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Series GSE114002 Query DataSets for GSE114002
Status Public on May 03, 2018
Title Human 5′ UTR design and variant effect prediction from a massively parallel translation assay
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Summary Predicting the impact of cis-regulatory sequence on gene expression is a foundational challenge for biology. We combine polysome profiling of hundreds of thousands of randomized 5′ UTRs with deep learning to build a predictive model that relates human 5′ UTR sequence to translation. Together with a genetic algorithm, we use the model to engineer new 5 UTRs that accurately target specified levels of ribosome loading, providing the ability to tune sequences for optimal protein expression. We show that the same approach can be extended to chemically modified RNA, an important feature for applications in mRNA therapeutics and synthetic biology. We test 35,000 truncated human 5′ UTRs and 3,577 naturally-occurring variants and show that the model accurately predicts ribosome loading of these sequences. Finally, we provide evidence of 47 SNVs associated with human diseases that cause a significant change in ribosome loading and thus a plausible molecular basis for disease.
 
Overall design Polysom profiling and sequencing was performed using a library of 300,000 randomized 5' UTR 50-mers with eGFP used as the CDS. Three RNA chemistries were tested: unmodified, pseudouridine, and 1-methylpseudouridine. These were performed in duplicate (6 samples total). A designed library that includes human 5' UTRs, SNVs, and sequences engineered with a genetic algorithm was used with the eGFP CDS (no duplicate). A second randomized library used mCherry as the CDS, also performed in duplicate.
 
Contributor(s) Sample PJ, Wang B, Seelig G
Citation(s) 31267113
Submission date May 03, 2018
Last update date Mar 30, 2020
Contact name Paul J Sample
E-mail(s) pjsample@gmail.com
Organization name University of Washington
Department Electrical Engineering
Street address West Stevens Way NE
City Seattle
State/province Washington
ZIP/Postal code 98195
Country USA
 
Platforms (1)
GPL21697 NextSeq 550 (Homo sapiens)
Samples (10)
GSM3130435 egfp_unmod_1
GSM3130436 egfp_unmod_2
GSM3130437 egfp_pseudo_1
Relations
BioProject PRJNA454863
SRA SRP144485

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE114002_RAW.tar 411.2 Mb (http)(custom) TAR (of CSV)
SRA Run SelectorHelp
Raw data are available in SRA
Processed data provided as supplementary file

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