Detecting Parkinson's Disease From an Online Speech-task
Wasifur Rahman, Sangwu Lee, Md. Saiful Islam, Victor Nikhil Antony,, Harshil Ratnu, Mohammad Rafayet Ali, Abdullah Al Mamun, Ellen Wagner, Stella, Jensen-Roberts, Max A. Little, Ray Dorsey, and Ehsan Hoque

TL;DR
This paper presents a web-based speech analysis framework that detects Parkinson's disease with 75% accuracy using acoustic features from short speech tasks, applicable globally and in diverse settings.
Contribution
Introduces a scalable, online speech-based Parkinson's detection system with validated machine learning models trained on diverse, real-world data.
Findings
Achieved 0.75 AUC in Parkinson's detection.
Standard acoustic features like MFCC are highly informative.
Model performs consistently across controlled and in-the-wild data.
Abstract
In this paper, we envision a web-based framework that can help anyone, anywhere around the world record a short speech task, and analyze the recorded data to screen for Parkinson's disease (PD). We collected data from 726 unique participants (262 PD, 38% female; 464 non-PD, 65% female; average age: 61) -- from all over the US and beyond. A small portion of the data was collected in a lab setting to compare quality. The participants were instructed to utter a popular pangram containing all the letters in the English alphabet "the quick brown fox jumps over the lazy dog..". We extracted both standard acoustic features (Mel Frequency Cepstral Coefficients (MFCC), jitter and shimmer variants) and deep learning based features from the speech data. Using these features, we trained several machine learning algorithms. We achieved 0.75 AUC (Area Under The Curve) performance on determining…
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Taxonomy
TopicsVoice and Speech Disorders · Music and Audio Processing · Speech and Audio Processing
