scDLC: a deep learning framework to classify large sample single-cell RNA-seq data

BMC Genomics. 2022 Jul 12;23(1):504. doi: 10.1186/s12864-022-08715-1.

Abstract

Background: Using single-cell RNA sequencing (scRNA-seq) data to diagnose disease is an effective technique in medical research. Several statistical methods have been developed for the classification of RNA sequencing (RNA-seq) data, including, for example, Poisson linear discriminant analysis (PLDA), negative binomial linear discriminant analysis (NBLDA), and zero-inflated Poisson logistic discriminant analysis (ZIPLDA). Nevertheless, few existing methods perform well for large sample scRNA-seq data, in particular when the distribution assumption is also violated.

Results: We propose a deep learning classifier (scDLC) for large sample scRNA-seq data, based on the long short-term memory recurrent neural networks (LSTMs). Our new scDLC does not require a prior knowledge on the data distribution, but instead, it takes into account the dependency of the most outstanding feature genes in the LSTMs model. LSTMs is a special recurrent neural network, which can learn long-term dependencies of a sequence.

Conclusions: Simulation studies show that our new scDLC performs consistently better than the existing methods in a wide range of settings with large sample sizes. Four real scRNA-seq datasets are also analyzed, and they coincide with the simulation results that our new scDLC always performs the best. The code named "scDLC" is publicly available at https://github.com/scDLC-code/code .

Keywords: Classifier; Deep learning; Single-cell RNA sequencing.

MeSH terms

  • Deep Learning*
  • Discriminant Analysis
  • Gene Expression Profiling / methods
  • RNA / genetics
  • RNA-Seq
  • Sequence Analysis, RNA / methods
  • Single-Cell Analysis / methods

Substances

  • RNA