Prediction and Control of Stroke by Data Mining

Message:
Abstract:
Background
Today there are abounding collected data in cases of various diseases in medical sciences. Physicians can access new findings about diseases and procedures in dealing with them by probing these data. This study was performed to predict stroke incidence.
Methods
This study was carried out in Esfahan Al‑Zahra and Mashhad Ghaem hospitals during 2010‑2011. Information on 807 healthy and sick subjects was collected using a standard checklist that contains 50 risk factors for stroke such as history of cardiovascular disease, diabetes, hyperlipidemia, smoking and alcohol consumption. For analyzing data we used data mining techniques, K‑nearest neighbor and C4.5 decision tree using WEKA.
Results
The accuracy of the C4.5 decision tree algorithm and K‑nearest neighbor in predicting stroke was 95.42% and 94.18%, respectively.
Conclusions
The two algorithms, C4.5 decision tree algorithm and K‑nearest neighbor, can be used in order to predict stroke in high risk groups.
Language:
English
Published:
International Journal of Preventive Medicine, Volume:4 Issue: 3, Mar 2013
Pages:
245 to 249
https://www.magiran.com/p1123642