High-throughput Oligopaint screen identifies druggable 3D genome regulators

被引:0
|
作者
Daniel S. Park
Son C. Nguyen
Randi Isenhart
Parisha P. Shah
Wonho Kim
R. Jordan Barnett
Aditi Chandra
Jennifer M. Luppino
Jailynn Harke
May Wai
Patrick J. Walsh
Richard J. Abdill
Rachel Yang
Yemin Lan
Sora Yoon
Rebecca Yunker
Masato T. Kanemaki
Golnaz Vahedi
Jennifer E. Phillips-Cremins
Rajan Jain
Eric F. Joyce
机构
[1] University of Pennsylvania,Department of Genetics, Perelman School of Medicine
[2] University of Pennsylvania,Penn Epigenetics Institute, Perelman School of Medicine
[3] University of Pennsylvania,Department of Medicine, Perelman School of Medicine
[4] University of Pennsylvania,Department of Cell and Developmental Biology, Perelman School of Medicine
[5] University of Pennsylvania,Penn Cardiovascular Institute, Perelman School of Medicine
[6] University of Pennsylvania,Department of Bioengineering
[7] University of Pennsylvania,Institute for Immunology, Perelman School of Medicine
[8] National Institute of Genetics,Department of Chromosome Science
[9] Research Organization of Information and Systems (ROIS),Department of Genetics
[10] The Graduate University for Advanced Studies (SOKENDAI),Department of Biological Sciences, Graduate School of Science
[11] The University of Tokyo,undefined
来源
Nature | 2023年 / 620卷
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摘要
The human genome functions as a three-dimensional chromatin polymer, driven by a complex collection of chromosome interactions1–3. Although the molecular rules governing these interactions are being quickly elucidated, relatively few proteins regulating this process have been identified. Here, to address this gap, we developed high-throughput DNA or RNA labelling with optimized Oligopaints (HiDRO)—an automated imaging pipeline that enables the quantitative measurement of chromatin interactions in single cells across thousands of samples. By screening the human druggable genome, we identified more than 300 factors that influence genome folding during interphase. Among these, 43 genes were validated as either increasing or decreasing interactions between topologically associating domains. Our findings show that genetic or chemical inhibition of the ubiquitous kinase GSK3A leads to increased long-range chromatin looping interactions in a genome-wide and cohesin-dependent manner. These results demonstrate the importance of GSK3A signalling in nuclear architecture and the use of HiDRO for identifying mechanisms of spatial genome organization.
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页码:209 / 217
页数:8
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