Label-free prediction of cell painting from brightfield images

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作者
Jan Oscar Cross-Zamirski
Elizabeth Mouchet
Guy Williams
Carola-Bibiane Schönlieb
Riku Turkki
Yinhai Wang
机构
[1] University of Cambridge,Department for Applied Mathematics and Theoretical Physics
[2] R&D,Discovery Sciences
[3] AstraZeneca,Discovery Sciences
[4] R&D,Discovery Sciences
[5] AstraZeneca,undefined
[6] R&D,undefined
[7] AstraZeneca,undefined
[8] Gothenburg,undefined
[9] Downing College,undefined
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Cell Painting is a high-content image-based assay applied in drug discovery to predict bioactivity, assess toxicity and understand mechanisms of action of chemical and genetic perturbations. We investigate label-free Cell Painting by predicting the five fluorescent Cell Painting channels from brightfield input. We train and validate two deep learning models with a dataset representing 17 batches, and we evaluate on batches treated with compounds from a phenotypic set. The mean Pearson correlation coefficient of the predicted images across all channels is 0.84. Without incorporating features into the model training, we achieved a mean correlation of 0.45 with ground truth features extracted using a segmentation-based feature extraction pipeline. Additionally, we identified 30 features which correlated greater than 0.8 to the ground truth. Toxicity analysis on the label-free Cell Painting resulted a sensitivity of 62.5% and specificity of 99.3% on images from unseen batches. We provide a breakdown of the feature profiles by channel and feature type to understand the potential and limitations of label-free morphological profiling. We demonstrate that label-free Cell Painting has the potential to be used for downstream analyses and could allow for repurposing imaging channels for other non-generic fluorescent stains of more targeted biological interest.
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