Open Access Open Access  Restricted Access Subscription Access

An Algorithm for Predictive Data Mining Approach in Medical Diagnosis


Affiliations
1 Department of CSE, TIT College, Bhopal, India
 

The Healthcare industry contains big and complex data that may be required in order to discover fascinating pattern of diseases & makes effective decisions with the help of different machine learning techniques. Advanced data mining techniques are used to discover knowledge in database and for medical research. This paper has analyzed prediction systems for Diabetes, Kidney and Liver disease using more number of input attributes. The data mining classification techniques, namely Support Vector Machine(SVM) and Random Forest (RF) are analyzed on Diabetes, Kidney and Liver disease database. The performance of these techniques is compared, based on precision, recall, accuracy, f_measure as well as time. As a result of study the proposed algorithm is designed using SVM and RF algorithm and the experimental result shows the accuracy of 99.35%, 99.37 and 99.14 on diabetes, kidney and liver disease respectively.

Keywords

Data Mining, Clinical Decision Support System, Disease Prediction, Classification, SVM, RF.
User
Notifications
Font Size

  • Nidhi Bhatla, Kiran Jyoti, “An Analysis of Heart Disease Prediction using Different Data Mining Techniques”,IJERT,Vol 1, Issue 8, 2012.
  • Syed Umar Amin, Kavita Agarwal, Rizwan Beg, “Genetic Neural Network based Data Mining in Prediction of Heart Disease using Risk Factors”, IEEE, 2013.
  • A H Chen, S Y Huang, P S Hong, C H Cheng, E J Lin, “HDPS: Heart Disease Prediction System”, IEEE, 2011.
  • M. Akhil Jabbar, B. L Deekshatulu, Priti Chandra, “Heart Disease Prediction using Lazy Associative Classification”, IEEE, 2013.
  • Chaitrali S. Dangare, Sulabha S. Apte, “Improved Study of Heart Disease Prediction System using Data Mining Classification Techniques”, IJCA, Volume 47– No.10, June 2012.
  • P. Bhandari, S. Yadav, S. Mote, D.Rankhambe, “Predictive System for Medical Diagnosis with Expertise Analysis”, IJESC, Vol. 6, pp. 4652-4656, 2016.
  • Nishara Banu, Gomathy, “Disease Forecasting System using Data Mining Methods”, IEEE Transaction on Intelligent Computing Applications, 2014.
  • A. Iyer, S. Jeyalatha and R. Sumbaly, “Diagnosis of Diabetes using Classification Mining Techniques”, IJDKP, Vol. 5, pp. 1-14, 2015.
  • Sadiyah Noor Novita Alfisahrin and Teddy Mantoro, “Data Mining Techniques for Optimatization of Liver Disease Classification”, International Conference on Advanced Computer Science Applications and Technologies, IEEE, pp. 379-384, 2013.
  • A. Naik and L. Samant, “Correlation Review of Classification Algorithm using Data Mining Tool: WEKA, Rapidminer , Tanagra ,Orange and Knime”, ELSEVIER, Vol. 85, pp. 662-668, 2016.
  • Uma Ojha and Savita Goel, “A study on prediction of breast cancer recurrence using data mining techniques”, International Conference on Cloud Computing, Data Science & Engineering, IEEE, 2017.
  • Naganna Chetty, Kunwar Singh Vaisla, Nagamma Patil, “An Improved Method for Disease Prediction using Fuzzy Approach”, International Conference on Advances in Computing and Communication Engineering, IEEE, pp. 568-572, 2015.
  • Kumari Deepika and Dr. S. Seema, “Predictive Analytics to Prevent and Control Chronic Diseases”, International Conference on Applied and Theoretical Computing and Communication Technology, IEEE, pp. 381-386, 2016.
  • Emrana Kabir Hashi, Md. Shahid Uz Zaman and Md. Rokibul Hasan, “An Expert Clinical Decision Support System to Predict Disease Using Classification Techniques”, IEEE, 2017.

Abstract Views: 330

PDF Views: 161




  • An Algorithm for Predictive Data Mining Approach in Medical Diagnosis

Abstract Views: 330  |  PDF Views: 161

Authors

Shakuntala Jatav
Department of CSE, TIT College, Bhopal, India
Vivek Sharma
Department of CSE, TIT College, Bhopal, India

Abstract


The Healthcare industry contains big and complex data that may be required in order to discover fascinating pattern of diseases & makes effective decisions with the help of different machine learning techniques. Advanced data mining techniques are used to discover knowledge in database and for medical research. This paper has analyzed prediction systems for Diabetes, Kidney and Liver disease using more number of input attributes. The data mining classification techniques, namely Support Vector Machine(SVM) and Random Forest (RF) are analyzed on Diabetes, Kidney and Liver disease database. The performance of these techniques is compared, based on precision, recall, accuracy, f_measure as well as time. As a result of study the proposed algorithm is designed using SVM and RF algorithm and the experimental result shows the accuracy of 99.35%, 99.37 and 99.14 on diabetes, kidney and liver disease respectively.

Keywords


Data Mining, Clinical Decision Support System, Disease Prediction, Classification, SVM, RF.

References