Inferring Single Cell Profiles from Histology and Generating Omics Data from Images
Offered By: Broad Institute via YouTube
Course Description
Overview
Explore cutting-edge research in computational biology through two presentations from the Models, Inference and Algorithms seminar series at the Broad Institute. Delve into Charles Comiter's work on SCHAF (Single-Cell omics from Histology Analysis Framework), which uses adversarial machine learning to generate spatially resolved single-cell omics datasets from H&E histology images. Learn how this innovative approach bridges the gap between molecular-level single-cell profiling and tissue-level histology imaging, offering new insights into cell and tissue biology in health and disease. Then, discover Jian Shu's Image2Omics project, which aims to develop novel experimental and computational frameworks for generating omics data from various imaging modalities. Understand how this research could revolutionize genomic monitoring by enabling non-destructive, low-cost, and scalable methods for predicting genomic information from images, potentially leading to more generalizable machine learning methods for translating biological data.
Syllabus
MIA: Charles Comiter, Infer Single Cell Profiles from Histology; J. Shu, Generate Omics from Images
Taught by
Broad Institute
Related Courses
Network Analysis in Systems BiologyIcahn School of Medicine at Mount Sinai via Coursera Molecular Dynamics for Computational Discoveries in Science
University of Massachusetts Boston via Independent Biology Meets Programming: Bioinformatics for Beginners
University of California, San Diego via Coursera Python for Informatics: Exploring Information
Open Education by Blackboard Genomic Medicine Gets Personal
Georgetown University via edX