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不同蛋白质制剂和容器引发的颗粒形成:颗粒图像机器学习分析的见解

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

作者信息

Milef Gabriella, Ghazvini Saba, Prajapati Indira, Chen Yu-Chieh, Wang Yibo, Boroumand Mehdi

机构信息

Dosage Form Design and Development, BioPharmaceuticals Development, R&D, AstraZeneca, Gaithersburg, MD, USA.

Dosage Form Design and Development, BioPharmaceuticals Development, R&D, AstraZeneca, Gaithersburg, MD, USA.

出版信息

J Pharm Sci. 2024 Dec;113(12):3470-3478. doi: 10.1016/j.xphs.2024.09.017. Epub 2024 Oct 9.

DOI:10.1016/j.xphs.2024.09.017
PMID:39389538
Abstract

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.

摘要

亚可见颗粒计数是制药行业广泛使用的生物治疗药物稳定性指标。生物治疗药物在研发过程中所面临的各种应力会影响颗粒形态。通过对颗粒形态差异进行分类,可以识别出施加于单克隆抗体(mAb)的应力。本研究旨在评估已知会影响蛋白质聚集的常见生物治疗药物储存和运输条件。进行了两项不同的研究,使用微流成像捕获颗粒图像,并使用卷积神经网络对颗粒进行分类。第一项研究评估了在五种不同配方中配制的一种单克隆抗体中,由搅拌、加热和冻融应力产生的颗粒。第二项研究评估了两种常见药物容器(高密度聚乙烯瓶和玻璃瓶)中,仅暴露于搅拌应力的六种单克隆抗体中的颗粒。还进行了本研究的扩展,以评估与单独暴露于一种应力相比,顺序应力暴露对颗粒形态的影响。总体而言,卷积神经网络能够对属于特定配方或容器的颗粒进行分类。这些研究表明,储存和运输应力会根据配方组成和单克隆抗体影响颗粒形态。

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Particle formation in response to different protein formulations and containers: Insights from machine learning analysis of particle images.不同蛋白质制剂和容器引发的颗粒形成:颗粒图像机器学习分析的见解
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