Brain structural disorders detection and classification approaches: a review

被引:29
作者
Bhatele, Kirti Raj [1 ]
Bhadauria, Santa Singh [2 ]
机构
[1] Rajiv Gandhi Tech Univ, Bhopal, India
[2] MITS, Gwalior, Madhya Pradesh, India
关键词
Medical imaging modalities; Magnetic resonance imaging (MRI); Computed tomography (CT) scans; Image segmentation; Machine learning; Ensemble learning; Deep learning; Brain tumour; Alzheimer disease (AD); Schizophrenia disease (SCH); Bipolar disorder (BP); Parkinson's disease (PD) etc; CONVOLUTIONAL NEURAL-NETWORKS; MAGNETIC-RESONANCE IMAGES; TUMOR SEGMENTATION; PARKINSONS-DISEASE; NOISE-REDUCTION; MR-IMAGES; FEATURES; DIAGNOSIS; SCHIZOPHRENIA; SELECTION;
D O I
10.1007/s10462-019-09766-9
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper is an effort to encapsulate the various developments in the domain of different unsupervised, supervised and half supervised brain anomaly detection approaches or techniques proposed by the researchers working in the domain of the Medical image segmentation and classification. As researchers are constantly working hard in the domain of image segregation, interpretation and computer vision in order to automate the task of tumour segmentation, anomaly detection, classification and other structural disorder prediction at an early stage with the aid of computer. The different medical imaging modalities are used by the doctors in order to diagnose the brain tumour and other structural brain disorders which are an integral part of diagnosis and prognosis process. When these different medical image modalities are used along with various image segmentation methods and machine learning approaches tends to perform brain structural disorder detection and classification in a semi-automated or fully automated manner with high accuracy. This paper presents all such approaches using various medical image modalities for the accurate detection and classification of brain tumour and other brain structural disorders. In this paper, all the major phases of any brain tumour or brain structural disorder detection and classification approach is covered begin with the comparison of various medical image pre-processing techniques then major segmentation approaches followed by the approaches based on machine learning. This paper also presents an evaluation and comparison among the various popular texture and shape based feature extraction methods used in combination with different machine learning classifiers on the BRATS 2013 dataset. The fusion of MRI modalities used along with the hybrid features extraction methods and ensemble model delivers the best result in terms of accuracy.
引用
收藏
页码:3349 / 3401
页数:53
相关论文
共 115 条
[71]   A novel technique for multilevel optimal magnetic resonance brain image thresholding using bacterial foraging [J].
Maitra, Madhubanti ;
Chatterjee, Amitava .
MEASUREMENT, 2008, 41 (10) :1124-1134
[72]   Multilevel thresholding for segmentation of medical brain images using real coded genetic algorithm [J].
Manikandan, S. ;
Ramar, K. ;
Iruthayarajan, M. Willjuice ;
Srinivasagan, K. G. .
MEASUREMENT, 2014, 47 :558-568
[73]   Improved Fuzzy C-Means based Particle Swarm Optimization (PSO) initialization and outlier rejection with level set methods for MR brain image segmentation [J].
Mekhmoukh, Abdenour ;
Mokrani, Karim .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2015, 122 (02) :266-281
[74]   The Multimodal Brain Tumor Image Segmentation Benchmark (BRATS) [J].
Menze, Bjoern H. ;
Jakab, Andras ;
Bauer, Stefan ;
Kalpathy-Cramer, Jayashree ;
Farahani, Keyvan ;
Kirby, Justin ;
Burren, Yuliya ;
Porz, Nicole ;
Slotboom, Johannes ;
Wiest, Roland ;
Lanczi, Levente ;
Gerstner, Elizabeth ;
Weber, Marc-Andre ;
Arbel, Tal ;
Avants, Brian B. ;
Ayache, Nicholas ;
Buendia, Patricia ;
Collins, D. Louis ;
Cordier, Nicolas ;
Corso, Jason J. ;
Criminisi, Antonio ;
Das, Tilak ;
Delingette, Herve ;
Demiralp, Cagatay ;
Durst, Christopher R. ;
Dojat, Michel ;
Doyle, Senan ;
Festa, Joana ;
Forbes, Florence ;
Geremia, Ezequiel ;
Glocker, Ben ;
Golland, Polina ;
Guo, Xiaotao ;
Hamamci, Andac ;
Iftekharuddin, Khan M. ;
Jena, Raj ;
John, Nigel M. ;
Konukoglu, Ender ;
Lashkari, Danial ;
Mariz, Jose Antonio ;
Meier, Raphael ;
Pereira, Sergio ;
Precup, Doina ;
Price, Stephen J. ;
Raviv, Tammy Riklin ;
Reza, Syed M. S. ;
Ryan, Michael ;
Sarikaya, Duygu ;
Schwartz, Lawrence ;
Shin, Hoo-Chang .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2015, 34 (10) :1993-2024
[75]   A survey on the magnetic resonance image denoising methods [J].
Mohan, J. ;
Krishnaveni, V. ;
Guo, Yanhui .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2014, 9 :56-69
[76]  
Morabito FC, 2016, 2016 IEEE 2ND INTERNATIONAL FORUM ON RESEARCH AND TECHNOLOGIES FOR SOCIETY AND INDUSTRY LEVERAGING A BETTER TOMORROW (RTSI), P162
[77]  
Mustaqeem Anam, 2012, International Journal of Image, Graphics and Signal Processing, V4, P34, DOI 10.5815/ijigsp.2012.10.05
[78]   Brain tumors detection and segmentation in MR images: Gabor wavelet vs. statistical features [J].
Nabizadeh, Nooshin ;
Kubat, Miroslav .
COMPUTERS & ELECTRICAL ENGINEERING, 2015, 45 :286-301
[79]   Distinguishing early and late brain aging from the Alzheimer's disease spectrum: consistent morphological patterns across independent samples [J].
Nhat Trung Doan ;
Engvig, Andreas ;
Zaske, Krystal ;
Persson, Karin ;
Lund, Martina Jonette ;
Kaufmann, Tobias ;
Cordova-Palomera, Aldo ;
Alnaes, Dag ;
Moberget, Torgeir ;
Braekhus, Anne ;
Barca, Maria Lage ;
Nordvik, Jan Egil ;
Engedal, Knut ;
Agartz, Ingrid ;
Selbaek, Geir ;
Andreassen, Ole A. ;
Westlye, Lars T. .
NEUROIMAGE, 2017, 158 :282-295
[80]   Exploring Multifractal-Based Features for Mild Alzheimer's Disease Classification [J].
Ni, Huangjing ;
Zhou, Luping ;
Ning, Xinbao ;
Wang, Lei .
MAGNETIC RESONANCE IN MEDICINE, 2016, 76 (01) :259-269