We present research in decision tree analysis that studies a data set and finds new patterns that were not obvious using statistical methods. Our method is applied to a database of accommodative esotropic patients. Accommodative esotropia is an eye disease that when left untreated leads to blindness. Patients whose muscles deteriorate often need corrective surgery, since less invasive methods of treatment tend to fail in these patients. Using a learn and prune methodology, decision tree analysis of 354 accommodative esotropic patients led to the discovery of two conjunctive variables that predicted deterioration in the initial year of treatment better than what was previously determined using standard statistical methods.
[1]
Susan P. Imberman,et al.
Long-term study of accommodative esotropia.
,
2005,
Transactions of the American Ophthalmological Society.
[2]
Gunter K. von Noorden,et al.
Atlas of strabismus
,
1973
.
[3]
P. Getson,et al.
Rate of deterioration in accommodative esotropia correlated to the AC/A relationship.
,
1988,
Journal of pediatric ophthalmology and strabismus.
[4]
Ian H. Witten,et al.
The WEKA data mining software: an update
,
2009,
SKDD.
[5]
N. Lavrac,et al.
Intelligent Data Analysis in Medicine and Pharmacology
,
1997
.