Department of Chemistry and Center for Analytical Instrumentation Development, Purdue University, West Lafayette, IN 47907, USA.
Anal Bioanal Chem. 2010 Dec;398(7-8):2969-78. doi: 10.1007/s00216-010-4259-6. Epub 2010 Oct 15.
Desorption electrospray ionization (DESI) mass spectrometry (MS) was used in an imaging mode to interrogate the lipid profiles of thin tissue sections of 11 sample pairs of human papillary renal cell carcinoma (RCC) and adjacent normal tissue and nine sample pairs of clear cell RCC and adjacent normal tissue. DESI-MS images showing the spatial distributions of particular glycerophospholipids (GPs) and free fatty acids in the negative ion mode were compared to serial tissue sections stained with hematoxylin and eosin (H&E). Increased absolute intensities as well as changes in relative abundance were seen for particular compounds in the tumor regions of the samples. Multivariate statistical analysis using orthogonal projection to latent structures treated partial least square discriminate analysis (PLS-DA) was used for visualization and classification of the tissue pairs using the full mass spectra as predictors. PLS-DA successfully distinguished tumor from normal tissue for both papillary and clear cell RCC with misclassification rates obtained from the validation set of 14.3% and 7.8%, respectively. It was also used to distinguish papillary and clear cell RCC from each other and from the combined normal tissues with a reasonable misclassification rate of 23%, as determined from the validation set. Overall DESI-MS imaging combined with multivariate statistical analysis shows promise as a molecular pathology technique for diagnosing cancerous and normal tissue on the basis of GP profiles.
解吸电喷雾电离(DESI)质谱(MS)以成像模式用于探测 11 对人乳头状肾细胞癌(RCC)和相邻正常组织以及 9 对透明细胞 RCC 和相邻正常组织的薄组织切片的脂质谱。比较了负离子模式下特定甘油磷脂(GP)和游离脂肪酸的 DESI-MS 图像与用苏木精和伊红(H&E)染色的连续组织切片。在样品的肿瘤区域中,观察到特定化合物的绝对强度增加以及相对丰度的变化。使用正交投影到潜在结构的多元统计分析(PLS-DA)使用全质谱作为预测因子,用于可视化和组织对的分类。PLS-DA 成功地将肿瘤与乳头状和透明细胞 RCC 的正常组织区分开来,从验证集中获得的错误分类率分别为 14.3%和 7.8%。它还用于将乳头状和透明细胞 RCC 彼此区分开来,并与来自验证集的 23%的合理错误分类率相结合的正常组织区分开来。总体而言,DESI-MS 成像结合多元统计分析显示出作为基于 GP 谱诊断癌性和正常组织的分子病理学技术的前景。