Title of article :
Breast cancer detection in rotational thermography images using texture features
Author/Authors :
Francis، نويسنده , , Sheeja V and Sasikala، نويسنده , , M. and Bhavani Bharathi، نويسنده , , G. and Jaipurkar، نويسنده , , Sandeep D.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
Breast cancer is a major cause of mortality in young women in the developing countries. Early diagnosis is the key to improve survival rate in cancer patients. Breast thermography is a diagnostic procedure that non-invasively images the infrared emissions from breast surface to aid in the early detection of breast cancer. Due to limitations in imaging protocol, abnormality detection by conventional breast thermography, is often a challenging task. Rotational thermography is a novel technique developed in order to overcome the limitations of conventional breast thermography. This paper evaluates this technique’s potential for automatic detection of breast abnormality, from the perspective of cold challenge. Texture features are extracted in the spatial domain, from rotational thermogram series, prior to and post the application of cold challenge. These features are fed to a support vector machine for automatic classification of normal and malignant breasts, resulting in a classification accuracy of 83.3%. Feature reduction has been performed by principal component analysis. As a novel attempt, the ability of this technique to locate the abnormality has been studied. The results of the study indicate that rotational thermography holds great potential as a screening tool for breast cancer detection.
Keywords :
Rotational thermography , Cold challenge , Texture features , Support vector machine , Principal component analysis , Localization of abnormality
Journal title :
Infrared Physics & Technology
Journal title :
Infrared Physics & Technology