A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment

Background. A prediction model can be developed to predict the risk of cancer-related cognitive impairment in colorectal cancer patients after chemotherapy. Methods. A regression analysis was performed on 386 colorectal cancer patients who had undergone chemotherapy. Three prediction models (random...

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Main Authors: Shu-Ping Zhou, Su-Ding Fei, Hui-Hui Han, Jing-Jing Li, Shuang Yang, Chun-Yang Zhao
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:BioMed Research International
Online Access:http://dx.doi.org/10.1155/2021/6666453
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spelling doaj-2f9f63b2473746f3bee01f3d7b0832582021-03-01T01:13:55ZengHindawi LimitedBioMed Research International2314-61412021-01-01202110.1155/2021/6666453A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy TreatmentShu-Ping Zhou0Su-Ding Fei1Hui-Hui Han2Jing-Jing Li3Shuang Yang4Chun-Yang Zhao5Ningbo College of Health SciencesNingbo College of Health SciencesNingbo College of Health SciencesNingbo College of Health SciencesNingbo College of Health SciencesNingbo College of Health SciencesBackground. A prediction model can be developed to predict the risk of cancer-related cognitive impairment in colorectal cancer patients after chemotherapy. Methods. A regression analysis was performed on 386 colorectal cancer patients who had undergone chemotherapy. Three prediction models (random forest, logistic regression, and support vector machine models) were constructed using collected clinical and pathological data of the patients. Calibration and ROC curves and C-indexes were used to evaluate the selected models. A decision curve analysis (DCA) was used to determine the clinical utility of the line graph. Results. Three prediction models including a random forest, a logistic regression, and a support vector machine were constructed. The logistic regression model had the strongest predictive power with an area under the curve (AUC) of 0.799. Age, BMI, colostomy, complications, CRA, depression, diabetes, QLQ-C30 score, exercise, hypercholesterolemia, diet, marital status, education level, and pathological stage were included in the nomogram. The C-index (0.826) and calibration curve showed that the nomogram had good predictive ability and the DCA curves indicated that the model had strong clinical utility. Conclusions. A prediction model with good predictive ability and practical clinical value can be developed for predicting the risk of cognitive impairment in colorectal cancer after chemotherapy.http://dx.doi.org/10.1155/2021/6666453
collection DOAJ
language English
format Article
sources DOAJ
author Shu-Ping Zhou
Su-Ding Fei
Hui-Hui Han
Jing-Jing Li
Shuang Yang
Chun-Yang Zhao
spellingShingle Shu-Ping Zhou
Su-Ding Fei
Hui-Hui Han
Jing-Jing Li
Shuang Yang
Chun-Yang Zhao
A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
BioMed Research International
author_facet Shu-Ping Zhou
Su-Ding Fei
Hui-Hui Han
Jing-Jing Li
Shuang Yang
Chun-Yang Zhao
author_sort Shu-Ping Zhou
title A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
title_short A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
title_full A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
title_fullStr A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
title_full_unstemmed A Prediction Model for Cognitive Impairment Risk in Colorectal Cancer after Chemotherapy Treatment
title_sort prediction model for cognitive impairment risk in colorectal cancer after chemotherapy treatment
publisher Hindawi Limited
series BioMed Research International
issn 2314-6141
publishDate 2021-01-01
description Background. A prediction model can be developed to predict the risk of cancer-related cognitive impairment in colorectal cancer patients after chemotherapy. Methods. A regression analysis was performed on 386 colorectal cancer patients who had undergone chemotherapy. Three prediction models (random forest, logistic regression, and support vector machine models) were constructed using collected clinical and pathological data of the patients. Calibration and ROC curves and C-indexes were used to evaluate the selected models. A decision curve analysis (DCA) was used to determine the clinical utility of the line graph. Results. Three prediction models including a random forest, a logistic regression, and a support vector machine were constructed. The logistic regression model had the strongest predictive power with an area under the curve (AUC) of 0.799. Age, BMI, colostomy, complications, CRA, depression, diabetes, QLQ-C30 score, exercise, hypercholesterolemia, diet, marital status, education level, and pathological stage were included in the nomogram. The C-index (0.826) and calibration curve showed that the nomogram had good predictive ability and the DCA curves indicated that the model had strong clinical utility. Conclusions. A prediction model with good predictive ability and practical clinical value can be developed for predicting the risk of cognitive impairment in colorectal cancer after chemotherapy.
url http://dx.doi.org/10.1155/2021/6666453
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