School of Chinese Materia Medica, Nanjing University of Chinese Medicine, Nanjing 210029, China.
National Engineering Research Center of TCM Standardization Technology, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, Shanghai 201203, China.
Anal Chem. 2022 Jul 26;94(29):10355-10366. doi: 10.1021/acs.analchem.2c00370. Epub 2022 Jul 13.
Hyperspectral images can be generated from mass spectrometry imaging (MSI) data for the intuitive data visualization purpose. However, hundreds of HSIs can be generated by different dimensionality reduction methods, which poses great challenges in selecting the high-quality images with the best intuitive visualization results of the MSI data. Here, we presented a novel approach that objectively evaluates the image quality of the hyperspectral images. The applicability of this method was demonstrated by analyzing the MSI data acquired from human prostate cancer biopsy samples and mouse brain tissue section, which harbored an intrinsic tissue heterogeneity. Our method was based on the information entropy and contrast measured from image information content and image definition, respectively. The heterogeneity of the MSI data from high-dimensional space was reduced to three-dimensional embeddings and thoroughly evaluated to achieve satisfactory visualization results. The application of information entropy and contrast can be used to choose the optimized visualization results rapidly and objectively from an extensive number of hyperspectral images and be adopted to evaluate and optimize different dimensionality reduction algorithms and their hyperparameter combinations. In conclusion, the information entropy-based strategy could be a bridge between chemometrician and biologists.
高光谱图像可以从质谱成像 (MSI) 数据中生成,用于直观的数据可视化目的。然而,通过不同的降维方法可以生成数百张高光谱图像,这给选择具有 MSI 数据最佳直观可视化效果的高质量图像带来了巨大挑战。在这里,我们提出了一种客观评估高光谱图像质量的新方法。通过分析从人前列腺癌活检样本和小鼠脑组织切片获得的 MSI 数据,证明了该方法的适用性,这些样本具有内在的组织异质性。我们的方法基于从图像信息内容和图像定义中分别测量的信息熵和对比度。从高维空间的 MSI 数据的异质性被降低到三维嵌入,并进行了彻底的评估,以获得令人满意的可视化结果。信息熵和对比度的应用可以用于从大量高光谱图像中快速、客观地选择优化的可视化结果,并可用于评估和优化不同的降维算法及其超参数组合。总之,基于信息熵的策略可以成为化学家和生物学家之间的桥梁。