Highly Repeatable Tissue Proteomics for Kidney Transplant Pathology: Technical and Biological Validation of Protein Analysis using LC-MS/MS

Rianne Hofstraat, Kristina Marx, Renata Blatnik, Nike Claessen, Aleksandra Chojnacka, Hessel Peters-Sengers, Sandrine Florquin, Jesper Kers, Garry Corthals
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Abstract

Accurate pathological assessment of tissue samples is key for diagnosis and optimal treatment decisions. Traditional pathology techniques suffer from subjectivity resulting in inter-observer variability, and limitations in identifying subtle molecular changes. Omics approaches provide both molecular evidence and unbiased classification, which increases the quality and reliability of final tissue assessment. Here, we focus on mass spectrometry (MS)-based proteomics as a method to reveal biopsy tissue differences. For MS data to be useful, molecular information collected from formalin fixed paraffin embedding (FFPE) biopsy tissues needs to be consistent and quantitatively accurate and contain sufficient clinically relevant molecular information. Therefore, we developed an MS-based workflow and assessed the analytical repeatability on 36 kidney biopsies, ultimately analysing molecular differences and similarities of over 5000 proteins per biopsy. Additional 301 transplant biopsies were analysed to understand other physical parameters including effects of tissue size, standing time in autosampler, and the effect on clinical validation. MS data were acquired using Data-Independent Acquisition (DIA) which provides gigabytes of data per sample in the form of high proteome (and genome) representation, at exquisitely high quantitative accuracy. The FFPE-based method optimised here provides a coefficient of variation below 20%, analysing more than 5000 proteins per sample in parallel. We also observed that tissue thickness does affect the outcome of the data quality: 5 μm sections show more variation in the same sample than 10 μm sections. Notably, our data reveals an excellent agreement for the relative abundance of known protein biomarkers with kidney transplantation lesion scores used in clinical pathological diagnostics. The findings presented here demonstrate the ease, speed, and robustness of the MS-based method, where a wealth of molecular data from minute tissue sections can be used to assist and expand pathology, and possibly reduce the inter-observer variability.
用于肾移植病理学的高重复性组织蛋白质组学:使用 LC-MS/MS 进行蛋白质分析的技术和生物学验证
对组织样本进行准确的病理评估是诊断和做出最佳治疗决定的关键。传统的病理学技术存在主观性,导致观察者之间存在差异,而且在识别微妙的分子变化方面存在局限性。Omics 方法可提供分子证据和无偏见的分类,从而提高最终组织评估的质量和可靠性。在此,我们重点介绍基于质谱(MS)的蛋白质组学,将其作为揭示活检组织差异的一种方法。要使质谱数据发挥作用,从福尔马林固定石蜡包埋(FFPE)活检组织中收集的分子信息必须具有一致性和定量准确性,并包含足够的临床相关分子信息。因此,我们开发了基于 MS 的工作流程,并评估了 36 例肾脏活检组织的分析重复性,最终分析了每例活检组织中超过 5000 个蛋白质的分子差异和相似性。另外还分析了 301 例移植活检样本,以了解其他物理参数,包括组织大小、在自动进样器中的停留时间以及对临床验证的影响。质谱数据是利用数据独立采集(DIA)技术获得的,该技术能以极高的定量准确性为每个样本提供千兆字节的高蛋白质组(和基因组)数据。在此优化的基于 FFPE 的方法可提供低于 20% 的变异系数,每个样本可同时分析超过 5000 个蛋白质。我们还观察到,组织厚度确实会影响数据质量的结果:在同一样本中,5 微米切片比 10 微米切片显示出更大的差异。值得注意的是,我们的数据显示,已知蛋白质生物标记物的相对丰度与临床病理诊断中使用的肾移植病变评分非常一致。本文的研究结果证明了基于 MS 方法的简便性、快速性和稳健性,来自微小组织切片的大量分子数据可用于辅助和扩展病理学,并有可能降低观察者之间的变异性。
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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