Department of Surgery, Baylor College of Medicine, Houston, Texas 77030, USA.
Department of Chemistry, The University of Texas at Austin, Austin, Texas 78712, USA.
J Am Soc Mass Spectrom. 2023 Jul 5;34(7):1532-1537. doi: 10.1021/jasms.3c00075. Epub 2023 Jun 9.
In this study, we evaluate the generalizability of predictive classifiers built from DESI lipid data for thyroid fine needle aspiration (FNA) biopsy analysis and classification using two high-performance mass spectrometers (time-of-flight and orbitrap) suited with different DESI imaging sources operated by different users. The molecular profiles obtained from thyroid samples with the different platforms presented similar trends, although specific differences in ion abundances were observed. When using a previously published statistical model built to discriminate thyroid cancer from benign thyroid tissues to predict on a new independent data set obtained, agreement for 24 of the 30 samples across the imaging platforms was achieved. We also tested the classifier on six clinical FNAs and obtained agreement between the predictive results and clinical diagnosis for the different conditions. Altogether, our results provide evidence that statistical classifiers generated from DESI lipid data are applicable across different high-resolution mass spectrometry platforms for thyroid FNA classification.
在这项研究中,我们评估了使用两种高性能质谱仪(飞行时间和轨道阱)进行甲状腺细针抽吸(FNA)活检分析和分类的 DESI 脂质数据构建的预测分类器的泛化能力。这两种质谱仪配备了不同的 DESI 成像源,由不同的用户操作。来自不同平台的甲状腺样本的分子谱呈现出相似的趋势,尽管观察到离子丰度存在特定差异。当使用先前发表的用于区分甲状腺癌和良性甲状腺组织的统计模型来预测新的独立数据集时,在成像平台上的 30 个样本中的 24 个样本之间达成了一致。我们还在 6 个临床 FNA 上测试了分类器,并获得了不同条件下预测结果与临床诊断之间的一致性。总的来说,我们的结果提供了证据,表明从 DESI 脂质数据生成的统计分类器适用于不同的高分辨率质谱平台进行甲状腺 FNA 分类。