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Using Non-linear Regression to Predict Bioresponse in a Combinatorial Library of Biodegradable Polymers

机译:使用非线性回归来预测生物降解聚合物组合库中的BiORESCONSE

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We have developed an empirical method to model bioresponse to the surfaces of biodegradable polymers in a combinatorial library using Artificial Neural Networks (ANN) in conjunction with molecular modeling and machine learning methodology. We validated the procedure by modeling human fibrinogen adsorption to 22 structurally distinct polymers. Subsequently, the method was used to model the more complicated phenomena of rat lung fibrobiast and normal human fetal foreskin fibrobiast proliferation in the presence of 24 and 44 different polymers, respectively. In each case, the root mean square (rrns) percent error of the prediction was substantially less than the experimental variation, showing that the models can distinguish high and low performing polymers based on structure/property information. Using this method to screen candidate materials in terms of specific bioresponse prior to extensive experimental testing will greatly facilitate materials development for biomedical applications.
机译:我们开发了一种经验方法,用于使用人工神经网络(ANN)与分子建模和机器学习方法结合使用人工神经网络在组合库中的生物降解聚合物表面的模拟方法。我们通过将人纤维蛋白原吸附到22种结构上不同的聚合物来验证了该方法。随后,该方法用于分别在24和44种不同的聚合物存在下模拟大鼠肺纤维虫和正常人胎儿包皮纤维虫纤维虫纤维虫增殖的更加复杂的现象。在每种情况下,预测的根均方(RRN)百分比误差基本上小于实验变化,表明模型可以基于结构/财产信息区分高和低性能的聚合物。在广泛的实验测试之前,在特定的BiORESPONSE方面使用该方法将极大地促进生物医学应用的材料开发。

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