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Application of Improved Three-Dimensional Kernel Approach to Prediction of Protein Structural Class

机译:改进的三维核方法在蛋白质结构分类预测中的应用

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摘要

Kernel methods, such as kernel PCA, kernel PLS, and support vector machines, are widely known machine learning techniques in biology, medicine, chemistry, and material science. Based on nonlinear mapping and Coulomb function, two 3D kernel approaches were improved and applied to predictions of the four protein tertiary structural classes of domains (all-α, all-β, α/β, and α + β) and five membrane protein types with satisfactory results. In a benchmark test, the performances of improved 3D kernel approach were compared with those of neural networks, support vector machines, and ensemble algorithm. Demonstration through leave-one-out cross-validation on working datasets constructed by investigators indicated that new kernel approaches outperformed other predictors. It has not escaped our notice that 3D kernel approaches may hold a high potential for improving the quality in predicting the other protein features as well. Or at the very least, it will play a complementary role to many of the existing algorithms in this regard.
机译:内核方法,例如内核PCA,内核PLS和支持向量机,是生物学,医学,化学和材料科学领域众所周知的机器学习技术。基于非线性映射和库仑函数,改进了两种3D核方法,并将其应用于四种结构域的蛋白质三级结构类别(全α,全β,α/β和α+β)和五种膜蛋白类型的预测结果令人满意。在基准测试中,将改进的3D内核方法的性能与神经网络,支持向量机和集成算法的性能进行了比较。通过对研究人员构建的工作数据集进行留一法交叉验证的论证表明,新的内核方法优于其他预测方法。未能逃脱我们的注意,即3D内核方法在预测其他蛋白质特征方面也可能具有提高质量的巨大潜力。或者至少,它将在这方面对许多现有算法起到补充作用。

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