软骨
算法
计算机科学
聚合物
多项式logistic回归
材料科学
选择(遗传算法)
脚手架
机器学习
人工智能
生物医学工程
复合材料
工程类
生物
数据库
解剖
作者
Anusha Mairpady,Abdel‐Hamid I. Mourad,Mohammad Sayem Mozumder
出处
期刊:Polymers
[Multidisciplinary Digital Publishing Institute]
日期:2022-04-28
卷期号:14 (9): 1802-1802
被引量:13
标识
DOI:10.3390/polym14091802
摘要
In designing successful cartilage substitutes, the selection of scaffold materials plays a central role, among several other important factors. In an empirical approach, the selection of the most appropriate polymer(s) for cartilage repair is an expensive and time-consuming affair, as traditionally it requires numerous trials. Moreover, it is humanly impossible to go through the huge library of literature available on the potential polymer(s) and to correlate the physical, mechanical, and biological properties that might be suitable for cartilage tissue engineering. Hence, the objective of this study is to implement an inverse design approach to predict the best polymer(s)/blend(s) for cartilage repair by using a machine-learning algorithm (i.e., multinomial logistic regression (MNLR)). Initially, a systematic bibliometric analysis on cartilage repair has been performed by using the bibliometrix package in the R program. Then, the database was created by extracting the mechanical properties of the most frequently used polymers/blends from the PoLyInfo library by using data-mining tools. Then, an MNLR algorithm was run by using the mechanical properties of the polymers, which are similar to the cartilages, as the input and the polymer(s)/blends as the predicted output. The MNLR algorithm used in this study predicts polyethylene/polyethylene-graftpoly(maleic anhydride) blend as the best candidate for cartilage repair.
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