首页> 外文会议>Engineering in Medicine and Biology Society, 2004. IEMBS '04. 26th Annual International Conference of the IEEE >Potential function of simplified protein models for discriminating native proteins from decoys: combining contact interaction and local sequence-dependent geometry
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Potential function of simplified protein models for discriminating native proteins from decoys: combining contact interaction and local sequence-dependent geometry

机译:简化蛋白质模型从诱饵中区分天然蛋白质的潜在功能:结合接触相互作用和局部序列依赖性几何

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摘要

An effective potential function is critical for protein structure prediction and folding simulation. For simplified models of proteins where coordinates of only Ca atoms need to be specified, an accurate potential function is important. Such a simplified model is essential for efficient search of conformational space. In this work, we present a formulation of potential function for simplified representations of protein structures. It is based on the combination of descriptors derived from residue-residue contact and sequence-dependent local geometry. The optimal weight coefficients for contact and local geometry is obtained through optimization by maximizing margins among native and decoy structures. The latter are generated by chain growth and by gapless threading. The performance of the potential function in blind test of discriminating native protein structures from decoys is evaluated using several benchmark decoy sets. This potential function have comparable or better performance than several residue-based potential functions that require in addition coordinates of side chain centers or coordinates of all side chain atoms.
机译:有效的潜在功能对于蛋白质结构预测和折叠模拟至关重要。对于仅需要指定Ca原子坐标的简化蛋白质模型,重要的是精确的势函数。这样的简化模型对于有效搜索构象空间是必不可少的。在这项工作中,我们为蛋白质结构的简化表示提供了潜在功能的表述。它基于从残基-残基接触和依赖序列的局部几何结构导出的描述符的组合。通过最大化本机结构和诱饵结构之间的边距,可以通过优化获得接触和局部几何形状的最佳权重系数。后者是由链增长和无间隙线程生成的。使用几个基准诱饵组评估在对诱饵中的天然蛋白质结构进行区分的盲法测试中潜在功能的性能。该势能函数与几个基于残基的势能函数具有可比或更好的性能,这些潜在的基于残基的势能函数还需要侧链中心坐标或所有侧链原子的坐标。

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