Cordero Hernandez Yovany, Boskamp Tobias, Casadonte Rita, Hauberg-Lotte Lena, Oetjen Janina, Lachmund Delf, Peter Annette, Trede Dennis, Kriegsmann Katharina, Kriegsmann Mark, Kriegsmann Jörg, Maass Peter
Center for Industrial Mathematics, University of Bremen, Bremen, 28359, Germany.
Department for Cell Biology, University of Bremen, Bremen, 28359, Germany.
Proteomics Clin Appl. 2019 Jan;13(1):e1700168. doi: 10.1002/prca.201700168. Epub 2018 Dec 19.
To develop a mass spectrometry imaging (MSI) based workflow for extracting m/z values related to putative protein biomarkers and using these for reliable tumor classification.
Given a list of putative breast and ovarian cancer biomarker proteins, a set of related m/z values are extracted from heterogeneous MSI datasets derived from formalin-fixed paraffin-embedded tissue material. Based on these features, a linear discriminant analysis classification model is trained to discriminate the two tumor types.
It is shown that the discriminative power of classification models based on the extracted features is increased compared to the automatic training approach, especially when classifiers are applied to spectral data acquired under different conditions (instrument, preparation, laboratory).
Robust classification models not confounded by technical variation between MSI measurements are obtained. This supports the assumption that the classification of the respective tumor types is based on biological rather than technical differences, and that the selected features are related to the proteomic profiles of the tumor types under consideration.
开发一种基于质谱成像(MSI)的工作流程,用于提取与假定蛋白质生物标志物相关的质荷比(m/z)值,并将其用于可靠的肿瘤分类。
给定一份假定的乳腺癌和卵巢癌生物标志物蛋白质列表,从源自福尔马林固定石蜡包埋组织材料的异质MSI数据集中提取一组相关的m/z值。基于这些特征,训练一个线性判别分析分类模型以区分这两种肿瘤类型。
结果表明,与自动训练方法相比,基于提取特征的分类模型的判别能力有所提高,尤其是当分类器应用于在不同条件(仪器、制备、实验室)下获取的光谱数据时。
获得了不受MSI测量之间技术差异混淆的稳健分类模型。这支持了这样一种假设,即各自肿瘤类型的分类基于生物学差异而非技术差异,并且所选特征与所考虑肿瘤类型的蛋白质组学特征相关。