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Deep learning predicts microbial interactions from self-organized spatiotemporal patterns
- Source :
- Computational and Structural Biotechnology Journal, Computational and Structural Biotechnology Journal, Vol 18, Iss, Pp 1259-1269 (2020)
- Publication Year :
- 2020
- Publisher :
- Research Network of Computational and Structural Biotechnology, 2020.
-
Abstract
- Graphical abstract<br />Microbial communities organize into spatial patterns that are largely governed by interspecies interactions. This phenomenon is an important metric for understanding community functional dynamics, yet the use of spatial patterns for predicting microbial interactions is currently lacking. Here we propose supervised deep learning as a new tool for network inference. An agent-based model was used to simulate the spatiotemporal evolution of two interacting organisms under diverse growth and interaction scenarios, the data of which was subsequently used to train deep neural networks. For small-size domains (100 µm × 100 µm) over which interaction coefficients are assumed to be invariant, we obtained fairly accurate predictions, as indicated by an average R2 value of 0.84. In application to relatively larger domains (450 µm × 450 µm) where interaction coefficients are varying in space, deep learning models correctly predicted spatial distributions of interaction coefficients without any additional training. Lastly, we evaluated our model against real biological data obtained using Pseudomonas fluorescens and Escherichia coli co-cultures treated with polymeric chitin or N-acetylglucosamine, the hydrolysis product of chitin. While P. fluorescens can utilize both substrates for growth, E. coli lacked the ability to degrade chitin. Consistent with our expectations, our model predicted context-dependent interactions across two substrates, i.e., degrader-cheater relationship on chitin polymers and competition on monomers. The combined use of the agent-based model and machine learning algorithm successfully demonstrates how to infer microbial interactions from spatially distributed data, presenting itself as a useful tool for the analysis of more complex microbial community interactions.
- Subjects :
- Computer science
lcsh:Biotechnology
Functional dynamics
Biophysics
Inference
Biochemistry
Network inference
03 medical and health sciences
0302 clinical medicine
Structural Biology
lcsh:TP248.13-248.65
Machine learning
Genetics
Invariant (mathematics)
030304 developmental biology
ComputingMethodologies_COMPUTERGRAPHICS
0303 health sciences
Biological data
Soil microbiomes
business.industry
Deep learning
Computer Science Applications
Agent-based modeling
030220 oncology & carcinogenesis
Metric (mathematics)
Spatial ecology
Deep neural networks
Microscopy imaging technology
Artificial intelligence
Biological system
business
Biotechnology
Research Article
Subjects
Details
- Language :
- English
- ISSN :
- 20010370
- Volume :
- 18
- Database :
- OpenAIRE
- Journal :
- Computational and Structural Biotechnology Journal
- Accession number :
- edsair.doi.dedup.....4ee3f05fcba2170e01912326664b01c3