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生理模型选择的准确性评估方法,用于评估闭环控制的医疗设备。

Accuracy assessment methods for physiological model selection toward evaluation of closed-loop controlled medical devices.

机构信息

Office of Science and Engineering Laboratories, Center for Devices and Radiological Health, United States Food and Drug Administration, Silver Spring, MD, United States of America.

Department of Mechanical Engineering, University of Maryland, College Park, MD, United States of America.

出版信息

PLoS One. 2021 Apr 30;16(4):e0251001. doi: 10.1371/journal.pone.0251001. eCollection 2021.

Abstract

Physiological closed-loop controlled (PCLC) medical devices are complex systems integrating one or more medical devices with a patient's physiology through closed-loop control algorithms; introducing many failure modes and parameters that impact performance. These control algorithms should be tested through safety and efficacy trials to compare their performance to the standard of care and determine whether there is sufficient evidence of safety for their use in real care setting. With this aim, credible mathematical models have been constructed and used throughout the development and evaluation phases of a PCLC medical device to support the engineering design and improve safety aspects. Uncertainties about the fidelity of these models and ambiguities about the choice of measures for modeling performance need to be addressed before a reliable PCLC evaluation can be achieved. This research develops tools for evaluating the accuracy of physiological models and establishes fundamental measures for predictive capability assessment across different physiological models. As a case study, we built a refined physiological model of blood volume (BV) response by expanding an original model we developed in our prior work. Using experimental data collected from 16 sheep undergoing hemorrhage and fluid resuscitation, first, we compared the calibration performance of the two candidate physiological models, i.e., original and refined, using root-mean-squared error (RMSE), Akiake information criterion (AIC), and a new multi-dimensional approach utilizing normalized features extracted from the fitting error. Compared to the original model, the refined model demonstrated a significant improvement in calibration performance in terms of RMSE (9%, P = 0.03) and multi-dimensional measure (48%, P = 0.02), while a comparable AIC between the two models verified that the enhanced calibration performance in the refined model is not due to data over-fitting. Second, we compared the physiological predictive capability of the two models under three different scenarios: prediction of subject-specific steady-state BV response, subject-specific transient BV response to hemorrhage perturbation, and leave-one-out inter-subject BV response. Results indicated enhanced accuracy and predictive capability for the refined physiological model with significantly larger proportion of measurements that were within the prediction envelope in the transient and leave-one-out prediction scenarios (P < 0.02). All together, this study helps to identify and merge new methods for credibility assessment and physiological model selection, leading to a more efficient process for PCLC medical device evaluation.

摘要

生理闭环控制(PCLC)医疗设备是一种复杂的系统,通过闭环控制算法将一个或多个医疗设备与患者的生理机能集成在一起;引入了许多影响性能的失效模式和参数。这些控制算法应该通过安全性和有效性试验进行测试,以将其性能与标准护理进行比较,并确定在实际护理环境中使用它们是否有足够的安全性证据。为此,已经构建了可信的数学模型,并在 PCLC 医疗设备的开发和评估阶段使用这些模型,以支持工程设计并提高安全性。在能够对 PCLC 进行可靠评估之前,需要解决这些模型的保真度的不确定性以及建模性能措施选择的模糊性问题。本研究开发了用于评估生理模型准确性的工具,并为不同生理模型的预测能力评估建立了基本措施。作为案例研究,我们通过扩展我们之前工作中开发的原始模型,构建了一个改进的血液体积(BV)反应生理模型。使用从 16 只正在经历出血和液体复苏的绵羊中收集的实验数据,首先,我们使用均方根误差(RMSE)、赤池信息量准则(AIC)和利用从拟合误差中提取的归一化特征的新多维方法,比较了两个候选生理模型(原始模型和改进模型)的校准性能。与原始模型相比,改进模型在 RMSE(9%,P = 0.03)和多维度量(48%,P = 0.02)方面表现出校准性能的显著提高,而两个模型之间可比的 AIC 验证了改进模型中增强的校准性能不是由于数据过度拟合。其次,我们比较了两种模型在三种不同情况下的生理预测能力:预测受试者特定的稳态 BV 反应、预测受试者特定的出血扰动瞬态 BV 反应和留一法预测受试者间 BV 反应。结果表明,改进的生理模型在瞬态和留一法预测场景中具有更高的准确性和预测能力,有更大比例的测量值落在预测范围内(P < 0.02)。总之,这项研究有助于确定和合并用于可信度评估和生理模型选择的新方法,从而为 PCLC 医疗设备评估提供更高效的流程。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dc12/8087034/633c1d658135/pone.0251001.g001.jpg

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