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Abstract Details

The Data Signature of Reversibility: A Two-year Machine - Assisted Prospective Analysis of Secondary Movement Disorders
Movement Disorders
P7 - Poster Session 7 (8:00 AM-9:00 AM)
17-011

To develop an interpretable, data-driven model that captures the clinico-radiological determinants of reversibility in secondary movement disorders (SMDs) and visualizes them as a reproducible “reversibility signature.”

Reversibility in SMDs has long been described anecdotally; metabolic and vascular etiologies are often recoverable, while post-infectious or structural forms may not be. However, a unified & quantitative framework that translates bedside variables into a predictive map of recovery has not been established. Machine-assisted analytics now allow such patterns to be prospectively identified and interpreted.

 

In this two-year prospective study, 53 consecutive patients presenting with SMDs were systematically enrolled and followed over 6 months. Variables included age, sex, movement phenotype, etiology, MRI findings and ordinal outcome (1 = normal, 2 = better, 3 = unchanged, 4 = worsened, 5 = death). Outcomes 1–2 were classified as reversible. Machine-assisted clustering and cross-mapping across Etiology, Phenotype & Imaging matrices generated an interpretable multidimensional signature of reversibility.


 

Overall, 38 of 53 patients (71.7%) demonstrated reversibility. Distinct predictive clusters emerged: metabolic etiologies such as uncontrolled diabetes and hyponatremia; vascular etiologies including ischemic stroke and stroke-related chorea; drug-induced and post-infectious causes showed complete recovery, forming a unified high-reversibility core. In contrast, all subacute sclerosing panencephalitis (SSPE) cases (n = 10) remained non-reversible, with MRI showing either no significant abnormality (8/10) or bilateral cortical/subcortical FLAIR hyperintensities (2/10). Machine-assisted modeling ranked etiology > phenotype > imaging as principal determinants of reversibility.

This machine-assisted prospective analysis introduces a novel reversibility signature that converts conventional clinical data into explainable predictive models. The framework operationalizes recovery prediction in secondary movement disorders, setting the stage for AI-integrated prognostic tools and precision decision-support at the bedside.


Authors/Disclosures
Chintha V. Sriram, MD, MBBS (IPGMER)
PRESENTER
Dr. Sriram has nothing to disclose.
Arijit Roy Arijit Roy has nothing to disclose.
Atanu Biswas, MD (Bangur Institute of Neurosciences) Dr. Biswas has received personal compensation in the range of $0-$499 for serving on a Scientific Advisory or Data Safety Monitoring board for INTAS Pharmaceuticals. Dr. Biswas has received personal compensation in the range of $0-$499 for serving on a Scientific Advisory or Data Safety Monitoring board for lupin Limited. Dr. Biswas has received personal compensation in the range of $0-$499 for serving on a Scientific Advisory or Data Safety Monitoring board for Alkem Laboratories. Dr. Biswas has received personal compensation in the range of $0-$499 for serving on a Scientific Advisory or Data Safety Monitoring board for Torrent Pharmaceuticals.