Department of Chemistry, University of Montreal, Montreal, Quebec, Canada.
Anal Chem. 2013 Mar 5;85(5):2860-6. doi: 10.1021/ac3034294. Epub 2013 Feb 8.
Imaging mass spectrometry (IMS) represents an innovative tool in the cancer research pipeline, which is increasingly being used in clinical and pharmaceutical applications. The unique properties of the technique, especially the amount of data generated, make the handling of data from multiple IMS acquisitions challenging. This work presents a histology-driven IMS approach aiming to identify discriminant lipid signatures from the simultaneous mining of IMS data sets from multiple samples. The feasibility of the developed workflow is evaluated on a set of three human colorectal cancer liver metastasis (CRCLM) tissue sections. Lipid IMS on tissue sections was performed using MALDI-TOF/TOF MS in both negative and positive ionization modes after 1,5-diaminonaphthalene matrix deposition by sublimation. The combination of both positive and negative acquisition results was performed during data mining to simplify the process and interrogate a larger lipidome into a single analysis. To reduce the complexity of the IMS data sets, a sub data set was generated by randomly selecting a fixed number of spectra from a histologically defined region of interest, resulting in a 10-fold data reduction. Principal component analysis confirmed that the molecular selectivity of the regions of interest is maintained after data reduction. Partial least-squares and heat map analyses demonstrated a selective signature of the CRCLM, revealing lipids that are significantly up- and down-regulated in the tumor region. This comprehensive approach is thus of interest for defining disease signatures directly from IMS data sets by the use of combinatory data mining, opening novel routes of investigation for addressing the demands of the clinical setting.
成像质谱 (IMS) 代表了癌症研究领域的一项创新工具,它越来越多地应用于临床和制药领域。该技术的独特性质,特别是生成的数据量,使得处理来自多个 IMS 采集的数据具有挑战性。本工作提出了一种基于组织学的 IMS 方法,旨在通过同时挖掘来自多个样本的 IMS 数据集,来鉴定有区别的脂质特征。该方法在一组三个人类结直肠癌肝转移 (CRCLM) 组织切片上进行了评估。使用 MALDI-TOF/TOF MS 在正离子和负离子模式下,在组织切片上进行 1,5-二氨基萘基质升华沉积后进行脂质 IMS。在数据挖掘过程中,同时采集正离子和负离子采集结果,以简化流程并将更大的脂质组分析简化为单个分析。为了降低 IMS 数据集的复杂性,通过从组织学定义的感兴趣区域中随机选择固定数量的光谱,生成了一个子数据集,从而将数据减少了 10 倍。主成分分析证实,数据减少后,感兴趣区域的分子选择性得以保持。偏最小二乘和热图分析显示了 CRCLM 的选择性特征,揭示了肿瘤区域中显著上调和下调的脂质。因此,这种综合方法通过使用组合数据挖掘,直接从 IMS 数据集定义疾病特征,为满足临床需求开辟了新的研究途径,具有重要意义。