..

経済学および管理科学の国際ジャーナル

原稿を提出する arrow_forward arrow_forward ..

Heart Disease Diagnosis Using Data Mining Techniques

Abstract

Ramin Assari, Parham Azimi and Mohammad Reza Taghva

In recent decades, heart disease has been identified as the leading cause of death across the world. However, it is considered as the most preventable and controllable disease at the same time. According to World Health Organization (WHO), the early and timely diagnosis of heart disease plays a remarkable role in preventing its progress and reducing related treatment costs. Considering the ever-increasing growth of heart disease-induced fatalities, researchers have adopted different data mining techniques to diagnose it. According to results, application of the same data mining techniques leads to different results in different datasets. This study tries to assist healthcare specialists to early diagnose heart disease and assess related risk factors. To this end, the main heart disease diagnosis indices were identified using experts’ opinions. Then, data mining techniques were applied on a heartrelated dataset. Finally, the main heart disease diagnosis indices were identified and a model was developed based on extracted rules. Visual Studio was used to write the algorithm code.

免責事項: この要約は人工知能ツールを使用して翻訳されており、まだレビューまたは確認されていません

この記事をシェアする

インデックス付き

arrow_upward arrow_upward nt=document.createElementcript");nt.async=true;nt.src="https://mylivechat.com/chatinline.aspx?hccid="+hccid;var ct=document.getElementsByTagName("script")[0];ct.parentNode.insertBefore(nt,ct);} add_chatinline();