# Modeling the influence of translation-elongation kinetics on protein structure and function

> **NIH NIH R35** · PENNSYLVANIA STATE UNIVERSITY, THE · 2021 · $31,246

## Abstract

Project Summary
mRNA degradation is an essential process in post-translational gene regulation, and influences protein
expression levels in cells. In S. cerevisea the lifetime of mRNA ranges from 43 sec to 39 min, with a median
half-life of 3.6 min. The molecular factors governing these differential degradation rates has long been an area
of active research. Recently though, clear evidence has emerged that the codon optimality correlates with half-
lives. At a mechanistic level, the emerging perspective is that some transcripts are translated quickly, and
some slowly, and that transcripts in which ribosomes end up forming queues, much like a traffic jam of cars on
a highway, are recognized by ubiquitin ligases such as Hel2 that trigger the RQC pathway to promote mRNA
degradation. There are two major gaps in this field. The first is the capability to predict mRNA half-lives
accurately from mRNA sequence features. The second is understanding at the molecular level how the
distribution of codon translation speeds along a transcript’s coding sequence promote ribosome queues and
hence degradation. In this proposal, a graduate student will combine the PI’s labs expertise in modeling the
kinetics of translation and ribosome traffic with interpretable machine learning techniques to address these two
gaps. In achieving this, the field will be advanced by having both predictive and explanatory models for how
translation speed and codon usage differentially impacts the degradation rates of different mRNAs.
Specifically, our first aim is to build an interpretable machine learning model to identify robust and predictive
features governing mRNA degradation. Our second aim is to explain at the molecular level why these features
influence degradation rates. We will do this in two ways. First, we will use the essential and predictive features
resulting from the interpretable machine learning model to identify potential underlying mechanisms
contributing to degradation. Second, we will simulate the movement of ribosomes on each transcript based on
reported initiation and elongation rates to detect ribosome queues and provide an explanation for differential
degradation rates. Finally, our third aim is to test the predictions coming from the models. For example, do the
models from Aim 1 accurately predict mRNA half-lives when synonymous mutations are introduced? There is
sufficient published data on transcriptome-wide mRNA half-lives on S. cerevisiae to train and test the machine
learning models in Aim 1. Further, we have arranged for a machine learning expert to co-advise the graduate
student on the second aim. This co-advisor is already a collaborator of the PI on other machine learning
projects. Finally, a collaborator who has measured mRNA half-lives will further advise the student on the third
aim. In summary, this training supplement will address cutting edge questions in the molecular biology and
biophysics of mRNA lifetimes and provide the student the opport...

## Key facts

- **NIH application ID:** 10307359
- **Project number:** 3R35GM124818-04S2
- **Recipient organization:** PENNSYLVANIA STATE UNIVERSITY, THE
- **Principal Investigator:** Edward Patrick O'Brien
- **Activity code:** R35 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2021
- **Award amount:** $31,246
- **Award type:** 3
- **Project period:** 2017-08-01 → 2022-07-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10307359

## Citation

> US National Institutes of Health, RePORTER application 10307359, Modeling the influence of translation-elongation kinetics on protein structure and function (3R35GM124818-04S2). Retrieved via AI Analytics 2026-05-24 from https://api.ai-analytics.org/grant/nih/10307359. Licensed CC0.

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