One-year mortality of colorectal cancer patients: development and validation of a prediction model using linked national electronic data.

Thomas E Cowling ORCID logo; Alexis Bellot; Jemma Boyle; Kate Walker ORCID logo; Angela Kuryba; Sarah Galbraith; Ajay Aggarwal ORCID logo; Michael Braun; Linda D Sharples ORCID logo; Jan van der Meulen ORCID logo; (2020) One-year mortality of colorectal cancer patients: development and validation of a prediction model using linked national electronic data. British Journal of Cancer, 123 (10). pp. 1474-1480. ISSN 0007-0920 DOI: 10.1038/s41416-020-01034-w
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BACKGROUND: The existing literature does not provide a prediction model for mortality of all colorectal cancer patients using contemporary national hospital data. We developed and validated such a model to predict colorectal cancer death within 90, 180 and 365 days after diagnosis. METHODS: Cohort study using linked national cancer and death records. The development population included 27,480 patients diagnosed in England in 2015. The test populations were diagnosed in England in 2016 (n = 26,411) and Wales in 2015-2016 (n = 3814). Predictors were age, gender, socioeconomic status, referral source, performance status, tumour site, TNM stage and treatment intent. Cox regression models were assessed using Brier scores, c-indices and calibration plots. RESULTS: In the development population, 7.4, 11.7 and 17.9% of patients died from colorectal cancer within 90, 180 and 365 days after diagnosis. T4 versus T1 tumour stage had the largest adjusted association with the outcome (HR 4.67; 95% CI: 3.59-6.09). C-indices were 0.873-0.890 (England) and 0.856-0.873 (Wales) in the test populations, indicating excellent separation of predicted risks by outcome status. Models were generally well calibrated. CONCLUSIONS: The model was valid for predicting short-term colorectal cancer mortality. It can provide personalised information to support clinical practice and research.


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