Affiliation:
1. Chandigarh University, India
Abstract
In the dynamic field of bioinformatics, the fusion of deep learning and transfer learning techniques has ushered in a transformative era of discovery. Deep learning, powered by neural networks, has emerged as a formidable tool for deciphering intricate biological data, spanning genomics, proteomics, and metabolomics. Its capacity to automatically discern complex patterns and features within vast datasets has revolutionized our comprehension of biological processes. Transfer learning, a complementary approach, introduces a novel dimension to bioinformatics. By harnessing pre-trained models from domains like computer vision and natural language processing, researchers can expedite their analyses, reducing the demand for extensive labeled data. This cross-domain knowledge transfer expedites the progress of bioinformatics applications, from predicting protein structures to identifying disease biomarkers.