Kaur Sukhpreet, Kumar Yogesh, Koul Apeksha, Kumar Kamboj Sushil
Department of Computer Science and Engineering, CGC Landran, Mohali, India.
Department of Computer Science and Engineering, School of Technology, Pandit Deendayal Energy University, Gandhinagar, Gujarat India.
Arch Comput Methods Eng. 2023;30(3):1863-1895. doi: 10.1007/s11831-022-09853-1. Epub 2022 Nov 27.
There is a need for some techniques to solve various problems in today's computing world. Metaheuristic algorithms are one of the techniques which are capable of providing practical solutions to such issues. Due to their efficiency, metaheuristic algorithms are now used in healthcare data to diagnose diseases practically and with better results than traditional methods. In this study, an efficient search has been performed where 173 papers from different research databases such as Scopus, Web of Science, PubMed, PsycINFO, and others have been considered impactful in diagnosing the diseases using metaheuristic techniques. Ten metaheuristic techniques have been studied, which include spider monkey, shuffled frog leaping algorithm, cuckoo search algorithm, ant lion technique of optimization, lion optimization technique, moth flame technique, bat-inspired algorithm, grey wolf algorithm, whale optimization, and dragonfly technique of optimization for selecting and optimizing the features to predict heart disease, Alzheimer's disease, brain disorder, diabetes, chronic disease features, liver disease, covid-19, etc. Besides, the framework has also been shown to provide information on various phases behind the execution of metaheuristic techniques to predict diseases. The study's primary goal is to present the contribution of the researchers by demonstrating their methodology to predict diseases using the metaheuristic techniques mentioned above. Later, their work has also been compared and evaluated using accuracy, precision, F1 score, error rate, sensitivity, specificity, an area under a curve, etc., to help the researchers to choose the right field and methods for predicting the diseases in the future.
在当今的计算领域,需要一些技术来解决各种问题。元启发式算法是能够为这类问题提供实际解决方案的技术之一。由于其高效性,元启发式算法现在被用于医疗保健数据中,以实际诊断疾病,并且比传统方法具有更好的效果。在本研究中,进行了一项有效的检索,其中来自Scopus、Web of Science、PubMed、PsycINFO等不同研究数据库的173篇论文被认为在使用元启发式技术诊断疾病方面具有影响力。研究了十种元启发式技术,包括蜘蛛猴算法、洗牌蛙跳算法、布谷鸟搜索算法、蚁狮优化技术、狮子优化技术、蛾火算法、蝙蝠启发算法、灰狼算法、鲸鱼优化算法和蜻蜓优化技术,用于选择和优化预测心脏病(冠心病)、阿尔茨海默病、脑部疾病、糖尿病、慢性病特征、肝病、新冠肺炎等疾病的特征。此外,该框架还展示了元启发式技术执行过程中各个阶段的信息,以预测疾病。该研究的主要目标是通过展示研究人员使用上述元启发式技术预测疾病的方法,来呈现他们的贡献。随后,还使用准确率、精确率、F1分数、错误率、灵敏度、特异性、曲线下面积等对他们的工作进行了比较和评估,以帮助研究人员在未来选择正确的领域和方法来预测疾病。