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The Impact of a Comprehensive Risk Prediction Model for Colorectal Cancer on a Population Screening Program.

Authors :
Saya, Sibel
Emery, Jon D
Dowty, James G
McIntosh, Jennifer G
Winship, Ingrid M
Jenkins, Mark A
Source :
JNCI Cancer Spectrum; Oct2020, Vol. 4 Issue 5, p1-7, 7p
Publication Year :
2020

Abstract

Background In many countries, population colorectal cancer (CRC) screening is based on age and family history, though more precise risk prediction could better target screening. We examined the impact of a CRC risk prediction model (incorporating age, sex, lifestyle, genomic, and family history factors) to target screening under several feasible screening scenarios. Methods We estimated the model's predicted CRC risk distribution in the Australian population. Predicted CRC risks were categorized into screening recommendations under 3 proposed scenarios to compare with current recommendations: 1) highly tailored, 2) 3 risk categories, and 3) 4 sex-specific risk categories. Under each scenario, for 35- to 74-year-olds, we calculated the number of CRC screens by immunochemical fecal occult blood testing (iFOBT) and colonoscopy and the proportion of predicted CRCs over 10 years in each screening group. Results Currently, 1.1% of 35- to 74-year-olds are recommended screening colonoscopy and 56.2% iFOBT, and 5.7% and 83.2% of CRCs over 10 years were predicted to occur in these groups, respectively. For the scenarios, 1) colonoscopy was recommended to 8.1% and iFOBT to 37.5%, with 36.1% and 50.1% of CRCs in each group; 2) colonoscopy was recommended to 2.4% and iFOBT to 56.0%, with 13.2% and 76.9% of cancers in each group; and 3) colonoscopy was recommended to 5.0% and iFOBT to 54.2%, with 24.5% and 66.5% of cancers in each group. Conclusions A highly tailored CRC screening scenario results in many fewer screens but more cancers in those unscreened. Category-based scenarios may provide a good balance between number of screens and cancers detected and are simpler to implement. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
25155091
Volume :
4
Issue :
5
Database :
Complementary Index
Journal :
JNCI Cancer Spectrum
Publication Type :
Academic Journal
Accession number :
148596132
Full Text :
https://doi.org/10.1093/jncics/pkaa062