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1
Intro
2
Cell Painting assay
3
Image-based morphology profiling: introduction
4
Predicting assay-compound interaction
5
Predicting cell health phenotypes
6
Lung cancer variant impact prediction
7
Sources of features
8
Profiling cell state: classical features
9
Transfer learning: pre-trained CNNs
10
Weakly supervised learning (WSL)
11
Confounders for WSL
12
Single-cell classification results
13
Batch-correction with sphering
14
Perturbation selection
15
Combined Cell Painting dataset
16
Cell Painting CNN-1 training
17
Cell Painting CNN-1 performance
18
Effect of batch correction
19
Cell Painting CNN-1 qualitative analysis
20
Cell Painting CNN-1 availability
Description:
Explore a 42-minute lecture from the Broad Institute's Primer on Medical and Population Genetics series, focusing on learning representations for image-based profiling of perturbations. Delve into topics such as the Cell Painting assay, image-based morphology profiling, predicting assay-compound interactions and cell health phenotypes, and lung cancer variant impact prediction. Examine various sources of features, including classical features for profiling cell state and transfer learning with pre-trained CNNs. Investigate weakly supervised learning (WSL) and its confounders, single-cell classification results, and batch-correction techniques. Learn about perturbation selection, combined Cell Painting datasets, and the training and performance of Cell Painting CNN-1. Analyze the effects of batch correction and gain insights into the qualitative analysis and availability of Cell Painting CNN-1. This comprehensive lecture, presented by Nikita Moshkov from the Caicedo Lab, offers valuable knowledge for researchers, technicians, students, and investigators in the field of genetics and image-based profiling. Read more

Learning Representations for Image-Based Profiling of Perturbations - MPG Primer 2023

Broad Institute
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