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跟骨 X 射线自动分析系统:用于跟骨角度测量、骨折识别和骨折区域分割的旋转不变标志点检测。

Automatic analysis system of calcaneus radiograph: Rotation-invariant landmark detection for calcaneal angle measurement, fracture identification and fracture region segmentation.

机构信息

Beijing Institute of Technology, Beijing 100081, China.

The First Affiliated Hospital of Jinzhou Medical University, Jinzhou 121001, China.

出版信息

Comput Methods Programs Biomed. 2021 Jul;206:106124. doi: 10.1016/j.cmpb.2021.106124. Epub 2021 Apr 24.

Abstract

BACKGROUND AND OBJECTIVE

Calcaneus is the largest tarsal bone to withstand the daily stresses of weight-bearing. The calcaneal fracture is the most common type in the tarsal bone fractures. After a fracture is suspected, plain radiographs should be taken first. Bohler's Angle (BA) and Critical Angle of Gissane (CAG), measured by four anatomic landmarks in lateral foot radiograph, can guide fracture diagnosis and facilitate operative recovery of the fractured calcaneus. This study aims to develop an analysis system that can automatically locate four anatomic landmarks, measure BA and CAG for fracture assessment, identify fractured calcaneus, and segment fractured regions.

METHODS

For landmark detection, we proposed a coarse-to-fine Rotation-Invariant Regression-Voting (RIRV) landmark detection method based on regressive Multi-Layer Perceptron (MLP) and Scale Invariant Feature Transform (SIFT) patch descriptor, which solves the problem of fickle rotation of calcaneus. By implementing a novel normalization approach, the RIRV method is explicitly rotation-invariance comparing with traditional regressive methods. For fracture identification and segmentation, a convolution neural network (CNN) based on U-Net with auxiliary classification head (U-Net-CH) is designed. The input ROIs of the CNN are normalized by detected landmarks to uniform view, orientation, and scale. The advantage of this approach is the multi-task learning that combines classification and segmentation.

RESULTS

Our system can accurately measure BA and CAG with a mean angle error of 3.8 and 6.2 respectively. For fracture identification and fracture region segmentation, our system presents good performance with an F1-score of 96.55%, recall of 94.99%, and segmentation IoU-score of 0.586.

CONCLUSION

A powerful calcaneal radiograph analysis system including anatomical angles measurement, fracture identification, and fracture segmentation can be built. The proposed analysis system can aid orthopedists to improve the efficiency and accuracy of calcaneus fracture diagnosis.

摘要

背景与目的

跟骨是最大的承受承重日常压力的跗骨。跟骨骨折是跗骨骨折中最常见的类型。怀疑骨折后,首先应拍摄平片。侧足部 X 线片上通过四个解剖标志测量的 Bohler 角(BA)和 Gissane 临界角(CAG)可以指导骨折诊断,并有助于跟骨骨折的手术复位。本研究旨在开发一种分析系统,该系统可以自动定位四个解剖标志,测量 BA 和 CAG 以进行骨折评估,识别骨折的跟骨,并对骨折部位进行分割。

方法

为了进行标志点检测,我们提出了一种基于回归多层感知机(MLP)和尺度不变特征变换(SIFT)补丁描述符的粗到精旋转不变回归投票(RIRV)标志点检测方法,该方法解决了跟骨旋转不稳定的问题。通过实施一种新颖的归一化方法,RIRV 方法与传统回归方法相比具有明确的旋转不变性。对于骨折的识别和分割,我们设计了一种基于 U-Net 带有辅助分类头(U-Net-CH)的卷积神经网络(CNN)。CNN 的输入感兴趣区域(ROI)通过检测到的标志点进行归一化,以达到统一的视图、方向和比例。这种方法的优点是结合分类和分割的多任务学习。

结果

我们的系统可以准确测量 BA 和 CAG,平均角度误差分别为 3.8 和 6.2。对于骨折的识别和骨折区域的分割,我们的系统表现出良好的性能,F1 得分为 96.55%,召回率为 94.99%,分割 IoU 得分为 0.586。

结论

可以构建包括解剖角度测量、骨折识别和骨折分割的强大的跟骨 X 光片分析系统。所提出的分析系统可以帮助骨科医生提高跟骨骨折诊断的效率和准确性。

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