1. Machine learning in radiation oncology: opportunities, requirements, and needs;Feng;Front. Oncol.,2018
2. S.B. Kotsiantis, Supervised machine learning: a review of classification techniques. In Proceedings of the 2007 conference on emerging artificial intelligence applications in computer engineering: real word AI systems with applications in eHealth, HCI, information retrieval and pervasive technologies, (2007), IOS Press, NLD, pp. 3–24.
3. M.W. Sholom, K. Ioannis, An empirical comparison of pattern recognition, neural nets, and machine learning classification methods. In Proceedings of the 11th international joint conference on artificial intelligence - Volume 1 (IJCAI’89), (1989) Morgan Kaufmann Publishers Inc., San Francisco, CA, pp. 781–787.
4. Heart disease detection by using machine learning algorithms and a real-time cardiovascular health monitoring system;Nashif;World J. Eng. Technol.,2018
5. T. Howley, M.G. Madden, M.L. O Connell, A.G. Ryder, The effect of principal component analysis on machine learning accuracy with high dimensional spectral data. In Proceedings of the international conference on innovative techniques and applications of artificial intelligence, (2005), Springer, London, pp. 209–222.