Raut Pranali, Chen Yuxin, Taleb Ahmad, Bonte Merlijn, Andrinopoulou Eleni Rosalina, Ciet Pierluigi, Charbonnier Jean-Paul, Wainwright Claire E, Tiddens Harm, Caudri Daan
Department of Pediatric Pulmonology and Allergology, Erasmus MC -Sophia Children's Hospital, Rotterdam, The Netherlands; Department of Radiology and Nuclear Medicine, Erasmus MC -Sophia Children's Hospital, Rotterdam, The Netherlands.
Department of Pediatric Pulmonology and Allergology, Erasmus MC -Sophia Children's Hospital, Rotterdam, The Netherlands; Department of Radiology and Nuclear Medicine, Erasmus MC -Sophia Children's Hospital, Rotterdam, The Netherlands.
J Cyst Fibros. 2025 Sep;24(5):970-978. doi: 10.1016/j.jcf.2025.08.003. Epub 2025 Aug 21.
PRAGMA-CF is a clinically validated visual chest CT scoring method, quantifying relevant components of structural airway damage in CF. We aimed to validate a newly developed AI-based automated PRAGMA-AI and Mucus Plugging algorithm using the visual PRAGMA-CF as reference.
The study included 363 retrospective chest CT's of 178 CF patients (100 New-Zealand and Australian, 78 Dutch) with at least one inspiratory CT matching the image selection criteria. Eligible CT scans were analyzed using visual PRAGMA-CF, automated PRAGMA-AI and Mucus Plugging algorithm. Outcomes were compared using descriptive statistics, correlation, intra- and interclass correlation and Bland-Altman plots. Sensitivity analyses evaluated the impact of disease severity, study cohort, number of slices and convolution kernel (soft vs. hard).
The algorithm successfully analyzed 353 (97 %) CT scans. A strong correlation between the methods was found for %bronchiectasis ( %BE) and %disease ( %DIS), but weak for %Airway wall thickening ( %AWT). The automated Mucus plugging outcomes showed strong correlation with visual %mucus plugging ( %MP). ICC's between visual and automated sub-scores witnessed average agreement for %BE and %DIS, except for %AWT which was weak. Sensitivity analyses revealed that convolution kernel did not affect the correlation between visual and automated outcomes, but harder kernels yielded lower disease scores, especially for %BE and %AWT.
Our results show that AI-derived outcomes are not identical to visual PRAGMA-CF scores in size, but strongly correlated on measures of bronchiectasis, bronchial-disease and mucus plugging. They could therefore be a promising alternative for time-consuming visual scoring, especially in larger studies.
PRAGMA-CF是一种经过临床验证的胸部CT视觉评分方法,用于量化囊性纤维化(CF)中结构性气道损伤的相关成分。我们旨在以视觉PRAGMA-CF为参考,验证一种新开发的基于人工智能的自动化PRAGMA-AI和黏液堵塞算法。
本研究纳入了178例CF患者的363份回顾性胸部CT(100例来自新西兰和澳大利亚,78例来自荷兰),其中至少有一份吸气期CT符合图像选择标准。使用视觉PRAGMA-CF、自动化PRAGMA-AI和黏液堵塞算法对符合条件的CT扫描进行分析。使用描述性统计、相关性、组内和组间相关性以及Bland-Altman图对结果进行比较。敏感性分析评估了疾病严重程度、研究队列、切片数量和卷积核(软组织与硬组织)的影响。
该算法成功分析了353份(97%)CT扫描。发现这些方法在支气管扩张百分比(%BE)和疾病百分比(%DIS)方面有很强的相关性,但在气道壁增厚百分比(%AWT)方面相关性较弱。自动化黏液堵塞结果与视觉黏液堵塞百分比(%MP)显示出很强的相关性。视觉和自动化子评分之间的组内相关系数显示,除%AWT较弱外,%BE和%DIS的一致性为中等。敏感性分析表明,卷积核对视觉和自动化结果之间的相关性没有影响,但更硬的卷积核会产生更低的疾病评分,尤其是对于%BE和%AWT。
我们的结果表明,人工智能得出的结果在数值上与视觉PRAGMA-CF评分并不相同,但在支气管扩张、支气管疾病和黏液堵塞的测量方面有很强的相关性。因此,它们可能是耗时的视觉评分的一个有前景的替代方法,特别是在更大规模的研究中。