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Erschienen in: Neural Computing and Applications 12/2017

11.04.2016 | Original Article

An integrated method of associative classification and neuro-fuzzy approach for effective mammographic classification

verfasst von: Nirase Fathima Abubacker, Azreen Azman, Shyamala Doraisamy, Masrah Azrifah Azmi Murad

Erschienen in: Neural Computing and Applications | Ausgabe 12/2017

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Abstract

Computer-aided diagnosis has gained a significant attention in helping radiologists to improve the accuracy of mammographic detection and diagnostic decision. The aim of proposed research work is to build an efficient and accurate classifier for the classification of mammogram images using a hybrid method by incorporating Genetic Association Rule Miner (GARM) with the learning capability of neural network. A set of features is extracted that comprises of 34 features based on the second and third level of the wavelet decomposition with 13 features measured directly from the gray-level co-occurrence matrix. In order to eliminate the inappropriate features and to increase the efficiency mining process, a multivariate filter is used for feature selection. Based on the selected features, an association rule mining based on modified GARM is used to generate association rules. In the classification phase, the newly generated association rules are used as the input for the creation and training of an artificial neural network. Furthermore, an extended associative classifier using fuzzy feed-forward backpropagation neural network (ACFNN) is proposed as an effective classifier in the context of mammography. The proposed ACFNN performance is compared with associative classifier using feed-forward backpropagation neural network (ACNN). Based on the experimental results, the performance of the proposed ACFNN is improved significantly. Furthermore, it can be inferred that the mammogram classification is better by using ACFNN with accuracy of 95.1 % as compared to ACNN with 93.7 %.

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Literatur
1.
Zurück zum Zitat Evans JA (1994) Screening mammography breast cancer diagnosis in asymptomatic women: Scane, Potchen, Sierra, Azavedo. 1993 Mosby. £ 110. pp 546. ISBN 0 8016 64888 Evans JA (1994) Screening mammography breast cancer diagnosis in asymptomatic women: Scane, Potchen, Sierra, Azavedo. 1993 Mosby. £ 110. pp 546. ISBN 0 8016 64888
2.
Zurück zum Zitat Yu L, Liu H (2003) Feature selection for high-dimensional data: a fast correlation-based filter solution. In: ICML, vol 3, pp 856–863 Yu L, Liu H (2003) Feature selection for high-dimensional data: a fast correlation-based filter solution. In: ICML, vol 3, pp 856–863
3.
Zurück zum Zitat Holland JH (1975) Adaptation in natural and artificial systems: an introductory analysis with applications to biology, control, and artificial intelligence. U Michigan Press, Ann ArborMATH Holland JH (1975) Adaptation in natural and artificial systems: an introductory analysis with applications to biology, control, and artificial intelligence. U Michigan Press, Ann ArborMATH
4.
Zurück zum Zitat Goldberg DE, Holland JH (1988) Genetic algorithms and machine learning. Mach Learn 3(2):95–99CrossRef Goldberg DE, Holland JH (1988) Genetic algorithms and machine learning. Mach Learn 3(2):95–99CrossRef
5.
Zurück zum Zitat Hou ES, Ansari N, Ren H (1994) A genetic algorithm for multiprocessor scheduling. IEEE Trans Parallel Distrib Syst 5(2):113–120CrossRef Hou ES, Ansari N, Ren H (1994) A genetic algorithm for multiprocessor scheduling. IEEE Trans Parallel Distrib Syst 5(2):113–120CrossRef
6.
Zurück zum Zitat Davis L (1990). Hybrid genetic algorithms for machine learning. In: IEE colloquium on machine learning. IET, pp 9–11 Davis L (1990). Hybrid genetic algorithms for machine learning. In: IEE colloquium on machine learning. IET, pp 9–11
7.
Zurück zum Zitat Vafaie H, De Jong K (1992) Genetic algorithms as a tool for feature selection in machine learning. In: Proceedings., Fourth international conference on tools with artificial intelligence, 1992. TAI’92. IEEE, pp 200–203 Vafaie H, De Jong K (1992) Genetic algorithms as a tool for feature selection in machine learning. In: Proceedings., Fourth international conference on tools with artificial intelligence, 1992. TAI’92. IEEE, pp 200–203
8.
