利用机器学习能力预测生物医学应用中的双磷酸结构

IF 0.5 Q4 PHYSICS, CONDENSED MATTER
E. R. Kolomenskaya, V. V. Butova, Yu. V. Rusalev, B. O. Protsenko, A. V. Soldatov, M. A. Butakova
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引用次数: 0

摘要

摘要 在快速发展的生物医学研究领域,寻找具有更佳性能的新材料对于推动整个领域的发展至关重要。双磷酸盐在从药物输送系统到生物医学反应催化剂等广泛的应用领域引起了极大的兴趣,生物医学和组织工程领域也不例外。在本文中,我们提出了一种寻找新型双磷酸材料的方法,这种方法基于机器学习、筛选和应用结构数据库中的数据,并利用这种方法结合化学知识提出了几种有前途的骨组织工程材料。对于选定的候选材料,我们开发了固相合成程序,并应用其物理特性来确认结果。此外,我们还从生物医学的角度讨论了形态学的作用,即基于这些材料的框架的孔隙率,并提出和研究了几种调整该参数的合成方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using of Machine Learning Capabilities to Predict Double Phosphate Structures for Biomedical Applications

Using of Machine Learning Capabilities to Predict Double Phosphate Structures for Biomedical Applications

Using of Machine Learning Capabilities to Predict Double Phosphate Structures for Biomedical Applications

In the rapidly developing field of biomedical research, the search for new materials with improved properties is crucial to moving the entire field forward. Double phosphates have generated significant interest in a wide range of applications, ranging from drug delivery systems to catalysts for biomedical reactions, and the fields of biomedicine and tissue engineering are no exception. In this article, we propose a method for finding new double phosphate materials, which is based on machine learning, screening, and applying data from structural databases, and use this methodology combined with chemical knowledge to propose several promising materials for bone tissue engineering. For the selected candidates, we develop a solid-phase synthesis procedure and apply their physical characteristics to confirm the results. In addition, the role of morphology, that is, the porosity of frameworks based on these materials, is discussed from a biomedical point of view, and several synthetic ways to adjust this parameter are proposed and investigated.

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来源期刊
CiteScore
0.90
自引率
25.00%
发文量
144
审稿时长
3-8 weeks
期刊介绍: Journal of Surface Investigation: X-ray, Synchrotron and Neutron Techniques publishes original articles on the topical problems of solid-state physics, materials science, experimental techniques, condensed media, nanostructures, surfaces of thin films, and phase boundaries: geometric and energetical structures of surfaces, the methods of computer simulations; physical and chemical properties and their changes upon radiation and other treatments; the methods of studies of films and surface layers of crystals (XRD, XPS, synchrotron radiation, neutron and electron diffraction, electron microscopic, scanning tunneling microscopic, atomic force microscopic studies, and other methods that provide data on the surfaces and thin films). Articles related to the methods and technics of structure studies are the focus of the journal. The journal accepts manuscripts of regular articles and reviews in English or Russian language from authors of all countries. All manuscripts are peer-reviewed.
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