4.6 Review

Polygenic risk prediction models for colorectal cancer: a systematic review

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BMC CANCER
卷 22, 期 1, 页码 -

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BMC
DOI: 10.1186/s12885-021-09143-2

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Colorectal cancer; Prediction models; Single nucleotide polymorphisms; Genetic risk score; Polygenic; Meta-analysis

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  1. Universita Cattolica del Sacro Cuore [D.3.1]

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This study reviewed literature on risk prediction models for colorectal cancer (CRC) that incorporate genetic variants. The researchers found that there was no significant trend in improvement of discriminatory accuracy based on the number of single nucleotide polymorphisms (SNPs), and the number of cases and initial model's AUC were inversely associated with improvement when adding SNPs to the model. Additionally, models constructed in Asian individuals showed better improvement compared to those developed in individuals of European ancestry. Further research is needed to fully understand the impact of genetic variants on CRC risk prediction models.
Background Risk prediction models incorporating single nucleotide polymorphisms (SNPs) could lead to individualized prevention of colorectal cancer (CRC). However, the added value of incorporating SNPs into models with only traditional risk factors is still not clear. Hence, our primary aim was to summarize literature on risk prediction models including genetic variants for CRC, while our secondary aim was to evaluate the improvement of discriminatory accuracy when adding SNPs to a prediction model with only traditional risk factors. Methods We conducted a systematic review on prediction models incorporating multiple SNPs for CRC risk prediction. We tested whether a significant trend in the increase of Area Under Curve (AUC) according to the number of SNPs could be observed, and estimated the correlation between AUC improvement and number of SNPs. We estimated pooled AUC improvement for SNP-enhanced models compared with non-SNP-enhanced models using random effects meta-analysis, and conducted meta-regression to investigate the association of specific factors with AUC improvement. Results We included 33 studies, 78.79% using genetic risk scores to combine genetic data. We found no significant trend in AUC improvement according to the number of SNPs (p for trend = 0.774), and no correlation between the number of SNPs and AUC improvement (p = 0.695). Pooled AUC improvement was 0.040 (95% CI: 0.035, 0.045), and the number of cases in the study and the AUC of the starting model were inversely associated with AUC improvement obtained when adding SNPs to a prediction model. In addition, models constructed in Asian individuals achieved better AUC improvement with the incorporation of SNPs compared with those developed among individuals of European ancestry. Conclusions Though not conclusive, our results provide insights on factors influencing discriminatory accuracy of SNP-enhanced models. Genetic variants might be useful to inform stratified CRC screening in the future, but further research is needed.

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