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Applied Difference Techniques of Machine Learning Algorithm and Web-Based Management System for Sickle Cell Disease

机译:用于机器学习算法和基于Web的镰状细胞疾病管理系统的应用差异技术

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Machine learning algorithm and web-based application systems have played a major role in improving the healthcare organisation in terms of continuous tele-monitoring therapy and maintaining telemedicine management systems. Currently, no intelligent system has been used in terms of managing sickle cell disease. However, this paper presents a system that facilitates a shift from manual methods to automated approach that can offer fast data collection with a reduced error rate. The system will be able to examine patient data and provide a suitable amount of Hydroxycarbamide drugs/liquid for each patient. By using a web-based system, we tend to improve patient welfare and mitigate patient illness before it gets worse over time, particularly with elderly people. The system will forward any critical concerns from the patient, it generates an automatic message to the medical doctors based on web-based platform in order to assist them with optimal decision-making. The initial case study that has been addressed in this project is how to make predictions for sickle cell disease for the amount of dose based on different architectures of machine learning in order to obtain high accuracy and performance. The most significant key for making predictions of the amount of medication is to enable healthcare organisation to provide accurate therapy recommendations based on previous data. The results using ANN showed that the proposed network produces significant improvements using the different evaluation methods. In our experiments, The MLP algorithm produced the best result in terms of the lowest error rates compare with other techniques. The Mean Square Error, Root Mean Square Error, Mean Absolute Error, and Mean Absolute Percentage Error achieved 17887.55, 133.74, 90.20 and 0.1345, respectively.
机译:机器学习算法和基于Web的应用系统在改善医疗组织方面在连续的远程监测治疗和维护远程医疗管理系统方面发挥了重要作用。目前,在管理镰状细胞疾病方面没有使用智能系统。但是,本文介绍了一个系统,便于从手动方法转移到可自动化方法,可以提供减少错误率的快速数据收集。该系统将能够检查患者数据并为每位患者提供合适的羟基氨基甲酰胺药物/液体。通过使用基于Web的系统,我们倾向于改善患者福利和减轻患者疾病,然后随着时间的推移变得更糟,特别是老年人。该系统将从患者转发任何关键问题,它基于基于Web的平台为医学医生生成自动消息,以帮助他们获得最佳决策。本项目中已解决的初始案例研究是如何为基于机器学习的不同架构进行剂量的剂量的预测,以获得高精度和性能。制定药物量预测的最重要关键是使医疗组织能够根据以前的数据提供准确的治疗建议。使用ANN的结果表明,所提出的网络使用不同的评估方法产生显着的改进。在我们的实验中,MLP算法在与其他技术相比的最低误差率方面产生了最佳结果。均方误差,根均方误差,平均误差,平均百分比误差分别实现17887.55,133.74,90.20和0.1345。

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