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Comparison of three machine learning algorithms for classification of <scp>B‐cell</scp> neoplasms using clinical flow cytometry data

Wikum Dinalankara, David P. Ng, Luigi Marchionni, Paul D. Simonson

2024Cytometry Part B Clinical Cytometry11 citationsDOIOpen Access PDF

Abstract

Multiparameter flow cytometry data is visually inspected by expert personnel as part of standard clinical disease diagnosis practice. This is a demanding and costly process, and recent research has demonstrated that it is possible to utilize artificial intelligence (AI) algorithms to assist in the interpretive process. Here we report our examination of three previously published machine learning methods for classification of flow cytometry data and apply these to a B-cell neoplasm dataset to obtain predicted disease subtypes. Each of the examined methods classifies samples according to specific disease categories using ungated flow cytometry data. We compare and contrast the three algorithms with respect to their architectures, and we report the multiclass classification accuracies and relative required computation times. Despite different architectures, two of the methods, flowCat and EnsembleCNN, had similarly good accuracies with relatively fast computational times. We note a speed advantage for EnsembleCNN, particularly in the case of addition of training data and retraining of the classifier.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningClassifier (UML)Flow cytometryCytometryAlgorithmRetrainingData setSupport vector machineMedicineImmunologyBusinessInternational tradeSingle-cell and spatial transcriptomicsCancer Genomics and DiagnosticsAI in cancer detection
Comparison of three machine learning algorithms for classification of <scp>B‐cell</scp> neoplasms using clinical flow cytometry data | Litcius