Xu Lili, Zhai Qing, Islam Ariful, Sakamoto Takumi, Zhang Chi, Aramaki Shuhei, Sato Tomohito, Yao Ikuko, Kahyo Tomoaki, Setou Mitsutoshi
Department of Cellular and Molecular Anatomy, Hamamatsu University School of Medicine, Hamamatsu, Shizuoka 431-3192, Japan.
Department of Biochemistry and Microbiology, School of Health and Life Sciences, North South University, Bashundhara, Dhaka 1229, Bangladesh.
J Am Soc Mass Spectrom. 2025 Jan 1;36(1):127-134. doi: 10.1021/jasms.4c00372. Epub 2024 Dec 17.
Imaging mass spectrometry (IMS) is a technique for simultaneously acquiring the expression and distribution of molecules on the surface of a sample, and it plays a crucial role in spatial omics research. In IMS, the time cost and instrument load required for large data sets must be considered, as IMS typically involves tens of thousands of pixels or more. In this study, we developed a high-resolution method for IMS data reconstruction using a window-based Adversarial Autoencoder (AAE) method. We acquired IMS data from partial cerebellum regions of mice with a pitch size of 75 μm and then down-sampled the data to a pitch size of 150 μm, selecting 22 / peak intensity values per pixel. We established an AAE model to generate three pixels from the surrounding nine pixels within a window to reconstruct the image data at a pitch size of 75 μm. Compared with two alternative interpolation methods, Bilinear and Bicubic interpolation, our window-based AAE model demonstrated superior performance on image evaluation metrics for the validation data sets. A similar model was constructed for larger mouse kidney tissues, where the AAE model achieved high image evaluation metrics. Our method is expected to be valuable for IMS measurements of large animal organs across extensive areas.
成像质谱(IMS)是一种用于同时获取样品表面分子的表达和分布的技术,它在空间组学研究中起着至关重要的作用。在IMS中,必须考虑大数据集所需的时间成本和仪器负载,因为IMS通常涉及数万个像素或更多。在本研究中,我们开发了一种基于窗口的对抗自编码器(AAE)方法用于IMS数据重建的高分辨率方法。我们从间距为75μm的小鼠部分小脑区域获取了IMS数据,然后将数据下采样到间距为150μm,每个像素选择22个/峰值强度值。我们建立了一个AAE模型,从窗口内周围的九个像素生成三个像素,以重建间距为75μm的图像数据。与另外两种插值方法,双线性插值和双三次插值相比,我们基于窗口的AAE模型在验证数据集的图像评估指标上表现出优越的性能。针对更大的小鼠肾脏组织构建了类似的模型,其中AAE模型实现了高图像评估指标。我们的方法有望对大面积的大型动物器官的IMS测量具有价值。