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Image-based modelling for Adolescent Idiopathic Scoliosis: Mechanistic machine learning analysis and prediction

机译:基于图像的青少年特性脊柱侧凸模拟:机械机械学习分析与预测

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摘要

Scoliosis, an abnormal curvature of the human spinal column, is characterized by a lateral deviation of the spine, accompanied by axial rotation of the vertebrae. Adolescent Idiopathic Scoliosis (AIS) is the most common type, affecting children between ages 8 to 18 when bone growth is at its maximum rate. We propose a mechanistic machine learning algorithm in order to study patient-specific AIS curve progression, which is associated with the bone growth and other genetic and environmental factors. Two different frameworks are used to analyse and predict curve progression, one with implementing clinical data extracted from 2D X-ray images and the other one with incorporating both clinical data and physical equations governing the non-uniform bone growth. The physical equations governing bone growth are affiliated with calculating all stress components at each region. The stress values are evaluated through a surrogate finite element simulation and a bone growth model on a detailed patient-specific geometry of the human spine. We also propose a patient-specific framework to generate the volumetric model of human spine which is partitioned into different tissues for both vertebra and intervertebral disc. It is shown that implementing physical equations governing bone growth into the prediction framework will notably improve the prediction results as compared to only using clinical data for prediction. In addition, we can predict curve progression at ages outside the range of training samples. (C) 2020 The Authors. Published by Elsevier B. V.
机译:脊柱侧凸,人脊柱的异常曲率,其特征在于脊柱的横向偏差,伴随椎骨的轴向旋转。青少年特发性脊柱侧凸(AIS)是最常见的类型,当骨骼生长以最大速率时,影响8至18岁的儿童。我们提出了一种机械机学习算法,以研究特定于患者的AIS曲线进展,这与骨骼生长和其他遗传和环境因素有关。两种不同的框架用于分析和预测曲线进展,其中一个具有从2D X射线图像中提取的临床数据,并结合治疗非均匀骨生长的临床数据和物理方程。治疗骨生长的物理方程是隶养的,并在每个区域计算所有应力分量。通过替代有限元模拟和人类脊柱的详细患者特异性几何形状的替代有限元模拟和骨生长模型评估应力值。我们还提出了一种特定于患者的框架,以产生人脊柱的体积模型,该体积模型被分成椎骨和椎间盘的不同组织。结果表明,与仅使用用于预测的临床数据相比,将治疗骨骼生长的物理方程尤其改善预测结果。此外,我们可以在训练样本范围之外的年龄预测曲线进展。 (c)2020作者。 elsevier b. v.

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