建立七种肺部超声表型:对肺部超声登记处的回顾性观察研究。

IF 2.6 3区 医学 Q2 RESPIRATORY SYSTEM
Qian Wang, Tongjuan Zou, Xueying Zeng, Ting Bao, Wanhong Yin
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引用次数: 0

摘要

背景:肺表型已被广泛用于评估肺损伤和指导精确治疗。然而,目前的表型评估方法依赖于 CT 扫描和其他技术。虽然肺部超声(LUS)被广泛应用于危重病人,但目前还缺乏基于临床数据的全面、系统的肺部超声表型鉴定及其临床价值评估:我们的研究基于回顾性数据库。方法:我们的研究基于回顾性数据库,从 2019 年 9 月至 2020 年 10 月共纳入 821 例患者。在此期间进行了 1902 次 LUS 检查。一组专家使用 55 例 LUS 检查数据集,重点关注肺损伤,并根据临床实践、专家经验和讲座回顾,开发了一种 LUS 表型分类算法。该算法通过另外 140 张 LUS 图像进行了验证和改进,经过五次反复修订,产生了 1902 种不同的 LUS 表型。随后,对这些表型应用了经过验证的机器学习算法。为了评估该算法的有效性,专家们对 30% 的表型进行了人工验证,从而确认了该算法的有效性。利用 K-均值聚类分析和专家从 1902 例 LUS 检查中选择的图像,我们确定了七种不同的 LUS 表型。为了进一步探讨这些表型对临床诊断的诊断价值,我们研究了它们的辅助诊断能力:结果:我们随机抽取了 30% 的 LUS 表型,共测试了 1902 个 LUS 表型,以验证表型的准确性。通过统计K-均值聚类分析和专家筛选,在1902个LUS表型中建立了7个肺部超声表型。急性呼吸窘迫综合征(ARDS)表现为重力依赖表型,而心源性肺水肿表现为非重力表型。821 名患者的基线特征包括年龄(66.14 ± 11.76)、性别(560/321)、心率(96.99 ± 23.75)、平均动脉压(86.5 ± 13.57)、急性生理学和慢性健康评价 II(APACHE II)评分(20.49 ± 8.60)和重症监护室住院时间(24.50 ± 26.22);在 821 名患者中,78.8% 的患者治愈。在重症肺炎患者中,重力依赖表型占 42%,而非重力依赖表型占 58%。这些发现凸显了在各种诊断中应用不同 LUS 表型的价值:结论:通过对回顾性数据进行机器学习分析,建立了七组 LUS 表型;这些表型可代表不同类型危重症患者的典型特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Establishment of seven lung ultrasound phenotypes: a retrospective observational study of an LUS registry.

Background: Lung phenotypes have been extensively utilized to assess lung injury and guide precise treatment. However, current phenotypic evaluation methods rely on CT scans and other techniques. Although lung ultrasound (LUS) is widely employed in critically ill patients, there is a lack of comprehensive and systematic identification of LUS phenotypes based on clinical data and assessment of their clinical value.

Methods: Our study was based on a retrospective database. A total of 821 patients were included from September 2019 to October 2020. 1902 LUS examinations were performed in this period. Using a dataset of 55 LUS examinations focused on lung injuries, a group of experts developed an algorithm for classifying LUS phenotypes based on clinical practice, expert experience, and lecture review. This algorithm underwent validation and refinement with an additional 140 LUS images, leading to five iterative revisions and the generation of 1902 distinct LUS phenotypes. Subsequently, a validated machine learning algorithm was applied to these phenotypes. To assess the algorithm's effectiveness, experts manually verified 30% of the phenotypes, confirming its efficacy. Using K-means cluster analysis and expert image selection from the 1902 LUS examinations, we established seven distinct LUS phenotypes. To further explore the diagnostic value of these phenotypes for clinical diagnosis, we investigated their auxiliary diagnostic capabilities.

Results: A total of 1902 LUS phenotypes were tested by randomly selecting 30% to verify the phenotypic accuracy. With the 1902 LUS phenotypes, seven lung ultrasound phenotypes were established through statistical K-means cluster analysis and expert screening. The acute respiratory distress syndrome (ARDS) exhibited gravity-dependent phenotypes, while the cardiogenic pulmonary edema exhibited nongravity phenotypes. The baseline characteristics of the 821 patients included age (66.14 ± 11.76), sex (560/321), heart rate (96.99 ± 23.75), mean arterial pressure (86.5 ± 13.57), Acute Physiology and Chronic Health Evaluation II (APACHE II)score (20.49 ± 8.60), and duration of ICU stay (24.50 ± 26.22); among the 821 patients, 78.8% were cured. In severe pneumonia patients, the gravity-dependent phenotype accounted for 42% of the cases, whereas the nongravity-dependent phenotype constituted 58%. These findings highlight the value of applying different LUS phenotypes in various diagnoses.

Conclusions: Seven sets of LUS phenotypes were established through machine learning analysis of retrospective data; these phenotypes could represent the typical characteristics of patients with different types of critical illness.

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来源期刊
BMC Pulmonary Medicine
BMC Pulmonary Medicine RESPIRATORY SYSTEM-
CiteScore
4.40
自引率
3.20%
发文量
423
审稿时长
6-12 weeks
期刊介绍: BMC Pulmonary Medicine is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of pulmonary and associated disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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