In single-cell datasets, patient labels indicating disease status (e.g., "sick" or "not sick") are typically available, but individual cell labels indicating which of a patient's cells are associated with their disease state are generally unknown. To address this, we introduce mixture modeling for multiple-instance learning (MMIL), an expectation-maximization approach that trains cell-level binary classifiers using only patient-level labels. Applied to primary samples from patients with acute leukemia, MMIL accurately separates leukemia from nonleukemia baseline cells, including rare minimal residual disease (MRD) cells; generalizes across tissues and treatment time points; and identifies biologically relevant features with accuracy approaching that of a hematopathologist. MMIL can also incorporate cell labels when they are available, creating a robust framework for leveraging both labeled and unlabeled cells. MMIL provides a flexible modeling framework for cell classification, especially in scenarios with unknown gold-standard cell labels.

Craig, E., Keyes, T., Sarno, J., D'Silva, J., Domizi, P., Zaslavsky, M., et al. (2025). Annotation-free discovery of disease-relevant cells in single-cell datasets. SCIENCE ADVANCES, 11(35) [10.1126/sciadv.adv5019].

Annotation-free discovery of disease-relevant cells in single-cell datasets

Sarno J.;
2025

Abstract

In single-cell datasets, patient labels indicating disease status (e.g., "sick" or "not sick") are typically available, but individual cell labels indicating which of a patient's cells are associated with their disease state are generally unknown. To address this, we introduce mixture modeling for multiple-instance learning (MMIL), an expectation-maximization approach that trains cell-level binary classifiers using only patient-level labels. Applied to primary samples from patients with acute leukemia, MMIL accurately separates leukemia from nonleukemia baseline cells, including rare minimal residual disease (MRD) cells; generalizes across tissues and treatment time points; and identifies biologically relevant features with accuracy approaching that of a hematopathologist. MMIL can also incorporate cell labels when they are available, creating a robust framework for leveraging both labeled and unlabeled cells. MMIL provides a flexible modeling framework for cell classification, especially in scenarios with unknown gold-standard cell labels.
Articolo in rivista - Articolo scientifico
single cell annotation-free
English
27-ago-2025
2025
11
35
eadv5019
none
Craig, E., Keyes, T., Sarno, J., D'Silva, J., Domizi, P., Zaslavsky, M., et al. (2025). Annotation-free discovery of disease-relevant cells in single-cell datasets. SCIENCE ADVANCES, 11(35) [10.1126/sciadv.adv5019].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/574983
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