Deep Learning in Healthcare: An In-Depth Analysis
- URL: http://arxiv.org/abs/2302.10904v1
- Date: Sun, 12 Feb 2023 20:55:34 GMT
- Title: Deep Learning in Healthcare: An In-Depth Analysis
- Authors: Farzan Shenavarmasouleh, Farid Ghareh Mohammadi, Khaled M. Rasheed,
Hamid R. Arabnia
- Abstract summary: We provide a review of Deep Learning models and their broad application in bioinformatics and healthcare.
We also go over some of the key challenges that still exist and can show up while conducting DL research.
- Score: 1.892561703051693
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning (DL) along with never-ending advancements in computational
processing and cloud technologies have bestowed us powerful analyzing tools and
techniques in the past decade and enabled us to use and apply them in various
fields of study. Health informatics is not an exception, and conversely, is the
discipline that generates the most amount of data in today's era and can
benefit from DL the most. Extracting features and finding complex patterns from
a huge amount of raw data and transforming them into knowledge is a challenging
task. Besides, various DL architectures have been proposed by researchers
throughout the years to tackle different problems. In this paper, we provide a
review of DL models and their broad application in bioinformatics and
healthcare categorized by their architecture. In addition, we also go over some
of the key challenges that still exist and can show up while conducting DL
research.
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