Sina Matalqah, Zainab Lafi, Qasim Mhaidat, Nisreen Asha, Sara Yousef Asha
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引用次数: 0
Abstract
Machine learning (ML) has emerged as a transformative tool in drug delivery, particularly in the design and optimization of liposomal formulations. This review focuses on the intersection of ML and liposomal technology, highlighting how advanced algorithms are accelerating formulation processes, predicting key parameters, and enabling personalized therapies. ML-driven approaches are restructuring formulation development by optimizing liposome size, stability, and encapsulation efficiency while refining drug release profiles. Additionally, the integration of ML enhances therapeutic outcomes by enabling precision-targeted delivery and minimizing side effects. This review presents current breakthroughs, challenges, and future opportunities in applying ML to liposomal systems, aiming to improve therapeutic efficacy and patient outcomes in various disease treatments.
期刊介绍:
Pharmaceutical Development & Technology publishes research on the design, development, manufacture, and evaluation of conventional and novel drug delivery systems, emphasizing practical solutions and applications to theoretical and research-based problems. The journal aims to publish significant, innovative and original research to advance the frontiers of pharmaceutical development and technology.
Through original articles, reviews (where prior discussion with the EIC is encouraged), short reports, book reviews and technical notes, Pharmaceutical Development & Technology covers aspects such as:
-Preformulation and pharmaceutical formulation studies
-Pharmaceutical materials selection and characterization
-Pharmaceutical process development, engineering, scale-up and industrialisation, and process validation
-QbD in the form a risk assessment and DoE driven approaches
-Design of dosage forms and drug delivery systems
-Emerging pharmaceutical formulation and drug delivery technologies with a focus on personalised therapies
-Drug delivery systems research and quality improvement
-Pharmaceutical regulatory affairs
This journal will not consider for publication manuscripts focusing purely on clinical evaluations, botanicals, or animal models.