Prediction of clinical tremor severity using Rank Consistent Ordinal Regression
Li Zhang, Vijay Yadav, Vidya Koesmahargyo, Anzar Abbas, Isaac, Galatzer-Levy

TL;DR
This study develops a deep neural network using rank-consistent ordinal regression to automatically assess tremor severity from clinical videos, enabling remote, repeatable, and continuous monitoring of CNS disorder patients.
Contribution
It introduces a novel deep learning approach combining optical flow and transfer learning for ordinal tremor severity prediction from videos, addressing limited data challenges.
Findings
Mean absolute error of 0.45 on TETRAS scores
Model predictions align well with clinical ratings
Effective in assessing tremor states from smartphone videos
Abstract
Tremor is a key diagnostic feature of Parkinson's Disease (PD), Essential Tremor (ET), and other central nervous system (CNS) disorders. Clinicians or trained raters assess tremor severity with TETRAS scores by observing patients. Lacking quantitative measures, inter- or intra- observer variabilities are almost inevitable as the distinction between adjacent tremor scores is subtle. Moreover, clinician assessments also require patient visits, which limits the frequency of disease progress evaluation. Therefore it is beneficial to develop an automated assessment that can be performed remotely and repeatably at patients' convenience for continuous monitoring. In this work, we proposed to train a deep neural network (DNN) with rank-consistent ordinal regression using 276 clinical videos from 36 essential tremor patients. The videos are coupled with clinician assessed TETRAS scores, which…
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Taxonomy
TopicsNeurological disorders and treatments · Botulinum Toxin and Related Neurological Disorders · Advanced Neuroimaging Techniques and Applications
