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通过单细胞测序和机器学习方法探索人类和小鼠小脑的基因组模式。

Exploring the Genomic Patterns in Human and Mouse Cerebellums Via Single-Cell Sequencing and Machine Learning Method.

作者信息

Li ZhanDong, Wang Deling, Liao HuiPing, Zhang ShiQi, Guo Wei, Chen Lei, Lu Lin, Huang Tao, Cai Yu-Dong

机构信息

College of Food Engineering, Jilin Engineering Normal University, Changchun, China.

Department of Radiology, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, China.

出版信息

Front Genet. 2022 Mar 4;13:857851. doi: 10.3389/fgene.2022.857851. eCollection 2022.

Abstract

In mammals, the cerebellum plays an important role in movement control. Cellular research reveals that the cerebellum involves a variety of sub-cell types, including Golgi, granule, interneuron, and unipolar brush cells. The functional characteristics of cerebellar cells exhibit considerable differences among diverse mammalian species, reflecting a potential development and evolution of nervous system. In this study, we aimed to recognize the transcriptional differences between human and mouse cerebellum in four cerebellar sub-cell types by using single-cell sequencing data and machine learning methods. A total of 321,387 single-cell sequencing data were used. The 321,387 cells included 4 cell types, i.e., Golgi (5,048, 1.57%), granule (250,307, 77.88%), interneuron (60,526, 18.83%), and unipolar brush (5,506, 1.72%) cells. Our results showed that by using gene expression profiles as features, the optimal classification model could achieve very high even perfect performance for Golgi, granule, interneuron, and unipolar brush cells, respectively, suggesting a remarkable difference between the genomic profiles of human and mouse. Furthermore, a group of related genes and rules contributing to the classification was identified, which might provide helpful information for deepening the understanding of cerebellar cell heterogeneity and evolution.

摘要

在哺乳动物中,小脑在运动控制中起着重要作用。细胞研究表明,小脑涉及多种亚细胞类型,包括高尔基细胞、颗粒细胞、中间神经元和单极刷状细胞。不同哺乳动物物种的小脑细胞功能特征存在显著差异,这反映了神经系统的潜在发育和进化。在本研究中,我们旨在通过使用单细胞测序数据和机器学习方法,识别四种小脑亚细胞类型中人类和小鼠小脑之间的转录差异。总共使用了321,387个单细胞测序数据。这321,387个细胞包括4种细胞类型,即高尔基细胞(5,048个,占1.57%)、颗粒细胞(250,307个,占77.88%)、中间神经元(60,526个,占18.83%)和单极刷状细胞(5,506个,占1.72%)。我们的结果表明,以基因表达谱为特征,最优分类模型分别对高尔基细胞、颗粒细胞、中间神经元和单极刷状细胞可实现非常高甚至完美的性能,这表明人类和小鼠的基因组图谱存在显著差异。此外,还鉴定出一组有助于分类的相关基因和规则,这可能为加深对小脑细胞异质性和进化的理解提供有用信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/722d/8930846/f9019e69e984/fgene-13-857851-g001.jpg

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