A Survey on Using Nature Inspired Computing for Fatal Disease Diagnosis

作者: Prableen Kaur , Manik Sharma

DOI: 10.4018/IJISMD.2017040105

关键词:

摘要: Genetic Algorithms (GA), Ant Colony Optimization (ACO), Particle Swarm Optimization (PSO) and Artificial Bee Colonies (ABC) are some vital nature inspired computing (NIC) techniques. These approaches have been used in early prophecy of various diseases. This article analyzes the efficacy of various NIC techniques in diagnosing diverse critical human disorders. It is observed that GA, ACO, PSO and ABC have been successfully used in early diagnosis of different diseases. As compared to ACO, PSO and ABC algorithms, GA has been extensively used in diagnosis of ecology, cardiology and endocrinologist. In addition, from the last six years of research, it has been observed that the accuracy accomplished using GA, ACO, PSO and ABC in the early diagnosis of cancer, diabetes and cardio problems lies between 73.5%-99.7%, 70%-99.2%, 80%-98% and 76.4% to 99.98% respectively. Furthermore, ACO, PSO and ABC are found to be best suited in diagnosing lung, prostate and breast cancer respectively. Moreover, the hybrid use of NIC techniques produces better results as compared to their individual use.

参考文章(61)
A. Kaveh, Ray Optimization Algorithm Springer, Cham. pp. 233- 276 ,(2014) , 10.1007/978-3-319-05549-7_8
P. Bhuvaneswari, A. Brintha Therese, Detection of Cancer in Lung with K-NN Classification Using Genetic Algorithm Procedia Materials Science. ,vol. 10, pp. 433- 440 ,(2015) , 10.1016/J.MSPRO.2015.06.077
N. Ghadiri Hedeshi, M. Saniee Abadeh, Coronary artery disease detection using a fuzzy-boosting PSO approach Computational Intelligence and Neuroscience. ,vol. 2014, pp. 783734- 783734 ,(2014) , 10.1155/2014/783734
Ravichandran C. Gopalakrishnan, Veerakumar Kuppusamy, Ant colony optimization approaches to clustering of lung nodules from CT images. Computational and Mathematical Methods in Medicine. ,vol. 2014, pp. 572494- 572494 ,(2014) , 10.1155/2014/572494
Ramin Rajabioun, Cuckoo Optimization Algorithm soft computing. ,vol. 11, pp. 5508- 5518 ,(2011) , 10.1016/J.ASOC.2011.05.008
Mostafa Fathi Ganji, Mohammad Saniee Abadeh, A fuzzy classification system based on Ant Colony Optimization for diabetes disease diagnosis Expert Systems with Applications. ,vol. 38, pp. 14650- 14659 ,(2011) , 10.1016/J.ESWA.2011.05.018
Mehdi Neshat, Ghodrat Sepidnam, Mehdi Sargolzaei, Adel Najaran Toosi, Artificial fish swarm algorithm: a survey of the state-of-the-art, hybridization, combinatorial and indicative applications Artificial Intelligence Review. ,vol. 42, pp. 965- 997 ,(2014) , 10.1007/S10462-012-9342-2
Rashmee Kohad, Vijaya Ahire, Application of Machine Learning Techniques for the Diagnosis of Lung Cancer with ANT Colony Optimization International Journal of Computer Applications. ,vol. 113, pp. 34- 41 ,(2015) , 10.5120/19928-2069
P.M.G. Apers, A.R. Hevner, S.B. Yao, Optimization Algorithms for Distributed Queries IEEE Transactions on Software Engineering. ,vol. 9, pp. 57- 68 ,(1983) , 10.1109/TSE.1983.236170