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Uncertainty Estimation in SARS-CoV-2 B-Cell Epitope Prediction for Vaccine Development

机译:SARS-COV-2 B细胞表位预测对疫苗发育的不确定性估算

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B-cell epitopes play a key role in stimulating B-cells, triggering the primary immune response which results in antibody production as well as the establishment of long-term immunity in the form of memory cells. Consequently, being able to accurately predict appropriate linear B-cell epitope regions would pave the way for the development of new protein-based vaccines. Knowing how much confidence there is in a prediction is also essential for gaining clinicians' trust in the technology. In this article, we propose a calibrated uncertainty estimation in deep learning to approximate variational Bayesian inference using MC-DropWeights to predict epitope regions using the data from the immune epitope database. Having applied this onto SARS-CoV-2, it can more reliably predict B-cell epitopes than standard methods. This will be able to identify safe and effective vaccine candidates to combat Covid-19.
机译:B细胞表位在刺激B细胞中发挥关键作用,引发导致抗体产生的主要免疫应答以及以记忆细胞的形式建立长期免疫。 因此,能够准确地预测适当的线性B细胞表位区域将为新的基于蛋白质的疫苗铺平道路。 知道在预测中有多少信心对于获得临床医生对该技术的信任来说也是必不可少的。 在本文中,我们提出了深入学习的校准不确定性估计,以使用MC-DRAPLUIGHTS使用来自免疫表位数据库的数据来预测表位区域来估计变形贝叶斯推断。 将其施加到SARS-COV-2上,它可以比标准方法更可靠地预测B细胞表位。 这将能够识别安全有效的疫苗候选人来打击Covid-19。

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