A cytopathologist eye assistant for cell screening.
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Data
2022
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Resumo
Screening of Pap smear images continues to depend upon cytopathologists’ manual scrutiny,
and the results are highly influenced by professional experience, leading to varying degrees of cell
classification inaccuracies. In order to improve the quality of the Pap smear results, several efforts
have been made to create software to automate and standardize the processing of medical images.
In this work, we developed the CEA (Cytopathologist Eye Assistant), an easy-to-use tool to aid
cytopathologists in performing their daily activities. In addition, the tool was tested by a group of
cytopathologists, whose feedback indicates that CEA could be a valuable tool to be integrated into
Pap smear image analysis routines. For the construction of the tool, we evaluate different YOLO
configurations and classification approaches. The best combination of algorithms uses YOLOv5s as a
detection algorithm and an ensemble of EfficientNets as a classification algorithm. This configuration
achieved 0.726 precision, 0.906 recall, and 0.805 F1-score when considering individual cells. We also
made an analysis to classify the image as a whole, in which case, the best configuration was the
YOLOv5s to perform the detection and classification tasks, and it achieved 0.975 precision, 0.992 recall,
0.970 accuracy, and 0.983 F1-score.
Descrição
Palavras-chave
Cancer cell detection, Pap smear image, Cervical cytology, Deep learning, Decision support tool
Citação
DINIZ, D. N. et al. A cytopathologist eye assistant for cell screening. AppliedMath, v. 2, n. 4, p. 659–674, 2022. Disponível em: <https://www.mdpi.com/2673-9909/2/4/38>. Acesso em: 06 jul. 2023.