基于计算机视觉和机器学习的桡骨远端x线片图像分类方法。

IF 2.3 3区 医学 Q2 ORTHOPEDICS
Rohan Vemu, Dion Birhiray, Bassem Darwish, Raven Hollis, Sai Unnam, Srikhar Chilukuri, Lorenzo Deveza
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引用次数: 0

摘要

计算机视觉和机器学习的进步增强了分析骨科x光片的能力。这一过程的一个关键但未被充分探索的组成部分是放射影像的准确分类和相关解剖区域的定位,这两者都会影响下游诊断模型的性能。本研究提出了一种深度学习目标检测模型和移动应用程序,旨在将桡骨远端x线片分类为标准视图——前后视图(AP)、侧视图(LAT)和斜视图(OB),同时定位与桡骨远端骨折最相关的解剖区域。在2021年至2023年期间,从一家机构共收集了1593张未识别的x线片(544张AP, 538张LAT和521张OB)。每张图像都使用Labellerr软件进行注释,绘制包围从第二个手指MCP关节到桡骨远端三分之一区域的边界框,并由经验丰富的骨科医生进行注释验证。使用70/15/15训练/验证/测试分割对YOLOv5目标检测模型进行微调和训练。该模型的总体准确率为97.3%,其中AP的分类准确率为99%,LAT的准确率为100%,OB的准确率为93%。总体准确率和召回率分别为96.8%和97.5%。模型性能超出了随机猜测的预期精度(p
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Computer Vision and Machine Learning Approach to Classify Views in Distal Radius Radiographs.

Advances in computer vision and machine learning have augmented the ability to analyze orthopedic radiographs. A critical but underexplored component of this process is the accurate classification of radiographic views and localization of relevant anatomical regions, both of which can impact the performance of downstream diagnostic models. This study presents a deep learning object detection model and mobile application designed to classify distal radius radiographs into standard views-anterior-posterior (AP), lateral (LAT), and oblique (OB)- while localizing the anatomical region most relevant to distal radius fractures. A total of 1593 deidentified radiographs were collected from a single institution between 2021 and 2023 (544 AP, 538 LAT, and 521 OB). Each image was annotated using Labellerr software to draw bounding boxes encompassing the region spanning from the second digit MCP joint to the distal third of the radius, with annotations verified by an experienced orthopedic surgeon. A YOLOv5 object detection model was fine-tuned and trained using a 70/15/15 train/validation/test split. The model achieved an overall accuracy of 97.3%, with class-specific accuracies of 99% for AP, 100% for LAT, and 93% for OB. Overall precision and recall were 96.8% and 97.5%, respectively. Model performance exceeded the expected accuracy from random guessing (p < 0.001, binomial test). A Streamlit-based mobile application was developed to support clinical deployment. This automated view classification step reduces feature space by isolating only the relevant anatomy. Focusing subsequent models on the targeted region can minimize distraction from irrelevant areas and improve the accuracy of downstream fracture classification models.

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来源期刊
Journal of Orthopaedic Research®
Journal of Orthopaedic Research® 医学-整形外科
CiteScore
6.10
自引率
3.60%
发文量
261
审稿时长
3-6 weeks
期刊介绍: The Journal of Orthopaedic Research is the forum for the rapid publication of high quality reports of new information on the full spectrum of orthopaedic research, including life sciences, engineering, translational, and clinical studies.
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