2014
DOI: 10.2528/pier13110709
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Investigation of Classifiers for Tumor Detection With an Experimental Time-Domain Breast Screening System

Abstract: Abstract-In this work we examine, for the first time, the use of classification algorithms for earlystage tumor detection with an experimental time-domain microwave breast screening system. The experimental system contains a 16-element antenna array, and testing is done on breast phantoms that mimic breast tissue dielectric properties. We obtain experimental data from multiple breast phantoms with two possible tumor locations. In this work, we investigate a method for detecting the tumors within the breast but… Show more

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Cited by 33 publications
(42 citation statements)
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References 26 publications
(61 reference statements)
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“…As was shown in [5] and [8] the dielectric properties of the breast phantom vary over time. In [5], measurements over a period of 7 days demonstrated that the relative permittivity, ε r , at 3 GHz of the healthy breast phantom varied between 5.5 and 19. For "healthy" breast phantoms, the radome is completely filled with the adipose tissue.…”
Section: A System Overview and Data Collectionmentioning
confidence: 92%
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“…As was shown in [5] and [8] the dielectric properties of the breast phantom vary over time. In [5], measurements over a period of 7 days demonstrated that the relative permittivity, ε r , at 3 GHz of the healthy breast phantom varied between 5.5 and 19. For "healthy" breast phantoms, the radome is completely filled with the adipose tissue.…”
Section: A System Overview and Data Collectionmentioning
confidence: 92%
“…Similar to [4], [5], we apply both LDA and SVM classifiers, individually, on selected data features that are extracted using Principle Component Analysis (PCA).…”
Section: B Detection Algorithmmentioning
confidence: 99%
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“…The main author has successfully used classification algorithms, such as Linear Discriminant Analysis, Quadratic Discriminant Analysis, Support Vector Machines [1], Spiking Neural Networks [2] and Self-Organising Maps [3], to determine the size and shape of benign and malignant tumour models inside breast models. Other authors have also previously investigated the use of classifiers to aid in determining if a breast model represents a healthy breast or a breast with tumours, in simulation [4] and experimental scenarios [5].…”
Section: Introductionmentioning
confidence: 99%