The concurrent usage of actigraphy and heart rate variability (HRV) for sleep efficiency quantification is still matter of investigation. This study compared chest (CACT) and wrist (WACT) actigraphy (actigraphs positioned on chest and wrist, respectively) in combination with HRV for automatic sleep vs wake classification. Accelerometer and ECG signals were collected during polysomnographic studies (PSGs) including 18 individuals (25–53 years old) with no previous history of sleep disorders. Then, an experienced neurologist performed sleep staging on PSG data. Eleven features from HRV and accelerometry were extracted from series of different lengths. A support vector machine (SVM) was used to automatically distinguish sleep and wake. We found 7 min as the optimal signal length for classification, while maximizing specificity (wake detection). CACT and WACT provided similar accuracies (78% chest vs 77% wrist), larger than what yielded by HRV alone (66%). The addition of HRV to CACT reduced slightly the accuracy, while improving specificity (from 33% to 51%, p < 0.05). On the contrary, the concurrent usage of HRV and WACT did not provide statistically significant improvements over WACT. Then, a subset of features (3 from HRV + 1 from actigraphy) was selected by reducing redundancy using a strategy based on Spearman's correlation and area under the ROC curve. The usage of the reduced set of features and SVM classifier gave only slightly reduced classification performances, which did not differ from the full sets of features. The study opens interesting possibilities in the design of wearable devices for long-term monitoring of sleep at home.

Performance comparison between wrist and chest actigraphy in combination with heart rate variability for sleep classification / M. Aktaruzzaman, M.W. Rivolta, R. Karmacharya, N. Scarabottolo, L. Pugnetti, M. Garegnani, G. Bovi, G. Scalera, M. Ferrarin, R. Sassi. - In: COMPUTERS IN BIOLOGY AND MEDICINE. - ISSN 0010-4825. - 89(2017), pp. 212-221. [10.1016/j.compbiomed.2017.08.006]

Performance comparison between wrist and chest actigraphy in combination with heart rate variability for sleep classification

M. Aktaruzzaman
Primo
;
M.W. Rivolta
Secondo
;
R. Karmacharya;N. Scarabottolo;M. Ferrarin
Penultimo
;
R. Sassi
Ultimo
2017

Abstract

The concurrent usage of actigraphy and heart rate variability (HRV) for sleep efficiency quantification is still matter of investigation. This study compared chest (CACT) and wrist (WACT) actigraphy (actigraphs positioned on chest and wrist, respectively) in combination with HRV for automatic sleep vs wake classification. Accelerometer and ECG signals were collected during polysomnographic studies (PSGs) including 18 individuals (25–53 years old) with no previous history of sleep disorders. Then, an experienced neurologist performed sleep staging on PSG data. Eleven features from HRV and accelerometry were extracted from series of different lengths. A support vector machine (SVM) was used to automatically distinguish sleep and wake. We found 7 min as the optimal signal length for classification, while maximizing specificity (wake detection). CACT and WACT provided similar accuracies (78% chest vs 77% wrist), larger than what yielded by HRV alone (66%). The addition of HRV to CACT reduced slightly the accuracy, while improving specificity (from 33% to 51%, p < 0.05). On the contrary, the concurrent usage of HRV and WACT did not provide statistically significant improvements over WACT. Then, a subset of features (3 from HRV + 1 from actigraphy) was selected by reducing redundancy using a strategy based on Spearman's correlation and area under the ROC curve. The usage of the reduced set of features and SVM classifier gave only slightly reduced classification performances, which did not differ from the full sets of features. The study opens interesting possibilities in the design of wearable devices for long-term monitoring of sleep at home.
No
English
Actigraphy; Heart rate variability; Sleep scoring; SVM classifier; Wearable sensors; Computer Science Applications1707 Computer Vision and Pattern Recognition; Health Informatics
Settore INF/01 - Informatica
Settore ING-INF/06 - Bioingegneria Elettronica e Informatica
Articolo
Esperti anonimi
Pubblicazione scientifica
   Sistema di Monitoraggio Ambientale con Rete di sensori e Telemonitoraggio indossabile a supporto di servizi di salute, prevenzione e sicurezza per l'Active Ageing
   SMARTA
   REGIONE LOMBARDIA
   40628684
2017
Elsevier
89
212
221
10
Pubblicato
Periodico con rilevanza internazionale
scopus
pubmed
crossref
Aderisco
info:eu-repo/semantics/article
Performance comparison between wrist and chest actigraphy in combination with heart rate variability for sleep classification / M. Aktaruzzaman, M.W. Rivolta, R. Karmacharya, N. Scarabottolo, L. Pugnetti, M. Garegnani, G. Bovi, G. Scalera, M. Ferrarin, R. Sassi. - In: COMPUTERS IN BIOLOGY AND MEDICINE. - ISSN 0010-4825. - 89(2017), pp. 212-221. [10.1016/j.compbiomed.2017.08.006]
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Prodotti della ricerca::01 - Articolo su periodico
10
262
Article (author)
no
M. Aktaruzzaman, M.W. Rivolta, R. Karmacharya, N. Scarabottolo, L. Pugnetti, M. Garegnani, G. Bovi, G. Scalera, M. Ferrarin, R. Sassi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/527449
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