多尺度机器学习模型预测肌肉和功能疾病进展。

IF 3.9 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Silvia S Blemker, Lara Riem, Olivia DuCharme, Megan Pinette, Kathryn Eve Costanzo, Emma Weatherley, Jeff Statland, Stephen J Tapscott, Leo H Wang, Dennis W W Shaw, Xing Song, Doris Leung, Seth D Friedman
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引用次数: 0

摘要

面肩肱骨肌营养不良症(FSHD)是一种遗传性神经肌肉疾病,以进行性肌肉变性为特征,其严重程度和进展模式存在很大差异。FSHD是一种高度异质性的疾病;然而,目前用于跟踪疾病进展的临床指标缺乏个性化评估的敏感性,这极大地限制了临床试验的设计和执行。本研究引入了一个多尺度机器学习框架,利用全身磁共振成像(MRI)和临床数据来预测FSHD的区域、肌肉、关节和功能进展。这项工作的目标是创建个体FSHD患者的“数字双胞胎”,可用于临床试验。使用来自7项研究的100多名患者的综合数据集,mri衍生的指标(包括脂肪分数、瘦肌肉体积和基线脂肪空间异质性)与临床和功能测量相结合。开发了一个三阶段随机森林模型来预测肌肉成分的年化变化和功能结果(定时起跳(TUG))。所有的模型阶段都显示出很强的预测性能。训练后,模型预测脂肪含量变化的均方根误差(RMSE)为2.16%,瘦体积变化的RMSE为8.1 ml。特征分析表明,肌肉内脂肪异质性的指标可以预测肌肉水平的进展。第三阶段模型结合了功能性肌肉群,在holdout测试数据集中预测TUG变化的RMSE为0.6 s。该研究表明,结合个体肌肉和性能数据的机器学习模型可以有效地预测MRI疾病进展和复杂任务的功能表现,解决FSHD固有的异质性和非线性问题。进一步的研究纳入更大的纵向队列,以及全面的临床和功能测量,将允许扩展和完善这个模型。由于许多神经肌肉疾病具有与FSHD相似的可变性和异质性,因此这些方法具有广泛的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-scale machine learning model predicts muscle and functional disease progression.

Multi-scale machine learning model predicts muscle and functional disease progression.

Multi-scale machine learning model predicts muscle and functional disease progression.

Multi-scale machine learning model predicts muscle and functional disease progression.

Facioscapulohumeral muscular dystrophy (FSHD) is a genetic neuromuscular disorder characterized by progressive muscle degeneration with substantial variability in severity and progression patterns. FSHD is a highly heterogeneous disease; however, current clinical metrics used for tracking disease progression lack sensitivity for personalized assessment, which greatly limits the design and execution of clinical trials. This study introduces a multi-scale machine learning framework leveraging whole-body magnetic resonance imaging (MRI) and clinical data to predict regional, muscle, joint, and functional progression in FSHD. The goal this work is to create a 'digital twin' of individual FSHD patients that can be leveraged in clinical trials. Using a combined dataset of over 100 patients from seven studies, MRI-derived metrics-including fat fraction, lean muscle volume, and fat spatial heterogeneity at baseline-were integrated with clinical and functional measures. A three-stage random forest model was developed to predict annualized changes in muscle composition and a functional outcome (timed up-and-go (TUG)). All model stages revealed strong predictive performance in separate holdout datasets. After training, the models predicted fat fraction change with a root mean square error (RMSE) of 2.16% and lean volume change with a RMSE of 8.1 ml in a holdout testing dataset. Feature analysis revealed that metrics of fat heterogeneity within muscle predicts muscle-level progression. The stage 3 model, which combined functional muscle groups, predicted change in TUG with a RMSE of 0.6 s in the holdout testing dataset. This study demonstrates the machine learning models incorporating individual muscle and performance data can effectively predict MRI disease progression and functional performance of complex tasks, addressing the heterogeneity and nonlinearity inherent in FSHD. Further studies incorporating larger longitudinal cohorts, as well as comprehensive clinical and functional measures, will allow for expanding and refining this model. As many neuromuscular diseases are characterized by variability and heterogeneity similar to FSHD, such approaches have broad applicability.

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来源期刊
Scientific Reports
Scientific Reports Natural Science Disciplines-
CiteScore
7.50
自引率
4.30%
发文量
19567
审稿时长
3.9 months
期刊介绍: We publish original research from all areas of the natural sciences, psychology, medicine and engineering. You can learn more about what we publish by browsing our specific scientific subject areas below or explore Scientific Reports by browsing all articles and collections. Scientific Reports has a 2-year impact factor: 4.380 (2021), and is the 6th most-cited journal in the world, with more than 540,000 citations in 2020 (Clarivate Analytics, 2021). •Engineering Engineering covers all aspects of engineering, technology, and applied science. It plays a crucial role in the development of technologies to address some of the world''s biggest challenges, helping to save lives and improve the way we live. •Physical sciences Physical sciences are those academic disciplines that aim to uncover the underlying laws of nature — often written in the language of mathematics. It is a collective term for areas of study including astronomy, chemistry, materials science and physics. •Earth and environmental sciences Earth and environmental sciences cover all aspects of Earth and planetary science and broadly encompass solid Earth processes, surface and atmospheric dynamics, Earth system history, climate and climate change, marine and freshwater systems, and ecology. It also considers the interactions between humans and these systems. •Biological sciences Biological sciences encompass all the divisions of natural sciences examining various aspects of vital processes. The concept includes anatomy, physiology, cell biology, biochemistry and biophysics, and covers all organisms from microorganisms, animals to plants. •Health sciences The health sciences study health, disease and healthcare. This field of study aims to develop knowledge, interventions and technology for use in healthcare to improve the treatment of patients.
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