离散因子和连续因子的联合推断可捕捉细胞类型间和细胞类型内的变异性。

IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Nature computational science Pub Date : 2024-09-23 DOI:10.1038/s43588-024-00696-3
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引用次数: 0

摘要

我们开发了离散耦合自动编码器混合模型推断(MMIDAS),这是一种无监督变异框架,可联合学习离散聚类和连续聚类的特定变异性。当应用于单模态或多模态单细胞 omic 数据时,MMIDAS 学习到的单细胞表征具有稳健的细胞类型定义和可解释的连续细胞内类型变异性。
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Joint inference of discrete and continuous factors captures variability across and within cell types
We developed mixture model inference with discrete-coupled autoencoders (MMIDAS), an unsupervised variational framework that jointly learns discrete clusters and continuous cluster-specific variability. When applied to unimodal or multimodal single-cell omic data, MMIDAS learned single-cell representations with robust cell type definitions and interpretable, continuous within-cell type variability.
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