Cargando…

A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning

OBJECTIVE: To explore the data characteristics of tongue and pulse of non-small-cell lung cancer with Qi deficiency syndrome and Yin deficiency syndrome, establish syndrome classification model based on data of tongue and pulse by using machine learning methods, and evaluate the feasibility of syndr...

Descripción completa

Detalles Bibliográficos
Autores principales: Shi, Yu-lin, Liu, Jia-yi, Hu, Xiao-juan, Tu, Li-ping, Cui, Ji, Li, Jun, Bi, Zi-juan, Li, Jia-cai, Xu, Ling, Xu, Jia-tuo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8373490/
https://www.ncbi.nlm.nih.gov/pubmed/34423031
http://dx.doi.org/10.1155/2021/1337558
_version_ 1783739951876145152
author Shi, Yu-lin
Liu, Jia-yi
Hu, Xiao-juan
Tu, Li-ping
Cui, Ji
Li, Jun
Bi, Zi-juan
Li, Jia-cai
Xu, Ling
Xu, Jia-tuo
author_facet Shi, Yu-lin
Liu, Jia-yi
Hu, Xiao-juan
Tu, Li-ping
Cui, Ji
Li, Jun
Bi, Zi-juan
Li, Jia-cai
Xu, Ling
Xu, Jia-tuo
author_sort Shi, Yu-lin
collection PubMed
description OBJECTIVE: To explore the data characteristics of tongue and pulse of non-small-cell lung cancer with Qi deficiency syndrome and Yin deficiency syndrome, establish syndrome classification model based on data of tongue and pulse by using machine learning methods, and evaluate the feasibility of syndrome classification based on data of tongue and pulse. METHODS: We collected tongue and pulse of non-small-cell lung cancer patients with Qi deficiency syndrome (n = 163), patients with Yin deficiency syndrome (n = 174), and healthy controls (n = 185) using intelligent tongue diagnosis analysis instrument and pulse diagnosis analysis instrument, respectively. We described the characteristics and examined the correlation of data of tongue and pulse. Four machine learning methods, namely, random forest, logistic regression, support vector machine, and neural network, were used to establish the classification models based on symptom, tongue and pulse, and symptom and tongue and pulse, respectively. RESULTS: Significant difference indices of tongue diagnosis between Qi deficiency syndrome and Yin deficiency syndrome were TB-a, TB-S, TB-Cr, TC-a, TC-S, TC-Cr, perAll, and the tongue coating texture indices including TC-CON, TC-ASM, TC-MEAN, and TC-ENT. Significant difference indices of pulse diagnosis were t(4) and t(5). The classification performance of each model based on different datasets was as follows: tongue and pulse < symptom < symptom and tongue and pulse. The neural network model had a better classification performance for symptom and tongue and pulse datasets, with an area under the ROC curves and accuracy rate which were 0.9401 and 0.8806. CONCLUSIONS: It was feasible to use tongue data and pulse data as one of the objective diagnostic basis in Qi deficiency syndrome and Yin deficiency syndrome of non-small-cell lung cancer.
format Online
Article
Text
id pubmed-8373490
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-83734902021-08-19 A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning Shi, Yu-lin Liu, Jia-yi Hu, Xiao-juan Tu, Li-ping Cui, Ji Li, Jun Bi, Zi-juan Li, Jia-cai Xu, Ling Xu, Jia-tuo Biomed Res Int Research Article OBJECTIVE: To explore the data characteristics of tongue and pulse of non-small-cell lung cancer with Qi deficiency syndrome and Yin deficiency syndrome, establish syndrome classification model based on data of tongue and pulse by using machine learning methods, and evaluate the feasibility of syndrome classification based on data of tongue and pulse. METHODS: We collected tongue and pulse of non-small-cell lung cancer patients with Qi deficiency syndrome (n = 163), patients with Yin deficiency syndrome (n = 174), and healthy controls (n = 185) using intelligent tongue diagnosis analysis instrument and pulse diagnosis analysis instrument, respectively. We described the characteristics and examined the correlation of data of tongue and pulse. Four machine learning methods, namely, random forest, logistic regression, support vector machine, and neural network, were used to establish the classification models based on symptom, tongue and pulse, and symptom and tongue and pulse, respectively. RESULTS: Significant difference indices of tongue diagnosis between Qi deficiency syndrome and Yin deficiency syndrome were TB-a, TB-S, TB-Cr, TC-a, TC-S, TC-Cr, perAll, and the tongue coating texture indices including TC-CON, TC-ASM, TC-MEAN, and TC-ENT. Significant difference indices of pulse diagnosis were t(4) and t(5). The classification performance of each model based on different datasets was as follows: tongue and pulse < symptom < symptom and tongue and pulse. The neural network model had a better classification performance for symptom and tongue and pulse datasets, with an area under the ROC curves and accuracy rate which were 0.9401 and 0.8806. CONCLUSIONS: It was feasible to use tongue data and pulse data as one of the objective diagnostic basis in Qi deficiency syndrome and Yin deficiency syndrome of non-small-cell lung cancer. Hindawi 2021-08-11 /pmc/articles/PMC8373490/ /pubmed/34423031 http://dx.doi.org/10.1155/2021/1337558 Text en Copyright © 2021 Yu-lin Shi et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Shi, Yu-lin
Liu, Jia-yi
Hu, Xiao-juan
Tu, Li-ping
Cui, Ji
Li, Jun
Bi, Zi-juan
Li, Jia-cai
Xu, Ling
Xu, Jia-tuo
A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title_full A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title_fullStr A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title_full_unstemmed A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title_short A New Method for Syndrome Classification of Non-Small-Cell Lung Cancer Based on Data of Tongue and Pulse with Machine Learning
title_sort new method for syndrome classification of non-small-cell lung cancer based on data of tongue and pulse with machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8373490/
https://www.ncbi.nlm.nih.gov/pubmed/34423031
http://dx.doi.org/10.1155/2021/1337558
work_keys_str_mv AT shiyulin anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT liujiayi anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT huxiaojuan anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT tuliping anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT cuiji anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT lijun anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT bizijuan anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT lijiacai anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT xuling anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT xujiatuo anewmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT shiyulin newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT liujiayi newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT huxiaojuan newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT tuliping newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT cuiji newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT lijun newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT bizijuan newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT lijiacai newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT xuling newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning
AT xujiatuo newmethodforsyndromeclassificationofnonsmallcelllungcancerbasedondataoftongueandpulsewithmachinelearning