首页> 外文期刊>Sensors >Developing Fine-Grained Actigraphies for Rheumatoid Arthritis Patients from a Single Accelerometer Using Machine Learning
【24h】

Developing Fine-Grained Actigraphies for Rheumatoid Arthritis Patients from a Single Accelerometer Using Machine Learning

机译:从单个加速度计使用机器学习为类风湿关节炎患者开发细纹的书法

获取原文
       

摘要

In addition to routine clinical examination, unobtrusive and physical monitoring of Rheumatoid Arthritis (RA) patients provides an important source of information to enable understanding the impact of the disease on quality of life. Besides an increase in sedentary behaviour, pain in RA can negatively impact simple physical activities such as getting out of bed and standing up from a chair. The objective of this work is to develop a method that can generate fine-grained actigraphies to capture the impact of the disease on the daily activities of patients. A processing methodology is presented to automatically tag activity accelerometer data from a cohort of moderate-to-severe RA patients. A study of procesing methods based on machine learning and deep learning is provided. Thirty subjects, 10 RA patients and 20 healthy control subjects, were recruited in the study. A single tri-axial accelerometer was attached to the position of the fifth lumbar vertebra (L5) of each subject with a tag prediction granularity of 3 s. The proposed method is capable of handling unbalanced datasets from tagged data while accounting for long-duration activities such as sitting and lying, as well as short transitions such as sit-to-stand or lying-to-sit. The methodology also includes a novel mechanism for automatically applying a threshold to predictions by their confidence levels, in addition to a logical filter to correct for infeasible sequences of activities. Performance tests showed that the method was able to achieve around 95% accuracy and 81% F-score. The produced actigraphies can be helpful to generate objective RA disease-specific markers of patient mobility in-between clinical site visits.
机译:除常规临床检查外,类风湿关节炎(RA)患者的无障碍和物理监测还为了解疾病对生活质量的影响提供了重要的信息来源。除了久坐行为增加外,RA的疼痛还会对简单的身体活动产生不利影响,例如起床和从椅子上站起来。这项工作的目的是开发一种方法,可以生成细粒度的书法,以捕获疾病对患者日常活动的影响。提出了一种处理方法,可以自动标记来自中重度RA患者队列的活动加速度计数据。提供了一种基于机器学习和深度学习的处理方法的研究。该研究招募了30名受试者,10名RA患者和20名健康对照受试者。将单个三轴加速度计连接到每个受试者的第五个腰椎(L5)的位置,标签预测粒度为3 s。所提出的方法能够处理来自标记数据的不平衡数据集,同时考虑到长时间的活动(例如坐着和躺着)以及短暂的过渡(例如从坐到站或从坐到坐)。该方法还包括一种新颖的机制,除了可以通过逻辑过滤器校正不可行的活动序列之外,还可以通过其置信度自动将阈值应用于预测。性能测试表明,该方法能够实现约95%的准确度和81%的F分数。产生的手写体有助于在临床现场访视之间产生客观的RA疾病特异性患者活动性标记。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号