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Activity Number:
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274
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Type:
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Contributed
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Date/Time:
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Tuesday, August 5, 2008 : 10:30 AM to 12:20 PM
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Sponsor:
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Biometrics Section
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| Abstract - #302372 |
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Title:
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Using Bernstein Polynomials To Model Misclassification in BI-RADS Breast Density Measurements
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Author(s):
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Charlotte C. Gard*+ and Elizabeth R. Brown
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Companies:
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University of Washington and University of Washington
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Address:
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Department of Biostatistics, Seattle, WA, 98195,
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Keywords:
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breast density ; misclassification ; Bernstein polynomials
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Abstract:
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Breast cancer risk prediction models that include breast density (BD) measured on the four-point American College of Radiology Breast Imaging Reporting and Data System (BI-RADS) scale have been shown to have slightly better predictive accuracy than models that do not include BD. Because BI-RADS BD is subject to misclassification, it is thought that inclusion of BD measured continuously could further improve the predictive accuracy of the models. Unlike BI-RADS BD, however, continuous BD is not routinely measured in clinical practice. With a final goal of predicting continuous BD for women for whom it is not available, we take a Bayesian approach to modeling the misclassification in BI-RADS BD. Continuous BD is modeled using Bernstein polynomial priors. We allow for radiologist-specific misclassification in BI-RADS BD and linkage of this misclassification to radiologist characteristics.
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