QMLGNov 25, 2024

A quantum inspired predictor of Parkinsons disease built on a diverse, multimodal dataset

arXiv:2411.18640v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the problem of accessible global screening for Parkinson's disease, though it is incremental as it builds on existing quantum machine learning methods.

The paper tackled early diagnosis of Parkinson's disease by developing a quantum-inspired support vector machine (qSVM) that uses multimodal data, achieving 90% accuracy and an AUC of 0.98, which outperforms benchmark models.

Parkinsons disease, the fastest growing neurodegenerative disorder globally, has seen a 50 percent increase in cases within just two years. As speech, memory, and motor symptoms worsen over time, early diagnosis is crucial for preserving patients quality of life. While machine-learning-based detection has shown promise, relying on a single feature for classification can be error-prone due to the variability of symptoms between patients. To address this limitation we utilized the mPower database, which includes 150,000 samples across four key biomarkers: voice, gait, tapping, and demographic data. From these measurements, we extracted 64 features and trained a baseline Random Forest model to select the features above the 80th percentile. For classification, we designed a simulatable quantum support vector machine (qSVM) that detects high-dimensional patterns, leveraging recent advancements in quantum machine learning. With a novel, simulatable architecture that can be run on standard hardware rather than resource-intensive quantum computers, our model achieves an accuracy of 90 percent and an AUC of 0.98, surpassing benchmark models. By utilizing an innovative classification framework built on a diverse set of features, our model offers a pathway for accessible global Parkinsons screening.

Foundations

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