Computational Biology Program, Fred Hutchinson Cancer Research Center, Seattle, Washington, United States of America.
Department of Genome Sciences, University of Washington, Seattle, Washington, United States of America.
PLoS Comput Biol. 2022 Nov 28;18(11):e1010723. doi: 10.1371/journal.pcbi.1010723. eCollection 2022 Nov.
Next generation sequencing of B cell receptor (BCR) repertoires has become a ubiquitous tool for understanding the antibody-mediated immune response: it is now common to have large volumes of sequence data coding for both the heavy and light chain subunits of the BCR. However, until the recent development of high throughput methods of preserving heavy/light chain pairing information, these samples contained no explicit information on which heavy chain sequence pairs with which light chain sequence. One of the first steps in analyzing such BCR repertoire samples is grouping sequences into clonally related families, where each stems from a single rearrangement event. Many methods of accomplishing this have been developed, however, none so far has taken full advantage of the newly-available pairing information. This information can dramatically improve clustering performance, especially for the light chain. The light chain has traditionally been challenging for clonal family inference because of its low diversity and consequent abundance of non-clonal families with indistinguishable naive rearrangements. Here we present a method of incorporating this pairing information into the clustering process in order to arrive at a more accurate partition of the data into clonally related families. We also demonstrate two methods of fixing imperfect pairing information, which may allow for simplified sample preparation and increased sequencing depth. Finally, we describe several other improvements to the partis software package.
下一代测序技术(NGS)已经成为理解抗体介导免疫反应的普遍工具:现在通常可以获得大量编码 B 细胞受体(BCR)重链和轻链亚基的序列数据。然而,直到最近高通量方法的发展能够保存重链/轻链配对信息之前,这些样本中没有明确的信息可以说明哪些重链序列与哪些轻链序列配对。分析此类 BCR 库样本的第一步之一是将序列分组为克隆相关的家族,其中每个家族都源自单个重排事件。已经开发了许多实现这一目标的方法,但迄今为止,没有一种方法充分利用了新的配对信息。这些信息可以极大地提高聚类性能,特别是对于轻链。由于轻链的多样性低,并且具有相似的原始重排的非克隆家族数量众多,因此其克隆家族推断一直具有挑战性。在这里,我们提出了一种将这种配对信息纳入聚类过程的方法,以便更准确地将数据划分为克隆相关的家族。我们还展示了两种修复不完美配对信息的方法,这可能允许简化样本制备并增加测序深度。最后,我们描述了 partis 软件包的其他几个改进。