研究目的
To determine if mammographic density defined at higher pixel-brightness thresholds improves risk prediction for interval and screen-detected breast cancers compared to conventional thresholds.
研究成果
Different mammographic density measures predict risk for interval and screen-detected breast cancers. Cumulus percent density is best for interval cancers, while Cirrocumulus measures are best for screen-detected cancers. This suggests that mammographic images contain multiple features for risk prediction, which could inform tailored screening strategies.
研究不足
Potential limitations include the older age of the cohort, use of screen-film mammograms instead of digital, inability to subdivide the 2-year interval for interval cancers, and the need for manual measurements requiring expertise and time.
1:Experimental Design and Method Selection:
A nested case–control study within the Melbourne Collaborative Cohort Study was conducted. Mammographic density was measured using Cumulus software at three thresholds (Cumulus, Altocumulus, Cirrocumulus). Statistical methods included conditional logistic regression, odds ratio per adjusted standard deviation (OPERA), area under the receiver operating characteristic curve (AUC), and Bayesian information criterion (BIC) comparisons.
2:Sample Selection and Data Sources:
Cases were women with interval or screen-detected breast cancers (168 and 422 cases, respectively) and matched controls (498 and 1197 controls) from the cohort. Mammograms were obtained from BreastScreen Victoria and digitized.
3:List of Experimental Equipment and Materials:
Array 2905 Laser Film Digitizer for digitizing mammograms, Cumulus software for density measurement.
4:Experimental Procedures and Operational Workflow:
Mammograms were digitized, and five investigators measured density blinded to case-control status. Density measures were transformed using Box–Cox transformation, adjusted for age and BMI, and analyzed using Stata software.
5:Data Analysis Methods:
Conditional logistic regression was used to estimate odds ratios, OPERA, and AUC. Model fits were compared using likelihood ratio tests and ΔBIC.
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