Zurück zum Zitat Deb K, Agrawal S, Pratap A, Meyarivan T (2000) A fast elitist non-dominated sorting genetic algorithm for multi-objective optimization: NSGA-II. In: Schoenauer M, Deb K, Rudolph G, Yao X, Lutton E, Merelo JJ, Schwefel H-P (eds) Parallel problem solving from nature PPSN VI. Springer, Berlin, pp 849–858 Deb K, Agrawal S, Pratap A, Meyarivan T (2000) A fast elitist non-dominated sorting genetic algorithm for multi-objective optimization: NSGA-II. In: Schoenauer M, Deb K, Rudolph G, Yao X, Lutton E, Merelo JJ, Schwefel H-P (eds) Parallel problem solving from nature PPSN VI. Springer, Berlin, pp 849–858
9.
Zurück zum Zitat Dias AH, De Vasconcelos JA (2002) Multiobjective genetic algorithms applied to solve optimization problems. IEEE Trans Magn 38(2):1133–1136CrossRef Dias AH, De Vasconcelos JA (2002) Multiobjective genetic algorithms applied to solve optimization problems. IEEE Trans Magn 38(2):1133–1136CrossRef
10.
Zurück zum Zitat Tsai CF, Tsai CW, Chen CP, Lin FC (2002) A multiple-searching approach to genetic algorithms for solving traveling salesman problem. In: JCIS, pp 362–366 Tsai CF, Tsai CW, Chen CP, Lin FC (2002) A multiple-searching approach to genetic algorithms for solving traveling salesman problem. In: JCIS, pp 362–366
11.
Zurück zum Zitat Saggar M, Agrawal AK, Lad A (2004) Optimization of association rule mining using improved genetic algorithms. In: 2004 IEEE international conference on systems, man and cybernetics, vol 4. IEEE, pp 3725–3729 Saggar M, Agrawal AK, Lad A (2004) Optimization of association rule mining using improved genetic algorithms. In: 2004 IEEE international conference on systems, man and cybernetics, vol 4. IEEE, pp 3725–3729
12.
13.
Zurück zum Zitat Shrivastava VK, Kumar P, Pardasani KR (2010) Extraction of interesting association rules using GA optimization. Global J Comput Sci Technol 10(5):81–84 Shrivastava VK, Kumar P, Pardasani KR (2010) Extraction of interesting association rules using GA optimization. Global J Comput Sci Technol 10(5):81–84
14.
Zurück zum Zitat Jain N, Sharma V, Malviya M (2012) Reduction of negative and positive association rule mining and maintain superiority of rule using modified genetic algorithm. Int J Adv Comput Res (IJACR) 2(4):6 Jain N, Sharma V, Malviya M (2012) Reduction of negative and positive association rule mining and maintain superiority of rule using modified genetic algorithm. Int J Adv Comput Res (IJACR) 2(4):6
15.
Zurück zum Zitat Lim AH, Lee CS, Raman M (2012) Hybrid genetic algorithm and association rules for mining workflow best practices. Expert Syst Appl 39(12):10544–10551CrossRef Lim AH, Lee CS, Raman M (2012) Hybrid genetic algorithm and association rules for mining workflow best practices. Expert Syst Appl 39(12):10544–10551CrossRef
16.
Zurück zum Zitat Wakabi-Waiswa PP, Baryamureeba V, Sarukesi K (2011) Optimized association rule mining with genetic algorithms. In: 2011 seventh international conference on natural computation (ICNC), vol 2. IEEE, pp 1116–1120 Wakabi-Waiswa PP, Baryamureeba V, Sarukesi K (2011) Optimized association rule mining with genetic algorithms. In: 2011 seventh international conference on natural computation (ICNC), vol 2. IEEE, pp 1116–1120
17.
