R. Subalakshmi, G. Baskar
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引用次数: 0

摘要

通过计算机辅助诊断(CAD)的实现,从放射图像容器中对肿瘤进行危险表征变得更加精确和快速。通过这种设备对肿瘤的描绘同样可以实现非侵入性预后,并促进个性化和治疗安排,作为一种准确的药物治疗。在本研究中,协同机器学习算法策略来更好地表征肿瘤。我们的方法学分析依赖于定向学习,我们在机器学习算法方面表现出了关键的增长,特别是通过利用3D卷积神经网络和迁移学习。受放射科医生对输出的理解的干扰,我们在这一点上告诉最好的方法,将任务下属的特征表示融合到一个cad框架中,即借助于特征融合的图正则化的不充分多任务学习(MTL)系统。
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Lung and Tumor Characterization in the Machine Learning Era
Danger characterization of tumors from radiology image container to be much precise and quicker with computer aided diagnosis (CAD) implements. Tumor portrayal via such devices can likewise empower non-intrusive prognosis, and foster personalized, and treatment arranging as a piece of accuracy medication. In this study , in cooperation machine learning algorithm strategies to better tumor characterization. Our methodological analysis depends on directed erudition for which we exhibit critical increases with machine learning algorithm, particularly by exploitation a 3D Convolutional Neural Network and Transfer Learning. Disturbed by the radiologists' understandings of the outputs, we at that point tell the best way to fuse task subordinate feature representations into a CAD framework by means of a diagram regularized inadequate MultiTask Learning (MTL) system with the help of feature fusion.
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