Enhanced approach for brain tumor detection

Kumar Mar, Patil Vinuta, Rachamalla Sushitha, Gajulavarthi Hepseeba, Bhavana Martha
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Abstract

Automated defect detection in medical imaging has become an emerging field in several medical diagnostic applications. Automated detection of tumors in MRI is crucial as it provides information about abnormal tissues that are necessary for treatment. The conventional method for defect detection in magnetic resonance brain images is human inspection. This method is impractical due to the large amount of data. Hence, trusted and automatic classification schemes are essential to preventing the human death rate. So, automated tumor detection methods are being developed to save radiologist time and obtain tested accuracy. MRI brain tumor detection is a complicated task due to the complexity and variability of tumors. In this work, machine learning algorithms are proposed to overcome the drawbacks of traditional classifiers when tumors are detected in brain MRIs using machine learning algorithms. The outcome of the model is to predict whether a tumor is present or not in the image.
改进的脑肿瘤检测方法
医学成像中的缺陷自动检测已成为医学诊断领域的新兴应用领域。在MRI中自动检测肿瘤是至关重要的,因为它提供了治疗所必需的异常组织的信息。传统的脑磁共振图像缺陷检测方法是人体检查。由于数据量大,这种方法不切实际。因此,可信的自动分类方案对于防止人类死亡率至关重要。因此,自动化的肿瘤检测方法正在开发,以节省放射科医生的时间,并获得测试的准确性。由于肿瘤的复杂性和多变性,MRI脑肿瘤检测是一项复杂的任务。在这项工作中,提出了机器学习算法来克服传统分类器在使用机器学习算法检测脑mri肿瘤时的缺点。该模型的结果是预测图像中是否存在肿瘤。
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