Analysis of Breast Thermograms Using Asymmetry in Infra-Mammary Curves

The objective of this research is to propose a methodology to analyse breast thermograms in order to detect breast abnormalities, including cancer. This research work mainly target to segmented ROI that show significant increase in temperature as compared to the neighbouring areas and contralateral sides in breast thermograms. The captured frontal thermograms from each patient is initially smoothed using a Gaussian filter with a standard deviation σ = 1.4 to reduce noise. Region of interest is segmented using bifurcation points obtained by identifying curve that passes through infra-mammary fold. Infra-mammary curve is detected using Horizontal projection profile. Once the segmentation for analysis is determined, exact location of an abnormality or a lesion is determined. Heat patterns are analysed for symmetry. Asymmetry analysis usually helps to detect abnormalities. Significance and challenges of thermal images are discussed. Once the segmentation for analysis is determined, exact location of an abnormality or a lesion is determined. Heat patterns are analysed for symmetry. Asymmetry analysis usually helps to detect abnormalities. Further, classifiers based on support vector machine and principal component analysis were tested on the dataset used for evaluation. Experimental results and statistical analysis support the proposed methodology is able to detect breast anomalies with higher accuracy. An average accuracy of 95%, sensitivity of 97.05% and specificity of 92.3% was obtained for a set of sixty images with 35 normal and 25 abnormal thermograms using SVM-RBF classifier.

[1]  J Edeiken,et al.  Thermography, mammography, and clinical examination in breast cancer screening. Review of 16,000 studies. , 1977, Radiology.

[2]  W. Kuo,et al.  The association of infrared imaging findings of the breast with prognosis in breast cancer patients: an observational cohort study , 2016, BMC Cancer.

[3]  M. Frize,et al.  Analysis of breast thermography with an artificial neural network , 2004, The 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[4]  E. Yu,et al.  Infrared Imaging of the Breast: Initial Reappraisal Using High‐Resolution Digital Technology in 100 Successive Cases of Stage I and II Breast Cancer , 1998, The breast journal.

[5]  Aura Conci,et al.  A New Database for Breast Research with Infrared Image , 2014 .

[6]  Gerald Schaefer,et al.  A hybrid classifier committee for analysing asymmetry features in breast thermograms , 2014, Appl. Soft Comput..

[7]  Robert M. Nowak,et al.  Preprocessing for classification of thermograms in breast cancer detection , 2016, Symposium on Photonics Applications in Astronomy, Communications, Industry, and High-Energy Physics Experiments (WILGA).

[8]  R. Shilo,et al.  Breast thermography after four years and 10000 studies. , 1972, The American journal of roentgenology, radium therapy, and nuclear medicine.

[9]  Myron Moskowitz Efficacy of computerized infrared imaging. , 2003, AJR. American journal of roentgenology.

[10]  M. Gautherie,et al.  Breast thermography and cancer risk prediction , 1980, Cancer.

[11]  U. Rajendra Acharya,et al.  Thermography Based Breast Cancer Detection Using Texture Features and Support Vector Machine , 2012, Journal of Medical Systems.

[12]  W. Yau,et al.  A perspective on medical infrared imaging , 2005, Journal of medical engineering & technology.

[13]  R. Lawson Implications of surface temperatures in the diagnosis of breast cancer. , 1956, Canadian Medical Association journal.

[14]  F. J. González Theoretical and clinical aspects of the use of thermography in non-invasive medical diagnosis , 2017 .

[15]  Javad Haddadnia,et al.  Evaluating the thermal imaging system in detecting certain types of breast tissue masses. , 2016 .

[16]  Joseph D. Bronzino,et al.  Biomedical Signals, Imaging, and Informatics , 2014 .

[17]  U. Rajendra Acharya,et al.  Higher order spectra analysis of breast thermograms for the automated identification of breast cancer , 2014, Expert Syst. J. Knowl. Eng..

[18]  Aura Conci,et al.  Breast thermography from an image processing viewpoint: A survey , 2013, Signal Process..