用于研究结肠粘液中纳米和微观尺度颗粒扩散的机器学习框架。

IF 12.6 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Marco Tjakra, Kristína Lidayová, Christophe Avenel, Christel A S Bergström, Shakhawath Hossain
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引用次数: 0

摘要

模拟天然黏液的生物仿制人工黏液模型促进了高效的、基于实验室的药物扩散研究,解决了药物开发的昂贵和具有挑战性的临床前阶段,特别是纳米和微观尺度的基于颗粒的结肠给药。本研究提出了一个机器学习驱动的框架,该框架将微流变学特征集成到扩散指纹识别中,以表征黏液中纳米和微观尺度的颗粒扩散模式,并评估黏液微流变学对此类运动的影响。我们研究了荧光标记聚苯乙烯颗粒在天然猪黏液和两种人工黏液模型中的扩散。在被动扩散过程中跟踪了具有羧酸盐或胺修饰表面的颗粒(直径100、200和1000 nm)。从每个粒子轨迹中提取20个特征,包括基于微流变学的参数。基于这些特征,应用七个监督机器学习模型对黏液水凝胶进行分类或识别相似性。其中,梯度增强达到了最高的精度。SHapley加性解释分析确定蠕变顺应性是区分黏液模型的最具影响力的特征。在天然黏液中,较小的带负电荷的纳米颗粒表现出最高的迁移率,较少的颗粒处于不移动和亚扩散状态。微流变学数据进一步表明,由于天然黏液的弹性特性,较大的颗粒受到更大的限制。相反,较小的颗粒与粘性液相的相互作用更多。一项全面的全特征分析表明,基于羟乙基纤维素(HEC)的人工粘液比基于聚丙烯酸的模型更接近于天然猪粘液。综上所述,结合微流变特征的机器学习驱动指纹识别方法成功区分了三种黏液模型的微观结构特征和流变特性。这也支持了以hec为基础的人工粘液作为天然结肠粘液的可行替代品的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning framework for investigating nano- and micro-scale particle diffusion in colonic mucus.

Biosimilar artificial mucus models that mimic native mucus facilitate efficient, lab-based drug diffusion studies, addressing the costly and challenging preclinical phase of drug development, especially for nano- and micro-scale particle-based colonic drug delivery. This study presents a machine-learning-driven framework that integrates microrheological features into diffusional fingerprinting to characterize nano- and micro-scale particle diffusion patterns in mucus and assess the effect of mucus microrheology on such movements. We investigated the diffusion of fluorescent-labeled polystyrene particles in native pig mucus and two artificial mucus models. Particles (100, 200, and 1000 nm in diameter) with carboxylate- or amine-modified surfaces were tracked during passive diffusion. From each particle trajectory, 20 features -including microrheology-based parameters- were extracted. Based on these features, seven supervised machine learning models were applied to classify or identify similarities among mucus hydrogels. Of these, gradient boosting achieved the highest accuracy. SHapley Additive exPlanations analysis identified creep compliance as the most influential feature in distinguishing the mucus models. In native mucus, smaller negatively charged nanoparticles exhibited the highest mobility, with fewer particles being in the immobile and subdiffusive states. Microrheology data further indicated that larger particles experienced greater restriction owing to the elastic properties of native mucus. In contrast, smaller particles interacted more with the viscous liquid phase. A comprehensive feature-wide analysis revealed that hydroxyethyl cellulose (HEC)-based artificial mucus more closely resembled native pig mucus than the polyacrylic acid-based model. In conclusion, the machine-learning-driven fingerprinting approach, incorporating microrheological features, successfully differentiated the microstructural characteristics and rheological properties of the three mucus models. It also supported the selection of HEC-based artificial mucus as a viable substitute for native colonic mucus.

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来源期刊
Journal of Nanobiotechnology
Journal of Nanobiotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
13.90
自引率
4.90%
发文量
493
审稿时长
16 weeks
期刊介绍: Journal of Nanobiotechnology is an open access peer-reviewed journal communicating scientific and technological advances in the fields of medicine and biology, with an emphasis in their interface with nanoscale sciences. The journal provides biomedical scientists and the international biotechnology business community with the latest developments in the growing field of Nanobiotechnology.
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