BirCat Optimization for Automatic Segmentation of Brain Tumors and Pixel Change Detection Using Post-operative MRI Images

Journal of Digital Imaging - Tập 36 Số 2 - Trang 647-665
K. V. Shiny1, N. Sugitha2
1Research Scholar, Department of Computer Science and Engineering, Noorul Islam Centre for Higher Education, Kumaracoil, Kanyakumari, India
2Professor, Department of Electronics and Communication Engineering, Sri Krishna College of Technology, Coimbatore, India

Tóm tắt

Từ khóa


Tài liệu tham khảo

J. B. T. M. Roerdink JBTM, Meijster A: The watershed transform: Definitions, lgorithms and parallelization strategies. FundamentaInformaticae 41:187–228,2000

Li G: Improved watershed segmentation with optimal scale based on ordered dither halftone and mutual information. In Proceedings of the 3rd IEEE International Conference on Computer Science and Information Technology (ICCSIT), 9-11 July 2011, pp 296–300

Liu J, Li M, Wang J, Wu F, Liu T, Pan Y: A survey of MRI-based brain tumor segmentation methods. Tsinghua Sci Technol 19(6):578-595, December 2014

George EB, Rosline GJ, Rajesh DG: Brain tumor segmentation using Cuckoo search optimization for magnetic resonance images. In Proceedings of the 8th IEEE GCC Conference and Exhibition, Muscat, Oman, February, 2015, pp 1–4

Mustaqeem A, Javed A, Fatima T: An efficient brain tumor detection algorithm using watershed & thresholding based segmentation. Int J Image Graph Signal Process 10:34–39,2012

Gonzalez RC, Woods RE: Digital Image Processing, 3rd ed., Prenticeall, New Jersey, 2008

Bhima K, Jagan A: Analysis of MRI based brain tumor identification using segmentation technique. In Proceedings of the International Conference on Communication and Signal Processing (ICCSP), 2016, pp 2109–2113

Subashini M, Sahoo SK: Brain MR image segmentation for tumor detection using artificial neural networks. Int J Eng Technol 5(2):925–933,2013

Ramya L, Sasirekha N: A robust segmentation algorithm using morphological operators for detection of tumor in MRI. In Proceedinsg of the International Conference on Innovations in Information, Embedded and Communication Systems (ICIIECS), 2015, pp 1–4

Braile A, Toro G, De Cicco A, Cecere AB, Zanchini F, Panni AS: Hallux rigidus treated with adipose-derived mesenchymal stem cells: A case report. World J Orthop 12(1):51–55,2021

Catani O, Fusini F, Zanchini F, Sergio F, Cautiero G, Villafane JH, Langella F: Functional outcomes of percutaneous correction of hallux valgus in not symptomatic flatfoot: a case series study. Acta Bio Medica: Atenei Parmensis 91(3),2020

Węgliński T, Fabijańska A: Brain tumor segmentation from MRI data sets using region growing approach. Perspective Technologies and Methods in MEMS Design 185–188,2011

Meier R, Bauer S, Slotboom J, Reyes M: Patient-specific semi-supervised learning for postoperative brain tumor segmentation. In Proceedings of the international conference on Medical image computing and computer-assisted intervention–MICCAI2014: 17th i Boston, MA, USA, September 14–18, 2014, pp 714–721

Cherukuri V, Ssenyonga P, Warf BC, Kulkarni AV, Monga V, Schiff SJ: Learning based segmentation of CT brain images: Application to post-operative hydrocephalic scans. IEEE Transactions on Biomedical Engineering 65(8):1871–-1884,August 2018

Jui SL, Zhang S, Xiong W, Yu F, Fu M, Wang D, Hassanien AE, Xiao K: Brain MR image tumor segmentation with 3-dimensional intracranial structure deformation features. IEEE Intelligent Systems 31(2):66– 76,Mar.-Apr. 2016

Adil M, Abid M, Khan AQ,, Mustafa G: Comparison of PCA and FDA for monitoring of coupled liquid tank system. In the proceeding of 13th International Bhurban Conference on Applied Sciences and Technology (IBCAST), IEEE, 2016, pp 225–230

Rubbi I, Pasquinelli G, Cremonini V, Fortunato F, Gatti L, Lepanto F, Artioli G, Bonacaro A: Does student orientation improve nursing image and positively influence the enrolment of nursing students in the University? An observational study. Acta Biomed for Health Professions 90:68–77,2019

