Author(s) :
P. Hosanna Princye, Suzain Mehak, Vaishanvi, Poojashree, Tamilselvi
Conference Name :
International Conference on Recent Trends in Computing & Communication Technologies (ICRCCT’2K24)
Abstract :
This proposed work presents an innovative artificial intelligence (AI) based algorithm for the accurate identification of brain tumors through medical imaging analysis. Brain tumors pose a significant health risk, and timely and precise diagnosis is crucial for effective treatment planning. Traditional diagnostic methods often require extensive manual analysis and are subject to human error. In this context, our proposed algorithm leverages the capabilities of deep learning and image processing to enhance the efficiency and accuracy of brain tumor identification. The algorithm utilizes a convolutional neural network (CNN) architecture trained on a diverse and extensive dataset of brain images, encompassing various tumor types, sizes, and locations. The CNN is designed to extract intricate features from medical imaging modalities such as magnetic resonance imaging (MRI) and computed tomography (CT) scans. Transfer learning techniques are employed to capitalize on pre trained models, allowing the algorithm to generalize effectively across different datasets and patient populations. To ensure clinical relevance and reliability, our algorithm incorporates a multi modal approach, combining information from various imaging sequences. The algorithm’s performance is validated through extensive experimentation on a large dataset of anonymized patient scans, demonstrating superior sensitivity and specificity compared to existing diagnostic methods. Furthermore, the algorithm’s interpretability is enhanced through the incorporation of attention mechanisms, providing insights into the regions influencing tumor identification. This proposed work contributes to the advancement of AI in healthcare by offering a robust and efficient solution for brain tumor identification. The proposed algorithm has the potential to significantly reduce the time required for diagnosis, enabling clinicians to make informed decisions promptly. As a result, patients can receive timely and tailored treatment plans, ultimately improving outcomes and prognosis for individuals affected by brain tumors. The performance of the algorithms are evaluated using MATLAB software.
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