Blood clot and fibrin recognition method for serum images based on deep learning

•The segmentation and recognition of serum clots and fibrins in serum images are carried out based on deep learning.•The improved Tokenized MLP(Mutil-Layer Perception) block extracts more useful information, improving the accuracy of the model.•The weighted binary cross entropy loss function achieve...

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Published inClinica chimica acta Vol. 553; p. 117732
Main Authors Hou, Jianping, Ren, Weihong, Zhao, Wanli, Li, Hang, Liu, Mengnan, Wang, Hailuan, Duan, Yirui, Wang, Chao, Liu, Cong
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier B.V 15.01.2024
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Summary:•The segmentation and recognition of serum clots and fibrins in serum images are carried out based on deep learning.•The improved Tokenized MLP(Mutil-Layer Perception) block extracts more useful information, improving the accuracy of the model.•The weighted binary cross entropy loss function achieves accurate segmentation of fuzzy target boundary.•The method provides an accurate basis for the sampling heights of the sampling needle in the automated biochemical and immunological assembly line. Detecting and identifying of clots and fibrins in serum is an important process in the analysis stage before laboratory analysis. Currently, visual examination is commonly employed in clinical laboratories for this purpose. However, this method is not only time-consuming but also highly subjective and may result in misjudgments. A serum image blood clot and fibrin segmentation method based on improved UNeXt was proposed. The improved UNeXt segmentation network was used to train the self-built serum dataset, and the trained model was used for blood clot and fibrin segmentation in serum images. Whether the serum images contained blood clots and fibrins was identified according to the segmentation results. The average Dice coefficient of the serum image segmentation network output was 0.8707, which realized more accurate segmentation of blood clots and fibrins in serum images. In 13,230 clinical serum samples, the sensitivity, specificity, and accuracy of blood clot and fibrins segmentation in serum images were 95.74%, 98.11% and 97.93%, respectively, which meet clinical test requirements. The improved UNeXt segmentation network rapidly and accurately segmented and recognized blood clots and fibrins in serum images, which provided an accurate basis for the sampling height of the sampling needle in the automated biochemical and immunological assembly line.
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ISSN:0009-8981
1873-3492
DOI:10.1016/j.cca.2023.117732