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超声成像中胸腰筋膜的分割:一种深度学习方法。

Segmentation of the thoracolumbar fascia in ultrasound imaging: a deep learning approach.

作者信息

Bonaldi Lorenza, Pirri Carmelo, Giordani Federico, Fontanella Chiara Giulia, Stecco Carla, Uccheddu Francesca

机构信息

Department of Civil, Environmental and Architectural Engineering, University of Padova, 35131, Padova, Italy.

Center for Mechanics of Biological Materials, University of Padova, 35131, Padova, Italy.

出版信息

BMC Med Imaging. 2025 May 15;25(1):164. doi: 10.1186/s12880-025-01720-2.

Abstract

BACKGROUND

Only in recent years it has been demonstrated that the thoracolumbar fascia is involved in low back pain (LBP), thus highlighting its implications for treatments. Furthermore, an easily accessible and non-invasive way to investigate the fascia in real time is the ultrasound examination, which to be reliable as is, it must overcome the challenges related to the configuration of the machine and the experience of the operator. Therefore, the lack of a clear understanding of the fascial system combined with the penalty related to the setting of the ultrasound acquisition has generated a gap that makes its effective evaluation difficult during clinical routine. The aim of the present work is to fill this gap by investigating the effectiveness of using a deep learning approach to segment the thoracolumbar fascia from ultrasound imaging.

METHODS

A total of 538 ultrasound images of the thoracolumbar fascia of LBP subjects were finally used to train and test a deep learning network. An additional test set (so-called Test set 2) was collected from another center, operator, machine manufacturer, patient cohort, and protocol to improve the generalizability of the study.

RESULTS

A U-Net-based architecture was demonstrated to be able to segment these structures with a final training accuracy of 0.99 and a validation accuracy of 0.91. The accuracy of the prediction computed on a test set (87 images not included in the training set) reached the 0.94, with a mean intersection over union index of 0.82 and a Dice-score of 0.76. These latter metrics were outperformed by those in Test set 2. The validity of the predictions was also verified and confirmed by two expert clinicians.

CONCLUSIONS

Automatic identification of the thoracolumbar fascia has shown promising results to thoroughly investigate its alteration and target a personalized rehabilitation intervention based on each patient-specific scenario.

摘要

背景

直到近年来才证实胸腰筋膜与腰痛(LBP)有关,从而凸显了其在治疗中的意义。此外,超声检查是一种易于获取且非侵入性的实时研究筋膜的方法,但要使其可靠,必须克服与机器配置和操作者经验相关的挑战。因此,对筋膜系统缺乏清晰的认识,再加上超声采集设置方面的不足,造成了一个差距,使得在临床常规中难以对其进行有效的评估。本研究的目的是通过研究使用深度学习方法从超声图像中分割胸腰筋膜的有效性来填补这一差距。

方法

最终共使用538例腰痛患者的胸腰筋膜超声图像来训练和测试一个深度学习网络。从另一个中心、操作者、机器制造商、患者队列和方案中收集了一个额外的测试集(所谓的测试集2),以提高研究的普遍性。

结果

基于U-Net的架构被证明能够分割这些结构,最终训练准确率为0.99,验证准确率为0.91。在一个测试集(87幅不包括在训练集中的图像)上计算的预测准确率达到0.94,平均交并比指数为0.82,Dice分数为0.76。后两个指标在测试集2中表现更好。两位专家临床医生也对预测的有效性进行了验证和确认。

结论

胸腰筋膜的自动识别已显示出有希望的结果,可全面研究其改变,并根据每个患者的具体情况进行个性化康复干预。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6c2d/12083131/d61996e7757c/12880_2025_1720_Fig1_HTML.jpg

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