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将机器学习与真实世界数据相结合以识别临床实践指南中的差距:使用德国前瞻性卒中登记处和国家急性缺血性卒中指南的可行性研究

Combining Machine Learning With Real-World Data to Identify Gaps in Clinical Practice Guidelines: Feasibility Study Using the Prospective German Stroke Registry and the National Acute Ischemic Stroke Guidelines.

作者信息

Müller Sandrine, Diekmann Susanne, Wenzel Markus, Hahn Horst Karl, Tuennerhoff Johannes, Ernemann Ulrike, Hennersdorf Florian, Westphal Max, Poli Sven

机构信息

Fraunhofer Institute for Digital Medicine, Bremen, Germany.

Constructor University, Bremen, Germany.

出版信息

JMIR Med Inform. 2025 Jul 11;13:e69282. doi: 10.2196/69282.

Abstract

BACKGROUND

Clinical practice guidelines (CPGs) serve as essential tools for guiding clinicians in providing appropriate patient care. However, clinical practice does not always reflect CPGs. This is particularly critical in acute diseases requiring immediate treatment, such as acute ischemic stroke, one of the leading causes of morbidity and mortality worldwide. Adherence to CPGs improves patient outcomes, yet guidelines may not address all patient scenarios, resulting in variability in treatment decisions. Identifying such gaps would augment CPGs but is challenging when using traditional methods.

OBJECTIVE

This study aims to leverage real-world data coupled with machine learning (ML) techniques to systematically identify and quantify gaps in German thrombolysis-in-stroke guidelines.

METHODS

We analyzed observational data from the German Stroke Registry - Endovascular Treatment (GSR-ET), a prospective national registry involving 18,069 patients from 25 stroke centers in whom endovascular treatment of a large vessel occlusion was attempted between 2015 and 2023. Key variables included demographic, clinical and imaging information, treatment details, and outcomes. A random forest model was used to predict intravenous thrombolysis treatment decisions based on three different sets of features: (1) guideline-recommended features, (2) clinician-selected features, and (3) features as documented in the GSR-ET before thrombolytic treatment. Feature importance scores, permutation importance, and Shapley Additive Explanations values were used, with clinician guidance, to interpret the model and identify key factors associated with guideline deviations and independent clinician judgments.

RESULTS

Of all GSR-ET patients, 13,440 (74.4%) were analyzed after excluding those with incomplete or implausible data. The random forest model's performance, measured by area under the receiver operating characteristics curve, was 0.71 (95% CI 0.68-0.73), 0.74 (95% CI 0.73-0.75), and 0.77 (95% CI 0.76-0.78) for the guideline-recommended, clinician-selected, and GSR-ET feature sets, respectively. Across all sets, time from symptom onset to admission was the most important predictor of thrombolysis treatment decisions. Age, which according to the German guidelines is not to be considered for thrombolysis administration, emerged as a significant predictor in the GSR-ET feature set, suggesting a potential gap between guidelines and clinical practice.

CONCLUSIONS

In our study, we introduce an innovative approach that combines real-world data with ML techniques to identify discrepancies between CPGs and actual clinical decision-making. Using intravenous thrombolysis in large vessel occlusion stroke as a model, our findings suggest that treatment decisions may be influenced by factors not explicitly included in the current German guideline, such as patient age and pre-stroke functional status. This approach may help uncover clinically relevant variables for potential inclusion in future guideline refinements.

摘要

背景

临床实践指南(CPG)是指导临床医生提供适当患者护理的重要工具。然而,临床实践并不总是反映CPG。这在需要立即治疗的急性疾病中尤为关键,例如急性缺血性中风,它是全球发病和死亡的主要原因之一。遵循CPG可改善患者预后,但指南可能无法涵盖所有患者情况,导致治疗决策存在差异。识别此类差距将增强CPG,但使用传统方法时具有挑战性。

目的

本研究旨在利用真实世界数据与机器学习(ML)技术,系统地识别和量化德国中风溶栓指南中的差距。

方法

我们分析了来自德国中风登记处 - 血管内治疗(GSR - ET)的观察性数据,这是一个前瞻性国家登记处,涉及来自25个中风中心的18,069名患者,他们在2015年至2023年间尝试进行大血管闭塞的血管内治疗。关键变量包括人口统计学、临床和影像学信息、治疗细节及结果。使用随机森林模型基于三组不同特征预测静脉溶栓治疗决策:(1)指南推荐特征;(2)临床医生选择的特征;(3)溶栓治疗前GSR - ET记录的特征。在临床医生的指导下,使用特征重要性得分、排列重要性和Shapley附加解释值来解释模型,并识别与指南偏差和独立临床医生判断相关的关键因素。

结果

在排除数据不完整或不合理的患者后,对所有GSR - ET患者中的13,440名(74.4%)进行了分析。随机森林模型的性能,以受试者工作特征曲线下面积衡量,对于指南推荐、临床医生选择和GSR - ET特征集分别为0.71(95%CI 0.68 - 0.73)、0.74(95%CI 0.73 - 0.75)和0.77(95%CI 0.76 - 0.78)。在所有特征集中,从症状发作到入院的时间是溶栓治疗决策的最重要预测因素。根据德国指南,年龄在溶栓给药时不应考虑,但在GSR - ET特征集中却成为一个显著的预测因素,这表明指南与临床实践之间可能存在差距。

结论

在我们的研究中,我们引入了一种创新方法,将真实世界数据与ML技术相结合,以识别CPG与实际临床决策之间的差异。以大血管闭塞性中风的静脉溶栓为模型,我们的研究结果表明,治疗决策可能受到当前德国指南未明确纳入的因素影响,如患者年龄和中风前功能状态。这种方法可能有助于发现临床上相关的变量,以便在未来指南修订中考虑纳入。

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