Automatic method for computing radiographic parameters of radial metaphyseal fractures in radiographs for surgical decision support

Avigail Suna, A. Davidson, Leo Joskowicz, Y. Weil
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Abstract

PurposeDistal radius fractures (DRF) are common types of fractures with a high incident rate. DRF can be treated either by cast or surgery. To determine the clinical procedure and the operative management, standardized guidelines have become increasingly common. As operative indications are controversial, radiographic parameters (RPs) can provide objective support for effective decision making. Calculating the RPs manually from radiographs is time consuming and subject to observer variability and clinician experience. Our aim was to develop an automatic method for accurately and reliably computing 10 RPs associated with DRF in anteroposterior (AP) and lateral radiographs of a fractured hand with and without cast.MethodsThe inputs are the AP and lateral radiographs of the fractured hand with or without cast. The outputs are 10 RP values and composite images showing the landmark points and axes used in the RPs computation on the radiographs. Our method comprises three main steps: 1) segmentation of the radius and the ulna with a deep learning radiograph pixel classifier; 2) landmark points and axis extraction from the segmentations using geometric model-based methods; 3) RPs computation from the landmarks and generation of composite images. Our study tested the accuracy of step 2.The dataset consists of 20 pairs of AP and lateral radiographs. Ground truth radius and ulna segmentations were manually performed by an expert clinician co-author. Ground truth landmarks were manually located and annotated by the two expert clinician co-authors. The computed RP was considered accurate (in range) when its value was inside the inter and intra observer variability range of the manual annotation. The overall accuracy of the AP and lateral measurements was obtained by averaging the accuracy of each RP.ResultsThe accuracy of the computed AP RPs is 92.7%. The Radial Length and Radial Shift are within the observer variability range; for the Radial Angle, Ulnar Variance and Step all cases are within range except for one outlier; the Gap has two outlier cases. The accuracy of the computed lateral RPs is 100%: all four Palmer Tilt, Dorsal Shift, Gap, and Step are within the clinician observer variability.ConclusionAutomatic computation of distal radius fractures RPs from AP and lateral radiographs of hands with and without cast can be performed accurately. Precise and consistent measurement of RPs may improve the clinical decision making process.
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用于手术决策支持的桡骨干骺端骨折x线摄影参数自动计算方法
目的桡骨远端骨折(DRF)是常见的骨折类型,发生率高。DRF可通过石膏或手术治疗。为了确定临床程序和手术管理,标准化的指南已经越来越普遍。由于手术指征存在争议,放射学参数(rp)可以为有效的决策提供客观支持。从x光片中手动计算RPs是耗时的,并且受观察者和临床医生经验的影响。我们的目的是开发一种自动方法,准确可靠地计算骨折手的正位和侧位x线片上与DRF相关的10个rp。方法输入骨折手的正侧位片和侧位片,分别为打石膏和不打石膏。输出是10个RP值和合成图像,显示在x光片上用于RP计算的地标点和轴。我们的方法包括三个主要步骤:1)使用深度学习x线像元分类器分割桡骨和尺骨;2)利用基于几何模型的方法从分割中提取地标点和轴线;3)基于地标的RPs计算和合成图像的生成。我们的研究测试了第二步的准确性。数据集包括20对正位和侧位x线片。地面真实桡骨和尺骨分割是由专家临床医生合著者手动执行。地面真相地标被手动定位并由两位临床专家共同作者注释。当计算的RP值在手动注释的观察者间和观察者内可变性范围内时,认为其准确(在范围内)。通过平均每个RP的精度获得AP和侧位测量的总体精度。结果计算的AP rp准确率为92.7%。径向长度和径向位移在观测者可变性范围内;对于桡骨角、尺侧方差和步长,除了一个异常值外,所有情况都在范围内;Gap有两个例外情况。计算侧位rp的准确性为100%:所有四个Palmer Tilt, Dorsal Shift, Gap和Step都在临床医生观察可变性范围内。远端骨折ConclusionAutomatic计算rp来自美联社和横向射线照片的手,没有可以准确地执行。精确和一致的rp测量可以改善临床决策过程。
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