使用可贴合皮肤的无线加速度计追踪颈部运动的新方法:试点研究

Q1 Computer Science
Le Huang, K. Chun, Lian Yu, Jong Yoon Lee, Alan Soetikno, Hope Chen, Hyoyoung Jeong, Joshua Barrett, Knute L. Martell, Youn Kang, Alpesh A. Patel, Shuai Xu
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引用次数: 0

摘要

摘要 引言 颈椎病是导致疼痛和残疾的主要原因。脊柱退行性病变可导致颈椎脊髓或神经根的神经压迫,在美国,每年有多达 13.7 万人接受颈椎前路椎间盘切除和融合术(ACDF)手术治疗。ACDF 常见的后遗症是颈椎活动范围减小 (CROM),患者会抱怨颈部僵硬和疼痛。目前,用于评估 CROM 的工具都是手动的、主观的,而且只能在看医生或物理治疗时间歇使用。我们提出了一种可安装在皮肤上的声力学传感器(ADvanced Acousto-Mechanic sensor; ADAM),作为对 ACDF 术后患者颈部运动进行连续监测的工具。我们开发并验证了一种机器学习颈部运动分类算法,可区分健康正常人和患者的八种颈部运动(右/左旋转、右/左侧弯、屈曲、伸展、后缩、前伸)。方法 利用 12 名健康正常人和 5 名患者的传感器数据开发并验证了卷积神经网络(CNN)。结果 健康正常人的平均算法准确率为 80.0 ± 3.8%(右旋转 94%、左旋转 98%、右侧屈 65%、左侧屈 87%、屈 89%、伸 77%、缩 50%、伸 84%)。患者的平均准确率为 67.5 ± 5.8%。讨论 ADAM 和我们的算法可作为 ACDF 术后患者颈部运动监测的康复工具。传感器捕获的生命体征和其他事件(拔管、发声、理疗、行走)都是潜在的指标,可纳入我们的算法,为颈椎手术后的患者提供更全面的监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method for Tracking Neck Motions Using a Skin-Conformable Wireless Accelerometer: A Pilot Study
Abstract Introduction Cervical spine disease is a leading cause of pain and disability. Degenerative conditions of the spine can result in neurologic compression of the cervical spinal cord or nerve roots and may be surgically treated with an anterior cervical discectomy and fusion (ACDF) in up to 137,000 people per year in the United States. A common sequelae of ACDF is reduced cervical range of motion (CROM) with patient-based complaints of stiffness and neck pain. Currently, tools for assessment of CROM are manual, subjective, and only intermittently utilized during doctor or physical therapy visits. We propose a skin-mountable acousto-mechanic sensor (ADvanced Acousto-Mechanic sensor; ADAM) as a tool for continuous neck motion monitoring in postoperative ACDF patients. We have developed and validated a machine learning neck motion classification algorithm to differentiate between eight neck motions (right/left rotation, right/left lateral bending, flexion, extension, retraction, protraction) in healthy normal subjects and patients. Methods Sensor data from 12 healthy normal subjects and 5 patients were used to develop and validate a Convolutional Neural Network (CNN). Results An average algorithm accuracy of 80.0 ± 3.8% was obtained for healthy normal subjects (94% for right rotation, 98% for left rotation, 65% for right lateral bending, 87% for left lateral bending, 89% for flexion, 77% for extension, 50% for retraction, 84% for protraction). An average accuracy of 67.5 ± 5.8% was obtained for patients. Discussion ADAM, with our algorithm, may serve as a rehabilitation tool for neck motion monitoring in postoperative ACDF patients. Sensor-captured vital signs and other events (extubation, vocalization, physical therapy, walking) are potential metrics to be incorporated into our algorithm to offer more holistic monitoring of patients after cervical spine surgery.
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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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