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人工智能辅助评分与临床专家评估肺淤血严重程度的比较:BLUSHED-AHF 的二次分析。

Comparison of pulmonary congestion severity using artificial intelligence-assisted scoring versus clinical experts: A secondary analysis of BLUSHED-AHF.

机构信息

Department of Emergency Medicine, Brigham and Women's Hospital, Boston, MA, USA.

Harvard Medical School, Boston, MA, USA.

出版信息

Eur J Heart Fail. 2023 Jul;25(7):1166-1169. doi: 10.1002/ejhf.2881. Epub 2023 Jun 20.

DOI:10.1002/ejhf.2881
PMID:37218619
Abstract

AIM

Acute decompensated heart failure (ADHF) is the leading cause of cardiovascular hospitalizations in the United States. Detecting B-lines through lung ultrasound (LUS) can enhance clinicians' prognostic and diagnostic capabilities. Artificial intelligence/machine learning (AI/ML)-based automated guidance systems may allow novice users to apply LUS to clinical care. We investigated whether an AI/ML automated LUS congestion score correlates with expert's interpretations of B-line quantification from an external patient dataset.

METHODS AND RESULTS

This was a secondary analysis from the BLUSHED-AHF study which investigated the effect of LUS-guided therapy on patients with ADHF. In BLUSHED-AHF, LUS was performed and B-lines were quantified by ultrasound operators. Two experts then separately quantified the number of B-lines per ultrasound video clip recorded. Here, an AI/ML-based lung congestion score (LCS) was calculated for all LUS clips from BLUSHED-AHF. Spearman correlation was computed between LCS and counts from each of the original three raters. A total of 3858 LUS clips were analysed on 130 patients. The LCS demonstrated good agreement with the two experts' B-line quantification score (r = 0.894, 0.882). Both experts' B-line quantification scores had significantly better agreement with the LCS than they did with the ultrasound operator's score (p < 0.005, p < 0.001).

CONCLUSION

Artificial intelligence/machine learning-based LCS correlated with expert-level B-line quantification. Future studies are needed to determine whether automated tools may assist novice users in LUS interpretation.

摘要

目的

急性失代偿性心力衰竭(ADHF)是美国心血管住院的主要原因。通过肺部超声(LUS)检测 B 线可以增强临床医生的预后和诊断能力。基于人工智能/机器学习(AI/ML)的自动引导系统可能允许新手用户将 LUS 应用于临床护理。我们研究了 AI/ML 自动 LUS 充血评分是否与外部患者数据集的专家对 B 线量化的解释相关。

方法和结果

这是 BLUSHED-AHF 研究的二次分析,该研究调查了 LUS 引导治疗对 ADHF 患者的影响。在 BLUSHED-AHF 中,进行了 LUS 并由超声操作员对 B 线进行了量化。然后,两位专家分别对记录的每个超声视频片段中的 B 线数量进行了量化。在这里,为 BLUSHED-AHF 的所有 LUS 剪辑计算了基于 AI/ML 的肺充血评分(LCS)。计算了 LCS 与每位原始三位评分者的计数之间的 Spearman 相关系数。共对 130 名患者的 3858 个 LUS 剪辑进行了分析。LCS 与两位专家的 B 线量化评分具有良好的一致性(r=0.894,0.882)。两位专家的 B 线量化评分与 LCS 的一致性均明显优于与超声操作员评分的一致性(p<0.005,p<0.001)。

结论

基于人工智能/机器学习的 LCS 与专家级 B 线量化相关。需要进一步的研究来确定自动工具是否可以帮助新手用户进行 LUS 解释。

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