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STEP-PD: Stage-Aware and Explainable Parkinson's Disease Severity Classification Using Multimodal Clinical Assessments

About

Parkinson's disease (PD) is a progressive disorder in which symptom burden and functional impairment evolve over time, making severity staging essential for clinical monitoring and treatment planning. However, many computational studies emphasize binary PD detection and do not fully use repeated follow-up clinical assessments for stage-aware prediction. This study proposes STEP-PD, a severity-aware machine learning framework to classify PD severity using clinically interpretable boundaries. It leverages all available visits from the Parkinson's Progression Markers Initiative (PPMI) and integrates routinely collected subjective questionnaires and objective clinician-assessed measures. Disease severity is defined using Hoehn and Yahr staging and grouped into three clinically meaningful categories: Healthy, Mild PD (stages 1-2), and Moderate-to-Severe PD (stages 3-5). Three binary classification problems and a three-class severity task were evaluated using stratified cross-validation with imbalance-aware training. To enhance interpretability, SHAP was used to provide global explanations and local patient-level waterfall explanations. Across all tasks, XGBoost achieved the strongest and most stable performance, with accuracies of 95.48% (Healthy vs. Mild), 99.44% (Healthy vs. Moderate-to-Severe), and 96.78% (Mild vs. Moderate-to-Severe), and 94.14% accuracy with 0.8775 Macro-F1 for three-class severity classification. Explainability results highlight a shift from early motor features to progression-related axial and balance impairments. These findings show that multimodal clinical assessments within the PPMI cohort can support accurate and interpretable visit-level PD severity stratification.

Md Mezbahul Islam, John Michael Templeton, Christian Poellabauer, Ananda Mohan Mondal• 2026

Related benchmarks

TaskDatasetResultRank
Brain Disorder ClassificationPPMI--
43
Parkinson's Disease Classification (Prodromal stages)PPMI
Accuracy95.48
2
Parkinson's Disease Classification (Mild PD vs. Moderate to Severe PD)PPMI
Accuracy96.78
1
Parkinson's Disease Classification (Moderate to Severe PD vs. HC)PPMI
Accuracy99.44
1
Parkinson's Disease ClassificationUCI ML Repository--
1
Parkinson's Disease ClassificationSelf-Collected--
1
Parkinson's Disease Classification (PD vs. Prodromal vs. HC)PPMI--
1
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