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用于评估面肩肱型肌营养不良症疾病严重程度的智能手机和可穿戴传感器:横断面研究

Smartphone and Wearable Sensors for the Estimation of Facioscapulohumeral Muscular Dystrophy Disease Severity: Cross-sectional Study.

作者信息

Zhuparris Ahnjili, Maleki Ghobad, Koopmans Ingrid, Doll Robert J, Voet Nicoline, Kraaij Wessel, Cohen Adam, van Brummelen Emilie, De Maeyer Joris H, Groeneveld Geert Jan

机构信息

Centre for Human Drug Research (CHDR), Leiden, Netherlands.

Department of Rehabilitation, Rehabilitation Center Klimmendaal, Nijmegen, Netherlands.

出版信息

JMIR Form Res. 2023 Mar 15;7:e41178. doi: 10.2196/41178.

Abstract

BACKGROUND

Facioscapulohumeral muscular dystrophy (FSHD) is a progressive neuromuscular disease. Its slow and variable progression makes the development of new treatments highly dependent on validated biomarkers that can quantify disease progression and response to drug interventions.

OBJECTIVE

We aimed to build a tool that estimates FSHD clinical severity based on behavioral features captured using smartphone and remote sensor data. The adoption of remote monitoring tools, such as smartphones and wearables, would provide a novel opportunity for continuous, passive, and objective monitoring of FSHD symptom severity outside the clinic.

METHODS

In total, 38 genetically confirmed patients with FSHD were enrolled. The FSHD Clinical Score and the Timed Up and Go (TUG) test were used to assess FSHD symptom severity at days 0 and 42. Remote sensor data were collected using an Android smartphone, Withings Steel HR+, Body+, and BPM Connect+ for 6 continuous weeks. We created 2 single-task regression models that estimated the FSHD Clinical Score and TUG separately. Further, we built 1 multitask regression model that estimated the 2 clinical assessments simultaneously. Further, we assessed how an increasingly incremental time window affected the model performance. To do so, we trained the models on an incrementally increasing time window (from day 1 until day 14) and evaluated the predictions of the clinical severity on the remaining 4 weeks of data.

RESULTS

The single-task regression models achieved an R of 0.57 and 0.59 and a root-mean-square error (RMSE) of 2.09 and 1.66 when estimating FSHD Clinical Score and TUG, respectively. Time spent at a health-related location (such as a gym or hospital) and call duration were features that were predictive of both clinical assessments. The multitask model achieved an R of 0.66 and 0.81 and an RMSE of 1.97 and 1.61 for the FSHD Clinical Score and TUG, respectively, and therefore outperformed the single-task models in estimating clinical severity. The 3 most important features selected by the multitask model were light sleep duration, total steps per day, and mean steps per minute. Using an increasing time window (starting from day 1 to day 14) for the FSHD Clinical Score, TUG, and multitask estimation yielded an average R of 0.65, 0.79, and 0.76 and an average RMSE of 3.37, 2.05, and 4.37, respectively.

CONCLUSIONS

We demonstrated that smartphone and remote sensor data could be used to estimate FSHD clinical severity and therefore complement the assessment of FSHD outside the clinic. In addition, our results illustrated that training the models on the first week of data allows for consistent and stable prediction of FSHD symptom severity. Longitudinal follow-up studies should be conducted to further validate the reliability and validity of the multitask model as a tool to monitor disease progression over a longer period.

TRIAL REGISTRATION

ClinicalTrials.gov NCT04999735; https://www.clinicaltrials.gov/ct2/show/NCT04999735.

摘要

背景

面肩肱型肌营养不良症(FSHD)是一种进行性神经肌肉疾病。其缓慢且多变的进展使得新疗法的开发高度依赖于能够量化疾病进展和对药物干预反应的经过验证的生物标志物。

目的

我们旨在构建一种工具,该工具基于使用智能手机和远程传感器数据捕获的行为特征来估计FSHD的临床严重程度。采用智能手机和可穿戴设备等远程监测工具,将为在诊所外持续、被动且客观地监测FSHD症状严重程度提供新的机会。

方法

总共招募了38名基因确诊的FSHD患者。在第0天和第42天使用FSHD临床评分和计时起立行走(TUG)测试来评估FSHD症状严重程度。使用安卓智能手机、Withings Steel HR +、Body +和BPM Connect +连续6周收集远程传感器数据。我们创建了2个单任务回归模型,分别估计FSHD临床评分和TUG。此外,我们构建了1个多任务回归模型,同时估计这2项临床评估。此外,我们评估了逐渐增加的时间窗口如何影响模型性能。为此,我们在逐渐增加的时间窗口(从第1天到第14天)上训练模型,并在其余4周的数据上评估临床严重程度的预测。

结果

在估计FSHD临床评分和TUG时,单任务回归模型的R分别为0.57和0.59,均方根误差(RMSE)分别为2.09和1.66。在与健康相关的场所(如健身房或医院)停留的时间和通话时长是两项临床评估的预测特征。多任务模型对FSHD临床评分和TUG的R分别为0.66和0.81,RMSE分别为1.97和1.61,因此在估计临床严重程度方面优于单任务模型。多任务模型选择的3个最重要特征是浅睡眠时长、每日总步数和每分钟平均步数。对于FSHD临床评分、TUG和多任务估计,使用逐渐增加的时间窗口(从第1天开始到第14天),平均R分别为0.65、0.79和0.76,平均RMSE分别为3.37、2.05和4.37。

结论

我们证明了智能手机和远程传感器数据可用于估计FSHD临床严重程度,从而补充诊所外FSHD的评估。此外,我们的结果表明,在第一周的数据上训练模型能够对FSHD症状严重程度进行一致且稳定的预测。应进行纵向随访研究,以进一步验证多任务模型作为长期监测疾病进展工具的可靠性和有效性。

试验注册

ClinicalTrials.gov NCT04999735;https://www.clinicaltrials.gov/ct2/show/NCT04999735。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/36e6/10131943/7292bfe57d2c/formative_v7i1e41178_fig1.jpg

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