Detection and 3D Visualization of Brain Tumor using Deep Learning and Polynomial Interpolation

Md. Akram Hossan Tuhin, Tarunya Pramanick, Humayoun Kabir Emon, Wasiur Rahman, Md. Muzahidul Islam Rahi, Md. Ashraful Alam
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引用次数: 2

Abstract

Among different imaging techniques MRI, MRSI and CT scans are some of the widely use techniques to visualize brain structures to point out brain anomalies especially brain tumor. Identification of brain tumor accurately in clinical practices has always been a hard decision for neurologist as multiple exceptions might present in images which may lead dubious suggestion from neurologist. In our proposed model we are aiming towards brain tumor detection and 3d visualization of tumor more accurately in effcient way. Our proposed model composed of three stages such as classification of image using CNN whether any tumor exists of not; segmentation using multi-thresholding to extract the detected tumor; and 3d visualization using polynomial interpolation. the proposed model enables enhancing the accuracy of tumor detection as compare to existing models as well as segmenting and 3d visualizing the detected tumor. we get 85% accuracy on our model comparing with others which is slightly more efficient in terms of classification and detection.
基于深度学习和多项式插值的脑肿瘤检测和三维可视化
在不同的成像技术中,MRI, MRSI和CT扫描是一些广泛使用的脑结构可视化技术,以指出脑异常特别是脑肿瘤。在临床实践中,准确识别脑肿瘤一直是神经科医生的难题,因为图像中可能出现多种异常,这可能导致神经科医生的可疑建议。在我们所提出的模型中,我们的目标是更准确、更有效地进行脑肿瘤的检测和三维可视化。我们提出的模型由三个阶段组成:使用CNN对图像进行分类,判断是否存在肿瘤;采用多阈值分割提取检测到的肿瘤;并利用多项式插值实现三维可视化。与现有模型相比,该模型能够提高肿瘤检测的准确性,并对检测到的肿瘤进行分割和三维可视化。与其他模型相比,我们的模型得到了85%的准确率,这在分类和检测方面略微提高了效率。
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