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 against Covid-19.
翻译:B细胞顶部在刺激B细胞方面起着关键作用,触发了主要的免疫反应,从而产生抗体生产,并以记忆细胞的形式建立长期免疫。因此,能够准确预测适当的线性B细胞上部区域将为开发新的蛋白基疫苗铺平道路。了解对预测有多大信心对于获得临床医生对技术的信任也至关重要。在文章中,我们提议在利用MC-DropWeights来预测隐蔽区域时,利用免疫性隐性数据库的数据,在深度学习近似变异的巴伊西亚推断时,用MC-DropWeights来预测隐蔽区域。在将这一数据应用到SARS-COV-2中后,它能够比标准方法更可靠地预测B细胞上部位。这将能够发现针对Covid-19的安全和有效的疫苗候选者。