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    <title>Part 11: KE enrichment score analysis and benchmarking for dataset: GSE109565  :: The AOP project</title>
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    <description>The AOP project ► Key objective 2 Author: Shakira Agata This Jupyter Notebook shows the steps for the execution of KE enrichment analysis and benchmarking to Overrepresentation Analysis(ORA) for dataset:GSE109565. This notebook is subdivided into eight sections:&#xA;Section 1: Creation of dictKE dictionary Section 2: Creation of dictWP dictionary Section 3: Creation of KEgenes dictionary Section 4: Calculation of N variable Section 5: Comparison 1: PCB concentration 1 Section 5.1: Calculation of n variable Section 5.2:Calculation of variable B and variable b Section 5.3: Calculation of enrichment score and hypergeometric p-value Section 5.4: Filtering results Section 5.5: Calculation of percent gene overlap Section 5.5.1 Creation of significant KE table Section 5.5.2 Significant ORA pathway table Section 5.5.3 Creation of for loop Section 5.5.4 Tabulation Section 5.5.5 Percent overlap calculation Section 6: Comparison 2:PCB concentration 2 Section 6.1: Calculation of n variable Section 6.2:Calculation of variable B and variable b Section 6.3: Calculation of enrichment score and hypergeometric p-value Section 6.4: Filtering results Section 6.5: Calculation of percent gene overlap Section 6.5.1 Creation of significant KE table Section 6.5.2 Significant ORA pathway table Section 6.5.3 Creation of for loop Section 6.5.4 Tabulation Section 6.5.5 Percent overlap calculation Section 7: Comparison 3: PCB concentration 3 Section 7.1: Calculation of n variable Section 7.2: Calculation of variable B and variable b Section 7.3: Calculation of enrichment score and hypergeometric p-value Section 7.4: Filtering results Section 7.5: Calculation of percent gene overlap Section 7.5.1 Creation of significant KE table Section 7.5.2 Significant ORA pathway table Section 7.5.3 Creation of for loop Section 7.5.4 Tabulation Section 7.5.5 Percent overlap calculation Section 8: Metadata Section 1: Creation of dictKE dictionary In this section, the dictKE dictionary will be made which is used to retrieve the first neighbors of the key events present in the inflammatory stress response pathway AOP network.</description>
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