Zurück zum Zitat Nahar J, Imam T, Tickle KS, Chen YPP (2013) Association rule mining to detect factors which contribute to heart disease in males and females. Expert Syst Appl 40(4):1086–1093CrossRef Nahar J, Imam T, Tickle KS, Chen YPP (2013) Association rule mining to detect factors which contribute to heart disease in males and females. Expert Syst Appl 40(4):1086–1093CrossRef
18.
Zurück zum Zitat Das S, Saha B (2009) Data quality mining using genetic algorithm. Int J Comput Sci Secur 3(2):105–112 Das S, Saha B (2009) Data quality mining using genetic algorithm. Int J Comput Sci Secur 3(2):105–112
19.
Zurück zum Zitat Lee DG, Ryu KS, Bashir M, Bae JW, Ryu KH (2013) Discovering medical knowledge using association rule mining in young adults with acute myocardial infarction. J Med Syst 37(2):1–10 Lee DG, Ryu KS, Bashir M, Bae JW, Ryu KH (2013) Discovering medical knowledge using association rule mining in young adults with acute myocardial infarction. J Med Syst 37(2):1–10
20.
Zurück zum Zitat Kumar MR, Iyakutti DK (2011) Application of genetic algorithms for the prioritization of association rules. In: IJCA special issue on artificial intelligence techniques-novel approaches and practical applications, pp 1–3 Kumar MR, Iyakutti DK (2011) Application of genetic algorithms for the prioritization of association rules. In: IJCA special issue on artificial intelligence techniques-novel approaches and practical applications, pp 1–3
21.
Zurück zum Zitat Al-Maqaleh BM (2013) Discovering interesting association rules: a multi-objective genetic algorithm approach. Int J Appl Inf Syst 5(3):47–52 Al-Maqaleh BM (2013) Discovering interesting association rules: a multi-objective genetic algorithm approach. Int J Appl Inf Syst 5(3):47–52
22.
Zurück zum Zitat Vizhi JM, Bhuvaneswari DT (2012) Data quality measurement with threshold using genetic algorithm. Int J Eng Res Appl 2(4):1197-120 Vizhi JM, Bhuvaneswari DT (2012) Data quality measurement with threshold using genetic algorithm. Int J Eng Res Appl 2(4):1197-120
23.
Zurück zum Zitat Keshavamurthy BN, Khan AM, Toshniwal D (2013) Privacy preserving association rule mining over distributed databases using genetic algorithm. Neural Comput Appl 22(1):351–364CrossRef Keshavamurthy BN, Khan AM, Toshniwal D (2013) Privacy preserving association rule mining over distributed databases using genetic algorithm. Neural Comput Appl 22(1):351–364CrossRef
24.
Zurück zum Zitat Islam MJ, Ahmadi M, Sid-Ahmed MA (2010) An efficient automatic mass classification method in digitized mammograms using artificial neural network. arXiv preprint arXiv:1007.5129 Islam MJ, Ahmadi M, Sid-Ahmed MA (2010) An efficient automatic mass classification method in digitized mammograms using artificial neural network. arXiv preprint arXiv:​1007.​5129
25.
Zurück zum Zitat Marcano-Cedeno A, Andina D (2012) Data mining for the diagnosis of type 2 diabetes. In: World Automation Congress (WAC), 2012. IEEE, pp 1–6 Marcano-Cedeno A, Andina D (2012) Data mining for the diagnosis of type 2 diabetes. In: World Automation Congress (WAC), 2012. IEEE, pp 1–6
26.
Zurück zum Zitat Khashei M, Hamadani AZ, Bijari M (2012) A fuzzy intelligent approach to the classification problem in gene expression data analysis. Knowl Based Syst 27:465–474CrossRef Khashei M, Hamadani AZ, Bijari M (2012) A fuzzy intelligent approach to the classification problem in gene expression data analysis. Knowl Based Syst 27:465–474CrossRef
27.
Zurück zum Zitat Ni X (2008) Research of data mining based on neural networks. World Acad Sci Eng Technol 39:381–384 Ni X (2008) Research of data mining based on neural networks. World Acad Sci Eng Technol 39:381–384
28.
