Department of Chemistry, Indian Institute of Science Education and Research Tirupati, Tirupati 517507, India.
Department of Pathology, Sri Venkateswara Institute of Medical Sciences, Tirupati 517507, India.
Anal Chem. 2023 May 23;95(20):8054-8062. doi: 10.1021/acs.analchem.3c01019. Epub 2023 May 11.
Detecting breast tumor markers with a fast turnaround time from frozen sections should foster intraoperative histopathology in breast-conserving surgery, reducing the need for a second operation. Hence, rapid label-free discrimination of the spatially resolved molecular makeup between cancer and adjacent normal breast tissue is of growing importance. We performed desorption electrospray ionization mass spectrometry imaging (DESI-MSI) of fresh-frozen excision specimens, including cancer and paired adjacent normal sections, obtained from the lumpectomy of 73 breast cancer patients. The results demonstrate that breast cancer tissue posits sharp metabolic upregulation of diacylglycerol, a lipid second messenger that activates protein kinase C for promoting tumor growth. We identified four specific -1,2-diacylglycerols that outperformed all other lipids simultaneously mapped by the positive ion mode DESI-MSI for distinguishing cancers from adjacent normal specimens. This result contrasts with several previous DESI-MSI studies that probed metabolic dysregulation of glycerophospholipids, sphingolipids, and free fatty acids for cancer diagnoses. A random forest-based supervised machine learning considering all detected ion signals also deciphered the highest diagnostic potential of these four diacylglycerols with the top four importance scores. This led us to construct a classifier with 100% overall prediction accuracy of breast cancer by using the parsimonious set of four diacylglycerol biomarkers only. The metabolic pathway analysis suggested that increased catabolism of phosphatidylcholine in breast cancer contributes to diacylglycerol overexpression. These results open up opportunities for mapping diacylglycerol signaling in breast cancer in the context of novel therapeutic and diagnostic developments, including the intraoperative assessment of breast cancer margin status.
从冷冻切片中快速检测乳腺癌标志物,有助于在保乳手术中进行术中组织病理学检查,减少二次手术的需求。因此,快速无标记区分癌症与相邻正常乳腺组织的空间分辨分子组成变得越来越重要。我们对 73 名乳腺癌患者的保乳手术切除的新鲜冷冻标本(包括癌症和配对的相邻正常组织)进行了解吸电喷雾电离质谱成像(DESI-MSI)分析。结果表明,乳腺癌组织中甘油二酯的代谢上调明显,甘油二酯是一种脂质第二信使,可激活蛋白激酶 C,促进肿瘤生长。我们鉴定出四种特定的 -1,2-甘油二酯,它们在区分癌症与相邻正常组织方面的表现优于正离子模式 DESI-MSI 同时映射的所有其他脂质。这一结果与之前的几项 DESI-MSI 研究形成对比,这些研究探究了甘油磷脂、鞘脂和游离脂肪酸代谢失调在癌症诊断中的作用。考虑到所有检测到的离子信号的基于随机森林的有监督机器学习还破译了这四种甘油二酯的最高诊断潜力,其重要性得分排名前四。这使得我们仅使用四种甘油二酯生物标志物的简约集构建了一个具有 100%总体预测准确性的乳腺癌分类器。代谢途径分析表明,乳腺癌中磷酸胆碱的分解代谢增加导致甘油二酯的过度表达。这些结果为在新的治疗和诊断发展的背景下,包括术中评估乳腺癌边缘状态,在乳腺癌中映射甘油二酯信号提供了机会。