Content area

Abstract

Background

Current risk scores for colorectal cancer (CRC) are based on demographic and behavioral factors and have limited predictive values.

Aim

To develop a novel risk prediction model for sporadic CRC using clinical and laboratory data in electronic medical records.

Methods

We conducted a nested case-control study in a UK primary care database. Cases included those with a diagnostic code of CRC, aged 50-85. Each case was matched with four controls using incidence density sampling. CRC predictors were examined using univariate conditional logistic regression. Variables with p value <0.25 in the univariate analysis were further evaluated in multivariate models using backward elimination. Discrimination was assessed using receiver operating curve. Calibration was evaluated using the McFadden's R2. Net reclassification index (NRI) associated with incorporation of laboratory results was calculated. Results were internally validated.

Results

A model similar to existing CRC prediction models which included age, sex, height, obesity, ever smoking, alcohol dependence, and previous screening colonoscopy had an AUC of 0.58 (0.57-0.59) with poor goodness of fit. A laboratory-based model including hematocrit, MCV, lymphocytes, and neutrophil-lymphocyte ratio (NLR) had an AUC of 0.76 (0.76-0.77) and a McFadden's R2 of 0.21 with a NRI of 47.6 %. A combined model including sex, hemoglobin, MCV, white blood cells, platelets, NLR, and oral hypoglycemic use had an AUC of 0.80 (0.79-0.81) with a McFadden's R2 of 0.27 and a NRI of 60.7 %. Similar results were shown in an internal validation set.

Conclusion

A laboratory-based risk model had good predictive power for sporadic CRC risk.

Details

Title
A Risk Prediction Model for Sporadic CRC Based on Routine Lab Results
Author
Boursi, Ben; Mamtani, Ronac; Hwang, Wei-ting; Haynes, Kevin; Yang, Yu-xiao
Pages
2076-2086
Publication year
2016
Publication date
Jul 2016
Publisher
Springer Nature B.V.
ISSN
01632116
e-ISSN
15732568
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1799149102
Copyright
Springer Science+Business Media New York 2016