Suppr超能文献

B线定量分析:比较在人工智能技术辅助下进行肺部超声检查的新手学习者与专家评估。

B-line quantification: comparing learners novice to lung ultrasound assisted by machine artificial intelligence technology to expert review.

作者信息

Russell Frances M, Ehrman Robert R, Barton Allen, Sarmiento Elisa, Ottenhoff Jakob E, Nti Benjamin K

机构信息

Department of Emergency Medicine, Indiana University School of Medicine, 720 Eskenazi Ave, FOB 3rd Floor, Indianapolis, IN, 46202, USA.

Department of Emergency Medicine, Wayne State University School of Medicine, 4021 St Antoine Ave, Suite 6G, Detroit, MI, 48201, USA.

出版信息

Ultrasound J. 2021 Jun 30;13(1):33. doi: 10.1186/s13089-021-00234-6.

Abstract

BACKGROUND

The goal of this study was to assess the ability of machine artificial intelligence (AI) to quantitatively assess lung ultrasound (LUS) B-line presence using images obtained by learners novice to LUS in patients with acute heart failure (AHF), compared to expert interpretation.

METHODS

This was a prospective, multicenter observational study conducted at two urban academic institutions. Learners novice to LUS completed a 30-min training session on lung image acquisition which included lecture and hands-on patient scanning. Learners independently acquired images on patients with suspected AHF. Automatic B-line quantification was obtained offline after completion of the study. Machine AI counted the maximum number of B-lines visualized during a clip. The criterion standard for B-line counts was semi-quantitative analysis by a blinded point-of-care LUS expert reviewer. Image quality was blindly determined by an expert reviewer. A second expert reviewer blindly determined B-line counts and image quality. Intraclass correlation was used to determine agreement between machine AI and expert, and expert to expert.

RESULTS

Fifty-one novice learners completed 87 scans on 29 patients. We analyzed data from 611 lung zones. The overall intraclass correlation for agreement between novice learner images post-processed with AI technology and expert review was 0.56 (confidence interval [CI] 0.51-0.62), and 0.82 (CI 0.73-0.91) between experts. Median image quality was 4 (on a 5-point scale), and correlation between experts for quality assessment was 0.65 (CI 0.48-0.82).

CONCLUSION

After a short training session, novice learners were able to obtain high-quality images. When the AI deep learning algorithm was applied to those images, it quantified B-lines with moderate-to-fair correlation as compared to semi-quantitative analysis by expert review. This data shows promise, but further development is needed before widespread clinical use.

摘要

背景

本研究的目的是评估机器人工智能(AI)使用急性心力衰竭(AHF)患者的肺部超声(LUS)初学者所获取的图像来定量评估LUS B线存在情况的能力,并与专家解读进行比较。

方法

这是一项在两家城市学术机构进行的前瞻性、多中心观察性研究。LUS初学者完成了一次30分钟的肺部图像采集培训课程,包括讲座和实际患者扫描。学习者独立获取疑似AHF患者的图像。研究结束后离线获得自动B线定量结果。机器AI计算片段中可视化的B线最大数量。B线计数的标准对照是由一位盲法即时超声专家审阅者进行的半定量分析。图像质量由一位专家审阅者盲法确定。另一位专家审阅者盲法确定B线计数和图像质量。组内相关系数用于确定机器AI与专家之间以及专家与专家之间的一致性。

结果

51名初学者对29例患者完成了87次扫描。我们分析了611个肺区的数据。使用AI技术后处理的初学者图像与专家审阅之间的总体组内相关系数为0.56(置信区间[CI] 0.51 - 0.62),专家之间为0.82(CI 0.73 - 0.91)。图像质量中位数为4(5分制),专家之间质量评估的相关系数为0.65(CI 0.48 - 0.82)。

结论

经过简短培训课程后,初学者能够获得高质量图像。当将AI深度学习算法应用于这些图像时,与专家审阅的半定量分析相比,它对B线的定量具有中等至一般的相关性。这些数据显示出了前景,但在广泛临床应用之前还需要进一步发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2678/8245599/9360bbbe3a54/13089_2021_234_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验