Deep Learning Detection and Classification of Red Blood Cells: Towards a Universal Dataset
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We evaluate emerging machine learning models for pattern recognition, focusing on the YOLOv11 architecture for detecting and classifying red blood cell shapes. Our analysis targets two characteristic morphologies observed under flow: slipper and parachute . A key challenge in this task is the development of a robust and diverse dataset. To address this, we employ synthetic image generation using a cut-and-paste approach, introducing variations in cell overlap and arrangements of microfluidic channels disposition to alleviate data scarcity and reduce cross-dataset bias. We generate these datasets with U-Net and Cellpose segmentation models, and rigorously assess YOLOv11 performance on two benchmarks: (i) a controlled dataset for evaluating classification accuracy, and (ii) a challenging, visually heterogeneous dataset for assessing generalization. Results show that the model achieves high precision for distinct cell types in controlled settings, but exhibits reduced performance on the unseen dataset, highlighting a trade-off between specialized accuracy and broad applicability in complex microscopy scenarios.