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深度学习在结合人乳头瘤病毒(HPV)类型的阴道镜图像子宫颈鳞状上皮病变分类中的应用

Application of deep learning to the classification of uterine cervical squamous epithelial lesion from colposcopy images combined with HPV types.

作者信息

Miyagi Yasunari, Takehara Kazuhiro, Nagayasu Yoko, Miyake Takahito

机构信息

Medical Data Labo, Okayama, Okayama 703-8267, Japan.

Department of Gynecologic Oncology, Saitama Medical University International Medical Center, Hidaka, Saitama 350-1298, Japan.

出版信息

Oncol Lett. 2020 Feb;19(2):1602-1610. doi: 10.3892/ol.2019.11214. Epub 2019 Dec 12.

DOI:10.3892/ol.2019.11214
PMID:31966086
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6956417/
Abstract

The aim of the present study was to explore the feasibility of using deep learning, such as artificial intelligence (AI), to classify cervical squamous epithelial lesions (SILs) from colposcopy images combined with human papilloma virus (HPV) types. Among 330 patients who underwent colposcopy and biopsy performed by gynecological oncologists, a total of 253 patients with confirmed HPV typing tests were enrolled in the present study. Of these patients, 210 were diagnosed with high-grade SIL (HSIL) and 43 were diagnosed with low-grade SIL (LSIL). An original AI classifier with a convolutional neural network catenating with an HPV tensor was developed and trained. The accuracy of the AI classifier and gynecological oncologists was 0.941 and 0.843, respectively. The AI classifier performed better compared with the oncologists, although not significantly. The sensitivity, specificity, positive predictive value, negative predictive value, Youden's J index and the area under the receiver-operating characteristic curve ± standard error for AI colposcopy combined with HPV types and pathological results were 0.956 (43/45), 0.833 (5/6), 0.977 (43/44), 0.714 (5/7), 0.789 and 0.963±0.026, respectively. Although further study is required, the clinical use of AI for the classification of HSIL/LSIL by both colposcopy and HPV type may be feasible.

摘要

本研究的目的是探讨使用深度学习(如人工智能)结合人乳头瘤病毒(HPV)类型对阴道镜图像中的宫颈鳞状上皮病变(SIL)进行分类的可行性。在330例接受妇科肿瘤学家进行阴道镜检查和活检的患者中,共有253例HPV分型检测确诊的患者纳入本研究。这些患者中,210例被诊断为高级别SIL(HSIL),43例被诊断为低级别SIL(LSIL)。开发并训练了一种将卷积神经网络与HPV张量相连的原始人工智能分类器。人工智能分类器和妇科肿瘤学家的准确率分别为0.941和0.843。人工智能分类器的表现优于肿瘤学家,尽管差异不显著。人工智能阴道镜检查结合HPV类型和病理结果的敏感性、特异性、阳性预测值、阴性预测值、约登指数以及受试者操作特征曲线下面积±标准误差分别为0.956(43/45)、0.833(5/6)、0.977(43/44)、0.714(5/7)、0.789和0.963±0.026。尽管需要进一步研究,但通过阴道镜检查和HPV类型使用人工智能对HSIL/LSIL进行分类的临床应用可能是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/279a/6956417/e4fa9d87cde5/ol-19-02-1602-g00.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/279a/6956417/e4fa9d87cde5/ol-19-02-1602-g00.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/279a/6956417/e4fa9d87cde5/ol-19-02-1602-g00.jpg

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