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A comprehensive benchmarking with practical guidelines for cellular deconvolution of spatial transcriptomics

Haoyang Li, Juexiao Zhou, Zhongxiao Li, Siyuan Chen, Xingyu Liao, Bin Zhang, Ruochi Zhang, Yu Wang, Shiwei Sun, Xin Gao

2023Nature Communications246 citationsDOIOpen Access PDF

Abstract

Spatial transcriptomics technologies are used to profile transcriptomes while preserving spatial information, which enables high-resolution characterization of transcriptional patterns and reconstruction of tissue architecture. Due to the existence of low-resolution spots in recent spatial transcriptomics technologies, uncovering cellular heterogeneity is crucial for disentangling the spatial patterns of cell types, and many related methods have been proposed. Here, we benchmark 18 existing methods resolving a cellular deconvolution task with 50 real-world and simulated datasets by evaluating the accuracy, robustness, and usability of the methods. We compare these methods comprehensively using different metrics, resolutions, spatial transcriptomics technologies, spot numbers, and gene numbers. In terms of performance, CARD, Cell2location, and Tangram are the best methods for conducting the cellular deconvolution task. To refine our comparative results, we provide decision-tree-style guidelines and recommendations for method selection and their additional features, which will help users easily choose the best method for fulfilling their concerns.

Topics & Concepts

Computer scienceDeconvolutionBenchmarkingBenchmark (surveying)UsabilityRobustness (evolution)Spatial analysisData miningMachine learningArtificial intelligenceData scienceBiologyHuman–computer interactionCartographyGeneAlgorithmRemote sensingMarketingBusinessGeologyGeographyBiochemistrySingle-cell and spatial transcriptomicsGene expression and cancer classificationCell Image Analysis Techniques
A comprehensive benchmarking with practical guidelines for cellular deconvolution of spatial transcriptomics | Litcius