Zurück zum Zitat McInerney M, Dhawan AP (1993) Use of genetic algorithms with backpropagation in training of feedforward neural networks. In: IEEE international conference on neural networks, 1993. IEEE, pp 203–208 McInerney M, Dhawan AP (1993) Use of genetic algorithms with backpropagation in training of feedforward neural networks. In: IEEE international conference on neural networks, 1993. IEEE, pp 203–208
29.
Zurück zum Zitat Shekhawat PB, Dhande SS (2011) A classification technique using associative classification. Int J Comput Appl 20(5):20–28 Shekhawat PB, Dhande SS (2011) A classification technique using associative classification. Int J Comput Appl 20(5):20–28
30.
Zurück zum Zitat Mathew LS (2013) Integrated associative classification and neural network model enhanced by using astatistical approach. Int J Data Min Knowl Manag Process 3(4):107CrossRef Mathew LS (2013) Integrated associative classification and neural network model enhanced by using astatistical approach. Int J Data Min Knowl Manag Process 3(4):107CrossRef
31.
Zurück zum Zitat Haralick RM, Shanmugam K, Dinstein IH (1973) Textural features for image classification. IEEE Trans Syst Man Cybern 6:610–621CrossRef Haralick RM, Shanmugam K, Dinstein IH (1973) Textural features for image classification. IEEE Trans Syst Man Cybern 6:610–621CrossRef
32.
Zurück zum Zitat Kang G (1977) Digital image processing. Quest 1:2–20 Kang G (1977) Digital image processing. Quest 1:2–20
33.
Zurück zum Zitat Dougherty J, Kohavi R, Sahami M (1995) Supervised and unsupervised discretization of continuous features. In: Machine learning: proceedings of the twelfth international conference, vol 12, pp 194–202 Dougherty J, Kohavi R, Sahami M (1995) Supervised and unsupervised discretization of continuous features. In: Machine learning: proceedings of the twelfth international conference, vol 12, pp 194–202
34.
Zurück zum Zitat Holmes G, Donkin A, Witten IH (1994) Weka: a machine learning workbench. In: Proceedings of the 1994 Second Australian and New Zealand conference on intelligent information systems, 1994. IEEE, pp 357–361 Holmes G, Donkin A, Witten IH (1994) Weka: a machine learning workbench. In: Proceedings of the 1994 Second Australian and New Zealand conference on intelligent information systems, 1994. IEEE, pp 357–361
35.
Zurück zum Zitat Liu H, Motoda H (eds) (2007) Computational methods of feature selection. CRC Press, Boca RatonMATH Liu H, Motoda H (eds) (2007) Computational methods of feature selection. CRC Press, Boca RatonMATH
36.
Zurück zum Zitat Hall MA (1999) Correlation-based feature selection for machine learning. Doctoral dissertation, The University of Waikato Hall MA (1999) Correlation-based feature selection for machine learning. Doctoral dissertation, The University of Waikato
37.
Zurück zum Zitat Abubacker NF, Azman A, Doraisamy S, Murad MAA, Elmanna MEM, Saravanan R (2014) Correlation-based feature selection for association rule mining in semantic annotation of mammographic medical images. In: Jaafar A, Ali NM, Noah SAM, Smeaton AF, Bruza P, Bakar ZA, Jamil N, Sembok TMT (eds) Information retrieval technology. Springer International Publishing, Berlin, pp 482–493 Abubacker NF, Azman A, Doraisamy S, Murad MAA, Elmanna MEM, Saravanan R (2014) Correlation-based feature selection for association rule mining in semantic annotation of mammographic medical images. In: Jaafar A, Ali NM, Noah SAM, Smeaton AF, Bruza P, Bakar ZA, Jamil N, Sembok TMT (eds) Information retrieval technology. Springer International Publishing, Berlin, pp 482–493
38.
Zurück zum Zitat Purvis MK, Kasabov N, Benwell G, Zhou Q, Zhang F (1998) Neuro-fuzzy methods for environmental modelling. Department of Information Science, University of Otago, Otago Purvis MK, Kasabov N, Benwell G, Zhou Q, Zhang F (1998) Neuro-fuzzy methods for environmental modelling. Department of Information Science, University of Otago, Otago
39.
