Cargando…

Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets

PURPOSE: This study aimed to identify prognostic factors for patients with distant lymph node-involved gastric cancer (GC) using a machine learning algorithm, a method that offers considerable advantages and new prospects for high-dimensional biomedical data exploration. MATERIALS AND METHODS: This...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Cheng, Xie, Minmin, Zhang, Yi, Zhang, Xiaopeng, Feng, Chong, Wu, Zhijun, Feng, Ying, Yang, Yahui, Xu, Hui, Ma, Tai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Korean Gastric Cancer Association 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9091455/
https://www.ncbi.nlm.nih.gov/pubmed/35534449
http://dx.doi.org/10.5230/jgc.2022.22.e12
_version_ 1784704927687245824
author Zhang, Cheng
Xie, Minmin
Zhang, Yi
Zhang, Xiaopeng
Feng, Chong
Wu, Zhijun
Feng, Ying
Yang, Yahui
Xu, Hui
Ma, Tai
author_facet Zhang, Cheng
Xie, Minmin
Zhang, Yi
Zhang, Xiaopeng
Feng, Chong
Wu, Zhijun
Feng, Ying
Yang, Yahui
Xu, Hui
Ma, Tai
author_sort Zhang, Cheng
collection PubMed
description PURPOSE: This study aimed to identify prognostic factors for patients with distant lymph node-involved gastric cancer (GC) using a machine learning algorithm, a method that offers considerable advantages and new prospects for high-dimensional biomedical data exploration. MATERIALS AND METHODS: This study employed 79 features of clinical pathology, laboratory tests, and therapeutic details from 289 GC patients whose distant lymphadenopathy was presented as the first episode of recurrence or metastasis. Outcomes were measured as any-cause death events and survival months after distant lymph node metastasis. A prediction model was built based on possible outcome predictors using a random survival forest algorithm and confirmed by 5×5 nested cross-validation. The effects of single variables were interpreted using partial dependence plots. A contour plot was used to visually represent survival prediction based on 2 predictive features. RESULTS: The median survival time of patients with GC with distant nodal metastasis was 9.2 months. The optimal model incorporated the prealbumin level and the prothrombin time (PT), and yielded a prediction error of 0.353. The inclusion of other variables resulted in poorer model performance. Patients with higher serum prealbumin levels or shorter PTs had a significantly better prognosis. The predicted one-year survival rate was stratified and illustrated as a contour plot based on the combined effect the prealbumin level and the PT. CONCLUSIONS: Machine learning is useful for identifying the important determinants of cancer survival using high-dimensional datasets. The prealbumin level and the PT on distant lymph node metastasis are the 2 most crucial factors in predicting the subsequent survival time of advanced GC. TRIAL REGISTRATION: ChiCTR Identifier: ChiCTR1800019978
format Online
Article
Text
id pubmed-9091455
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher The Korean Gastric Cancer Association
record_format MEDLINE/PubMed
spelling pubmed-90914552022-05-19 Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets Zhang, Cheng Xie, Minmin Zhang, Yi Zhang, Xiaopeng Feng, Chong Wu, Zhijun Feng, Ying Yang, Yahui Xu, Hui Ma, Tai J Gastric Cancer Original Article PURPOSE: This study aimed to identify prognostic factors for patients with distant lymph node-involved gastric cancer (GC) using a machine learning algorithm, a method that offers considerable advantages and new prospects for high-dimensional biomedical data exploration. MATERIALS AND METHODS: This study employed 79 features of clinical pathology, laboratory tests, and therapeutic details from 289 GC patients whose distant lymphadenopathy was presented as the first episode of recurrence or metastasis. Outcomes were measured as any-cause death events and survival months after distant lymph node metastasis. A prediction model was built based on possible outcome predictors using a random survival forest algorithm and confirmed by 5×5 nested cross-validation. The effects of single variables were interpreted using partial dependence plots. A contour plot was used to visually represent survival prediction based on 2 predictive features. RESULTS: The median survival time of patients with GC with distant nodal metastasis was 9.2 months. The optimal model incorporated the prealbumin level and the prothrombin time (PT), and yielded a prediction error of 0.353. The inclusion of other variables resulted in poorer model performance. Patients with higher serum prealbumin levels or shorter PTs had a significantly better prognosis. The predicted one-year survival rate was stratified and illustrated as a contour plot based on the combined effect the prealbumin level and the PT. CONCLUSIONS: Machine learning is useful for identifying the important determinants of cancer survival using high-dimensional datasets. The prealbumin level and the PT on distant lymph node metastasis are the 2 most crucial factors in predicting the subsequent survival time of advanced GC. TRIAL REGISTRATION: ChiCTR Identifier: ChiCTR1800019978 The Korean Gastric Cancer Association 2022-04 2022-04-26 /pmc/articles/PMC9091455/ /pubmed/35534449 http://dx.doi.org/10.5230/jgc.2022.22.e12 Text en Copyright © 2022. Korean Gastric Cancer Association https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (https://creativecommons.org/licenses/by-nc/4.0 (https://creativecommons.org/licenses/by-nc/4.0/) ) which permits unrestricted noncommercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Zhang, Cheng
Xie, Minmin
Zhang, Yi
Zhang, Xiaopeng
Feng, Chong
Wu, Zhijun
Feng, Ying
Yang, Yahui
Xu, Hui
Ma, Tai
Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title_full Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title_fullStr Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title_full_unstemmed Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title_short Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets
title_sort determination of survival of gastric cancer patients with distant lymph node metastasis using prealbumin level and prothrombin time: contour plots based on random survival forest algorithm on high-dimensionality clinical and laboratory datasets
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9091455/
https://www.ncbi.nlm.nih.gov/pubmed/35534449
http://dx.doi.org/10.5230/jgc.2022.22.e12
work_keys_str_mv AT zhangcheng determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT xieminmin determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT zhangyi determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT zhangxiaopeng determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT fengchong determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT wuzhijun determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT fengying determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT yangyahui determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT xuhui determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets
AT matai determinationofsurvivalofgastriccancerpatientswithdistantlymphnodemetastasisusingprealbuminlevelandprothrombintimecontourplotsbasedonrandomsurvivalforestalgorithmonhighdimensionalityclinicalandlaboratorydatasets