Abstract 205: Astraea: A first-in-class biomarker database integrating genomic, transcriptomic, and tumor microenvironment properties for precision oncology

A. Gafurov, I. Mamichev, E. Vasileva, G. Sagaradze, Maria S Shitova, G. Nos, N. Kotlov, Jessica H. Brown, A. Bagaev, N. Fowler
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引用次数: 0

Abstract

Along with advances in precision oncology, checkpoint inhibitors and targeted therapies have substantially improved outcomes for cancer patients. However, many patients still demonstrate a limited response to these therapies due to many biological factors, including genetic heterogeneity, unique molecular profiles, and the complex features of the tumor microenvironment (TME). Therefore, the selection of personalized effective treatment requires a comprehensive source of therapy response biomarkers, enabling precision medicine strategies for therapy selection. Here, we present a first-in-class automated biomarker analysis database, Astraea, that comprehensively describes genomic, transcriptomic, and TME biomarkers across a wide array of cancers. Automated daily literature reviews of the therapeutic efficacy of biomarkers provided the foundation of Astraea. To date, the database contains a total of 4,116 published biomarkers associated with genomic events, the TME, and targeted proteomic, transcriptomic, and gene signatures. To ensure accuracy of the final inclusion of biomarkers in the database, a multi-step quality control process was implemented that includes an automatic validation step and manual review. After selection, each biomarker is organized into a unique profile in the database which includes assay specifics, the biomarker-associated cancer type, therapy, primary study design, and statistical analysis. Data available from The Cancer Genome Atlas (TCGA) was then used to aggregate interrelated biomarkers into 25 biologically meaningful clusters, with the most prominent clusters identified as components of the TME (i.e., cytotoxic T cells, B cells, fibroblasts) and proliferation rate signatures. The aggregation enabled an easier interpretation and understanding of potentially actionable molecular findings as well as insight into unique neoplastic drivers. To apply Astraea in a clinical setting, we then developed a platform to match therapies to patients based on 1) identified biomarkers prioritized according to level of evidence, including both number of associated publications, statistical strength of individual studies, and cohort size and 2) therapies scored according to supporting biomarkers and associated relevance (resistance/response). By providing comprehensive, up-to-date biomarker identification and matching through utilization of a large automated multi-platform database, this technique aids in the identification and application of biomarkers unique to each patient. Taken together, our results show that Astraea, accompanied by a multi-step personalized cancer therapy-matching platform, could improve precision medicine strategies and help optimize therapeutic decisions. Citation Format: Azamat Gafurov, Ivan Mamichev, Elena V. Vasileva, Georgy D. Sagaradze, Maria S. Shitova, Grigorii Nos, Nikita Kotlov, Jessica H. Brown, Alexander Bagaev, Nathan Fowler. Astraea: A first-in-class biomarker database integrating genomic, transcriptomic, and tumor microenvironment properties for precision oncology [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. Philadelphia (PA): AACR; Cancer Res 2021;81(13_Suppl):Abstract nr 205.
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Astraea:集成基因组学、转录组学和肿瘤微环境特性的一流生物标志物数据库,用于精确肿瘤学
随着精确肿瘤学的进步,检查点抑制剂和靶向治疗已经大大改善了癌症患者的预后。然而,由于许多生物学因素,包括遗传异质性、独特的分子谱和肿瘤微环境(TME)的复杂特征,许多患者对这些治疗仍然表现出有限的反应。因此,选择个性化的有效治疗需要一个全面的治疗反应生物标志物来源,从而实现治疗选择的精准医学策略。在这里,我们提出了一个一流的自动化生物标志物分析数据库,Astraea,全面描述基因组,转录组学和TME生物标志物在广泛的癌症阵列。生物标志物治疗疗效的每日自动文献综述为Astraea提供了基础。迄今为止,该数据库共包含4116个已发表的与基因组事件、TME、靶向蛋白质组学、转录组学和基因特征相关的生物标志物。为了确保最终纳入数据库的生物标记物的准确性,实施了多步骤质量控制过程,包括自动验证步骤和人工审查。在选择之后,每个生物标志物在数据库中被组织成一个独特的档案,其中包括分析细节,生物标志物相关的癌症类型,治疗,主要研究设计和统计分析。然后使用来自癌症基因组图谱(TCGA)的数据将相关的生物标志物聚集成25个具有生物学意义的簇,其中最突出的簇被确定为TME的组成部分(即细胞毒性T细胞、B细胞、成纤维细胞)和增殖率特征。这种聚合可以更容易地解释和理解潜在的可操作的分子发现,以及洞察独特的肿瘤驱动因素。为了在临床环境中应用Astraea,我们开发了一个平台,根据以下因素为患者匹配治疗:1)根据证据水平确定优先级的生物标志物,包括相关出版物的数量、个体研究的统计强度和队列大小;2)根据支持生物标志物和相关相关性(耐药性/反应)对治疗进行评分。通过利用大型自动化多平台数据库提供全面、最新的生物标志物识别和匹配,该技术有助于识别和应用每个患者独特的生物标志物。综上所述,我们的研究结果表明,astrea与多步骤个性化癌症治疗匹配平台相结合,可以改善精准医疗策略,帮助优化治疗决策。引文格式:Azamat Gafurov, Ivan Mamichev, Elena V. Vasileva, Georgy D. Sagaradze, Maria S. Shitova, Grigorii Nos, Nikita Kotlov, Jessica H. Brown, Alexander Bagaev, Nathan Fowler。Astraea:集成基因组、转录组学和肿瘤微环境特性的一流生物标志物数据库,用于精确肿瘤学[摘要]。见:美国癌症研究协会2021年年会论文集;2021年4月10日至15日和5月17日至21日。费城(PA): AACR;癌症杂志,2021;81(13 -增刊):摘要第205期。
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