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基于卷积神经网络分析超声妊娠囊图像对早期自然流产的自动预测:病例对照和队列研究。

Automated prediction of early spontaneous miscarriage based on the analyzing ultrasonographic gestational sac imaging by the convolutional neural network: a case-control and cohort study.

机构信息

Key Laboratory of Health Ministry for Congenital Malformation, Shengjing Hospital, China Medical University, No. 36, Sanhao Street, Heping District, Shenyang, 110004, P.R. China.

Department of Ultrasound, Shengjing Hospital, China Medical University, Shenyang, 110004, P.R. China.

出版信息

BMC Pregnancy Childbirth. 2022 Aug 5;22(1):621. doi: 10.1186/s12884-022-04936-0.

Abstract

BACKGROUND

It is challenging to predict the outcome of the pregnancy when fetal heart activity is detected in early pregnancy. However, an accurate prediction is of importance for obstetricians as it helps to provide appropriate consultancy and determine the frequency of ultrasound examinations. The purpose of this study was to investigate the role of the convolutional neural network (CNN) in the prediction of spontaneous miscarriage risk through the analysis of early ultrasound gestational sac images.

METHODS

A total of 2196 ultrasound images from 1098 women with early singleton pregnancies of gestational age between 6 and 8 weeks were used for training a CNN for the prediction of the miscarriage in the retrospective study. The patients who had positive fetal cardiac activity on their first ultrasound but then experienced a miscarriage were enrolled. The control group was randomly selected in the same database from the fetuses confirmed to be normal during follow-up. Diagnostic performance of the algorithm was validated and tested in two separate test sets of 136 patients with 272 images, respectively. Performance in prediction of the miscarriage was compared between the CNN and the manual measurement of ultrasound characteristics in the prospective study.

RESULTS

The accuracy of the predictive model was 80.32% and 78.1% in the retrospective and prospective study, respectively. The area under the receiver operating characteristic curve (AUC) for classification was 0.857 (95% confidence interval [CI], 0.793-0.922) in the retrospective study and 0.885 (95%CI, 0.846-0.925) in the prospective study, respectively. Correspondingly, the predictive power of the CNN was higher compared with manual ultrasound characteristics, for which the AUCs of the crown-rump length combined with fetal heart rate was 0.687 (95%CI, 0.587-0.775).

CONCLUSIONS

The CNN model showed high accuracy for predicting miscarriage through the analysis of early pregnancy ultrasound images and achieved better performance than that of manual measurement.

摘要

背景

当在早期妊娠中检测到胎儿心跳活动时,预测妊娠结局具有挑战性。然而,准确的预测对于产科医生非常重要,因为它有助于提供适当的咨询并确定超声检查的频率。本研究的目的是通过分析早期妊娠囊超声图像,探讨卷积神经网络(CNN)在预测自然流产风险中的作用。

方法

本回顾性研究共纳入了 1098 名 6-8 孕周单胎早期妊娠女性的 2196 个超声图像,用于训练 CNN 预测流产。纳入标准为首次超声检查时可见胎心搏动但随后发生流产的患者。对照组为同一数据库中随访证实正常胎儿的随机选择。分别在两个独立的测试集(每组 136 名患者,共 272 个图像)中验证和测试算法的诊断性能。前瞻性研究中比较了 CNN 和超声特征手动测量在预测流产中的表现。

结果

在回顾性和前瞻性研究中,预测模型的准确率分别为 80.32%和 78.1%。在回顾性研究中,分类的受试者工作特征曲线下面积(AUC)为 0.857(95%置信区间[CI],0.793-0.922),前瞻性研究中为 0.885(95%CI,0.846-0.925)。相应地,与手动超声特征相比,CNN 的预测能力更高,其中头臀长与胎心率联合的 AUC 为 0.687(95%CI,0.587-0.775)。

结论

通过分析早期妊娠超声图像,CNN 模型对预测流产具有较高的准确性,并且表现优于手动测量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dfe2/9354356/d016927c72df/12884_2022_4936_Fig1_HTML.jpg

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