A deep learning approach for automatic recognition of abnormalities in the cytoplasm of neutrophils
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hdl:2117/412034
Document typeArticle
Defense date2024-06
PublisherElsevier
Rights accessOpen Access
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Abstract
Background and objectives: This study aims to develop and evaluate NeuNN, a system based on convolutional neural networks (CNN) and generative adversarial networks (GAN) for the automatic identification of normal neutrophils and those containing several types of inclusions or showing hypogranulation. Methods: From peripheral blood smears, a set of 5605 digital images was obtained with neutrophils belonging to seven categories: Normal neutrophils (NEU), Hypogranulated (HYP) or containing cryoglobulins (CRY), Döhle bodies (DB), Howell-Jolly body-like inclusions (HJBLI), Green-blue inclusions of death (GBI) and phagocytosed bacteria (BAC). The dataset utilized in this study has been made publicly available. The class of GBI was augmented using synthetic images generated by GAN. The NeuNN classification model is based on an EfficientNet-B7 architecture trained from scratch. Results: NeuNN achieved an overall performance of 94.3% accuracy on the test data set. Performance metrics, including sensitivity, specificity, precision, F1-Score, Jaccard index, and Matthews correlation coefficient indicated overall values of 94%, 99.1%, 94.3%, 94.3%, 89.6%, and 93.6%, respectively. Conclusions: The proposed approach, combining data augmentation and classification techniques, allows for automated identification of morphological findings in neutrophils, such us inclusions or hypogranulation. The system can be used as a support tool for clinical pathologists to detect these specific abnormalities with clinical relevance.
CitationBarrera, K. [et al.]. A deep learning approach for automatic recognition of abnormalities in the cytoplasm of neutrophils. "Computers in biology and medicine", Juny 2024, vol. 178, núm. 108691.
ISSN0010-4825
Publisher versionhttps://www.sciencedirect.com/science/article/pii/S0010482524007765
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