Title :
Mining Three-Dimensional Anthropometric Body Surface Scanning Data for Hypertension Detection
Author :
Chiu, Chaochang ; Hsu, Kuang-Hung ; Hsu, Pei-Lun ; Hsu, Chi-I ; Lee, Po-Chi ; Chiou, Wen-Ko ; Liu, Thu-Hua ; Chuang, Yi-Chou ; Hwang, Chorng-Jer
Author_Institution :
Dept. of Inf. Manage., Yuan Ze Univ., Chungli
fDate :
5/1/2007 12:00:00 AM
Abstract :
Hypertension is a major disease, being one of the top ten causes of death in Taiwan. The exploration of three-dimensional (3-D) anthropometry scanning data along with other existing subject medical profiles using data mining techniques becomes an important research issue for medical decision support. This research attempts to construct a prediction model for hypertension using anthropometric body surface scanning data. This research adopts classification trees to reveal the relationship between a subject´s 3-D scanning data and hypertension disease using the hybrid of the association rule algorithm (ARA) and genetic algorithms (GAs) approach. The ARA is adopted to obtain useful clues based on which the GA is able to proceed its searching tasks in a more efficient way. The proposed approach was experimented and compared with a regular genetic algorithm in predicting a subject´s hypertension disease. Better computational efficiency and more accurate prediction results from the proposed approach are demonstrated
Keywords :
anthropometry; biomedical measurement; data mining; decision making; diseases; genetic algorithms; medical computing; pattern classification; trees (mathematics); 3-D anthropometric body surface scanning data; GA approach; Taiwan; association rule algorithm; classification trees; computational efficiency; data mining techniques; genetic algorithms; hypertension disease detection; medical decision support; medical profiles; Association rules; Chaos; Classification tree analysis; Data mining; Diseases; Genetic algorithms; Health information management; Hypertension; Information management; Spatial databases; Anthropometric data; association rule; classification trees; genetic algorithms (GAs); hypertension;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2006.884362