Application of Infrared to Biomedical Sciences pp 109-131 | Cite as
In Vivo Thermography-Based Image for Early Detection of Breast Cancer Using Two-Tier Segmentation Algorithm and Artificial Neural Network
Abstract
Breast cancer is the most common form of cancer among women globally. Detecting a tumor at its early stages is very crucial for a higher possibility of successful treatment. Cancerous cells have high metabolic rate which generate more heat compared to healthy tissue and will be transferred to the skin surface. Thermography technique has distinguished itself as an adjunctive imaging modality to the current gold standard mammography approach due to its capability in measuring the heat radiated from the skin surface for early detection of breast cancer. It provides an additional set of functional information, describing the physiological changes of the underlying thermal and vascular properties of the tissues. However, the thermography technique is shown to be highly dependent on the trained analyst for image interpretation and most of the analyses were conducted qualitatively. Therefore, the current ability of this technique is still limited especially for massive screening activity. This chapter presented a proposed technical framework for automatic segmentation and classification of abnormality on multiple in vivo thermography-based images. A new two-tier automatic segmentation algorithm was developed using a series of thermography screening conducted on both pathological and healthy Sprague-Dawley rats. Features extracted show that the mean values for temperature standard deviation and pixel intensity of the abnormal thermal images are distinctively higher when compared to normal thermal images. For classification, Artificial Neural Network system was developed and produced a validation accuracy performance of 92.5% for thermal image abnormality detection. In conclusion, this study has successfully demonstrated that for massive or routine screening activities, the proposed technical framework could provide a highly reliable clinical decision support to the clinicians in making a diagnosis based on the medical thermal images.
Keywords
Thermography Thermal image processing Artificial neural networkNotes
Acknowledgements
The authors would like to express gratitude to Universiti Teknologi Malaysia for supporting this research under the Institutional Research Grants Vote Number 05H92 and also to the Malaysian Ministry of Higher Education (MOHE) for providing the MyBrain scholarship to the author.
References
- 1.Saslow, D., Solomon, D., Lawson, H.W., Killackey, M., et al.: American Cancer Society, American Society for Colposcopy and Cervical Pathology, and American Society for Clinical Pathology screening guidelines for the prevention and early detection of cervical cancer. Am. J. Clin. Pathol. 137, 516–542 (2012)CrossRefGoogle Scholar
- 2.Canada Cancer Society, Canadian Cancer Statistics Special topic : Predictions of the future burden of cancer in Canada (2015)Google Scholar
- 3.American Cancer Society: Cancer Facts & Figures (2013)Google Scholar
- 4.Yip, C.H., Pathy, N.B., Teo, S.H.: A review of breast cancer research in Malaysia. Med. J. Malaysia 69, 8–22 (2014)Google Scholar
- 5.Pathy, N.B., Yip, C.H., Taib, N.A., Hartman, M., et al.: Breast cancer in a multi-ethnic Asian setting: results from the Singapore-Malaysia hospital-based breast cancer registry. Breast 20(Suppl 2), S75–S80 (2011)CrossRefGoogle Scholar
- 6.Osako, T., Iwase, T., Takahashi, K., Iijima, K., et al.: Diagnostic mammography and ultrasonography for palpable and nonpalpable breast cancer in women aged 30 to 39 years. Breast Cancer 14, 255–259 (2007)CrossRefGoogle Scholar
- 7.Kavanagh, A.M., Giles, G.G., Mitchell, H., Cawson, J.N.: The sensitivity, specificity, and positive predictive value of screening mammography and symptomatic status. J. Med. Screen. 7, 105–110 (2000)CrossRefGoogle Scholar
- 8.Kennedy, D.A., Lee, T., Seely, D.: A comparative review of thermography as a breast cancer screening technique. Integr. Cancer Ther. 8, 9–16 (2009)CrossRefGoogle Scholar
- 9.Sree, S.V., Ng, E.Y.K., Acharya, R.U., Faust, O.: Breast imaging: a survey. World J. Clin. Oncol. 2, 171–178 (2011)CrossRefGoogle Scholar
- 10.Head, J.F., Elliott, R.L.: Infrared imaging: making progress in fulfilling its medical promise. IEEE Eng. Med. Biol. Mag. 21, 80–85 (2002)CrossRefGoogle Scholar
- 11.Keyserlingk, J.R., Ahlgren, P.D., Yu, E., Belliveau, N., Yassa, M.: Functional infrared imaging of the breast. IEEE Eng. Med. Biol. Mag. 19, 3 (2000)Google Scholar
- 12.Foster, K.R.: Thermographic detection of breast cancer. IEEE Eng. Med. Biol. Mag. 17, 6 (1998)Google Scholar
- 13.Borchartt, T.B., Conci, A., Lima, R.C.F., Resmini, R., Sanchez, A.: Breast thermography from an image processing viewpoint: a survey. Sig. Process. 93, 2785–2803 (2013)CrossRefGoogle Scholar
