Deep learning to diagnose pouch of Douglas obliteration with ultrasound sliding sign.

Reproduction & Fertility Pub Date : 2021-08-25 eCollection Date: 2021-12-01 DOI:10.1530/RAF-21-0031
Gabriel Maicas, Mathew Leonardi, Jodie Avery, Catrina Panuccio, Gustavo Carneiro, M Louise Hull, George Condous
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引用次数: 7

Abstract

Objectives: Pouch of Douglas (POD) obliteration is a severe consequence of inflammation in the pelvis, often seen in patients with endometriosis. The sliding sign is a dynamic transvaginal ultrasound (TVS) test that can diagnose POD obliteration. We aimed to develop a deep learning (DL) model to automatically classify the state of the POD using recorded videos depicting the sliding sign test.

Methods: Two expert sonologists performed, interpreted, and recorded videos of consecutive patients from September 2018 to April 2020. The sliding sign was classified as positive (i.e. normal) or negative (i.e. abnormal; POD obliteration). A DL model based on a temporal residual network was prospectively trained with a dataset of TVS videos. The model was tested on an independent test set and its diagnostic accuracy including area under the receiver operating characteristic curve (AUC), accuracy, sensitivity, specificity, and positive and negative predictive value (PPV/NPV) was compared to the reference standard sonologist classification (positive or negative sliding sign).

Results: In a dataset consisting of 749 videos, a positive sliding sign was depicted in 646 (86.2%) videos, whereas 103 (13.8%) videos depicted a negative sliding sign. The dataset was split into training (414 videos), validation (139), and testing (196) maintaining similar positive/negative proportions. When applied to the test dataset using a threshold of 0.9, the model achieved: AUC 96.5% (95% CI: 90.8-100.0%), an accuracy of 88.8% (95% CI: 83.5-92.8%), sensitivity of 88.6% (95% CI: 83.0-92.9%), specificity of 90.0% (95% CI: 68.3-98.8%), a PPV of 98.7% (95% CI: 95.4-99.7%), and an NPV of 47.7% (95% CI: 36.8-58.2%).

Conclusions: We have developed an accurate DL model for the prediction of the TVS-based sliding sign classification.

Lay summary: Endometriosis is a disease that affects females. It can cause very severe scarring inside the body, especially in the pelvis - called the pouch of Douglas (POD). An ultrasound test called the 'sliding sign' can diagnose POD scarring. In our study, we provided input to a computer on how to interpret the sliding sign and determine whether there was POD scarring or not. This is a type of artificial intelligence called deep learning (DL). For this purpose, two expert ultrasound specialists recorded 749 videos of the sliding sign. Most of them (646) were normal and 103 showed POD scarring. In order for the computer to interpret, both normal and abnormal videos were required. After providing the necessary inputs to the computer, the DL model was very accurate (almost nine out of every ten videos was correctly determined by the DL model). In conclusion, we have developed an artificial intelligence that can interpret ultrasound videos of the sliding sign that show POD scarring that is almost as accurate as the ultrasound specialists. We believe this could help increase the knowledge on POD scarring in people with endometriosis.

超声滑动征诊断道格拉斯隐匿性眼袋的深度学习研究。
目的:道格拉斯袋(POD)闭塞是骨盆炎症的严重后果,常见于子宫内膜异位症患者。滑动征是一种动态经阴道超声(TVS)检查,可以诊断POD闭塞。我们的目标是开发一个深度学习(DL)模型,使用描述滑动标志测试的录制视频来自动分类POD的状态。方法:2018年9月至2020年4月,两名专家对连续患者进行超声检查、解读和录像。滑动标志分为阳性(即正常)或阴性(即异常);豆荚闭塞)。利用电视视频数据集对基于时间残差网络的深度学习模型进行了前瞻性训练。在独立测试集上对该模型进行测试,并将其诊断准确性(包括受试者工作特征曲线下面积(AUC)、准确性、灵敏度、特异性、阳性和阴性预测值(PPV/NPV))与参考标准超声医师分类(阳性或阴性滑动符号)进行比较。结果:在由749个视频组成的数据集中,646个(86.2%)视频描绘了正滑动符号,而103个(13.8%)视频描绘了负滑动符号。数据集被分成训练(414个视频)、验证(139个)和测试(196个),保持相似的正/负比例。当使用阈值为0.9应用于测试数据集时,该模型实现了:AUC为96.5% (95% CI: 90.8-100.0%),准确度为88.8% (95% CI: 83.5-92.8%),灵敏度为88.6% (95% CI: 83.0-92.9%),特异性为90.0% (95% CI: 68.3-98.8%), PPV为98.7% (95% CI: 95.4-99.7%), NPV为47.7% (95% CI: 36.8-58.2%)。结论:我们已经建立了一个准确的深度学习模型来预测基于tvs的滑动标志分类。概要:子宫内膜异位症是一种影响女性的疾病。它会在体内造成非常严重的疤痕,尤其是在骨盆——道格拉斯囊(POD)。一种被称为“滑动征”的超声检查可以诊断POD疤痕。在我们的研究中,我们向计算机提供了如何解释滑动标志并确定是否存在POD疤痕的输入。这是一种被称为深度学习(DL)的人工智能。为此,两位超声专家录制了749个滑动标志的视频。646例正常,103例有POD瘢痕。为了让计算机解释,正常和异常的视频都是必需的。在向计算机提供必要的输入后,DL模型非常准确(几乎每10个视频中就有9个是由DL模型正确确定的)。总之,我们已经开发了一种人工智能,它可以解释显示POD疤痕的滑动标志的超声波视频,几乎和超声波专家一样准确。我们相信这可能有助于增加对子宫内膜异位症患者POD疤痕的认识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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