detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2303.10401

Tema
Electrical Engineering and Systems... Computer Science - Computer Vision... Computer Science - Machine Learnin...
Autor
Aghaei, Atefe Moghaddam, Mohsen Ebrahimi
Categoría

Computer Science

Año

2023

fecha de cotización

22/3/2023

Palabras clave
based computer science roi method results disease alzheimer rois
Métrico

Resumen

Purpose Predicting the progression of MCI to Alzheimer's disease is an important step in reducing the progression of the disease.

Therefore, many methods have been introduced for this task based on deep learning.

Among these approaches, the methods based on ROIs are in a good position in terms of accuracy and complexity.

In these techniques, some specific parts of the brain are extracted as ROI manually for all of the patients.

Extracting ROI manually is time-consuming and its results depend on human expertness and precision.

Method To overcome these limitations, we propose a novel smart method for detecting ROIs automatically based on Explainable AI using Grad-Cam and a 3DCNN model that extracts ROIs per patient.

After extracting the ROIs automatically, Alzheimer's disease is predicted using extracted ROI-based 3D CNN.

Results We implement our method on 176 MCI patients of the famous ADNI dataset and obtain remarkable results compared to the state-of-the-art methods.

The accuracy acquired using 5-fold cross-validation is 98.6 and the AUC is 1.

We also compare the results of the ROI-based method with the whole brain-based method.

The results show that the performance is impressively increased.

Conclusion The experimental results show that the proposed smart ROI extraction, which extracts the ROIs automatically, performs well for Alzheimer's disease prediction.

The proposed method can also be used for Alzheimer's disease classification and diagnosis.

Aghaei, Atefe,Moghaddam, Mohsen Ebrahimi, 2023, Smart ROI Detection for Alzheimer's disease prediction using explainable AI

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