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Soft Computing For Biological Systems 1st Edition Hemant J Purohit

  • SKU: BELL-6990322
Soft Computing For Biological Systems 1st Edition Hemant J Purohit
$ 31.00 $ 45.00 (-31%)

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Soft Computing For Biological Systems 1st Edition Hemant J Purohit instant download after payment.

Publisher: Springer Singapore
File Extension: PDF
File size: 5.95 MB
Author: Hemant J. Purohit, Vipin Chandra Kalia, Ravi Prabhakar More (eds.)
ISBN: 9789811074547, 9789811074554, 9811074542, 9811074550
Language: English
Year: 2018
Edition: 1

Product desciption

Soft Computing For Biological Systems 1st Edition Hemant J Purohit by Hemant J. Purohit, Vipin Chandra Kalia, Ravi Prabhakar More (eds.) 9789811074547, 9789811074554, 9811074542, 9811074550 instant download after payment.

This book explains how the biological systems and their functions are driven by genetic information stored in the DNA, and their expression driven by different factors. The soft computing approach recognizes the different patterns in DNA sequence and try to assign the biological relevance with available information.The book also focuses on using the soft-computing approach to predict protein-protein interactions, gene expression and networks. The insights from these studies can be used in metagenomic data analysis and predicting artificial neural networks.

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