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一种结合了全局/区域性 X 光和临床参数的智能复合模型,用于预测进行性青少年特发性脊柱侧弯的曲率,并促进人群筛查。

An intelligent composite model incorporating global / regional X-rays and clinical parameters to predict progressive adolescent idiopathic scoliosis curvatures and facilitate population screening.

机构信息

Department of Orthopaedics and Traumatology, Li Ka Shing Faculty of Medicine, The University of Hong Kong, China.

Department of Orthopaedics and Traumatology, Tuen Mun Hospital, Hong Kong, China.

出版信息

EBioMedicine. 2023 Sep;95:104768. doi: 10.1016/j.ebiom.2023.104768. Epub 2023 Aug 22.

Abstract

BACKGROUND

Adolescent idiopathic scoliosis (AIS) affects up to 5% of the population. The efficacy of school-aged screening remains controversial since it is uncertain which curvatures will progress following diagnosis and require treatment. Patient demographics, vertebral morphology, skeletal maturity, and bone quality represent individual risk factors for progression but have yet to be integrated towards accurate prognostication. The objective of this work was to develop composite machine learning-based prediction model to accurately predict AIS curves at-risk of progression.

METHODS

1870 AIS patients with remaining growth potential were identified. Curve progression was defined by a Cobb angle increase in the major curve of ≥6° between first visit and skeletal maturity in curves that exceeded 25°. Separate prediction modules were developed for i) clinical data, ii) global/regional spine X-rays, and iii) hand X-rays. The hand X-ray module performed automated image classification and segmentation tasks towards estimation of skeletal maturity and bone mineral density. A late fusion strategy integrated these domains towards the prediction of progressive curves at first clinic visit.

FINDINGS

Composite model performance was assessed on a validation cohort and achieved an accuracy of 83.2% (79.3-83.6%, 95% confidence interval), sensitivity of 80.9% (78.2-81.9%), specificity of 83.6% (78.8-84.1%) and an AUC of 0.84 (0.81-0.85), outperforming single modality prediction models (AUC 0.65-0.78).

INTERPRETATION

The composite prediction model achieved a high degree of accuracy. Upon incorporation into school-aged screening programs, patients at-risk of progression may be prioritized to receive urgent specialist attention, more frequent follow-up, and pre-emptive treatment.

FUNDING

Funding from The Society for the Relief of Disabled Children was awarded to GKHS.

摘要

背景

青少年特发性脊柱侧凸(AIS)影响了高达 5%的人群。对于学龄期的筛查,其疗效仍存在争议,因为尚不确定哪些曲线在诊断后会进展并需要治疗。患者的人口统计学特征、椎体形态、骨骼成熟度和骨质量代表了进展的个体危险因素,但尚未整合到准确的预后中。这项工作的目的是开发基于机器学习的综合预测模型,以准确预测有进展风险的 AIS 曲线。

方法

确定了 1870 名有剩余生长潜力的 AIS 患者。曲线进展定义为首次就诊至骨骼成熟期间,主要曲线的 Cobb 角增加≥6°,且曲线超过 25°。分别为 i)临床数据、ii)全脊柱/局部脊柱 X 射线和 iii)手部 X 射线开发预测模块。手部 X 射线模块对骨骼成熟度和骨密度进行了自动图像分类和分割任务。采用晚期融合策略将这些领域整合到首次就诊时预测进展曲线中。

结果

在验证队列中评估了综合模型的性能,达到了 83.2%的准确率(79.3%-83.6%,95%置信区间)、80.9%的敏感性(78.2%-81.9%)、83.6%的特异性(78.8%-84.1%)和 0.84 的 AUC(0.81-0.85),优于单一模式预测模型(AUC 0.65-0.78)。

解释

综合预测模型具有很高的准确性。将其纳入学龄期筛查计划中,可能会优先考虑进展风险患者,以便他们获得紧急专家关注、更频繁的随访和预防性治疗。

资助

The Society for the Relief of Disabled Children 向 GKHS 授予了资助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9908/10470293/dfdd55b28a76/gr1.jpg

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