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肺神经内分泌肿瘤的分子图谱。

A molecular map of lung neuroendocrine neoplasms.

机构信息

Section of Genetics, International Agency for Research on Cancer (IARC-WHO), 150 cours Albert Thomas, 69372 Lyon CEDEX 08, France.

Section of Mechanisms of Carcinogenesis, International Agency for Research on Cancer (IARC-WHO), 150 cours Albert Thomas, 69372 Lyon CEDEX 08, France.

出版信息

Gigascience. 2020 Oct 30;9(11). doi: 10.1093/gigascience/giaa112.

Abstract

BACKGROUND

Lung neuroendocrine neoplasms (LNENs) are rare solid cancers, with most genomic studies including a limited number of samples. Recently, generating the first multi-omic dataset for atypical pulmonary carcinoids and the first methylation dataset for large-cell neuroendocrine carcinomas led us to the discovery of clinically relevant molecular groups, as well as a new entity of pulmonary carcinoids (supra-carcinoids).

RESULTS

To promote the integration of LNENs molecular data, we provide here detailed information on data generation and quality control for whole-genome/exome sequencing, RNA sequencing, and EPIC 850K methylation arrays for a total of 84 patients with LNENs. We integrate the transcriptomic data with other previously published data and generate the first comprehensive molecular map of LNENs using the Uniform Manifold Approximation and Projection (UMAP) dimension reduction technique. We show that this map captures the main biological findings of previous studies and can be used as reference to integrate datasets for which RNA sequencing is available. The generated map can be interactively explored and interrogated on the UCSC TumorMap portal (https://tumormap.ucsc.edu/?p=RCG_lungNENomics/LNEN). The data, source code, and compute environments used to generate and evaluate the map as well as the raw data are available, respectively, in a Nextjournal interactive notebook (https://nextjournal.com/rarecancersgenomics/a-molecular-map-of-lung-neuroendocrine-neoplasms/) and at the EMBL-EBI European Genome-phenome Archive and Gene Expression Omnibus data repositories.

CONCLUSIONS

We provide data and all resources needed to integrate them with future LNENs transcriptomic studies, allowing meaningful conclusions to be drawn that will eventually lead to a better understanding of this rare understudied disease.

摘要

背景

肺神经内分泌肿瘤(Lung neuroendocrine neoplasms,LNENs)是罕见的实体癌症,大多数基因组研究都包含数量有限的样本。最近,我们生成了首个非典型类癌和大细胞神经内分泌癌的多组学数据集,以及首个用于大细胞神经内分泌癌的甲基化数据集,从而发现了具有临床意义的分子亚群,以及一个新的肺类癌实体(类癌前肿瘤)。

结果

为了促进 LNENs 分子数据的整合,我们在此提供了 84 例 LNENs 患者全基因组/外显子组测序、RNA 测序和 EPIC 850K 甲基化阵列的详细数据生成和质量控制信息。我们将转录组数据与其他先前发表的数据整合,并使用统一流形逼近和投影(Uniform Manifold Approximation and Projection,UMAP)降维技术生成 LNENs 的首个综合分子图谱。我们表明,该图谱捕获了先前研究的主要生物学发现,并可用于整合具有 RNA 测序数据的数据集。生成的图谱可在 UCSC TumorMap 门户(https://tumormap.ucsc.edu/?p=RCG_lungNENomics/LNEN)上进行交互式探索和查询。用于生成和评估图谱的以及原始数据的数据、源代码和计算环境分别可在 Nextjournal 交互式笔记本(https://nextjournal.com/rarecancersgenomics/a-molecular-map-of-lung-neuroendocrine-neoplasms/)和 EMBL-EBI 欧洲基因组-表型档案和基因表达综合数据库中获得。

结论

我们提供了数据和所有必要的资源,以将其与未来的 LNENs 转录组学研究进行整合,从而得出有意义的结论,最终将有助于更好地理解这种罕见的研究不足的疾病。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/151f/7596803/922f7e42a2fc/giaa112fig1.jpg

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