A risk prediction model to allow personalized screening for cervical cancer

Importance Cervical cancer screening guidelines are in evolution. Current guidelines do not differentiate recommendations based on individual patient risk. Objective To derive and validate a tool for predicting individualized probability of cervical intraepithelial neoplasia grade 2 or higher (CIN2+...

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Veröffentlicht in:Cancer causes & control 2018-03, Vol.29 (3), p.297-304
Hauptverfasser: Rothberg, Michael B., Hu, Bo, Lipold, Laura, Schramm, Sarah, Jin, Xian Wen, Sikon, Andrea, Taksler, Glen B.
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container_end_page 304
container_issue 3
container_start_page 297
container_title Cancer causes & control
container_volume 29
creator Rothberg, Michael B.
Hu, Bo
Lipold, Laura
Schramm, Sarah
Jin, Xian Wen
Sikon, Andrea
Taksler, Glen B.
description Importance Cervical cancer screening guidelines are in evolution. Current guidelines do not differentiate recommendations based on individual patient risk. Objective To derive and validate a tool for predicting individualized probability of cervical intraepithelial neoplasia grade 2 or higher (CIN2+) at a single time point, based on demographic factors and medical history. Design The study design consisted of an observational cohort with hierarchical generalized linear regression modeling. Setting The study was conducted in a setting of 33 primary care practices from 2004 to 2010. Participants The participants of the study were women aged ≥ 30 years. Main outcome and measures CIN2+ was the main outcome on biopsy, and the following predictors were included: age, race, marital status, insurance type, smoking history, median income based on zip code, prior human papilloma virus (HPV) results. Results The final dataset included 99,319 women. Of these, 745 (0.75%) had CIN2+. The multivariable model had a C-statistic of 0.81. All factors but race were independently associated with CIN2+. The model categorized women as having below-average CIN2+ risk (0.15% predicted vs. 0.12% observed risk), average CIN2+ risk (0.42% predicted vs. 0.36% observed), and above-average CIN2+ risk (1.76% predicted vs. 1.85% observed). Before screening, women at below-average risk had a risk of CIN2+ well below that of women with ASCUS and HPV negative (0.12 vs. 0.20%). Conclusions and relevance A multivariable model using data from the electronic health record was able to stratify women across a 50-fold gradient of risk for CIN2+. After further validation, use of a similar model could enable more targeted cervical cancer screening.
doi_str_mv 10.1007/s10552-018-1013-4
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Current guidelines do not differentiate recommendations based on individual patient risk. Objective To derive and validate a tool for predicting individualized probability of cervical intraepithelial neoplasia grade 2 or higher (CIN2+) at a single time point, based on demographic factors and medical history. Design The study design consisted of an observational cohort with hierarchical generalized linear regression modeling. Setting The study was conducted in a setting of 33 primary care practices from 2004 to 2010. Participants The participants of the study were women aged ≥ 30 years. Main outcome and measures CIN2+ was the main outcome on biopsy, and the following predictors were included: age, race, marital status, insurance type, smoking history, median income based on zip code, prior human papilloma virus (HPV) results. Results The final dataset included 99,319 women. Of these, 745 (0.75%) had CIN2+. The multivariable model had a C-statistic of 0.81. All factors but race were independently associated with CIN2+. The model categorized women as having below-average CIN2+ risk (0.15% predicted vs. 0.12% observed risk), average CIN2+ risk (0.42% predicted vs. 0.36% observed), and above-average CIN2+ risk (1.76% predicted vs. 1.85% observed). Before screening, women at below-average risk had a risk of CIN2+ well below that of women with ASCUS and HPV negative (0.12 vs. 0.20%). Conclusions and relevance A multivariable model using data from the electronic health record was able to stratify women across a 50-fold gradient of risk for CIN2+. 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subjects Adult
Biomedical and Life Sciences
Biomedicine
Biopsy
Cancer
Cancer Research
Cancer screening
Cervical cancer
Cervical Intraepithelial Neoplasia - diagnosis
Cervical Intraepithelial Neoplasia - virology
Cervix
Demographics
Design factors
Early Detection of Cancer - methods
Electronic medical records
Epidemiology
Family medical history
Female
Guidelines
Health care
Hematology
Human papillomavirus
Humans
Medical screening
Middle Aged
Models, Theoretical
Oncology
ORIGINAL PAPER
Papillomaviridae
Papillomavirus Infections - diagnosis
Prediction models
Public Health
Risk
Smoking
Statistical analysis
Uterine Cervical Neoplasms - diagnosis
Uterine Cervical Neoplasms - virology
Viruses
title A risk prediction model to allow personalized screening for cervical cancer
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