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Hauptverfasser: Wiepert, Daniela A., Utianski, Rene L., Duffy, Joseph R., Stricker, John L., Barnard, Leland R., Jones, David T., Botha, Hugo
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2402.01796
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author Wiepert, Daniela A.
Utianski, Rene L.
Duffy, Joseph R.
Stricker, John L.
Barnard, Leland R.
Jones, David T.
Botha, Hugo
author_facet Wiepert, Daniela A.
Utianski, Rene L.
Duffy, Joseph R.
Stricker, John L.
Barnard, Leland R.
Jones, David T.
Botha, Hugo
contents Accurately extracting clinical information from speech is critical to the diagnosis and treatment of many neurological conditions. As such, there is interest in leveraging AI for automatic, objective assessments of clinical speech to facilitate diagnosis and treatment of speech disorders. We explore transfer learning using foundation models, focusing on the impact of layer selection for the downstream task of predicting pathological speech features. We find that selecting an optimal layer can greatly improve performance (~15.8% increase in balanced accuracy per feature as compared to worst layer, ~13.6% increase as compared to final layer), though the best layer varies by predicted feature and does not always generalize well to unseen data. A learned weighted sum offers comparable performance to the average best layer in-distribution (only ~1.2% lower) and had strong generalization for out-of-distribution data (only 1.5% lower than the average best layer).
format Preprint
id arxiv_https___arxiv_org_abs_2402_01796
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Speech foundation models in healthcare: Effect of layer selection on pathological speech feature prediction
Wiepert, Daniela A.
Utianski, Rene L.
Duffy, Joseph R.
Stricker, John L.
Barnard, Leland R.
Jones, David T.
Botha, Hugo
Audio and Speech Processing
Computation and Language
Machine Learning
Accurately extracting clinical information from speech is critical to the diagnosis and treatment of many neurological conditions. As such, there is interest in leveraging AI for automatic, objective assessments of clinical speech to facilitate diagnosis and treatment of speech disorders. We explore transfer learning using foundation models, focusing on the impact of layer selection for the downstream task of predicting pathological speech features. We find that selecting an optimal layer can greatly improve performance (~15.8% increase in balanced accuracy per feature as compared to worst layer, ~13.6% increase as compared to final layer), though the best layer varies by predicted feature and does not always generalize well to unseen data. A learned weighted sum offers comparable performance to the average best layer in-distribution (only ~1.2% lower) and had strong generalization for out-of-distribution data (only 1.5% lower than the average best layer).
title Speech foundation models in healthcare: Effect of layer selection on pathological speech feature prediction
topic Audio and Speech Processing
Computation and Language
Machine Learning
url https://arxiv.org/abs/2402.01796