亚细胞定位
蛋白质亚细胞定位预测
细胞生物学
动力学(音乐)
生物
计算生物学
生物化学
细胞质
基因
物理
声学
作者
Andreas Reicher,Jiří Reiniš,Maria Ciobanu,Pavel Růžička,Monika Malik,Marton I. Siklos,Viktoriia Kartysh,Tatjana Tomek,Anna Koren,André F. Rendeiro,Stefan Kubicek
标识
DOI:10.1038/s41556-024-01407-w
摘要
Abstract Imaging-based methods are widely used for studying the subcellular localization of proteins in living cells. While routine for individual proteins, global monitoring of protein dynamics following perturbation typically relies on arrayed panels of fluorescently tagged cell lines, limiting throughput and scalability. Here, we describe a strategy that combines high-throughput microscopy, computer vision and machine learning to detect perturbation-induced changes in multicolour tagged visual proteomics cell (vpCell) pools. We use genome-wide and cancer-focused intron-targeting sgRNA libraries to generate vpCell pools and a large, arrayed collection of clones each expressing two different endogenously tagged fluorescent proteins. Individual clones can be identified in vpCell pools by image analysis using the localization patterns and expression level of the tagged proteins as visual barcodes, enabling simultaneous live-cell monitoring of large sets of proteins. To demonstrate broad applicability and scale, we test the effects of antiproliferative compounds on a pool with cancer-related proteins, on which we identify widespread protein localization changes and new inhibitors of the nuclear import/export machinery. The time-resolved characterization of changes in subcellular localization and abundance of proteins upon perturbation in a pooled format highlights the power of the vpCell approach for drug discovery and mechanism-of-action studies.
科研通智能强力驱动
Strongly Powered by AbleSci AI