GateNet: A novel neural network architecture for automated flow cytometry gating

Fisch L.; Heming M.; Schulte-Mecklenbeck A.; Gross C.C.; Zumdick S.; Barkhau C.; Emden D.; Ernsting J.; Leenings R.; Sarink K.; Winter N.R.; Dannlowski U.; Wiendl H.; Hörste G.M.z.; Hahn T.

Research article (journal) | Peer reviewed

Abstract

Background and Objective: Flow cytometry is a widely used technique for identifying cell populations in patient-derived fluids, such as peripheral blood (PB) or cerebrospinal fluid (CSF). Despite its ubiquity in research and clinical practice, the process of gating, i.e., manually identifying cell types, is labor-intensive and error-prone. The objective of this study is to address this challenge by introducing GateNet, a neural network architecture designed for fully end-to-end automated gating without the need for correcting batch effects. Methods: For this study a unique dataset is used which comprises over 8,000,000 events from N = 127 PB and CSF samples which were manually labeled independently by four experts. Applying cross-validation, the classification performance of GateNet is compared to the human experts performance. Additionally, GateNet is applied to a publicly available dataset to evaluate generalization. The classification performance is measured using the F1 score. Results: GateNet achieves F1 scores ranging from 0.910 to 0.997 demonstrating human-level performance on samples unseen during training. In the publicly available dataset, GateNet confirms its generalization capabilities with an F1 score of 0.936. Importantly, we also show that GateNet only requires ≈10 samples to reach human-level performance. Finally, gating with GateNet only takes 15 microseconds per event utilizing graphics processing units (GPU). Conclusions: GateNet enables fully end-to-end automated gating in flow cytometry, overcoming the labor-intensive and error-prone nature of manual adjustments. The neural network achieves human-level performance on unseen samples and generalizes well to diverse datasets. Notably, its data efficiency, requiring only ∼10 samples to reach human-level performance, positions GateNet as a widely applicable tool across various domains of flow cytometry.

Details about the publication

JournalComputers in Biology and Medicine
Volume179
StatusPublished
Release year2024
Language in which the publication is writtenEnglish
DOI10.1016/j.compbiomed.2024.108820
Link to the full texthttps://api.elsevier.com/content/abstract/scopus_id/85198308135
KeywordsFlow cytometry; Gating; Machine learning; Neural network

Authors from the University of Münster

Barkhau, Carlotta Bo Catharine
Institute of Translational Psychiatry
Dannlowski, Udo
Institute of Translational Psychiatry
Emden, Daniel
Institute of Translational Psychiatry
Ernsting, Jan
Institute for Geoinformatics (ifgi)
Fisch, Lukas
Center for Nonlinear Science
Hahn, Tim
Institute of Translational Psychiatry
Leenings, Ramona
Institute of Translational Psychiatry
Sarink, Kelvin
Institute of Translational Psychiatry
Winter, Nils
Institute of Translational Psychiatry
Zumdick, Stefan
Institute of Translational Psychiatry