Cancer Structural Biology, Center for Autophagy, Recycling and Disease (CARD), Danish Cancer Society Research Center, Copenhagen, Denmark.
Melanoma Research Team, Center for Autophagy, Recycling and Disease (CARD), Danish Cancer Society Research Center, Copenhagen, Denmark.
Cell Death Dis. 2022 Oct 15;13(10):872. doi: 10.1038/s41419-022-05318-2.
Cancer genomics and cancer mutation databases have made an available wealth of information about missense mutations found in cancer patient samples. Contextualizing by means of annotation and predicting the effect of amino acid change help identify which ones are more likely to have a pathogenic impact. Those can be validated by means of experimental approaches that assess the impact of protein mutations on the cellular functions or their tumorigenic potential. Here, we propose the integrative bioinformatic approach Cancermuts, implemented as a Python package. Cancermuts is able to gather known missense cancer mutations from databases such as cBioPortal and COSMIC, and annotate them with the pathogenicity score REVEL as well as information on their source. It is also able to add annotations about the protein context these mutations are found in, such as post-translational modification sites, structured/unstructured regions, presence of short linear motifs, and more. We applied Cancermuts to the intrinsically disordered protein AMBRA1, a key regulator of many cellular processes frequently deregulated in cancer. By these means, we classified mutations of AMBRA1 in melanoma, where AMBRA1 is highly mutated and displays a tumor-suppressive role. Next, based on REVEL score, position along the sequence, and their local context, we applied cellular and molecular approaches to validate the predicted pathogenicity of a subset of mutations in an in vitro melanoma model. By doing so, we have identified two AMBRA1 mutations which show enhanced tumorigenic potential and are worth further investigation, highlighting the usefulness of the tool. Cancermuts can be used on any protein targets starting from minimal information, and it is available at https://www.github.com/ELELAB/cancermuts as free software.
癌症基因组学和癌症突变数据库为我们提供了大量关于癌症患者样本中发现的错义突变的信息。通过注释和预测氨基酸变化的影响进行语境化处理,可以帮助识别哪些突变更有可能具有致病性。这些可以通过评估蛋白质突变对细胞功能或肿瘤发生潜力的影响的实验方法来验证。在这里,我们提出了一种综合生物信息学方法 Cancermuts,它被实现为一个 Python 包。Cancermuts 能够从 cBioPortal 和 COSMIC 等数据库中收集已知的癌症错义突变,并为它们添加致病性评分 REVEL 以及来源信息的注释。它还能够添加关于这些突变在蛋白质结构中的上下文的注释,例如翻译后修饰位点、结构/非结构区域、短线性基序的存在等。我们将 Cancermuts 应用于内在无序蛋白 AMBRA1,这是许多在癌症中经常失调的细胞过程的关键调节剂。通过这些方法,我们对黑色素瘤中的 AMBRA1 突变进行了分类,在黑色素瘤中,AMBRA1 高度突变并发挥肿瘤抑制作用。接下来,根据 REVEL 评分、序列位置及其局部上下文,我们应用细胞和分子方法来验证在体外黑色素瘤模型中一组突变的预测致病性。通过这样做,我们确定了两个 AMBRA1 突变,它们显示出增强的肿瘤发生潜力,值得进一步研究,突出了该工具的有用性。Cancermuts 可以从最少的信息开始用于任何蛋白质靶标,并且可以在 https://www.github.com/ELELAB/cancermuts 上免费获得。