Tang Hui, Zhong Jia-Yuan, Yu Xiang-Tian, Chai Hua, Liu Rui, Zeng Tao
School of Mathematics, Foshan University, Foshan 528000, China.
Clinical Research Center, Shanghai Sixth People's Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China.
iScience. 2024 Nov 2;27(12):111131. doi: 10.1016/j.isci.2024.111131. eCollection 2024 Dec 20.
There is an urgent need to understand the molecular landscape beyond the conventional cellular landscape, maximizing the translational use and generalized interpretation of state-of-the-art single-cell genomic techniques in biological studies. We introduced a multimodal explainable artificial intelligence (xAI) model Vec3D to identify a joint definition of cellular states and their distribution in a quantified graphic organization as structured molecular landscape (SML). First, Vec3D substantially improves the accuracy and efficiency of multimodal data analysis. Further, an SML was learned on CITE-seq data of human peripheral blood mononuclear cells (PBMCs), simultaneously revealing the predictive multi-label cell state and corresponding joint cell state markers with complementary effects from genes and proteins. Third, Vec3D demonstrated that the spatial-temporal SML efficiently characterizes molecular dynamics of cell lineages during human lung development. Collectively, Vec3D will be a broadly applicable computational method in the principle of "AI-for-biology", providing a unified framework for understanding cellular homeostasis and imbalance through SML dynamics.
迫切需要了解超越传统细胞格局的分子格局,以最大限度地提高最新单细胞基因组技术在生物学研究中的转化应用和广义解释。我们引入了一种多模态可解释人工智能(xAI)模型Vec3D,以在量化的图形组织中识别细胞状态及其分布的联合定义,即结构化分子格局(SML)。首先,Vec3D显著提高了多模态数据分析的准确性和效率。其次,基于人类外周血单核细胞(PBMC)的CITE-seq数据学习了SML,同时揭示了具有预测性的多标签细胞状态以及来自基因和蛋白质的具有互补作用的相应联合细胞状态标志物。第三,Vec3D表明时空SML有效地表征了人类肺发育过程中细胞谱系的分子动力学。总体而言,Vec3D将成为“生物学人工智能”原则下广泛适用的计算方法,通过SML动力学为理解细胞稳态和失衡提供一个统一的框架。