Hierarchical Machine Learning Classification of Parkinsonian Disorders using Saccadic Eye Movements: A Development and Validation Study
Salil B Patel, Oliver B Bredemeyer, James J FitzGerald, Chrystalina A, Antoniades

TL;DR
This study introduces a novel hierarchical machine learning approach analyzing raw saccadic eye movement waveforms to accurately distinguish Parkinson's Disease, PSP, and healthy controls, outperforming traditional methods and enabling improved clinical diagnosis.
Contribution
The paper presents a new calibration-free waveform analysis combined with hierarchical machine learning for individual-level classification of Parkinsonian disorders, surpassing conventional metrics.
Findings
High AUROCs (0.92-0.97) for PD vs PSP discrimination
Effective classification of de novo PD, established PD, PSP, and controls
Outperforms conventional saccade analysis methods
Abstract
Discriminating between Parkinson's Disease (PD) and Progressive Supranuclear Palsy (PSP) is difficult due to overlapping symptoms, especially early on. Saccades (rapid conjugate eye movements between fixation points) are affected by both diseases but conventional saccade analyses exhibit group level differences only. We hypothesized analyzing entire saccade raw time series waveforms would permit superior individual level discrimination between PD, PSP, and healthy controls (HC). 13,309 saccadic eye movements from 127 participants were analyzed using a novel, calibration-free waveform analysis and hierarchical machine learning framework. Individual saccades were classified based on which trained model could reconstruct each waveform with minimum error, indicating the most likely condition. A hierarchical classifier then predicted overall status (recently diagnosed and medication-naive…
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