| Literature DB >> 29383200 |
Li Yu1, Kefeng Li2, Xiaoye Zhang1.
Abstract
Lung cancer is the leading cause of cancer-related death. Next-generation metabolomics is becoming a powerful emerging technology for studying the systems biology and chemistry of health and disease. This mini review summarized the main platforms of next-generation metabolomics and its main applications in lung cancer including early diagnosis, pathogenesis, classifications and precision medicine. The period covers between 2009 and August, 2017. The major issues and future directions of metabolomics in lung cancer research and clinical applications were also discussed.Entities:
Keywords: biomarker; lung cancer; next-generation metabolomics; pathogenesis; precision medicine
Year: 2017 PMID: 29383200 PMCID: PMC5777812 DOI: 10.18632/oncotarget.22404
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1The advantages of metabolomics over other omics
Figure 2The classification of metabolomics and common instrument platform
Abbreviations: gas chromatography(GC), mass spectrometry(MS), nuclear magnetic resonance(NMR), liquid chromatography(LC), diode-array detector(DAD), time-of-flight(TOF).
Figure 3The comparison of next-generation metabolomics platforms with the traditional approaches
The setup of next-generation metabolomics platforms
| Items | Next generation platforms |
|---|---|
| Any biological fluids and tissues | |
| ≥ 50 μl for liquid samples and 20 mg for tissues | |
| LC coupled with Quadruple, Ion trap, TOF, Qrbitrap | |
| Methanol, acetonitrile, IPA, | |
| Formic acid, ammonium hydroxide, ammonium acetate, ammonium bicarbonate, ammonium carbonate | |
| HILIC, reverse phase, normal phase | |
| Metaboanalyst; MSEA; Metlin; BioStatFlow; HMDB |
Abbreviations: liquid chromatography(LC), time-of-flight(TOF), isopropyl alcohol(IPA), hydrophilic interaction chromatography(HILIC), metabolite set enrichment analysis(MSEA), human metabolome databse(HMDB).
Figure 4Articles on metabolomics of lung cancer published in the period of 2009- August, 2017
(A) Number of articles published in each year. (B) Content classification of the articles published. Data was obtained from PubMed using the key word of “lung cancer AND metabolomics” and “lung cancer AND metabolic profiling”.
Metabolic markers for the early diagnosis of lung cancer
| Metabolite | Sample type | Function | References |
|---|---|---|---|
| Bronchoalveolar lavage fluid | Discriminate lung cancer patients and healthy controls | [ | |
| Serum | Progression of lung cancer | [ | |
| Expiration concentrate | Discriminate lung cancer patients and healthy controls | [ | |
| Serum | Discriminate malignant and benign pulmonary nodules | [ | |
| Sputum | Discriminate lung cancer patients and healthy controls | [ | |
| Serum | Discriminate non-small cell lung cancer patients and healthy controls | [ | |
| Expiration concentrate | Differentiate lung cancer patients and healthy controls | [ | |
| Tissue | Discriminate malignant and benign pulmonary tissues | [ | |
| Tissue | Discriminate lung cancer tissues and normal tissues | [ | |
| Serum | Discriminate non-small cell lung cancer patients and healthy controls | [ | |
| Serum and plasma | Discriminate lung adenocarcinoma patients and healthy controls | [ | |
| Serum | Discriminate lung cancer patients and healthy controls | [ | |
| Plasma | Discriminate non-small cell lung cancer patients and normal persons | [ | |
| Plasma | Discriminate lung cancer patients, smokers and non-smokers | [ | |
| Tissue | Discriminate malignant and benign pulmonary tissues | [ | |
| Serum | Predict the lung cancer risk in smokers | [ | |
| Sweat | Discriminate lung cancer patients and normal persons | [ | |
| Cerebrospinal fluid | Distinguish lung cancer leptomeningeal metastases | [ | |
| Serum | Discriminate non-small cell lung cancer and chronic obstructive pulmonary disease | [ | |
| Serum | Discriminate lung cancer patients and normal persons | [ | |
| Urine | Discriminate non-small cell lung cancer patients and normal persons | [ | |
| Urine | Discriminate non-small cell lung cancer patients and normal controls | [ | |
| Plasma | Discriminate lung adenocarcinoma patients and normal persons | [ | |
| Serum | Discriminate lung cancer and chronic respiratory disease | [ | |
| Serum | Discriminate lung cancer patients and normal persons | [ | |
| Plasma | Discriminate small cell lung cancer patients and healthy controls | [ | |
| Plasma | Discriminate non-small cell lung cancer patients and normal persons | [ | |
| Urine | Discriminate lung cancer patients and healthy controls | [ | |
| Urine | Discriminate lung cancer patients and normal persons | [ | |
| Urine | Discriminate lung cancer patients and normal persons | [ | |
| Serum | Discriminate non-small cell lung cancer patients and normal persons | [ | |
| Serum | Discriminate lung cancer patients and non-cancer patients | [ | |
| Serum | Discriminate early stages of lung cancer patients and normal persons | [ |
Figure 5Up-regulation of tricarboxylic acid cycle, glycolysis, and fatty acid and nucleotide synthesis pathways in the lung cancer cells
The red triangle means that the concentration of metabolite was significantly increased in the lung cancer tissues and cells. The dotted arrow represents intermediate multi-step reactions.
Figure 6Application of next-generation metabolomics in the lung cancer precision medicine