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Machine Learning-based Classification of Diffuse Large B-cell Lymphoma Patients by Their Protein Expression Profiles

机译:基于机器学习的弥散性大B细胞淋巴瘤患者蛋白质表达谱的分类

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摘要

Characterization of tumors at the molecular level has improved our knowledge of cancer causation and progression. Proteomic analysis of their signaling pathways promises to enhance our understanding of cancer aberrations at the functional level, but this requires accurate and robust tools. Here, we develop a state of the art quantitative mass spectrometric pipeline to characterize formalin-fixed paraffin-embedded tissues of patients with closely related subtypes of diffuse large B-cell lymphoma. We combined a super-SILAC approach with label-free quantification (hybrid LFQ) to address situations where the protein is absent in the super-SILAC standard but present in the patient samples. Shotgun proteomic analysis on a quadrupole Orbitrap quantified almost 9,000 tumor proteins in 20 patients. The quantitative accuracy of our approach allowed the segregation of diffuse large B-cell lymphoma patients according to their cell of origin using both their global protein expression patterns and the 55-protein signature obtained previously from patient-derived cell lines (Deeb, S. J., D'Souza, R. C., Cox, J., Schmidt-Supprian, M., and Mann, M. (2012) Mol. Cell. Proteomics 11, 77–89). Expression levels of individual segregation-driving proteins as well as categories such as extracellular matrix proteins behaved consistently with known trends between the subtypes. We used machine learning (support vector machines) to extract candidate proteins with the highest segregating power. A panel of four proteins (PALD1, MME, TNFAIP8, and TBC1D4) is predicted to classify patients with low error rates. Highly ranked proteins from the support vector analysis revealed differential expression of core signaling molecules between the subtypes, elucidating aspects of their pathobiology.
机译:在分子水平上对肿瘤进行表征已提高了我们对癌症成因和进展的了解。蛋白质组学对其信号传导途径的分析有望在功能水平上增强我们对癌症异常的理解,但这需要准确而强大的工具。在这里,我们开发了一种先进的定量质谱分析管道,以表征弥散性大B细胞淋巴瘤亚型密切相关的患者的福尔马林固定石蜡包埋组织。我们将super-SILAC方法与无标记定量(混合LFQ)相结合,以解决super-SILAC标准中不存在但患者样品中存在蛋白质的情况。在四极Orbitrap上进行的gun弹枪蛋白质组学分析对20位患者的近9,000种肿瘤蛋白进行了定量。我们方法的定量准确性允许使用其整体蛋白表达模式和先前从患者衍生的细胞系中获得的55个蛋白标记来根据来源的细胞对弥散性大B细胞淋巴瘤患者进行分离'Souza,RC,Cox,J.,Schmidt-Supprian,M.和Mann,M.(2012)分子细胞蛋白质组学11,77-89)。各个分离驱动蛋白的表达水平以及诸如细胞外基质蛋白等类别的表现与亚型之间的已知趋势一致。我们使用机器学习(支持向量机)来提取具有最高分离能力的候选蛋白质。预测一组四种蛋白质(PALD1,MME,TNFAIP8和TBC1D4)对错误率低的患者进行分类。来自支持载体分析的高排名蛋白质揭示了亚型之间核心信号分子的差异表达,阐明了其病理生物学方面。

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