Data analytics-guided rational design of antimicrobial nanomedicines against opportunistic, resistant pathogens

IF 4.7 4区 医学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Adam S. Mullis PhD , Scott R. Broderick PhD , Kruttika S. Phadke BS , Nathan Peroutka-Bigus PhD , Bryan H. Bellaire PhD , Krishna Rajan PhD , Balaji Narasimhan ScD
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引用次数: 1

Abstract

Nanoparticle carriers can improve antibiotic efficacy by altering drug biodistribution. However, traditional screening is impracticable due to a massive dataspace. A hybrid informatics approach was developed to identify polymer, antibiotic, and particle determinants of antimicrobial nanomedicine activity against Burkholderia cepacia, and to model nanomedicine performance. Polymer glass transition temperature, drug octanol-water partition coefficient, strongest acid dissociation constant, physiological charge, particle diameter, count and mass mean polydispersity index, zeta potential, fraction drug released at 2 h, and fraction release slope at 2 h were highly correlated with antimicrobial performance. Graph analysis provided dimensionality reduction while preserving nonlinear descriptor-property relationships, enabling accurate modeling of nanomedicine performance. The model successfully predicted particle performance in holdout validation, with moderate accuracy at rank-ordering. This data analytics-guided approach provides an important step toward the development of a rational design framework for antimicrobial nanomedicines against resistant infections by selecting appropriate carriers and payloads for improved potency.

Abstract Image

数据分析指导抗微生物纳米药物的合理设计,以对抗机会性耐药病原体
纳米颗粒载体可以通过改变药物的生物分布来提高抗生素的疗效。然而,由于数据空间庞大,传统的筛选方法难以实现。开发了一种混合信息学方法来鉴定抗洋葱伯克霍尔德菌抗菌纳米药物活性的聚合物,抗生素和颗粒决定因素,并模拟纳米药物的性能。聚合物玻璃化转变温度、药物辛醇-水分配系数、最强酸解离常数、生理电荷、颗粒直径、计数和质量平均多分散性指数、zeta电位、2 h药物释放分数和2 h药物释放斜率与抗菌性能高度相关。图分析提供了降维,同时保留了非线性描述符-属性关系,使纳米药物性能的准确建模成为可能。该模型在hold - out验证中成功预测了颗粒性能,在排序上具有中等精度。这种以数据分析为指导的方法通过选择合适的载体和有效载荷来提高效力,为抗耐药性感染的抗菌纳米药物的合理设计框架的发展提供了重要的一步。
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来源期刊
CiteScore
8.10
自引率
3.60%
发文量
104
审稿时长
4.6 months
期刊介绍: Nanomedicine: Nanotechnology, Biology and Medicine (NBM) is an international, peer-reviewed journal presenting novel, significant, and interdisciplinary theoretical and experimental results related to nanoscience and nanotechnology in the life and health sciences. Content includes basic, translational, and clinical research addressing diagnosis, treatment, monitoring, prediction, and prevention of diseases.
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