Department of Chemistry, Stanford University, Stanford, CA 94305.
Department of Dermatology, Stanford University School of Medicine, Stanford, CA 94305.
Proc Natl Acad Sci U S A. 2018 Jun 19;115(25):6347-6352. doi: 10.1073/pnas.1803733115. Epub 2018 Jun 4.
Detection of microscopic skin lesions presents a considerable challenge in diagnosing early-stage malignancies as well as in residual tumor interrogation after surgical intervention. In this study, we established the capability of desorption electrospray ionization mass spectrometry imaging (DESI-MSI) to distinguish between micrometer-sized tumor aggregates of basal cell carcinoma (BCC), a common skin cancer, and normal human skin. We analyzed 86 human specimens collected during Mohs micrographic surgery for BCC to cross-examine spatial distributions of numerous lipids and metabolites in BCC aggregates versus adjacent skin. Statistical analysis using the least absolute shrinkage and selection operation (Lasso) was employed to categorize each 200-µm-diameter picture element (pixel) of investigated skin tissue map as BCC or normal. Lasso identified 24 molecular ion signals, which are significant for pixel classification. These ion signals included lipids observed at / 200-1,200 and Krebs cycle metabolites observed at / < 200. Based on these features, Lasso yielded an overall 94.1% diagnostic accuracy pixel by pixel of the skin map compared with histopathological evaluation. We suggest that DESI-MSI/Lasso analysis can be employed as a complementary technique for delineation of microscopic skin tumors.
检测皮肤微病变在诊断早期恶性肿瘤以及在手术干预后的残余肿瘤检测方面都极具挑战性。在本研究中,我们建立了解吸电喷雾电离质谱成像(DESI-MSI)的能力,以区分基底细胞癌(BCC)这种常见皮肤癌的微米大小肿瘤聚集物和正常人类皮肤。我们分析了 86 例在Mohs 显微外科手术中采集的用于 BCC 的人类标本,以交叉检查 BCC 聚集物与相邻皮肤之间大量脂质和代谢物的空间分布。使用最小绝对收缩和选择操作(Lasso)的统计分析用于将所研究的皮肤组织图的每个 200-µm 直径像素(pixel)归类为 BCC 或正常。Lasso 确定了 24 个对像素分类有意义的分子离子信号。这些离子信号包括在 / 200-1,200 处观察到的脂质和在 / < 200 处观察到的克雷布斯循环代谢物。基于这些特征,与组织病理学评估相比,Lasso 对皮肤图谱的每个像素的总体诊断准确性达到了 94.1%。我们建议,DESI-MSI/Lasso 分析可以作为描绘皮肤微观肿瘤的补充技术。