Higuchi Masakazu, Iidaka Toshiko, Horii Chiaki, Tanegashima Gaku, Oka Hiroyuki, Hashizume Hiroshi, Yamada Hiroshi, Yoshida Munehito, Tanaka Sakae, Yoshimura Noriko, Nakamura Mitsuteru, Tokuno Shinichi
Department of BioengineeringGraduate School of EngineeringThe University of Tokyo Tokyo 113-8656 Japan.
Department of Preventive Medicine for Locomotive Organ Disorders22nd Century Medical and Research CenterThe University of Tokyo Tokyo 113-8655 Japan.
IEEE J Transl Eng Health Med. 2025 Mar 24;13:136-148. doi: 10.1109/JTEHM.2025.3553892. eCollection 2025.
Physical pain, particularly musculoskeletal pain, negatively impacts the activities of daily life and quality of life of elderly people. Because pain is a subjective sensation and there are no standard assessment procedures to detect pain, we attempted to quantitatively determine the actual state of chronic pain caused by musculoskeletal organs and related factors based on questionnaires. First, we studied techniques for diagnosing diseases by monitoring the involuntary characteristics of the voice. Then, we applied the technique based on voice characteristics and proposed a voice index to detect chronic musculoskeletal pain. The voice index was derived based on the assumption that physiological changes due to chronic musculoskeletal pain also affect the vocal cords. Subjects in this study were adults, 65 years of age or older, with chronic pain in the musculoskeletal system (lumbar and/or knees). A large-scale population-based cohort study was conducted in 2019. Voice characteristics were extracted from the recorded voices of the subjects, and the characteristics with similar properties were organized into several principal components using principal component analysis. The principal components were further combined using logistic regression analysis to propose a voice index that discriminates between normal subjects and subjects suffering from chronic musculoskeletal pain. A discrimination accuracy of approximately 80% was obtained using the dataset corresponding to the participants with knee pain only, and a discrimination accuracy of approximately 70% was obtained during cross-validation of the same dataset. The proposed voice index may serve as a novel tool for detecting chronic musculoskeletal pain. Clinical impact: The voice-based pain detection holds clinical significance owing to its noninvasive nature, ease of administration, and potential to efficiently assess large populations within a short time frame.
身体疼痛,尤其是肌肉骨骼疼痛,会对老年人的日常生活活动和生活质量产生负面影响。由于疼痛是一种主观感觉,且没有标准的评估程序来检测疼痛,我们试图基于问卷调查定量确定肌肉骨骼器官引起的慢性疼痛的实际状况及相关因素。首先,我们研究了通过监测声音的非自主特征来诊断疾病的技术。然后,我们应用基于声音特征的技术并提出了一个声音指数来检测慢性肌肉骨骼疼痛。该声音指数是基于慢性肌肉骨骼疼痛引起的生理变化也会影响声带这一假设得出的。本研究的受试者为65岁及以上患有肌肉骨骼系统(腰部和/或膝盖)慢性疼痛的成年人。2019年进行了一项基于大规模人群的队列研究。从受试者的录音中提取声音特征,并使用主成分分析将具有相似属性的特征组织成几个主成分。进一步使用逻辑回归分析将这些主成分进行组合,以提出一个区分正常受试者和患有慢性肌肉骨骼疼痛受试者的声音指数。仅使用与膝盖疼痛参与者对应的数据集时,获得了约80%的判别准确率,在对同一数据集进行交叉验证时,获得了约70%的判别准确率。所提出的声音指数可能成为检测慢性肌肉骨骼疼痛的一种新工具。临床影响:基于声音的疼痛检测因其非侵入性、易于实施以及在短时间内有效评估大量人群的潜力而具有临床意义。