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Automated Measurement of Lumbar Lordosis on Radiographs Using Machine Learning and Computer Vision

机译:用机器学习和计算机视觉自动测量Xummar Lordisis的Xummar lottoris

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Study Design: Cross sectional database study. Objective: To develop a fully automated artificial intelligence and computer vision pipeline for assisted evaluation of lumbar lordosis. Methods: Lateral lumbar radiographs were used to develop a segmentation neural network (n = 629). After synthetic augmentation, 70% of these radiographs were used for network training, while the remaining 30% were used for hyperparameter optimization. A computer vision algorithm was deployed on the segmented radiographs to calculate lumbar lordosis angles. A test set of radiographs was used to evaluate the validity of the entire pipeline (n = 151). Results: The U-Net segmentation achieved a test dataset dice score of 0.821, an area under the receiver operating curve of 0.914, and an accuracy of 0.862. The computer vision algorithm identified the L1 and S1 vertebrae on 84.1% of the test set with an average speed of 0.14 seconds/radiograph. From the 151 test set radiographs, 50 were randomly chosen for surgeon measurement. When compared with those measurements, our algorithm achieved a mean absolute error of 8.055° and a median absolute error of 6.965° (not statistically significant, P .05). Conclusion: This study is the first to use artificial intelligence and computer vision in a combined pipeline to rapidly measure a sagittal spinopelvic parameter without prior manual surgeon input. The pipeline measures angles with no statistically significant differences from manual measurements by surgeons. This pipeline offers clinical utility in an assistive capacity, and future work should focus on improving segmentation network performance.
机译:研究设计:跨截面数据库研究。目的:开发一个全自动的人工智能和计算机视觉管道,用于评估腰椎病。方法:使用横向腰部射线照片来开发分割神经网络(n = 629)。合成增强后,70%的X线片被用于网络培训,而剩余的30%用于近似参数优化。将计算机视觉算法部署在分段的射线照相上,以计算腰椎神垂角度。用于评估整个管道的有效性(n = 151)的测试集。结果:U-净分割达到了0.821的测试数据集骰子评分,接收器下的区域为0.914,精度为0.862。计算机视觉算法在84.1%的测试集上鉴定了L1和S1椎骨,平均速度为0.14秒/射线照片。从151个测试集射线照相中,50个被随机选择用于外科医生测量。与这些测量相比,我们的算法达到了8.055°的平均绝对误差和6.965°的中位绝对误差(没有统计学意义,p> .05)。结论:本研究是第一个在组合管道中使用人工智能和计算机视觉,以便在没有先前的手动外科医生输入的情况下快速测量矢状丝孔丝孔参数。管道测量角度,没有外科医生的手动测量差异没有统计学意义的差异。该管道以辅助能力提供临床效用,未来的工作应专注于提高分割网络性能。

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