Yıl: 2018 Cilt: 26 Sayı: 6 Sayfa Aralığı: 2802 - 2818 Metin Dili: İngilizce DOI: 10.3906/elk-1805-12 İndeks Tarihi: 24-02-2020

Human Sleep Scoring Based on K-Nearest Neighbors

Öz:
Human sleep is one of the essential indicators that gauge the overall health and well-being. Presently, it iscommon for people to face issues related to sleep. Various biomedical signals including electroencephalogram (EEG),electrooculography (EMG), and electrooculography (EOG) are utilized in the diagnosis and during the treatment ofsleep disorder cases. An automatic classification to diagnose sleep problems can help in the analysis of sleep EEGdata. In this current study, an effort is made to classify the sleep stages from a single EEG channel (C4-A1) basedon K-nearest neighbors (K-NN) with three alternative distance metrics. The Euclidean distance is the most commonlyused distance measure in K-NN, and no prior study of sleep EEG data has inspected the classification performance ofK-NN with various distance measures. Therefore, this study aimed to investigate whether the distance function affectsthe performance of K-NN in the classification of sleep data. Euclidean, Manhattan and Chebyshev distance measureswere individually tested with K-NN classification, and their performances were compared based on accuracy, sensitivity,specificity, F-measure, Kappa statistic and computation time for both Rechtschaffen & Kales and American Academyof Sleep Medicine standard labelings of the sleep stages. The experimental results show that the Manhattan distancefunction with K = 5 was the best choice for classification of the sleep stages, achieving 98.46% and 98.77% correct ratesfor the two labelings with comparatively rapid computations.
Anahtar Kelime:

Konular: Mühendislik, Elektrik ve Elektronik Bilgisayar Bilimleri, Yazılım Mühendisliği Bilgisayar Bilimleri, Sibernitik Bilgisayar Bilimleri, Bilgi Sistemleri Bilgisayar Bilimleri, Donanım ve Mimari Bilgisayar Bilimleri, Teori ve Metotlar Bilgisayar Bilimleri, Yapay Zeka
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA QURESHI S, KARRILA S, VANICHAYOBON S (2018). Human Sleep Scoring Based on K-Nearest Neighbors. , 2802 - 2818. 10.3906/elk-1805-12
Chicago QURESHI Shahnawaz,KARRILA Seppo,VANICHAYOBON Sirirut Human Sleep Scoring Based on K-Nearest Neighbors. (2018): 2802 - 2818. 10.3906/elk-1805-12
MLA QURESHI Shahnawaz,KARRILA Seppo,VANICHAYOBON Sirirut Human Sleep Scoring Based on K-Nearest Neighbors. , 2018, ss.2802 - 2818. 10.3906/elk-1805-12
AMA QURESHI S,KARRILA S,VANICHAYOBON S Human Sleep Scoring Based on K-Nearest Neighbors. . 2018; 2802 - 2818. 10.3906/elk-1805-12
Vancouver QURESHI S,KARRILA S,VANICHAYOBON S Human Sleep Scoring Based on K-Nearest Neighbors. . 2018; 2802 - 2818. 10.3906/elk-1805-12
IEEE QURESHI S,KARRILA S,VANICHAYOBON S "Human Sleep Scoring Based on K-Nearest Neighbors." , ss.2802 - 2818, 2018. 10.3906/elk-1805-12
ISNAD QURESHI, Shahnawaz vd. "Human Sleep Scoring Based on K-Nearest Neighbors". (2018), 2802-2818. https://doi.org/10.3906/elk-1805-12
APA QURESHI S, KARRILA S, VANICHAYOBON S (2018). Human Sleep Scoring Based on K-Nearest Neighbors. Turkish Journal of Electrical Engineering and Computer Sciences, 26(6), 2802 - 2818. 10.3906/elk-1805-12
Chicago QURESHI Shahnawaz,KARRILA Seppo,VANICHAYOBON Sirirut Human Sleep Scoring Based on K-Nearest Neighbors. Turkish Journal of Electrical Engineering and Computer Sciences 26, no.6 (2018): 2802 - 2818. 10.3906/elk-1805-12
MLA QURESHI Shahnawaz,KARRILA Seppo,VANICHAYOBON Sirirut Human Sleep Scoring Based on K-Nearest Neighbors. Turkish Journal of Electrical Engineering and Computer Sciences, vol.26, no.6, 2018, ss.2802 - 2818. 10.3906/elk-1805-12
AMA QURESHI S,KARRILA S,VANICHAYOBON S Human Sleep Scoring Based on K-Nearest Neighbors. Turkish Journal of Electrical Engineering and Computer Sciences. 2018; 26(6): 2802 - 2818. 10.3906/elk-1805-12
Vancouver QURESHI S,KARRILA S,VANICHAYOBON S Human Sleep Scoring Based on K-Nearest Neighbors. Turkish Journal of Electrical Engineering and Computer Sciences. 2018; 26(6): 2802 - 2818. 10.3906/elk-1805-12
IEEE QURESHI S,KARRILA S,VANICHAYOBON S "Human Sleep Scoring Based on K-Nearest Neighbors." Turkish Journal of Electrical Engineering and Computer Sciences, 26, ss.2802 - 2818, 2018. 10.3906/elk-1805-12
ISNAD QURESHI, Shahnawaz vd. "Human Sleep Scoring Based on K-Nearest Neighbors". Turkish Journal of Electrical Engineering and Computer Sciences 26/6 (2018), 2802-2818. https://doi.org/10.3906/elk-1805-12