移动AI中风健康App:一种基于深度学习模型的新型移动智能边缘计算引擎,用于中风预测-研究与行业展望

B. Elbagoury, Marwa Zaghow, A. Salem, T. Schrader
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引用次数: 1

摘要

远程医疗系统中用于移动医疗(mHealth)的人工智能(AI)技术为医疗保健系统开辟了新的机会。将人工智能技术与现有的医疗物联网(IoMT)相结合,将提高患者在远程家中接受的护理质量,或成功建立智能生活环境,同时仍然可以获得可用的资源,以应对任何医疗诊断危机。移动医疗是远程医疗中一个稳步发展的领域。然而,由于接收物联网医疗传感器数据、数据分析和深度学习算法编程的复杂性,特别是当我们处理可穿戴技术的实时环境时,为移动边缘计算构建真正的人工智能是一个具有挑战性的问题。在本文中,我们介绍了一种新的实时人工智能和IoMT引擎,用于移动医疗边缘计算技术。它的主要目标是将中风疾病作为一种紧急情况来预测,它可能会导致虚弱,麻木,视力问题,思维混乱,行走,移动或说话困难等问题。它也可能导致猝死。然而,目前的移动医疗研究仍然缺乏一种针对患者急诊病例的脑卒中预测和诊断的智能远程诊断引擎,本研究提出了一种用于脑卒中预测和诊断的混合智能远程诊断技术。混合技术是稀疏自编码器、深度学习(DL)技术和群处理方法(GMDH)神经网络。这两种技术都依赖于肌电信号数据集,这为识别卒中正常和异常运动提供了重要的信息来源。所提出的人工智能移动健康应用程序的最新技术是新的,所提出的技术达到了很高的准确性,因为稀疏自编码器在中风诊断中达到了近98%,GMDH神经网络被证明是一种很好的技术,可以监测同一患者病例的肌电图信号,平均准确率为98.60%至96.68%。本文还对提出的整个新系统架构进行了总结和未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile AI Stroke Health App: A Novel Mobile Intelligent Edge Computing Engine based on Deep Learning models for Stroke Prediction – Research and Industry Perspective
Artificial Intelligence (AI) techniques for mobile Health (mHealth) in remote medical systems has opened up new opportunities in healthcare systems. Combining AI techniques to the existing Internet of Medical things(IoMT) will enhance the quality of care that patients receive at home remotely or The success establishment of Smart living environments while still having access to the resources within reach to respond to any medical diagnostic crisis. Mobile Health is a steadily growing field in telemedicine. However, building a real AI for Mobile Edge computing is a challenging problem due to the complexities of receiving IoT medical sensors data, data analysis and Deep Learning algorithm complexity programming for Mobile Edge Computing Complexities, especially when we tackle real-time environments of wearable technologies. In this paper, we introduce a New Real-Time Artificial Intelligence and IoMT Engine for Mobile Health Edge Computing technology. Its main goal to is to Predict stroke diseases as an urgent case that may cause that may cause problems like weakness, numbness, vision problems, confusion, trouble walking or moving or talking. It may also cause sudden death. However, today ’s Mobile Health research still missing an intelligent remote diagnosis engine for Stroke Prediction and Diagnosis for patient emergency cases This research work proposes a Hybrid Intelligent remote diagnosis technique for Mobile Health Application for Stroke Prediction and diagnosis. The hybrid techniques are Sparse Auto-Encoders Deep Learning (DL) technique and Group Handling method (GMDH) neural networks. Both techniques depend on dataset of Electromyography (EMG) signals, which provides significant source of information for identification of stroke normal and abnormal motions. The State of the art of the presented Artificial Intelligence mHealth App is new and the proposed techniques achieves high accuracies as Sparse Auto-Encoders reaches almost 98% for Stroke Diagnosis and GMDH Neural Networks proves to be a good technique for monitoring the EMG signal of the same patient case with average accuracies 98.60% to average 96.68% of the signal prediction. This paper also presents conclusion and future works for the proposed overall new system architecture.
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