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摘要:
Liver tumors segmentation from computed tomography (CT) images is an essential task for diagnosis and treatments of liver cancer. However, it is difficult owing to the variability of appearances, fuzzy boundaries, heterogeneous densities, shapes and sizes of lesions. In this paper, an automatic method based on convolutional neural networks (CNNs) is presented to segment lesions from CT images. The CNNs is one of deep learning models with some convolutional filters which can learn hierarchical features from data. We compared the CNNs model to popular machine learning algorithms: AdaBoost, Random Forests (RF), and support vector machine (SVM). These classifiers were trained by handcrafted features containing mean, variance, and contextual features. Experimental evaluation was performed on 30 portal phase enhanced CT images using leave-one-out cross validation. The average Dice Similarity Coefficient (DSC), precision, and recall achieved of 80.06% ± 1.63%, 82.67% ± 1.43%, and 84.34% ± 1.61%, respectively. The results show that the CNNs method has better performance than other methods and is promising in liver tumor segmentation.
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篇名 Automatic Segmentation of Liver Tumor in CT Images with Deep Convolutional Neural Networks
来源期刊 电脑和通信(英文) 学科 工学
关键词 LIVER TUMOR SEGMENTATION Convolutional NEURAL Networks DEEP Learning CT Image
年,卷(期) dnhtxyw_2015,(11) 所属期刊栏目
研究方向 页码范围 146-151
页数 6页 分类号 TP39
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研究主题发展历程
节点文献
LIVER
TUMOR
SEGMENTATION
Convolutional
NEURAL
Networks
DEEP
Learning
CT
Image
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研究去脉
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期刊影响力
电脑和通信(英文)
月刊
2327-5219
武汉市江夏区汤逊湖北路38号光谷总部空间
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783
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0
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