Zurück zum Zitat Heath M, Bowyer K, Kopans D, Moore R, Kegelmeyer WP (2000) The digital database for screening mammography. In: Proceedings of the 5th international workshop on digital mammography. Medical Physics Publishing, pp 212–218 Heath M, Bowyer K, Kopans D, Moore R, Kegelmeyer WP (2000) The digital database for screening mammography. In: Proceedings of the 5th international workshop on digital mammography. Medical Physics Publishing, pp 212–218
40.
Zurück zum Zitat American College of Radiology. BI-RADS Committee (1998) Breast imaging reporting and data system. American College of Radiology (Ed.). American College of Radiology American College of Radiology. BI-RADS Committee (1998) Breast imaging reporting and data system. American College of Radiology (Ed.). American College of Radiology
41.
Zurück zum Zitat Subasini A, Abubacker NF (2014) Analysis of classifier to improve Medical diagnosis for Breast Cancer Detection using Data Mining Techniques. Int J Adv Netw Appl 5(6):2117 Subasini A, Abubacker NF (2014) Analysis of classifier to improve Medical diagnosis for Breast Cancer Detection using Data Mining Techniques. Int J Adv Netw Appl 5(6):2117
42.
Zurück zum Zitat Petrosian A, Chan HP, Helvie MA, Goodsitt MM, Adler DD (1994) Computer-aided diagnosis in mammography: classification of mass and normal tissue by texture analysis. Phys Med Biol 39(12):2273CrossRef Petrosian A, Chan HP, Helvie MA, Goodsitt MM, Adler DD (1994) Computer-aided diagnosis in mammography: classification of mass and normal tissue by texture analysis. Phys Med Biol 39(12):2273CrossRef
43.
Zurück zum Zitat Jaleel JA, Salim S, Archana S (2014) Textural features based computer aided diagnostic system for mammogram mass classification. In: 2014 international conference on control, instrumentation, communication and computational technologies (ICCICCT). IEEE, pp 806–811 Jaleel JA, Salim S, Archana S (2014) Textural features based computer aided diagnostic system for mammogram mass classification. In: 2014 international conference on control, instrumentation, communication and computational technologies (ICCICCT). IEEE, pp 806–811
44.
Zurück zum Zitat Tai SC, Chen ZS, Tsai WT (2014) An automatic mass detection system in mammograms based on complex texture features. IEEE J Biomed Health Inf 18(2):618–627CrossRef Tai SC, Chen ZS, Tsai WT (2014) An automatic mass detection system in mammograms based on complex texture features. IEEE J Biomed Health Inf 18(2):618–627CrossRef
45.
Zurück zum Zitat Parekh R (2010) Using texture analysis for medical diagnosis. IEEE Multimedia 2:28–37 Parekh R (2010) Using texture analysis for medical diagnosis. IEEE Multimedia 2:28–37
46.
Zurück zum Zitat Wang X, Georganas ND, Petriu EM (2011) Fabric texture analysis using computer vision techniques. IEEE Trans Instrum Meas 60(1):44–56CrossRef Wang X, Georganas ND, Petriu EM (2011) Fabric texture analysis using computer vision techniques. IEEE Trans Instrum Meas 60(1):44–56CrossRef
47.
Zurück zum Zitat Park S, Kim B, Lee J, Goo JM, Shin YG (2011) GGO nodule volume-preserving nonrigid lung registration using GLCM texture analysis. IEEE Trans Biomed Eng 58(10):2885–2894CrossRef Park S, Kim B, Lee J, Goo JM, Shin YG (2011) GGO nodule volume-preserving nonrigid lung registration using GLCM texture analysis. IEEE Trans Biomed Eng 58(10):2885–2894CrossRef
48.
