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Ann Med


Title:Exhaled metabolic markers and relevant dysregulated pathways of lung cancer: a pilot study
Author(s):Zou Y; Hu Y; Jiang Z; Chen Y; Zhou Y; Wang Z; Wang Y; Jiang G; Tan Z; Hu F;
Address:"School of Electronic Information and Electrical Engineering, Changsha University, Changsha, China. Hunan Engineering Technology Research Center of Optoelectronic Health Detection, Changsha, China. Department of Medicine, Zhejiang Sir Run Run Shaw Hospital, Zhejiang University, Hangzhou, China. Tianhe Culture Chain Technologies Co Ltd, Changsha, China. Zhijiang Lab, Research Center for Healthcare Data Science, Hangzhou, China"
Journal Title:Ann Med
Year:2022
Volume:54
Issue:1
Page Number:790 - 802
DOI: 10.1080/07853890.2022.2048064
ISSN/ISBN:1365-2060 (Electronic) 0785-3890 (Print) 0785-3890 (Linking)
Abstract:"INTRODUCTION: The clinical application of lung cancer detection based on breath test is still challenging due to lack of predictive molecular markers in exhaled breath. This study explored potential lung cancer biomarkers and their related pathways using a typical process for metabolomics investigation. MATERIAL AND METHODS: Breath samples from 60 lung cancer patients and 176 healthy people were analyzed by GC-MS. The original data were GC-MS peak intensity removing background signal. Differential metabolites were selected after univariate statistical analysis and multivariate statistical analysis based on OPLS-DA and Spearman rank correlation analysis. A multivariate PLS-DA model was established based on differential metabolites for pattern recognition. Subsequently, pathway enrichment analysis was performed on differential metabolites. RESULTS: The discriminant capability was assessed by ROC curve of whom the average AUC and average accuracy in 100-fold cross validations were 0.871 and 0.787, respectively. Eight potential biomarkers were involved in a total of 18 metabolic pathways. Among them, 11 metabolic pathways have p-value smaller than .1. DISCUSSION: Some pathways among them are related to risk factors or therapies of lung cancer. However, more of them are dysregulated pathways of lung cancer reported in studies based on genome or transcriptome data. CONCLUSION: We believe that it opens the possibility of using metabolomics methods to analyze data of exhaled breath and promotes involvement of knowledge dataset to cover more volatile metabolites. CLINICAL SIGNIFICANCE: Although a series of related research reported diagnostic models with highly sensitive and specific prediction, the clinical application of lung cancer detection based on breath test is still challenging due to disease heterogeneity and lack of predictive molecular markers in exhaled breath. This study may promote the clinical application of this technique which is suitable for large-scale screening thanks to its low-cost and non-invasiveness. As a result, the mortality of lung cancer may be decreased in future.Key messagesIn the present study, 11 pathways involving 8 potential biomarkers were discovered to be dysregulated pathways of lung cancer.We found that it is possible to apply metabolomics methods in analysis of data from breath test, which is meaningful to discover convinced volatile markers with definite pathological and histological significance"
Keywords:"Biomarkers, Tumor/analysis Breath Tests/methods Gas Chromatography-Mass Spectrometry/methods Humans *Lung Neoplasms/diagnosis/pathology Pilot Projects Exhaled metabolic markers lung cancer metabolomics pathway enrichment volatile organic compounds;"
Notes:"MedlineZou, Yingchang Hu, Yanjie Jiang, Zaile Chen, Ying Zhou, Yuan Wang, Zhiyou Wang, Yu Jiang, Guobao Tan, Zhiguang Hu, Fangrong eng Research Support, Non-U.S. Gov't England 2022/03/10 Ann Med. 2022 Dec; 54(1):790-802. doi: 10.1080/07853890.2022.2048064"

 
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