- 14.Lipari, C.A., Head, J.F.: Advanced infrared image processing for breast cancer risk assessment. In: Proceedings of 19th Annual International Conference IEEE Engineering Medical Biological Society Magnificent Milestones and Emergency Opportunities in Medical Engineering (Cat. No. 97CH36136), vol. 2, pp. 673–676 (1997)Google Scholar
- 15.Head, J.F., Wang, F., Lipari, C.A., Elliott, R.L.: The important role of infrared imaging in breast cancer. IEEE Eng. Med. Biol. Mag. 19, 52–57 (2000)Google Scholar
- 16.Ng, E.Y.K., Fok, S.-C.: A framework for early discovery of breast tumor using thermography with artificial neural network. Breast J. 9, 341–343 (2003)CrossRefGoogle Scholar
- 17.Ng, E.Y.-K.: A review of thermography as promising non-invasive detection modality for breast tumor. Int. J. Therm. Sci. 48, 849–859 (2009)CrossRefGoogle Scholar
- 18.Herry, C.L., Frize, M.: Digital processing techniques for the assessment of pain with infrared thermal imaging. In: Proceedings of Second Joint 24th Annual Conference Annual Fall Meeting Biomedical Engineering Society [Engineering Med. Biol.], vol. 2 (2002)Google Scholar
- 19.Scales, N., Herry, C., Frize, M.: Automated image segmentation for breast analysis using infrared images. In: Conference Proceedings IEEE Engineering in Medicine and Biology Society, vol. 3, pp. 1737–1740 (2004)Google Scholar
- 20.Motta, L.S., Conci, A., Lima, R.C.F., Diniz, E.M.: Automatic segmentation on thermograms in order to aid diagnosis and 2D modeling. In: Proceedings of 10th Workshop em Informática Médica, Belo Horizonte, MG, Brazil, vol. 1, pp. 1610–1619 (2010)Google Scholar
- 21.Schaefer, G., Závišek, M., Nakashima, T.: Thermography based breast cancer analysis using statistical features and fuzzy classification. Pattern Recogn. 42, 1133–1137 (2009)CrossRefGoogle Scholar
- 22.Schaefer, G., Nakashima, T., Zavisek, M., Yokota, Y., et al.: Breast cancer classification using statistical features and fuzzy classification of thermograms. In: 2007 IEEE International Fuzzy System Conference (2007)Google Scholar
- 23.Ng, E.Y.K., Kee, E.C.: Advanced integrated technique in breast cancer thermography. J. Med. Eng. Technol. 32, 103–114 (2008)CrossRefGoogle Scholar
- 24.Ng, E.Y.K., Ung, L.N., Ng, F.C., Sim, L.S.J.: Statistical analysis of healthy and malignant breast thermography. J. Med. Eng. Technol. 25, 253–263 (2001)CrossRefGoogle Scholar
- 25.Acharya, U.R., Ng, E.Y.K., Tan, J.-H., Sree, S.V.: Thermography based breast cancer detection using texture features and Support Vector Machine. J. Med. Syst. 36, 1503–1510 (2012)CrossRefGoogle Scholar
- 26.Jones, B.F., Schaefer, G., Zhu, S.Y.: Content-based image retrieval for medical infrared images. In: Proceedings 26th Annual International Conference IEEE EMBS, pp. 1–5, San Francisco, CA, USA (2004)Google Scholar
- 27.Kuruganti, P.T., Qi, H.Q.H.: Asymmetry analysis in breast cancer detection using thermal infrared images. In: Proceedings of Second Joint 24th Annual Conference Annual Fall Meeting Biomedical Engineering Society [Engineering Med. Biol.], 2, pp. 7–8 (2002)Google Scholar
- 28.Jakubowska, T., Wiecek, B., Wysocki, M., Drews-Peszynski, C., Strzelecki, M.: Classification of breast thermal images using artificial neural networks. J. Med. Infomatics Technol. 7, 41–50 (2004)Google Scholar
- 29.Borchartt, T.B., Resmini, R., Conci, A., Martins, A., et al.: Thermal feature analysis to aid on breast cancer diagnosis. In: Proceeding COBEM 2011, Brazil, 24–28 Oct 2011Google Scholar
- 30.Hakkak, R., Holley, A.W., Macleod, S.L., Simpson, P.M., et al.: Obesity promotes 7,12-dimethylbenz(a)anthracene-induced mammary tumor development in female zucker rats. Breast Cancer Res. 7, R627–R633 (2005)CrossRefGoogle Scholar
- 31.Bezerra, L.A., Oliveira, M.M., Rolim, T.L., Conci, A., et al.: Estimation of breast tumor thermal properties using infrared images. Sig. Process. 93, 2851–2863 (2013)CrossRefGoogle Scholar
- 32.Struck, M.B., Andrutis, K.A., Ramirez, H.E., Battles, A.H.: Effect of a short-term fast on ketamine-xylazine anesthesia in rats. J. Am. Assoc. Lab. Anim. Sci. 50, 344–348 (2011)Google Scholar
- 33.Dice, L.R.: Measures of the amount of ecologic association between species. Ecology 26, 297–302 (1945)CrossRefGoogle Scholar
- 34.Jaccard, P.: La distribution de la flore dans la zone alpine. Rev. Générale des Sci. (1906)Google Scholar
- 35.Fleiss, J.L., Levin, B., Paik, M.C.: The measurement of interrater agreement. Stat. Meth. Rates Proportions 52, 598–626 (2003)CrossRefGoogle Scholar
- 36.Wishart, G.C., Campisi, M., Boswell, M., Chapman, D., et al.: The accuracy of digital infrared imaging for breast cancer detection in women undergoing breast biopsy. Eur. J. Surg. Oncol. 36, 535–540 (2010)CrossRefGoogle Scholar
- 37.Wiecek, B., Danych, R., Zwolenik, Z., Jung, A., Zube, J.: Advanced thermal image processing for medical and biological applications. In: 2001 Proceedings of 23rd Annual EMBS International Conference, pp. 2805–2807, Istanbul, Turkey, 25–28 Oct 2001Google Scholar
- 38.Etehadtavakol, M., Chandran, V., Ng, E.Y.K., Kafieh, R.: Breast cancer detection from thermal images using bispectral invariant features. Int. J. Therm. Sci. 69, 21–36 (2013)CrossRefGoogle Scholar