利用人工神经网络推进制药科学:优化给药系统配方综述》。

IF 2.6 4区 医学 Q2 PHARMACOLOGY & PHARMACY
Simin Salarpour, Soodeh Salarpour, Mehdi Ansari Dogaheh
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引用次数: 0

摘要

药物输送系统(DDS)的开发是为了应对与传统药物输送方法相关的挑战。这些给药系统旨在改善给药、提高患者依从性、减少副作用并优化目标疗法。要实现这些目标,设计出具有最佳性能特征的 DDS 至关重要。DDS 的最终特性由配制药物制剂的多个因素决定。因此,对这些因素进行优化,可以获得理想的 DDS 配方。人工神经网络(ANN)是一种计算模型,它模仿生物神经元和神经网络的功能,对输入进行数学运算以产生输出。在医学科学中,ANN 被广泛应用于疾病诊断和治疗建模、联合治疗的剂量调整、医学教育等领域。在制药科学领域,ANN 在设计和优化药物制剂方面获得了极大的关注。本文综述了 ANN 在药物制剂设计和优化中的应用,特别是 DDS。由于 DDS 种类繁多,因此每种类型的 DDS 都要考察不同的因素。这些因素被视为每个 ANN 模型的独立参数和从属参数,并提供了各种示例。通过利用 ANN,可以建立制剂因素与由此产生的 DDS 特性之间的关系,最终开发出优化的 DDS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Pharmaceutical Science with Artificial Neural Networks: A Review on Optimizing Drug Delivery Systems Formulation.

Drug Delivery Systems (DDS) have been developed to address the challenges associated with traditional drug delivery methods. These DDS aim to improve drug administration, enhance patient compliance, reduce side effects, and optimize target therapy. To achieve these goals, it is crucial to design DDS with optimal performance characteristics. The final properties of a DDS are determined by several factors that go into formulating a pharmaceutical preparation. Thus, optimizing these factors can lead to the ideal DDS formulation. Artificial Neural Networks (ANN) are computational models that mimic the function of biological neurons and neural networks and perform mathematical operations on inputs to generate outputs. ANN is widely used in medical sciences for modeling disease diagnosis and treatment, dose adjustment in combination therapy, medical education, and other fields. In the pharmaceutical sciences, ANN has gained significant attention for designing and optimizing pharmaceutical formulations. This article reviews the use of ANN in the design and optimization of pharmaceutical formulations, specifically DDS. Since DDS is highly diverse, different factors are examined for each type of DDS. These factors are considered independent and dependent parameters for each ANN model, and various examples are provided. By utilizing ANN, it is possible to establish the relationship between the formulation factors and the resulting DDS characteristics, ultimately leading to the development of optimized DDS.

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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
302
审稿时长
2 months
期刊介绍: Current Pharmaceutical Design publishes timely in-depth reviews and research articles from leading pharmaceutical researchers in the field, covering all aspects of current research in rational drug design. Each issue is devoted to a single major therapeutic area guest edited by an acknowledged authority in the field. Each thematic issue of Current Pharmaceutical Design covers all subject areas of major importance to modern drug design including: medicinal chemistry, pharmacology, drug targets and disease mechanism.
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