PROTEIN-PROTEIN INTERACTION PREDICTION USING A DEEP NEURAL NETWORK WITH BATCH NORMALIZATION AND QUARTILE ALGORITHM
Journal: International Journal of Advanced Research (Vol.12, No. 12)Publication Date: 2024-12-18
Authors : N. Diffon Charlemagne Kopoin Alex Armand Josue Akohoule Wielfrid Morie; Olivier Pascal Asseu;
Page : 750-760
Keywords : Deep Neural Network Batch Normalization Protein-Proteininteraction quartile;
Abstract
Detecting protein-protein interactions (PPIs) is key for disease therapy development. While experimental methods are costly, deep neural network (DNN) models now use available PPI data for prediction, though limited by low-quality sequence-based data. This study introduces FDPPI, a DNN model leveraging a quartile-based algorithm and batch normalization to enhance performance, achieving 98.09% accuracy, 98.34% precision, and 97.72% sensitivity on human PPI data.
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