Cai C Z, Wang W L, Sun L Z, Chen Y Z
Department of Applied Physics, Chongqing University, Chongqing 400044, People's Republic of China.
Math Biosci. 2003 Oct;185(2):111-22. doi: 10.1016/s0025-5564(03)00096-8.
Support vector machine (SVM) is introduced as a method for the classification of proteins into functionally distinguished classes. Studies are conducted on a number of protein classes including RNA-binding proteins; protein homodimers, proteins responsible for drug absorption, proteins involved in drug distribution and excretion, and drug metabolizing enzymes. Testing accuracy for the classification of these protein classes is found to be in the range of 84-96%. This suggests the usefulness of SVM in the classification of protein functional classes and its potential application in protein function prediction.
支持向量机(SVM)作为一种将蛋白质分类为功能不同类别的方法被引入。对多种蛋白质类别进行了研究,包括RNA结合蛋白、蛋白质同二聚体、负责药物吸收的蛋白质、参与药物分布和排泄的蛋白质以及药物代谢酶。这些蛋白质类别的分类测试准确率在84%-96%之间。这表明支持向量机在蛋白质功能类别的分类中有用,并且在蛋白质功能预测方面具有潜在应用。