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一个肺癌小鼠模型数据库。

A Lung Cancer Mouse Model Database.

作者信息

Cai Ling, Gao Ying, DeBerardinis Ralph J, Acquaah-Mensah George, Aidinis Vassilis, Beane Jennifer E, Biswal Shyam, Chen Ting, Concepcion-Crisol Carla P, Grüner Barbara M, Jia Deshui, Jones Robert, Kurie Jonathan M, Lee Min Gyu, Lindahl Per, Lissanu Yonathan, Lorz Lopez Maria Corina, Martinelli Rosanna, Mazur Pawel K, Mazzilli Sarah A, Mii Shinji, Moll Herwig, Moorehead Roger, Morrisey Edward E, Ng Sheng Rong, Oser Matthew G, Pandiri Arun R, Powell Charles A, Ramadori Giorgio, Santos Lafuente Mirentxu, Snyder Eric, Sotillo Rocio, Su Kang-Yi, Taki Tetsuro, Taparra Kekoa, Xia Yifeng, van Veen Ed, Winslow Monte M, Xiao Guanghua, Rudin Charles M, Oliver Trudy G, Xie Yang, Minna John D

出版信息

bioRxiv. 2024 May 14:2024.02.28.582577. doi: 10.1101/2024.02.28.582577.

Abstract

Lung cancer, the leading cause of cancer mortality, exhibits diverse histological subtypes and genetic complexities. Numerous preclinical mouse models have been developed to study lung cancer, but data from these models are disparate, siloed, and difficult to compare in a centralized fashion. Here we established the Lung Cancer Mouse Model Database (LCMMDB), an extensive repository of 1,354 samples from 77 transcriptomic datasets covering 974 samples from genetically engineered mouse models (GEMMs), 368 samples from carcinogen-induced models, and 12 samples from a spontaneous model. Meticulous curation and collaboration with data depositors have produced a robust and comprehensive database, enhancing the fidelity of the genetic landscape it depicts. The LCMMDB aligns 859 tumors from GEMMs with human lung cancer mutations, enabling comparative analysis and revealing a pressing need to broaden the diversity of genetic aberrations modeled in GEMMs. Accompanying this resource, we developed a web application that offers researchers intuitive tools for in-depth gene expression analysis. With standardized reprocessing of gene expression data, the LCMMDB serves as a powerful platform for cross-study comparison and lays the groundwork for future research, aiming to bridge the gap between mouse models and human lung cancer for improved translational relevance.

摘要

肺癌是癌症死亡的主要原因,具有多种组织学亚型和基因复杂性。已经开发了许多临床前小鼠模型来研究肺癌,但这些模型的数据分散、孤立,难以以集中的方式进行比较。在这里,我们建立了肺癌小鼠模型数据库(LCMMDB),这是一个广泛的存储库,包含来自77个转录组数据集的1354个样本,涵盖来自基因工程小鼠模型(GEMMs)的974个样本、来自致癌物诱导模型的368个样本和来自自发模型的12个样本。经过精心策划并与数据存储者合作,生成了一个强大而全面的数据库,提高了其所描绘的基因图谱的保真度。LCMMDB将来自GEMMs的859个肿瘤与人类肺癌突变进行比对,能够进行比较分析,并揭示了迫切需要扩大GEMMs中建模的基因畸变的多样性。伴随这一资源,我们开发了一个网络应用程序,为研究人员提供了用于深入基因表达分析的直观工具。通过对基因表达数据进行标准化的重新处理,LCMMDB成为跨研究比较的强大平台,并为未来的研究奠定基础,旨在弥合小鼠模型与人类肺癌之间的差距,以提高转化相关性。

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A Lung Cancer Mouse Model Database.一个肺癌小鼠模型数据库。
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