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Dana-Farber repository for machine learning in immunology.

机译:Dana-Farber知识库,用于免疫学中的机器学习。

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摘要

The immune system is characterized by high combinatorial complexity that necessitates the use of specialized computational tools for analysis of immunological data. Machine learning (ML) algorithms are used in combination with classical experimentation for the selection of vaccine targets and in computational simulations that reduce the number of necessary experiments. The development of ML algorithms requires standardized data sets, consistent measurement methods, and uniform scales. To bridge the gap between the immunology community and the ML community, we designed a repository for machine learning in immunology named Dana-Farber Repository for Machine Learning in Immunology (DFRMLI). This repository provides standardized data sets of HLA-binding peptides with all binding affinities mapped onto a common scale. It also provides a list of experimentally validated naturally processed T cell epitopes derived from tumor or virus antigens. The DFRMLI data were preprocessed and ensure consistency, comparability, detailed descriptions, and statistically meaningful sample sizes for peptides that bind to various HLA molecules. The repository is accessible at http://bio.dfci.harvard.edu/DFRMLI/.
机译:免疫系统的特点是组合复杂性高,因此必须使用专门的计算工具来分析免疫学数据。机器学习(ML)算法与经典实验结合使用以选择疫苗目标,并在计算模拟中减少了必要的实验数量。 ML算法的开发需要标准化的数据集,一致的测量方法和统一的尺度。为了弥合免疫学社区和ML社区之间的鸿沟,我们设计了一个免疫学机器学习存储库,名为Dana-Farber免疫学机器学习存储库(DFRMLI)。该储存库提供了HLA结合肽的标准化数据集,所有结合亲和力都映射到一个通用尺度上。它还提供了从肿瘤或病毒抗原衍生的经过实验验证的天然加工T细胞表位的列表。 DFRMLI数据经过预处理,可确保与各种HLA分子结合的肽段的一致性,可比性,详细说明和具有统计学意义的样本量。可从http://bio.dfci.harvard.edu/DFRMLI/访问该存储库。

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