Predictive Modeling of The Chronic Pain-Induced Depression in Old Adults Based on Music Intervention

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Abstract

Chronic pain is a prevalent concern for older individuals, often leading to a decline in mental well-being, especially through conditions like depression. This study explores the potential effectiveness of Music Intervention (MI) as a non-pharmacological approach to alleviate depressive symptoms in those experiencing chronic pain. Existing methodologies lack predictive accuracy, prompting the introduction of the Predicting Chronic Pain-based Music Intervention (PCP-MI) model. Utilizing machine learning, the PCP-MI model customizes music treatments based on individual characteristics and preferences, showcasing promising results across various metrics related to pain, anxiety, heart and respiratory rates, pain tolerance, emotional well-being, quality of life, and depression severity. The PCP-MI method demonstrated a mean performance across multiple metrics, encompassing pain intensity (17.75%), anxiety level (27.79%), heart rate (78.30 bpm), respiratory rate (15.90 bpm), pain tolerance threshold (59.37 seconds), emotional well-being (75.56%), quality of life (74.81%), and depression severity (65.27%). This research suggests a promising avenue for enhancing the psychological well-being of a vulnerable group, representing a significant advancement in comprehensive pain treatment approaches.
基于音乐干预的老年人慢性疼痛诱发抑郁预测模型
慢性疼痛是老年人普遍关注的问题,通常会导致精神健康状况下降,尤其是抑郁症等疾病。本研究探讨了音乐干预(MI)作为一种非药物疗法对缓解慢性疼痛患者抑郁症状的潜在效果。现有的方法缺乏预测准确性,因此引入了基于音乐干预的慢性疼痛预测模型(PCP-MI)。PCP-MI 模型利用机器学习,根据个人特征和偏好定制音乐治疗方法,在疼痛、焦虑、心率和呼吸频率、疼痛耐受性、情绪健康、生活质量和抑郁严重程度等各种相关指标方面取得了良好的效果。PCP-MI 方法在疼痛强度(17.75%)、焦虑程度(27.79%)、心率(78.30 bpm)、呼吸频率(15.90 bpm)、疼痛耐受阈值(59.37 秒)、情感幸福感(75.56%)、生活质量(74.81%)和抑郁严重程度(65.27%)等多个指标上都取得了平均成绩。这项研究为提高弱势群体的心理健康水平提供了一条大有可为的途径,是疼痛综合治疗方法的一大进步。
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