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Brain Hemorrhage Classification in CT Scan Images Using Minimalist Machine Learning

2021·28 Zitationen·DiagnosticsOpen Access
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28

Zitationen

5

Autoren

2021

Jahr

Abstract

. We examine and compare the performance of this methodology with MLP, NB, KNN, SVM, Adaboost, and RF classifiers to perform the task of classification of Computed Tomography (CT) brain images. These grayscale images have an area of 128 × 128 pixels, and there are two classes available in the dataset: CT without Hemorrhage and CT with Intra-Ventricular Hemorrhage (IVH), which were classified using the Leave-One-Out Cross-Validation method. Most of the models tested by Leave-One-Out Cross-Validation performed between 50% and 75% accuracy, while sensitivity and sensitivity ranged between 58% and 86%. The experiments performed using our methodology matched the best classifier observed with 86.50% accuracy, and they outperformed all state-of-the-art algorithms in specificity with 91.60%. This performance is achieved hand in hand with simple and practical methods, which go hand in hand with this trend of generating easily explainable algorithms.

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Themen

Brain Tumor Detection and ClassificationRadiomics and Machine Learning in Medical ImagingMachine Learning in Healthcare
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