Login / Signup

Autoencoder neural networks enable low dimensional structure analyses of microbial growth dynamics.

Yasa BaigHelena R MaHelen XuLingchong You
Published in: Nature communications (2023)
The ability to effectively represent microbiome dynamics is a crucial challenge in their quantitative analysis and engineering. By using autoencoder neural networks, we show that microbial growth dynamics can be compressed into low-dimensional representations and reconstructed with high fidelity. These low-dimensional embeddings are just as effective, if not better, than raw data for tasks such as identifying bacterial strains, predicting traits like antibiotic resistance, and predicting community dynamics. Additionally, we demonstrate that essential dynamical information of these systems can be captured using far fewer variables than traditional mechanistic models. Our work suggests that machine learning can enable the creation of concise representations of high-dimensional microbiome dynamics to facilitate data analysis and gain new biological insights.
Keyphrases
  • neural network
  • data analysis
  • machine learning
  • working memory
  • microbial community
  • escherichia coli
  • mental health
  • big data
  • gene expression
  • dna methylation
  • genome wide