| Literature DB >> 35318324 |
Kathrin Leppek1, Gun Woo Byeon1, Wipapat Kladwang2, Hannah K Wayment-Steele3, Craig H Kerr1, Adele F Xu1, Do Soon Kim2, Ved V Topkar4, Christian Choe5, Daphna Rothschild1, Gerald C Tiu1, Roger Wellington-Oguri6, Kotaro Fujii1, Eesha Sharma2, Andrew M Watkins2, John J Nicol6, Jonathan Romano6,7, Bojan Tunguz2,8, Fernando Diaz9, Hui Cai9, Pengbo Guo9, Jiewei Wu9, Fanyu Meng9, Shuai Shi9, Eterna Participants6, Philip R Dormitzer9,10, Alicia Solórzano9, Maria Barna11, Rhiju Das12,13,14.
Abstract
Therapeutic mRNAs and vaccines are being developed for a broad range of human diseases, including COVID-19. However, their optimization is hindered by mRNA instability and inefficient protein expression. Here, we describe design principles that overcome these barriers. We develop an RNA sequencing-based platform called PERSIST-seq to systematically delineate in-cell mRNA stability, ribosome load, as well as in-solution stability of a library of diverse mRNAs. We find that, surprisingly, in-cell stability is a greater driver of protein output than high ribosome load. We further introduce a method called In-line-seq, applied to thousands of diverse RNAs, that reveals sequence and structure-based rules for mitigating hydrolytic degradation. Our findings show that highly structured "superfolder" mRNAs can be designed to improve both stability and expression with further enhancement through pseudouridine nucleoside modification. Together, our study demonstrates simultaneous improvement of mRNA stability and protein expression and provides a computational-experimental platform for the enhancement of mRNA medicines.Entities:
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Year: 2022 PMID: 35318324 PMCID: PMC8940940 DOI: 10.1038/s41467-022-28776-w
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 17.694