Practical Guide to Automated TEM Image Analysis for Increased Accuracy and Precision in the Measurement of Particle Size and Morphology.

IF 6.3 Q2 NANOSCIENCE & NANOTECHNOLOGY
ACS Nanoscience Au Pub Date : 2025-04-17 eCollection Date: 2025-06-18 DOI:10.1021/acsnanoscienceau.4c00076
Kristen M Aviles, Benjamin J Lear
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引用次数: 0

Abstract

A common desire in nanoscience is to describe the size and morphology of nanoparticles as observed from TEM images. Many times, this analysis is done manually, a lengthy process that is prone to errors and ambiguity in the measurements. While several research groups have reported excellent advances in machine-learned approaches to automated TEM image processing, the tools that they have developed often require specialized software or significant knowledge of coding. This state of affairs means that a majority of researchers in the field of nanoscience are not well-equipped to incorporate these advances into their normal workflows. In this tutorial, we describe how to use Weka segmentation within the free and open source program FIJI to automatically identify and characterize nanoparticles from TEM images. The approach we outline is not meant to discount the excellent results of groups working at the forefront of machine learning image analysis; rather, it is meant to bring similar tools to a broader audience by demonstrating how such processing can be done within the GUI-based interface of FIJIa program already commonly used within nanoscience research. We also discuss the advantages that arise from automatic processing of TEM images, including repeatability, time savings, the ability to process low-contrast images, and the additional types of characterization that can be performed following identification of particles. The overall goal is to provide an accessible tool that enables a more robust and repeatable analysis and descriptions of nanoparticles.

实用指南自动TEM图像分析提高准确性和精度在测量颗粒大小和形态。
纳米科学的一个共同愿望是描述从透射电镜图像中观察到的纳米颗粒的大小和形态。很多时候,这种分析是手动完成的,这是一个冗长的过程,容易在测量中出现错误和歧义。虽然几个研究小组已经报告了机器学习方法在自动化TEM图像处理方面的卓越进展,但他们开发的工具通常需要专门的软件或大量的编码知识。这种状况意味着纳米科学领域的大多数研究人员没有很好地将这些进步纳入他们的正常工作流程。在本教程中,我们描述了如何使用免费开源程序FIJI中的Weka分割来自动识别和表征TEM图像中的纳米颗粒。我们概述的方法并不是要贬低在机器学习图像分析前沿工作的团队的出色成果;相反,它的目的是通过展示如何在斐济的基于gui的界面中完成这种处理,从而将类似的工具带给更广泛的受众。斐济是纳米科学研究中已经普遍使用的程序。我们还讨论了自动处理TEM图像的优点,包括可重复性,节省时间,处理低对比度图像的能力,以及可以在识别颗粒后进行的其他类型的表征。总体目标是提供一种易于使用的工具,使纳米颗粒的分析和描述更加可靠和可重复。
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来源期刊
ACS Nanoscience Au
ACS Nanoscience Au 材料科学、纳米科学-
CiteScore
4.20
自引率
0.00%
发文量
0
期刊介绍: ACS Nanoscience Au is an open access journal that publishes original fundamental and applied research on nanoscience and nanotechnology research at the interfaces of chemistry biology medicine materials science physics and engineering.The journal publishes short letters comprehensive articles reviews and perspectives on all aspects of nanoscience and nanotechnology:synthesis assembly characterization theory modeling and simulation of nanostructures nanomaterials and nanoscale devicesdesign fabrication and applications of organic inorganic polymer hybrid and biological nanostructuresexperimental and theoretical studies of nanoscale chemical physical and biological phenomenamethods and tools for nanoscience and nanotechnologyself- and directed-assemblyzero- one- and two-dimensional materialsnanostructures and nano-engineered devices with advanced performancenanobiotechnologynanomedicine and nanotoxicologyACS Nanoscience Au also publishes original experimental and theoretical research of an applied nature that integrates knowledge in the areas of materials engineering physics bioscience and chemistry into important applications of nanomaterials.
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