Textural analysis based classification of digital X-ray images for dental caries diagnosis
Автор: Geetha V., Aprameya K. S.
Журнал: International Journal of Engineering and Manufacturing @ijem
Статья в выпуске: 3 vol.9, 2019 года.
Бесплатный доступ
In this paper, we propose a suitable textural feature for diagnosis of dental caries in digital radiographs. The dental diagnosis system consists of Laplacian filter for image sharpening, adaptive threshold and morphological operations for segmentation, and support vector machine (SVM) as a classifier. In segmented image, textural features are extracted, and applied to the classifier, to classify the image as caries or normal. Experimental results indicate that GLCM (Grey Level Co-occurrence Matrix) and GLDM (Grey Level Difference Method) textural features are giving better performance measures as compared to other types of textural features with an accuracy of 96.88%, sensitivity of 1, specificity of 0.8667 and precision of 96.08%. The data were analyzed by Analysis of Variance (ANOVA), at a significant level of 5%. This result indicates that the interaction of feature extraction methods on performance measures are significant. Hence, GLCM or GLDM features provide reliable decision support for dental caries diagnosis.
Dental radiography, computer aided diagnosis, dental caries, textural analysis
Короткий адрес: https://sciup.org/15015885
IDR: 15015885 | DOI: 10.5815/ijem.2019.03.04
Список литературы Textural analysis based classification of digital X-ray images for dental caries diagnosis
- S. Datta and N. Chaki, “Detection of dental caries lesion at early stage based on image analysis technique”, Proceedings of IEEE International Conference on Computer Graphics, Vision and Information Security (CGVIS), IEEE Press, pp. 89-93, 2015.
- B. ?enel, K. Kamburo?lu, ?. ü?ok, S. P. Yüksel, T. ?zen, and H. Avsever, “Diagnostic accuracy of different imaging modalities in detection of proximal caries”, Dentomaxillofacial Radiology, Vol. 39 No.8, pp. 501–511, 2010.
- Anil K. Jain, Hong Chen, “Matching of dental X-ray images for human identification,” Pattern Recognition, Vol. 37, pp. 1519–1532, 2004.
- B M. D. F. belém, G. M. B. Ambrosano, C. P. M. Tabchoury, R. I. Ferreira-Santos and F. Haiter-Neto, “Performance of digital radiography with enhancement filters for the diagnosis of proximal caries”, Brazilian Oral Research, Vol. 27, No.3, pp. 245–251, 2013.
- Eyad Haj Said, Diaa Eldin M. Nassar, Gamal Fahmy, and Hany H. Ammar,” Teeth Segmentation in Digitized Dental X-Ray Films Using Mathematical Morphology”, IEEE Transactions On Information Forensics And Security, pp. 1556-6013, 2006.
- Manuella DFB, Glaucia MBA, Cinthia PMT, Rivea IFS and Francisco HN, “Performance of digital radiography with enhancement filters for the diagnosis of proximal caries”, Oral Radiology, Braz Oral Res., Vol. 27 No. 3, pp. 245-251, 2013.
- B. Yousefi, H. Hakim, N. Motahir, P. Yousefi and M.M. Hosseini, “Visibility enhancement of digital dental X-ray for RCT Application Using Bayesian Classifier and Two Times Wavelet Image Fusion”, Journal of American Science, Vol. 8, No.1, pp. 7-13, 2012.
- T. Kondo, S. Ong, and K. Foong, “Tooth segmentation of dental study models using range images”, IEEE Trans. Med. Imaging, Vol. 23, pp. 350-362. 2004.
- Eyad Haj Said, Diaa Eldin M. Nassar, Gamal Fahmy and Hany H. Ammar, “Teeth segmentation in digitized dental x-ray films using mathematical morphology”, IEEE Transactions on Information Forensics and Security, pp. 1556-6013, 2006.
- Omaima Nomir, M. A. Mottaleb, “A system for human identification from X-ray dental radiographs”, Pattern Recognition, Vol. 38, pp. 1295–1305, 2005.
- N. SenthilKumaran, “Edge detection for dental x-ray image segmentation using neural network approach”, The International Journal of Computer Science & Applications (TIJCSA), Vol. 1, No.7, pp. 8-13, 2012.
- N. SenthilKumaran, “Genetic algorithm approach to edge detection for dental x-ray image segmentation”, International Journal of Advanced Research in Computer Science and Electronics Engineering (IJARCSEE), Vol. 1, No.7, pp. 179-182, 2012.
- B. Vijayakumari, G. Ulaganathan, and A. Banumathi, “Dental cyst diagnosis using texture analysis”, Proceedings of Machine Vision and Image Processing (MVIP), IEEE press, pp. 117-120, 2012.
- K. Veena Divya, A. Jatti, R. Joshi, and S. Deepu Krishna, “Characterization of dental pathologies using digital panoramic X-ray images based on texture analysis”, Proceedings of 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), IEEE Press, pp. 450-454, 2007.
- Abdolvahab Ehsani Rad, Mohd Shafry Mohd Rahim and Alireza Norouzi, “Digital dental x-ray image segmentation and feature extraction”, TELKOMNIKA, Vol. 11 No. 6, pp. 3109–3114, June 2013.
- Tirupathi Puppala and Ramana Nagavelli, “Dental disease mobile assistant by digital image processing”, International Journal of Electronics Communication and Computer Technology (IJECCT), Vol. 5, pp. 25-29, May 2015.
