Abstract
Thermography is a useful imaging tool using infrared for the early diagnosis of breast cancer. Screening cancer aims to outstrip prognosis by seeing the precancerous stage to give a prominent prescription. Early diagnosis is essential to avoid the fatality rate in abnormal cases. In this article, a novel approach is proposed using image analysis and machine learning techniques. In the present work, thermal images were collected from the visual laboratory. In the pre-processing stage, the contrast of the image is improved by combining top-hat and bottom-hat transforms. The ROI extraction method is the preliminary process to select the right and left breast region and remove the neck and armpit region. Then, the imperfection in the structure of the image has been eliminated by using morphological operations. Statistical, geometrical, and intensity features are extracted from the pre-processed and segmented images. Texture features using a Gray-Level Co-Occurrence matrix are obtained both in the spatial domain and curvelet domain. The curvelet transform is used in the feature extraction stage, and this can be used to find an explanation of the curve discontinuity. The curvelet wrapping is applied, followed by the application of GLCM to extract texture features. In the proposed method, 16 features are used for the automated classification of input thermal images. Different machine learning techniques are explored, and the cubic SVM renders the highest accuracy of 93.3%. A combination of statistical, intensity, geometry features, and texture features extracted from curvelet coefficients provides the highest accuracy.









Similar content being viewed by others
References
Malvia S, Bagadi SA, Dubey US, Saxena S (2017) Epidemiology of breast cancer in Indian women. Asia-Pacific J Clin Oncol 13(4):289–295
American Cancer Society (2018) Cancer Facts and Figures, 2018. American Cancer Society, Atlanta, pp 1–76
Canadian Cancer Statistics Advisory Committee. Canadian Cancer Statistics 2018; Toronto, ON: Canadian Cancer Society; 2018. Available at: cancer.ca/Canadian-Cancer-Statistics-2018-EN.
Sun L, Legood R, Sadique Z, dos-Santos-Silva, I., & Yang, L. (2018) Cost–effectiveness of risk-based breast cancer screening programme, China. Bull World Health Organ 96(8):568–577
Ng EYK, Kee EC (2008) Advanced integrated technique in breast cancer thermography. J Med Eng Technol 32:103–114
Mentari Bella Al Rasyid, Yunidar, Fitri Arnia and Khairul Munadi. Histogram Statistics and GLCM Features of Breast Thermograms for Early Cancer Detection. 15th International Conference on Electrical Engineering/Electronics, Computer, Telecommunications and Information Technology (ECTI-NCON2018); 120- 124.
Samson NS (2015) Breast cancer detection of ultrasound image using watershed technique. IJESR 3:89–93
Arau T, Aresta G, Castro E, Rouco J, Aguiar P, Eloy C, Anto´nio Polo´nia, Aure´lio Campilho, (2017) Classification of breast cancer histology images using Convolutional Neural Networks. PLoS ONE 12(16):1–14
Lawson RN, Chughtai MS (1963) Breast cancer and body temperatures. Can Med Assoc J 88:68–70
Ng E (2008) A review of thermography as promising non-invasive detection modality for breast tumor. Int Journal Therm Sci 48:849–859
EtehadTavakol M, Vinod Chandran E, Ng RK (2013) Breast cancer detection from thermal images using bispectral invariant features. Int J Therm Sci 69:21–36
EtehadTavakol M, Ng EYK, Chandran V, Rabbani H (2013) Separable and Non-separable Discrete Wavelet Transform based Texture Features and Image Classification of Breast Thermograms. Infrared Phys Technol 61:274–286
Etehadtavakol M, Emrani Z, Ng EYK (2018) Rapid extraction of the hottest or coldest regions of medical thermographic images. Med biol eng comput 57(2):379–388
