Yee Jingye, Low Cheng Yee, Mohamad Hashim Natiara, Che Zakaria Noor Ayuni, Johar Khairunnisa, Othman Nurul Atiqah, Chieng Hock Hung, Hanapiah Fazah Akhtar
Faculty of Mechanical and Manufacturing Engineering, Universiti Tun Hussein Onn Malaysia, Parit Raja 86400, Malaysia.
Faculty of Medicine, Universiti Teknologi MARA, Sungai Buloh 47000, Malaysia.
Diagnostics (Basel). 2023 Feb 15;13(4):739. doi: 10.3390/diagnostics13040739.
The Modified Ashworth Scale (MAS) is commonly used to assess spasticity in clinics. The qualitative description of MAS has resulted in ambiguity during spasticity assessment. This work supports spasticity assessment by providing measurement data acquired from wireless wearable sensors, i.e., goniometers, myometers, and surface electromyography sensors. Based on in-depth discussions with consultant rehabilitation physicians, eight (8) kinematic, six (6) kinetic, and four (4) physiological features were extracted from the collected clinical data from fifty (50) subjects. These features were used to train and evaluate the conventional machine learning classifiers, including but not limited to Support Vector Machine (SVM) and Random Forest (RF). Subsequently, a spasticity classification approach combining the decision-making logic of the consultant rehabilitation physicians, SVM, and RF was developed. The empirical results on the unknown test set show that the proposed Logical-SVM-RF classifier outperforms each individual classifier, reporting an accuracy of 91% compared to 56-81% achieved by SVM and RF. A data-driven diagnosis decision contributing to interrater reliability is enabled via the availability of quantitative clinical data and a MAS prediction.
改良Ashworth量表(MAS)常用于临床评估痉挛。MAS的定性描述在痉挛评估过程中导致了模糊性。这项工作通过提供从无线可穿戴传感器(即测角仪、肌动计和表面肌电图传感器)获取的测量数据来支持痉挛评估。基于与康复顾问医师的深入讨论,从五十(50)名受试者收集的临床数据中提取了八(8)个运动学特征、六(6)个动力学特征和四(4)个生理学特征。这些特征用于训练和评估传统机器学习分类器,包括但不限于支持向量机(SVM)和随机森林(RF)。随后,开发了一种结合康复顾问医师、SVM和RF决策逻辑的痉挛分类方法。在未知测试集上的实证结果表明,所提出的逻辑-SVM-RF分类器优于每个单独的分类器,报告的准确率为91%,而SVM和RF的准确率为56%-81%。通过定量临床数据的可用性和MAS预测,实现了有助于评分者间可靠性的数据驱动诊断决策。