Using Transfer Learning, a Mobile Application Detects Brain Tumors

B. R, P. K V
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Abstract

The segmentation, identification, and extraction of contaminated tumour regions from magnetic resonance (MR) images is a serious problem, but it is a time-consuming and labor-intensive operation carried out by radiologists or clinical experts, whose accuracy is totally reliant on their knowledge. As a consequence, using computer-assisted technologies to circumvent these limits becomes more vital. In this study, we looked into Berkeley wavelet transformation (BWT) based brain tumour segmentation to improve performance and reduce the complexity of the medical image segmentation process. Furthermore, relevant properties are extracted from each segmented tissue to improve the support vector machine (SVM) based classifier's accuracy and quality rate. The experimental results of the recommended technique have been examined and validated for performance and quality analysis on magnetic resonance brain pictures based on accuracy, sensitivity, specificity, and dice similarity index coefficient. With 96.51 percent accuracy, 94.2 percent specificity, and 97.72 percent sensitivity, the recommended technique for discriminating normal and diseased tissues from brain MR images was shown to be effective. The results of the testing revealed an average dice similarity index coefficient of 0.82, showing that the automated (machine) extracted tumour area coincided with the manually determined tumour region by radiologists. The simulation results show the relevance of quality parameters and accuracy when compared to state-of-the-art approaches. The main objective is to develop a smartphone app for identifying brain tumours.
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使用迁移学习,移动应用程序检测脑肿瘤
从磁共振(MR)图像中分割、识别和提取受污染的肿瘤区域是一个严重的问题,但它是由放射科医生或临床专家进行的费时费力的操作,其准确性完全依赖于他们的知识。因此,使用计算机辅助技术来规避这些限制变得更加重要。在这项研究中,我们研究了基于伯克利小波变换(BWT)的脑肿瘤分割,以提高医学图像分割的性能和降低分割过程的复杂性。在此基础上,从每一个被分割的组织中提取相关属性,提高基于支持向量机(SVM)的分类器的准确率和质量。基于准确性、灵敏度、特异性和骰子相似指数系数,对推荐技术的实验结果进行了检验和验证,用于磁共振脑图像的性能和质量分析。以96.51%的准确率、94.2%的特异性和97.72%的灵敏度,推荐的从脑MR图像中区分正常和病变组织的技术被证明是有效的。测试结果显示,平均骰子相似指数系数为0.82,表明自动(机器)提取的肿瘤区域与放射科医生人工确定的肿瘤区域相吻合。仿真结果表明,与现有方法相比,质量参数和精度具有相关性。其主要目标是开发一款识别脑肿瘤的智能手机应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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