Artificial neural network system for cell classification using single cell RNA expression

We implemented an automated system for single-cell classification using artificial neural networks (ANN). Our system takes single-cell gene expression sparse matrices and trains ANN to classify cell types and subtypes. The assemblies of ANNs predict cell classes by voting. We tested the system in a...

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Bibliographic Details
Main Authors: Lin, Xin, Zhong, Jiahui, Lyu, Minjie, Lin, Sen, Keskin, Derin B., Zhang, Guanglan, Brusic, Vladimir, Chitkushev, Lou T.
Format: Conference or Workshop Item
Language:English
Published: 2021
Subjects:
Online Access:https://eprints.nottingham.ac.uk/64682/
Description
Summary:We implemented an automated system for single-cell classification using artificial neural networks (ANN). Our system takes single-cell gene expression sparse matrices and trains ANN to classify cell types and subtypes. The assemblies of ANNs predict cell classes by voting. We tested the system in a case study where we trained ANNs with a dataset containing approximately 120,000 single cells and tested the resulting model using an independent data set of 13,000 single cells. The overall accuracy of the 5-class classification was 95%. We trained and tested a total of 100 ANNs in 10 cycles. The prediction system demonstrated excellent reproducibility. The analysis of misclassifications indicated that 2% were likely classification errors, while the remaining 3% were likely due to mislabeled types and subtypes in the test set.