Bonacaro A, Rubbi I, Sookhoo D: The use of wearable devices in preventing hospital readmission and in improving the quality of life of chronic patients in the homecare setting: a narrative literature review. Professioni Infermieristiche 72(2):143–151,2019

Aslam HA, Ramashri T, Ahsan MIA: A new approach to image segmentation for brain tumor detection using pillar K-means algorithm. International Journal of Advanced Research in Computer and Communication Engineering 2(3):1429–1436,2013

Gopal A: Hybrid classifier: Brain tumor classification and segmentation using genetic-based Grey Wolf optimization. Multimedia Research 3(2):1–10,2020.

Gokulkumari G: Classification of brain tumor using Manta Ray Foraging Optimization-based DeepCNN Classifier. Multimedia Research 3(4):32–42,2020

Pereira S, Oliveira A, Alves V, Silva CA: On hierarchical brain tumor segmentation in MRI using fully convolutional neural networks: A preliminary study. IEEE 5th Portuguese Meeting on Bioengineering (ENBENG), 30 March 2017

Abdulraqeb ARA, Al-haidri WA, Sushkova LT: A novel segmentation algorithm for MRI brain tumor images. In Proceedings of the Ural Symposium on Biomedical Engineering, Radioelectronics and Information Technology (USBEREIT), 7-8 May 2018

Selvaraj D, Dhanasekaran R: MRI brain image segmentation techniques - A review. Indian Journal of Computer Science and Engineering (IJCSE) 4:364–381,2013

Archip N, Jolesz F, Warfield S: A validation framework for brain tumor segmentation. Acad Radiol 14(10):1242–1251,2007

Prastawa M, Bullitt E, Gerig E: Synthetic ground truth for validation of brain tumor MRI segmentation. in MICCAI.NewYork: Springer, 2005, pp 26–33

BITE dataset taken from, ”http://nist.mni.mcgill.ca/?page_id=672”, accessed on April

Hinton GE, Osindero S, Teh Y: A fast learning algorithm for deep belief nets. Neural Comput 18:1527–1554,2006

Meng XB, Gao XZ, Lu L, Liu Y, Zhang H. A new bio-inspired optimisation algorithm: Bird Swarm Algorithm. J Exp Theor Artif Intell 28(4):673–687,2016

Chu SC, Tsai PW, Pan JS: Cat swarm optimization. Pacific Rim International Conference on Artificial Intelligence 854–858,2006

Jun B, Choi I, Kim D: Local transform features and hybridization for accurate face and human detection. IEEE Transactions on Pattern Analysis and Machine Intelligence 35(6):1423–1436,2012

Chakraborti T, McCane B, Mills S, Pal U: LOOP descriptor: encoding repeated local patterns for fine-grained visual identification of lepidoptera. Comput Vis Pattern Recogn 2017

Pereira S, Pinto A, Alves V, CA: Brain tumor segmentation using convolutional neural networks in MRI images. IEEE Transactions on Medical Imaging 35(5):1240–1251, 2016

Selvapandian A, Manivannan K: Fusion based glioma brain tumor detection and segmentation using ANFIS classification. Comput Methods Programs Biomed, 12 September 2018

Ma C, Luo G, Wang K: Concatenated and connected random forests with multiscale patch driven active contour model for automated brain tumor segmentation of MR images. IEEE Transactions on Medical Imaging 37(8):1943– 1954,2018

Banerjee S, Mitra S, Shankar BU: Automated 3D segmentation of brain tumor using visual saliency. Inf Sci 424:337–353, January 2018

Hamamci A, Kucuk N, Karaman K, Engin K, Unal G: Tumor-Cut: Segmentation of brain tumors on contrast enhanced MR images for radiosurgery applications. IEEE Transactions on Medical Imaging 31(3):790–804,2012

Pinto A, Pereira S, Rasteiro D, Silva CA: Hierarchical brain tumour segmentation using extremely randomized trees. Pattern Recognit 82:105–117, October 2018

Essadike A, Ouabida E, Bouzid A: Brain tumor segmentation with Vander Lugtcorrelator based active contour. Comput Meth Prog Bio 160:103–117, July 2018