通过医疗保健领域的机器学习,强调边缘智能的隐私和安全性

Sukumar Rajendran, S. Mathivanan, P. Jayagopal, Kumar Purushothaman Janaki, Benjula Anbu Malar Manickam Bernard, Suganya Pandy, Manivannan Sorakaya Somanathan
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引用次数: 19

摘要

人工智能(AI)已经超越了人们的预期,为各行各业的机器开辟了不同的可能性。云服务提供商正在努力。边缘计算减少了延迟,提高了可用性并节省了带宽。设计/方法/方法张量处理单元(TPU)和图形处理单元(GPU)的指数级增长与不同类型的传感器相结合,使医疗技术与深度学习相结合,为患者提供最佳护理。作为从云端推送和提取数据的重要角色,大数据通过物联网的速度、准确性和数据量发挥作用,帮助医生预测异常情况,并根据患者的电子健康记录(EHR)提供定制治疗。边缘计算的主要焦点是分散和引入智能物联网设备,以提供实时计算。随着可穿戴设备和移动应用程序被委托对患者进行实时监测和诊断,PoP在医疗保健领域的影响变得越来越重要。随着可穿戴设备和移动应用程序被委托对患者进行实时监测和诊断,PoP在医疗保健领域的边缘计算影响越来越大。原创性/价值传感器数据的实用价值通过保留PII对来自ODL的每个查询的响应的拉普拉斯机制得到提高。相对于本地ODL中PII值的灵敏度和保存,可伸缩性为50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emphasizing privacy and security of edge intelligence with machine learning for healthcare
PurposeArtificial Intelligence (AI) has surpassed expectations in opening up different possibilities for machines from different walks of life. Cloud service providers are pushing. Edge computing reduces latency, improving availability and saving bandwidth.Design/methodology/approachThe exponential growth in tensor processing unit (TPU) and graphics processing unit (GPU) combined with different types of sensors has enabled the pairing of medical technology with deep learning in providing the best patient care. A significant role of pushing and pulling data from the cloud, big data comes into play as velocity, veracity and volume of data with IoT assisting doctors in predicting the abnormalities and providing customized treatment based on the patient electronic health record (EHR).FindingsThe primary focus of edge computing is decentralizing and bringing intelligent IoT devices to provide real-time computing at the point of presence (PoP). The impact of the PoP in healthcare gains importance as wearable devices and mobile apps are entrusted with real-time monitoring and diagnosis of patients. The impact edge computing of the PoP in healthcare gains significance as wearable devices and mobile apps are entrusted with real-time monitoring and diagnosis of patients.Originality/valueThe utility value of sensors data improves through the Laplacian mechanism of preserved PII response to each query from the ODL. The scalability is at 50% with respect to the sensitivity and preservation of the PII values in the local ODL.
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