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The Use of Mass Spectrometry Imaging to Predict Treatment Response of Patient-Derived Xenograft Models of Triple-Negative Breast Cancer

机译:使用质谱成像预测三阴性乳腺癌患者衍生异种移植模型的治疗反应

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摘要

In recent years, mass spectrometry imaging (MSI) has been shown to be a promising technique in oncology. The effective application of MSI, however, is hampered by the complexity of the generated data. Bioinformatic approaches that reduce the complexity of these data are needed for the effective use in a (bio)medical setting. This holds especially for the analysis of tissue microarrays (TMA), which consist of hundreds of small tissue cores. Here we present an approach that combines MSI on tissue microarrays with principal component linear discriminant analysis (PCA-LDA) to predict treatment response. The feasibility of such an approach was evaluated on a set of patient-derived xenograft models of triple-negative breast cancer (TNBC). PCA-LDA was used to classify TNBC tumor tissues based on the proteomic information obtained with matrix-assisted laser desorption ionization (MALDI) MSI from the TMA surface. Classifiers based on two different tissue microarrays from the same tumor models showed overall classification accuracies between 59 and 77%, as determined by cross-validation. Reproducibility tests revealed that the two models were similar. A clear effect of intratumor heterogeneity of the classification scores was observed. These results demonstrate that the analysis of MALDI-MSI data by PCA-LDA is a valuable approach for the classification of treatment response and tumor heterogeneity in breast cancer.
机译:近年来,质谱成像(MSI)已被证明是肿瘤学中的一项有前途的技术。但是,MSI的有效应用受到所生成数据的复杂性的阻碍。为了在(生物)医学环境中有效使用,需要降低这些数据复杂性的生物信息学方法。这尤其适用于组织微阵列(TMA)的分析,该组织由数百个小组织核心组成。在这里,我们提出一种结合组织微阵列上的MSI与主成分线性判别分析(PCA-LDA)来预测治疗反应的方法。在一组患者阴性的三阴性乳腺癌(TNBC)异种移植模型上评估了这种方法的可行性。 PCA-LDA用于基于基质辅助激光解吸电离(MALDI)MSI从TMA表面获得的蛋白质组信息,对TNBC肿瘤组织进行分类。根据交叉验证,基于来自相同肿瘤模型的两种不同组织芯片的分类器显示总体分类准确度在59%到77%之间。再现性测试显示这两个模型相似。观察到分类分数在肿瘤内异质性方面有明显效果。这些结果表明,通过PCA-LDA分析MALDI-MSI数据是对乳腺癌的治疗反应和肿瘤异质性进行分类的有价值的方法。

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