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手持超声设备中 B 线自动识别与定量分析算法的观察者间一致性和相关性与专家超声医师评估的比较

Interobserver Agreement and Correlation of an Automated Algorithm for B-Line Identification and Quantification With Expert Sonologist Review in a Handheld Ultrasound Device.

机构信息

Department of Emergency Medicine, Yale School of Medicine, New Haven, CT, USA.

Philips Healthcare, Bothell, WA, USA.

出版信息

J Ultrasound Med. 2022 Oct;41(10):2487-2495. doi: 10.1002/jum.15935. Epub 2021 Dec 28.

DOI:10.1002/jum.15935
PMID:34964489
Abstract

OBJECTIVES

B-lines are ultrasound artifacts that can be used to detect a variety of pathologic lung conditions. Computer-aided methods to detect and quantify B-lines may standardize quantification and improve diagnosis by novice users. We sought to test the performance of an automated algorithm for the detection and quantification of B-lines in a handheld ultrasound device (HHUD).

METHODS

Ultrasound images were prospectively collected on adult emergency department patients with dyspnea. Images from the first 124 patients were used for algorithm development. Clips from 80 unique subjects for testing were randomly selected in a predefined proportion of B-lines (0 B-lines, 1-2 B-lines, 3 or more B-lines) and blindly reviewed by five experts using both a manual and reviewer-adjusted process. Intraclass correlation coefficient (ICC) and weighted kappa were used to measure agreement, while an a priori threshold of an ICC (3,k) of 0.75 and precision of 0.3 were used to define adequate performance.

RESULTS

ICC between the algorithm and manual count was 0.84 (95% confidence interval [CI] 0.75-0.90), with a precision of 0.15. ICC between the reviewer-adjusted count and the algorithm count was 0.94 (95% CI 0.90-0.96), and the ICC between the manual and reviewer-adjusted counts was 0.94 (95% CI 0.90-0.96). Weighted kappa was 0.72 (95% CI 0.49-0.95), 0.88 (95% CI 0.74-1), and 0.85 (95% CI 0.89-0.96), respectively.

CONCLUSIONS

This study demonstrates a high correlation between point-of-care ultrasound experts and an automated algorithm to identify and quantify B-lines using an HHUD. Future research may incorporate this HHUD in clinical studies in multiple settings and users of varying experience levels.

摘要

目的

B 线是一种超声伪像,可用于检测多种病理肺部情况。计算机辅助检测和量化 B 线的方法可以通过新手用户来标准化量化并提高诊断准确性。我们旨在测试一种用于手持式超声设备(HHUD)中检测和量化 B 线的自动化算法的性能。

方法

前瞻性地采集了急诊科呼吸困难的成年患者的超声图像。前 124 例患者的图像用于算法开发。以预定的 B 线比例(0 条 B 线、1-2 条 B 线、3 条或更多 B 线)随机选择 80 个独特患者的片段用于测试,并由五名专家使用手动和调整后审阅者两种方法进行盲法评估。使用组内相关系数(ICC)和加权 kappa 来衡量一致性,同时使用 ICC(3,k)的事先阈值为 0.75 和精度为 0.3 来定义足够的性能。

结果

算法与手动计数之间的 ICC 为 0.84(95%置信区间 [CI] 0.75-0.90),精度为 0.15。调整后审阅者计数与算法计数之间的 ICC 为 0.94(95% CI 0.90-0.96),手动计数与调整后审阅者计数之间的 ICC 为 0.94(95% CI 0.90-0.96)。加权 kappa 分别为 0.72(95% CI 0.49-0.95)、0.88(95% CI 0.74-1)和 0.85(95% CI 0.89-0.96)。

结论

这项研究表明,在使用 HHUD 识别和量化 B 线方面,即时护理超声专家与自动化算法之间具有高度相关性。未来的研究可能会在多个环境和不同经验水平的用户中纳入这种 HHUD 进行临床研究。

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