AutoSAS:用于高通量和自主实验的自动化SAS装配的新人工旁路范例。

APL machine learning Pub Date : 2025-09-01 Epub Date: 2025-08-12 DOI:10.1063/5.0271073
Duncan R Sutherland, Rachel Ford, Yun Liu, Tyler B Martin, Peter A Beaucage
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引用次数: 0

摘要

人工智能驱动的自主实验的发展需要基于物理的建模和决策过程,不仅要提高实验轨迹的准确性,而且要通过透明的人机协作来增加信任。高质量的结构表征技术(如x射线、中子或静态光散射)是这种需求的一个特别相关的例子:它们提供了宝贵的信息,但在没有专家监督的情况下很难进行分析。在这里,我们介绍AutoSAS,这是一种用于人工旁路自动数据分类的新框架。AutoSAS利用人类定义的候选模型、高通量组合拟合和信息论模型选择来生成分类结果和定量结构描述符。我们在一个开源软件包中实现了AutoSAS,该软件包设计用于自主配方实验室,用于基于x射线和中子散射的多组分液体配方优化。在第一个应用程序中,我们利用一组专家定义的候选模型对可注射药物载体系统中的模型进行分类、优化结构和跟踪转换。我们评估了四种模型选择方法,并将它们与优化的机器学习分类器进行了基准测试,最好的方法是平衡模型的拟合质量和复杂性。AutoSAS不仅证实了先前实验中发现的临界胶束浓度边界,而且还发现了先前方法未发现的第二个结构过渡边界。这些结果证明了AutoSAS通过提供强大的、可解释的模型选择来增强自主实验工作流程的潜力,为复杂配方中更可靠、更有洞察力的结构表征铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AutoSAS: A new human-aside-the-loop paradigm for automated SAS fitting for high throughput and autonomous experimentation.

The advancement of artificial-intelligence driven autonomous experiments demands physics-based modeling and decision-making processes, not only to improve the accuracy of the experimental trajectory but also to increase trust by allowing transparent human-machine collaboration. High-quality structural characterization techniques (e.g., x ray, neutron, or static light scattering) are a particularly relevant example of this need: they provide invaluable information but are challenging to analyze without expert oversight. Here, we introduce AutoSAS, a novel framework for human-aside-the-loop automated data classification. AutoSAS leverages human-defined candidate models, high-throughput combinatorial fitting, and information-theoretic model selection to generate both classification results and quantitative structural descriptors. We implement AutoSAS in an open-source package designed for use with the Autonomous Formulation Laboratory for x-ray and neutron scattering-based optimization of multi-component liquid formulations. In a first application, we leveraged a set of expert defined candidate models to classify, refine the structure, and track transformations in a model injectable drug carrier system. We evaluated four model selection methods and benchmarked them against an optimized machine learning classifier, and the best approach was one that balanced quality of the fit and complexity of the model. AutoSAS not only corroborated the critical micelle concentration boundary identified in previous experiments but also discovered a second structural transition boundary not identified by the previous methods. These results demonstrate the potential of AutoSAS to enhance autonomous experimental workflows by providing robust, interpretable model selection, paving the way for more reliable and insightful structural characterization in complex formulations.

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