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Web-Enabled Distributed Health-Care Framework for Automated Malaria Parasite Classification: an E-Health Approach

机译:支持网络的自动化疟疾寄生虫分类框架:一种电子健康方法

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Web-enabled e-healthcare system or computer assisted disease diagnosis has a potential to improve the quality and service of conventional healthcare delivery approach. The article describes the design and development of a web-based distributed healthcare management system for medical information and quantitative evaluation of microscopic images using machine learning approach for malaria. In the proposed study, all the health-care centres are connected in a distributed computer network. Each peripheral centre manages its' own health-care service independently and communicates with the central server for remote assistance. The proposed methodology for automated evaluation of parasites includes pre-processing of blood smear microscopic images followed by erythrocytes segmentation. To differentiate between different parasites; a total of 138 quantitative features characterising colour, morphology, and texture are extracted from segmented erythrocytes. An integrated pattern classification framework is designed where four feature selection methods viz. Correlation-based Feature Selection (CFS), Chi-square, Information Gain, and RELIEF are employed with three different classifiers i.e. Naive Bayes', C4.5, and Instance-Based Learning (IB1) individually. Optimal features subset with the best classifier is selected for achieving maximum diagnostic precision. It is seen that the proposed method achieved with 99.2% sensitivity and 99.6% specificity by combining CFS and C4.5 in comparison with other methods. Moreover, the web-based tool is entirely designed using open standards like Java for a web application, ImageJ for image processing, and WEKA for data mining considering its feasibility in rural places with minimal health care facilities.
机译:支持网络的电子医疗保健系统或计算机辅助疾病诊断有可能提高传统医疗保健送货方式的质量和服务。本文介绍了使用机器学习方法对疟疾的基于网络的分布式医疗保健管理系统的设计和开发。在拟议的研究中,所有医疗中心都在分布式计算机网络中连接。每个外围中心独立管理其自己的保健服务,并与中央服务器进行遥控服务。寄生虫的自动评价所提出的方法包括血液涂片微观图像的预处理,然后是红细胞分段。区分不同的寄生虫;从分段的红细胞中提取了表征颜色,形态和质地的138个定量特征。集成模式分类框架是设计了四个特征选择方法viz的。基于相关的特征选择(CFS),Chi-Square,信息增益和浮雕与三种不同的分类器I.Ive贝叶斯,C4.5和基于实例的学习(IB1)一起使用。选择具有最佳分类器的最佳功能子集以实现最大诊断精度。可以看出,通过与其他方法相比,通过组合CFS和C4.5来实现99.2%的灵敏度和99.6%的特异性。此外,基于Web的工具完全使用Java等开放标准设计,用于Web应用程序,imagej用于图像处理,以及用于数据挖掘的Weka,考虑到其在农村地区的可行性,保健设施最小。

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