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肾细胞癌中癌症驱动蛋白-蛋白相互作用的计算分析。

Computational analysis of protein-protein interactions of cancer drivers in renal cell carcinoma.

机构信息

Eugene McDermott Center for Human Growth and Development, University of Texas Southwestern Medical Center, Dallas, TX, USA.

Department of Biophysics, University of Texas Southwestern Medical Center, Dallas, TX, USA.

出版信息

FEBS Open Bio. 2024 Jan;14(1):112-126. doi: 10.1002/2211-5463.13732. Epub 2023 Nov 27.

Abstract

Renal cell carcinoma (RCC) is the most common type of kidney cancer with rising cases in recent years. Extensive research has identified various cancer driver proteins associated with different subtypes of RCC. Most RCC drivers are encoded by tumor suppressor genes and exhibit enrichment in functional categories such as protein degradation, chromatin remodeling, and transcription. To further our understanding of RCC, we utilized powerful deep-learning methods based on AlphaFold to predict protein-protein interactions (PPIs) involving RCC drivers. We predicted high-confidence complexes formed by various RCC drivers, including TCEB1, KMT2C/D and KDM6A of the COMPASS-related complexes, TSC1 of the MTOR pathway, and TRRAP. These predictions provide valuable structural insights into the interaction interfaces, some of which are promising targets for cancer drug design, such as the NRF2-MAFK interface. Cancer somatic missense mutations from large datasets of genome sequencing of RCCs were mapped to the interfaces of predicted and experimental structures of PPIs involving RCC drivers, and their effects on the binding affinity were evaluated. We observed more than 100 cancer somatic mutations affecting the binding affinity of complexes formed by key RCC drivers such as VHL and TCEB1. These findings emphasize the importance of these mutations in RCC pathogenesis and potentially offer new avenues for targeted therapies.

摘要

肾细胞癌 (RCC) 是最常见的肾癌类型,近年来发病率呈上升趋势。广泛的研究已经确定了与不同 RCC 亚型相关的各种癌症驱动蛋白。大多数 RCC 驱动蛋白由肿瘤抑制基因编码,并在功能类别中富集,如蛋白质降解、染色质重塑和转录。为了进一步了解 RCC,我们利用基于 AlphaFold 的强大深度学习方法来预测涉及 RCC 驱动蛋白的蛋白质-蛋白质相互作用 (PPI)。我们预测了各种 RCC 驱动蛋白形成的高可信度复合物,包括 COMPASS 相关复合物中的 TCEB1、KMT2C/D 和 KDM6A、MTOR 途径中的 TSC1 和 TRRAP。这些预测为相互作用界面提供了有价值的结构见解,其中一些是癌症药物设计的有前途的靶点,例如 NRF2-MAFK 界面。从 RCC 基因组测序的大型数据集映射癌症体细胞错义突变到涉及 RCC 驱动蛋白的预测和实验 PPI 结构的界面,并评估它们对结合亲和力的影响。我们观察到超过 100 个癌症体细胞突变影响了 VHL 和 TCEB1 等关键 RCC 驱动蛋白形成的复合物的结合亲和力。这些发现强调了这些突变在 RCC 发病机制中的重要性,并为靶向治疗提供了新的途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8621/10761929/bac51c2ca0e5/FEB4-14-112-g004.jpg

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