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Tang, Xin; Zhang, Jiawei; He, Yichun; Zhang, Xinhe; Lin, Zuwan; Partarrieu, Sebastian; Hanna, Emma Bou; Ren, Zhaolin; Shen, Hao; Yang, Yuhong; et al (, Nature Communications)Abstract Current biotechnologies can simultaneously measure multiple high-dimensional modalities (e.g., RNA, DNA accessibility, and protein) from the same cells. A combination of different analytical tasks (e.g., multi-modal integration and cross-modal analysis) is required to comprehensively understand such data, inferring how gene regulation drives biological diversity and functions. However, current analytical methods are designed to perform a single task, only providing a partial picture of the multi-modal data. Here, we present UnitedNet, an explainable multi-task deep neural network capable of integrating different tasks to analyze single-cell multi-modality data. Applied to various multi-modality datasets (e.g., Patch-seq, multiome ATAC + gene expression, and spatial transcriptomics), UnitedNet demonstrates similar or better accuracy in multi-modal integration and cross-modal prediction compared with state-of-the-art methods. Moreover, by dissecting the trained UnitedNet with the explainable machine learning algorithm, we can directly quantify the relationship between gene expression and other modalities with cell-type specificity. UnitedNet is a comprehensive end-to-end framework that could be broadly applicable to single-cell multi-modality biology. This framework has the potential to facilitate the discovery of cell-type-specific regulation kinetics across transcriptomics and other modalities.more » « less
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Li, Qiang; Lin, Zuwan; Liu, Ren; Tang, Xin; Huang, Jiahao; He, Yichun; Sui, Xin; Tian, Weiwen; Shen, Hao; Zhou, Haowen; et al (, Cell)
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