Profiling antigen-binding affinity of B cell repertoires in tumors by deep learning predicts immune-checkpoint inhibitor treatment outcomes.

IF 23.5 1区 医学 Q1 ONCOLOGY
Bing Song, Kaiwen Wang, Saiyang Na, Jia Yao, Farjana J Fattah, Alexandra L Martin, Mitchell S von Itzstein, Donghan M Yang, Jialiang Liu, Yaming Xue, Chaoying Liang, Yuzhi Guo, Indu Raman, Chengsong Zhu, Jonathan E Dowell, Jade Homsi, Sawsan Rashdan, Shengjie Yang, Mary E Gwin, Tuoqi Wu, David Hsiehchen, Yvonne Gloria-McCutchen, Catherine Pei-Ju Lu, Prithvi Raj, Xiao-Chen Bai, Jun Wang, Jose Conejo-Garcia, Yang Xie, Junzhou Huang, David E Gerber, Tao Wang
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Abstract

The capability to profile the landscape of antigen-binding affinities of a vast number of antibodies (B cell receptors, BCRs) will provide a powerful tool to reveal biological insights. However, experimental approaches for detecting antibody-antigen interactions are costly and time-consuming and can only achieve low-to-mid throughput. In this work, we developed Cmai (contrastive modeling for antigen-antibody interactions) to address the prediction of binding between antibodies and antigens that can be scaled to high-throughput sequencing data. We devised a biomarker based on the output from Cmai to map the antigen-binding affinities of BCR repertoires. We found that the abundance of tumor antigen-targeting antibodies is predictive of immune-checkpoint inhibitor (ICI) treatment response. We also found that, during immune-related adverse events (irAEs) caused by ICI, humoral immunity is preferentially responsive to intracellular antigens from the organs affected by the irAEs. We used Cmai to construct a BCR-based irAE risk score, which predicted the timing of the occurrence of irAEs.

通过深度学习分析肿瘤中B细胞抗原结合亲和力预测免疫检查点抑制剂治疗结果。
描绘大量抗体(B细胞受体,BCRs)抗原结合亲和力的能力将为揭示生物学见解提供强大的工具。然而,检测抗体-抗原相互作用的实验方法既昂贵又耗时,而且只能达到中低通量。在这项工作中,我们开发了Cmai(抗原-抗体相互作用对比模型)来解决抗体和抗原之间结合的预测,可以扩展到高通量测序数据。我们基于Cmai的输出设计了一个生物标记物来绘制BCR谱的抗原结合亲和力。我们发现肿瘤抗原靶向抗体的丰度可预测免疫检查点抑制剂(ICI)治疗反应。我们还发现,在ICI引起的免疫相关不良事件(irAEs)中,体液免疫优先响应来自受irAEs影响器官的细胞内抗原。我们使用Cmai构建了基于bcr的irAE风险评分,该评分预测了irAE发生的时间。
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来源期刊
Nature cancer
Nature cancer Medicine-Oncology
CiteScore
31.10
自引率
1.80%
发文量
129
期刊介绍: Cancer is a devastating disease responsible for millions of deaths worldwide. However, many of these deaths could be prevented with improved prevention and treatment strategies. To achieve this, it is crucial to focus on accurate diagnosis, effective treatment methods, and understanding the socioeconomic factors that influence cancer rates. Nature Cancer aims to serve as a unique platform for sharing the latest advancements in cancer research across various scientific fields, encompassing life sciences, physical sciences, applied sciences, and social sciences. The journal is particularly interested in fundamental research that enhances our understanding of tumor development and progression, as well as research that translates this knowledge into clinical applications through innovative diagnostic and therapeutic approaches. Additionally, Nature Cancer welcomes clinical studies that inform cancer diagnosis, treatment, and prevention, along with contributions exploring the societal impact of cancer on a global scale. In addition to publishing original research, Nature Cancer will feature Comments, Reviews, News & Views, Features, and Correspondence that hold significant value for the diverse field of cancer research.
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