Effective Prostate Cancer Detection using Enhanced Particle Swarm Optimization Algorithm with Random Forest on the Microarray Data

IF 0.8 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Sanjeev Prakashrao Kaulgud, Vishwanath R. Hulipalled, Siddanagouda Somanagouda Patil, Prabhuraj Metipatil
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Abstract

Prostate Cancer (PC) is the leading cause of mortality among males, therefore an effective system is required for identifying the sensitive bio-markers for early recognition. The objective of the research is to find the potential bio-markers for characterizing the dissimilar types of PC. In this article, the PC-related genes are acquired from the Gene Expression Omnibus (GEO) database. Then, gene selection is accomplished using enhanced Particle Swarm Optimization (PSO) to select the active genes, which are related to the PC. In the enhanced PSO algorithm, the interval-newton approach is included to keep the search space adaptive by varying the swarm diversity that helps to perform the local search significantly. The selected active genes are fed to the random forest classifier for the classification of PC (high and low-risk). As seen in the experimental investigation, the proposed model achieved an overall classification accuracy of 96.71%, which is better compared to the traditional models like naïve Bayes, support vector machine and neural network.
基于随机森林的增强粒子群算法在微阵列数据上有效检测前列腺癌
前列腺癌症(PC)是男性死亡的主要原因,因此需要一个有效的系统来识别敏感的生物标志物以进行早期识别。本研究的目的是寻找表征不同类型PC的潜在生物标记。在本文中,PC相关基因是从基因表达综合数据库(GEO)中获得的。然后,使用增强粒子群优化算法(PSO)来选择与PC相关的活跃基因,从而实现基因选择。在增强粒子群算法中,通过改变群体多样性来保持搜索空间的自适应性,这有助于显著地执行局部搜索。选择的活性基因被馈送到随机森林分类器,用于PC(高风险和低风险)的分类。从实验研究中可以看出,与朴素贝叶斯、支持向量机和神经网络等传统模型相比,该模型的总体分类准确率为96.71%。
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来源期刊
CiteScore
1.20
自引率
11.80%
发文量
69
期刊介绍: The International Journal of Electrical and Computer Engineering Systems publishes original research in the form of full papers, case studies, reviews and surveys. It covers theory and application of electrical and computer engineering, synergy of computer systems and computational methods with electrical and electronic systems, as well as interdisciplinary research. Power systems Renewable electricity production Power electronics Electrical drives Industrial electronics Communication systems Advanced modulation techniques RFID devices and systems Signal and data processing Image processing Multimedia systems Microelectronics Instrumentation and measurement Control systems Robotics Modeling and simulation Modern computer architectures Computer networks Embedded systems High-performance computing Engineering education Parallel and distributed computer systems Human-computer systems Intelligent systems Multi-agent and holonic systems Real-time systems Software engineering Internet and web applications and systems Applications of computer systems in engineering and related disciplines Mathematical models of engineering systems Engineering management.
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