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SYSTEMS AND METHODS FOR DRUG DESIGN AND DISCOVERY COMPRISING APPLICATIONS OF MACHINE LEARNING WITH DIFFERENTIAL GEOMETRIC MODELING

机译:微分几何建模的机器学习中药物设计和发现应用的系统和方法

摘要

Characteristics of molecules and/or biomolecular complexes may be predicted using differential geometry based methods in combination with trained machine learning models. Element specific and element interactive manifolds may be constructed using element interactive number density and/or element interactive charge density to represent the atoms or the charges in selected element sets. Feature data may include element interactive curvatures of various types derived from element specific and element interactive manifolds at various scales.. Element interactive curvatures computed from various element interactive manifolds may be input to trained machine learning models, which may be derived from corresponding machine learning algorithms. These machine learning models may be trained to predict characteristics such as protein-protein or protein-ligand/ protein/nucleic acid binding affinity, toxicity endpoints, free energy changes upon mutation, protein flexibility/rigidity/allosterism, membrane/globular protein mutation impacts, plasma protein binding, partition coefficient, permeability, clearance, and/or aqueous solubility, among others.
机译:分子和/或生物分子复合物的特征可以使用基于微分几何学的方法结合训练有素的机器学习模型来预测。可以使用元素相互作用数密度和/或元素相互作用电荷密度来构造元素特定和元素相互作用流形,以表示所选元素集中的原子或电荷。特征数据可以包括从元素特定和不同尺度的元素交互流形派生的各种类型的元素交互曲率。从各种元素交互流形计算出的元素交互曲率可以输入到训练后的机器学习模型,该模型可以从相应的机器学习算法派生。可以训练这些机器学习模型来预测诸如蛋白质-蛋白质或蛋白质-配体/蛋白质/核酸结合亲和力,毒性终点,突变后自由能变化,蛋白质柔韧性/刚性/变构性,膜/球状蛋白质突变影响,血浆蛋白结合,分配系数,渗透性,清除率和/或水溶性等。

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