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Articles

An integrated index for breast cancer identification using histogram of oriented gradient and kernel locality preserving projection features extracted from thermograms

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Pages 195-209 | Received 11 Dec 2015, Accepted 25 Mar 2016, Published online: 05 May 2016
 

Abstract

Breast cancer is one of the prime causes of death in women worldwide. Thermography has shown a great potential in screening the breast cancer and overcomes the limitations of mammography. Moreover, interpretations of thermogram images are dependent on the specialists, which may lead to errors and uneven results. Preliminary screening method should detect the hazardous, destructive tumours effectively to improve the accuracy. The growth of malignant tumour can increase the internal temperature which can be captured by thermograms. Thus in this work, locally normalised histogram of oriented gradients (HOG) based preliminary screening computer aided diagnosis tool is proposed. HOG is able to record the minute internal variations in thermograms. In order to reduce the dimensions of extracted HOG descriptors kernel locality preserving projection (KLPP) is used. The resulting KLPP features are then ranked to form an efficient classification model. Various machine learning algorithms are used to validate the proposed method. Our method shows a promising performance with an average accuracy, sensitivity, specificity and area under curve of 98%, 96.66%,100% and 0.98 respectively. We have also developed a breast cancer risk index (BCRI) using significant KLPP features which can discriminate the two classes using a single integrated index. This can help the radiologists to discriminate the normal and malignant classes during screening to validate their findings.

Acknowledgements

Authors acknowledge and thank Dr. Llewellyn Sim, Senior Consultant, Department of Diagnostic Radiology, Singapore General Hospital, Singapore, for providing the thermogram images and Ms. Yuki Hagiwara for helping with the development of index for this paper.

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