Shi Zhenghao, Si Chunjiao, Feng Yaning, He Lifeng, Suzuki Kenji
School of Computer Science and Engineering, Xi'an University of Technology, Xi'an, 710048, China.
School of Information Science and Technology, Aichi Prefectural University, Nagakute, Aichi 4801198, Japan.
Biomed Mater Eng. 2014;24(6):2839-46. doi: 10.3233/BME-141102.
One of the major problems for computer-aided pulmonary nodule detection in chest radiographs is that a high false-positive (FP) rate exists. In an effort to overcome this problem, a new method based on the MTANN (Massive Training Artificial Neural Network) is proposed in this paper. An MTANN comprises a multi-layer neural network where a linear function rather than a sigmoid function is used as its activity function in the output layer. In this work, a mixture of multiple MTANNs were employed rather than only a single MTANN. 50 MTANNs for 50 different types of FPs were prepared firstly. Then, several effective MTANNs that had higher performances were selected to construct the MTANNs mixture. Finally, the outputs of the multiple MTANNs were combined with a mixing neural network to reduce various different types of FPs. The performance of this MTANNs mixture in FPs reduction is validated on three different versions of commercial CAD software with a validation database consisting of 52 chest radiographs. Experimental results demonstrate that the proposed MTANN approach is useful in cutting down FPs in different CAD software for detecting pulmonary nodules in chest radiographs.
胸部X光片中计算机辅助肺结节检测的主要问题之一是存在较高的假阳性(FP)率。为了克服这个问题,本文提出了一种基于大规模训练人工神经网络(MTANN)的新方法。一个MTANN由一个多层神经网络组成,其中在输出层使用线性函数而非Sigmoid函数作为其激活函数。在这项工作中,采用了多个MTANN的混合体而非仅一个MTANN。首先针对50种不同类型的假阳性准备了50个MTANN。然后,选择几个性能更高的有效MTANN来构建MTANN混合体。最后,将多个MTANN的输出与一个混合神经网络相结合以减少各种不同类型的假阳性。在由52张胸部X光片组成的验证数据库上,在三个不同版本的商业CAD软件上验证了这种MTANN混合体在减少假阳性方面的性能。实验结果表明,所提出的MTANN方法对于在不同的CAD软件中减少胸部X光片中肺结节检测的假阳性是有用的。