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Assessing the Clinical and Functional Status of COPD Patients Using Speech Analysis During and After Exacerbation

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Link to Profile Björn Schuller

Björn Schuller

Prof. Dr.

Principal Investigator

Abstract

Background: Chronic obstructive pulmonary disease (COPD) affects breathing, speech production, and coughing. We evaluated a machine learning analysis of speech for classifying the disease severity of COPD.<br>Methods: In this single centre study, non-consecutive COPD patients were prospectively recruited for comparing their speech characteristics during and after an acute COPD exacerbation. We extracted a set of spectral, prosodic, and temporal variability features, which were used as input to a support vector machine (SVM). Our baseline for predicting patient state was an SVM model using self-reported BORG and COPD Assessment Test (CAT) scores.<br>Results: In 50 COPD patients (52% males, 22% GOLD II, 44% GOLD III, 32% GOLD IV, all patients group E), speech analysis was superior in distinguishing during and after exacerbation status compared to BORG and CAT scores alone by achieving 84% accuracy in prediction. CAT scores correlated with reading rhythm, and BORG scales with stability in articulation. Pulmonary function testing (PFT) correlated with speech pause rate and speech rhythm variability.<br>Conclusion: Speech analysis may be a viable technology for classifying COPD status, opening up new opportunities for remote disease monitoring.

article


International Journal of Chronic Obstructive Pulmonary Disease

20. Jan. 2025.
Top Journal

Authors

W. Mayr • A. TriantafyllopoulosA. BatlinerB. W. Schuller • T. M. Berghaus

Links

DOI

Research Area

 B3 | Multimodal Perception

BibTeXKey: MTB+25

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