Welcome

Welcome to the Course Website for EN.580.428 Genomic Data Visualization!

As the primary mode through which analysts and audience members alike consume data, data visualization remains an important hypothesis generating and analytical technique in data-driven research to facilitate new discoveries. However, if done poorly, data visualization can also mislead, bias, and slow down progress. This hands-on course will cover the principles of perception and cognition relevant for data visualization and apply these principles to genomic data, including large-scale single-cell and spatially-resolved omics datasets, using the R statistical programming language. Students will be expected to complete class readings, create weekly data visualizations as homework assignments, and make a major class presentation.

Course Information

Course Staff: Prof. Jean Fan and Caleb Hallinan
Lectures: 8:00am-9:50am Monday, Wednesday, and Friday. See Canvas for location details.
Office Hours: 10:00am-10:50am Monday, Wednesday, and by request. See Canvas for location details.

Course Details
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All Visualizations

HW3 Panels

Description

Using PCA and tSNE to visualize an upregulated differentially expressed gene and cluster for cell type annotation

Describe your figure briefly so we know what you are depicting (you no longer need to use precise data visualization terms as you have been doing).

Identifying a Cluster of Breast Granular Cells

In the top left of my figure, I am depicting both my clusters made by kmeans clustering with k=7 in PCA space (with my cluster of interest circled, cluster 5)...

Hw3: PCA and Spatial analysis for One Cluster

This panel outlines the PCA and spatial analysis for the Pikachu dataset. The first two graphs are from my previous homework, and they give the big picture. Graph 1 shows...

Characterizing transcriptionally distinct cluster of cells

1. Write a description explaining why you believe your data visualization is effective using vocabulary terms from Lesson 1.

Discovering Epithelial cells

[description] Figures A, B, and C share a common legend and analyze the dataset at the cluster level, where green highlights the cluster of interest and gray represents all other...

hw 3 DEG analysis

Description of analysis This differential gene expression analysis explores a transcriptionally distinct cluster of cells related to the cardiac conduction system, with a focus on the GJA1 gene, which encodes...

HW3: Identifying and analysing cluters via K-means and dimensionality reduction

<!– Create a multi-panel data visualization that includes at minimum the following components: A panel visualizing your one cluster of interest in reduced dimensional space (PCA, tSNE, etc) A panel...

Homework 3: Differentially Expressed Genes analysis

[description] Those panels present a comprehensive visualization of Cluster 0 and its association with the gene SFRP4 through a combination of UMAP, spatial, and gene expression analysis. The top-left UMAP...

Spatial Transcriptomics Reveals a Distinct Epithelial Cell Population Defined by ELF3 Expression: A Multi-Dimensional Analysis of the Cluster in Interest

1. Describe your figure briefly so we know what you are depicting. Write a description to convince me that your cluster interpretation is correct.