Objective wearable measures and subjective questionnaires for predicting response to neurostimulation in people with chronic pain.

Robert Heros, Denis Patterson, Frank Huygen, Ioannis Skaribas, David Schultz, Derron Wilson, Michael Fishman, Steven Falowski, Gregory Moore, Jan Willem Kallewaard, Soroush Dehghan, Anahita Kyani, Misagh Mansouri
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Abstract

Background: Neurostimulation is an effective therapy for treating and management of refractory chronic pain. However, the complex nature of pain and infrequent in-clinic visits, determining subject's long-term response to the therapy remains difficult. Frequent measurement of pain in this population can help with early diagnosis, disease progression monitoring, and evaluating long-term therapeutic efficacy. This paper compares the utilization of the common subjective patient-reported outcomes with objective measures captured through a wearable device for predicting the response to neurostimulation therapy.

Method: Data is from the ongoing international prospective post-market REALITY clinical study, which collects long-term patient-reported outcomes from 557 subjects implanted by Spinal Cord Stimulator (SCS) or Dorsal Root Ganglia (DRG) neurostimulators. The REALITY sub-study was designed for collecting additional wearables data on a subset of 20 participants implanted with SCS devices for up to six months post implantation. We first implemented a combination of dimensionality reduction algorithms and correlation analyses to explore the mathematical relationships between objective wearable data and subjective patient-reported outcomes. We then developed machine learning models to predict therapy outcome based on the subject's response to the numerical rating scale (NRS) or patient global impression of change (PGIC).

Results: Principal component analysis showed that psychological aspects of pain were associated with heart rate variability, while movement-related measures were strongly associated with patient-reported outcomes related to physical function and social role participation. Our machine learning models using objective wearable data predicted PGIC and NRS outcomes with high accuracy without subjective data. The prediction accuracy was higher for PGIC compared with the NRS using subjective-only measures primarily driven by the patient satisfaction feature. Similarly, the PGIC questions reflect an overall change since the study onset and could be a better predictor of long-term neurostimulation therapy outcome.

Conclusions: The significance of this study is to introduce a novel use of wearable data collected from a subset of patients to capture multi-dimensional aspects of pain and compare the prediction power with the subjective data from a larger data set. The discovery of pain digital biomarkers could result in a better understanding of the patient's response to therapy and their general well-being.

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预测慢性疼痛患者对神经刺激反应的客观可穿戴测量和主观问卷。
背景:神经刺激是治疗和管理难治性慢性疼痛的有效疗法。然而,疼痛的复杂性和罕见的临床就诊,确定受试者对治疗的长期反应仍然很困难。经常测量这一人群的疼痛有助于早期诊断、疾病进展监测和评估长期治疗效果。本文将患者报告的常见主观结果与通过可穿戴设备捕获的客观测量结果的利用率进行了比较,以预测对神经刺激疗法的反应。方法:数据来自正在进行的国际前瞻性上市后REALITY临床研究,该研究收集了557名接受脊髓刺激仪(SCS)或背根神经节(DRG)神经刺激仪植入的受试者的长期患者报告结果。REALITY子研究旨在收集20名植入SCS设备长达6个月的参与者的额外可穿戴设备数据。我们首先实现了降维算法和相关性分析的组合,以探索客观可穿戴数据和主观患者报告结果之间的数学关系。然后,我们开发了机器学习模型,根据受试者对数字评定量表(NRS)或患者整体变化印象(PGIC)的反应来预测治疗结果。结果:主成分分析表明,疼痛的心理方面与心率变异性有关,而运动相关指标与患者报告的与身体功能和社会角色参与相关的结果密切相关。我们使用客观可穿戴数据的机器学习模型在没有主观数据的情况下以高精度预测PGIC和NRS结果。与使用主要由患者满意度特征驱动的仅主观测量的NRS相比,PGIC的预测精度更高。同样,PGIC问题反映了自研究开始以来的总体变化,可能是长期神经刺激治疗结果的更好预测因素。结论:本研究的意义在于引入了一种新的方法,使用从患者子集收集的可穿戴数据来捕捉疼痛的多维方面,并将预测能力与来自更大数据集的主观数据进行比较。疼痛数字生物标志物的发现可以更好地了解患者对治疗的反应及其总体健康状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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