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Titlebook: Deep Learning in Healthcare; Paradigms and Applic Yen-Wei Chen,Lakhmi C. Jain Book 2020 Springer Nature Switzerland AG 2020 Deep Learning.M

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Overcrowding in mature destination images. Then, a landmark-based deep learning framework is presented for AD/MCI classification, by jointly performing feature extraction and classifier training. Experimental results on three public databases demonstrate that the proposed framework boosts the disease diagnosis performance, compared with several state-of-the-art sMRI-based methods.
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Opacity Labeling of Diffuse Lung Diseases in CT Images Using Unsupervised and Semi-supervised Learniation for training classifiers. The performance evaluation is carried out by clustering or classification of six kinds of opacities of diffuse lung diseases in computed tomography (CT) images: consolidation, ground-glass opacity, honeycombing, emphysema, nodular and normal, and the effectiveness of the proposed methods is clarified.
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Medical Image Classification Using Deep Learninging to classification of focal liver lesions on multi-phase CT images. The main challenge in deep-learning-based medical image classification is the lack of annotated training samples. We demonstrate that fine-tuning can significantly improve the accuracy of liver lesion classification, especially f
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Deep Active Self-paced Learning for Biomedical Image Analysisrain it with the DASL strategy. Experimental results show that the proposed models trained with our DASL strategy perform much better than those trained without DASL using the same amount of annotated samples.
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Deep Learning in Textural Medical Image Analysisined feature representations by an activation visualization method, and by measuring the frequency response of trained neural networks, in both qualitative and quantitative ways, respectively. These results demonstrate that such successive transfer learning enables networks to grasp both structural
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