Shandong Normal University, School of Information Science and Engineering, Key Lab of Intelligent Computing & Information Security in Universities of Shandong, Institute of Life Sciences, Shandong Provincial Key Laboratory for Distributed Computer Software Novel Technology, and Key Lab of Intelligent Information Processing, Jinan, 250358, China.
Shandong University of Science and Technology, Department of Electrical Engineering Information Technology, Jinan, 250031, China.
Sci Rep. 2017 Sep 12;7(1):11288. doi: 10.1038/s41598-017-11730-y.
Multispectral imaging (MSI) creates a series of en-face fundus spectral sections by leveraging an extensive range of discrete monochromatic light sources and allows for an examination of the retina's early morphologic changes that are not generally visible with traditional fundus imaging modalities. An Ophthalmologist's interpretation of MSI images is commonly conducted by qualitatively analyzing the spectral consistency between degenerated areas and normal ones, which characterizes the image variation across different spectra. Unfortunately, an ophthalmologist's interpretation is practically difficult considering the fact that human perception is limited to the RGB color space, while an MSI sequence contains typically more than ten spectra. In this paper, we propose a method for measuring the spectral inconsistency of MSI images without supervision, which yields quantitative information indicating the pathological property of the tissue. Specifically, we define mathematically the spectral consistency as an existence of a pixel-specific latent feature vector and a spectrum-specific projection matrix, which can be used to reconstruct the representative features of pixels. The spectral inconsistency is then measured using the number of latent feature vectors required to reconstruct the representative features in practice. Experimental results from 54 MSI sequences show that our spectral inconsistency measurement is potentially invaluable for MSI-based ocular disease diagnosis.
多光谱成像 (MSI) 通过利用广泛的离散单色光源创建一系列眼底光谱截面,从而可以检查传统眼底成像方式通常无法看到的视网膜早期形态变化。眼科医生通常通过定性分析变性区域和正常区域之间的光谱一致性来解释 MSI 图像,这种方法可以描述不同光谱之间的图像变化。不幸的是,由于人类感知仅限于 RGB 颜色空间,而 MSI 序列通常包含超过十个光谱,因此眼科医生的解释实际上是很困难的。在本文中,我们提出了一种无需监督的 MSI 图像光谱不一致性测量方法,该方法可提供定量信息,指示组织的病理特性。具体来说,我们从数学上定义光谱一致性为存在像素特定的潜在特征向量和光谱特定的投影矩阵,该矩阵可用于重建像素的代表性特征。然后,使用实际重建代表性特征所需的潜在特征向量数量来测量光谱不一致性。来自 54 个 MSI 序列的实验结果表明,我们的光谱不一致性测量对于基于 MSI 的眼部疾病诊断具有潜在的重要价值。