This paper is published in Volume-4, Issue-3, 2018
Area
Machine Learning
Author
Girish Vijay Agrawal, Kunal Sunil Ingale, Arpit Nitin Behede, Prashant Somnath Jadhav
Org/Univ
Shram Sadhana Bombay Trust’s College of Engineering and Technology, Jalgaon Maharashtra, India
Pub. Date
09 June, 2018
Paper ID
V4I3-1820
Publisher
Keywords
Machine learning, Medical domain, Semantic relation

Citationsacebook

IEEE
Girish Vijay Agrawal, Kunal Sunil Ingale, Arpit Nitin Behede, Prashant Somnath Jadhav. Identifying disease treatment by support vector machine with polynomial kernel, International Journal of Advance Research, Ideas and Innovations in Technology, www.IJARIIT.com.

APA
Girish Vijay Agrawal, Kunal Sunil Ingale, Arpit Nitin Behede, Prashant Somnath Jadhav (2018). Identifying disease treatment by support vector machine with polynomial kernel. International Journal of Advance Research, Ideas and Innovations in Technology, 4(3) www.IJARIIT.com.

MLA
Girish Vijay Agrawal, Kunal Sunil Ingale, Arpit Nitin Behede, Prashant Somnath Jadhav. "Identifying disease treatment by support vector machine with polynomial kernel." International Journal of Advance Research, Ideas and Innovations in Technology 4.3 (2018). www.IJARIIT.com.

Abstract

The Machine Learning field has gained its thrust in almost any domain of research and just recently has become a reliable tool in the medical domain. The experiential domain of automatic learning is used in tasks such as medical decision support, medical imaging, protein-protein interaction, extraction of medical knowledge, and for overall patient management care. ML is envisioned as a tool by which computer-based systems can be integrated into the healthcare field in order to get a better, well-organized medical care. It describes an ML-based methodology for building an application that is capable of identifying and disseminating healthcare information. It extracts sentences from published medical papers that mention diseases and treatments and identifies semantic relations that exist between diseases and treatments. Results for these tasks show that the proposed methodology obtains reliable outcomes that could be integrated into an application to be used in the medical care domain. The potential value of this method stands in the ML settings that are proposed and in the fact that it outperforms previous results on the same dataset.