Documentdetail
ID kaart

oai:arXiv.org:2309.01312

Onderwerp
Electrical Engineering and Systems... Computer Science - Computer Vision... Computer Science - Machine Learnin... I.4.7 I.4.9 J.3
Auteur
Paleczny, Audrey Parab, Shubham Zhang, Maxwell
Categorie

Computer Science

Jaar

2023

vermelding datum

20-09-2023

Trefwoorden
computer classification false science accuracy detection ood alzheimer cnn model using
Metriek

Beschrijving

More than 10.7% of people aged 65 and older are affected by Alzheimer's disease.

Early diagnosis and treatment are crucial as most Alzheimer's patients are unaware of having it until the effects become detrimental.

AI has been known to use magnetic resonance imaging (MRI) to diagnose Alzheimer's.

However, models which produce low rates of false diagnoses are critical to prevent unnecessary treatments.

Thus, we trained supervised Random Forest models with segmented brain volumes and Convolutional Neural Network (CNN) outputs to classify different Alzheimer's stages.

We then applied out-of-distribution (OOD) detection to the CNN model, enabling it to report OOD if misclassification is likely, thereby reducing false diagnoses.

With an accuracy of 98% for detection and 95% for classification, our model based on CNN results outperformed our segmented volume model, which had detection and classification accuracies of 93% and 87%, respectively.

Applying OOD detection to the CNN model enabled it to flag brain tumor images as OOD with 96% accuracy and minimal overall accuracy reduction.

By using OOD detection to enhance the reliability of MRI classification using CNNs, we lowered the rate of false positives and eliminated a significant disadvantage of using Machine Learning models for healthcare tasks.

Source code available upon request.

;Comment: 10 pages, 8 figures, 3 tables

Paleczny, Audrey,Parab, Shubham,Zhang, Maxwell, 2023, Enhancing Automated and Early Detection of Alzheimer's Disease Using Out-Of-Distribution Detection

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