Automatic Classification of Circulating Blood Cell Clusters based on Multi-channel Flow Cytometry Imaging
Suqiang Ma, Subhadeep Sengupta, Yao Lee, Beikang Gu, Xianyan Chen, Xianqiao Wang, Yang Liu, Mengjia Xu, Galit H. Frydman, and He Li

TL;DR
This paper presents a new computational framework that automatically classifies circulating blood cell clusters and identifies cell types within them using multi-channel flow cytometry images, achieving over 95% accuracy.
Contribution
It introduces a two-step analysis strategy combining YOLOv11 for cluster detection and fluorescence overlay for cell type identification, improving accuracy over traditional methods.
Findings
Over 95% accuracy in cluster classification
Effective identification of cell types within clusters
Outperforms traditional CNN and ViT models
Abstract
Circulating blood cell clusters (CCCs) containing red blood cells (RBCs), white blood cells(WBCs), and platelets are significant biomarkers linked to conditions like thrombosis, infection, and inflammation. Flow cytometry, paired with fluorescence staining, is commonly used to analyze these cell clusters, revealing cell morphology and protein profiles. While computational approaches based on machine learning have advanced the automatic analysis of single-cell flow cytometry images, there is a lack of effort to build tools to automatically analyze images containing CCCs. Unlike single cells, cell clusters often exhibit irregular shapes and sizes. In addition, these cell clusters often consist of heterogeneous cell types, which require multi-channel staining to identify the specific cell types within the clusters. This study introduces a new computational framework for analyzing CCC…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Single-cell and spatial transcriptomics · Cell Image Analysis Techniques
