Quantifying dispersity in size and shape of nanoparticles from small-angle scattering data using machine learning based CREASE

IF 2.8 3区 材料科学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Rohan S. Adhikari, Sri Vishnuvardhan Reddy Akepati, Matthew R. Carbone, Asritha Polu, Hyeong Jin Kim, Yugang Zhang, Arthi Jayaraman
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引用次数: 0

Abstract

We use machine learning (ML) enhanced computational reverse engineering analysis of scattering experiments (CREASE) to interpret small-angle X-ray scattering (SAXS) data obtained from a system of nanoparticles without a priori knowledge of their exact shapes (e.g. spheres or ellipsoids), sizes (0.5–50 nm) and distributions. The SAXS measurements yielded three categories of scattering profiles exhibiting `strong', `weak' and `no' features. Diminishing features (e.g. broadening or disappearing peaks) in scattering profiles have always been attributed to the presence of significant dispersity in the system. Such featureless SAXS data are not suitable for traditional analysis using analytical models. If one were to fit a relevant analytical model (e.g. the lmfit analytical model for polydisperse spheres) to these `weak' and `no' SAXS profiles from our nanoparticle systems, one would obtain non-unique interpretations of the data. Relying on electron microscopy to identify the distributions of nanoparticle shapes and sizes is also unfeasible, especially in high-throughput synthesis and characterization loops. In such situations, to identify the distributions of particle sizes and shapes that could be present in the sample, one must rely on methods like ML-CREASE to interpret the data quickly and output all relevant interpretations about the structure present in the system. The ML-CREASE optimization loop takes the experimental scattering profile as input and outputs multiple candidate solutions whose computed scattering profiles match the SAXS profile input. The ML-CREASE method outputs distributions of relevant structural features, such as the volume fraction of the nanoparticles in the system and the mean and standard deviation of the particle size and aspect ratio, assuming a type of distribution (e.g. normal, log-normal) for size and aspect ratio. We find that, for the SAXS profiles analyzed here, accounting for the shape dispersity along with size dispersity of the nanoparticles using ML-CREASE improved the match between the computed scattering profiles and input experimental profiles.

Abstract Image

利用基于机器学习的CREASE从小角度散射数据量化纳米颗粒在尺寸和形状上的分散性
我们使用机器学习(ML)增强的散射实验计算逆向工程分析(CREASE)来解释从纳米粒子系统获得的小角度x射线散射(SAXS)数据,而无需先验地了解其确切形状(例如球体或椭球),尺寸(0.5-50 nm)和分布。SAXS测量产生了三种类型的散射剖面,表现出“强”、“弱”和“无”特征。散射剖面的衰减特征(如峰变宽或消失)一直归因于系统中存在显著的分散性。这种无特征的SAXS数据不适合使用传统的分析模型进行分析。如果将相关的分析模型(例如,多分散球体的lmfit分析模型)拟合到纳米颗粒系统的这些“弱”和“无”SAXS谱上,就会得到对数据的非唯一解释。依靠电子显微镜来识别纳米颗粒形状和大小的分布也是不可行的,特别是在高通量合成和表征回路中。在这种情况下,为了识别样品中可能存在的颗粒大小和形状的分布,必须依赖ML-CREASE等方法来快速解释数据并输出有关系统中存在的结构的所有相关解释。ML-CREASE优化回路以实验散射曲线为输入,输出多个候选解,计算得到的散射曲线与SAXS曲线输入相匹配。ML-CREASE方法输出相关结构特征的分布,例如纳米颗粒在系统中的体积分数,以及粒径和纵横比的平均值和标准差,假设粒径和纵横比的分布类型(例如正态分布,对数正态分布)。我们发现,对于本文分析的SAXS分布,使用ML-CREASE计算纳米颗粒的形状分散性和尺寸分散性可以改善计算散射分布与输入实验分布之间的匹配。
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来源期刊
Journal of Applied Crystallography
Journal of Applied Crystallography CHEMISTRY, MULTIDISCIPLINARYCRYSTALLOGRAPH-CRYSTALLOGRAPHY
CiteScore
7.80
自引率
3.30%
发文量
178
期刊介绍: Many research topics in condensed matter research, materials science and the life sciences make use of crystallographic methods to study crystalline and non-crystalline matter with neutrons, X-rays and electrons. Articles published in the Journal of Applied Crystallography focus on these methods and their use in identifying structural and diffusion-controlled phase transformations, structure-property relationships, structural changes of defects, interfaces and surfaces, etc. Developments of instrumentation and crystallographic apparatus, theory and interpretation, numerical analysis and other related subjects are also covered. The journal is the primary place where crystallographic computer program information is published.
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