神经外科临床预测的发展。

Hendrik-Jan Mijderwijk
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引用次数: 0

摘要

预测临床结果是每个医生的基本任务。医生可能会根据他们的直觉和科学材料,如提出人群风险的研究和报告风险因素(预后因素)的研究,来对单个患者进行临床预测。一种相对较新的、信息量更大的临床预测方法依赖于统计模型的使用,该模型同时考虑了多种预测因素,提供了对患者结果的绝对风险的估计。在神经外科领域有越来越多的文献报道临床预测模型。这些工具在支持(而不是取代)神经外科医生对患者预后的预测方面具有很大的潜力。如果合理使用,这些工具将为患者做出更明智的决策铺平道路。患者和他们重要的其他人想知道他们预期结果的风险,它是如何产生的,以及与之相关的不确定性。从这些预测模型中学习并将结果传达给他人,已经成为神经外科医生必须掌握的一项日益重要的技能。本文描述了在神经外科中进行临床预测的演变,概述了生成有用的临床预测模型的关键阶段,并讨论了在部署和传达预测模型结果时需要考虑的一些问题。本文引用了神经外科文献中的多个例子,包括预测蛛网膜囊肿破裂,预测动脉瘤性蛛网膜下腔出血患者的再出血,以及预测胶质母细胞瘤患者的生存。
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Evolution of Making Clinical Predictions in Neurosurgery.

Prediction of clinical outcomes is an essential task for every physician. Physicians may base their clinical prediction of an individual patient on their intuition and on scientific material such as studies presenting population risks and studies reporting on risk factors (prognostic factors). A relatively new and more informative approach for making clinical predictions relies on the use of statistical models that simultaneously consider multiple predictors that provide an estimate of the patient's absolute risk of an outcome. There is a growing body of literature in the neurosurgical field reporting on clinical prediction models. These tools have high potential in supporting (not replacing) neurosurgeons with their prediction of a patient's outcome. If used sensibly, these tools pave the way for more informed decision-making with or for individual patients. Patients and their significant others want to know their risk of the anticipated outcome, how it is derived, and the uncertainty associated with it. Learning from these prediction models and communicating the output to others has become an increasingly important skill neurosurgeons have to master. This article describes the evolution of making clinical predictions in neurosurgery, synopsizes key phases for the generation of a useful clinical prediction model, and addresses some considerations when deploying and communicating the results of a prediction model. The paper is illustrated with multiple examples from the neurosurgical literature, including predicting arachnoid cyst rupture, predicting rebleeding in patients suffering from aneurysmal subarachnoid hemorrhage, and predicting survival in glioblastoma patients.

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