AI Article Synopsis

  • Current methods for diagnosing acute myeloid leukemia (AML) using flow cytometry involve a lot of manual work, which can lead to subjectivity and delays in patient treatment due to lengthy molecular testing.
  • The study introduces a computational pipeline employing attention-based multi-instance learning models (ABMILMs) to automate the diagnosis of AML using flow cytometric data, achieving high accuracy in identifying acute leukemia and differentiating between types.
  • The models also provided insights into which specific flow cytometry markers are most useful for diagnosis, helping hematopathologists interpret data better and establishing links between flow cytometric markers and cytogenetic variations in AML.

Article Abstract

Current flow cytometric analysis of blood and bone marrow samples for diagnosis of acute myeloid leukemia (AML) relies heavily on manual intervention in both the processing and analysis steps, introducing significant subjectivity into resulting diagnoses and necessitating highly trained personnel. Furthermore, concurrent molecular characterization via cytogenetics and targeted sequencing can take multiple days, delaying patient diagnosis and treatment. Attention-based multi-instance learning models (ABMILMs) are deep learning models which make accurate predictions and generate interpretable insights regarding the classification of a sample from individual events/cells; nonetheless, these models have yet to be applied to flow cytometry data. In this study, we developed a computational pipeline using ABMILMs for the automated diagnosis of AML cases based exclusively on flow cytometric data. Analysis of 1,820 flow cytometry samples shows that this pipeline provides accurate diagnoses of acute leukemia [AUROC 0.961] and accurately differentiates AML B- and T-lymphoblastic leukemia [AUROC 0.965]. Models for prediction of 9 cytogenetic aberrancies and 32 pathogenic variants in AML provide accurate predictions, particularly for t(15;17)(::) [AUROC 0.929], t(8;21)(::) [AUROC 0.814], and variants [AUROC 0.807]. Finally, we demonstrate how these models generate interpretable insights into which individual flow cytometric events and markers deliver optimal diagnostic utility, providing hematopathologists with a data visualization tool for improved data interpretation, as well as novel biological associations between flow cytometric marker expression and cytogenetic/molecular variants in AML. Our study is the first to illustrate the feasibility of using deep learning-based analysis of flow cytometric data for automated AML diagnosis and molecular characterization.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10557578PMC
http://dx.doi.org/10.1101/2023.09.18.558289DOI Listing

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