The 5' untranslated region (5'UTR) plays a crucial regulatory role in messenger RNA (mRNA), with modified 5'UTRs extensively utilized in vaccine production, gene therapy, etc. Nevertheless, manually optimizing 5'UTRs may encounter difficulties in balancing the effects of various cis-elements. Consequently, multiple 5'UTR libraries have been created, and machine learning models have been employed to analyze and predict translation efficiency (TE) and protein expression, providing insights into critical regulatory features. On the one hand, these screening libraries, based on TE and mean ribosome load, struggle to accurately quantify protein expression; on the other hand, a precise method for quantifying 5'UTRs necessitates a significantly costlier library. To resolve this dilemma, we constructed a library utilizing firefly luciferase as the reporter to measure accurate protein expression. In addition, we optimized the library construction method by clustering mRNA sequences to reduce redundant data and minimize the size of the dataset. This dual strategy by increasing accuracy and reducing dataset size was found to be effective in predicting the 5'UTRs from the PC3 cell line.
Machine learning-based analysis of the impact of 5'Â untranslated region on protein expression.
基于机器学习的5'非翻译区对蛋白质表达影响的分析
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作者:Wang Linfeng, Liu Sujia, Huang Jia-Xin, Zhu Haifeng, Li Shuyu, Li Yannan, Chen Sen, Han Jianying, Zhu Yin, Wu Jiahao, Liao Wentao, Zhang Hongmei, Zeng Haiyan, Li Shaoting, Zhao Shuping, Wang Bingwei, Lin Jiaqi, Zeng Ji
| 期刊: | Nucleic Acids Research | 影响因子: | 13.100 |
| 时间: | 2025 | 起止号: | 2025 Sep 5; 53(17):gkaf861 |
| doi: | 10.1093/nar/gkaf861 | 研究方向: | 其它 |
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