Detection of Alzheimer's Disease Based on Cloud-Based Deep Learning Paradigm.
Dayananda PruthvirajaSowmyarani C NagarajuNiranjanamurthy MudligiriyappaMahesh S RaisinghaniSurbhi Bhatia KhanNora A AlkhaldiAreej A MalibariPublished in: Diagnostics (Basel, Switzerland) (2023)
Deep learning is playing a major role in identifying complicated structure, and it outperforms in term of training and classification tasks in comparison to traditional algorithms. In this work, a local cloud-based solution is developed for classification of Alzheimer's disease (AD) as MRI scans as input modality. The multi-classification is used for AD variety and is classified into four stages. In order to leverage the capabilities of the pre-trained GoogLeNet model, transfer learning is employed. The GoogLeNet model, which is pre-trained for image classification tasks, is fine-tuned for the specific purpose of multi-class AD classification. Through this process, a better accuracy of 98% is achieved. As a result, a local cloud web application for Alzheimer's prediction is developed using the proposed architectures of GoogLeNet. This application enables doctors to remotely check for the presence of AD in patients.
Keyphrases
- deep learning
- machine learning
- artificial intelligence
- convolutional neural network
- cognitive decline
- end stage renal disease
- working memory
- computed tomography
- ejection fraction
- magnetic resonance imaging
- chronic kidney disease
- newly diagnosed
- air pollution
- resistance training
- peritoneal dialysis
- preterm infants
- prognostic factors
- high intensity
- solid state