预测有创机械通气的脱机失败:临床预测评分的前景和缺陷。

Maneesh Gaddam, Dedeepya Gullapalli, Zayaan A Adrish, Arnav Y Reddy, Muhammad Adrish
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引用次数: 0

摘要

在日常临床实践中,预测有创机械通气的脱机成功率仍然是一个挑战。已经开发了几个预测分数来指导自主呼吸试验期间的成功,以帮助断奶决策。这些评分旨在提供一个结构化的框架来支持临床判断。然而,它们的有效性因患者群体而异,其预测准确性仍然不一致。在这篇综述中,我们的目的是确定常用的临床预测工具在评估呼吸机解放准备程度方面的优势和局限性。虽然快速浅呼吸指数和综合断奶指数等评分被广泛采用,但在复杂的临床环境中,它们的敏感性和特异性往往不足。诸如潜在疾病病理生理、患者特征和临床医生主观性等因素影响评分的表现和可靠性。此外,不同人群之间验证的差异限制了通用性。随着人们对人工智能(AI)和机器学习的兴趣日益浓厚,整合多维数据并适应个体患者概况的增强预测模型具有潜力。然而,目前的人工智能方法面临着与可解释性、偏见和伦理实施相关的挑战。本文强调需要更强大、个性化和透明的预测系统,并倡导将新兴技术仔细整合到临床工作流程中,以优化断奶成功率和患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting weaning failure from invasive mechanical ventilation: The promise and pitfalls of clinical prediction scores.

Prediction of weaning success from invasive mechanical ventilation remains a challenge in everyday clinical practice. Several prediction scores have been developed to guide success during spontaneous breathing trials to help with weaning decisions. These scores aim to provide a structured framework to support clinical judgment. However, their effectiveness varies across patient populations, and their predictive accuracy remains inconsistent. In this review, we aim to identify the strengths and limitations of commonly used clinical prediction tools in assessing readiness for ventilator liberation. While scores such as the Rapid Shallow Breathing Index and the Integrative Weaning Index are widely adopted, their sensitivity and specificity often fall short in complex clinical settings. Factors such as underlying disease pathophysiology, patient characteristics, and clinician subjectivity impact score performance and reliability. Moreover, disparities in validation across diverse populations limit generalizability. With growing interest in artificial intelligence (AI) and machine learning, there is potential for enhanced prediction models that integrate multidimensional data and adapt to individual patient profiles. However, current AI approaches face challenges related to interpretability, bias, and ethical implementation. This paper underscores the need for more robust, individualized, and transparent prediction systems and advocates for careful integration of emerging technologies into clinical workflows to optimize weaning success and patient outcomes.

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