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An automatic detection model of pulmonary nodules based on deep belief network

机译:基于深度信念网络的肺结节自动检测模型

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摘要

Deep belief network (DBN) is a typical representative of deep learning, which has been widely used in speech recognition, image recognition and text information retrieval. Owing to a large number of CT images formed by the advanced spiral CT scanning technology, a pulmonary nodules detection model based on user-defined deep belief network with five layers (PndDBN-5) is proposed in this paper. The process of the method consists of three main stages: image pre-processing, training of PndDBN-5, testing of PndDBN-5. First, the segmentation of lung parenchyma is done. Segmented images are cut with minimum external rectangle and resized using the bilinear interpolation method. Then the model PndDBN-5 is built and trained with pre-processed training samples. Finally, testing PndDBN-5 with pre-processed testing samples is completed. The data used in this method are derived from The Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI) which is the largest open lung nodule database in the world. The experimental results show that the correct rate of PndDBN-5 model for pulmonary nodule detection reached 97.5%, which is significantly higher than the traditional detection method.
机译:深度信念网络(DBN)是深度学习的典型代表,已广泛用于语音识别,图像识别和文本信息检索中。基于先进的螺旋CT扫描技术形成的大量CT图像,提出了一种基于用户定义的五层深度置信网络的肺结节检测模型(PndDBN-5)。该方法的过程包括三个主要阶段:图像预处理,PndDBN-5的训练,PndDBN-5的测试。首先,完成肺实质的分割。用最小的外部矩形剪切分割的图像,并使用双线性插值方法调整大小。然后,构建模型PndDBN-5并使用预处理的训练样本进行训练。最终,使用预处理的测试样本完成了对PndDBN-5的测试。此方法中使用的数据来自“肺图像数据库协会和图像数据库资源倡议”(LIDC-IDRI),这是世界上最大的开放性肺结节数据库。实验结果表明,PndDBN-5模型对肺结节的正确率达到了97.5%,明显高于传统的检测方法。

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