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Autores principales: Webber, Jacob J, Watts, Oliver, Wihlborg, Lovisa, Tam, Johnny, Weaver, Christine, Pal, Suvankar, Chandran, Siddharthan, Valentini-Botinhao, Cassia
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.17661
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author Webber, Jacob J
Watts, Oliver
Wihlborg, Lovisa
Tam, Johnny
Weaver, Christine
Pal, Suvankar
Chandran, Siddharthan
Valentini-Botinhao, Cassia
author_facet Webber, Jacob J
Watts, Oliver
Wihlborg, Lovisa
Tam, Johnny
Weaver, Christine
Pal, Suvankar
Chandran, Siddharthan
Valentini-Botinhao, Cassia
contents Monitoring the progression of neurodegenerative disease (NDD) has important applications in planning treatment and evaluating new medications. Whereas much work has focused on discriminating patients from healthy controls, or predicting real-world health metrics, we propose a novel measure of disease progression: the severity score, derived from a model trained to minimize what we call the comparator loss. This loss ensures scores obey an ordering relation, based on diagnosis, clinical scores, or simply chronological order of recordings. The proposed comparator loss-based system has the potential to incorporate information from disparate health metrics, critical for making full use of small health-related datasets. We show that a model trained on lightly annotated data is capable of distinguishing between subjects with NDDs and healthy controls. Our score also correlates with annotations not observed in training, such as ALSFRS-R and those of speech and language therapists.
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spellingShingle Comparator Loss: An Ordinal Contrastive Loss to Derive a Severity Score for Speech-based Health Monitoring
Webber, Jacob J
Watts, Oliver
Wihlborg, Lovisa
Tam, Johnny
Weaver, Christine
Pal, Suvankar
Chandran, Siddharthan
Valentini-Botinhao, Cassia
Audio and Speech Processing
Sound
Monitoring the progression of neurodegenerative disease (NDD) has important applications in planning treatment and evaluating new medications. Whereas much work has focused on discriminating patients from healthy controls, or predicting real-world health metrics, we propose a novel measure of disease progression: the severity score, derived from a model trained to minimize what we call the comparator loss. This loss ensures scores obey an ordering relation, based on diagnosis, clinical scores, or simply chronological order of recordings. The proposed comparator loss-based system has the potential to incorporate information from disparate health metrics, critical for making full use of small health-related datasets. We show that a model trained on lightly annotated data is capable of distinguishing between subjects with NDDs and healthy controls. Our score also correlates with annotations not observed in training, such as ALSFRS-R and those of speech and language therapists.
title Comparator Loss: An Ordinal Contrastive Loss to Derive a Severity Score for Speech-based Health Monitoring
topic Audio and Speech Processing
Sound
url https://arxiv.org/abs/2509.17661