- Ainas A. ALbahbah, Hazem M. El-Bakry and Sameh Abd-Elgahany, “Detection of caries in Panoramic Dental X-ray Images using Back-Propagation Neural Network”, International Journal of Electronics Communication and Computer Engineering, Vol. 7, No. 5, pp. 250-256, 2016.
- W Li, W. Kuang, Y. Li, Y.-J. Li, and W.-P. Ye, “Clinical X-Ray Image Based Tooth Decay Diagnosis using SVM”, Proceedings of International Conference on Machine Learning and Cybernetics, IEEE Press, pp. 1616-1619, 2007.
- Y. Yu, Y. Li, Y. Li, J. Wang, D. Lin, and W. Ye, “Tooth Decay Diagnosis using Back Propagation Neural Network”, Proceedings of 2006 International Conference on Machine Learning and Cybernetics, IEEE Press, pp. 3956-3959, 2006.
- Shuo Li, Thomas Fevens, Adam Krzyzak, Chao Jin and Song Li, “Semi-automatic computer aided lesion detection in dental X-rays using variational level set”, Pattern Recognition, Vol. 40, pp. 286–873, 2007.
- Shuo Li, Thomas Fevens, Adam Krzyzak, Song Li, “An automatic variational level set segmentation framework for computer aided dental X-rays analysis in clinical environments”, Computerized Medical Imaging and Graphics, Vol. 30, pp. 65–74, 2008.
- Nurtanio, Ingrid, Astuti, Eha Renwi, Purnama, I. Ketut Eddy, Hariadi, Mochamad, Purnomo, Mauridhi Hery, “Classifying Cyst and Tumour Lesion Using Support Vector Machine Based on Dental Panoramic Images Texture Features”, IAENG International Journal of Computer Science, Vol. 40 No.1, pp. 29-37, 2013.
- A. Farzana Shahar Banu, M. Kayalvizhi, Banumathi Armugam and Ulaganatham Gurenathan, “Texture based classification of dental cysts”, Proceedings of 2014 International Conference on Control, Instrumentation, Communication and Computational Technologies (ICCICCT), pp. 1248-1252, 2014.
- J. Raju and C. K. Modi, “A Proposed Feature Extraction Technique for Dental X-Ray Images Based on Multiple Features”, Proceedings of. 2011 International Conference on Communication Systems and Network Technologies, IEEE Press, pp. 545-549, 2011.
- Ş. Oprea, C. Marinescu, I. Liţă, M. Jurianu, D. A. Vişan, I. B. Cioc, “Image Processing Techniques used for Dental X-ray Image Analysis”, Proceedings of Electronics Technology, pp. 125-129, 2008.
- A. Sadeghi Qaramaleki, H. Hassan pour, “A New Method to Secondary Caries Detection in Restored Teeth”, International Journal of Scientific & Engineering Research, Vol. 2, pp. 1-5, 2011.
- Grace F. Olsen, Susan S. Brilliant, David Primeaux, and Kayvan Najarian, “An Image-Processing Enabled Dental Caries Detection System”, Proceedings of Complex Medical Engineering, IEEE Press, pp. 1-8, 2009.
- Adhar Vashishth, Bipan Kaushal, Abhishek Srivastava, “Caries Detection Technique for Radiographic and Intra Oral Camera Images,” International Journal of Soft Computing and Engineering (IJSCE), Vol. 4, pp. 180-182, May 2014.
- Jufriadif Na`am, Johan Harlan, Sarifuddin Madenda, Eri Prasetio Wibowo, “Identification of The Proximal Caries of Dental X-Ray Image with Multiple Morphology Gradient Method”, International Journal on Advanced Science, Engineering Technology, Vol.6, No.3, 2016.
- Solmaz Valizadeh, Mostafa Goodini, Sara Ehsani, Hadis Mohseni, Fateme Azimi, and Hooman Bakhshandeh, “Designing of a Computer Software for Detection of Approximal Caries in Posterior Teeth”, Iran J Radiol., Vol. 12, 2015.
- Shubhangi Vinayak Tikhe, Anjali Milind Naik, Sadashiv D. Bhide, T. Saravanan, K. P. Kaliyamurthiie, “Algorithm to Identify Enamel Caries and Interproximal Caries Using Dental Digital Radiographs”, Proceedings of 2016 IEEE 6th International Conference on Advanced Computing, pp. 225-228, 2016.
- T.A. Lasko, J.G. Bhagwat, K. H. Zou and L. Ohno-Machado, “The use of receiver operating characteristic curves in biomedical informatics”, Journal of Biomedical Informatics, Vol. 38, No.5, pp. 404-415, Oct. 2005.
- R.M. Haralick, K. Shanmugam and I Dinstein, “Textural Features for classification”, IEEE Transactions on Systems, Man and Cybernetics, Vol. 3, No.6. pp. 610- 621, Nov.1973.
- R.C. Gonzales, R.E. Woods S.L. Eddins, Digital Image Processing Using MATLAB, New York: Pearson Prentice Hall, 2004.
- J. Luts, F. Ojeda, R. Van de Plas, B. De Moor, S. Van Huffel and J.A.K. Suykens, “A tutorial on support vector machine-based methods for classification problems in chemometric,” Anal. Chim. Acta, Vol. 665, No.2, pp. 129-145, 2010.