External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank

<strong>Background<br></strong> In China, colorectal cancer (CRC) incidence and mortality have been steadily increasing over the last decades. Risk models to predict incident CRC have been developed in various populations, but they have not been systematically externally validated...

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Main Authors: Abhari, R, Thomson, B, Yang, L, Millwood, I, Yang, X, Avery, D, Chen, Y, Chen, Z, Kartsonaki, C
Format: Journal article
Language:English
Published: BioMed Central 2022
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author Abhari, R
Thomson, B
Yang, L
Millwood, I
Yang, X
Avery, D
Chen, Y
Chen, Z
Kartsonaki, C
author_facet Abhari, R
Thomson, B
Yang, L
Millwood, I
Yang, X
Avery, D
Chen, Y
Chen, Z
Kartsonaki, C
author_sort Abhari, R
collection OXFORD
description <strong>Background<br></strong> In China, colorectal cancer (CRC) incidence and mortality have been steadily increasing over the last decades. Risk models to predict incident CRC have been developed in various populations, but they have not been systematically externally validated in a Chinese population. <br> This study aimed to assess the performance of risk scores in predicting CRC using the China Kadoorie Biobank (CKB), one of the largest and geographically diverse prospective cohort studies in China. <br><strong> Methods<br></strong> Nine models were externally validated in 512,415 participants in CKB and included 2976 cases of CRC. Model discrimination was assessed, overall and by sex, age, site, and geographic location, using the area under the receiver operating characteristic curve (AUC). Model discrimination of these nine models was compared to a model using age alone. Calibration was assessed for five models, and they were re-calibrated in CKB. <br><strong> Results<br></strong> The three models with the highest discrimination (Ma (Cox model) AUC 0.70 [95% CI 0.69–0.71]; Aleksandrova 0.70 [0.69–0.71]; Hong 0.69 [0.67–0.71]) included the variables age, smoking, and alcohol. These models performed significantly better than using a model based on age alone (AUC of 0.65 [95% CI 0.64–0.66]). Model discrimination was generally higher in younger participants, males, urban environments, and for colon cancer. The two models (Guo and Chen) developed in Chinese populations did not perform better than the others. Among the 10% of participants with the highest risk, the three best performing models identified 24–26% of participants that went on to develop CRC. <br><strong> Conclusions<br></strong> Several risk models based on easily obtainable demographic and modifiable lifestyle factor have good discrimination in a Chinese population. The three best performing models have a higher discrimination than using a model based on age alone.
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spelling oxford-uuid:df17289d-cb72-47dd-8c81-647534c462762022-11-15T12:37:40ZExternal validation of models for predicting risk of colorectal cancer using the China Kadoorie BiobankJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:df17289d-cb72-47dd-8c81-647534c46276EnglishSymplectic ElementsBioMed Central2022Abhari, RThomson, BYang, LMillwood, IYang, XAvery, DChen, YChen, ZKartsonaki, C<strong>Background<br></strong> In China, colorectal cancer (CRC) incidence and mortality have been steadily increasing over the last decades. Risk models to predict incident CRC have been developed in various populations, but they have not been systematically externally validated in a Chinese population. <br> This study aimed to assess the performance of risk scores in predicting CRC using the China Kadoorie Biobank (CKB), one of the largest and geographically diverse prospective cohort studies in China. <br><strong> Methods<br></strong> Nine models were externally validated in 512,415 participants in CKB and included 2976 cases of CRC. Model discrimination was assessed, overall and by sex, age, site, and geographic location, using the area under the receiver operating characteristic curve (AUC). Model discrimination of these nine models was compared to a model using age alone. Calibration was assessed for five models, and they were re-calibrated in CKB. <br><strong> Results<br></strong> The three models with the highest discrimination (Ma (Cox model) AUC 0.70 [95% CI 0.69–0.71]; Aleksandrova 0.70 [0.69–0.71]; Hong 0.69 [0.67–0.71]) included the variables age, smoking, and alcohol. These models performed significantly better than using a model based on age alone (AUC of 0.65 [95% CI 0.64–0.66]). Model discrimination was generally higher in younger participants, males, urban environments, and for colon cancer. The two models (Guo and Chen) developed in Chinese populations did not perform better than the others. Among the 10% of participants with the highest risk, the three best performing models identified 24–26% of participants that went on to develop CRC. <br><strong> Conclusions<br></strong> Several risk models based on easily obtainable demographic and modifiable lifestyle factor have good discrimination in a Chinese population. The three best performing models have a higher discrimination than using a model based on age alone.
spellingShingle Abhari, R
Thomson, B
Yang, L
Millwood, I
Yang, X
Avery, D
Chen, Y
Chen, Z
Kartsonaki, C
External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title_full External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title_fullStr External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title_full_unstemmed External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title_short External validation of models for predicting risk of colorectal cancer using the China Kadoorie Biobank
title_sort external validation of models for predicting risk of colorectal cancer using the china kadoorie biobank
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