Jesús Arriaga Hernández, Bolivia Otahola, María Morín Castillo, Jose Oliveros
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引用次数: 0
摘要
我们展示了从SARS-CoV-2感染组织的断层扫描研究(视频)中构建的SARS-CoV-2病毒颗粒的3D固体(体积3D模型)。为此,我们建议按帧(病毒的医学图像)进行视频分析(断层图像),并将其设置为元数据。我们通过傅里叶分析优化帧,该分析通过简单的结构模式诱导周期性以最小化噪声滤波并获得图像中物体的最佳相位,重点关注SARS-CoV-2细胞以获得研究阶段(MIS)下的医学图像(在所有帧上重复此过程)。我们构建了一个基于Legendre多项式的Python算法,称为“2DLegendre_Fit”,它在相邻的MIS阶段之间生成(使用多线性插值)中间图像。我们使用此代码生成m张大小为m × m的图像,得到大小为m × m × m的矩阵(3D实体)。最后,我们在几个视频中展示了SARS-CoV-2病毒颗粒的3D固体,作为我们结果的一部分,随后旋转和过滤以识别糖蛋白刺突蛋白,膜蛋白,包膜和血凝素酯酶。我们在我们的提案中展示了算法以及主要的MATLAB函数,如FourierM和Results,以及程序执行所需的数据,以便重现我们的结果。
3D solid of SARS-CoV-2 viral particles applied Legendre polynomials from Tomography Fourier analysis
We show the construction of 3D solids (volumetric 3D models) of SARS-CoV-2 viral particles from the tomographic studies (videos) of SARS-CoV-2-infected tissues. To this aim, we propose a video analysis (tomographic images) by frames (medical images of the virus), which we set as our metadata. We optimize the frames by means of Fourier analysis, which induces a periodicity with simple structure patterns to minimize noise filtering and to obtain an optimal phase of the objects in the image, focusing on the SARS-CoV-2 cells to obtain a medical image under study phase (MIS) (process repeated over all frames). We build a Python algorithm based on Legendre polynomials called “2DLegendre_Fit,” which generates (using multilinear interpolation) intermediate images between neighboring MIS phases. We used this code to generate m images of size M × M , resulting in a matrix with size M × M × M (3D solid). Finally, we show the 3D solid of the SARS-CoV-2 viral particle as part of our results in several videos, subsequently rotated and filtered to identify the glicoprotein spike protein, membrane protein, envelope, and the hemagglutinin esterase. We show the algorithms in our proposal along with the main MATLAB functions such as FourierM and Results as well as the data required for the program execution in order to reproduce our results.
期刊介绍:
OSA was published by The Optical Society from January 1917 to December 1983 before dividing into JOSA A: Optics and Image Science and JOSA B: Optical Physics in 1984.