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针对复杂多细胞模型和高内涵分析的压缩表型筛选

Compressed phenotypic screens for complex multicellular models and high-content assays.

作者信息

Mead Benjamin E, Kummerlowe Conner, Liu Nuo, Kattan Walaa E, Cheng Thomas, Cheah Jaime H, Soule Christian K, Peters Josh, Lowder Kristen E, Blainey Paul C, Hahn William C, Cleary Brian, Bryson Bryan, Winter Peter S, Raghavan Srivatsan, Shalek Alex K

机构信息

Institute for Medical Engineering and Science (IMES), Department of Chemistry, Massachusetts Institute of Technology; Cambridge, MA, 02139, USA.

Koch Institute for Integrative Cancer Research, Massachusetts Institute of Technology; Cambridge, MA, 02139, USA.

出版信息

bioRxiv. 2023 Jan 23:2023.01.23.525189. doi: 10.1101/2023.01.23.525189.

Abstract

High-throughput phenotypic screens leveraging biochemical perturbations, high-content readouts, and complex multicellular models could advance therapeutic discovery yet remain constrained by limitations of scale. To address this, we establish a method for compressing screens by pooling perturbations followed by computational deconvolution. Conducting controlled benchmarks with a highly bioactive small molecule library and a high-content imaging readout, we demonstrate increased efficiency for compressed experimental designs compared to conventional approaches. To prove generalizability, we apply compressed screening to examine transcriptional responses of patient-derived pancreatic cancer organoids to a library of tumor-microenvironment (TME)-nominated recombinant protein ligands. Using single-cell RNA-seq as a readout, we uncover reproducible phenotypic shifts induced by ligands that correlate with clinical features in larger datasets and are distinct from reference signatures available in public databases. In sum, our approach enables phenotypic screens that interrogate complex multicellular models with rich phenotypic readouts to advance translatable drug discovery as well as basic biology.

摘要

利用生化扰动、高内涵读数和复杂多细胞模型的高通量表型筛选可以推动治疗方法的发现,但仍受限于规模的限制。为了解决这个问题,我们建立了一种通过汇集扰动然后进行计算反卷积来压缩筛选的方法。使用一个具有高生物活性的小分子文库和高内涵成像读数进行受控基准测试,我们证明与传统方法相比,压缩实验设计的效率有所提高。为了证明其通用性,我们应用压缩筛选来检查患者来源的胰腺癌类器官对肿瘤微环境(TME)指定的重组蛋白配体文库的转录反应。使用单细胞RNA测序作为读数,我们发现配体诱导的可重复表型变化,这些变化与更大数据集中的临床特征相关,并且与公共数据库中可用的参考特征不同。总之,我们的方法能够进行表型筛选,通过丰富的表型读数来研究复杂的多细胞模型,以推进可转化的药物发现以及基础生物学研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/10dd/9900857/5c0ebd4d0205/nihpp-2023.01.23.525189v1-f0005.jpg

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