2023
DOI: 10.3390/diagnostics13081409
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Automated Detection of Endometrial Polyps from Hysteroscopic Videos Using Deep Learning

Abstract: Endometrial polyps are common gynecological lesions. The standard treatment for this condition is hysteroscopic polypectomy. However, this procedure may be accompanied by misdetection of endometrial polyps. To improve the diagnostic accuracy and reduce the risk of misdetection, a deep learning model based on YOLOX is proposed to detect endometrial polyps in real time. Group normalization is employed to improve its performance with large hysteroscopic images. In addition, we propose a video adjacent-frame assoc… Show more

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Cited by 5 publications
(2 citation statements)
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“…Zhao et al developed a DL model to automatically detect only endometrial polyps in real-time hysteroscopic videos with an accuracy of up to 95%; unfortunately, they did not perform any classification of the lesions [25].…”
Section: Discussionmentioning
confidence: 99%
“…Zhao et al developed a DL model to automatically detect only endometrial polyps in real-time hysteroscopic videos with an accuracy of up to 95%; unfortunately, they did not perform any classification of the lesions [25].…”
Section: Discussionmentioning
confidence: 99%
“…Although YOLOX inherits the low accuracy problems in the presence of insulator defect detection as well as the vulnerability of the detection results to interference by complex backgrounds, YOLOX has faster speed and higher accuracy in object detection compared with the ancestral versions [ 94 ]. Zhao et al [ 95 ] adopted a modified YOLOX model for accurate identification of endometrial polyps in hysteroscopic video images. They combined the model with the group normalization method, of which characterization lies in the calculation of the mean and standard deviation for normalization using the set of pixels based on four-dimensional vectors (batch axis, channel axis, and spatial axes of height and width).…”
Section: Application Of Cnn Model To Hysteroscopic Image Analysismentioning
confidence: 99%