Rapid detection of microbiota cell type diversity using machine-learned classification of flow cytometry data.
Birge D Özel DuyganNoushin HadadiAmbrin Farizah BabuMarkus SeyfriedJan Roelof Van der MeerPublished in: Communications biology (2020)
The study of complex microbial communities typically entails high-throughput sequencing and downstream bioinformatics analyses. Here we expand and accelerate microbiota analysis by enabling cell type diversity quantification from multidimensional flow cytometry data using a supervised machine learning algorithm of standard cell type recognition (CellCognize). As a proof-of-concept, we trained neural networks with 32 microbial cell and bead standards. The resulting classifiers were extensively validated in silico on known microbiota, showing on average 80% prediction accuracy. Furthermore, the classifiers could detect shifts in microbial communities of unknown composition upon chemical amendment, comparable to results from 16S-rRNA-amplicon analysis. CellCognize was also able to quantify population growth and estimate total community biomass productivity, providing estimates similar to those from 14C-substrate incorporation. CellCognize complements current sequencing-based methods by enabling rapid routine cell diversity analysis. The pipeline is suitable to optimize cell recognition for recurring microbiota types, such as in human health or engineered systems.
Keyphrases
- machine learning
- flow cytometry
- single cell
- human health
- neural network
- deep learning
- risk assessment
- climate change
- cell therapy
- big data
- stem cells
- mental health
- electronic health record
- microbial community
- high throughput sequencing
- heavy metals
- quantum dots
- mesenchymal stem cells
- clinical practice
- sewage sludge
- amino acid