张贝 (2023-08-31 22:32):
#paper Lung cancer scRNA-seq and lipidomics reveal aberrant lipid metabolism for early-stage diagnosis. Sci Transi Med.2022 Feb 2;14(630):eabk2756. doi: 10.1126/scitranslmed.abk2756. 本研究首先通过单细胞测序技术分析早期肺癌组织与健康肺组织之间的表达差异,发现在肺癌组织中脂代谢通路相关基因表达显著下调,提示外周血脂代谢产物可作为肺癌早筛的生物标志物。通过高分辨质谱平台分析肺癌患者和健康人外周血脂代谢产物异同,构建并优化肺癌预测模型(分别构建LCAIDv1.0和LCAIDv2.0两个版本模型),分析两个版本模型的检测性能(前者包括训练集/测试集,后者包括训练集/独立验证集/筛查队列/前瞻队列),论证了LCAID在肺癌早筛中非常可靠有效。LCAIDv2.0在1.0版本上共筛选出9个血浆脂质标志物,提示该方法具有IVD的可能性。
Lung cancer scRNA-seq and lipidomics reveal aberrant lipid metabolism for early-stage diagnosis
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Abstract:
Lung cancer is the leading cause of cancer mortality, and early detection is key to improving survival. However, there are no reliable blood-based tests currently available for early-stage lung cancer diagnosis. Here, we performed single-cell RNA sequencing of different early-stage lung cancers and found that lipid metabolism was broadly dysregulated in different cell types, with glycerophospholipid metabolism as the most altered lipid metabolism-related pathway. Untargeted lipidomics was carried out in an exploratory cohort of 311 participants. Through support vector machine algorithm-based and mass spectrum-based feature selection, we identified nine lipids (lysophosphatidylcholines 16:0, 18:0, and 20:4; phosphatidylcholines 16:0-18:1, 16:0-18:2, 18:0-18:1, 18:0-18:2, and 16:0-22:6; and triglycerides 16:0-18:1-18:1) as the features most important for early-stage cancer detection. Using these nine features, we developed a liquid chromatography-mass spectrometry (MS)-based targeted assay using multiple reaction monitoring. This target assay achieved 100.00% specificity on an independent validation cohort. In a hospital-based lung cancer screening cohort of 1036 participants examined by low-dose computed tomography and a prospective clinical cohort containing 109 participants, the assay reached more than 90.00% sensitivity and 92.00% specificity. Accordingly, matrix-assisted laser desorption/ionization MS imaging confirmed that the selected lipids were differentially expressed in early-stage lung cancer tissues in situ. This method, designated as Lung Cancer Artificial Intelligence Detector, may be useful for early detection of lung cancer or large-scale screening of high-risk populations for cancer prevention.
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