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大数据与脑卒中:如何利用大数据做出下一步管理决策

Big Data in Stroke: How to Use Big Data to Make the Next Management Decision.

机构信息

Department of Neurology, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA.

Section of Health and Biomedical Informatics, Department of Preventive Medicine, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA.

出版信息

Neurotherapeutics. 2023 Apr;20(3):744-757. doi: 10.1007/s13311-023-01358-4. Epub 2023 Mar 10.

Abstract

The last decade has seen significant advances in the accumulation of medical data, the computational techniques to analyze that data, and corresponding improvements in management. Interventions such as thrombolytics and mechanical thrombectomy improve patient outcomes after stroke in selected patients; however, significant gaps remain in our ability to select patients, predict complications, and understand outcomes. Big data and the computational methods needed to analyze it can address these gaps. For example, automated analysis of neuroimaging to estimate the volume of brain tissue that is ischemic and salvageable can help triage patients for acute interventions. Data-intensive computational techniques can perform complex risk calculations that are too cumbersome to be completed by humans, resulting in more accurate and timely prediction of which patients require increased vigilance for adverse events such as treatment complications. To handle the accumulation of complex medical data, a variety of advanced computational techniques referred to as machine learning and artificial intelligence now routinely complement traditional statistical inference. In this narrative review, we explore data-intensive techniques in stroke research, how it has informed the management of stroke patients, and how current work could shape clinical practice in the future.

摘要

过去十年,医学数据的积累、用于分析这些数据的计算技术以及管理方面都取得了重大进展。溶栓和机械取栓等干预措施可改善特定患者中风后的预后;然而,我们在选择患者、预测并发症和了解结局方面仍存在很大差距。大数据和分析这些数据所需的计算方法可以解决这些差距。例如,神经影像学的自动分析可以估算缺血和可挽救的脑组织体积,有助于对急性干预的患者进行分诊。数据密集型计算技术可以进行复杂的风险计算,这些计算对于人类来说过于繁琐,从而可以更准确、及时地预测哪些患者需要更加警惕治疗并发症等不良事件。为了处理复杂的医学数据的积累,现在通常会结合传统的统计推断,使用各种称为机器学习和人工智能的先进计算技术。在本叙述性综述中,我们探讨了中风研究中的数据密集型技术、它如何为中风患者的管理提供信息以及当前的工作如何塑造未来的临床实践。

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