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Deep learning aiding Health Informatics in Drug discovery

Malvika Jasrotia1 , Prabhpreet Kaur2

Section:Research Paper, Product Type: Journal Paper
Volume-7 , Issue-5 , Page no. 315-320, May-2019

CrossRef-DOI:   https://doi.org/10.26438/ijcse/v7i5.315320

Online published on May 31, 2019

Copyright © Malvika Jasrotia, Prabhpreet Kaur . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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IEEE Style Citation: Malvika Jasrotia, Prabhpreet Kaur, “Deep learning aiding Health Informatics in Drug discovery,” International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.315-320, 2019.

MLA Style Citation: Malvika Jasrotia, Prabhpreet Kaur "Deep learning aiding Health Informatics in Drug discovery." International Journal of Computer Sciences and Engineering 7.5 (2019): 315-320.

APA Style Citation: Malvika Jasrotia, Prabhpreet Kaur, (2019). Deep learning aiding Health Informatics in Drug discovery. International Journal of Computer Sciences and Engineering, 7(5), 315-320.

BibTex Style Citation:
@article{Jasrotia_2019,
author = {Malvika Jasrotia, Prabhpreet Kaur},
title = {Deep learning aiding Health Informatics in Drug discovery},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {5 2019},
volume = {7},
Issue = {5},
month = {5},
year = {2019},
issn = {2347-2693},
pages = {315-320},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=4242},
doi = {https://doi.org/10.26438/ijcse/v7i5.315320}
publisher = {IJCSE, Indore, INDIA},
}

RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v7i5.315320}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=4242
TI - Deep learning aiding Health Informatics in Drug discovery
T2 - International Journal of Computer Sciences and Engineering
AU - Malvika Jasrotia, Prabhpreet Kaur
PY - 2019
DA - 2019/05/31
PB - IJCSE, Indore, INDIA
SP - 315-320
IS - 5
VL - 7
SN - 2347-2693
ER -

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Abstract

The changes that occur are exciting and more challenging in our industry. There has been a massive increase in the amount of data in health informatics in the last decade. Over the years, deep learning is raising with its extraordinary success in the research areas of artificial intelligence. If we form larger neural network and then we train it with more available data and fast enough computers their performance then continues to arise. Earlier, machine-learning tools such as QSAR (quantitative structure-activity relationship) modeling have been used to identify potential biological active molecules from millions candidate compounds for drug discovery. But, in this era of big data machine learning approaches lack efficiency. Hence, deep learning evolved as a solution to the problem of big data. In this paper we discuss various deep learning approaches studied for various applications of health informatics with special reference to drug discovery.

Key-Words / Index Term

Deep learning, Deep neural network, Convolutional neural network, Recurrent neural network, Deep Autoencoder, Health informatics

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