Zurück zum Zitat Grim J, Somol P, Haindl M, Daneš J (2009) Computer-aided evaluation of screening mammograms based on local texture models. IEEE Trans Image Process 18(4):765–773MathSciNetCrossRefMATH Grim J, Somol P, Haindl M, Daneš J (2009) Computer-aided evaluation of screening mammograms based on local texture models. IEEE Trans Image Process 18(4):765–773MathSciNetCrossRefMATH
49.
Zurück zum Zitat Gao X, Wang Y, Li X, Tao D (2010) On combining morphological component analysis and concentric morphology model for mammographic mass detection. IEEE Trans Inf Technol Biomed 14(2):266–273CrossRef Gao X, Wang Y, Li X, Tao D (2010) On combining morphological component analysis and concentric morphology model for mammographic mass detection. IEEE Trans Inf Technol Biomed 14(2):266–273CrossRef
50.
Zurück zum Zitat Chan HP, Wei D, Helvie MA, Sahiner B, Adler DD, Goodsitt MM, Petrick N (1995) Computer-aided classification of mammographic masses and normal tissue: linear discriminant analysis in texture feature space. Phys Med Biol 40(5):857CrossRef Chan HP, Wei D, Helvie MA, Sahiner B, Adler DD, Goodsitt MM, Petrick N (1995) Computer-aided classification of mammographic masses and normal tissue: linear discriminant analysis in texture feature space. Phys Med Biol 40(5):857CrossRef
51.
Zurück zum Zitat Veldkamp WJ, Karssemeijer N, Otten JD, Hendriks JH (2000) Automated classification of clustered microcalcifications into malignant and benign types. Med Phys 27(11):2600–2608CrossRef Veldkamp WJ, Karssemeijer N, Otten JD, Hendriks JH (2000) Automated classification of clustered microcalcifications into malignant and benign types. Med Phys 27(11):2600–2608CrossRef
52.
Zurück zum Zitat Abu-Amara F, Abdel-Qader I (2009) Hybrid mammogram classification using rough set and fuzzy classifier. J Biomed Imaging 2009:17 Abu-Amara F, Abdel-Qader I (2009) Hybrid mammogram classification using rough set and fuzzy classifier. J Biomed Imaging 2009:17
53.
Zurück zum Zitat Viton JL, Rasigni M, Rasigni G, Llebaria A (1996) Method for characterizing masses in digital mammograms. Opt Eng 35(12):3453–3459CrossRef Viton JL, Rasigni M, Rasigni G, Llebaria A (1996) Method for characterizing masses in digital mammograms. Opt Eng 35(12):3453–3459CrossRef
54.
Zurück zum Zitat Lisboa PJ (2002) A review of evidence of health benefit from artificial neural networks in medical intervention. Neural Netw 15(1):11–39CrossRef Lisboa PJ (2002) A review of evidence of health benefit from artificial neural networks in medical intervention. Neural Netw 15(1):11–39CrossRef
55.
Zurück zum Zitat de OliveiraMartins L, Junior GB, Silva AC, de Paiva AC, Gattass M (2009) Detection of masses in digital mammograms using K-means and support vector machine. ELCVIA Electron Lett Comput Vis Image Anal 8(2):39–50 de OliveiraMartins L, Junior GB, Silva AC, de Paiva AC, Gattass M (2009) Detection of masses in digital mammograms using K-means and support vector machine. ELCVIA Electron Lett Comput Vis Image Anal 8(2):39–50
56.
Zurück zum Zitat Bovis K, Singh S (2002) Classification of mammographic breast density using a combined classifier paradigm. In Medical image understanding and analysis (MIUA) conference, Portsmouth Bovis K, Singh S (2002) Classification of mammographic breast density using a combined classifier paradigm. In Medical image understanding and analysis (MIUA) conference, Portsmouth
57.
Zurück zum Zitat Raso G, Magro R, Fauci F (2004) Mammogram segmentation by contour searching and massive lesion classification with neural network. In: IEEE nuclear science symposium conference record Raso G, Magro R, Fauci F (2004) Mammogram segmentation by contour searching and massive lesion classification with neural network. In: IEEE nuclear science symposium conference record
58.
