Literature DB >> 31671400

Metabolite analysis-aided diagnosis of papillary thyroid cancer.

Jian Chen1,2,3, Qingyuan Hu3, Hongwei Hou3, Shuo Wang2, Yunfei Zhang4, Yanbo Luo3, Huan Chen3, Huimin Deng3, Hongfu Zhu3, Lirong Zhang5, Hansong Liu6, An Wang1, Yong Liu1.   

Abstract

Thyroid cancer is the most frequent endocrine tumor with a growing incidence worldwide. However, common diagnostic strategy for thyroid cancer classification is hardly to make a proper diagnosis in some cases. To assist classical approach, this study used metabolomics to screen and validate biomarkers from serum and urinary for papillary thyroid cancer (PTC). Overall, 124 untreated PTC, 76 untreated benign thyroid nodule (BTN), and 116 healthy control (HC) were collected in this study. Thirty-six differential metabolites were screened from non-targeted metabolomics with a discovery sample set in comparison with HC and BTN. Serum β-hydroxybutyrate (BHB), docosahexaenoic acid (DHA), 1-methyladenosine (1-MedA), pregnanediol-3-glucuronide (PdG), urinary nicotinic acid mononucleotide (NAM) and xanthosine (Xan) were validated to be significantly differential by targeted metabolomics in validation set. The logistic regression model incorporating six biomarkers had excellent discrimination from receiver-operating characteristics (ROC) analysis, with area under the receiver-operating characteristic curve (AUC) of 0.943 (95% CI 0.902 to 0.983) and 0.952 (95% CI 0.921 to 0.983) for female alone and female + male samples, respectively. The prediction accuracy and false-negative rate in the real setting of one PTC to ten suspicious nodules were 84.7 and 17.7% with the threshold at probablity of 0.5. Results of a double-blind study for PTC and BTN had true positive value of 100% and true negative value of 91.7%. To conclude, BHB, DHA, 1-MedA, PdG, NAM and Xan are suitable biomarkers for PTC, and logistic regression models with the six biomarkers can be potentially used as clinical diagnosis.

Entities:  

Keywords:  biomarker; double-blind; logistic regression model; metabolomics; papillary thyroid carcinoma

Mesh:

Substances:

Year:  2019        PMID: 31671400     DOI: 10.1530/ERC-19-0344

Source DB:  PubMed          Journal:  Endocr Relat Cancer        ISSN: 1351-0088            Impact factor:   5.678


  4 in total

1.  Identifying potential metabolic tissue biomarkers for papillary thyroid cancer in different iodine nutrient regions.

Authors:  Qihao Sun; Hongjian Zhao; Zhiyong Liu; Fengqian Wang; Qian He; Cheng Xiu; Lunhua Guo; Qiushi Tian; Lijun Fan; Ji Sun; Dianjun Sun
Journal:  Endocrine       Date:  2021-06-02       Impact factor: 3.633

2.  Integrative metabolomic characterization identifies plasma metabolomic signature in the diagnosis of papillary thyroid cancer.

Authors:  Shuang Yu; Changan Liu; Yingtong Hou; Jie Li; Zhuming Guo; Xinwen Chen; Luyao Zhang; Sui Peng; Shubin Hong; Lixia Xu; Xiaoxing Li; Rengyun Liu; Shuwei Chen; Bin Li; Zongpeng Weng; Yanbing Li; Weiming Lv; Jun Yu; Haipeng Xiao
Journal:  Oncogene       Date:  2022-03-12       Impact factor: 9.867

Review 3.  The Potential of Metabolomics in the Diagnosis of Thyroid Cancer.

Authors:  Margarida Coelho; Luis Raposo; Brian J Goodfellow; Luigi Atzori; John Jones; Bruno Manadas
Journal:  Int J Mol Sci       Date:  2020-07-24       Impact factor: 5.923

Review 4.  The Epitranscriptome in miRNAs: Crosstalk, Detection, and Function in Cancer.

Authors:  Daniel Del Valle-Morales; Patricia Le; Michela Saviana; Giulia Romano; Giovanni Nigita; Patrick Nana-Sinkam; Mario Acunzo
Journal:  Genes (Basel)       Date:  2022-07-21       Impact factor: 4.141

  4 in total

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