TY - JOUR
T1 - A hybrid classification method using artificial neural network based decision tree for automatic sleep scoring
AU - Ma, Haoyu
AU - Hu, Bin
AU - Jackson, Mike
AU - Yan, Jingzhi
AU - Zhao, Wen
PY - 2011/7
Y1 - 2011/7
N2 - In this paper we propose a new classification method for automatic sleep scoring using an artificial neural network based decision tree. It attempts to treat sleep scoring progress as a series of two-class problems and solves them with a decision tree made up of a group of neural network classifiers, each of which uses a special feature set and is aimed at only one specific sleep stage in order to maximize the classification effect. A single electroencephalogram (EEG) signal is used for our analysis rather than depending on multiple biological signals, which makes greatly simplifies the data acquisition process. Experimental results demonstrate that the average epoch by epoch agreement between the visual and the proposed method in separating 30s wakefulness+S1, REM, S2 and SWS epochs was 88.83%. This study shows that the proposed method performed well in all the four stages, and can effectively limit error propagation at the same time. It could, therefore, be an efficient method for automatic sleep scoring. Additionally, since it requires only a small volume of data it could be suited to pervasive applications.
AB - In this paper we propose a new classification method for automatic sleep scoring using an artificial neural network based decision tree. It attempts to treat sleep scoring progress as a series of two-class problems and solves them with a decision tree made up of a group of neural network classifiers, each of which uses a special feature set and is aimed at only one specific sleep stage in order to maximize the classification effect. A single electroencephalogram (EEG) signal is used for our analysis rather than depending on multiple biological signals, which makes greatly simplifies the data acquisition process. Experimental results demonstrate that the average epoch by epoch agreement between the visual and the proposed method in separating 30s wakefulness+S1, REM, S2 and SWS epochs was 88.83%. This study shows that the proposed method performed well in all the four stages, and can effectively limit error propagation at the same time. It could, therefore, be an efficient method for automatic sleep scoring. Additionally, since it requires only a small volume of data it could be suited to pervasive applications.
KW - Artificial neural network
KW - Automatic sleep scoring
KW - Decision tree
KW - Electroencephalography
KW - Sleep
KW - Sleep stage
UR - http://www.scopus.com/inward/record.url?scp=79960801707&partnerID=8YFLogxK
M3 - Article
AN - SCOPUS:79960801707
SN - 2010-376X
VL - 79
SP - 279
EP - 284
JO - World Academy of Science, Engineering and Technology
JF - World Academy of Science, Engineering and Technology
ER -