基于CNN和阈值分割的脑肿瘤检测模型

Jaishree Jain, Shashank Sahu, Ashish Dixit
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引用次数: 1

摘要

脑肿瘤构成一个重大的全球健康问题,强调及时和准确识别以确保最佳治疗结果的重要性。本研究引入了一种采用卷积神经网络(cnn)与阈值分割技术融合的脑肿瘤识别创新方法。该模型的目的是提高医学成像,即磁共振成像(MRI)扫描中脑肿瘤识别的准确性和有效性。快速和精确的诊断是医疗行业有效治疗的必要条件,但目前的技术缺乏这种能力。因此,为了成功治疗,有必要开发有效的诊断应用程序。本研究采用全局阈值分割进行预处理。在第一阶段完成图像捕获和去噪,而在第二阶段使用ML方法完成分类和回归。计算机辅助自动识别方法是本研究中使用的计算技术。这项研究使用了120张来自实时MRI脑数据库的脑部扫描图,其中15张正常,105张异常。根据性能指标,训练和测试图片的准确率为99.46%。将该方法与近年来发表的方法进行比较,确定了阈值分割的LR-ML具有快速、精确的脑诊断系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain tumor detection model based on CNN and threshold segmentation
Brain tumours pose a substantial global health issue, emphasising the criticality of timely and precise identification to ensure optimal treatment outcomes. This research introduces an innovative methodology for the identification of brain tumours by employing a fusion of Convolutional Neural Networks (CNNs) with threshold segmentation techniques. The objective of the suggested model is to improve the precision and effectiveness of brain tumour identification in medical imaging, namely Magnetic Resonance Imaging (MRI) scans. Fast and precise diagnosis is necessary in the medical profession for effective treatment, but current technologies lack this capability. For successful therapy, it is therefore necessary to develop an effective diagnosis application. Global threshold segmentation for pre-processing is used in this study. Image capture and de-noising were completed in the first stage, while classification and regression were completed in the second stage using ML approaches. A computer-aided automated identification method is the computational technique used in this study. This investigation uses one hundred twenty (120) brain scans from a real-time MRI brain database, of them 15 normal and 105 abnormal. According to performance metrics, the accuracy of training and testing pictures was 99.46%. Comparing this method to recently published methods, it is determined that LR-ML with the threshold segmentation has a rapid, precise brain diagnostic system.
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