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利用机器学习和无标记3D躯干表面数据对脊柱侧弯患者进行临床分类

Clinical classification of scoliosis patients using machine learning and markerless 3D surface trunk data.

作者信息

Rothstock Stephan, Weiss Hans-Rudolf, Krueger Daniel, Paul Lothar

机构信息

Society for the Advancement of Applied Computer Science Berlin, GFaI Gesellschaft zur Förderung angewandter Informatik e. V., Volmerstraße 3, D-12489, Berlin, Germany.

KOOB ScoliTechGmbH & Co KG, Haarbergweg 2, D-55546, Neu Bamberg, Germany.

出版信息

Med Biol Eng Comput. 2020 Dec;58(12):2953-2962. doi: 10.1007/s11517-020-02258-x. Epub 2020 Oct 1.

Abstract

Markerless 3D surface topography for scoliosis diagnosis and brace treatment can avoid repeated radiation known from standard X-ray analysis and possible side effects. Combined with the method of torso asymmetry analysis, curve severity and progression can be evaluated with high reliability. In the current study, a machine learning approach was utilised to classify scoliosis patients based on their trunk surface asymmetry pattern. Frontal X-ray and 3D scanning analysis with a clinical classification based on Cobb angle and spinal curve pattern were performed with 50 patients. Similar as in a previous study, each patient's trunk 3D reconstruction was used for an elastic registration of a reference surface mesh with fixed number of vertices. Subsequently, an asymmetry distance map between original and reflected torso was calculated. A fully connected neural network was then utilised to classify patients regarding their Cobb angle (mild, moderate, severe) and an Augmented Lehnert-Schroth (ALS) classification based on their full torso asymmetry distance map. The results reveal a classification success rate of 90% (SE: 80%, SP: 100%) regarding the curve severity (mild vs moderate-severe) and 50-72% regarding the ALS group. Identifying patient curve severity and treatment group was reasonably possible allowing for a decision support during diagnosis and treatment planning. Graphical abstract.

摘要

用于脊柱侧弯诊断和支具治疗的无标记3D表面形貌技术可以避免标准X射线分析中已知的重复辐射以及可能的副作用。结合躯干不对称分析方法,可以高度可靠地评估侧弯严重程度和进展情况。在本研究中,采用机器学习方法根据脊柱侧弯患者的躯干表面不对称模式对其进行分类。对50例患者进行了基于Cobb角和脊柱侧弯模式的临床分类的正位X射线和3D扫描分析。与之前的研究类似,每个患者的躯干3D重建用于将具有固定顶点数量的参考表面网格进行弹性配准。随后,计算原始躯干和镜像躯干之间的不对称距离图。然后利用全连接神经网络根据患者的Cobb角(轻度、中度、重度)以及基于其全躯干不对称距离图的增强型Lehnert-Schroth(ALS)分类对患者进行分类。结果显示,关于侧弯严重程度(轻度与中度-重度)的分类成功率为90%(灵敏度:80%,特异度:100%),关于ALS组的分类成功率为50%-72%。合理地确定患者的侧弯严重程度和治疗组是可行的,可为诊断和治疗计划提供决策支持。图形摘要。

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