click to view more

Bayesian Inference in Bioinformatics: Unveiling Molecular Processes Using Probabilistic Modeling

by Mojica, Yvonne

$19.20

List Price: $29.99
Save: $10.79 (35%)
add to favourite
  • In Stock - Ship in 24 hours with Free Online tracking.
  • FREE DELIVERY by Monday, July 21, 2025
  • 24/24 Online
  • Yes High Speed
  • Yes Protection

Description

Unlock the secrets of life's intricate code with "Bayesian Inference in Bioinformatics: Unveiling Molecular Processes Using Probabilistic Modeling." This groundbreaking book provides a comprehensive exploration of how Bayesian statistical methods are revolutionizing our understanding of biological systems. Navigate the complex landscape of genomics, proteomics, and more with the power of probability.

Delve into the foundational principles of Bayesian inference, starting with a clear and accessible introduction to Bayes' Theorem. Learn how to seamlessly integrate *prior knowledge* with experimental data to generate robust and refined probability estimates. Discover the iterative nature of Bayesian learning and its distinct advantages in biological research, where leveraging existing information is paramount. This book empowers you to move beyond traditional frequentist approaches and embrace the power of informed, probabilistic reasoning.

Unravel the complexities of biological networks with dedicated chapters on Bayesian networks. Master techniques for inferring network structures from high-dimensional data, focusing on the intricate relationships within gene regulatory networks and protein interaction networks. Build models that not only represent these interactions but also predict system behavior with unparalleled accuracy. Understand how perturbations in these networks can lead to disease states and how Bayesian inference can guide the development of targeted therapies.

Explore the versatility of Hidden Markov Models (HMMs), a cornerstone of bioinformatics, through a Bayesian lens. This book *illuminates* the application of HMMs across a wide array of biological problems, including sequence alignment, gene prediction, phylogenetic inference, and motif discovery. Grasp the power of HMMs in modeling sequential data and uncovering hidden states, allowing you to decipher the underlying patterns within biological sequences.

Harness the power of Bayesian methods to analyze the vast amounts of data generated by microarray and next-generation sequencing technologies. Discover how to perform differential expression analysis, identifying genes that are significantly altered between experimental conditions. Master Bayesian clustering and classification techniques, enabling you to group genes or samples based on their expression profiles. Tackle the challenges of variant calling, RNA-Seq analysis, and metagenomics with confidence, leveraging the probabilistic framework of Bayesian inference to extract meaningful insights from complex datasets. Learn to identify single nucleotide polymorphisms (SNPs) and insertions/deletions with greater precision, quantify gene expression levels accurately, and analyze the composition and function of microbial communities.

From the fundamental principles to advanced applications, "Bayesian Inference in Bioinformatics" equips you with the tools and knowledge you need to unlock the secrets of molecular processes using probabilistic modeling. Transform your research, refine your understanding, and gain a competitive edge in this data-rich era of bioinformatics. The journey to mastering Bayesian inference in bioinformatics starts here. Don't delay, decipher today! This *essential guide* will empower you to interpret complex data, develop predictive models, and contribute to breakthroughs in biological research. The book provides a rigorous yet accessible treatment of the subject, making it suitable for students, researchers, and professionals alike.

Unlock a new world of understanding biological systems and processes!

Ready to elevate your bioinformatics expertise? Then, seize this intellectual asset!

Last updated on

Product Details

  • Jun 30, 2025 Pub Date:
  • 9798349408571 ISBN-10:
  • 9798349408571 ISBN-13:
  • English Language