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Evaluating several ways to combine handcrafted feature-based systems with a deep learning system for the LUNA16 Challenge framework

机译:针对LUNA16挑战框架,评估将手工制作的基于特征的系统与深度学习系统相结合的几种方法

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Computer aided diagnosis systems arc used to assist radiologists in their decision making. The sensitivity of these systems is hindered by the complexity of the structures inside the lungs. Several systems and methods have been proposed to detect and classify lung nodules, but all of them have their strengths and weaknesses. One way to overcome the weaknesses is to combine multiple systems. Systems based on handcrafted features capture a limited set of characteristics from the image, while deep learning based classifiers can deal with a wider range of structures. In this work, several ways to combine a handcrafted feature based classifier with four convolutional neural network are explored. The systems were combined merging the probabilities assigned to the detections in several ways. Support-vector machine, multilayer perception and random forest classifiers were used to combine the selected classifiers. The LUNA16 Challenge was used to evaluate the performance of the resulting hybrid systems. In all cases, the hybrid systems outperformed the individual systems. Although the average of sensitivities are similar for most of the combinations, the best hybrid system achieves a gain of 35 extra nodules at 4 FP per scan.
机译:计算机辅助诊断系统可用于协助放射科医生进行决策。这些系统的敏感性由于肺部内部结构的复杂性而受到阻碍。已经提出了几种检测和分类肺结节的系统和方法,但是它们都有优点和缺点。克服弱点的一种方法是组合多个系统。基于手工特征的系统会从图像中捕获有限的特征集,而基于深度学习的分类器可以处理范围更广的结构。在这项工作中,探索了将基于手工特征的分类器与四个卷积神经网络相结合的几种方法。将这些系统合并在一起,以几种方式合并分配给检测的概率。支持向量机,多层感知器和随机森林分类器用于组合所选分类器。 LUNA16挑战用于评估所得混合系统的性能。在所有情况下,混合动力系统都优于单个系统。尽管大多数组合的平均灵敏度相似,但是最好的混合系统在每次扫描4 FP时可获得35个额外的结节。

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