Applying Support Vector Machines to Breast Cancer Diagnosis using Screen Film Mammogram Data

CBMS '04 Proceedings of the 17th IEEE Symposium on Computer-Based Medical Systems(2004)

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摘要
This paper explores the use of different Support Vector Machines (SVM) kernels, andcombinations of kernels, to ascertain the diagnostic accuracy of a screen film mammogramdata set containing 驴 2500 samples from five different institutions.This research hasdemonstrated that: (1) Specifically improves, on the average, of about 4% at 100% sensitivityand about 18%, on the average, at 98% sensitivity.This means that approximately 52 and 134 women would not have to undergo biopsy, at 100% and 98% sensitivity, when compared to the case of every women being biopsied, which would be necessary to identify all cancers in the absence of a computer aided diagnostic (CAD) process, (2) Positive Predictive Value (PPV) at these same values of sensitivity are much better, ranging from 48% to 51% as sensitivity is decreased from 100 to 98%.Finally, the average specifically over the top 10% or the ROC curve (which is the average specificity between 90-100% sensitivity) is about 30%.This means that, on the average, 440 women would not have to undergo biopsy, when compared to the case of all women being biopsied.
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关键词
breast cancer,sensitivity,cancer,neural networks,artificial neural networks,roc curve,support vector machine,support vector machines,kernel
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