Liposome Particle Size Prediction by In-Line Process Analytical Technology (PAT)-Integrated Machine Learning.

IF 9.1 2区 材料科学 Q1 CHEMISTRY, PHYSICAL
Small Methods Pub Date : 2026-05-01 DOI:10.1002/smtd.70663
Junghu Lee, Nozomi Morishita Watanabe, Noriko Yoshimoto, Seonghyeon Eom, Moon Kyu Kwak, Ho-Sup Jung, Hiroshi Umakoshi
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引用次数: 0

Abstract

Precise control of liposome size is critical for drug delivery. We developed an in-line PAT-integrated machine learning model that predicts particle size with high accuracy (root mean square error 7.18 nm) using limited experimental data. By integrating physicochemical membrane characteristics, the model demonstrates generalization (root mean square error 7.53 nm) and interpretability, establishing a practical framework for advanced liposome particle size control.

在线过程分析技术(PAT)-集成机器学习的脂质体粒径预测。
精确控制脂质体的大小对药物递送至关重要。我们开发了一种在线pat集成的机器学习模型,该模型使用有限的实验数据以高精度(均方根误差7.18 nm)预测粒度。通过整合物理化学膜特征,该模型具有通用性(均方根误差7.53 nm)和可解释性,为先进的脂质体粒径控制建立了实用框架。
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来源期刊
Small Methods
Small Methods Materials Science-General Materials Science
CiteScore
17.40
自引率
1.60%
发文量
347
期刊介绍: Small Methods is a multidisciplinary journal that publishes groundbreaking research on methods relevant to nano- and microscale research. It welcomes contributions from the fields of materials science, biomedical science, chemistry, and physics, showcasing the latest advancements in experimental techniques. With a notable 2022 Impact Factor of 12.4 (Journal Citation Reports, Clarivate Analytics, 2023), Small Methods is recognized for its significant impact on the scientific community. The online ISSN for Small Methods is 2366-9608.
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