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MAGIC-DR: An interpretable machine-learning guided approach for acute myeloid leukemia measurable residual disease analysis.
Shopsowitz, Kevin; Lofroth, Jack; Chan, Geoffrey; Kim, Jubin; Rana, Makhan; Brinkman, Ryan; Weng, Andrew; Medvedev, Nadia; Wang, Xuehai.
Afiliação
  • Shopsowitz K; Division of Hematopathology, Vancouver General Hospital, Vancouver, British Columbia, Canada.
  • Lofroth J; Department of pathology and laboratory medicine, University of British Columbia, Vancouver, British Columbia, Canada.
  • Chan G; Faculty of Medicine, University of British Columbia, Vancouver, British Columbia, Canada.
  • Kim J; Division of Hematopathology, Vancouver General Hospital, Vancouver, British Columbia, Canada.
  • Rana M; Terry Fox Lab, BC Cancer, Vancouver, British Columbia, Canada.
  • Brinkman R; Division of Hematopathology, Vancouver General Hospital, Vancouver, British Columbia, Canada.
  • Weng A; Terry Fox Lab, BC Cancer, Vancouver, British Columbia, Canada.
  • Medvedev N; Department of pathology and laboratory medicine, University of British Columbia, Vancouver, British Columbia, Canada.
  • Wang X; Terry Fox Lab, BC Cancer, Vancouver, British Columbia, Canada.
Article em En | MEDLINE | ID: mdl-38415807
ABSTRACT
Multiparameter flow cytometry is widely used for acute myeloid leukemia minimal residual disease testing (AML MRD) but is time consuming and demands substantial expertise. Machine learning offers potential advancements in accuracy and efficiency, but has yet to be widely adopted for this application. To explore this, we trained single cell XGBoost classifiers from 98 diagnostic AML cell populations and 30 MRD negative samples. Performance was assessed by cross-validation. Predictions were integrated with UMAP as a heatmap parameter for an augmented/interactive AML MRD analysis framework, which was benchmarked against traditional MRD analysis for 25 test cases. The results showed that XGBoost achieved a median AUC of 0.97, effectively distinguishing diverse AML cell populations from normal cells. When integrated with UMAP, the classifiers highlighted MRD populations against the background of normal events. Our pipeline, MAGIC-DR, incorporated classifier predictions and UMAP into flow cytometry standard (FCS) files. This enabled a human-in-the-loop machine learning guided MRD workflow. Validation against conventional analysis for 25 MRD samples showed 100% concordance in myeloid blast detection, with MAGIC-DR also identifying several immature monocytic populations not readily found by conventional analysis. In conclusion, Integrating a supervised classifier with unsupervised dimension reduction offers a robust method for AML MRD analysis that can be seamlessly integrated into conventional workflows. Our approach can support and augment human analysis by highlighting abnormal populations that can be gated on for quantification and further assessment. This has the potential to speed up MRD analysis, and potentially improve detection sensitivity for certain AML immunophenotypes.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Cytometry B Clin Cytom Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Canadá

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Cytometry B Clin Cytom Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Canadá
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