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Protein structure prediction is a critical task in molecular biology, with far-reaching implications for innovation, disease understanding, and drug discovery. Deep learning is one successful way to deal with this difficult issue. The purpose of this work is to investigate how deep learning technologies can be used to increase the precision and effectiveness of protein structure formation. We examine numerous deep learning models and approaches in depth, emphasizing their advantages and disadvantages in terms of protein structure prediction. Our study includes a comparison of current deep learning-based approaches, demonstrating their usefulness on both benchmark datasets and real-world examples. We discuss how deep learning models are built by using inter-residue interactions, secondary structure prediction, and sequence data. In addition, we investigate how generative adversarial GANs could be utilized to improve protein structure formation by using complex data distributions. We show how deep learning may dramatically improve the precision of protein structure prediction, ultimately producing more dependable models, through extensive experiments and case studies. In addition, we discuss how deep learning models may be interpreted and applied to the field of protein folding, providing an understanding of both their strengths and weaknesses.
Nagaraj et al. (Thu,) studied this question.
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