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Blood Glucose Regulation for Post-Operative Patients with Diabetics and Hypertension Continuum: A Cascade Control-Based Approach

Published: 01 April 2019 Publication History

Abstract

Management of glycemic level in post-operative condition is critical for hypertensive patients and the post-operative stress may results in hyperglycemia, hyper insulin and osmotic diuresis. Recent medical research shows that diabetic and hypertension hands together in a significant overlap in its etiology and its disease mechanism. It is clear that there is a call for monitoring in the parameter and controlling the glucose level particularly in the presence of hypertension. This paper proposes the novel complex (cascade) control system to control the insulin infusion level particularly in the presence of hypertension. Based on the requirements the structure has been designed and the simulation results indicates that the proposed control strategy shows better results and may achieve potentially better glycemic control to the hypersensitive diabetic patients.

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  1. Blood Glucose Regulation for Post-Operative Patients with Diabetics and Hypertension Continuum: A Cascade Control-Based Approach

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    Published In

    cover image Journal of Medical Systems
    Journal of Medical Systems  Volume 43, Issue 4
    April 2019
    211 pages

    Publisher

    Plenum Press

    United States

    Publication History

    Published: 01 April 2019

    Author Tags

    1. Cascade control
    2. Hypertension
    3. Mathematical model
    4. Optimal insulin infusion

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    • (2021)RETRACTED ARTICLE: Accurate computation: COVID-19 rRT-PCR positive test dataset using stages classification through textual big data mining with machine learningThe Journal of Supercomputing10.1007/s11227-020-03586-377:7(7074-7088)Online publication date: 1-Jul-2021
    • (2021)RETRACTED ARTICLE: DAVmS: Distance Aware Virtual Machine Scheduling approach for reducing the response time in cloud computingThe Journal of Supercomputing10.1007/s11227-020-03563-w77:7(6664-6675)Online publication date: 1-Jul-2021
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