Development of a Stand-Alone Independent Graphical User Interface for Neurological Disease Prediction with Automated Extraction and Segmentation of Gray and White Matter in Brain MRI Images

This research presents an independent stand-alone graphical computational tool which functions as a neurological disease prediction framework for diagnosis of neurological disorders to assist neurologists or researchers in the field to perform automatic segmentation of gray and white matter regions in brain MRI images. The tool was built in collaboration with neurologists and neurosurgeons and many of the features are based on their feedback. This tool provides the user automatized functionality to perform automatic segmentation and extract the gray and white matter regions of patient brain image data using an algorithm called adapted fuzzy c-means (FCM) membership-based clustering with preprocessing using the elliptical Hough transform and postprocessing using connected region analysis. Dice coefficients for several patient brain MRI images were calculated to measure the similarity between the manual tracings by experts and automatic segmentations obtained in this research. The average Dice coefficients are 0.86 for gray matter, 0.88 for white matter, and 0.87 for total cortical matter. Dice coefficients of the proposed algorithm were also the highest when compared with previously published standard state-of-the-art brain MRI segmentation algorithms in terms of accuracy in segmenting the gray matter, white matter, and total cortical matter.

[1]  Cees Jonker,et al.  Medial temporal lobe atrophy and memory dysfunction as predictors for dementia in subjects with mild cognitive impairment , 1999, Journal of Neurology.

[2]  Malay Kishore Dutta,et al.  Image-based pixel clustering and connected component labeling in left ventricle segmentation of cardiac MR images , 2015, 2015 7th International Congress on Ultra Modern Telecommunications and Control Systems and Workshops (ICUMT).

[3]  E. A. Zanaty,et al.  An Adaptive Fuzzy C-Means Algorithm for Improving MRI Segmentation , 2013 .

[4]  Chen Lin,et al.  Temporal Annotation in the Clinical Domain , 2014, TACL.

[5]  Torbjörn Persson,et al.  Oxidative Stress in Alzheimer's Disease: Why Did Antioxidant Therapy Fail? , 2014, Oxidative medicine and cellular longevity.

[6]  M. Symms,et al.  Novel MR contrasts to reveal more about the brain. , 2004, Neuroimaging clinics of North America.

[7]  C. Jack,et al.  Tracking pathophysiological processes in Alzheimer's disease: an updated hypothetical model of dynamic biomarkers , 2013, The Lancet Neurology.

[8]  E. A. Zanaty An Approach Based on Fusion Concepts for Improving Brain Magnetic Resonance Images (MRIs) Segmentation , 2013 .

[9]  J D Michenfelder,et al.  Nimodipine Improves Outcome when Given after Complete Cerebral Ischemia in Primates , 1985, Anesthesiology.

[10]  Danny Bluestein,et al.  Realistic Vascular Replicator for TAVR Procedures , 2018, Cardiovascular Engineering and Technology.

[11]  Michel Desvignes,et al.  Spatio-Temporal Multiscale Denoising of Fluoroscopic Sequence , 2016, IEEE Transactions on Medical Imaging.

[12]  N. Geschwind,et al.  Human Brain: Left-Right Asymmetries in Temporal Speech Region , 1968, Science.

[13]  SONU SUHAG,et al.  AUTOMATIC DETECTION OF BRAIN TUMOR BY IMAGE PROCESSING IN MATLAB , 2015 .

[14]  Norhashimah Mohd Saad,et al.  Brain lesion segmentation using fuzzy C-means on diffusion-weighted imaging , 2015 .

[15]  Mohammad Khubeb Siddiqui,et al.  Analysis of KDD CUP 99 Dataset using Clustering based Data Mining , 2013 .

[16]  Kenji Suzuki,et al.  Linear-time connected-component labeling based on sequential local operations , 2003, Comput. Vis. Image Underst..

[17]  Hanan Samet,et al.  A general approach to connected-component labeling for arbitrary image representations , 1992, JACM.

[18]  Oscar Castillo,et al.  Edge-Detection Method for Image Processing Based on Generalized Type-2 Fuzzy Logic , 2014, IEEE Transactions on Fuzzy Systems.

[19]  Rajeev Agrawal,et al.  Statistical modeling of B-Mode clinical kidney images , 2014, 2014 International Conference on Medical Imaging, m-Health and Emerging Communication Systems (MedCom).

