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International Journal of Clinical and Experimental Medicine Research

ISSN Online: 2575-7970 ISSN Print: 2575-7989 CODEN: IJCEMH
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ArticleOpen Access http://dx.doi.org/10.26855/ijcemr.2025.01.001

Application of AI in Cancer Diagnosis Using Brain MRI Images

Yunjie Huang

Pinnacle Technical Resources, Inc., Dallas, TX 75231, USA.

*Corresponding author: Yunjie Huang

Published: February 24,2025

Abstract

With the rapid development of Artificial Intelligence (AI) technology, its application in the field of medical imaging has become a hot topic in medical research and practice, igniting a revolution in medical technology. Especially in the diagnosis of cancer using brain Magnetic Resonance Imaging (MRI), AI technology is playing an increasingly significant role, providing doctors with more precise and efficient diagnostic tools. Leveraging advanced technologies such as deep learning and machine learning, AI conducts intelligent analysis of brain MRI images, enabling it to swiftly identify abnormal areas, including minute lesions such as tumors and vascular malformations. This capability has not only significantly enhanced diagnostic accuracy and efficiency, reducing the workload of doctors, but also won valuable treatment time for patients. Additionally, AI technology optimizes workflows and accelerates imaging speeds, allowing patients to obtain diagnostic results more quickly and promptly initiate treatment measures. This article will delve into the practical applications of AI in brain MRI for cancer diagnosis, analyzing its specific achievements in improving diagnostic accuracy, optimizing workflows, and other aspects, as well as future trends and prospects. It aims to provide a reference for the development of medical imaging technology, promoting the process of intelligentization in the medical industry.

Keywords

Artificial Intelligence (AI); Brain Magnetic Resonance Imaging (MRI); Cancer Diagnosis; Deep Learning; Diagnostic Accuracy; Workflow Optimization; Imaging Speed Acceleration; Image Resolution Enhancement; Future Prospects

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How to cite this paper

Application of AI in Cancer Diagnosis Using Brain MRI Images

How to cite this paper:  Yunjie Huang. (2025) Application of AI in Cancer Diagnosis Using Brain MRI Images. International Journal of Clinical and Experimental Medicine Research, 9(1), 1-6.

DOI: http://dx.doi.org/10.26855/ijcemr.2025.01.001