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整合多维数据分析以实现慢性腰痛的精准诊断。

Integrating multidimensional data analytics for precision diagnosis of chronic low back pain.

作者信息

Vickery Sam, Junker Frederick, Döding Rebekka, Belavy Daniel L, Angelova Maia, Karmakar Chandan, Becker Luis, Taheri Nima, Pumberger Matthias, Reitmaier Sandra, Schmidt Hendrik

机构信息

Fachbereich Pflege-, Hebammen- und Therapiewissenschaften (PHT), Hochschule Bochum (University of Applied Sciences), Bochum, Germany.

Aston Digital Futures Institute, Aston University, Birmingham, UK.

出版信息

Sci Rep. 2025 Mar 20;15(1):9675. doi: 10.1038/s41598-025-93106-1.

Abstract

Low back pain (LBP) is a leading cause of disability worldwide, with up to 25% of cases become chronic (cLBP). Whilst multi-factorial, the relative importance of contributors to cLBP remains unclear. We leveraged a comprehensive multi-dimensional data-set and machine learning-based variable importance selection to identify the most effective modalities for differentiating whether a person has cLBP. The dataset included questionnaire data, clinical and functional assessments, and spino-pelvic magnetic resonance imaging (MRI), encompassing a total of 144 parameters from 1,161 adults with (n = 512) and without cLBP (n = 649). Boruta and random forest were utilised for variable importance selection and cLBP classification respectively. A multimodal model including questionnaire, clinical, and MRI data was the most effective in differentiating people with and without cLBP. From this, the most robust variables (n = 9) were psychosocial factors, neck and hip mobility, as well as lower lumbar disc herniation and degeneration. This finding persisted in an unseen holdout dataset. Beyond demonstrating the importance of a multi-dimensional approach to cLBP, our findings will guide the development of targeted diagnostics and personalized treatment strategies for cLBP patients.

摘要

下背痛(LBP)是全球致残的主要原因,高达25%的病例会发展为慢性下背痛(cLBP)。虽然其病因是多因素的,但导致cLBP的各种因素的相对重要性仍不明确。我们利用一个全面的多维度数据集和基于机器学习的变量重要性选择方法,来确定区分一个人是否患有cLBP的最有效方式。该数据集包括问卷数据、临床和功能评估以及脊柱骨盆磁共振成像(MRI),涵盖了来自1161名成年人(其中512名患有cLBP,649名未患cLBP)的总共144个参数。分别使用Boruta和随机森林进行变量重要性选择和cLBP分类。一个包括问卷、临床和MRI数据的多模态模型在区分患有和未患cLBP的人方面最为有效。据此,最关键的变量(共9个)是心理社会因素、颈部和髋部活动度,以及下腰椎间盘突出和退变。这一发现也在一个未见过的验证数据集中得到了验证。除了证明多维方法对cLBP的重要性之外,我们的研究结果还将指导针对cLBP患者的靶向诊断和个性化治疗策略的制定。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5bb7/11926347/c584ccceb0bc/41598_2025_93106_Fig1_HTML.jpg

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