[20]  Jack Lee,et al.  Measurement and modeling of coronary blood flow , 2015, Wiley interdisciplinary reviews. Systems biology and medicine.

[21]  M. Albert,et al.  Medial temporal lobe function and structure in mild cognitive impairment , 2004, Annals of neurology.

[22]  Jose Alfredo F. Costa,et al.  Image Segmentation through Clustering Based on Natural Computing Techniques , 2011 .

[23]  Naveen Chauhan,et al.  Feature Line Profile Based Automatic Detection of Dental Caries in Bitewing Radiography , 2016, 2016 International Conference on Micro-Electronics and Telecommunication Engineering (ICMETE).

[24]  Haiyang Li,et al.  Dynamic particle swarm optimization and K-means clustering algorithm for image segmentation , 2015 .

[25]  Muhammad Ilyas,et al.  A Clustering Based Study of Classification Algorithms , 2015 .

[26]  Ayush Goyal,et al.  Imaging-Based Method for Precursors of Impending Disease from Blood Traces , 2017 .

[27]  Wilfried Philips,et al.  MRI Segmentation of the Human Brain: Challenges, Methods, and Applications , 2015, Comput. Math. Methods Medicine.

[28]  Ayush Goyal,et al.  Automatic Left Ventricle Segmentation in Cardiac MRI Images Using a Membership Clustering and Heuristic Region-Based Pixel Classification Approach , 2015, SIRS.

[29]  Ayush Goyal,et al.  Accurate and Robust Iris Recognition Using Modified Classical Hough Transform , 2018 .

[30]  Yu-Hsiang Wang Tutorial: Image Segmentation , 2010 .

[31]  P. Grenier,et al.  MR imaging of intravoxel incoherent motions: application to diffusion and perfusion in neurologic disorders. , 1986, Radiology.

[32]  J D Michenfelder,et al.  Nimodipine Improves Cerebral Blood Flow and Neurologic Recovery after Complete Cerebral Ischemia in the Dog , 1983, Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism.

[33]  Deepa Gray Matter and White Matter Segmentation from MRI Brain Images Using Clustering Methods , 2015 .

[34]  B. Rosen,et al.  Perfusion imaging with NMR contrast agents , 1990, Magnetic resonance in medicine.

[35]  Ashley I. Bush,et al.  Metal dyshomeostasis and oxidative stress in Alzheimer’s disease , 2013, Neurochemistry International.

[36]  Martial Hebert,et al.  A Comparison of Image Segmentation Algorithms , 2005 .

[37]  J D Michenfelder,et al.  The effects of dextrose infusion and head position on neurologic outcome after complete cerebral ischemia in primates: examination of a model. , 1987, Anesthesiology.

[38]  Ashraf Afifi,et al.  A watershed approach for improving medical image segmentation , 2013, Computer methods in biomechanics and biomedical engineering.

[39]  김형식,et al.  Differences in cognitive ability and hippocampal volume between Alzheimer’s disease, amnestic mild cognitive impairment, and healthy control groups, and their correlation , 2016 .

[40]  Charles A. Mistretta,et al.  Guidewire path tracking and segmentation in 2D fluoroscopic time series using device paths from previous frames , 2016, SPIE Medical Imaging.

[41]  Sina Khanmohammadi,et al.  An improved overlapping k-means clustering method for medical applications , 2017, Expert Syst. Appl..

[42]  Laurence S. Dooley,et al.  Review on Fuzzy Clustering Algorithms , 2008 .

[43]  A. Convit,et al.  Cortisol levels during human aging predict hippocampal atrophy and memory deficits , 1998, Nature Neuroscience.

[44]  A. Nobre,et al.  Qualitative mapping of cerebral blood flow and functional localization with echo-planar MR imaging and signal targeting with alternating radio frequency. , 1994, Radiology.

[45]  Sweta Sneha,et al.  Towards Enhanced Accuracy in Medical Diagnostics -- A Technique Utilizing Statistical and Clinical Data Analysis in the Context of Ultrasound Images , 2013, 2013 46th Hawaii International Conference on System Sciences.

[46]  Patricio A. Vela,et al.  A Comparative Study of Efficient Initialization Methods for the K-Means Clustering Algorithm , 2012, Expert Syst. Appl..

[47]  Nalin Kumar,et al.  Noise Removal and Filtering Techniques used in Medical Images , 2017 .

