An Improved and Adaptive Attribute Selection Technique to Optimize Dengue Fever Prediction

  • Authors

    • Sushruta Mishra
    • Hrudaya Kumar Tripathy
    • Amiya Ranjan Panda
    2018-09-01
    https://doi.org/10.14419/ijet.v7i3.34.19363
  • Dengue, Data Mining, Attribute Optimization, Genetic Algorithm, Fitness Function,
  • Clinical information mining is rapidly gaining popularity. Restorative information are high dimensional in nature which contains unessential elements that diminish prediction capability. Hence Attribute Optimization is required to retain only the essential features while eradicating irrelevant features. Dengue is one of the major worldwide medical related disease. It has affected millions of people throughout world while a majority of them being women. With constant upgradation of information technology and its application in healthcare domain, several cases relating to diabetes along with its symptoms are properly documented. Our study is centered on developing and implementing a new Adaptive and Dynamic Attribute Optimization algorithm to determine whether patients suffer from Dengue. Our algorithm is evaluated against some vital performance metrics and compared with other sub-modules of the proposed algorithm and traditional Genetic Algorithm. The results indicate our algorithm is more efficient and accurate in determining presence of Dengue disease. This may assist the medical experts in effective diagnosis of patients suffering from Dengue.

     

     

  • References

    1. [1] Farooqi W, Ali S (2013) A Critical Study of Selected Classification Algorithms for Dengue Fever and Dengue Hemorrhagic Fever. Frontiers of Information Technology (FIT), 11th International Conference on IEEE.

      [2] Farooqi W, Ali S, Abdul W (2014) Classification of Dengue Fever Using Decision Tree. VAWKUM Transaction on Computer Sciences 3: 15-22.

      [3] Rigau-Pérez JG, et.al. (1998) Dengue and dengue haemorrhagic fever. The Lancet 19: 971-977.

      [4] K.C. Tan, E.J. Teoh, Q. Yua, K.C. Goh, (2008). A hybrid evolutionary algorithm for attribute selection in data mining, Elsevier.

      [5] Farooqi W, Ali S (2013) A Critical Study of Selected Classification Algorithms for Dengue Fever and Dengue Hemorrhagic Fever. Frontiers of Information Technology (FIT), 11th International Conference on IEEE.

      [6] Tanner L, Schreiber M, Low JG, Ong A, Tolfvenstam T, et.al. (2008) Decision Tree Algorithms Predict the Diagnosis and Outcome of Dengue Fever in the Early Phase of Illness. PLoS Neglected Tropical Disease 12: e196.

      [7] 5. Phyu TN (2009) Survey of classification techniques in data mining. Proceedings of the International MultiConference of Engineers and Computer Scientists Vol 1.

      [8] Vong S, et.al. (2010) Dengue incidence in urban and rural Cambodia: results from population-based active fever surveillance, 2006–2008. PLoS neglected tropical diseases 4: e903.

      [9] Faisal T, Ibrahim F, Taib MN (2010) A noninvasive intelligent approach for predicting the risk in dengue patients. Expert Systems with Application 37: 2175-2181.

      [10] . Ibrahim F, Taib MN, Abas WA, Guan CC, Sulaiman S (2005) A novel dengue fever (DF) and dengue haemorrhagic fever (DHF) analysis using artificial neural network (ANN). Computer Methods and Programs in Biomedicine 79: 273-281.

      [11] Daranee T, Prapat S, Nuanwan S (2012) Data mining of dengue infection using decision tree. Entropy 2: 2.

      [12] Rigau-Pérez JG, et.al. (1998) Dengue and dengue haemorrhagic fever. The Lancet 19: 971-977.

      [13] Tarmizi NDA, et.al. (2013) Classification of Dengue Outbreak Using Data Mining Models. Research Notes in Information Science 12: 71-75.

      [14] Shakil KA, Anis S, Alam M (2015) Dengue disease prediction using weka data mining tool. arXiv preprint arXiv:1502.05167.

      [15] N.Subitha and Dr.A.Padmapriya “Diagnosis for Dengue Fever Using Spatial Data Miningâ€, International Journal of Computer Trends and Technology (IJCTT) ,August 2013.

      [16] Daranee, Pratap Suriyaphol and Nuanwan,†Data Mining of Dengue Infection Using Decision Treeâ€, July 2015.

      [17] Kumar MN (2013) Alternating Decision trees for early diagnosis of dengue fever. 1305.7331.

      [18] Thitiprayoonwongse D., Suriyaphol P., Soonthornphisaj N., Data mining of dengue infection using decision tree, Entropy, 2: 2, 2012.

      [19] M.Bhavani and S.Vinod kumar, “A Data Mining Approach for Precise Diagnosis of Dengue Fever†International Journal of Latest Trends in Engineering and Technology, Vol.(7)Issue(4), pp.352-359, 2013

  • Downloads

  • How to Cite

    Mishra, S., Kumar Tripathy, H., & Ranjan Panda, A. (2018). An Improved and Adaptive Attribute Selection Technique to Optimize Dengue Fever Prediction. International Journal of Engineering & Technology, 7(3.34), 480-486. https://doi.org/10.14419/ijet.v7i3.34.19363