile set of techniques that can help make sense of these large datasets with minimal human intervention, through tasks such as image segmentation, super-resolution microscopy and cell clustering. In this Spotlight, I introduce the key concepts, advantages and limitations of machine learning, and discuss how these methods are being applied to problems in developmental biology. Specifically, I focus on how machine learning is improving microscopy and single-cell 'omics' techniques and data analysis. Finally, I provide an outlook for the futures of these fields and suggest ways to foster new interdisciplinary developments.

Keywords: Artificial intelligence; Big data; Machine learning; Neural networks.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Deep Learning
  • Developmental Biology*
  • Image Processing, Computer-Assisted
  • Machine Learning*
  • Single-Cell Analysis