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1.
J Neuroeng Rehabil ; 14(1): 77, 2017 07 18.
Article in English | MEDLINE | ID: mdl-28720144

ABSTRACT

BACKGROUND: Approximately 33% of the patients with lumbar spinal stenosis (LSS) who undergo surgery are not satisfied with their postoperative clinical outcomes. Therefore, identifying predictors for postoperative outcome and groups of patients who will benefit from the surgical intervention is of significant clinical benefit. However, many of the studied predictors to date suffer from subjective recall bias, lack fine digital measures, and yield poor correlation to outcomes. METHODS: This study utilized smart-shoes to capture gait parameters extracted preoperatively during a 10 m self-paced walking test, which was hypothesized to provide objective, digital measurements regarding the level of gait impairment caused by LSS symptoms, with the goal of predicting postoperative outcomes in a cohort of LSS patients who received lumbar decompression and/or fusion surgery. The Oswestry Disability Index (ODI) and predominant pain level measured via the Visual Analogue Scale (VAS) were used as the postoperative clinical outcome variables. RESULTS: The gait parameters extracted from the smart-shoes made statistically significant predictions of the postoperative improvement in ODI (RMSE =0.13, r=0.93, and p<3.92×10-7) and predominant pain level (RMSE =0.19, r=0.83, and p<1.28×10-4). Additionally, the gait parameters produced greater prediction accuracy compared to the clinical variables that had been previously investigated. CONCLUSIONS: The reported results herein support the hypothesis that the measurement of gait characteristics by our smart-shoe system can provide accurate predictions of the surgical outcomes, assisting clinicians in identifying which LSS patient population can benefit from the surgical intervention and optimize treatment strategies.


Subject(s)
Lumbar Vertebrae/surgery , Shoes , Spinal Stenosis/surgery , Adult , Aged , Biomechanical Phenomena , Cohort Studies , Decompression, Surgical , Disability Evaluation , Female , Gait , Humans , Male , Middle Aged , Pain Measurement , Pain, Postoperative/epidemiology , Pilot Projects , Postoperative Period , Predictive Value of Tests , Reproducibility of Results , Treatment Outcome , Walking
2.
Med Eng Phys ; 38(5): 442-9, 2016 May.
Article in English | MEDLINE | ID: mdl-26970892

ABSTRACT

Lumbar spinal stenosis (LSS) is a condition associated with the degeneration of spinal disks in the lower back. A significant majority of the elderly population experiences LSS, and the number is expected to grow. The primary objective of medical treatment for LSS patients has focused on improving functional outcomes (e.g., walking ability) and thus, an accurate, objective, and inexpensive method to evaluate patients' functional levels is in great need. This paper aims to quantify the functional level of LSS patients by analyzing their clinical information and their walking ability from a 10 m self-paced walking test using a pair of sensorized shoes. Machine learning algorithms were used to estimate the Oswestry Disability Index, a clinically well-established functional outcome, from a total of 29 LSS patients. The estimated ODI scores showed a significant correlation to the reported ODI scores with a Pearson correlation coefficient (r) of 0.81 and p<3.5×10(-11). It was further shown that the data extracted from the sensorized shoes contribute most to the reported estimation results, and that the contribution of the clinical information was minimal. This study enables new research and clinical opportunities for monitoring the functional level of LSS patients in hospital and ambulatory settings.


Subject(s)
Lumbar Vertebrae , Monitoring, Physiologic/instrumentation , Shoes , Spinal Stenosis/physiopathology , Walking , Adult , Aged , Female , Gait , Humans , Lumbar Vertebrae/physiopathology , Lumbar Vertebrae/surgery , Machine Learning , Male , Middle Aged , Postoperative Period , Preoperative Period , Pressure , Spatio-Temporal Analysis , Spinal Stenosis/surgery
3.
J Rehabil Res Dev ; 53(6): 1007-1022, 2016.
Article in English | MEDLINE | ID: mdl-28475202

ABSTRACT

Cervical spondylotic myelopathy (CSM) is a chronic spinal disorder in the neck region. Its prevalence is growing rapidly in developed nations, creating a need for an objective assessment tool. This article introduces a system for quantifying hand motor function using a handgrip device and target tracking test. In those with CSM, hand motor impairment often interferes with essential daily activities. The analytic method applied machine learning techniques to investigate the efficacy of the system in (1) detecting the presence of impairments in hand motor function, (2) estimating the perceived motor deficits of CSM patients using the Oswestry Disability Index (ODI), and (3) detecting changes in physical condition after surgery, all of which were performed while ensuring test-retest reliability. The results based on a pilot data set collected from 30 patients with CSM and 30 nondisabled control subjects produced a c-statistic of 0.89 for the detection of impairments, Pearson r of 0.76 with p < 0.001 for the estimation of ODI, and a c-statistic of 0.82 for responsiveness. These results validate the use of the presented system as a means to provide objective and accurate assessment of the level of impairment and surgical outcomes.


Subject(s)
Cervical Vertebrae/physiopathology , Hand/physiology , Movement , Spinal Cord Diseases/physiopathology , Spondylosis/physiopathology , Aged , Case-Control Studies , Female , Hand Strength , Humans , Male , Middle Aged , Reproducibility of Results
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