The Lung Cancer Autochthonous Model Gene Expression Database Enables Cross-Study Comparisons of the Transcriptomic Landscapes Across Mouse Models

肺癌 数据库 计算生物学 癌症 转录组 生物 基因表达 基因 生物信息学 计算机科学 医学 遗传学 肿瘤科
作者
Ling Cai,Fangjiang Wu,Qinbo Zhou,Ying Gao,Bo Yao,Ralph J. DeBerardinis,George Acquaah‐Mensah,Vassilis Aidinis,Jennifer Beane,Sandip Biswal,Ting Chen,Carla P. Concepcion-Crisol,Barbara M. Grüner,Deshui Jia,Robert A. Jones,Jonathan M. Kurie,Min Gyu Lee,Per Lindahl,Yonathan Lissanu,Corina Lorz
出处
期刊:Cancer Research [American Association for Cancer Research]
卷期号:: OF1-OF15
标识
DOI:10.1158/0008-5472.can-24-1607
摘要

Abstract Lung cancer, the leading cause of cancer mortality, exhibits diverse histologic 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. In this study, we established the Lung Cancer Autochthonous Model Gene Expression Database (LCAMGDB), an extensive repository of 1,354 samples from 77 transcriptomic datasets covering 974 samples from genetically engineered mouse models (GEMM), 368 samples from carcinogen-induced models, and 12 samples from a spontaneous model. Meticulous curation and collaboration with data depositors produced a robust and comprehensive database, enhancing the fidelity of the genetic landscape it depicts. The LCAMGDB aligned 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 the GEMMs. To accompany this resource, a web application was developed that offers researchers intuitive tools for in-depth gene expression analysis. With standardized reprocessing of gene expression data, the LCAMGDB 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. Significance: The Lung Cancer Autochthonous Model Gene Expression Database (LCAMGDB) provides a comprehensive and accessible resource for the research community to investigate lung cancer biology in mouse models.

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