Tayebi Leila, Rahimi Rahmatollah, Akbarzadeh Ali Reza, Maleki Ali
Department of Chemistry, Iran University of Science and Technology P. O. Box: 16846-13114 Tehran Islamic Republic of Iran
RSC Adv. 2023 Aug 17;13(35):24617-24627. doi: 10.1039/d3ra00070b. eCollection 2023 Aug 11.
During the drug release process, the drug is transferred from the starting point in the drug delivery system to the surface, and then to the release medium. Metal-organic frameworks (MOFs) potentially have unique features to be utilized as promising carriers for drug delivery, due to their suitable pore size, high surface area, and structural flexibility. The loading and release of various therapeutic drugs through the MOFs are effectively accomplished due to their tunable inorganic clusters and organic ligands. Since the drug release rate percentage (RES%) is a significant concern, a quantitative structure-property relationship (QSPR) method was applied to achieve an accurate model predicting the drug release rate from MOFs. Structure-based descriptors, including the number of nitrogen and oxygen atoms, along with two other adjusted descriptors, were applied for obtaining the best multilinear regression (BMLR) model. Drug release rates from 67 MOFs were applied to provide a precise model. The coefficients of determination () for the training and test sets obtained were both 0.9999. The root mean square error for prediction (RMSEP) of the RES% values for the training and test sets were 0.006 and 0.005, respectively. To examine the precision of the model, external validation was performed through a set of new observations, which demonstrated that the model works to a satisfactory degree.
在药物释放过程中,药物从给药系统的起始点转移到表面,然后再转移到释放介质中。金属有机框架(MOFs)因其合适的孔径、高比表面积和结构灵活性,具有作为有前景的药物递送载体的独特潜力。由于其可调节的无机簇和有机配体,各种治疗药物通过MOFs的负载和释放得以有效实现。鉴于药物释放率百分比(RES%)是一个重要关注点,应用了定量构效关系(QSPR)方法来建立一个准确预测MOFs药物释放率的模型。基于结构的描述符,包括氮原子和氧原子的数量,以及另外两个调整后的描述符,被用于获得最佳多元线性回归(BMLR)模型。应用67种MOFs的药物释放率来提供一个精确的模型。所获得的训练集和测试集的决定系数()均为0.9999。训练集和测试集RES%值预测的均方根误差(RMSEP)分别为0.006和0.005。为检验模型的精度,通过一组新的观察进行了外部验证,结果表明该模型的效果令人满意。