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Brain tumors represent a substantial source of morbidity and mortality on a global scale. Early Identification and precise diagnosis are crucial for successful treatment outcomes. Magnetic Resonance Imaging (MRI) has become a cornerstone in the diagnosis of brain tumors, but interpreting these scans is time-consuming and requires significant expertise. Deep Learning (DL) & Image Processing Techniques offer promising solutions to this problem. This project introduces a DL-based approach for identifying brain tumors from MRI scans. The proposed approach involves image preprocessing, feature extraction & classification using supervised ML Algorithms, such as Convolutional Neural Networks (CNN). The method involves preprocessing the MRI scans using various techniques, including filtering and segmentation, to remove noise and highlight potential tumor regions and extract features from the preprocessed images, such as texture, shape, and intensity using various image processing Techniques. These features are then used to train and test the DL models, which predict whether an MRI scan contains a tumor or not. Evaluation of the proposed approach on a large dataset of MRI scans collected from patients with brain tumors and healthy individuals substantiate the effectiveness of the proposed method in precisely identifying brain tumors. The CNN models demonstrate notable levels of accuracy & sensitivity, indicating their potential for use in Clinical settings. The project carries significant potential to advance the early detection and diagnosis of brain tumors, there by contributing to better patient outcomes and a reduction in mortality rates.
SrinivasaRao et al. (Fri,) studied this question.
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