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Trans-channel fluorescence learning improves high-content screening for Alzheimer’s disease therapeutics

Authors :
Jacob I. Ayers
Atul J. Butte
Jisoo Lee
Daniel Wong
Michael J. Keiser
Annelies Laeremans
Jay Conrad
Sourav Bandyopadhyay
Joanne C. Lee
Noah R. Johnson
Nick A. Paras
Stanley B. Prusiner
Source :
Nature machine intelligence, vol 4, iss 6
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

In microscopy-based drug screens, fluorescent markers carry critical information on how compounds affect different biological processes. However, practical considerations, such as the labor and preparation formats needed to produce different image channels, hinders the use of certain fluorescent markers. Consequently, completed screens may lack biologically informative but experimentally impractical markers. Here, we present a deep learning method for overcoming these limitations. We accurately generated predicted fluorescent signals from other related markers and validated this new machine learning (ML) method on two biologically distinct datasets. We used the ML method to improve the selection of biologically active compounds for Alzheimer's disease (AD) from a completed high-content high-throughput screen (HCS) that had only contained the original markers. The ML method identified novel compounds that effectively blocked tau aggregation, which had been missed by traditional screening approaches unguided by ML. The method improved triaging efficiency of compound rankings over conventional rankings by raw image channels. We reproduced this ML pipeline on a biologically independent cancer-based dataset, demonstrating its generalizability. The approach is disease-agnostic and applicable across diverse fluorescence microscopy datasets.

Details

Database :
OpenAIRE
Journal :
Nature machine intelligence, vol 4, iss 6
Accession number :
edsair.doi.dedup.....6975e912acc966761fd38b562d1519d5
Full Text :
https://doi.org/10.1101/2021.01.08.425973