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Johns Hopkins University | EN.601.448

Computational Genomics: Data Analysis

3.0

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Genomic data has the potential to reveal causes of disease, novel drug targets, and relationships among genes and pathways in our cells. However, identifying meaningful patterns from high-dimensional genomic data has required development of new computational tools. This course will cover current approaches in computational analysis of genomic data with a focus on statistical methods and machine learning.Topics will include disease association, prediction tasks, clustering and dimensionality reduction, data integration, and network reconstruction. There will be some programming and a project component. [Applications] Prerequisites: EN.601.226 or other programming experience, probability and statistics, linear algebra or calculus.

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