首页> 外文期刊>Pain and therapy. >An Ensemble of Psychological and Physical Health Indices Discriminates Between Individuals with Chronic Pain and Healthy Controls with High Reliability: A Machine Learning Study
【24h】

An Ensemble of Psychological and Physical Health Indices Discriminates Between Individuals with Chronic Pain and Healthy Controls with High Reliability: A Machine Learning Study

机译:心理和物理健康指数的集合鉴别具有高可靠性的慢性疼痛和健康控制的个体:机器学习研究

获取原文
获取外文期刊封面目录资料

摘要

IntroductionChronic pain (CP) is a complex multidimensional experience severely affecting individuals’ quality of life. Multiple cognitive, affective, emotional, and interpersonal factors play a major role in CP. Furthermore, the psychological, social, and physical circumstances leading to CP show high inter-individual variability, thus making it difficult to identify core syndrome characteristics. In a biopsychosocial perspective, we aim at identifying a pattern of psycho-physical impairments that can reliably discriminate between CP individuals and healthy controls (HC) with high accuracy and estimated generalizability using machine learning.MethodsA total of 118 CP and 86 HC were recruited. All individuals were administered several scales assessing quality of life, physical and mental health, personal functioning, anxiety, depression, beliefs about medical treatments, and cognitive ability. These features were trained to separate CP from HC using support vector classification and repeated nested cross-validation.ResultsOur psycho-physical classifier was able to discriminate CP from HC with 86.5% balanced accuracy and significance ( p =?0.0001). The most reliable features characterizing CP were anxiety and depression scores, and belief of harm from prolonged pharmacological treatments; for HP, the most reliable features were physical and occupational functioning, and vitality levels.ConclusionOur findings suggest that, using psychological and physical assessments, it is possible to classify CP from HC with high reliability and estimated generalizability via (i) a pattern of psychological symptoms and cognitive beliefs characteristic of CP, and (ii) a pattern of intact physical functioning characteristic of HC. We think that our algorithm enables novel insights into potential individualized targets for CP-related early intervention programs.
机译:引言疼痛(CP)是一个复杂的多维经验,严重影响个人的生活质量。多重认知,情感,情感和人际关系在CP中发挥着重要作用。此外,导致CP的心理学,社会和身体环境表现出高间间的变异性,从而难以识别核心综合征特征。在生物学的观点中,我们的目的是识别能够可靠地区分CP个体和健康控制(HC)的心理物理损伤模式,并使用机器学习的高精度和估计的相互性..招募了118个CP和86 HC的方法。所有个人都是几种尺度评估生活质量,身心健康,个人功能,焦虑,抑郁症,关于医疗治疗的信念以及认知能力。这些功能训练以使用支持向量分类和重复嵌套交叉验证的HC分离CP。方法可以从HC中判别CP,均衡精度为86.5%(P = 0.0001)。表征CP的最可靠的特征是焦虑和抑郁症分数,以及延长药理治疗的危害;对于HP来说,最可靠的特征是物理和职业功能,和生命力水平。结论调查结果表明,使用心理和物理评估,可以通过高可靠性和估计的普遍异性,通过(i)一种心理模式CP的症状和认知信念特征,(ii)HC的完整物理功能特征的模式。我们认为我们的算法使新颖的见解能够进入与CP相关的早期干预计划的潜在个性化目标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
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