AI RESEARCH

Ensemble of Small Classifiers For Imbalanced White Blood Cell Classification

arXiv CS.LG

ArXi:2603.20856v1 Announce Type: cross Automating white blood cell classification for diagnosis of leukaemia is a promising alternative to time-consuming and resource-intensive examination of cells by expert pathologists. However, designing robust algorithms for classification of rare cell types remains challenging due to variations in staining, scanning and inter-patient heterogeneity. We propose a lightweight ensemble approach for classification of cells during Haematopoiesis, with a focus on the biology of Granulopoiesis, Monocytopoiesis and Lymphopoiesis.