一种基于混合ALO-ELM模型的脑肿瘤分类新方法

N. K. Anushkannan, G. Balde, D. Suganthi, P. M. Pandian, B. Kaur, K. Sagar
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引用次数: 1

摘要

脑肿瘤,像许多其他疾病一样,可以通过血栓的形成导致脑损伤。核磁共振成像清晰地显示了脑瘤。健康的脑组织和脑肿瘤组织在显微镜下看起来非常相似,很容易将两者混淆。脑瘤必须得到正确诊断。在评估脑肿瘤时,分割是金标准。通过将肿瘤组织从正常脑组织、水肿脑组织和脑脊液中分离出来,进行脑肿瘤分割以解决这一困难。然而,在MRI图像进行中值滤波以保留其边缘之前,这是无法完成的。采用迭代阈值法提取肿瘤分割的最大区域。在使用分水岭法将大脑与头部的其余部分分离之后,使用裁剪程序去除任何剩余的颅骨组织。在ALO改进了ELM的设置后,通过识别输入节点、隐藏层节点和输出节点,就形成了一个基于ALO-ELM组合的脑肿瘤检测系统。该技术优于ALO和ELM模型,准确率约为98.8%。
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A Novel Method for Categorizing Brain Tumors using the Hybrid ALO-ELM Model
Brain tumors, like many other disorders, can cause brain injury through the formation of clots. The MRI picture clearly shows the brain tumor. Healthy brain tissue and brain tumor tissue seem quite similar under the microscope, making it easy to confuse the two. The brain tumor must be properly diagnosed. When assessing brain tumors, segmentation is the gold standard. Brain tumor segmentation is conducted to get around this difficulty by isolating tumor tissue from normal brain tissue, edematous brain tissue, and cerebrospinal fluid. However, this cannot be accomplished until the MRI picture has been median filtered to preserve its edges. An iterative thresholding approach is required to extract the greatest area from the tumor segmentation. After using the watershed method to separate the brain from the rest of the head, the cropping procedure is used to remove any remaining skull tissue. After ALO has improved the settings of ELM, a brain tumor detection system based on the ALO-ELM combination will have been created by identifying the input nodes, hidden layer nodes, and output nodes. The technique outperforms both the ALO and ELM models, with an accuracy of around 98.8%.
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