脑膜瘤检测与分割的深度学习架构。

IF 2.5 Q3 ONCOLOGY
John Nisha Anita, Sujatha Kumaran
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引用次数: 0

摘要

脑膜瘤由于其低强度的像素轮廓,其检测和分割方法是一个复杂的过程。本文采用卷积神经网络(CNN)分类方法对脑膜瘤图像进行检测,并对肿瘤区域进行分割。采用离散小波变换对脑MRI源图像进行分解,并采用算法融合技术对分解后的子带进行融合。对融合后的图像进行数据增强,以增加样本量。使用CNN分类器将数据增强图像分为健康或恶性。然后,利用连接分量分析算法对分类脑膜瘤脑图像中的肿瘤区域进行分割。采用无损压缩技术对肿瘤区域分割的脑膜瘤脑图像进行压缩。本文中提出的方法通过实验测试了来自开放获取数据集的脑膜瘤脑图像集。将实验结果与现有方法在敏感性、特异性和肿瘤分割准确率方面进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Deep Learning Architecture for Meningioma Brain Tumor Detection and Segmentation.

A Deep Learning Architecture for Meningioma Brain Tumor Detection and Segmentation.

A Deep Learning Architecture for Meningioma Brain Tumor Detection and Segmentation.

A Deep Learning Architecture for Meningioma Brain Tumor Detection and Segmentation.

The meningioma brain tumor detection and segmentation method is a complex process due to its low intensity pixel profile. In this article, the meningioma brain tumor images were detected and tumor regions were segmented using a convolutional neural network (CNN) classification approach. The source brain MRI images were decomposed using the discrete wavelet transform and these decomposed sub bands were fused using an arithmetic fusion technique. The fused image was data augmented in order to increase the sample size. The data augmented images were classified into either healthy or malignant using a CNN classifier. Then, the tumor region in the classified meningioma brain image was segmented using an connection component analysis algorithm. The tumor region segmented meningioma brain image was compressed using a lossless compression technique. The proposed method stated in this article was experimentally tested with the sets of meningioma brain images from an open access dataset. The experimental results were compared with existing methods in terms of sensitivity, specificity and tumor segmentation accuracy.

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