Scouting for imprecise temporal associations to support effectiveness of drugs during clinical trials

The field of data mining is dedicated to the analysis of data to find underlying connections and the discovery of new patterns. This research targets the analysis of imprecise temporal associations through the modification of a standard market basket analysis approach by means of fuzzy set relations to classify the associations among different sources of data. The domain that is taken into consideration in this work is the one of medicine. We used data recorded within an Intensive Care Unit from a 8 month old infant that suffers from Acute Respiratory Distress Syndrome. In particular, we analyzed the response of the partial pressure of oxygen within the bloodstream to the application of a respirator. The results of this research show that it is possible to investigate such relations with the help of fuzzy set classification for temporal associations, and the result of such exploration is as easily understandable as the standard Market Basket algorithm. The findings support the physiological response, suggesting that this approach is worthy of notice. We are confident that such an algorithm will show its capabilities when applied to the clinical trials part of drug testing, given the results outlined in this article.

[1]  Giovanni Vincenti,et al.  Data mining for imprecise temporal associations , 2005, Sixth International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing and First ACIS International Workshop on Self-Assembling Wireless Network.

[2]  Robert J. Hammell,et al.  Discovering imprecise temporal associations , 2003, 22nd International Conference of the North American Fuzzy Information Processing Society, NAFIPS 2003.

[3]  Andreja Tepavcevic,et al.  L-fuzzy lattices: an introduction , 2001, Fuzzy Sets Syst..

[4]  野崎 賢,et al.  Generating Fuzzy Rules from Numerical Data , 1995 .

[5]  Thomas Sudkamp Discovery of Fuzzy Temporal Associations in Multiple Data Streams , 2005 .

[6]  Tomasz Imielinski,et al.  Mining association rules between sets of items in large databases , 1993, SIGMOD Conference.

[7]  AgrawalRakesh,et al.  Mining association rules between sets of items in large databases , 1993 .

[8]  Catherine Blake,et al.  UCI Repository of machine learning databases , 1998 .