Yin Xiao-Xia, Hadjiloucas Sillas, Zhang Yanchun, Su Min-Ying, Miao Yuan, Abbott Derek
Centre for Applied Informatics, College of Engineering and Science, Victoria University, Melbourne, VIC 8001, Australia.
School of Systems Engineering and Department of Bioengineering, University of Reading, Reading RG6 6AY, UK.
Artif Intell Med. 2016 Feb;67:1-23. doi: 10.1016/j.artmed.2016.01.005. Epub 2016 Feb 16.
We provide a survey of recent advances in biomedical image analysis and classification from emergent imaging modalities such as terahertz (THz) pulse imaging (TPI) and dynamic contrast-enhanced magnetic resonance images (DCE-MRIs) and identification of their underlining commonalities.
Both time and frequency domain signal pre-processing techniques are considered: noise removal, spectral analysis, principal component analysis (PCA) and wavelet transforms. Feature extraction and classification methods based on feature vectors using the above processing techniques are reviewed. A tensorial signal processing de-noising framework suitable for spatiotemporal association between features in MRI is also discussed.
Examples where the proposed methodologies have been successful in classifying TPIs and DCE-MRIs are discussed.
Identifying commonalities in the structure of such heterogeneous datasets potentially leads to a unified multi-channel signal processing framework for biomedical image analysis.
The proposed complex valued classification methodology enables fusion of entire datasets from a sequence of spatial images taken at different time stamps; this is of interest from the viewpoint of inferring disease proliferation. The approach is also of interest for other emergent multi-channel biomedical imaging modalities and of relevance across the biomedical signal processing community.
我们对生物医学图像分析和分类的最新进展进行综述,这些进展来自太赫兹(THz)脉冲成像(TPI)和动态对比增强磁共振成像(DCE-MRI)等新兴成像模态,并识别它们潜在的共性。
考虑了时域和频域信号预处理技术:噪声去除、频谱分析、主成分分析(PCA)和小波变换。综述了基于使用上述处理技术的特征向量的特征提取和分类方法。还讨论了适用于MRI中特征间时空关联的张量信号处理去噪框架。
讨论了所提出的方法在对TPI和DCE-MRI进行分类时取得成功的示例。
识别此类异构数据集结构中的共性可能会导致用于生物医学图像分析的统一多通道信号处理框架。
所提出的复值分类方法能够融合来自在不同时间戳拍摄的一系列空间图像的整个数据集;从推断疾病扩散的角度来看,这很有意义。该方法对于其他新兴的多通道生物医学成像模态也很有意义,并且与生物医学信号处理领域相关。