数据驱动的脊髓损伤恢复预测:现状与未来展望探索。

IF 4.6 2区 医学 Q1 NEUROSCIENCES
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引用次数: 0

摘要

脊髓损伤(SCI)给康复医学带来了巨大挑战,不同个体的康复效果千差万别。机器学习(ML)是一种很有前景的方法,可用于加强对康复轨迹的预测,但将其融入临床实践需要对其功效和适用性有透彻的了解。我们系统回顾了目前有关 SCI 恢复预测数据驱动模型的文献。我们根据一系列标准对所纳入的研究进行了评估,这些标准包括评估方法、实施、输入数据偏好以及旨在预测的临床结果。我们观察到一种趋势,即利用常规获得的数据,如国际 SCI 神经分类标准(ISNCSCI)、影像学和人口统计学数据,来预测脊髓独立测量(SCIM)III 和功能独立测量(FIM)分数得出的功能结果,重点是运动能力。尽管随着时间的推移,人们对数据驱动型研究的兴趣与日俱增,但传统的机器学习架构,如线性回归和基于树的方法,仍然是实施过程中最受欢迎的选择。这意味着我们有大量机会探索解决 SCI 恢复预测难题的架构,包括从有限的纵向数据中学习、提高可推广性和可重复性的技术。最后,我们提出了一个观点,强调了数据驱动 SCI 恢复预测的未来可能发展方向,并从不同的数据类型(成像、表格、序列、多模态)、数据挑战(有限、缺失、纵向数据)和算法需求(因果推理、稳健性)等方面总结了与其他应用领域的相似之处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven prediction of spinal cord injury recovery: An exploration of current status and future perspectives

Spinal Cord Injury (SCI) presents a significant challenge in rehabilitation medicine, with recovery outcomes varying widely among individuals. Machine learning (ML) is a promising approach to enhance the prediction of recovery trajectories, but its integration into clinical practice requires a thorough understanding of its efficacy and applicability. We systematically reviewed the current literature on data-driven models of SCI recovery prediction. The included studies were evaluated based on a range of criteria assessing the approach, implementation, input data preferences, and the clinical outcomes aimed to forecast. We observe a tendency to utilize routinely acquired data, such as International Standards for Neurological Classification of SCI (ISNCSCI), imaging, and demographics, for the prediction of functional outcomes derived from the Spinal Cord Independence Measure (SCIM) III and Functional Independence Measure (FIM) scores with a focus on motor ability. Although there has been an increasing interest in data-driven studies over time, traditional machine learning architectures, such as linear regression and tree-based approaches, remained the overwhelmingly popular choices for implementation. This implies ample opportunities for exploring architectures addressing the challenges of predicting SCI recovery, including techniques for learning from limited longitudinal data, improving generalizability, and enhancing reproducibility. We conclude with a perspective, highlighting possible future directions for data-driven SCI recovery prediction and drawing parallels to other application fields in terms of diverse data types (imaging, tabular, sequential, multimodal), data challenges (limited, missing, longitudinal data), and algorithmic needs (causal inference, robustness).

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来源期刊
Experimental Neurology
Experimental Neurology 医学-神经科学
CiteScore
10.10
自引率
3.80%
发文量
258
审稿时长
42 days
期刊介绍: Experimental Neurology, a Journal of Neuroscience Research, publishes original research in neuroscience with a particular emphasis on novel findings in neural development, regeneration, plasticity and transplantation. The journal has focused on research concerning basic mechanisms underlying neurological disorders.
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