https://ijasi.org/index.php/ijasi/issue/feed International Journal of Advanced Scientific Innovation 2024-11-11T02:14:15+00:00 Editor journalijasi@gmail.com Open Journal Systems <p>International Journal of Advanced Scientific Innovation - IJASI is a open access and double blind peer-reviewed journal which aims to publish a wide range of innovative research articles in the field of engineering and technology.</p> <p>Scientists and engineers involved in research can make the most of this growing global forum to publish papers covering their original research or extended versions of already published conference/journal papers, scholarly journals, academic articles, etc.</p> <p>The journal editorial board welcomes manuscripts in both fundamental and applied research areas and encourages submissions which contribute novel and innovative insights to the field of engineering sciences. </p> <p> All submitted articles considered suitable for IJASI are subjected to peer review to ensure the highest levels of quality. The review process is carried out as quickly as possible to minimize any delays in the online publication of articles.</p> <p>In the area of research and innovation, each day we passionately push the limits of science and engineering by regularly publishing state-of-art peer reviewed research content.</p> <p><strong>Aim &amp; Scope:</strong></p> <p>IJASI is an international online journal in English published every Monthly. This academic journal and scholarly peer reviewed journal is an online journal having full access to the research and review paper. IJASI hopes that Researchers, Research scholars, Academician, Industrialists, Consultancy etc. would make use of this journal publication for the development of science and technology.</p> <p>IJASI makes genuine contributions in the field of Science and Engineering research by publishing trusted, Technical and scientific articles exploring continuously in the field of engineering and scientific technology. IJASI preserves every article published in order to help both current and upcoming research scholars.</p> <p><strong>Submit your article: </strong><a href="mailto:journalijasi@gmail.com"><strong>journalijasi@gmail.com</strong></a></p> <p><strong>Frequency</strong>: <strong>12 issues per year.</strong></p> <p><strong>Subject: Engineering &amp; Technology</strong></p> <p><strong>ISSN: 2584-8436</strong></p> <p><strong>Published By: Innovative Scientific Research Publisher</strong></p> https://ijasi.org/index.php/ijasi/article/view/123 Enhanced Brain Tumor Detection in MRI Using Advanced CNNs 2024-11-11T02:09:51+00:00 Sushma R sushmadad9@gmail.com Dr. Aijaz Ahamed Sharief shariefwillbe@gmail.com <p>Artificial Intelligence (AI), a branch of computer science, focuses on developing intelligent systems capable of performing tasks that require human-like cognitive abilities, such as speech recognition, learning, planning, and problem-solving. Deep learning, a subfield of machine learning, utilizes algorithms to detect patterns in data for complex tasks. This thesis explores sophisticated deep learning methods for Magnetic Resonance Imaging (MRI)-<br>based brain tumor detection and classification. The primary goal is to develop an effective model that assists medical professionals in diagnosing brain cancers with speed and precision. The World Health Organization reports that brain cancer mortality rates are high in Asia, which emphasizes the need for early identification. To address this challenge, the study introduces an enhanced approach using Convolutional Neural Networks (CNNs), specifically<br>YOLOv7, integrated with advanced components such as the Convolutional Block Attention Module (CBAM) and Spatial Pyramid Pooling Fast+ (SPPF+). The project employs a dataset of 10,000 MRI images, encompassing nontumor cases, meningiomas, pituitary tumors, and gliomas,<br>to develop a CNN model that improves accuracy, reduces false positives/negatives, and offers detailed tumor segmentation and feature extraction. The model’s robustness is validated through diverse datasets and cross-validation techniques, demonstrating its potential for integration into<br>clinical practice. The project also addresses The capacity to analyze deep learning models and ethical considerations regarding patient data privacy, emphasizing the importance of transparency and responsible AI deployment in healthcare.</p> 2024-11-11T00:00:00+00:00 Copyright (c) 2024 Sushma R, Dr. Aijaz Ahamed Sharief