Diagnosis of Brain Tumor Using Nano Segmentation and Advanced-Convolutional Neural Networks Classification

P. Deepa, S. Jawhar, J. M. Geisa
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Abstract

The field of nanotechnology has lately acquired prominence according to the raised level of correct identification and performance in the patients using Computer-Aided Diagnosis (CAD). Nano-scale imaging model enables for a high level of precision and accuracy in determining if a brain tumour is malignant or benign. This contributes to people with brain tumours having a better standard of living. In this study, We present a revolutionary Semantic nano-segmentation methodology for the nanoscale classification of brain tumours. The suggested Advanced-Convolutional Neural Networks-based Semantic Nano-segmentation will aid radiologists in detecting brain tumours even when lesions are minor. ResNet-50 was employed in the suggested Advanced-Convolutional Neural Networks (A-CNN) approach. The tumour image is partitioned using Semantic Nano-segmentation, that has averaged dice and SSIM values of 0.9704 and 0.2133, correspondingly. The input is a nano-image, and the tumour image is segmented using Semantic Nano-segmentation, which has averaged dice and SSIM values of 0.9704 and 0.2133, respectively. The suggested Semantic nano segments achieves 93.2 percent and 92.7 percent accuracy for benign and malignant tumour pictures, correspondingly. For malignant or benign pictures, The accuracy of the A-CNN methodology of correct segmentation is 99.57 percent and 95.7 percent, respectively. This unique nano-method is designed to detect tumour areas in nanometers (nm) and hence accurately assess the illness. The suggested technique’s closeness to with regard to True Positive values, the ROC curve implies that it outperforms earlier approaches. A comparison analysis is conducted on ResNet-50 using testing and training data at rates of 90%–10%, 80%–20%, and 70%–30%, corresponding, indicating the utility of the suggested work.
基于纳米分割和先进卷积神经网络分类的脑肿瘤诊断
近年来,随着计算机辅助诊断(CAD)对患者的正确识别和表现水平的提高,纳米技术领域得到了突出的发展。纳米级成像模型能够高度精确和准确地确定脑肿瘤是恶性还是良性。这有助于脑肿瘤患者有更好的生活水平。在这项研究中,我们提出了一种革命性的语义纳米分割方法,用于脑肿瘤的纳米级分类。建议的基于先进卷积神经网络的语义纳米分割将帮助放射科医生检测脑肿瘤,即使病变很小。建议的高级卷积神经网络(A-CNN)方法采用ResNet-50。使用语义纳米分割对肿瘤图像进行分割,其平均dice和SSIM值分别为0.9704和0.2133。输入为纳米图像,使用语义纳米分割对肿瘤图像进行分割,其平均dice和SSIM值分别为0.9704和0.2133。所建议的语义纳米片段对良性和恶性肿瘤图像的准确率分别达到93.2%和92.7%。对于恶性和良性图片,A-CNN方法的正确分割准确率分别为99.57%和95.7%。这种独特的纳米方法旨在以纳米(nm)检测肿瘤区域,从而准确评估疾病。建议的技术接近于真正值,ROC曲线意味着它优于早期的方法。在ResNet-50上使用测试数据和训练数据分别以90%-10%、80%-20%和70%-30%的比例进行对比分析,表明建议工作的实用性。
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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