Odeh Suhail M, Baareh Abdel Karim Mohamed
Computer and Information System Department, Bethlehem University, Bethlehem, Palestine.
Computers Science Department, Al-Balqa Applied University, Ajloun College, Jordan.
Comput Methods Programs Biomed. 2016 Dec;137:311-319. doi: 10.1016/j.cmpb.2016.09.012. Epub 2016 Sep 23.
Numerous classification methods are currently available, but most of them were performed on different datasets. In this paper, different classification techniques were used for a diagnostic system on different skin lesions for the same data, which gives consistency for the data to have more accurate and better results.
Four classification methods were proposed, a classical method based on K-Nearest Neighbor with Sequential Scanning selection technique for feature selection, a classical method with complex technique KNN with Genetic Algorithm, a complex method based on Artificial Neural Networks with Genetic Algorithm and an Adaptive Neuro-Fuzzy Inference System.
From the results obtained we can say that the performance of KNN with optimization of genetic algorithm for the feature selection was the best with an accuracy rate of 94%. The Adaptive Neuro-Fuzzy Inference System result was also good with an accuracy rate of 92%, and the other techniques' results were also satisfactory.
The improvement on the performance of the classifier depends on the feature selection methods. In addition, the diagnosis system as a decision support tool could be used to increase the performance of human experts to make a correct decision.
目前有众多分类方法,但其中大多数是在不同数据集上进行的。在本文中,针对同一数据的不同皮肤病变诊断系统使用了不同的分类技术,这使得数据具有一致性,从而能获得更准确、更好的结果。
提出了四种分类方法,一种基于带有顺序扫描选择技术的K近邻算法的经典方法用于特征选择,一种带有遗传算法的复杂技术KNN的经典方法,一种基于带有遗传算法的人工神经网络的复杂方法以及一种自适应神经模糊推理系统。
从获得的结果可以看出,采用遗传算法优化特征选择的KNN性能最佳,准确率为94%。自适应神经模糊推理系统的结果也不错,准确率为92%,其他技术的结果也令人满意。
分类器性能的提升取决于特征选择方法。此外,作为决策支持工具的诊断系统可用于提高人类专家做出正确决策的能力。