Trim Paul J, Atkinson Sally J, Princivalle Alessandra P, Marshall Peter S, West Andrew, Clench Malcolm R
Biomedical Research Centre, Sheffield Hallam University, Pond Street, Sheffield S1 1WB, UK.
Rapid Commun Mass Spectrom. 2008 May;22(10):1503-9. doi: 10.1002/rcm.3498.
To date matrix-assisted laser desorption/ionisation mass spectrometry imaging (MALDI-MSI) analysis has been largely concerned with mapping the distribution of known analytes in tissues. An important step in the progression of its applications is the determination of unknown variants for metabolite and protein profiling in both clinical studies and studies of disease. Principal component analysis (PCA) is a statistical approach which can be used as a means of determining latent variables in multivariate data sets. In the work reported here, PCA, in both unsupervised and supervised modes, has been used to differentiate brain regions based on their lipid composition determined by MALDI-MSI. PCA has been shown to be useful in the determination of hidden variables between spectra taken from six regions of brain tissue. It is possible to identify ions of interest from the loadings plot which are likely to be more prominent in the different regions of the brain and thus differentiating between white and grey matter. It is also possible to distinguish between the grey Cerebellar Cortex and the Hippocampal formation, due to the grey Cerebellar Cortex having a positive PC2 and the Hippocampal formation having a negative PC2 score; this is only possible in supervised PCA with this data set because with unsupervised PCA the two regions overlap.
迄今为止,基质辅助激光解吸/电离质谱成像(MALDI-MSI)分析主要关注于绘制组织中已知分析物的分布图。其应用进展中的一个重要步骤是在临床研究和疾病研究中确定代谢物和蛋白质谱的未知变体。主成分分析(PCA)是一种统计方法,可作为确定多变量数据集中潜在变量的手段。在本文报道的工作中,PCA以无监督和有监督两种模式,用于根据MALDI-MSI测定的脂质组成来区分脑区。PCA已被证明在确定取自脑组织六个区域的光谱之间的隐藏变量方面很有用。从载荷图中可以识别出感兴趣的离子,这些离子在大脑的不同区域可能更突出,从而区分白质和灰质。由于小脑皮质灰质的PC2为正,海马结构的PC2评分为负,因此也可以区分小脑皮质灰质和海马结构;在该数据集的有监督PCA中这是可行的,因为在无监督PCA中这两个区域会重叠。