FUZZY GATING AND THE PROBLEM OF SCREENING

Citation
Gpa. Cruz et G. Beliakov, FUZZY GATING AND THE PROBLEM OF SCREENING, Artificial intelligence in medicine, 8(4), 1996, pp. 377-385
Citations number
7
Categorie Soggetti
Engineering, Biomedical","Computer Science Artificial Intelligence","Medical Laboratory Technology","Medical Informatics
ISSN journal
09333657
Volume
8
Issue
4
Year of publication
1996
Pages
377 - 385
Database
ISI
SICI code
0933-3657(1996)8:4<377:FGATPO>2.0.ZU;2-O
Abstract
The problem of population screening is very important for medical stat istics. It allows one to analyze the expression of certain parameters in the population of healthy persons, in order to compare it to the ex pression of these parameters in the persons with a specific disease. I f a parameter is expressed differently in ill and healthy persons, the n this parameter may serve as a pointer to the disease, especially in its earlier stages. While the analysis of given parameters in people w ith the established diagnosis does not represent many difficulties, th e analysis of the general population is not easily carried out. The pr oblem is that the general population contains both ill and healthy peo ple. The population of healthy people is said to be 'contaminated' by the noise-subpopulation of ill people. The resulting statistical param eters are, therefore, biased and in order to find their correct values one needs to cancel out the input of the noise. In this paper we prop ose a new method to cancel out the noise, based on the theory of fuzzy sets. We assume that an auxiliary parameter is measured simultaneousl y and it is used to separate the subpopulations. If two subpopulations (the data and the noise) form clearly distinguished clusters in respe ct to this auxiliary parameter, one creates a gate and throws out the events outside the gate assuming that they are noise. However, when th e clusters overlap, this procedure is no longer useful, and it is this particular situation for which we have developed fuzzy gating. In add ition to the fact that the gate is fuzzified, a specifically designed algorithm is applied to compute the probability density functions for both subpopulations. Our algorithm gives a very high precision and is very robust as to the level of noise and the type of distributions.