Efficientand Robust Automated Segmentation of Nanoparticles and Aggregates from Transmission Electron Microscopy Images with Highly Complex Backgrounds
Lishi Zhou, Haotian Wen, I. Kuschnerus, Shery L. Y. Chang
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引用次数: 0
Abstract
Morphologies of nanoparticles and aggregates play an important role in their properties for a range of applications. In particular, significant synthesis efforts have been directed toward controlling nanoparticle morphology and aggregation behavior in biomedical applications, as their size and shape have a significant impact on cellular uptake. Among several techniques for morphological characterization, transmission electron microscopy (TEM) can provide direct and accurate characterization of nanoparticle/aggregate morphology details. Nevertheless, manually analyzing a large number of TEM images is still a laborious process. Hence, there has been a surge of interest in employing machine learning methods to analyze nanoparticle size and shape. In order to achieve accurate nanoparticle analysis using machine learning methods, reliable and automated nanoparticle segmentation from TEM images is critical, especially when the nanoparticle image contrast is weak and the background is complex. These challenges are particularly pertinent in biomedical applications. In this work, we demonstrate an efficient, robust, and automated nanoparticle image segmentation method suitable for subsequent machine learning analysis. Our method is robust for noisy, low-electron-dose cryo-TEM images and for TEM cell images with complex, strong-contrast background features. Moreover, our method does not require any a priori training datasets, making it efficient and general. The ability to automatically, reliably, and efficiently segment nanoparticle/aggregate images is critical for advancing precise particle/aggregate control in biomedical applications.
纳米粒子和聚集体的形态对其在一系列应用中的特性起着重要作用。特别是在生物医学应用中,由于纳米粒子的大小和形状对细胞吸收有重要影响,因此人们一直致力于控制纳米粒子的形态和聚集行为。在多种形态表征技术中,透射电子显微镜(TEM)可直接准确地表征纳米粒子/聚集体的形态细节。然而,手动分析大量 TEM 图像仍然是一个费力的过程。因此,人们对采用机器学习方法来分析纳米粒子的尺寸和形状产生了浓厚的兴趣。为了利用机器学习方法实现准确的纳米粒子分析,从 TEM 图像中进行可靠的自动纳米粒子分割至关重要,尤其是在纳米粒子图像对比度较弱、背景复杂的情况下。这些挑战在生物医学应用中尤为突出。在这项工作中,我们展示了一种高效、稳健和自动化的纳米粒子图像分割方法,适合后续的机器学习分析。我们的方法对于有噪声、低电子剂量的低温 TEM 图像以及具有复杂、强对比背景特征的 TEM 细胞图像都很稳健。此外,我们的方法不需要任何先验训练数据集,因此既高效又通用。自动、可靠、高效地分割纳米粒子/聚集体图像的能力对于推进生物医学应用中的粒子/聚集体精确控制至关重要。