Suppr超能文献

三维经会阴直肠超声记录中食管裂孔尺寸的自动提取。

Automatic Extraction of Hiatal Dimensions in 3-D Transperineal Pelvic Ultrasound Recordings.

机构信息

Department of Development and Regeneration, Cluster Urogenital Surgery, Biomedical Sciences, KU Leuven; School of Biomedical Engineering & Imaging Sciences, King's College London, United Kingdom; Department of Cardiovascular Sciences, KU Leuven, Leuven, Belgium.

Department of Development and Regeneration, Cluster Urogenital Surgery, Biomedical Sciences, KU Leuven; Clinical Department of Obstetrics and Gynaecology, UZ Leuven, Leuven, Belgium.

出版信息

Ultrasound Med Biol. 2021 Dec;47(12):3470-3479. doi: 10.1016/j.ultrasmedbio.2021.08.009. Epub 2021 Sep 15.

Abstract

The aims of this work were to create a robust automatic software tool for measurement of the levator hiatal area on transperineal ultrasound (TPUS) volumes and to measure the potential reduction in variability and time taken for analysis in a clinical setting. The proposed tool automatically detects the C-plane (i.e., the plane of minimal hiatal dimensions) from a 3-D TPUS volume and subsequently uses the extracted plane to automatically segment the levator hiatus, using a convolutional neural network. The automatic pipeline was tested using 73 representative TPUS volumes. Reference hiatal outlines were obtained manually by two experts and compared with the pipeline's automated outlines. The Hausdorff distance, area, a clinical quality score, C-plane angle and C-plane Euclidean distance were used to evaluate C-plane detection and quantify levator hiatus segmentation accuracy. A visual Turing test was created to compare the performance of the software with that of the expert, based on the visual assessment of C-plane and hiatal segmentation quality. The overall time taken to extract the hiatal area with both measurement methods (i.e., manual and automatic) was measured. Each metric was calculated both for computer-observer differences and for inter-and intra-observer differences. The automatic method gave results similar to those of the expert when determining the hiatal outline from a TPUS volume. Indeed, the hiatal area measured by the algorithm and by an expert were within the intra-observer variability. Similarly, the method identified the C-plane with an accuracy of 5.76 ± 5.06° and 6.46 ± 5.18 mm in comparison to the inter-observer variability of 9.39 ± 6.21° and 8.48 ± 6.62 mm. The visual Turing test suggested that the automatic method identified the C-plane position within the TPUS volume visually as well as the expert. The average time taken to identify the C-plane and segment the hiatal area manually was 2 min and 35 ± 17 s, compared with 35 ± 4 s for the automatic result. This study presents a method for automatically measuring the levator hiatal area using artificial intelligence-based methodologies whereby the C-plane within a TPUS volume is detected and subsequently traced for the levator hiatal outline. The proposed solution was determined to be accurate, relatively quick, robust and reliable and, importantly, to reduce time and expertise required for pelvic floor disorder assessment.

摘要

本研究旨在创建一种强大的自动软件工具,用于测量经会阴超声(TPUS)容积中的提肛裂区,并测量在临床环境中减少分析变异性和时间所需的潜力。该工具使用卷积神经网络自动从 3D-TPUS 容积中检测 C 平面(即裂孔最小尺寸的平面),然后使用提取的平面自动分割提肛裂区。自动流水线使用 73 个有代表性的 TPUS 容积进行了测试。通过两位专家手动获得裂孔轮廓,并将其与流水线的自动轮廓进行比较。使用 Hausdorff 距离、面积、临床质量评分、C 平面角度和 C 平面欧几里得距离来评估 C 平面检测并量化提肛裂区分割的准确性。根据 C 平面和裂孔分割质量的视觉评估,创建了一个视觉图灵测试来比较软件和专家的性能。使用两种测量方法(即手动和自动)提取裂孔区域的总时间进行了测量。对于计算机观察者差异和观察者内和观察者间差异,均计算了每个指标。当从 TPUS 容积中确定裂孔轮廓时,自动方法的结果与专家的结果相似。事实上,算法和专家测量的裂孔区域都在观察者内的变异性范围内。同样,该方法以 5.76±5.06°和 6.46±5.18mm 的精度确定 C 平面,而观察者间的变异性为 9.39±6.21°和 8.48±6.62mm。视觉图灵测试表明,自动方法在视觉上和专家一样能够识别 TPUS 容积内的 C 平面位置。手动识别 C 平面和分割裂孔区域的平均时间为 2 分钟和 35±17 秒,而自动结果为 35±4 秒。本研究提出了一种使用基于人工智能的方法自动测量提肛裂区的方法,其中检测到 TPUS 容积内的 C 平面,然后为提肛裂区轮廓进行跟踪。所提出的解决方案被确定为准确、相对快速、稳健和可靠,重要的是,它减少了评估盆底障碍所需的时间和专业知识。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验