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一种支持非专业医生评估间质性肺炎的新型肺部超声自动算法:单中心研究

A Novel Automatic Algorithm to Support Lung Ultrasound Non-Expert Physicians in Interstitial Pneumonia Evaluation: A Single-Center Study.

作者信息

Marozzi Marialuisa Sveva, Cicco Sebastiano, Mancini Francesca, Corvasce Francesco, Lombardi Fiorella Anna, Desantis Vanessa, Loponte Luciana, Giliberti Tiziana, Morelli Claudia Maria, Longo Stefania, Lauletta Gianfranco, Solimando Antonio G, Ria Roberto, Vacca Angelo

机构信息

Unit of Internal Medicine "G. Baccelli", Department of Precision and Regenerative Medicine and Ionian Area (DiMePRe-J), University of Bari Aldo Moro Medical School, 70124 Bari, Italy.

Institute of Clinical Physiology, National Research Council, 73100 Lecce, Italy.

出版信息

Diagnostics (Basel). 2024 Jan 10;14(2):155. doi: 10.3390/diagnostics14020155.

Abstract

INTRODUCTION

Lung ultrasound (LUS) is widely used in clinical practice for identifying interstitial lung diseases (ILDs) and assessing their progression. Although high-resolution computed tomography (HRCT) remains the gold standard for evaluating the severity of ILDs, LUS can be performed as a screening method or as a follow-up tool post-HRCT. Minimum training is needed to better identify typical lesions, and the integration of innovative artificial intelligence (AI) automatic algorithms may enhance diagnostic efficiency.

AIM

This study aims to assess the effectiveness of a novel AI algorithm in automatic ILD recognition and scoring in comparison to an expert LUS sonographer. The "SensUS Lung" device, equipped with an automatic algorithm, was employed for the automatic recognition of the typical ILD patterns and to calculate an index grading of the interstitial involvement.

METHODS

We selected 33 Caucasian patients in follow-up for ILDs exhibiting typical HRCT patterns (honeycombing, ground glass, fibrosis). An expert physician evaluated all patients with LUS on twelve segments (six per side). Next, blinded to the previous evaluation, an untrained operator, a non-expert in LUS, performed the exam with the SensUS device equipped with the automatic algorithm ("SensUS Lung") using the same protocol. Pulmonary functional tests (PFT) and DLCO were conducted for all patients, categorizing them as having reduced or preserved DLCO. The SensUS device indicated different grades of interstitial involvement named Lung Staging that were scored from 0 (absent) to 4 (peak), which was compared to the Lung Ultrasound Score (LUS score) by dividing it by the number of segments evaluated. Statistical analyses were done with Wilcoxon tests for paired values or Mann-Whitney for unpaired samples, and correlations were performed using Spearman analysis; < 0.05 was considered significant.

RESULTS

Lung Staging was non-inferior to LUS score in identifying the risk of ILDs (median SensUS 1 [0-2] vs. LUS 0.67 [0.25-1.54]; = 0.84). Furthermore, the grade of interstitial pulmonary involvement detected with the SensUS device is directly related to the LUS score (r = 0.607, = 0.002). Lung Staging values were inversely correlated with forced expiratory volume at first second (FEV1%, r = -0.40, = 0.027), forced vital capacity (FVC%, r = -0.39, = 0.03) and forced expiratory flow (FEF) at 25th percentile (FEF25%, r = -0.39, = 0.02) while results directly correlated with FEF25-75% (r = 0.45, = 0.04) and FEF75% (r = 0.43, = 0.01). Finally, in patients with reduced DLCO, the Lung Staging was significantly higher, overlapping the LUS (reduced median 1 [1-2] vs. preserved 0 [0-1], = 0.001), and overlapping the LUS (reduced median 18 [4-20] vs. preserved 5.5 [2-9], = 0.035).

CONCLUSIONS

Our data suggest that the considered AI automatic algorithm may assist non-expert physicians in LUS, resulting in non-inferior-to-expert LUS despite a tendency to overestimate ILD lesions. Therefore, the AI algorithm has the potential to support physicians, particularly non-expert LUS sonographers, in daily clinical practice to monitor patients with ILDs. The adopted device is user-friendly, offering a fully automatic real-time analysis. However, it needs proper training in basic skills.

摘要

引言

肺部超声(LUS)在临床实践中被广泛用于识别间质性肺疾病(ILDs)并评估其进展。尽管高分辨率计算机断层扫描(HRCT)仍然是评估ILDs严重程度的金标准,但LUS可作为一种筛查方法或HRCT后的随访工具。只需最少的培训就能更好地识别典型病变,而创新人工智能(AI)自动算法的整合可能会提高诊断效率。

目的

本研究旨在评估一种新型AI算法与LUS专家超声医师相比在自动识别ILDs和评分方面的有效性。配备自动算法的“SensUS Lung”设备用于自动识别典型的ILD模式并计算间质受累的指数分级。

方法

我们选择了33例接受ILDs随访的白种人患者,他们表现出典型的HRCT模式(蜂窝状、磨玻璃影、纤维化)。一位专家医师对所有患者的12个肺段(每侧6个)进行LUS评估。接下来,在不知道先前评估结果的情况下,一名未经培训的操作人员(一名LUS非专家)使用配备自动算法的“SensUS Lung”设备按照相同方案进行检查。对所有患者进行肺功能测试(PFT)和一氧化碳弥散量(DLCO)检测,并将他们分为DLCO降低或保留组。SensUS设备显示出不同等级的间质受累,称为肺分期,从0(无)到4(峰值)进行评分,并将其与肺超声评分(LUS评分)进行比较,方法是将LUS评分除以评估的肺段数。采用Wilcoxon配对检验或Mann-Whitney非配对样本检验进行统计分析,并使用Spearman分析进行相关性分析;P<0.05被认为具有统计学意义。

结果

在识别ILDs风险方面,肺分期不劣于LUS评分(SensUS中位数1[0 - 2] vs. LUS 0.67[0.25 - 1.54];P = 0.84)。此外,SensUS设备检测到的间质肺受累程度与LUS评分直接相关(r = 0.607,P = 0.002)。肺分期值与第1秒用力呼气量(FEV1%,r = -0.40,P = 0.027)、用力肺活量(FVC%,r = -0.39,P = 0.03)和第25百分位数的用力呼气流量(FEF)(FEF25%,r = -0.39,P = 0.02)呈负相关,而与FEF25 - 75%(r = 0.45,P = 0.04)和FEF75%(r = 0.43,P = 0.01)呈正相关。最后,在DLCO降低的患者中,肺分期显著更高,与LUS重叠(降低组中位数1[1 - 2] vs. 保留组0[0 - 1],P =

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a7dd/10814651/d83e04ecc7e3/diagnostics-14-00155-g001.jpg

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