Disease Prediction by Machine Learning from Healthcare Communities

Authors

  • Saiesh Jadhav  Department of Computer Engineering, SPPU, Pune, Maharashtra, India
  • Rohan Kasar  Department of Computer Engineering, SPPU, Pune, Maharashtra, India
  • Nagraj Lade  Department of Computer Engineering, SPPU, Pune, Maharashtra, India
  • Megha Patil  Department of Computer Engineering, SPPU, Pune, Maharashtra, India
  • Prof. Shital Kolte  Assistant Professor, Department of Computer Engineering, SPPU, Pune, Maharashtra, India

DOI:

https://doi.org//10.32628/IJSRST19633

Keywords:

Data analytics; Machine Learning; Healthcare, K Nearest Neighbor, (KNN) and Support Vector Machine (SVM), electronic health records (EHR).

Abstract

To promote sustainable improvement, the smart town implies a global imaginative and prescient that merges artificial intelligence, choice making, statistics and conversation era (ICT), and the net-of-things (IoT). in this mission, the subject of disease prediction and prognosis in clever healthcare is reviewed. due to records progress in biomedical and healthcare groups, correct have a look at of clinical data advantages early disorder recognition, patient care and network services. whilst the exceptional of medical information is incomplete the exactness of study is reduced. moreover, exclusive areas exhibit specific appearances of certain regional illnesses, which can also bring about weakening the prediction of sickness outbreaks. within the proposed system, it offers gadget gaining knowledge of algorithms for effective prediction of various disorder occurrences in ailment-frequent societies and predicts the waiting time for each treatment project for every patient as well as a hospital Queuing advice (HQR) system is advanced for recommending treatment mission sequence with appreciate to anticipated ready time. It experiments on a nearby chronic illness of cerebral infarction. using structured and unstructured facts from health centre it makes use of system studying selection Tree algorithm and KNN algorithm. To the first-rate of our knowledge inside the place of medical huge records analytics none of the existing paintings focused on each information types. in comparison to several normal estimate algorithms, the calculation exactness of our proposed set of rules reaches 94.8% with a convergence speed which is faster than that of the CNN-based totally uni-modal ailment threat prediction (CNN-UDRP) algorithm. similarly, challenges within the deployment of sickness diagnosis in healthcare had been mentioned.

References

  1. Min Chen, Yixue Hao, Kai Hwang, Lu Wang, and Lin Wang, “Disease Prediction by Machine Learning over Big Data from Healthcare Communities”, IEEE transaction, 2017, pp 8869-8879.
  2. W. Yin and H. Schutze,” Convolutional neural network for paraphrase identification”, in HLTNAACL,2015, pp. 901-911.
  3. Seema sharma, Jitendra Agarwal, Shikha Agarwal, Sanjeev Sharma, “Machine Learning Techniques for Data Mining: A Survey”, in Computational Intelligence and Computing Research, IEEE International Conference on. IEEE, 2013, pp.1-6.
  4. Jensen PB, Jensen LJ, Brunak S, “Mining electronic health records: towards better research applications and clinical care,” Nat Rev Genet.2013 Jan; 14(1):75.
  5. L. Qiu, K. Gai, and M. Qiu, “Optimal big data sharing approach for tele-health in cloud computing”, in Smart Cloud (Smart Cloud), IEEE International Conference on. IEEE, 2016, pp. 184-189.
  6. Siwei Lai, Xu Kang Liu, Jun Zhao,” Recurrent Convolutional Neural Networks for Text Classification”, in proceeding of the twenty-ninth AAAI Conference on Artificial Intelligence 2015.
  7. Xingyou Wang, Weijie Jiang, Zhiyong Luo, “Combination of Convolutional and Recurrent Neural Network for Sentimental Analysis of Short Texts”, International Conference on Computational Linguistics: technical papers, 2016, pg 2428-2437
  8. Dipak V.Patil, R.S. Bichkar, “Multiple Imputation of Missing Data with Genetic Algorithm based Techniques”, IJCA Special issue on Evolutionary Computation for Optimization Technique, 2010.
  9. Ying Wen, Weinan Zhang, Rui Luo, Jun Wang, “Learning text representation using recurrent convolutional neural network with highway letters”, Neu-IR 16 SIGIR Workshop on Neural Information Retrieval, July 21,2016, Pisa, Italy.
  10. N. Nori, H. Kashima, K. Yamashita, H. Ikai, and Y. Imanaka, “Simultaneous modelling of multiple diseases for mortality prediction in acute hospital care”, in Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. ACM, 2015.
  11. J. C. Ho, C. H. Lee, and J. Ghosh, “Septic shock prediction for patients with missing data”, ACM Transactions on Management Information Systems (TMIS), vol. 5, no. 1, p. 1, 2014.
  12. Liqiang Nie, Xiaochi Wei, Dongxiang Zhang, Xiang Wang, Zhipeng Gao, and Yi Yang,” “Data-driven Answer Selection in Community QA Systems”, IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING JUNE 2016.
  13. Kanchan M. Tarwani, Swathi Edem, “Survey on Recurrent Neural Network in Natural Language Processing”, International Journal of Engineering Trends and Technology (IJETT), Volume 48 Number 6, June 2017.
  14. Jan Koutnik, Klaus Greff, Faustino Gomez, Jurgen Schmidhuber, “A Clockwork RNN”, IDSIA, USI SUPSI, Manno Lugano, CH-6928, Switzerland.
  15. R. Vijaya Kumar Reddy, K. Prudvi Raju, M. Jogendra Kumar, CH. Sujatha, P. Ravi Prakash,” Prediction of Heart Disease Using Decision Tree Approach”, International Journal of Advanced Research in Computer Science and Software Engineering, Volume 6, Issue 3, March 2016.
  16. Networks Dimitrios H. Mantzaris, George C. Anastassopoulos and Dimitrios K. Lymberopoulos,” Medical Disease Prediction Using Artificial Neural”, Bio-Informatics and BioEngineering, 2008. BIBE 2008. 8th IEEE International Conference on 08 December 2008.
  17. Youn-Jung Son, Hong-Gee Kim, Eung-Hee Kim, Sangsup Choi, and Soo-Kyoung Lee, “Application of Support Vector Machine for Prediction of Medication Adherence in Heart Failure Patients”, Health Information Research, v.16, 2010.
  18. Alaa Elsayad and Mahmoud Fakhr, “Diagnosis of Cardiovascular Diseases with Bayesian Classifiers”, Department of Computers and Systems, Electronics Research Institute, 12622 Bohoth St., Dokki, Geza, Egypt, 2015.
  19. M. Akhil jabbar, Dr.Priti Chandra, Dr. B. L Deekshatulu, ”Heart Disease Prediction System using Associative Classification and Genetic Algorithm”, International Conference on Emerging Trends in Electrical, Electronics and Communication Technologies,-ICECIT, 2012.

Downloads

Published

2019-05-30

Issue

Section

Research Articles

How to Cite

[1]
Saiesh Jadhav, Rohan Kasar, Nagraj Lade, Megha Patil, Prof. Shital Kolte, " Disease Prediction by Machine Learning from Healthcare Communities, International Journal of Scientific Research in Science and Technology(IJSRST), Online ISSN : 2395-602X, Print ISSN : 2395-6011, Volume 6, Issue 3, pp.29-35, May-June-2019. Available at doi : https://doi.org/10.32628/IJSRST19633