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Intelligent Healthcare Platform: Cardiovascular Disease Risk Factors Prediction Using Attention Module Based LSTM

机译:智能医疗保健平台:使用注意模块的LSTM预测心血管疾病风险因素预测

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Cardio-Vascular Disease (CVD) is one of the leading cause of death all over the world with expecting approximately 23.6 million individuals to be attacked by the CVD by 2030. Thus, the healthcare industry is trying to gather a large amount of CVD information, which can help the doctors to detect and identify the potential risk factors of the CVD. Deep learning can dig out the hidden pattern of the disease and symptoms from this structured and unstructured medical information. As a result, in this paper, we propose an algorithm to predict the risk factors of the CVD using the attention module based Long Short- Term Memory (LSTM), which has almost 95% accuracy and 0.90 Matthews Correlation Coefficient (MCC) scores; better than any other previously proposed methods. Moreover, we propose a novel Intelligent Healthcare Platform for continuous data collection and patient monitoring system. Initially, the proposed platform is used for data collection, and we find out the best suitable features from the dataset for applying various machine learning algorithms. The experimental results show that the attention module based LSTM outperforms than the other statistical machine learning algorithms for the prediction as well as indicates significant risk factors of the CVD, which can be supportive for the CVD patients to change their lifestyle.
机译:心血管疾病(CVD)是世界各地的死亡原因之一,预计将在2030年被CVD攻击约2360万个人。因此,医疗保健行业正在努力收集大量CVD信息,这可以帮助医生检测和识别CVD的潜在风险因素。深度学习可以从这种结构化和非结构化的医疗信息中挖掘疾病和症状的隐藏模式。结果,在本文中,我们提出了一种算法来预测CVD的使用基于长短短期存储器(LSTM)的CVD的危险因素,其具有近95%的精度和0.90 Matthews相关系数(MCC)分数;比任何其他先前提出的方法都好。此外,我们提出了一种用于连续数据收集和患者监测系统的新型智能医疗保健平台。最初,所提出的平台用于数据收集,我们可以找到数据集中的最佳合适功能,以应用各种机器学习算法。实验结果表明,关注模块的LSTM优于预测的其他统计机器学习算法,也表明了CVD的显着风险因素,可以支持CVD患者改变其生活方式。

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