Using Machine Learning to Predict Bacterial Growth According to the Media Components | Dr Bei-Wen Ying
Feb 25, 2022•8 min
Episode description
Bacterial growth depends on the complex interactions of a multitude of chemical components. Microbiologists have long attempted to predict bacterial growth according to culture media components, and have employed a variety of mathematical and computational models to this end. Dr Bei-Wen Ying and her colleagues at the University of Tsukuba, Japan, successfully applied machine learning to understand the contribution of media culture components to bacterial growth. Their work makes a significant contribution to growth prediction and demonstrates that machine learning can be employed in the exploration of the complex dynamics that regulate living systems.
For the best experience, listen in Metacast app for iOS or Android