Zurück zum Zitat Eddaoudi F, Regragui F, Mahmoudi A, Lamouri N (2011) Masses detection using SVM classifier based on textures analysis. Appl Math Sci 5(8):367–379MATH Eddaoudi F, Regragui F, Mahmoudi A, Lamouri N (2011) Masses detection using SVM classifier based on textures analysis. Appl Math Sci 5(8):367–379MATH
59.
Zurück zum Zitat Singh BK (2011) Mammographic image enhancement, classification and retrieval using color, statistical and spectral Analysis. Int J Comput Appl 10:18–23 Singh BK (2011) Mammographic image enhancement, classification and retrieval using color, statistical and spectral Analysis. Int J Comput Appl 10:18–23
60.
Zurück zum Zitat Mavroforakis ME, Georgiou HV, Dimitropoulos N, Cavouras D, Theodoridis S (2006) Mammographic masses characterization based on localized texture and dataset fractal analysis using linear, neural and support vector machine classifiers. Artif Intell Med 37(2):145–162CrossRef Mavroforakis ME, Georgiou HV, Dimitropoulos N, Cavouras D, Theodoridis S (2006) Mammographic masses characterization based on localized texture and dataset fractal analysis using linear, neural and support vector machine classifiers. Artif Intell Med 37(2):145–162CrossRef
61.
Zurück zum Zitat Agrawal R, Imieliński T, Swami A (1993) Mining association rules between sets of items in large databases. ACM SIGMOD Record 22(2):207–216CrossRef Agrawal R, Imieliński T, Swami A (1993) Mining association rules between sets of items in large databases. ACM SIGMOD Record 22(2):207–216CrossRef
62.
Zurück zum Zitat Antonie ML, Zaiane OR, Coman A (2002) Associative classifiers for medical images. In: Zaïane OR, Simoff SJ, Djeraba C (eds) Mining multimedia and complex data. Springer, Berlin, pp 68–83 Antonie ML, Zaiane OR, Coman A (2002) Associative classifiers for medical images. In: Zaïane OR, Simoff SJ, Djeraba C (eds) Mining multimedia and complex data. Springer, Berlin, pp 68–83
63.
Zurück zum Zitat Ribeiro MX, Traina AJ, Balan AG, Traina C, Marques P (2007) SuGAR: a framework to support mammogram diagnosis. In: Twentieth IEEE international symposium on computer-based medical systems, 2007. CBMS’07. IEEE, pp 47–52 Ribeiro MX, Traina AJ, Balan AG, Traina C, Marques P (2007) SuGAR: a framework to support mammogram diagnosis. In: Twentieth IEEE international symposium on computer-based medical systems, 2007. CBMS’07. IEEE, pp 47–52
64.
Zurück zum Zitat Tseng VS, Wang MH, Su JH (2005) A new method for image classification by using multilevel association rules. In: 21st international conference on data engineering workshops, 2005. IEEE, pp 1180–1180 Tseng VS, Wang MH, Su JH (2005) A new method for image classification by using multilevel association rules. In: 21st international conference on data engineering workshops, 2005. IEEE, pp 1180–1180
65.
Zurück zum Zitat Yun J, Zhanhuai L, Yong W, Longbo Z (2005) Joining associative classifier for medical images. In: Fifth international conference on hybrid intelligent systems, 2005. HIS’05. IEEE, p 6 Yun J, Zhanhuai L, Yong W, Longbo Z (2005) Joining associative classifier for medical images. In: Fifth international conference on hybrid intelligent systems, 2005. HIS’05. IEEE, p 6
66.
Zurück zum Zitat Ribeiro MX, Traina C, Azevedo-Marques PM (2008) An association rule-based method to support medical image diagnosis with efficiency. IEEE Trans Multimedia 10(2):277–285CrossRef Ribeiro MX, Traina C, Azevedo-Marques PM (2008) An association rule-based method to support medical image diagnosis with efficiency. IEEE Trans Multimedia 10(2):277–285CrossRef
67.
