Salford Royal NHS Foundation Trust, United Kingdom; East Lancashire Hospitals NHS Trust, Royal Blackburn Teaching Hospital, United Kingdom.
Salford Royal NHS Foundation Trust, United Kingdom.
Comput Methods Programs Biomed. 2022 Jan;213:106507. doi: 10.1016/j.cmpb.2021.106507. Epub 2021 Oct 30.
Foot collapse is primarily diagnosed and monitored using lateral weight-bearing foot x-ray images. There are several well-validated measurements which aid assessment. However, these are subject to inter- and intra-user variability.
To develop and validate a software system for the fully automatic assessment of radiographic changes associated with foot collapse; automatically generating measurements for calcaneal tilt, cuboid height and Meary's angle.
This retrospective study was approved by the Health Research Authority (IRAS 244852). The system was developed using lateral weight-bearing foot x-ray images, and evaluated against manual measurements from five clinical experts. The system has two main components: (i) a Random Forest-based point-finder to outline the bones of interest; and (ii) a geometry-calculator to generate the measurements based on the point positions from the point-finder. The performance of the point-finder was assessed using the point-to-point error (i.e. the mean absolute distance between each found point and the equivalent ground truth point, averaged over all points per image). For assessing the performance of the geometry-calculator, linear mixed models were fitted to estimate clinical inter-observer agreement and to compare the performance of the software system to that of the clinical experts.
A total of 200 images were collected from 79 subjects (mean age: 56.4 years ±12.9 SD, 30/49 females/males). There was good agreement among all clinical experts with intraclass correlation estimates between 0.78 and 0.86. The point-finder achieved a median point-to-point error of 2.2 mm. There was no significant difference between the clinical and automatically generated measurements using the point-finder points, suggesting that the fully automatically obtained measurements are in agreement with the manually obtained measurements.
The proposed system can be used to support and automate radiographic image assessment for diagnosing and managing foot collapse, saving clinician time, and improving patient outcomes.
足部塌陷主要通过侧位负重足部 X 射线图像进行诊断和监测。有几种经过良好验证的测量方法可辅助评估,但这些方法存在用户间和用户内的变异性。
开发和验证一种用于全自动评估与足部塌陷相关的放射影像学变化的软件系统;自动生成跟骨倾斜度、骰骨高度和 Meary 角的测量值。
这项回顾性研究获得了英国健康研究机构(IRAS 244852)的批准。该系统使用侧位负重足部 X 射线图像进行开发,并与五名临床专家的手动测量值进行了评估。该系统有两个主要组成部分:(i)基于随机森林的点查找器,用于勾勒出感兴趣的骨骼;(ii)几何计算器,用于根据点查找器的点位置生成测量值。使用点到点误差(即每个找到的点与等效真实点之间的平均绝对距离,在每张图像的所有点上进行平均)评估点查找器的性能。为了评估几何计算器的性能,拟合线性混合模型以估计临床观察者间的一致性,并比较软件系统与临床专家的性能。
共从 79 名患者(平均年龄:56.4 岁±12.9 岁,30/49 名女性/男性)中收集了 200 张图像。所有临床专家之间的一致性都很好,组内相关系数估计值在 0.78 至 0.86 之间。点查找器的点到点误差中位数为 2.2 毫米。使用点查找器的点进行的临床和自动生成的测量值之间没有显著差异,这表明全自动获得的测量值与手动获得的测量值一致。
所提出的系统可用于支持和自动化放射影像学评估,以诊断和管理足部塌陷,节省临床医生的时间,并改善患者的预后。