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Risk Assessment for Patient and Fetal Based on Threshold Limit Using Feature Extraction and Neural Networks

机译:基于使用特征提取和神经网络的阈值限制的患者和胎儿风险评估

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Recently, cloud-based technology has been used to meet data needs, socialize, collaborate, and handle formal and informal processes. The knowledge-based machine learning version comfort people in everyday life. This includes blood glucose monitors, pulse oximeters, activity trackers, blood pressure, scales for body examination and sleep. The user-mined data is stored in a cloud-based programme, and then the data is used with smart algorithms to train the machine learning techniques. In this paper, the proposed technique evaluates the risk prediction attributes based on the specific patient and the cross-validation model while selecting and extracting the features using RNN and CNN. These features have been classified using Faster Deep Neural Networks with Genetic Decision algorithms (FDNN-GD). The classified data has been determined based on the threshold limit. Then the data has been stored in cloud architecture with encryption and decryption keys for security. Finally, when they have a higher threshold value, the foetus and patient will be tracked, which gives the doctor warning. Otherwise, it provides monitored data.
机译:最近,基于云的技术已被用于满足数据需求,社交,协作和处理正式和非正式流程。基于知识的机器学习版本在日常生活中舒适。这包括血糖监测器,脉搏血管计,活动跟踪器,血压,身体检查和睡眠的尺度。用户挖掘数据存储在基于云的程序中,然后数据与智能算法一起使用以培训机器学习技术。在本文中,所提出的技术基于特定患者和交叉验证模型评估风险预测属性,同时使用RNN和CNN选择和提取特征。这些功能已经使用更快的深神经网络进行分类,具有遗传决策算法(FDNN-GD)。已经基于阈值限制确定了分类数据。然后数据已存储在云体系结构中,具有加密和解密键进行安全性。最后,当它们具有更高的阈值时,将跟踪胎儿和患者,这使得医生警告。否则,它提供受监控数据。

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