危重先天性心脏病的持续数据驱动监测:临床恶化模型的发展。

Q2 Medicine
JMIR Cardio Pub Date : 2023-05-16 DOI:10.2196/45190
Ruben S Zoodsma, Rian Bosch, Thomas Alderliesten, Casper W Bollen, Teus H Kappen, Erik Koomen, Arno Siebes, Joppe Nijman
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引用次数: 0

摘要

背景:危重先天性心脏病(cCHD)——需要在生命第一年进行心脏干预才能存活——在全球每1000个活产婴儿中发生2-3例。在围手术期的关键时期,在儿科重症监护病房(PICU)进行密集的多模式监测是必要的,因为他们的器官,特别是大脑,可能由于血液动力学和呼吸事件而严重受损。这些全天候临床数据流产生大量高频数据,由于cCHD固有的变化和动态生理,这些数据在解释方面具有挑战性。通过先进的数据科学算法,将这些动态数据浓缩为可理解的信息,减少医疗团队的认知负荷,并通过自动检测临床恶化提供数据驱动的监测支持,便于及时干预。目的:研究重症监护病房(PICU) cCHD患者的临床恶化检测算法。方法:回顾性分析2002 - 2018年荷兰乌得勒支大学医学中心收治的cCHD新生儿脑区域血氧饱和度(rSO2)及4个生命参数(呼吸频率、心率、血氧饱和度、有创平均血压)的同步每秒数据。根据入院时的平均血氧饱和度对患者进行分层,以解释无氰型和紫绀型cCHD的生理差异。每个子集用于训练我们的算法将数据分类为稳定、不稳定或传感器功能障碍。该算法旨在检测与分层亚群异常的参数组合以及与患者独特基线的显著偏差,并对其进行进一步分析,以区分临床改善与恶化。新数据用于测试,详细可视化,并由儿科重症医师内部验证。结果:回顾性查询分别产生78和10个新生儿的4600小时和209小时每秒的数据,用于培训和测试目的。在检测期间,稳定发作发生153次,其中134次(88%)被正确检测到。观察到的57次不稳定发作中有46次(81%)被正确地发现。在测试中遗漏了12次专家确认的不稳定发作。稳定发作和不稳定发作的时间百分比准确率分别为93%和77%。共检测到138例感觉功能障碍,其中130例(94%)正确。结论:在这项概念验证研究中,我们开发了一种临床恶化检测算法,并对其进行回顾性评估,对临床稳定性和不稳定性进行分类,考虑到cCHD新生儿的异质性,该算法取得了合理的效果。结合基线(即患者特异性)偏差和同时参数转移(即人群特异性)证据的分析,将有希望提高对异质危重儿科人群的适用性。经过前瞻性验证,当前和可比较的模型可能在未来用于临床恶化的自动检测,并最终为医疗团队提供数据驱动的监测支持,从而允许及时干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Continuous Data-Driven Monitoring in Critical Congenital Heart Disease: Clinical Deterioration Model Development.

Continuous Data-Driven Monitoring in Critical Congenital Heart Disease: Clinical Deterioration Model Development.

Continuous Data-Driven Monitoring in Critical Congenital Heart Disease: Clinical Deterioration Model Development.

Continuous Data-Driven Monitoring in Critical Congenital Heart Disease: Clinical Deterioration Model Development.

Background: Critical congenital heart disease (cCHD)-requiring cardiac intervention in the first year of life for survival-occurs globally in 2-3 of every 1000 live births. In the critical perioperative period, intensive multimodal monitoring at a pediatric intensive care unit (PICU) is warranted, as their organs-especially the brain-may be severely injured due to hemodynamic and respiratory events. These 24/7 clinical data streams yield large quantities of high-frequency data, which are challenging in terms of interpretation due to the varying and dynamic physiology innate to cCHD. Through advanced data science algorithms, these dynamic data can be condensed into comprehensible information, reducing the cognitive load on the medical team and providing data-driven monitoring support through automated detection of clinical deterioration, which may facilitate timely intervention.

Objective: This study aimed to develop a clinical deterioration detection algorithm for PICU patients with cCHD.

Methods: Retrospectively, synchronous per-second data of cerebral regional oxygen saturation (rSO2) and 4 vital parameters (respiratory rate, heart rate, oxygen saturation, and invasive mean blood pressure) in neonates with cCHD admitted to the University Medical Center Utrecht, the Netherlands, between 2002 and 2018 were extracted. Patients were stratified based on mean oxygen saturation during admission to account for physiological differences between acyanotic and cyanotic cCHD. Each subset was used to train our algorithm in classifying data as either stable, unstable, or sensor dysfunction. The algorithm was designed to detect combinations of parameters abnormal to the stratified subpopulation and significant deviations from the patient's unique baseline, which were further analyzed to distinguish clinical improvement from deterioration. Novel data were used for testing, visualized in detail, and internally validated by pediatric intensivists.

Results: A retrospective query yielded 4600 hours and 209 hours of per-second data in 78 and 10 neonates for, respectively, training and testing purposes. During testing, stable episodes occurred 153 times, of which 134 (88%) were correctly detected. Unstable episodes were correctly noted in 46 of 57 (81%) observed episodes. Twelve expert-confirmed unstable episodes were missed in testing. Time-percentual accuracy was 93% and 77% for, respectively, stable and unstable episodes. A total of 138 sensorial dysfunctions were detected, of which 130 (94%) were correct.

Conclusions: In this proof-of-concept study, a clinical deterioration detection algorithm was developed and retrospectively evaluated to classify clinical stability and instability, achieving reasonable performance considering the heterogeneous population of neonates with cCHD. Combined analysis of baseline (ie, patient-specific) deviations and simultaneous parameter-shifting (ie, population-specific) proofs would be promising with respect to enhancing applicability to heterogeneous critically ill pediatric populations. After prospective validation, the current-and comparable-models may, in the future, be used in the automated detection of clinical deterioration and eventually provide data-driven monitoring support to the medical team, allowing for timely intervention.

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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
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