Brain MRI analysis for Alzheimer’s disease diagnosis using an ensemble system of deep convolutional neural networks

@article{Islam2018BrainMA,
  title={Brain MRI analysis for Alzheimer’s disease diagnosis using an ensemble system of deep convolutional neural networks},
  author={Jyoti Islam and Yanqing Zhang},
  journal={Brain Informatics},
  year={2018},
  volume={5}
}
AbstractAlzheimer’s disease is an incurable, progressive neurological brain disorder. [] Key Method We propose a deep convolutional neural network for Alzheimer’s disease diagnosis using brain MRI data analysis. While most of the existing approaches perform binary classification, our model can identify different stages of Alzheimer’s disease and obtains superior performance for early-stage diagnosis. We conducted ample experiments to demonstrate that our proposed model outperformed comparative baselines on…
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