Particle formation in response to different protein formulations and containers: Insights from machine learning analysis of particle images

粒子(生态学) 粒径 生物系统 卷积神经网络 材料科学 压力(语言学) 色谱法 化学 计算机科学 化学工程 人工智能 工程类 生物 生态学 语言学 哲学
作者
Gabriella Milef,Saba Ghazvini,Indira Prajapati,Yu‐Chieh Chen,Yibo Wang,Mehdi Boroumand
出处
期刊:Journal of Pharmaceutical Sciences [Elsevier]
卷期号:113 (12): 3470-3478 被引量:1
标识
DOI:10.1016/j.xphs.2024.09.017
摘要

Subvisible particle count is a biotherapeutics stability indicator widely used by pharmaceutical industries. A variety of stresses that biotherapeutics are exposed to during development can impact particle morphology. By classifying particle morphological differences, stresses that have been applied to monoclonal antibodies (mAbs) can be identified. This study aims to evaluate common biotherapeutic drug storage and shipment conditions that are known to impact protein aggregation. Two different studies were conducted to capture particle images using micro-flow imaging and to classify particles using a convolutional neural network. The first study evaluated particles produced in response to agitation, heat, and freeze-thaw stresses in one mAb formulated in five different formulations. The second study evaluated particles from two common drug containers, a high-density polyethylene bottle and a glass vial, in six mAbs exposed solely to agitation stress. An extension of this study was also conducted to evaluate the impact of sequential stress exposure compared to exposure to one stress alone, on particle morphology. Overall, the convolutional neural network was able to classify particles belonging to a particular formulation or container. These studies indicate that storage and shipping stresses can impact particle morphology according to formulation composition and mAb.
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