پیاورد سلامت (Sep 2015)
Data Mining And Analysis: Reporting Results For Patients With Asthma
Abstract
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, which attempts to solve problems in the diagnosis and treatment of diseases. One of the most important data mining applications is to examine the existing data patterns. The present study aims to examine the existing data patterns of patients with asthma. Materials and Methods: This study was performed on 258 patients with respiratory symptoms, who referred to Imam Khomeini and Masih Daneshvari Hospitals in 2009. All records were entered into Excel software, and data mining add-ins were used. Analyses such as key influencers, cluster analysis of patients, and detecting exceptions have been done. Results: The most common clinical sign of asthma among subjects was severe coughing, which was highly affected by thrills. The data were aggregated into 5 clusters for more general analyses. Their common denominator was then identified and the records with exceptional features were determined. Then, following cost analysis and setting the threshold value at 612, a questionnaire was developed based on data features for diagnosis of asthma. Conclusion: The developed framework for data mining and analysis is an appropriate tool for knowledge extraction based on the data and their relationships. Meanwhile, it can identify and fill the existing gap in medical decision- making when using clinical guideline