Cheng Jie-Zhi, Ni Dong, Chou Yi-Hong, Qin Jing, Tiu Chui-Mei, Chang Yeun-Chung, Huang Chiun-Sheng, Shen Dinggang, Chen Chung-Ming
National-Regional Key Technology Engineering Laboratory for Medical Ultrasound, School of Medicine, Shenzhen University, Shenzhen, Guangdong 518060, P.R. China.
Department of Radiology, Taipei Veterans General Hospital and National Yang Ming University, Taipei 112, Taiwan.
Sci Rep. 2016 Apr 15;6:24454. doi: 10.1038/srep24454.
This paper performs a comprehensive study on the deep-learning-based computer-aided diagnosis (CADx) for the differential diagnosis of benign and malignant nodules/lesions by avoiding the potential errors caused by inaccurate image processing results (e.g., boundary segmentation), as well as the classification bias resulting from a less robust feature set, as involved in most conventional CADx algorithms. Specifically, the stacked denoising auto-encoder (SDAE) is exploited on the two CADx applications for the differentiation of breast ultrasound lesions and lung CT nodules. The SDAE architecture is well equipped with the automatic feature exploration mechanism and noise tolerance advantage, and hence may be suitable to deal with the intrinsically noisy property of medical image data from various imaging modalities. To show the outperformance of SDAE-based CADx over the conventional scheme, two latest conventional CADx algorithms are implemented for comparison. 10 times of 10-fold cross-validations are conducted to illustrate the efficacy of the SDAE-based CADx algorithm. The experimental results show the significant performance boost by the SDAE-based CADx algorithm over the two conventional methods, suggesting that deep learning techniques can potentially change the design paradigm of the CADx systems without the need of explicit design and selection of problem-oriented features.
本文对基于深度学习的计算机辅助诊断(CADx)进行了全面研究,用于良恶性结节/病变的鉴别诊断,避免了因图像处理结果不准确(如边界分割)导致的潜在错误,以及大多数传统CADx算法中因特征集不够稳健而产生的分类偏差。具体而言,在乳腺超声病变和肺CT结节的两种CADx应用中采用了堆叠去噪自动编码器(SDAE)。SDAE架构具有自动特征探索机制和噪声容忍优势,因此可能适合处理来自各种成像模态的医学图像数据的固有噪声特性。为了展示基于SDAE的CADx相对于传统方案的优势,实现了两种最新的传统CADx算法进行比较。进行了10次10折交叉验证以说明基于SDAE的CADx算法的有效性。实验结果表明,基于SDAE的CADx算法相对于两种传统方法有显著的性能提升,这表明深度学习技术有可能改变CADx系统的设计范式,而无需明确设计和选择面向问题的特征。