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Computational Modeling of Protein Stability: Quantitative Analysis Reveals Solutions to Pervasive Problems

机译:蛋白质稳定性的计算建模:定量分析揭示了普及问题的解决方案

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摘要

Accurate modeling of the effects of mutations on protein stability is central to understanding and controlling proteins in myriad natural and applied contexts. Here, we reveal through rigorous quantitative analysis that stability prediction tools often favor mutations that increase stability at the expense of solubility. Moreover, while these tools may accurately identify strongly destabilizing mutations, the experimental effect of mutations predicted to stabilize is actually near neutral on average. The commonly used "classification accuracy" metric obscures this reality; accordingly, we recommend performance measures, such as the Matthews correlation coefficient (MCC). We demonstrate that an absurdly simple machine-learning algorithm-a neural network of just two neurons-unexpectedly achieves high classification accuracy, but its inadequacies are revealed by a low MCC. Despite the above limitations, making multiple mutations markedly improves the prospects for achieving a stabilization target, and modest improvements in the precision of future tools may yield disproportionate gains.
机译:精确建模突变对蛋白质稳定性的影响是理解和控制无数天然和应用的蛋白质的核心。在这里,我们通过严格的定量分析揭示了稳定预测工具通常有利于增加稳定性稳定性的突变。此外,虽然这些工具可以准确地识别强烈稳定的突变,但预测稳定的突变的实验效果实际上是平均中性的。常用的“分类准确性”度量掩盖了这一现实;因此,我们建议绩效措施,例如马修斯相关系数(MCC)。我们证明,荒谬简单的机器学习算法 - 仅仅两个神经元的神经网络 - 意外地实现了高分类准确性,但其不足以揭示了低MCC。尽管有上述限制,使多种突变显着提高实现稳定目标的前景,并且未来工具精度的适度改进可能会产生不成比例的收益。

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