Napoli Alessandro, Glass Stephen M, Tucker Carole, Obeid Iyad
Department of Electrical & Computer Engineering, Temple University, Philadelphia, PA, 19122, USA.
Department of Physical Therapy, Temple University, Philadelphia, PA, 19140, USA.
Ann Biomed Eng. 2017 Dec;45(12):2784-2793. doi: 10.1007/s10439-017-1911-8. Epub 2017 Aug 30.
Impaired balance is a common indicator of mild traumatic brain injury, concussion and musculoskeletal injury. Given the clinical relevance of such injuries, especially in military settings, it is paramount to develop more accurate and reliable on-field evaluation tools. This work presents the design and implementation of the automated assessment of postural stability (AAPS) system, for on-field evaluations following concussion. The AAPS is a computer system, based on inexpensive off-the-shelf components and custom software, that aims to automatically and reliably evaluate balance deficits, by replicating a known on-field clinical test, namely, the Balance Error Scoring System (BESS). The AAPS main innovation is its balance error detection algorithm that has been designed to acquire data from a Microsoft Kinect sensor and convert them into clinically-relevant BESS scores, using the same detection criteria defined by the original BESS test. In order to assess the AAPS balance evaluation capability, a total of 15 healthy subjects (7 male, 8 female) were required to perform the BESS test, while simultaneously being tracked by a Kinect 2.0 sensor and a professional-grade motion capture system (Qualisys AB, Gothenburg, Sweden). High definition videos with BESS trials were scored off-line by three experienced observers for reference scores. AAPS performance was assessed by comparing the AAPS automated scores to those derived by three experienced observers. Our results show that the AAPS error detection algorithm presented here can accurately and precisely detect balance deficits with performance levels that are comparable to those of experienced medical personnel. Specifically, agreement levels between the AAPS algorithm and the human average BESS scores ranging between 87.9% (single-leg on foam) and 99.8% (double-leg on firm ground) were detected. Moreover, statistically significant differences in balance scores were not detected by an ANOVA test with alpha equal to 0.05. Despite some level of disagreement between human and AAPS-generated scores, the use of an automated system yields important advantages over currently available human-based alternatives. These results underscore the value of using the AAPS, that can be quickly deployed in the field and/or in outdoor settings with minimal set-up time. Finally, the AAPS can record multiple error types and their time course with extremely high temporal resolution. These features are not achievable by humans, who cannot keep track of multiple balance errors with such a high resolution. Together, these results suggest that computerized BESS calculation may provide more accurate and consistent measures of balance than those derived from human experts.
平衡受损是轻度创伤性脑损伤、脑震荡和肌肉骨骼损伤的常见指标。鉴于此类损伤的临床相关性,尤其是在军事环境中,开发更准确、可靠的现场评估工具至关重要。这项工作介绍了用于脑震荡后现场评估的姿势稳定性自动评估(AAPS)系统的设计与实现。AAPS是一个基于廉价现成组件和定制软件的计算机系统,旨在通过复制一种已知的现场临床测试,即平衡误差评分系统(BESS),自动且可靠地评估平衡缺陷。AAPS的主要创新在于其平衡误差检测算法,该算法旨在从微软Kinect传感器获取数据,并使用原始BESS测试定义的相同检测标准将其转换为临床相关的BESS分数。为了评估AAPS的平衡评估能力,总共15名健康受试者(7名男性,8名女性)被要求进行BESS测试,同时由Kinect 2.0传感器和专业级运动捕捉系统(瑞典哥德堡的Qualisys AB公司)进行跟踪。由三名经验丰富的观察者对带有BESS试验的高清视频进行离线评分以获取参考分数。通过将AAPS自动评分与三名经验丰富的观察者得出的评分进行比较来评估AAPS的性能。我们的结果表明,此处介绍的AAPS误差检测算法能够准确、精确地检测平衡缺陷,其性能水平与经验丰富的医务人员相当。具体而言,检测到AAPS算法与人类平均BESS分数之间的一致性水平在87.9%(单腿站在泡沫上)至99.8%(双腿站在坚实地面上)之间。此外,在α等于0.05的方差分析测试中未检测到平衡分数的统计学显著差异。尽管人类评分与AAPS生成的评分之间存在一定程度的差异,但使用自动化系统相对于目前可用的基于人工的替代方法具有重要优势。这些结果强调了使用AAPS的价值,它可以在现场和/或户外环境中快速部署,设置时间最短。最后,AAPS可以以极高的时间分辨率记录多种错误类型及其时间进程。这些功能是人类无法实现的,人类无法以如此高的分辨率跟踪多个平衡误差。总之,这些结果表明,计算机化的BESS计算可能比人类专家得出的平衡测量更准确、一致。