Affiliation:
1. Department of Computer Science and Engineering, Indian Institute of Information Technology Kottayam, Valavoor,
Pala, 686635, Kerala, India
Abstract
Abstract:
The deep learning arena explores new dimensions once considered impossible to human intelligence.
Recently, it has taken footsteps in the biological data world to deal with the diverse patterns
of data derived from biomolecules. The convolutional neural networks, one of the most employed and
persuasive deep learning architectures, can unravel the sequestered truths from these data, especially
from the biological sequences. These neural network variants outperform traditional bioinformatics
tools for the enduring tasks associated with such sequences.
:
This work imparts an exciting preface to the basics of convolutional neural network architecture and
how it can be instrumented to deal with biological sequence analysis.
:
The approach followed in this paper can provide the reader with an enhanced view of convolutional
neural networks, their basic working principles and how they apply to biological sequences.
:
A detailed view of critical steps involved in deep learning, starting from the data preprocessing, architecture
designing, model training, hyperparameter tuning, and evaluation metrics, are portrayed. A
comparative analysis of convolutional neural network architectures developed for protein family classification
is also discussed.
:
This review contributes significantly to understanding the concepts behind deep learning architectures
and their applications in biological sequence analysis. It can lift the barrier of limited knowledge to a
great extent on the deep learning concepts and their implementation, especially for people who are dealing
with pure biology.
Publisher
Bentham Science Publishers Ltd.
Subject
Computational Mathematics,Genetics,Molecular Biology,Biochemistry
Cited by
5 articles.
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