Open agitter opened 5 years ago
Here is a paper Anne Carpenter shared recently that reports positive results: Repurposing High-Throughput Image Assays Enables Biological Activity Prediction for Drug Discovery https://doi.org/10.1016/j.chembiol.2018.01.015
My notes on Repurposing High-Throughput Image Assays Enables Biological Activity Prediction for Drug Discovery
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Some adds on comments:
Paper, supplement, and Data S1 1-s2.0-S2451945618300370-mmc3.pdf 1-s2.0-S2451945618300370-mmc2.xlsx
I can contact the authors to see if there is any chance they'd be willing to share the data. It is unlikely, but there is nothing to lose. Maybe they could anonymize the assay labels.
Their supplement describes the three channels
Hoechst 33258 (Invitrogen H3569, dilution 1/5000) to label the nucleus, CellMask Deep Red (Invitrogen H32721, dissolved in 100 ml DMSO, then diluted 1/4000) to delineate cell boundaries, and an Alexa-568 labeled goat anti-rabbit secondary antibody (Invitrogen A11011, 1/500) to detect the GCR.
For Hoechst, a 405-nm laser was used and a 445/45 bandpass emission filter; for Alexa 568 a 561-nm excitation and a 600/37 filter, and for CellMask Deep Red a 635-nm laser and a 676/29 filter.
We also noted that they are specifically targeting Glucocorticoid Receptor, a single protein target. This may mean that the "hit ratio" of the image-based screen is more like the hit ratio of traditional assays. In addition, it is likely that there is a stronger contrast between the hits and the controls.
Here are the five channels used in our U2OS cell-painting dataset.
Dye | Alternative | Position |
---|---|---|
ERSyto | ER | Endoplasmic reticulum |
ERSytoBleed | RNA | RNA |
Hoechst | DNA | Nucleus |
Mito | Mito | Mitochondria |
Ph_golgi | AGP | plasma membrane |
I contacted the last author of this paper asking about data availability but received an out of office response. I can follow up in a week or two.
Our latest results in #9 and #7 have given no indication that the cell images are meaningful for predicting chemical effects. There seems to be very little signal in this type of data. We may need to find some positive success stories of how this type of imaging data has been used for chemical screening, drug discovery, etc. to convince ourselves there is a meaningful way to link ChEMBL assays to these images or the Sanger drug sensitivity to these images.
https://www.recursionpharma.com/ works specifically in this area, so reminding ourselves of their successes may be a good place to start.