神经网络方法在磁共振图像中发现肝癌水平准确性的测定

V. Vekariya, Tanmay Goswami, Sajjan Singh, Kanishka Ghodke, Imad Saeed Abdulrahman, Anshul Jain
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引用次数: 0

摘要

本文提出了一种基于卷积神经网络图像分割的杠杆癌检测方法,并将其与k近邻分类器的准确率和灵敏度进行了比较。卷积神经网络在第一组有20个样本,第二组有20个样本用于k -最近邻分类器。前测率为80%,对两组进行独立样本t检验。卷积神经网络的准确率为96.29%,k近邻的准确率为89.96%,p<0.05。卷积神经网络和k近邻算法的灵敏度分别为97.61%和95.38%,p<0.05。与k -最近邻分类器相比,卷积神经网络在肝脏肿瘤分割中具有较高的灵敏度和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determination of Accuracy of Neural Network Method Using Magnetic Resonance Images in Finding Liver Cancer Level
This paper proposes the detection of lever cancer by image segmentation via Convolutional Neural Network and comparing accuracy and sensitivity with K-Nearest Neighbor Classifier. 40 samples have been considered for this work. Convolutional Neural Network contains 20 samples in group 1 and group 2 has 20 samples for K-Nearest Neighbor Classifier. With a pretest power of 80%, an independent sample T-test were performed for both the groups. An accuracy of 96.29% is achieved by Convolutional Neural Network and K-Nearest Neighbor achieves an accuracy of 89.96% with significance of p<0.05. The Sensitivity of 97.61% and 95.38% with significance of p<0.05 is achieved by convolutional Neural Network and K-Nearest Neighbor respectively. Convolutional Neural Network accomplishescomparatively better sensitivity and accuracy in cancer segmentation of liver when compared with K-Nearest Neighbor classifier.
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