Litcius/Paper detail

NRTPredictor: identifying rice root cell state in single-cell RNA-seq via ensemble learning

Hao Wang, Yunan Lin, Shen Yan, Jingpeng Hong, Jiarui Tan, Yanqing Chen, Yongsheng Cao, Wei Fang

2023Plant Methods14 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Single-cell RNA sequencing (scRNA-seq) measurements of gene expression show great promise for studying the cellular heterogeneity of rice roots. How precisely annotating cell identity is a major unresolved problem in plant scRNA-seq analysis due to the inherent high dimensionality and sparsity. RESULTS: To address this challenge, we present NRTPredictor, an ensemble-learning system, to predict rice root cell stage and mine biomarkers through complete model interpretability. The performance of NRTPredictor was evaluated using a test dataset, with 98.01% accuracy and 95.45% recall. With the power of interpretability provided by NRTPredictor, our model recognizes 110 marker genes partially involved in phenylpropanoid biosynthesis. Expression patterns of rice root could be mapped by the above-mentioned candidate genes, showing the superiority of NRTPredictor. Integrated analysis of scRNA and bulk RNA-seq data revealed aberrant expression of Epidermis cell subpopulations in flooding, Pi, and salt stresses. CONCLUSION: Taken together, our results demonstrate that NRTPredictor is a useful tool for automated prediction of rice root cell stage and provides a valuable resource for deciphering the rice root cellular heterogeneity and the molecular mechanisms of flooding, Pi, and salt stresses. Based on the proposed model, a free webserver has been established, which is available at https://www.cgris.net/nrtp .

Topics & Concepts

InterpretabilityComputational biologyBiologyGeneArtificial intelligenceComputer scienceGeneticsSingle-cell and spatial transcriptomicsRemote Sensing in AgricultureCell Image Analysis Techniques