Deconer: An Evaluation Toolkit for Reference-based Deconvolution Methods Using Gene Expression Data.

Wei Zhang, Xianglin Zhang, Qiao Liu, Lei Wei, Xu Qiao, Rui Gao, Zhiping Liu, Xiaowo Wang
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Abstract

In recent years, computational methods for quantifying cell-type proportions from transcription data have gained significant attention, particularly those reference-based methods which have demonstrated high accuracy. However, there is currently a lack of comprehensive evaluation and guidance for available reference-based deconvolution methods in cell-type deconvolution analysis. In this study, we introduce Deconvolution Evaluator (Deconer), a comprehensive toolkit for the evaluation of reference-based deconvolution methods. Deconer provides various simulated and real gene expression datasets, including both bulk and single-cell sequencing data, and offers multiple visualization interfaces. By utilizing Deconer, we conducted systematic comparisons of 16 reference-based deconvolution methods from different perspectives, including method robustness, accuracy in deconvolving rare components, signature gene selection performance, and external reference construction capability. We also performed an in-depth analysis of the application scenarios and challenges in cell-type deconvolution methods. Finally, we provided constructive suggestions for users to select and develop cell-type deconvolution algorithms. This study provides novel insights for researchers, assisting them in choosing appropriate toolkits, applying solutions in clinical contexts, and advancing the development of deconvolution tools tailored to gene expression data. The tutorials, manual, source code, and demo data of Deconer are publicly available at https://honchkrow.github.io/Deconer/ and https://ngdc.cncb.ac.cn/biocode/tool/7577.

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Deconer:使用基因表达数据对基于参考的解卷积方法进行评估的工具包。
近年来,从转录数据中定量细胞类型比例的计算方法得到了极大的关注,特别是那些基于参考的方法,这些方法已经证明了很高的准确性。然而,目前对细胞比例反褶积分析中可用的基于参考的反褶积方法缺乏全面的评价和指导。在本研究中,我们介绍了反卷积评估器(Deconer),这是一个用于评估基于参考的反卷积方法的综合工具包。Deconer提供各种模拟和真实的基因表达数据集,包括批量和单细胞测序数据,并提供多个可视化界面。通过Deconer,我们从鲁棒性、稀有成分反卷积的准确性、特征基因选择和外部参考文献构建等不同角度对16种基于参考的反卷积方法进行了系统比较。我们还对细胞比例反卷积方法的应用场景和挑战进行了深入分析。最后,我们为用户选择和开发细胞比例反卷积算法提供了建设性的建议。这项工作为研究人员提供了新的见解,帮助他们选择合适的工具包,在临床环境中应用解决方案,并推进针对基因表达数据量身定制的反褶积工具的开发。Deconer的教程、手册、源代码和演示数据可在https://honchkrow.github.io/Deconer/上公开获取。
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