Rustam Furqan, Reshi Aijaz Ahmad, Aljedaani Wajdi, Alhossan Abdulaziz, Ishaq Abid, Shafi Shabana, Lee Ernesto, Alrabiah Ziyad, Alsuwailem Hessa, Ahmad Ajaz, Rupapara Vaibhav
Department of Computer Science, Khwaja Fareed University of Engineering and Information Technology, Rahim Yar Khan 64200, Pakistan.
Department of Computer Science, College of Computer Science and Engineering, Taibah University, Al Madinah Al Munawarah, Saudi Arabia.
Saudi J Biol Sci. 2022 Jan;29(1):583-594. doi: 10.1016/j.sjbs.2021.09.021. Epub 2021 Sep 20.
Every year about one million people die due to diseases transmitted by mosquitoes. The infection is transmitted to a person when an infected mosquito stings, injecting the saliva into the human body. The best possible way to prevent a mosquito-borne infection till date is to save the humans from exposure to mosquito bites. This study proposes a Machine Learning (ML) and Deep Learning based system to detect the presence of two critical disease spreading classes of mosquitoes such as the Aedes and Culex. The proposed system will effectively aid in epidemiology to design evidence-based policies and decisions by analyzing the risks and transmission. The study proposes an effective methodology for the classification of mosquitoes using ML and CNN models. The novel RIFS has been introduced which integrates two types of feature selection techniques - the ROI-based image filtering and the wrappers-based FFS technique. Comparative analysis of various ML and deep learning models has been performed to determine the most appropriate model applicable based on their performance metrics as well as computational needs. Results prove that ETC outperformed among the all applied ML model by providing 0.992 accuracy while VVG16 has outperformed other CNN models by giving 0.986 of accuracy.
每年约有100万人死于由蚊子传播的疾病。当受感染的蚊子叮咬并将唾液注入人体时,感染就会传播给人。迄今为止,预防蚊媒感染的最佳方法是让人类避免被蚊子叮咬。本研究提出了一种基于机器学习(ML)和深度学习的系统,用于检测两种传播疾病的关键蚊子种类,如伊蚊和库蚊。所提出的系统将通过分析风险和传播情况,有效地协助流行病学制定基于证据的政策和决策。该研究提出了一种使用ML和CNN模型对蚊子进行分类的有效方法。引入了新颖的RIFS,它集成了两种特征选择技术——基于ROI的图像滤波和基于包装器的FFS技术。对各种ML和深度学习模型进行了比较分析,以根据其性能指标和计算需求确定最合适的适用模型。结果证明,在所有应用的ML模型中,ETC的准确率为0.992,表现最佳;而VVG16的准确率为0.986,优于其他CNN模型。