Deep Learning in Computational Biology: Advancements, Challenges, and Future Outlook
Suresh Kumar, Dhanyashri Guruparan, Pavithren Aaron, Philemon Telajan,, Kavinesh Mahadevan, Dinesh Davagandhi, Ong Xin Yue

TL;DR
Deep learning has transformed computational biology by improving DNA and protein analysis, but challenges like data requirements and interpretability remain, with promising future developments on the horizon.
Contribution
This review highlights recent advancements, challenges, and future prospects of deep learning applications in DNA sequence and protein structure prediction.
Findings
Deep learning improves genomic variant detection and gene expression analysis.
CNNs achieve high accuracy in genetic variation prediction.
Deep learning enhances protein structure and interaction predictions.
Abstract
Deep learning has become a powerful tool in computational biology, revolutionising the analysis and interpretation of biological data over time. In our article review, we delve into various aspects of deep learning in computational biology. Specifically, we examine its history, advantages, and challenges. Our focus is on two primary applications: DNA sequence classification and prediction, as well as protein structure prediction from sequence data. Additionally, we provide insights into the outlook for this field. To fully harness the potential of deep learning in computational biology, it is crucial to address the challenges that come with it. These challenges include the requirement for large, labelled datasets and the interpretability of deep learning models. The use of deep learning in the analysis of DNA sequences has brought about a significant transformation in the detection of…
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Taxonomy
TopicsMachine Learning in Bioinformatics · Genetics, Bioinformatics, and Biomedical Research · Genomics and Phylogenetic Studies
MethodsFocus
