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Replication-based regularization approaches to diagnose Reinke's edema by using voice recordings

Lizbeth Naranjo, Carlos J. Pérez, Y. Campos‐Roca, Mario Madruga

2021Artificial Intelligence in Medicine10 citationsDOIOpen Access PDF

Abstract

Reinke's edema is one of the most prevalent laryngeal pathologies. Its detection can be addressed by using computer-aided diagnosis systems based on features extracted from speech recordings. When extracting acoustic features from different voice recordings of a particular subject at a concrete moment, imperfections in technology and the very biological variability result in values that are close, but they are not identical. This suggests that the within-subject variability must be properly addressed in the statistical methodology. Regularization-based regression approaches can be used to reduce the classification errors by favoring the best predictors and penalizing the worst ones. Three replication-based regularization approaches for variable selection and classification have been specifically designed and implemented to take into account the underlying within-subject variability. In order to illustrate the applicability of these approaches, an experiment has been specifically conducted to discriminate Reinke's edema patients (30 subjects) from healthy people (30 subjects) in a hospital environment. The features have been extracted from four phonations of the sustained vowel /a/ recorded for each subject, leading to a database that has fed the proposed machine learning approaches. The proposed replication-based approaches have been proved to be reliable in terms of selected features and predictive ability, leading to a stable accuracy rate of 0.89 under a cross-validation framework. Also, a comparison with traditional independence-based regularization methods reports a great variability of the latter in terms of selected features and accuracy metrics. Therefore, the proposed approaches contribute to fill a gap in the scientific literature on statistical approaches considering within-subject variability and can be used to build a robust expert system.

Topics & Concepts

Computer scienceRegularization (linguistics)Replication (statistics)Artificial intelligenceSpeech recognitionPattern recognition (psychology)RegressionMachine learningStatisticsMathematicsVoice and Speech DisordersMusic and Audio ProcessingSpeech and Audio Processing
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