Quantifying independent risk factors for failing to rescreen in a breast cancer screening program in Flanders, Belgium
Abstract: Background Mammographic screening may reduce breast cancer mortality by about 20%, provided participation is high and women screen regularly. We quantified independent risk factors for failing to rescreen and built a model to predict how rescreening rates change if these risk factors would be modified. Methods Multivariate analysis was used to analyze data from a prospective study which included a self-administered questionnaire and rescreening status 30 months after a t0 mammogram, using a random sample of women 5067 years (Belgium 20102013). Results A false positive result at the m... Mehr ...
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Dokumenttyp: | acceptedVersion |
Erscheinungsdatum: | 2014 |
Schlagwörter: | Sociology / Human medicine |
Sprache: | Englisch |
Permalink: | https://search.fid-benelux.de/Record/base-29057211 |
Datenquelle: | BASE; Originalkatalog |
Powered By: | BASE |
Link(s) : | https://hdl.handle.net/10067/1201480151162165141 |
Abstract: Background Mammographic screening may reduce breast cancer mortality by about 20%, provided participation is high and women screen regularly. We quantified independent risk factors for failing to rescreen and built a model to predict how rescreening rates change if these risk factors would be modified. Methods Multivariate analysis was used to analyze data from a prospective study which included a self-administered questionnaire and rescreening status 30 months after a t0 mammogram, using a random sample of women 5067 years (Belgium 20102013). Results A false positive result at the most recent past mammogram (Odds Ratio = 5.0, 95% Confidence Interval 3.66.8), an interval until new invitation greater than 25 months (Odds Ratio = 4.8 for > 29 months, 95% Confidence Interval 2.98.1), waiting times in the mammography unit > 1 h (Odds Ratio = 2.1, 95% Confidence Interval 1.23.7) and difficulties in reaching the unit (Odds Ratio = 2.5, 95% Confidence Interval 1.44.4) were the strongest independent predictors for failing to rescreen. The area under the curve of the receiver operating characteristic analysis was 0.705 for the model development stage and 0.717 for the validation stage and goodness-of-fit was good. Conclusions Maintaining an invitation cycle of maximum 25 months, limiting waiting time in the mammography unit and lowering the number of false positives could increase breast cancer screening compliance.