Teeth periapical lesion prediction using machine learning techniques

Show simple item record

dc.contributor.author Mahmoud Y.E.
dc.contributor.author Labib S.S.
dc.contributor.author Mokhtar H.M.O.
dc.contributor.other Faculty of Computer Sciences
dc.contributor.other Modern Sciences and Arts University
dc.contributor.other Giza
dc.contributor.other Egypt; Faculty of Computers and Information
dc.contributor.other Cairo University
dc.contributor.other Giza
dc.contributor.other Egypt
dc.date.accessioned 2020-01-09T20:41:35Z
dc.date.available 2020-01-09T20:41:35Z
dc.date.issued 2016
dc.identifier.isbn 9.78E+12
dc.identifier.other https://doi.org/10.1109/SAI.2016.7555972
dc.identifier.other PubMed ID :
dc.identifier.uri https://t.ly/dOrX6
dc.description Scopus
dc.description.abstract Teeth Periapical lesion is used to be diagnosed by dentists according to patient's x-ray. But most of the time there were a problematic issue to reach a definitive diagnosis. It takes too much time, case and chief complaint history needed, many tests and tools are needed and sometimes taking too many radiographs is required. Even though, before starting the treatment sometimes reaching definitive diagnosis is difficult. Therefore, the objective of this research is to predict whether the patient has teeth periapical lesion or not and its type using machine learning techniques. The proposed system consists of four main steps: Data collection, image preprocessing using median and average filters for removing noise and Histogram equalization for image enhancement, feature extraction using two dimensional discrete wavelet transform algorithm, and finally machine learning (classification) using Feed Forward Neural Networks and K-Nearest Neighbor Classifier. It has been concluded from the results that the K-Nearest Neighbor Classifier performs better than Feed Forward Neural Network on our real database. � 2016 IEEE. en_US
dc.description.uri https://www.scimagojr.com/journalsearch.php?q=21100780803&tip=sid&clean=0
dc.language.iso English en_US
dc.publisher Institute of Electrical and Electronics Engineers Inc. en_US
dc.relation.ispartofseries Proceedings of 2016 SAI Computing Conference, SAI 2016
dc.subject Classification en_US
dc.subject Discrete Wavelet Transform en_US
dc.subject Histogram Equalization en_US
dc.subject Artificial intelligence en_US
dc.subject Classification (of information) en_US
dc.subject Data mining en_US
dc.subject Discrete wavelet transforms en_US
dc.subject Equalizers en_US
dc.subject Face recognition en_US
dc.subject Feature extraction en_US
dc.subject Graphic methods en_US
dc.subject Learning algorithms en_US
dc.subject Median filters en_US
dc.subject Motion compensation en_US
dc.subject Nearest neighbor search en_US
dc.subject Wavelet transforms en_US
dc.subject Average filter en_US
dc.subject Data collection en_US
dc.subject Histogram equalizations en_US
dc.subject Image preprocessing en_US
dc.subject K-nearest neighbor classifier en_US
dc.subject Machine learning techniques en_US
dc.subject Problematic issues en_US
dc.subject Two-dimensional discrete wavelet transform en_US
dc.subject Learning systems en_US
dc.title Teeth periapical lesion prediction using machine learning techniques en_US
dc.type Conference Paper en_US
dcterms.isReferencedBy Martin, D., (2015) Common Dental Infections in the Primary Care Setting-American Family Physician, , http://www.aafp.org/afp/2008/0315/p797.html, [Accessed: 28-Oct-2015]; Walsh, L., Serious complications of endodontic infections: Some caustionary tales (1997) Australian Dental Journal, 42 (3), pp. 156-159; Matthews, D., Sutherland, S., Basrani, B., Emergency management of acute apical abscesses in the permanent dentition: A systematic review of the literature (2003) Journal of the Canadian Dental Association, 69 (10), p. 660; Hargreaves, K., Cohen, S., Berman, L., (2011) Cohen's Pathways of the Pulp, , St. Louis, Mo.: Mosby Elsevier; Jitendra, V., Dey, N., Kumar, V., PCA-PNN and PCA-SVM based CAD systems for breast density classification (2016) Applications of Intelligent Optimization in Biology and Medicine, pp. 159-180. , Springer International Publishing; Abir, G., Grid Color Moment Features in Glaucoma Classification; Siddhartha Sankar, N., A survey of image classification methods and techniques (2014) Control, Instrumentation, Communication and Computational Technologies (ICCICCT), 2014 International Conference On.IEEE; Sourav, S., Haralick features based automated glaucoma classification using back propagation neural network (2015) Proceedings of the 3rd International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA) 2014, , Springer International Publishing; Prateek Singh, H., Nigam, A., Kumar Gautam, A., Bhardwaj, A., Singh, N., Noise reduction in images using enhanced average filter (2014) International Journal of Computer Applications, pp. 25-28; Patidar, P., Gupta, M., Srivastava, S., Nagawat, A., Image de-noising by various filters for different noise (2010) International Journal of Computer Applications, 9 (4), pp. 45-50; Rana, S.B., Rana, S.B., A review of medical image enhancement techniques for image processing (2015) International Journal of Current Engineering and Technology, 5 (2), pp. 1282-1286; Kaur Khehra, M., Devgun, M., Survey on image enhancement techniques for digital images (2015) Scholars Journal of Engineering and Technology, 3 (2), pp. 202-206; Padma Nanthagopal, A., Sukanesh Rajamony, R., Automatic classification of brain computed tomography images using waveletbased statistical texture features (2012) J Vis, 15 (4), pp. 363-372; Mohanaiah, P., Sathyanarayana, P., GuruKumar, L., Image texture feature extraction using GLCM approach (2013) International Journal of Scientific and Research Publications, 3 (5); Alginahi, Y., Preprocessing techniques in character recognition (2010) Character Recognition; Vyas, S., Upadhyay, D., Classification of iris plant using feedforward neural network (2014) International Refereed Journal of Engineering and Science, 3 (12), pp. 65-69; Chavan, N.V., Jadhav, B.D., Patil, P.M., Detection and classification of brain tumors (2015) International Journal of Computer Application, 112 (8), pp. 48-53; Kumar, V., Gupta, P., Importance of statistical measures in digital image processing (2012) International Journal of Emerging Technology and Advanced Engineering, 2 (8), pp. 56-62; Han, J., Kamber, M., (2006) Data Mining, , Amsterdam: Elsevier; Kotsiantis, S.B., Zaharakis, I., Pintelas, P., (2007) Supervised Machine Learning: A Review of Classification Techniques, pp. 3-24; Milan, K., Godara, S., (2011) Comparative Study of Data Mining Classification Methods in Cardiovascular Disease Prediction 1
dcterms.source Scopus
dc.identifier.doi https://doi.org/10.1109/SAI.2016.7555972
dc.identifier.doi PubMed ID :
dc.Affiliation October University for modern sciences and Arts (MSA)


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search MSAR


Advanced Search

Browse

My Account