EtehadTavakol M, Lucas C, Sadri S, Ng EYK (2010) Analysis of Breast Thermography Using Fractal Dimension to Establish Possible Difference between Malignant and Benign Patterns. J Healthc Eng. https://doi.org/10.1260/2040-2295.1.1.27
EtehadTavakol M, Ng EYK (2013) Breast Thermography as a Potential Non- Contact Method in the Early Detection of Cancer: A Review. J Mech Med Biol, World Scientific Publishing Company 13(2):1330001
Etehadtavakol M, Ng EYK (2017) An overview of medical infrared imaging in breast abnormalities detection Application of infrared to biomedical sciences. Springer, Singapore
Etehadtavakol M, Ng EYK (2020) Survey of Numerical Bioheat Transfer Modelling for Accurate Skin Surface Measurements. Therm Sci Eng Prog J 20:2451–9049. https://doi.org/10.1016/j.tsep.2020.100681
EtehadTavakol M, Ng EYK, Lucas C, Sadri S, Gheissari N (2011) Estimating the mutual information between bilateral breast in thermograms using nonparametric windows. J Med Syst 35(5):959–967. https://doi.org/10.1007/s10916-010-9516-x
Ng EYK, EtehadTavakol M (2017) Application of infrared to biomedical sciences. Springer Nature Science, Germany
Ghobadi , Somying Thainimit , Duangrat Gansawat , Nobuhiko Sugino (2016) Computer-Aided Analysis for Breast Cancer Detection in Thermography. The 2016 Management and Innovation Technology International Conference 2016 (MITiCON-2016); 189–192
A. Merla and G. L. Romani. Functional Infrared Imaging in Medicine: A Quantitative Diagnostic Approach. Proceedings of the 28th IEEE EMBS Annual International Conference 2006; 224- 227.
Tuceryan M, Jain AK (1993) Texture analysis. Handbook of pattern recognition and computer vision. https://doi.org/10.1142/9789814343138_0010
Rajendra Acharya U, Ng EYK, Tan J-H, Vinitha Sree S (2012) Thermography Based Breast Cancer Detection Using Texture Features and Support Vector Machine. J Med Syst 36:1503–1510
Yoshitaka K (2013) Morphological image processing for quantitative shape analysis of biomedical structures: effective contrast enhancement. J Synchrotron Radiat 20:848–853
Abbas AH, Kareem AA, Kamil MY (2015) Breast Cancer Image Segmentation Using Morphological Operations. IJECET 6:08–14
Shebal KU, Gladston Raj S (2018) An approach for automatic lesion detection in mammograms. Cogent Engineering 5:1–16
Jeyanathan JS, Jeyashree P, Shenbagavalli A (2018) Transform based Classification of Breast Thermograms using Multilayer Perceptron Back Propagation Neural Network. IJPAM 118:1955–1961
Silv LF, Saade DCM, Sequeiros GO, Silva AC, Paiva AC, Bravo RS, Conci A (2014) A New Database for Breast Research with Infrared Image. J Med Imaging Health Inform 4:92–100
Kumar H, Ramesh NAS, Sagar D (2012) Enhancement of Mammographic Images using Morphology and Wavelet Transform. Int J comput technol appl 3:192–198
Wu S, Yu S, Yang Y, Xie Y (2013) Feature and Contrast Enhancement of Mammographic Image Based on Multiscale Analysis and Morphology. Comput Math Methods Med. https://doi.org/10.1155/2013/716948
Wang G, Wang Y, Li H, Chen X, Haitao Lu, Ma Y, Peng C, Wang Y, Tang L (2014) Morphological Background Detection and Illumination Normalization of Text Image with Poor Lighting. PLoS ONE 9:1–22
Alhadidi B, Zu’bi MH, Suleiman HN (2018) Mammogram Breast cancer image detection using image processing functions. Inf Technol J 6:217–221
Khairul Anuar Mat Said , Asral Bahari Jambek (2016) A Study on Image Processing Using Mathematical Morphological. 3rd International Conference on Electronic Design; 507–512
Anandan P, Sabeenian RS (2016) Medical Image Compression Using Wrapping Based Fast Discrete Curvelet Transform and Arithmetic Coding. Circuits and Systems 7(8):2059–2069
