CellMemory: hierarchical interpretation of out-of-distribution cells using bottlenecked transformer
Author(s)
Wang, Qifei; Zhu, He; Hu, Yiwen; Chen, Yanjie; Wang, Yuwei; Li, Guochao; Li, Yun; Chen, Jinfeng; Zhang, Xuegong; Zou, James; Kellis, Manolis; Li, Yue; Liu, Dianbo; Jiang, Lan; ... Show more Show less
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Machine learning methods, especially Transformer architectures, have been widely employed in single-cell omics studies. However, interpretability and accurate representation of out-of-distribution (OOD) cells remains challenging. Inspired by the global workspace theory in cognitive neuroscience, we introduce CellMemory, a bottlenecked Transformer with improved generalizability designed for the hierarchical interpretation of OOD cells. Without pre-training, CellMemory outperforms existing single-cell foundation models and accurately deciphers spatial transcriptomics at high resolution. Leveraging its robust representations, we further elucidate malignant cells and their founder cells across patients, providing reliable characterizations of the cellular changes caused by the disease.
Date issued
2025-06-23Department
Broad Institute of MIT and Harvard; Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryJournal
Genome Biology
Publisher
BioMed Central
Citation
Wang, Q., Zhu, H., Hu, Y. et al. CellMemory: hierarchical interpretation of out-of-distribution cells using bottlenecked transformer. Genome Biol 26, 178 (2025).
Version: Final published version