基于尺寸的金纳米颗粒表征的机器学习方法

P. Senoamadi, S. Krishnannair, L. Sikhwivhilu
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摘要

在给药过程中,需要精确地报告粒子参数。研究表明,药物在血液中的吸收能力取决于纳米颗粒的大小。纳米粒子的形状和大小是最重要的,因此纳米粒子的分布取决于纳米粒子的大小和形状。通过对NPs的合成和表征,我们能够聚类并得到某种形态的数量和精确的尺寸测定。此外,颗粒的大小分布起着更重要的目标,因为它在医学诊断和治疗工具的可用性方面具有增加的作用。NPs的形状和大小分布对于药物的输送以及癌症等几种慢性疾病的治愈或治疗都很重要。因此,为了获得更好的结果,获得准确的np尺寸分布是很重要的。金纳米粒子(AuNPs)是通过使用透射电子显微镜手动测量的,因此,在大多数情况下,人为错误可能会导致测量不准确。AnNPs的数字图像中含有噪声,使得透射显微镜难以进行精确测量。测量aunp的宽度和长度。本研究的重点是利用机器学习方法对透射电子显微镜收集的aunp进行表征。图像预处理和处理技术用于提取aunp的特征(长度和宽度)。在本研究中,滤波技术如高斯模糊,中值和均值滤波技术用于去除噪声,以提高估计np大小的精度。利用K-means、Otsu等无监督机器学习算法对过滤后的纳米图像进行图像分割,准确提取粒子的长度、宽度等特征。利用机器学习方法获得的尺寸测量值与透射电子显微镜(TEM)测量值进行了比较,以估计NPs尺寸分布的误差。结果表明,与TEM相比,机器学习方法提供了大多数NPs的精确测量。因此,建议使用机器学习方法来估计np的大小,以便在合成过程中更好地描述和分类形状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Size Based Characterization of Gold Nano Particles using Machine Learning Approach
In drug delivery, there is a need for precision in reporting particles parameters. Studies have shown that absorbency of drugs in the blood stream depends on the size of the nanoparticle. The shape and size of nanoparticles (NPs) matter the most, hence the distribution of NP depends on the size and shape of NPs. By synthesizing and characterizing the NPs, we are able to cluster and get the amount of a certain type of morphology and accurate size determination. Moreover, the size distribution of a particle plays a more important goal as it possesses an increase in the usability of a diagnostic and therapeutic tool in medicine. The shape and size distribution of NPs is important for the delivery of drugs and for the cure or treatment of several chronic diseases such as cancer. Hence it is important to get the accurate size distribution of NPs for better results. Gold nano particles (AuNPs) where measured manually by the use of transmission electron microscope, hence, in most cases human error could play part in terms of inaccurate measurements. The digital images of AnNPs contain noise, making it difficult to get accurate measurements using the transmission microscope. AuNPs were measured in terms of their width and length. This study focused on the characterization of AuNPs collected by the transmission electron microscope using machine learning approaches. Image preprocessing and processing techniques are used for extracting the features (length and width) of AuNPs. In this study, filtering techniques such as Gaussian blur, Median and Mean filtering techniques are employed for noise removal to increase the precision in estimating the size of NPs. Unsupervised machine learning algorithm such as K-means and Otsu are used to perform image segmentation of the filtered nano images for the accurate extraction of particles' features such as length and width. The size measurements obtained using the machine learning approaches are compared with the measurements taken by the transmission electron microscope (TEM) for error estimation in the size distributions of NPs. The results showed that machine learning approaches provided accurate measurements of most of the NPs as compared to TEM. Therefore, it is recommended that machine learning approaches can be used to estimate the size of NPs so that the shapes can be described better and classified during the synthesis process.
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