Computer-aided classification of multi-types of dementia via convolutional neural networks

With millions of people suffering from dementia worldwide, the global prevalence of dementia has a significant impact on the patients' lives, their caregivers' physical and emotional states, and the global economy. Early diagnosis of dementia helps in finding suitable therapies that reduce or even prevent further deterioration of patients' cognitive abilities. In recent years, state-of-the-art literature has proposed various computer-aided diagnosis systems based on 3-dimensional brain imagery analysis to identify early symptoms of dementia. These systems aim to assist radiologists in increasing the accuracy of diagnoses and reducing false positives. However, the early diagnosis of dementia is a challenging task due to the image quality, noise, and human brain irregularities. The state-of-the-art has focused on differentiating multi-stages of Alzheimer's disease, however, the diagnosis of various types of dementia is still a gap. This paper proposes a deep learning-based computer-aided diagnosis approach for the early detection of multi-type of dementia. To show the performance of the proposed CAD algorithm, three conventional CAD methods are implemented for comparison. The proposed algorithm yields a 74.93% accuracy in early diagnosis of multi-type of dementia and outperforms the state of the art CAD methods.

[1]  Peter Grindrod,et al.  Towards the computer-aided diagnosis of dementia based on the geometric and network connectivity of structural MRI data , 2014 .

[2]  Ghassem Tofighi,et al.  DeepAD: Alzheimer’s Disease Classification via Deep Convolutional Neural Networks using MRI and fMRI , 2016, bioRxiv.

[3]  W. Thies,et al.  2008 Alzheimer’s disease facts and figures , 2008, Alzheimer's & Dementia.

[4]  Pierre Baldi,et al.  Autoencoders, Unsupervised Learning, and Deep Architectures , 2011, ICML Unsupervised and Transfer Learning.

[5]  Germán Castellanos-Domínguez,et al.  Centered Kernel Alignment Enhancing Neural Network Pretraining for MRI-Based Dementia Diagnosis , 2016, Comput. Math. Methods Medicine.

[6]  C. Cotman,et al.  Neural-network-based classification of cognitively normal, demented, Alzheimer disease and vascular dementia from single photon emission with computed tomography image data from brain. , 1995, Proceedings of the National Academy of Sciences of the United States of America.

[7]  V. Tumas,et al.  An analysis of the cognitive items of the movement disorders society checklist for the diagnosis of dementia in patients with Parkinson's disease. , 2015, Parkinsonism & related disorders.

[8]  K. Ishii PET Approaches for Diagnosis of Dementia , 2014, American Journal of Neuroradiology.

[9]  Thomas Brox,et al.  Voxel-based multi-class classification of AD, MCI, and elderly controls , 2014, MICCAI 2014.

[10]  Giovanni Montana,et al.  Predicting Alzheimer's disease: a neuroimaging study with 3D convolutional neural networks , 2015, ICPRAM 2015.

[11]  A. Akobeng Understanding diagnostic tests 1: sensitivity, specificity and predictive values , 2007, Acta paediatrica.

[12]  H. Feldman,et al.  Causes of Alzheimer's disease. , 2000, CMAJ : Canadian Medical Association journal = journal de l'Association medicale canadienne.

[13]  C. Phillips,et al.  Combining neuropsychological and neuroimaging data to assist the early diagnosis of dementia , 2014 .

[14]  Stefan Klein,et al.  Feature Selection Based on SVM Significance Maps for Classification of Dementia , 2014, MLMI.

[15]  Juan Manuel Górriz,et al.  Computer-aided diagnosis of Alzheimer's type dementia combining support vector machines and discriminant set of features , 2013, Inf. Sci..

[16]  Polina Golland,et al.  BrainPrint : Identifying Subjects by Their Brain , 2014, MICCAI.

[17]  Anthony Maida,et al.  Natural Image Bases to Represent Neuroimaging Data , 2013, ICML.

[18]  Til Aach,et al.  Challenges of medical image processing , 2011, Computer Science - Research and Development.

[19]  T. Ishihara,et al.  Validation of Addenbrooke's cognitive examination for detecting early dementia in a Japanese population , 2011, Psychiatry Research.

[20]  Mario Cannataro,et al.  Advanced feature selection methods in multinominal dementia classification from structural MRI data , 2014 .

[21]  J. Schneider,et al.  National Institute on Aging–Alzheimer's Association guidelines for the neuropathologic assessment of Alzheimer's disease , 2012, Alzheimer's & Dementia.

[22]  Barry R. Masters,et al.  Digital Image Processing, Third Edition , 2009 .

[23]  C. Igel,et al.  Dementia Diagnosis using MRI Cortical Thickness , Shape , Texture , and Volumetry , 2014 .

[24]  Dinggang Shen,et al.  Deep Learning-Based Feature Representation for AD/MCI Classification , 2013, MICCAI.

[25]  Vladimir Fonov,et al.  Standardized evaluation of algorithms for computer-aided diagnosis of dementia based on structural MRI: The CADDementia challenge , 2015, NeuroImage.