Evaluation of smartphone-based cough data in amyotrophic lateral sclerosis as a potential predictor of functional disability

Author:

Santos-Rocha PedroORCID,Bento NunoORCID,Folgado DuarteORCID,Carreiro André Valério,Santos Miguel Oliveira,de Carvalho MamedeORCID,Miranda BrunoORCID

Abstract

AbstractObjectivesCough dysfunction is a feature of patients with amyotrophic lateral sclerosis (ALS). The cough sounds carry information about the respiratory system and bulbar involvement. Our goal was to explore the association between cough sound characteristics and the respiratory and bulbar functions in ALS.MethodsThis was a single-center, cross-sectional, and case-control study. On-demand coughs from ALS patients and healthy controls were collected with a smartphone. A total of 31 sound features were extracted for each cough recording using time-frequency signal processing analysis. Logistic regression was applied to test the differences between patients and controls, and in patients with bulbar and respiratory impairment. Support vector machines (SVM) were employed to estimate the accuracy of classifying between patients and controls and between patients with bulbar and respiratory impairment. Multiple linear regressions were applied to examine correlations between cough sound features and clinical variables.ResultsSixty ALS patients (28 with bulbar dysfunction, and 25 with respiratory dysfunction) and forty age- and gender-matched controls were recruited. Our results revealed clear differences between patients and controls, particularly within the frequency-related group of features (AUC 0.85, CI 0.79- 0.91). Similar results were observed when comparing patients with and without bulbar dysfunction; and with and without respiratory dysfunction. Sound features related to intensity displayed the strongest correlation with disease severity.DiscussionWe found a good relationship between specific cough sound features and clinical variables related to ALS functional disability. The findings relate well with some expected impact from ALS on both respiratory and bulbar contributions to the physiology of cough. Finally, our approach could be relevant for clinical practice, and it also facilitates home-based data collection.

Publisher

Cold Spring Harbor Laboratory

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