Title :
Mining Statistically Significant Associations for Exploratory Analysis of Human Sleep Data
Author :
Laxminarayan, Parameshvyas ; Alvarez, Sergio A. ; Ruiz, Carolina ; Moonis, Majaz
Author_Institution :
iProspect.com, Watertown, MA
fDate :
7/1/2006 12:00:00 AM
Abstract :
We introduce a specialized association rule mining technique that can extract patterns from complex sleep data comprising polysomnographic recordings, clinical summaries, and sleep questionnaire responses. The rules mined can describe associations among temporally annotated events and questionnaire or summary data; e.g., the likelihood that an occurrence of a rapid eye movement (REM) sleep stage during the second 100 sleep epochs of the night is associated with moderate caffeine intake. We use chi2 analysis to ensure statistical significance of the mined rules at the level P<0.05. Our results, obtained by mining sleep-related data from 242 human subjects, reveal clinically interesting associations among the polysomnographic and summary variables. Our experience suggests that association mining may also be useful for selection of variables prior to using logistic regression
Keywords :
biomedical measurement; data mining; eye; medical signal processing; neurophysiology; patient diagnosis; regression analysis; sleep; time series; clinical summary information; data mining; human sleep data; logistic regression; medical diagnosis; moderate caffeine intake; polysonmographic time-series data; rapid eye movement sleep stage; rule mining technique; sleep questionnaire response; statistical analysis; Association rules; Computer science; Data analysis; Data mining; Humans; Logistics; Medical diagnosis; Pattern analysis; Sleep; Statistics; Associations; data mining; medical diagnosis; sleep; statistics;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2006.872065