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首页> 外文期刊>Computational and mathematical methods in medicine >Model-Based Quantification of Left Ventricular Diastolic Function in Critically Ill Patients with Atrial Fibrillation from Routine Data: A Feasibility Study
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Model-Based Quantification of Left Ventricular Diastolic Function in Critically Ill Patients with Atrial Fibrillation from Routine Data: A Feasibility Study

机译:基于模型的左心室舒张功能在常规数据中性心房颤动患者的左心室舒张功能:可行性研究

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Introduction. Left ventricular diastolic dysfunction (LVDD) and atrial fibrillation (AF) are connected by pathophysiology and prevalence. LVDD remains underdiagnosed in critically ill patients despite potentially significant therapeutic implications since direct measurement cannot be performed in routine care at the bedside, and echocardiographic assessment of LVDD in AF is impaired. We propose a novel approach that allows us to infer the diastolic stiffness, β, a key quantitative parameter of diastolic function, from standard monitoring data by solving the nonlinear, ill-posed inverse problem of parameter estimation for a previously described mechanistic, physiological model of diastolic filling. The beat-to-beat variability in AF offers an advantageous setting for this. Methods. By employing a global optimization algorithm, β is inferred from a simple six parameter and an expanded seven parameter model of left ventricular filling. Optimization of all parameters was limited to the interval ]0, 400[ and initialized randomly on large intervals encompassing the support of the likelihood function. Routine ECG and arterial pressure recordings of 17 AF and 3 sinus rhythm (SR) patients from the PhysioNet MGH/MF Database were used as inputs. Results. Estimation was successful in 15 of 17 AF patients, while in the 3 SR patients, no reliable estimation was possible. For both models, the inferred β (0.065?±?0.044?ml?1 vs. 0.038?±?0.033?ml?1 (p=0.02) simple vs. expanded) was compatible with the previously described (patho) physiological range. Aortic compliance, α, inferred from the expanded model (1.46?±?1.50?ml/mmHg) also compared well with literature values. Conclusion. The proposed approach successfully inferred β within the physiological range. This is the first report of an approach quantifying LVDF from routine monitoring data in critically ill AF patients. Provided future successful external validation, this approach may offer a tool for minimally invasive online monitoring of this crucial parameter.
机译:介绍。左心室舒张功能障碍(LVDD)和心房颤动(AF)通过病理生理学和患病率连接。尽管可能性显着的治疗意义,LVDD在危重病患者中仍然受到危重病人,因为在床边的常规护理中不能进行直接测量,并且在AF中的LVDD对LVDD的超声心动图评估。我们提出了一种新的方法,使我们能够通过解决前面描述的机械,生理模型的参数估计的非线性,生理模型的非线性,不良逆问题来推断舒张刚度,舒张函数的舒张功能的关键定量参数。舒张填充。 AF中的节拍变异性为此提供了有利的环境。方法。通过采用全局优化算法,从简单的六个参数推断β和左心室填充的扩展七参数模型。所有参数的优化仅限于间隔] 0,400 [并随机初始化,而是随机初始化,包括支持似然函数的支持。使用来自物理体MGH / MF数据库的17 AF和3个鼻窦节奏(SR)患者的常规ECG和动脉压录用作输入。结果。估计成功于17例AF患者的15名,而在3名SR患者中,不可能可靠的估计。对于两种型号,推断β(0.065?±0.044?mlα1,0.038?±0.033Ω·1(p = 0.02)简单与膨胀)与先前描述的(Pooro)生理范围相容。从扩展模型(1.46?±1.50?ml / mmHg)推断出主动脉依从性,α也与文献值相比。结论。所提出的方法在生理范围内成功推断出β。这是从危重AF患者中从常规监测数据量化LVDF的方法的第一个报告。提供了未来的成功外部验证,这种方法可以提供用于对这一关键参数的微创在线监测的工具。

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