Clinical Spasticity Assessment Assisted by Machine Learning Methods and Rule-Based Decision

Author:

Yee Jingye1ORCID,Low Cheng Yee1ORCID,Mohamad Hashim Natiara2,Che Zakaria Noor Ayuni3,Johar Khairunnisa3,Othman Nurul Atiqah3,Chieng Hock Hung4,Hanapiah Fazah Akhtar25

Affiliation:

1. Faculty of Mechanical and Manufacturing Engineering, Universiti Tun Hussein Onn Malaysia, Parit Raja 86400, Malaysia

2. Faculty of Medicine, Universiti Teknologi MARA, Sungai Buloh 47000, Malaysia

3. College of Engineering, Universiti Teknologi MARA, Shah Alam 40450, Malaysia

4. Department of Computing and Information Technology, Tunku Abdul Rahman University of Management and Technology, Kampar 31900, Malaysia

5. Daehan Rehabilitation Hospital Putrajaya, Putrajaya 62502, Malaysia

Abstract

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.

Funder

Ministry of Science, Technology and Innovation

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference23 articles.

1. Spasticity Mechanisms—For the Clinician;Mukherjee;Front. Neurol.,2010

2. Clinical Management of Spasticity;Thompson;J. Neurol. Neurosurg. Psychiatry,2005

3. The Positive and the Negative Impacts of Spasticity in Patients with Long-Term Neurological Conditions: An Observational Study;Ayoub;Disabil. Rehabil.,2021

4. Interrater Reliability of a Modified Ashworth Scale of Muscle Spasticity;Bohannon;Phys. Ther.,1987

5. Charalambous, C.P. (2014). Classic Papers in Orthopaedics, Springer.

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