Identifying Stroke Indicators Using Rough Sets
Muhammad Salman Pathan, Jianbiao Zhang, Deepu John, Avishek Nag, and, Soumyabrata Dev

TL;DR
This paper introduces a novel rough-set based method for feature selection in electronic health records to improve stroke prediction accuracy, identifying key risk factors and outperforming existing techniques.
Contribution
A new rough-set based feature ranking method applicable to binary datasets, enhancing stroke detection from EHR data and benchmarking superior to other methods.
Findings
Age, glucose level, heart disease, and hypertension are key stroke indicators.
The proposed method outperforms other feature-selection techniques.
Effective feature ranking improves stroke prediction accuracy.
Abstract
Stroke is widely considered as the second most common cause of mortality. The adverse consequences of stroke have led to global interest and work for improving the management and diagnosis of stroke. Various techniques for data mining have been used globally for accurate prediction of occurrence of stroke based on the risk factors that are associated with the electronic health care records (EHRs) of the patients. In particular, EHRs routinely contain several thousands of features and most of them are redundant and irrelevant that need to be discarded to enhance the prediction accuracy. The choice of feature-selection methods can help in improving the prediction accuracy of the model and efficient data management of the archived input features. In this paper, we systematically analyze the various features in EHR records for the detection of stroke. We propose a novel rough-set based…
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Taxonomy
TopicsArtificial Intelligence in Healthcare · Rough Sets and Fuzzy Logic · Data Mining Algorithms and Applications