[48]  T. Arivoli,et al.  Brain tumor segmentation and its area calculation in brain MR images using K-mean clustering and Fuzzy C-mean algorithm , 2012, IEEE-International Conference On Advances In Engineering, Science And Management (ICAESM -2012).

[49]  G. Small,et al.  Predictors of cognitive change in middle-aged and older adults with memory loss. , 1995, The American journal of psychiatry.

[50]  M. Beal,et al.  Neuroprotective strategies involving ROS in Alzheimer disease. , 2011, Free radical biology & medicine.

[51]  J D Michenfelder,et al.  Cerebral Blood Flow and Neurologic Outcome When Nimodipine is Given after Complete Cerebral Ischemia in the Dog , 1984, Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism.

[52]  Mark E. Schmidt,et al.  The Alzheimer’s Disease Neuroimaging Initiative: A review of papers published since its inception , 2012, Alzheimer's & Dementia.

[53]  B. Rourke,et al.  Arithmetic Disabilities, Specific and Otherwise , 1993, Journal of learning disabilities.

[54]  A. Dale,et al.  Whole Brain Segmentation Automated Labeling of Neuroanatomical Structures in the Human Brain , 2002, Neuron.

[55]  Tzong-Jer Chen,et al.  Fuzzy c-means clustering with spatial information for image segmentation , 2006, Comput. Medical Imaging Graph..

[56]  Hiroko H. Dodge,et al.  Trajectory of white matter hyperintensity burden preceding mild cognitive impairment , 2011, Alzheimer's & Dementia.

[57]  T. Velmurugan,et al.  Identification of Calcification in MRI Brain Images by k-Means Algorithm , 2015 .

[58]  Ayush Goyal,et al.  Intramural spatial variation of optical tissue properties measured with fluorescence microsphere images of porcine cardiac tissue , 2009, 2009 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[59]  Disha Bathla,et al.  MRI image based patient specific computational model reconstruction of the left ventricle cavity and myocardium , 2016, 2016 International Conference on Computing, Communication and Automation (ICCCA).

[60]  Yambem Jina Chanu,et al.  A Survey on Image Segmentation Methods using Clustering Techniques , 2017, European Journal of Engineering and Technology Research.

[61]  Rajeev Agrawal,et al.  Entropy based integrated diagnosis for enhanced accuracy and removal of variability in clinical inferences , 2014, 2014 International Conference on Signal Processing and Integrated Networks (SPIN).

[62]  Said Ghnomiey Medical Image Segmentation Techniques: An Overview , 2016 .

[63]  Terrence R. Oakes,et al.  Diffusion Tensor Imaging and Its Application to Traumatic Brain Injury: Basic Principles and Recent Advances , 2012 .

[64]  Priya Ranjan,et al.  Modelling of Blood Flow in Stenosed Arteries , 2017 .

[65]  O. Steward,et al.  Cells of origin of entorhinal cortical afferents to the hippocampus and fascia dentata of the rat , 1976, The Journal of comparative neurology.

[66]  H. Pfeifer Principles of Nuclear Magnetic Resonance Microscopy , 1992 .

[67]  Ayush Goyal,et al.  Automatic disease screening method using image processing for dried blood microfluidic drop stain pattern recognition , 2016, Journal of medical engineering & technology.

[68]  Jeffrey S. Spence,et al.  Regionally selective atrophy after traumatic axonal injury. , 2010, Archives of neurology.

[69]  Samir Brahim Belhaouari,et al.  Optimized K-Means Algorithm , 2014 .

[70]  R. McCarley,et al.  A review of MRI findings in schizophrenia , 2001, Schizophrenia Research.

[71]  V. Seenivasagam,et al.  Comparison of Clustering Methods for Segmenting Color Images , 2015 .

[72]  E. Costa,et al.  Excitatory amino acid recognition sites coupled with inositol phospholipid metabolism: developmental changes and interaction with alpha 1-adrenoceptors. , 1986, Proceedings of the National Academy of Sciences of the United States of America.

[73]  Mark E. Schmidt,et al.  The Alzheimer's Disease Neuroimaging Initiative: A review of papers published since its inception , 2012, Alzheimer's & Dementia.

[74]  M. Mesulam,et al.  Neurofibrillary tangles, amyloid, and memory in aging and mild cognitive impairment. , 2003, Archives of neurology.

