Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model

Research has failed to resolve the dilemma experienced by localized prostate cancer patients who must choose between radical prostatectomy (RP) and external beam radiotherapy (RT). Because the Charlson Comorbidity Index (CCI) is a measurable factor that affects survival events, this research seeks t...

Full description

Bibliographic Details
Main Authors: Lin Yi-Ting, Lee Michael Tian-Shyug, Huang Yen-Chun, Liu Chih-Kuang, Li Yi-Tien, Chen Mingchih
Format: Article
Language:English
Published: De Gruyter 2019-08-01
Series:Open Medicine
Online Access:https://doi.org/10.1515/med-2019-0067
id doaj-d45ea8f44f17407bb2ace020f518a4bd
record_format Article
spelling doaj-d45ea8f44f17407bb2ace020f518a4bd2021-10-02T19:23:58ZengDe GruyterOpen Medicine2391-54632019-08-0114159360610.1515/med-2019-0067med-2019-0067Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning modelLin Yi-Ting0Lee Michael Tian-Shyug1Huang Yen-Chun2Liu Chih-Kuang3Li Yi-Tien4Chen Mingchih5Department of Urology, St. Joseph Hospital, Yunlin County, 63241, TaiwanGraduate Institute of Business Administration, College of Management, Fu Jen Catholic University, New Taipei City24205, TaiwanGraduate Institute of Business Administration, College of Management, Fu Jen Catholic University, New Taipei City24205, TaiwanDepartment of Urology, St. Joseph Hospital, Yunlin County, 63241, TaiwanGraduate Institute of Business Administration, College of Management, Fu Jen Catholic University, New Taipei City24205, TaiwanGraduate Institute of Business Administration, College of Management, Fu Jen Catholic University, New Taipei City24205, TaiwanResearch has failed to resolve the dilemma experienced by localized prostate cancer patients who must choose between radical prostatectomy (RP) and external beam radiotherapy (RT). Because the Charlson Comorbidity Index (CCI) is a measurable factor that affects survival events, this research seeks to validate the potential of the CCI to improve the accuracy of various prediction models. Thus, we employed the Cox proportional hazard model and machine learning methods, including random forest (RF) and support vector machine (SVM), to model the data of medical records in the National Health Insurance Research Database (NHIRD). In total, 8581 individuals were enrolled, of whom 4879 had received RP and 3702 had received RT. Patients in the RT group were older and exhibited higher CCI scores and higher incidences of some CCI items. Moderate-to-severe liver disease, dementia, congestive heart failure, chronic pulmonary disease, and cerebrovascular disease all increase the risk of overall death in the Cox hazard model. The CCI-reinforced SVM and RF models are 85.18% and 81.76% accurate, respectively, whereas the SVM and RF models without the use of the CCI are relatively less accurate, at 75.81% and 74.83%, respectively. Therefore, CCI and some of its items are useful predictors of overall and prostate-cancer-specific survival and could constitute valuable features for machine-learning modeling.https://doi.org/10.1515/med-2019-0067
collection DOAJ
language English
format Article
sources DOAJ
author Lin Yi-Ting
Lee Michael Tian-Shyug
Huang Yen-Chun
Liu Chih-Kuang
Li Yi-Tien
Chen Mingchih
spellingShingle Lin Yi-Ting
Lee Michael Tian-Shyug
Huang Yen-Chun
Liu Chih-Kuang
Li Yi-Tien
Chen Mingchih
Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
Open Medicine
author_facet Lin Yi-Ting
Lee Michael Tian-Shyug
Huang Yen-Chun
Liu Chih-Kuang
Li Yi-Tien
Chen Mingchih
author_sort Lin Yi-Ting
title Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
title_short Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
title_full Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
title_fullStr Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
title_full_unstemmed Prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
title_sort prediction of recurrence-associated death from localized prostate cancer with a charlson comorbidity index–reinforced machine learning model
publisher De Gruyter
series Open Medicine
issn 2391-5463
publishDate 2019-08-01
description Research has failed to resolve the dilemma experienced by localized prostate cancer patients who must choose between radical prostatectomy (RP) and external beam radiotherapy (RT). Because the Charlson Comorbidity Index (CCI) is a measurable factor that affects survival events, this research seeks to validate the potential of the CCI to improve the accuracy of various prediction models. Thus, we employed the Cox proportional hazard model and machine learning methods, including random forest (RF) and support vector machine (SVM), to model the data of medical records in the National Health Insurance Research Database (NHIRD). In total, 8581 individuals were enrolled, of whom 4879 had received RP and 3702 had received RT. Patients in the RT group were older and exhibited higher CCI scores and higher incidences of some CCI items. Moderate-to-severe liver disease, dementia, congestive heart failure, chronic pulmonary disease, and cerebrovascular disease all increase the risk of overall death in the Cox hazard model. The CCI-reinforced SVM and RF models are 85.18% and 81.76% accurate, respectively, whereas the SVM and RF models without the use of the CCI are relatively less accurate, at 75.81% and 74.83%, respectively. Therefore, CCI and some of its items are useful predictors of overall and prostate-cancer-specific survival and could constitute valuable features for machine-learning modeling.
url https://doi.org/10.1515/med-2019-0067
work_keys_str_mv AT linyiting predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
AT leemichaeltianshyug predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
AT huangyenchun predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
AT liuchihkuang predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
AT liyitien predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
AT chenmingchih predictionofrecurrenceassociateddeathfromlocalizedprostatecancerwithacharlsoncomorbidityindexreinforcedmachinelearningmodel
_version_ 1716846934970335232