DNA Classification for Finding E-COLI
Authors: Mrs. D. Agalya and Ms. K. Rajeswari
Date: July-September 2024
Page Numbers: 38-47
Issue: 21
Volume: 11
Abstract : In the dynamic realm of molecular biology, the comprehension and prediction of gene
promoter sequences stand as linchpins for unravelling the intricacies of genetic regulation. This
research undertakes a comprehensive study, aiming to forge a robust system for the classification
of gene promoter sequences. Harnessing the capabilities of advanced machine learning
algorithms, our proposed system endeavours to precisely categorize these sequences into distinct
classes, thus laying the groundwork for enhanced gene expression analysis and the identification
of regulatory elements. At the core of our approach lies the recognition that accurate classification
of gene promoter sequences is pivotal for unlocking a deeper understanding of genetic regulation.
By leveraging the sophistication of machine learning, we not only strive to improve the efficiency
of classification but also contribute to a more nuanced exploration of the underlying mechanisms
governing gene activation and repression. The proposed system emerges as a transformative tool,
offering researchers a precise lens through which to decipher the complexities of genetic
information, fostering advancements in molecular biology and genomics.
Keywords : Intricate tapestrymolecular biologygene promotersDNA to RNAsequence
classification system.

