Provide Diagnosis of Diabetes Based on Intelligent Feature Reduction and Machine Learning

Document Type : Original Article

Abstract
Extraction and analysis from a large number of data related to disease records and
medical records of individuals using the data mining process can lead to the
identification of the rules governing the accurate diagnosis of diseases and provide
valuable information for accuracy in the disease, forecast and Diagnosis of the disease
to be provided to health professionals according to the prevailing environmental
factors. The aim of this study was to diagnose diabetes using a combination of linear
separator analysis and gray wolf algorithm based on PIDD database and Python
language. We were able to provide higher accuracy by using this combination and by
reducing the feature, so we achieved a 6% improvement.