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Leveraging Kappa-Lambda Signatures in a Multistage Machine Learning Pipeline for B-Cell Lymphoma Detection by Flow Cytometry.

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The American journal of pathology 📖 저널 OA 73.3% 2023: 1/1 OA 2024: 0/1 OA 2025: 4/6 OA 2026: 12/17 OA 2023~2026 2026 Vol.196(5) p. 1158-1168 OA Cell Image Analysis Techniques
TL;DR It is demonstrated that incorporating biologically grounded features enhances both the accuracy and interpretability of automated flow cytometry analysis, and offers a scalable, reproducible, and clinically aligned alternative to the manual review of flow cytometry data for B-cell lymphomas.
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PubMed DOI OpenAlex Semantic 마지막 보강 2026-04-28
OpenAlex 토픽 · Cell Image Analysis Techniques Single-cell and spatial transcriptomics Digital Imaging for Blood Diseases

Zhang I, Chalise S, Roshal M, Gao Q, Zhu M, Feng Y

📝 환자 설명용 한 줄

It is demonstrated that incorporating biologically grounded features enhances both the accuracy and interpretability of automated flow cytometry analysis, and offers a scalable, reproducible, and clin

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↓ .bib ↓ .ris
APA Iris Zhang, Sulov Chalise, et al. (2026). Leveraging Kappa-Lambda Signatures in a Multistage Machine Learning Pipeline for B-Cell Lymphoma Detection by Flow Cytometry.. The American journal of pathology, 196(5), 1158-1168. https://doi.org/10.1016/j.ajpath.2026.02.006
MLA Iris Zhang, et al.. "Leveraging Kappa-Lambda Signatures in a Multistage Machine Learning Pipeline for B-Cell Lymphoma Detection by Flow Cytometry.." The American journal of pathology, vol. 196, no. 5, 2026, pp. 1158-1168.
PMID 41794128 ↗

Abstract

Flow cytometry immunophenotyping is essential for diagnosing B-cell lymphomas, but manual interpretation of high-dimensional data remains subjective, time-consuming, and prone to interoperator variability. Previous computational approaches often overlook clinically relevant principles, such as Ig light chain restriction. To address this gap, a biologically informed, three-stage machine learning pipeline that integrates Ig κ (IGK) and Ig λ (IGL) signatures to improve B-cell lymphoma detection was developed. A total of 200 peripheral blood samples (100 normal, 100 abnormal) were analyzed, comprising >15 million single-cell events characterized by 21 immunophenotypic markers. Three XGBoost models were trained sequentially: the first classified light chain expression (IGK, IGL, or nuisance), the second identified cell phenotypes using marker intensities and IGK/IGL-based neighborhood enrichment, and the third produced sample-level predictions based on aggregated cell features. The IGK/IGL classifier achieved 88.0% test accuracy [area under the receiver operating characteristic curve (AUC), 0.957], whereas the cell-level classification reached 92.9% accuracy (AUC, 0.983), with IGK/IGL enrichment as the most informative feature. Similarly, sample-level classification achieved 94.7% accuracy (AUC, 0.976), with improved performance when IGK/IGL enrichment was included. These findings demonstrate that incorporating biologically grounded features enhances both the accuracy and interpretability of automated flow cytometry analysis. This approach offers a scalable, reproducible, and clinically aligned alternative to the manual review of flow cytometry data for B-cell lymphomas.

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