Zurück zum Zitat Watanabe CY, Ribeiro MX, Traina Jr C, Traina AJ (2010) SACMiner: a new classification method based on statistical association rules to mine medical images. In: Filipe J, Cordeiro J (eds) Enterprise information systems. Springer, Berlin, pp 249–263 Watanabe CY, Ribeiro MX, Traina Jr C, Traina AJ (2010) SACMiner: a new classification method based on statistical association rules to mine medical images. In: Filipe J, Cordeiro J (eds) Enterprise information systems. Springer, Berlin, pp 249–263
68.
Zurück zum Zitat Watanabe CY, Ribeiro MX, Traina AJ, Traina C (2012) A statistical associative classifier with automatic estimation of parameters on computer aided diagnosis. In: 2012 11th international conference on machine learning and applications (ICMLA), vol 1. IEEE, pp 564–567 Watanabe CY, Ribeiro MX, Traina AJ, Traina C (2012) A statistical associative classifier with automatic estimation of parameters on computer aided diagnosis. In: 2012 11th international conference on machine learning and applications (ICMLA), vol 1. IEEE, pp 564–567
69.
Zurück zum Zitat Park J, Sandberg IW (1991) Universal approximation using radial-basis-function networks. Neural Comput 3(2):246–257CrossRef Park J, Sandberg IW (1991) Universal approximation using radial-basis-function networks. Neural Comput 3(2):246–257CrossRef
70.
Zurück zum Zitat Platt J (1998) Sequential minimal optimization: a fast algorithm for training support vector machines. Technical Report MSR-TR-98-14 Platt J (1998) Sequential minimal optimization: a fast algorithm for training support vector machines. Technical Report MSR-TR-98-14
71.
Zurück zum Zitat Rish I (2001) An empirical study of the naive Bayes classifier. In: IJCAI 2001 workshop on empirical methods in artificial intelligence, vol 3, No. 22. IBM, New York, pp 41–46 Rish I (2001) An empirical study of the naive Bayes classifier. In: IJCAI 2001 workshop on empirical methods in artificial intelligence, vol 3, No. 22. IBM, New York, pp 41–46
72.
Zurück zum Zitat Holte RC (1993) Very simple classification rules perform well on most commonly used datasets. Mach Learn 11(1):63–90CrossRefMATH Holte RC (1993) Very simple classification rules perform well on most commonly used datasets. Mach Learn 11(1):63–90CrossRefMATH
73.
Zurück zum Zitat Salzberg SL (1994) C4. 5: Programs for machine learning by j. ross quinlan. morgan Kaufmann Publishers, Inc., 1993. Mach Learn 16(3):235–240 Salzberg SL (1994) C4. 5: Programs for machine learning by j. ross quinlan. morgan Kaufmann Publishers, Inc., 1993. Mach Learn 16(3):235–240
74.
Zurück zum Zitat Ma BLWHY (1998) Integrating classification and association rule mining. In: Proceedings of the fourth international conference on knowledge discovery and data mining Ma BLWHY (1998) Integrating classification and association rule mining. In: Proceedings of the fourth international conference on knowledge discovery and data mining
75.
Zurück zum Zitat Li W, Han J, Pei J (2001) CMAR: accurate and efficient classification based on multiple class-association rules. In: Proceedings IEEE international conference on data mining, 2001. ICDM 2001. IEEE, pp 369–376 Li W, Han J, Pei J (2001) CMAR: accurate and efficient classification based on multiple class-association rules. In: Proceedings IEEE international conference on data mining, 2001. ICDM 2001. IEEE, pp 369–376
76.
Zurück zum Zitat Yin X, Han J (2003) CPAR: classification based on predictive association rules. In: SDM, vol 3. pp 331–335 Yin X, Han J (2003) CPAR: classification based on predictive association rules. In: SDM, vol 3. pp 331–335
Metadaten
Titel
An integrated method of associative classification and neuro-fuzzy approach for effective mammographic classification
verfasst von
Nirase Fathima Abubacker
Azreen Azman
Shyamala Doraisamy
Masrah Azrifah Azmi Murad
Publikationsdatum
11.04.2016
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 12/2017
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-016-2290-z

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