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理解青少年特发性脊柱侧凸脊柱侧凸畸形发病及进展的当前模型:一项系统综述

Current models to understand the onset and progression of scoliotic deformities in adolescent idiopathic scoliosis: a systematic review.

作者信息

Meiring A R, de Kater E P, Stadhouder A, van Royen B J, Breedveld P, Smit T H

机构信息

Faculty of Mechanical, Maritime and Materials Engineering, Delft University of Technology, Delft, The Netherlands.

Department of Orthopedic Surgery and Sports Medicine, Amsterdam UMC, Amsterdam, The Netherlands.

出版信息

Spine Deform. 2023 May;11(3):545-558. doi: 10.1007/s43390-022-00618-1. Epub 2022 Dec 1.

Abstract

PURPOSE

To create an updated and comprehensive overview of the modeling studies that have been done to understand the mechanics underlying deformities of adolescent idiopathic scoliosis (AIS), to predict the risk of curve progression and thereby substantiate etiopathogenetic theories.

METHODS

In this systematic review, an online search in Scopus and PubMed together with an analysis in secondary references was done, which yielded 86 studies. The modeling types were extracted and the studies were categorized accordingly.

RESULTS

Animal modeling, together with machine learning modeling, forms the category of black box models. This category is perceived as the most clinically relevant. While animal models provide a tangible idea of the biomechanical effects in scoliotic deformities, machine learning modeling was found to be the best curve-progression predictor. The second category, that of artificial models, has, just as animal modeling, a tangible model as a result, but focusses more on the biomechanical process of the scoliotic deformity. The third category is formed by computational models, which are very popular in etiopathogenetic parameter-based studies. They are also the best in calculating stresses and strains on vertebrae, intervertebral discs, and other surrounding tissues.

CONCLUSION

This study presents a comprehensive overview of the current modeling techniques to understand the mechanics of the scoliotic deformities, predict the risk of curve progression in AIS and thereby substantiate etiopathogenetic theories. Although AIS remains to be seen as a complex and multifactorial problem, the progression of its deformity can be predicted with good accuracy. Modeling of AIS develops rapidly and may lead to the identification of risk factors and mitigation strategies in the near future. The overview presented provides a basis to follow this development.

摘要

目的

对已开展的建模研究进行更新和全面概述,以了解青少年特发性脊柱侧凸(AIS)畸形背后的力学原理,预测侧弯进展风险,从而证实病因发病机制理论。

方法

在本系统评价中,对Scopus和PubMed进行了在线检索,并对二次参考文献进行了分析,共获得86项研究。提取建模类型并据此对研究进行分类。

结果

动物建模与机器学习建模共同构成黑箱模型类别。这一类别被认为与临床最为相关。虽然动物模型能让人切实了解脊柱侧凸畸形中的生物力学效应,但发现机器学习建模是最佳的侧弯进展预测方法。第二类是人工模型,与动物建模一样,其结果是一个有形模型,但更侧重于脊柱侧凸畸形的生物力学过程。第三类由计算模型构成,在基于病因发病机制参数的研究中非常受欢迎。它们在计算椎体、椎间盘和其他周围组织上的应力和应变方面也表现最佳。

结论

本研究全面概述了当前用于理解脊柱侧凸畸形力学原理、预测AIS侧弯进展风险并从而证实病因发病机制理论的建模技术。尽管AIS仍被视为一个复杂的多因素问题,但其畸形进展可以得到较为准确的预测。AIS建模发展迅速,可能在不久的将来导致识别风险因素和缓解策略。所提供的概述为跟踪这一发展提供了基础。

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