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开发人工智能模型以指导终末期肾病患者的血压、血容量和透析剂量管理:概念验证与首次临床评估

Development of an Artificial Intelligence Model to Guide the Management of Blood Pressure, Fluid Volume, and Dialysis Dose in End-Stage Kidney Disease Patients: Proof of Concept and First Clinical Assessment.

作者信息

Barbieri Carlo, Cattinelli Isabella, Neri Luca, Mari Flavio, Ramos Rosa, Brancaccio Diego, Canaud Bernard, Stuard Stefano

机构信息

Fresenius Medical Care, Bad Homburg, Germany.

Fresenius Medical Care, Madrid, Spain.

出版信息

Kidney Dis (Basel). 2019 Feb;5(1):28-33. doi: 10.1159/000493479. Epub 2018 Nov 7.

Abstract

BACKGROUND

Fluid volume and blood pressure (BP) management are crucial endpoints for end-stage kidney disease patients. BP control in clinical practice mainly relies on reducing extracellular fluid volume overload by diminishing targeted postdialysis weight. This approach exposes dialysis patients to intradialytic hypotensive episodes.

SUMMARY

Both chronic hypertension and intradialytic hypotension lead to adverse long-term outcomes. Achieving the optimal trade-off between adequate fluid removal and the risk of intradialytic adverse events is a complex task in clinical practice given the multiple patient-related and dialysis-related factors affecting the hemodynamic response to treatment. State-of-the-art artificial intelligence has been adopted in other complex decision-making tasks for dialysis patients and may help personalize the multiple dialysis-related prescriptions affecting patients' intradialytic hemodynamics. As a proof of concept, we developed a multiple-endpoint model predicting session-specific Kt/V, fluid volume removal, heart rate, and BP based on patient characteristics, historic hemodynamic responses, and dialysis-related prescriptions.

KEY MESSAGES

The accuracy and precision of this preliminary model is extremely encouraging. Such analytic tools may be used to anticipate patients' reactions through simulation so that the best strategy can be chosen based on clinical judgment or formal utility functions.

摘要

背景

液体容量和血压管理是终末期肾病患者的关键治疗目标。临床实践中的血压控制主要依靠通过减少目标透析后体重来减轻细胞外液容量过载。这种方法使透析患者面临透析期间低血压发作的风险。

总结

慢性高血压和透析期间低血压都会导致不良的长期后果。鉴于影响治疗血流动力学反应的多种患者相关因素和透析相关因素,在临床实践中,在充分清除液体与透析期间不良事件风险之间实现最佳平衡是一项复杂的任务。先进的人工智能已被应用于透析患者的其他复杂决策任务中,可能有助于使影响患者透析期间血流动力学的多种透析相关处方个性化。作为概念验证,我们开发了一种多终点模型,该模型基于患者特征、既往血流动力学反应和透析相关处方来预测特定透析时段的Kt/V、液体清除量、心率和血压。

关键信息

这个初步模型的准确性和精确性非常令人鼓舞。此类分析工具可用于通过模拟预测患者的反应,以便根据临床判断或正式效用函数选择最佳策略。

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