Fully-Automated Analysis of Scoliosis from Spinal X-Ray Images

A. Imran, Chao Huang, Hui Tang, Wei Fan, K. Cheung, M. To, Zhen Qian, D. Terzopoulos
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引用次数: 4

Abstract

Scoliosis is a congenital disease in which the spine is deformed from its normal shape. Radiography is the most cost-effective and accessible modality for imaging the spine. Conventional spinal assessment, diagnosis of scoliosis, and treatment planning relies on tedious and time-consuming manual analysis of spine radiographs that is susceptible to observer variation. A reliable, fully-automated method that can accurately identify vertebrae, a crucial step in image-guided scoliosis assessment, is presently unavailable in the literature. Leveraging a novel, deep-learning-based image segmentation model, we develop an end-to-end spine radiograph analysis pipeline that automatically provides an accurate segmentation and identification of the vertebrae, culminating in the reliable estimation of the Cobb angle, the most widely used measurement to quantify the magnitude of scoliosis. Our experimental results with anterior-posterior spine X-ray images indicate that our system is effective in the identification and labeling of vertebrae, and can potentially provide assistance to medical practitioners in the assessment of scoliosis.
脊柱x射线图像脊柱侧凸的全自动分析
脊柱侧凸是一种先天性疾病,脊柱从其正常形状变形。x线摄影是最具成本效益和最容易获得的脊柱成像方式。传统的脊柱评估,脊柱侧凸的诊断和治疗计划依赖于繁琐和耗时的脊柱x线片人工分析,容易受到观察者变化的影响。一种可靠的、全自动的方法可以准确地识别椎骨,这是图像引导脊柱侧凸评估的关键步骤,目前尚无文献报道。利用一种新颖的,基于深度学习的图像分割模型,我们开发了一个端到端的脊柱x线片分析管道,自动提供椎骨的准确分割和识别,最终可靠地估计Cobb角,这是量化脊柱侧凸程度最广泛使用的测量方法。我们对脊柱前后x线图像的实验结果表明,我们的系统在椎骨的识别和标记方面是有效的,并且可以为医生评估脊柱侧凸提供潜在的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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