Nonlinear single-input single-output model-based estimation of cardiac output for normal and depressed cases

被引:0
作者
Islam Ismail Mohamed
Mohamed Abdelkader Aboamer
Ahmad Taher Azar
Khaled Wahba
Andy Schumann
Karl Jürgen Bär
机构
[1] Higher Technological Institute,Department of Biomedical Engineering
[2] Majmaah University,Department of Medical Equipment Technology, Faculty of Applied Science
[3] Benha University,Faculty of Computers and Information
[4] School of Engineering and Applied Sciences,Department of Systems and Biomedical Engineering
[5] Nile University,Department of Psychiatry and Psychotherapy
[6] Cairo University,undefined
[7] Jena University Hospital,undefined
来源
Neural Computing and Applications | 2019年 / 31卷
关键词
System identification; Stroke volume; Heart rate; Cardiac output;
D O I
暂无
中图分类号
学科分类号
摘要
Mental depression is associated with an increased risk of cardiovascular mortality, thus provisioning generic simple nonlinear mathematical models for normal and depressed cases using only heart rate (HR) or stroke volume (SV) as a single input to produce cardiac output (CO) as a single output instead of using both HR and SV as two inputs. The proposed models could be in the future an effective tool to investigate the effect of neuroleptic medication, especially depression, and it reduces the time of processing. Seventy-four depressed cases, 74 normal peers and autoregressive considered as a main role in the nonlinear discrete system identification are chosen to lie under investigation on the way to produce four simple nonlinear models. The first generic model using only HR as an input which generated from the depressed case number 62 produced minimum root-mean-square error (RMSE) of 0.0018 and when it is applied to the 74 depressed cases it produced average RMSE equal to 0.1978. Second, generic model using only HR as an input created from the normal case number 55 produced minimum RMSE of 0.0008 and average RMSE equal to 0.0572. The third generic model using only SV as an input which generated from the depressed case number 16 produced minimum RMSE of 0.0027 and when it is applied to the 74 depressed cases it produced average RMSE equal to 0.9405. Fourth generic model using only SV as an input created from the normal case number 58 produced minimum RMSE of 0.0019 and average RMSE equal to 1.0833. The four simple nonlinear models for depression and normal cases are succeeded to determine CO by using only one input such as HR or SV and could be a good contribution in the future to neuroleptic medications field especially depression while HR showed the minimum average RMSE.
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页码:2955 / 2978
页数:23
相关论文
共 312 条
[1]  
Patel V(2010)Effectiveness of an intervention led by lay health counsellors for depressive and anxiety disorders in primary care Lancet 376 2086-2095
[2]  
Weiss HA(2010)Computer therapy for the anxiety and depressive disorders is effective, acceptable and practical health care: a meta-analysis PLoS ONE 5 e13196-339
[3]  
Chowdhary N(2004)System theory for system identification J Econom 118 313-360
[4]  
Naik S(2002)The potential cardiotoxicity of antipsychotic drugs as assessed by heart rate variability J Psychopharmacol 16 355-804
[5]  
Pednekar S(2007)Drug-induced cardiovascular disorders Drug Saf 30 783-14
[6]  
Chatterjee S(2008)Cardiac side effects of psychiatric drugs Hum Psychopharmacol 23 3-356
[7]  
De Silva MJ(2002)Electrophysiological effects of risperidone in mammalian cardiac cells Naunyn Schmiedebergs Arch Pharmacol 366 350-1022
[8]  
Bhat B(2004)Drug-induced prolongation of the QT interval N Engl J Med 350 1013-24
[9]  
Araya R(2003)Reversal of severe tricyclic antidepressant-induced cardiotoxicity with intravenous hypertonic saline solution Ann Emerg Med 42 20-194
[10]  
King M(2008)Sudden cardiac death secondary to antidepressant and antipsychotic drugs Expert Opin Drug Saf 7 181-1209