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Early lung cancer diagnostic biomarker discovery by machine learning methods

Early diagnosis has been proved to improve survival rate of lung cancer patients. The availability of blood-based screening could increase early lung cancer patient uptake. Our present study attempted to discover Chinese patients’ plasma metabolites as diagnostic biomarkers for lung cancer. In this...

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Autores principales: Xie, Ying, Meng, Wei-Yu, Li, Run-Ze, Wang, Yu-Wei, Qian, Xin, Chan, Chang, Yu, Zhi-Fang, Fan, Xing-Xing, Pan, Hu-Dan, Xie, Chun, Wu, Qi-Biao, Yan, Pei-Yu, Liu, Liang, Tang, Yi-Jun, Yao, Xiao-Jun, Wang, Mei-Fang, Leung, Elaine Lai-Han
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Neoplasia Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7683339/
https://www.ncbi.nlm.nih.gov/pubmed/33217646
http://dx.doi.org/10.1016/j.tranon.2020.100907
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author Xie, Ying
Meng, Wei-Yu
Li, Run-Ze
Wang, Yu-Wei
Qian, Xin
Chan, Chang
Yu, Zhi-Fang
Fan, Xing-Xing
Pan, Hu-Dan
Xie, Chun
Wu, Qi-Biao
Yan, Pei-Yu
Liu, Liang
Tang, Yi-Jun
Yao, Xiao-Jun
Wang, Mei-Fang
Leung, Elaine Lai-Han
author_facet Xie, Ying
Meng, Wei-Yu
Li, Run-Ze
Wang, Yu-Wei
Qian, Xin
Chan, Chang
Yu, Zhi-Fang
Fan, Xing-Xing
Pan, Hu-Dan
Xie, Chun
Wu, Qi-Biao
Yan, Pei-Yu
Liu, Liang
Tang, Yi-Jun
Yao, Xiao-Jun
Wang, Mei-Fang
Leung, Elaine Lai-Han
author_sort Xie, Ying
collection PubMed
description Early diagnosis has been proved to improve survival rate of lung cancer patients. The availability of blood-based screening could increase early lung cancer patient uptake. Our present study attempted to discover Chinese patients’ plasma metabolites as diagnostic biomarkers for lung cancer. In this work, we use a pioneering interdisciplinary mechanism, which is firstly applied to lung cancer, to detect early lung cancer diagnostic biomarkers by combining metabolomics and machine learning methods. We collected total 110 lung cancer patients and 43 healthy individuals in our study. Levels of 61 plasma metabolites were from targeted metabolomic study using LC-MS/MS. A specific combination of six metabolic biomarkers note-worthily enabling the discrimination between stage I lung cancer patients and healthy individuals (AUC = 0.989, Sensitivity = 98.1%, Specificity = 100.0%). And the top 5 relative importance metabolic biomarkers developed by FCBF algorithm also could be potential screening biomarkers for early detection of lung cancer. Naïve Bayes is recommended as an exploitable tool for early lung tumor prediction. This research will provide strong support for the feasibility of blood-based screening, and bring a more accurate, quick and integrated application tool for early lung cancer diagnostic. The proposed interdisciplinary method could be adapted to other cancer beyond lung cancer.
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spelling pubmed-76833392020-12-07 Early lung cancer diagnostic biomarker discovery by machine learning methods Xie, Ying Meng, Wei-Yu Li, Run-Ze Wang, Yu-Wei Qian, Xin Chan, Chang Yu, Zhi-Fang Fan, Xing-Xing Pan, Hu-Dan Xie, Chun Wu, Qi-Biao Yan, Pei-Yu Liu, Liang Tang, Yi-Jun Yao, Xiao-Jun Wang, Mei-Fang Leung, Elaine Lai-Han Transl Oncol Original article Early diagnosis has been proved to improve survival rate of lung cancer patients. The availability of blood-based screening could increase early lung cancer patient uptake. Our present study attempted to discover Chinese patients’ plasma metabolites as diagnostic biomarkers for lung cancer. In this work, we use a pioneering interdisciplinary mechanism, which is firstly applied to lung cancer, to detect early lung cancer diagnostic biomarkers by combining metabolomics and machine learning methods. We collected total 110 lung cancer patients and 43 healthy individuals in our study. Levels of 61 plasma metabolites were from targeted metabolomic study using LC-MS/MS. A specific combination of six metabolic biomarkers note-worthily enabling the discrimination between stage I lung cancer patients and healthy individuals (AUC = 0.989, Sensitivity = 98.1%, Specificity = 100.0%). And the top 5 relative importance metabolic biomarkers developed by FCBF algorithm also could be potential screening biomarkers for early detection of lung cancer. Naïve Bayes is recommended as an exploitable tool for early lung tumor prediction. This research will provide strong support for the feasibility of blood-based screening, and bring a more accurate, quick and integrated application tool for early lung cancer diagnostic. The proposed interdisciplinary method could be adapted to other cancer beyond lung cancer. Neoplasia Press 2020-11-17 /pmc/articles/PMC7683339/ /pubmed/33217646 http://dx.doi.org/10.1016/j.tranon.2020.100907 Text en © 2020 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original article
Xie, Ying
Meng, Wei-Yu
Li, Run-Ze
Wang, Yu-Wei
Qian, Xin
Chan, Chang
Yu, Zhi-Fang
Fan, Xing-Xing
Pan, Hu-Dan
Xie, Chun
Wu, Qi-Biao
Yan, Pei-Yu
Liu, Liang
Tang, Yi-Jun
Yao, Xiao-Jun
Wang, Mei-Fang
Leung, Elaine Lai-Han
Early lung cancer diagnostic biomarker discovery by machine learning methods
title Early lung cancer diagnostic biomarker discovery by machine learning methods
title_full Early lung cancer diagnostic biomarker discovery by machine learning methods
title_fullStr Early lung cancer diagnostic biomarker discovery by machine learning methods
title_full_unstemmed Early lung cancer diagnostic biomarker discovery by machine learning methods
title_short Early lung cancer diagnostic biomarker discovery by machine learning methods
title_sort early lung cancer diagnostic biomarker discovery by machine learning methods
topic Original article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7683339/
https://www.ncbi.nlm.nih.gov/pubmed/33217646
http://dx.doi.org/10.1016/j.tranon.2020.100907
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