C. Raju, T. S. Reddy, and M. Sivasubramanyam. Denoising of Remotely Sensed Images via Curvelet Transform and its Relative Assessment. International Multi Conference on Information Processing 2016; 89: 771–777
Candes E, Demanet L, Donoho D, Ying L (2006) Fast Discrete Curvelet Transforms. SIAM Multi-Scale Modelling and Simulation 5(3):861–899
El-bakry HM, Mostafa RM (2017) Image Contrast Enhancement Using Fast Discrete Curvelet Transform via Wrapping. Int J Adv Res Comput Sci Technol 5(2):10–16
Milosevic M, Jankovic D, Peulic A (2014) Thermography based breast cancer detection using texture features and Minimum variance quantization. EXCLI J 13:1204–1215
Chaddad A, Tanougast C (2017) Texture Analysis of Abnormal Cell Images for Predicting the Continuum of Colorectal Cancer. Anal Cell Pathol. https://doi.org/10.1155/2017/8428102
Anomalies Prerna Batta, Maninder Singh, Zhida Li, Qingye Ding, and Ljiljana Trajkovic. Evaluation of Support Vector Machine Kernels for Detecting Network. IEEE International Symposium on Circuits and Systems (ISCAS- 2018)
Lashkari AmirEhsan, Pak F, Firouzmand M (2016) Full Intelligent Cancer Classification of Thermal Breast Images to Assist Physician in Clinical Diagnostic Applications. J Med Signals Sens 6:12–24
Francis SV, Sasikala M (2013) Automatic detection of abnormal breast thermograms using asymmetry analysis of texture features. J Med Eng Technol 37(1):17–21
Francis SV, Sasikala M, Saranya S (2014) Detection of Breast Abnormality from Thermograms Using Curvelet Transform Based Feature Extraction. J Med Syst 38(4):23
Zadeh HG, Haddadnia J, Ahmadinejad N, Baghdadi MR (2015) Assessing the Potential of Thermal Imaging in Recognition of Breast Cancer. Asian Pacific J Cancer Prev 16:8619–8623
Vijaya Madhavi, T. Christy Bobby. Thermal Imaging Based Breast Cancer Analysis Using BEMD and Uniform RLBP. 3rd International Conference on Biosignals, images and instrumentation (ICBSII) 2017.
Ghobadi H, Thainimit S, Sugino N, Gansawat D, Zadeh HG (2016) Comparative accuracy of Digital Infra-red Thermal Imaging (DITI) in breast cancer diagnosing. J Chem Pharma Res 8(1):577–583
Mohebian MR, Marateb HR, Mansourian M, Mañanas MA, Mokarian F (2017) A Hybrid Computer-aided-diagnosis System for Prediction of Breast Cancer Recurrence (HPBCR) Using Optimized Ensemble Learning. Computational Struct Biotechnol J 15:75–85
Krishnan Mookiah MR, Rajendra Acharya U, Ng EYK (2012) Data mining technique for breast cancer detection in thermograms using hybrid feature extraction strategy. Quant InfraRed Thermogr 9:51–165
Sathish D, Kamath S, Prasad K, Kadavigere R (2017) Role of normalization of breast thermogram images and automatic classification of breast cancer. Vis Comput 35(1):57–70
Lashkari AE, Firouzmand M (2016) Early Breast Cancer Detection in Thermogram Images using AdaBoost Classifier and Fuzzy C-Means Clustering Algorithm. Middle East J Cancer 7(3):113–124
Gogoia UR, Majumdarb G, Bhowmika MK, Ghosha AK (2019) Evaluating the efficiency of infrared breast thermography for early breast cancer risk prediction in asymptomatic population. Infrared Phys Technol 99:201–211. https://doi.org/10.1016/j.infrared.2019.01.004
Kesikoglu MH, Atasever UH, Ozkan C, Besdok E (2016) The Usage of Rusboost Boosting Method for Classification of Impervious Surfaces. ISPRS-Int Arch Photogramm Remote Sens Spatial Inf Sci. https://doi.org/10.5194/isprs-archives-XLI-B7-981-2016
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Karthiga, R., Narasimhan, K. Medical imaging technique using curvelet transform and machine learning for the automated diagnosis of breast cancer from thermal image. Pattern Anal Applic 24, 981–991 (2021). https://doi.org/10.1007/s10044-021-00963-3
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10044-021-00963-3