AI-Assisted High-Throughput Tissue Microarray Workflow.

IF 2.3 Q3 BIOCHEMICAL RESEARCH METHODS
Konrad Kurowski, Sylvia Timme, Melanie Christine Föll, Clara Backhaus, Philipp Anton Holzner, Bertram Bengsch, Oliver Schilling, Martin Werner, Peter Bronsert
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引用次数: 0

Abstract

Immunohistochemical (IHC) studies of formalin-fixed paraffin-embedded (FFPE) samples are a gold standard in oncology for tumor characterization, and the identification of prognostic and predictive markers. However, despite the abundance of archived FFPE samples, their research use is limited due to the labor-intensive nature of IHC on large cohorts. This study aimed to create a high-throughput workflow using modern technologies to facilitate IHC biomarker studies on large patient groups. Semiautomatic constructed tissue microarrays (TMAs) were created for two tumor patient cohorts and IHC stained for seven antibodies (ABs). AB expression in the tumor and surrounding stroma was quantified using the AI-supported image analysis software QuPath. The data were correlated with clinicopathological information using an R-script, all results were automatically compiled into formatted reports. By minimizing labor time to 7.7%-compared to whole-slide studies-the established workflow significantly reduced human and material resource consumption. It successfully correlated AB expression with overall patient survival and additional clinicopathological data, providing publication-ready figures and tables. The AI-assisted high-throughput TMA workflow, validated on two patient cohorts, streamlines modern histopathological research by offering cost and time efficiency compared to traditional whole-slide studies. It maintains research quality and preserves patient tissue while significantly reducing material and human resources, making it ideal for high-throughput research centers and collaborations.

人工智能辅助高通量组织微阵列工作流程。
福尔马林固定石蜡包埋(FFPE)样本的免疫组织化学(IHC)研究是肿瘤表征、预后和预测标志物鉴定的金标准。然而,尽管存档的FFPE样本丰富,但由于在大型队列中进行IHC的劳动密集型性质,它们的研究使用受到限制。本研究旨在利用现代技术创建高通量工作流程,以促进IHC生物标志物在大型患者群体中的研究。为两个肿瘤患者队列创建了半自动构建组织微阵列(TMAs),并对7种抗体(ABs)进行了免疫组化染色。使用ai支持的图像分析软件QuPath量化肿瘤及周围基质中AB的表达。使用R-script将数据与临床病理信息进行关联,所有结果自动编译成格式化报告。通过将劳动时间减少到7.7%(与整片研究相比),既定的工作流程显着减少了人力和物力消耗。它成功地将AB表达与患者总体生存率和其他临床病理数据联系起来,提供了可发表的数据和表格。人工智能辅助的高通量TMA工作流程在两个患者队列中进行了验证,与传统的全切片研究相比,通过提供成本和时间效率,简化了现代组织病理学研究。它保持了研究质量并保存了患者组织,同时显着减少了材料和人力资源,使其成为高通量研究中心和合作的理想选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Methods and Protocols
Methods and Protocols Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
3.60
自引率
0.00%
发文量
85
审稿时长
8 weeks
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