临床盆底超声诊断中膀胱膨出定量评估。

IF 2.9 3区 医学 Q1 ACOUSTICS
Nan Bao, Shiying Chen, Meng Dong, Guangyu Zhu, Hong Li, Xinlu Wang
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引用次数: 0

摘要

目的:胆囊膨出是一种容易发生在妇女分娩后的盆底功能障碍疾病。作为最常用的检查方法,盆底超声诊断的准确性受到医生经验、疲劳程度等主观因素的影响,难以达到较高的诊断准确性、一致性和可重复性。本研究旨在提出一种基于盆底超声视频图像的高精度全自动胆囊膨出评估方法。材料与方法:本研究回顾性收集2020 - 2024年158例女性G1P1(首次妊娠和首次分娩)患者盆底超声图像。以两位资深医生的超声诊断为标准,入选膀胱膨出81例,非膀胱膨出66例。首先,采用ResNet34-UNet进行尿道自动分割。然后根据自动提取的尿道中心线生成关键点;提取患者在休息状态和最大Valsalva状态之间的尿道关键点位移、尿道曲率变化、尿道倾角及其变化等特征。采用支持向量机(SVM)分类模型进行膀胱膨出预测。结果:本研究建立了两种预测胆囊膨出的分类模型。一种是基于自动尿道分割提取上述特征,另一种是基于医生注释的尿道提取上述特征。实验结果表明,两种模型均取得了较好的预测效果,auc分别为91.37%和98.58%。基于医生描绘的尿道图像的模型性能更好,在独立测试集上AUC提高了7.21%。结论:本方法在盆底超声检查中可实现高精度、可重复性、全自动定量评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative Cystocele Assessment in Clinical Pelvic Floor Ultrasound Diagnosis.

Cystocele is a pelvic floor dysfunction disease to which women are prone after childbirth. The accuracy of pelvic floor ultrasound as the most commonly used examination method is influenced by subjective factors such as doctor experience and fatigue level, making it challenging to achieve high accuracy, consistency, and repeatability of diagnosis. This study aims to propose a high-precision and fully automatic cystocele evaluation method based on pelvic floor ultrasound video images.This study retrospectively collected pelvic floor ultrasound images of 158 female G1P1 (first gestation and first parturition) patients from 2020 to 2024. According to the ultrasound diagnosis made by two senior doctors as the standard, 81 cystoceles and 66 non-cystocele patients were enrolled. Firstly, the ResNet34-UNet was used for automatic urethra segmentation. Then, key points were generated based on the automatically extracted urethra centerline. Features such as urethral key point displacement, urethral curvature change, and urethral inclination angles and their change were extracted for patients between rest and maximum Valsalva states. The support vector machine (SVM) classification model was used for cystocele prediction.This study constructed two classification models to predict cystocele. One extracted the above features based on the automatic urethra segmentation, while the other extracted them based on the doctor-annotated urethra. The experimental results show that both models have achieved good prediction results, with AUCs of 91.37% and 98.58%, respectively. Model performance based on the urethral image delineated by the doctor is better, with an AUC improvement of 7.21% based on the independent test set.The proposed method can achieve high-precision, repeatable, fully automatic quantitative cystocele evaluation in pelvic floor ultrasound examinations.

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来源期刊
Ultraschall in Der Medizin
Ultraschall in Der Medizin 医学-核医学
CiteScore
5.30
自引率
8.80%
发文量
228
审稿时长
6-12 weeks
期刊介绍: Ultraschall in der Medizin / European Journal of Ultrasound publishes scientific papers and contributions from a variety of disciplines on the diagnostic and therapeutic applications of ultrasound with an emphasis on clinical application. Technical papers with a physiological theme as well as the interaction between ultrasound and biological systems might also occasionally be considered for peer review and publication, provided that the translational relevance is high and the link with clinical applications is tight. The editors and the publishers reserve the right to publish selected articles online only. Authors are welcome to submit supplementary video material. Letters and comments are also accepted, promoting a vivid exchange of opinions and scientific discussions.
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