A Novel CustNetGC Boosted Model with Spectral Features for Parkinson's Disease Prediction
Abishek Karthik, Pandiyaraju V, Dominic Savio M, Rohit Swaminathan S

TL;DR
This paper introduces CustNetGC, a novel hybrid model combining CNN, Grad-CAM, and CatBoost, which significantly improves early Parkinson's disease detection accuracy using spectral voice features, achieving over 99% accuracy.
Contribution
The paper presents a new classification and visualization framework, CustNetGC, that integrates spectral features, CNN, Grad-CAM, and CatBoost for enhanced PD diagnosis and interpretability.
Findings
Achieved 99.06% accuracy in PD prediction.
Demonstrated high interpretability with Grad-CAM.
Enhanced robustness with CatBoost classifier.
Abstract
Parkinson's disease is a neurodegenerative disorder that can be very tricky to diagnose and treat. Such early symptoms can include tremors, wheezy breathing, and changes in voice quality as critical indicators of neural damage. Notably, there has been growing interest in utilizing changes in vocal attributes as markers for the detection of PD early on. Based on this understanding, the present paper was designed to focus on the acoustic feature analysis based on voice recordings of patients diagnosed with PD and healthy controls (HC). In this paper, we introduce a novel classification and visualization model known as CustNetGC, combining a Convolutional Neural Network (CNN) with Custom Network Grad-CAM and CatBoost to enhance the efficiency of PD diagnosis. We use a publicly available dataset from Figshare, including voice recordings of 81 participants: 40 patients with PD and 41 healthy…
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Taxonomy
TopicsVoice and Speech Disorders · Respiratory and Cough-Related Research · Speech Recognition and Synthesis
