Guo Lei, Xie Chengyi, Diao Xin, Lam Thomas Ka Yam, Zhong Yanhui, Chen Yanyan, Xu Jingjing, Xu Xiangnan, Zhu Xiangyu, Xiong Zhuang, Luo Shangyi, Wang Jianing, Dong Jiyang, Cai Zongwei
Interdisciplinary Institute for Medical Engineering, Fuzhou University, Fuzhou 350108, China.
State Key Laboratory of Environmental and Biological Analysis, Hong Kong Baptist University, Hong Kong SAR 999077, China.
Anal Chem. 2025 Sep 23;97(37):20201-20208. doi: 10.1021/acs.analchem.5c02946. Epub 2025 Sep 8.
Mass spectrometry imaging (MSI) is a label-free technique that enables the visualization of the spatial distribution of thousands of ions within biosamples. Data denoising is the computational strategy aimed at enhancing the MSI data quality, providing an effective alternative to experimental methods. However, due to the complex noise pattern inherent in MSI data and the difficulty in obtaining ground truth from noise-free data, achieving reliable denoised images remains challenging. In this study, we introduce De-MSI, a novel deep learning-based method specifically developed for denoising MSI data without ground truth. The core concept of De-MSI involves constructing the reliable training data set by leveraging prior knowledge of mass spectrometry from the noisy MSI data, followed by training a deep neural network to improve the data quality by removing the noise from the original images. De-MSI has demonstrated superior performance in improving data quality over the commonly used methods when applied to MALDI-acquired mouse fetus data sets on visual inspection. Quantitative evaluations further confirm its superiority, with De-MSI achieving a mean PSNR of 18.93 and a mean SSIM of 0.74 across all ion images. The ability of De-MSI to enhance data quality in high-resolution MSI data sets is confirmed using the mouse brain data set at a pixel size of 5 μm. Additionally, its application to denoise rat brain data sets using the DESI technique showcases its adaptability across different ionization methods. The proposed model holds significant promise as a vital tool for the efficient analysis and interpretation of MSI data.
质谱成像(MSI)是一种无标记技术,能够可视化生物样本中数千种离子的空间分布。数据去噪是旨在提高MSI数据质量的计算策略,为实验方法提供了一种有效的替代方案。然而,由于MSI数据固有的复杂噪声模式以及从无噪声数据中获取真实数据的困难,获得可靠的去噪图像仍然具有挑战性。在本研究中,我们引入了De-MSI,这是一种专门为在没有真实数据的情况下对MSI数据进行去噪而开发的基于深度学习的新方法。De-MSI的核心概念包括利用来自有噪声MSI数据的质谱先验知识构建可靠的训练数据集,然后训练深度神经网络以通过去除原始图像中的噪声来提高数据质量。在对MALDI采集的小鼠胎儿数据集进行目视检查时,De-MSI在提高数据质量方面表现出优于常用方法的性能。定量评估进一步证实了其优越性,De-MSI在所有离子图像上的平均峰值信噪比(PSNR)为18.93,平均结构相似性指数(SSIM)为0.74。使用像素大小为5μm的小鼠脑数据集证实了De-MSI在高分辨率MSI数据集中提高数据质量的能力。此外,其在使用DESI技术对大鼠脑数据集进行去噪的应用展示了其在不同电离方法中的适应性。所提出的模型作为高效分析和解释MSI数据的重要工具具有巨大的前景。