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Mass Spectrometry Imaging Differentiates Chromophobe Renal Cell Carcinoma and Renal Oncocytoma with High Accuracy

机译:质谱成像以高精度与肾癌细胞癌和肾儿肾细胞瘤区分开来

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Background: While subtyping of the majority of malignant chromophobe renal cell carcinoma (cRCC) and benign renal oncocytoma (rO) is possible on morphology alone, additional histochemical, immunohistochemical or molecular investigations are required in a subset of cases. As currently used histochemical and immunohistological stains as well as genetic aberrations show considerable overlap in both tumors, additional techniques are required for differential diagnostics. Mass spectrometry imaging (MSI) combining the detection of multiple peptides with information about their localization in tissue may be a suitable technology to overcome this diagnostic challenge. Patients and Methods: Formalin-fixed paraffin embedded (FFPE) tissue specimens from cRCC (n=71) and rO (n=64) were analyzed by MSI. Data were classified by linear discriminant analysis (LDA), classification and regression trees (CART), k-nearest neighbors (KNN), support vector machine (SVM), and random forest (RF) algorithm with internal cross validation and visualized by t-distributed stochastic neighbor embedding (t-SNE). Most important variables for classification were identified and the classification algorithm was optimized. Results: Applying different machine learning algorithms on all m/z peaks, classification accuracy between cRCC and rO was 85%, 82%, 84%, 77% and 64% for RF, SVM, KNN, CART and LDA. Under the assumption that a reduction of m/z peaks would lead to improved classification accuracy, m/z peaks were ranked based on their variable importance. Reduction to six most important m/z peaks resulted in improved accuracy of 89%, 85%, 85% and 85% for RF, SVM, KNN, and LDA and remained at the level of 77% for CART. t-SNE showed clear separation of cRCC and rO after algorithm improvement. Conclusion: In summary, we acquired MSI data on FFPE tissue specimens of cRCC and rO, performed classification and detected most relevant biomarkers for the differential diagnosis of both diseases. MSI data might be a useful adjunct method in the differential diagnosis of cRCC and rO.? The author(s).
机译:背景:虽然大多数恶性发球肾细胞癌(CRCC)和良性肾心细胞瘤(RO)的亚型可以单独进行,但在一种情况下需要额外的组织化学,免疫组织化学或分子调查。由于目前使用的组织化学和免疫组织污渍以及遗传像差显示在肿瘤中具有相当大的重叠,差异诊断需要额外的技术。质谱成像(MSI)与其在组织中的本地化的信息中相结合的多种肽的检测可能是克服这种诊断挑战的合适技术。患者和方法:通过MSI分析来自CRCC(n = 71)和RO(n = 64)的福尔马林固定的石蜡包埋(FFPE)组织标本。数据通过线性判别分析(LDA),分类和回归树(推车),K-CORMITY邻居(KNN),支持向量机(SVM)和随机森林(RF)算法进行分类,具有内部交叉验证,并通过T-可视化分布式随机邻居嵌入(T-SNE)。识别出分类的最重要变量,并优化了分类算法。结果:在所有M / Z峰值上应用不同的机器学习算法,CRCC和RO之间的分类精度为RF,SVM,KNN,推车和LDA的85%,82%,84%,77%和64%。在假设M / Z峰值的降低将导致改进的分类精度,M / Z峰基于可变重要性。降低六个最重要的M / Z峰导致RF,SVM,KNN和LDA的提高精度为89%,85%,85%和85%,仍保持在购物车77%的水平。 T-SNE显示出算法改进后CRCC和RO的清晰分离。结论:总之,我们在CRCC和RO的FFPE组织标本上获得了MSI数据,进行了分类,检测到两种疾病的差异诊断的最相关的生物标志物。 MSI数据可能是CRCC和RO差异诊断中的有用附件方法。作者。
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