[75]  Ayush Goyal,et al.  Belongingness Clustering and Region Labeling Based Pixel Classification for Automatic Left Ventricle Segmentation in Cardiac MRI Images , 2015 .

[76]  Jerry M. Mendel,et al.  Interval Type-2 Fuzzy Logic Systems Made Simple , 2006, IEEE Transactions on Fuzzy Systems.

[77]  Ayush Goyal,et al.  Patient-Specific Cardiac Computational Modeling Based on Left Ventricle Segmentation from Magnetic Resonance Images , 2017 .

[78]  Danko Antolovic,et al.  Review of the Hough Transform Method, With an Implementation of the Fast Hough Variant for Line Detection , 2008 .

[79]  Derek Abbott,et al.  Cardiac flow component analysis. , 2010, Medical engineering & physics.

[80]  Mario Forjaz Secca,et al.  MRI Principles of the Head, Skull Base and Spine , 2002, Springer Paris.

[81]  G. Wiselin Jiji,et al.  Hybrid data clustering approach using K-Means and Flower Pollination Algorithm , 2015, ArXiv.

[82]  C. Jayalakshmi,et al.  Analysis of brain tumor using intelligent techniques , 2016, 2016 International Conference on Advanced Communication Control and Computing Technologies (ICACCCT).

[83]  Ewart M Haacke Development of Magnetic Resonance Imaging Biomarkers for Traumatic Brain Injury , 2012 .

[84]  R. Coleman,et al.  Neuroimaging and early diagnosis of Alzheimer disease: a look to the future. , 2003, Radiology.

[85]  Ayush Goyal,et al.  An MSE (mean square error) based analysis of deconvolution techniques used for deblurring/restoration of MRI and CT Images , 2016, ICTCS.

[86]  Nick C Fox,et al.  The clinical use of structural MRI in Alzheimer disease , 2010, Nature Reviews Neurology.

[87]  S. Chapman,et al.  Autosomal dominant progressive syndrome of motor-speech loss without dementia , 1997, Neurology.

[88]  Soumajit Pramanik,et al.  Dynamic Image Segmentation using Fuzzy C-Means based Genetic Algorithm , 2011 .

[89]  Conrad D. James,et al.  Optimization-based computation with spiking neurons , 2017, 2017 International Joint Conference on Neural Networks (IJCNN).

[90]  Ayush Goyal,et al.  Automatic Pattern Recognition for Detection of Disease from Blood Drop Stain Obtained with Microfluidic Device , 2015, SIRS.

[91]  M. Stella Atkins,et al.  Fully automatic segmentation of the brain in MRI , 1998, IEEE Transactions on Medical Imaging.

[92]  B. S. Manjunath,et al.  Automated segmentation of brain MR images , 1995, Pattern Recognit..

[93]  Yang Li,et al.  A Hybrid Method for Image Segmentation Based on Artificial Fish Swarm Algorithm and Fuzzy c-Means Clustering , 2015, Comput. Math. Methods Medicine.

[94]  Yambem Jina Chanu,et al.  Image Segmentation Using K -means Clustering Algorithm and Subtractive Clustering Algorithm , 2015 .

[95]  Hitoshi Shimada,et al.  Longitudinal [11C]PIB PET study in healthy elderly persons, patients with mild cognitive impairment, and Alzheimer's disease , 2011, Alzheimer's & Dementia.

[96]  Arie Shoshani,et al.  Optimizing connected component labeling algorithms , 2005, SPIE Medical Imaging.

[97]  Liu Jin,et al.  A survey of MRI-based brain tumor segmentation methods , 2014 .

[98]  Rajeev Agrawal,et al.  Automated segmentation of gray and white matter regions in brain MRI images for computer aided diagnosis of neurodegenerative diseases , 2017, 2017 International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT).

[99]  Joong Hee Kim,et al.  Diffusion tensor imaging predicts hyperacute spinal cord injury severity. , 2007, Journal of neurotrauma.

[100]  Vinayak Ray,et al.  Image-based fuzzy c-means clustering and connected component labeling subsecond fast fully automatic complete cardiac cycle left ventricle segmentation in multi frame cardiac MRI images , 2016, 2016 International Conference on Systems in Medicine and Biology (ICSMB).

[101]  Nelly Gordillo,et al.  State of the art survey on MRI brain tumor segmentation. , 2013, Magnetic resonance imaging.