scVIC: Deep generative modeling of heterogeneity for scRNA-seq data

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Jiankang Xiong, Fuzhou Gong, Liang Ma, Lin Wan
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引用次数: 0

Abstract

Single-cell RNA sequencing (scRNA-seq) has become a valuable tool for studying cellular heterogeneity. However, the analysis of scRNA-seq data is challenging because of inherent noise and technical variability. Existing methods often struggle to simultaneously explore heterogeneity across cells, handle dropout events, and account for batch effects. These drawbacks call for a robust and comprehensive method that can address these challenges and provide accurate insights into heterogeneity at the single-cell level. In this study, we introduce scVIC, an algorithm designed to account for variational inference, while simultaneously handling biological heterogeneity and batch effects at the single-cell level. scVIC explicitly models both biological heterogeneity and technical variability to learn cellular heterogeneity in a manner free from dropout events and the bias of batch effects. By leveraging variational inference, we provide a robust framework for inferring the parameters of scVIC. To test the performance of scVIC, we employed both simulated and biological scRNA-seq datasets, either including, or not, batch effects. scVIC was found to outperform other approaches because of its superior clustering ability and circumvention of the batch effects problem. The code of scVIC and replication for this study are available at https://github.com/HiBearME/scVIC/tree/v1.0. Supplementary data are available at Bioinformatics Advances online.
scVIC:scRNA-seq 数据异质性深度生成建模
单细胞 RNA 测序(scRNA-seq)已成为研究细胞异质性的重要工具。然而,由于固有的噪声和技术变异性,scRNA-seq 数据分析具有挑战性。现有的方法往往难以同时探索细胞间的异质性、处理脱落事件并考虑批次效应。这些弊端要求有一种稳健而全面的方法来应对这些挑战,并准确地洞察单细胞水平的异质性。 在本研究中,我们介绍了 scVIC,这是一种旨在考虑变异推理的算法,同时能在单细胞水平上处理生物异质性和批次效应。scVIC 明确地对生物异质性和技术变异性进行建模,以学习细胞异质性,避免了辍学事件和批次效应的偏差。通过利用变异推理,我们为推断 scVIC 的参数提供了一个稳健的框架。为了测试 scVIC 的性能,我们使用了模拟和生物 scRNA-seq 数据集,包括或不包括批次效应。结果发现 scVIC 优于其他方法,因为它具有卓越的聚类能力并能规避批次效应问题。 本研究的 scVIC 代码和复制可在 https://github.com/HiBearME/scVIC/tree/v1.0 上获取。 补充数据可在 Bioinformatics Advances 在线查阅。
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CiteScore
1.60
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