Affiliation:
1. Department of Computer Science and Software Engineering Auburn University Auburn Alabama
2. These authors contributed equally to this work
3. Department of Computer Science and Engineering University of Nevada Reno Nevada
4. College of Engineering and Computer Science California State University Sacramento California
5. Department of Computer Science Wayne State University Detroit Michigan
6. AdvaitaBio Ann Arbor Michigan
Abstract
AbstractIdentifying impacted pathways is important because it provides insights into the biology underlying conditions beyond the detection of differentially expressed genes. Because of the importance of such analysis, more than 100 pathway analysis methods have been developed thus far. Despite the availability of many methods, it is challenging for biomedical researchers to learn and properly perform pathway analysis. First, the sheer number of methods makes it challenging to learn and choose the correct method for a given experiment. Second, computational methods require users to be savvy with coding syntax, and comfortable with command‐line environments, areas that are unfamiliar to most life scientists. Third, as learning tools and computational methods are typically implemented only for a few species (i.e., human and some model organisms), it is difficult to perform pathway analysis on other species that are not included in many of the current pathway analysis tools. Finally, existing pathway tools do not allow researchers to combine, compare, and contrast the results of different methods and experiments for both hypothesis testing and analysis purposes. To address these challenges, we developed an open‐source R package for Consensus Pathway Analysis (RCPA) that allows researchers to conveniently: (1) download and process data from NCBI GEO; (2) perform differential analysis using established techniques developed for both microarray and sequencing data; (3) perform both gene set enrichment, as well as topology‐based pathway analysis using different methods that seek to answer different research hypotheses; (4) combine methods and datasets to find consensus results; and (5) visualize analysis results and explore significantly impacted pathways across multiple analyses. This protocol provides many example code snippets with detailed explanations and supports the analysis of more than 1000 species, two pathway databases, three differential analysis techniques, eight pathway analysis tools, six meta‐analysis methods, and two consensus analysis techniques. The package is freely available on the CRAN repository. © 2024 The Authors. Current Protocols published by Wiley Periodicals LLC.Basic Protocol 1: Processing Affymetrix microarraysBasic Protocol 2: Processing Agilent microarraysSupport Protocol: Processing RNA sequencing (RNA‐Seq) dataBasic Protocol 3: Differential analysis of microarray data (Affymetrix and Agilent)Basic Protocol 4: Differential analysis of RNA‐Seq dataBasic Protocol 5: Gene set enrichment analysisBasic Protocol 6: Topology‐based (TB) pathway analysisBasic Protocol 7: Data integration and visualization
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1. RCPA: Consensus Pathway Analysis;CRAN: Contributed Packages;2023-05-11