Plasma-metabolite-based machine learning is a promising diagnostic approach for esophageal squamous cell carcinoma investigation

被引:18
作者
Chen, Zhongjian [1 ,2 ]
Huang, Xiancong [2 ]
Gao, Yun [2 ]
Zeng, Su [1 ]
Mao, Weimin [2 ]
机构
[1] Zhejiang Univ, Coll Pharmaceut Sci, Lab Pharmaceut Anal & Drug Metab, Hangzhou 310058, Peoples R China
[2] Univ Chinese Acad Sci, Chinese Acad Sci, Canc Res Inst, Inst Basic Med & Canc IBMC,Canc Hosp,Zhejiang Can, Hangzhou 310022, Peoples R China
基金
中国国家自然科学基金;
关键词
Diagnostic; Esophageal squamous cell carcinoma (ESCC); Metabolomics; Machine learning; Prognostic; TRIMETHYLAMINE-N-OXIDE; COLORECTAL-CANCER RISK; METASTASIS; ACID; ADENOCARCINOMA; PROGRESSION; CHOLINE; ROLES; MICE;
D O I
10.1016/j.jpha.2020.11.009
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
The aim of this study was to develop a diagnostic strategy for esophageal squamous cell carcinoma (ESCC) that combines plasma metabolomics with machine learning algorithms. Plasma-based untargeted metabolomics analysis was performed with samples derived from 88 ESCC patients and 52 healthy controls. The dataset was split into a training set and a test set. After identification of differential me-tabolites in training set, single-metabolite-based receiver operating characteristic (ROC) curves and multiple-metabolite-based machine learning models were used to distinguish between ESCC patients and healthy controls. Kaplan-Meier survival analysis and Cox proportional hazards regression analysis were performed to investigate the prognostic significance of the plasma metabolites. Finally, twelve differential plasma metabolites (six up-regulated and six down-regulated) were annotated. The pre-dictive performance of the six most prevalent diagnostic metabolites through the diagnostic models in the test set were as follows: arachidonic acid (accuracy: 0.887), sebacic acid (accuracy: 0.867), indoxyl sulfate (accuracy: 0.850), phosphatidylcholine (PC) (14:0/0:0) (accuracy: 0.825), deoxycholic acid (accuracy: 0.773), and trimethylamine N-oxide (accuracy: 0.653). The prediction accuracies of the ma-chine learning models in the test set were partial least-square (accuracy: 0.947), random forest (accu-racy: 0.947), gradient boosting machine (accuracy: 0.960), and support vector machine (accuracy: 0.980). Additionally, survival analysis demonstrated that acetoacetic acid was an unfavorable prognostic factor (hazard ratio (HR): 1.752), while PC (14:0/0:0) (HR: 0.577) was a favorable prognostic factor for ESCC. This study devised an innovative strategy for ESCC diagnosis by combining plasma metabolomics with machine learning algorithms and revealed its potential to become a novel screening test for ESCC. (c) 2020 Xi'an Jiaotong University. Production and hosting by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页码:505 / 514
页数:10
相关论文
共 45 条
  • [1] Deep Learning Accurately Predicts Estrogen Receptor Status in Breast Cancer Metabolomics Data
    Alakwaa, Fadhl M.
    Chaudhary, Kumardeep
    Garmire, Lana X.
    [J]. JOURNAL OF PROTEOME RESEARCH, 2018, 17 (01) : 337 - 347
  • [2] Plasma Choline Metabolites and Colorectal Cancer Risk in the Women's Health Initiative Observational Study
    Bae, Sajin
    Ulrich, Cornelia M.
    Neuhouser, Marian L.
    Malysheva, Olga
    Bailey, Lynn B.
    Xiao, Liren
    Brown, Elissa C.
    Cushing-Haugen, Kara L.
    Zheng, Yingye
    Cheng, Ting-Yuan David
    Miller, Joshua W.
    Green, Ralph
    Lane, Dorothy S.
    Beresford, Shirley A. A.
    Caudill, Marie A.
    [J]. CANCER RESEARCH, 2014, 74 (24) : 7442 - 7452
  • [3] Bile acids as endogenous etiologic agents in gastrointestinal cancer
    Bernstein, Harris
    Bernstein, Carol
    Payne, Claire M.
    Dvorak, Katerina
    [J]. WORLD JOURNAL OF GASTROENTEROLOGY, 2009, 15 (27) : 3329 - 3340
  • [4] Oncogene Amplification in Growth Factor Signaling Pathways Renders Cancers Dependent on Membrane Lipid Remodeling
    Bi, Junfeng
    Ichu, Taka-Aki
    Zanca, Ciro
    Yang, Huijun
    Zhang, Wei
    Gu, Yuchao
    Chowdhry, Sudhir
    Reed, Alex
    Ikegami, Shiro
    Turner, Kristen M.
    Zhang, Wenjing
    Villa, Genaro R.
    Wu, Sihan
    Quehenberger, Oswald
    Yong, William H.
    Kornblum, Harley, I
    Rich, Jeremy N.
    Cloughesy, Timothy F.
    Cavenee, Webster K.
    Furnari, Frank B.
    Cravatt, Benjamin F.
    Mischell, Paul S.
    [J]. CELL METABOLISM, 2019, 30 (03) : 525 - +
  • [5] The secondary bile acid, deoxycholate accelerates intestinal adenoma-adenocarcinoma sequence in Apc min/+ mice through enhancing Wnt signaling
    Cao, Hailong
    Luo, Shenhui
    Xu, Mengque
    Zhang, Yujie
    Song, Shuli
    Wang, Shan
    Kong, Xinyue
    He, Nana
    Cao, Xiaocang
    Yan, Fang
    Wang, Bangmao
    [J]. FAMILIAL CANCER, 2014, 13 (04) : 563 - 571
  • [6] Trimethylamine-N-oxide as One Hypothetical Link for the Relationship between Intestinal Microbiota and Cancer - Where We Are and Where Shall We Go?
    Chan, Carmen Wing Han
    Law, Bernard Man Hin
    Waye, Mary Miu Yee
    Chan, Judy Yuet Wa
    So, Winnie Kwok Wei
    Chow, Ka Ming
    [J]. JOURNAL OF CANCER, 2019, 10 (23): : 5874 - 5882
  • [7] Monocarboxylate transporter 1 is an independent prognostic factor in esophageal squamous cell carcinoma
    Chen, Xue
    Chen, Xuan
    Liu, Fang
    Yuan, Qianqian
    Zhang, Kaixian
    Zhou, Wei
    Guan, Shanghui
    Wang, Yuanyuan
    Mi, Si
    Cheng, Yufeng
    [J]. ONCOLOGY REPORTS, 2019, 41 (04) : 2529 - 2539
  • [8] Disturbed tryptophan metabolism correlating to progression and metastasis of esophageal squamous cell carcinoma
    Cheng, Jing
    Jin, Hai
    Hou, Xiaobei
    Lv, Jie
    Gao, Xianfu
    Zheng, Guangyong
    [J]. BIOCHEMICAL AND BIOPHYSICAL RESEARCH COMMUNICATIONS, 2017, 486 (03) : 781 - 787
  • [9] Emerging roles of lipid metabolism in cancer progression
    Corbet, Cyril
    Feron, Olivier
    [J]. CURRENT OPINION IN CLINICAL NUTRITION AND METABOLIC CARE, 2017, 20 (04) : 254 - 260
  • [10] Machine Learning Methods for Analysis of Metabolic Data and Metabolic Pathway Modeling
    Cuperlovic-Culf, Miroslava
    [J]. METABOLITES, 2018, 8 (01)