A new features extraction method based on polynomial regression for the assessment of breast lesion Contours | IEEE Conference Publication | IEEE Xplore

A new features extraction method based on polynomial regression for the assessment of breast lesion Contours


Abstract:

Shape of breast Contours are prominent signs to determine malignancy in mammograms. A new algorithm for feature extraction is proposed based on polynomial regression on t...Show More

Abstract:

Shape of breast Contours are prominent signs to determine malignancy in mammograms. A new algorithm for feature extraction is proposed based on polynomial regression on the signatures of benign and malignant contours. Two features mean absolute error and correlation coefficient were extracted for 57 mammograms of which 32 images were malignant contours and 25 images were benign contours. Three different pattern classifiers Support vector machine with radius basis function as kernel and sigma=0.7, Linear discriminate analysis, Bayes linear classifier methodologies were used for calculation of performance evaluation measures.Our new feature extraction method attained a remarkable recognition accuracy and Area under curve(AUC) of above 89% in all three pattern classifier techniques. Among all the three classifiers Bayes linear classifier gave good recognition accuracy of 96.29% and AUC of 0.9833.
Date of Conference: 28-30 May 2015
Date Added to IEEE Xplore: 09 July 2015
ISBN Information:
Conference Location: Pune, India

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