对宫颈图像进行深度学习诊断分类,以增强阴道镜印象。

IF 2.4 4区 医学 Q2 OBSTETRICS & GYNECOLOGY Journal of Lower Genital Tract Disease Pub Date : 2024-07-01 Epub Date: 2024-05-07 DOI:10.1097/LGT.0000000000000815
André Aquilina, Emmanouil Papagiannakis
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引用次数: 0

摘要

目的提高阴道镜印象准确性的深度学习分类器:采用宫颈检测算法处理施用醋酸后 56 秒拍摄的阴道镜图像,以识别宫颈区域。我们优化了基于 SegFormer 架构的模型,将每个宫颈分为高级别或阴性/低级别。数据被分成组织学分层的随机训练、验证和测试子集(80%-10%-10%)。我们重复了 10 次实验,以便与之前利用专家评审员对相同图像进行分析的研究保持一致。为了评估该模型在不同相机间的鲁棒性,我们在按相机类型划分数据集后对其进行了重新训练。随后,我们在新的组织学分层随机数据分割上重新训练了模型,并将结果与患者的年龄和转诊数据进行整合,训练出梯度提升树模型进行最终分类。通过与组织学相比的接收者操作特征曲线下面积(AUC)、尤登指数(YI)、灵敏度和特异性来评估模型的准确性:在 5,485 张阴道镜图像中,有 4,946 张带有组织学检查和可见宫颈。该模型在 10 倍实验中的平均性能为 AUC = 0.75,YI = 0.37(灵敏度 = 63%,特异度 = 74%),优于专家的平均 YI 0.16。不同相机类型之间的可转移性也很有效,AUC = 0.70,YI = 0.33。将基于图像的预测与转介数据整合后,结果提高到 AUC = 0.81,YI = 0.46。在使用原始阴道镜印象的同时使用模型预测提高了整体性能:结论:深度学习宫颈图像分类显示出稳健性,其表现优于专家。结论:深度学习宫颈图像分类具有鲁棒性,表现优于专家,并通过加入额外的患者信息得到了进一步改进,显示出了作为阴道镜检查补充的临床实用性潜力。
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Deep Learning Diagnostic Classification of Cervical Images to Augment Colposcopic Impression.

Objective: A deep learning classifier that improves the accuracy of colposcopic impression.

Methods: Colposcopy images taken 56 seconds after acetic acid application were processed by a cervix detection algorithm to identify the cervical region. We optimized models based on the SegFormer architecture to classify each cervix as high-grade or negative/low-grade. The data were split into histologically stratified, random training, validation, and test subsets (80%-10%-10%). We replicated a 10-fold experiment to align with a prior study utilizing expert reviewer analysis of the same images. To evaluate the model's robustness across different cameras, we retrained it after dividing the dataset by camera type. Subsequently, we retrained the model on a new, histologically stratified random data split and integrated the results with patients' age and referral data to train a Gradient Boosted Tree model for final classification. Model accuracy was assessed by the receiver operating characteristic area under the curve (AUC), Youden's index (YI), sensitivity, and specificity compared to the histology.

Results: Out of 5,485 colposcopy images, 4,946 with histology and a visible cervix were used. The model's average performance in the 10-fold experiment was AUC = 0.75, YI = 0.37 (sensitivity = 63%, specificity = 74%), outperforming the experts' average YI of 0.16. Transferability across camera types was effective, with AUC = 0.70, YI = 0.33. Integrating image-based predictions with referral data improved outcomes to AUC = 0.81 and YI = 0.46. The use of model predictions alongside the original colposcopic impression boosted overall performance.

Conclusions: Deep learning cervical image classification demonstrated robustness and outperformed experts. Further improved by including additional patient information, it shows potential for clinical utility complementing colposcopy.

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来源期刊
Journal of Lower Genital Tract Disease
Journal of Lower Genital Tract Disease OBSTETRICS & GYNECOLOGY-
CiteScore
6.80
自引率
8.10%
发文量
158
审稿时长
6-12 weeks
期刊介绍: The Journal of Lower Genital Tract Disease is the source for the latest science about benign and malignant conditions of the cervix, vagina, vulva, and anus. The Journal publishes peer-reviewed original research original research that addresses prevalence, causes, mechanisms, diagnosis, course, treatment, and prevention of lower genital tract disease. We publish clinical guidelines, position papers, cost-effectiveness analyses, narrative reviews, and systematic reviews, including meta-analyses. We also publish papers about research and reporting methods, opinions about controversial medical issues. Of particular note, we encourage material in any of the above mentioned categories that is related to improving patient care, avoiding medical errors, and comparative effectiveness research. We encourage publication of evidence-based guidelines, diagnostic and therapeutic algorithms, and decision aids. Original research and reviews may be sub-classified according to topic: cervix and HPV, vulva and vagina, perianal and anal, basic science, and education and learning. The scope and readership of the journal extend to several disciplines: gynecology, internal medicine, family practice, dermatology, physical therapy, pathology, sociology, psychology, anthropology, sex therapy, and pharmacology. The Journal of Lower Genital Tract Disease highlights needs for future research, and enhances health care. The Journal of Lower Genital Tract Disease is the official journal of the American Society for Colposcopy and Cervical Pathology, the International Society for the Study of Vulvovaginal Disease, and the International Federation of Cervical Pathology and Colposcopy, and sponsored by the Australian Society for Colposcopy and Cervical Pathology and the Society of Canadian Colposcopists.
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