Logo do repositório
 
Miniatura indisponível
Publicação

Multimodal classification of anxiety based on physiological signals

Utilize este identificador para referenciar este registo.
Nome:Descrição:Tamanho:Formato: 
ART_Teresa Summavielle 1.pdf3.5 MBAdobe PDF Ver/Abrir

Orientador(es)

Resumo(s)

Multiple studies show an association between anxiety disorders and dysregulation in the Autonomic Nervous System (ANS). Thus, understanding how informative the physiological signals are would contribute to effectively detecting anxiety. This study targets the classification of anxiety as an imbalanced binary classification problem using physiological signals collected from a sample of healthy subjects under a neutral condition. For this purpose, the Electrocardiogram (ECG), Electrodermal Activity (EDA), and Electromyogram (EMG) signals from the WESAD publicly available dataset were used. The neutral condition was collected for around 20 min on 15 participants, and anxiety scores were assessed through the shortened 6-item STAI. To achieve the described goal, the subsequent steps were followed: signal pre-processing; feature extraction, analysis, and selection; and classification of anxiety. The findings of this study allowed us to classify anxiety with discriminatory class features based on physiological signals. Moreover, feature selection revealed that ECG features play a relevant role in anxiety classification. Supervised feature selection and data balancing techniques, especially Borderline SMOTE 2, increased the performance of most classifiers. In particular, the combination of feature selection and Borderline SMOTE 2 achieved the best ROC-AUC with the Random Forest classifier.

Descrição

Palavras-chave

Anxiety Classification Wearable sensors Multimodal dataset Machine learning Physiological signals Self-reports

Contexto Educativo

Citação

Vaz, M., Summavielle, T., Sebastião, R., & Ribeiro, R. P. (2023). Multimodal Classification of Anxiety Based on Physiological Signals. Applied Sciences, 13(11), Artigo 11. https://doi.org/10.3390/app13116368

Projetos de investigação

Unidades organizacionais

Fascículo

Editora

MDPI

Licença CC

Métricas Alternativas