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基于深度学习和计算机视觉的全脊柱侧位 X 光片用于放射学分析的脊柱自动分割和参数测量。

Automatic Spine Segmentation and Parameter Measurement for Radiological Analysis of Whole-Spine Lateral Radiographs Using Deep Learning and Computer Vision.

机构信息

Department of Biomedical Engineering, Gil Medical Center, Gachon University College of Medicine, Incheon, Korea.

Department of Neurosurgery, Gil Medical Center, Gachon University College of Medicine, Incheon, Korea.

出版信息

J Digit Imaging. 2023 Aug;36(4):1447-1459. doi: 10.1007/s10278-023-00830-z. Epub 2023 May 2.

Abstract

Radiographic examination is essential for diagnosing spinal disorders, and the measurement of spino-pelvic parameters provides important information for the diagnosis and treatment planning of spinal sagittal deformities. While manual measurement methods are the golden standard for measuring parameters, they can be time consuming, inefficient, and rater dependent. Previous studies that have used automatic measurement methods to alleviate the downsides of manual measurements showed low accuracy or could not be applied to general films. We propose a pipeline for automated measurement of spinal parameters by combining a Mask R-CNN model for spine segmentation with computer vision algorithms. This pipeline can be incorporated into clinical workflows to provide clinical utility in diagnosis and treatment planning. A total of 1807 lateral radiographs were used for the training (n = 1607) and validation (n = 200) of the spine segmentation model. An additional 200 radiographs, which were also used for validation, were examined by three surgeons to evaluate the performance of the pipeline. Parameters automatically measured by the algorithm in the test set were statistically compared to parameters measured manually by the three surgeons. The Mask R-CNN model achieved an average precision at 50% intersection over union (AP50) of 96.2% and a Dice score of 92.6% for the spine segmentation task in the test set. The mean absolute error values of the spino-pelvic parameters measurement results were within the range of 0.4° (pelvic tilt) to 3.0° (lumbar lordosis, pelvic incidence), and the standard error of estimate was within the range of 0.5° (pelvic tilt) to 4.0° (pelvic incidence). The intraclass correlation coefficient values ranged from 0.86 (sacral slope) to 0.99 (pelvic tilt, sagittal vertical axis).

摘要

放射学检查对于诊断脊柱疾病至关重要,而脊柱骨盆参数的测量为脊柱矢状面畸形的诊断和治疗计划提供了重要信息。虽然手动测量方法是测量参数的金标准,但它们耗时、效率低下且依赖于评估者。以前使用自动测量方法来缓解手动测量缺点的研究显示出较低的准确性,或者无法应用于普通胶片。我们提出了一种通过结合用于脊柱分割的 Mask R-CNN 模型和计算机视觉算法来自动测量脊柱参数的流水线。该流水线可以整合到临床工作流程中,为诊断和治疗计划提供临床实用性。总共使用了 1807 张侧位射线照片来训练(n=1607)和验证(n=200)脊柱分割模型。另外 200 张射线照片也用于验证,由三位外科医生检查,以评估流水线的性能。通过算法自动测量的参数在测试集中与三位外科医生手动测量的参数进行了统计学比较。Mask R-CNN 模型在测试集中的平均精度在 50%交并比(AP50)为 96.2%,Dice 分数为 92.6%,用于脊柱分割任务。脊柱骨盆参数测量结果的平均绝对误差值在 0.4°(骨盆倾斜)至 3.0°(腰椎前凸,骨盆入射角)之间,估计的标准误差在 0.5°(骨盆倾斜)至 4.0°(骨盆入射角)之间。组内相关系数值范围从 0.86(骶骨斜率)到 0.99(骨盆倾斜,矢状垂直轴)。

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