Houdeville Charles, Leenhardt Romain, Souchaud Marc, Velut Guillaume, Carbonell Nicolas, Nion-Larmurier Isabelle, Nuzzo Alexandre, Histace Aymeric, Marteau Philippe, Dray Xavier
Sorbonne University, Center for Digestive Endoscopy, Saint-Antoine Hospital, APHP, 75012 Paris, France.
Équipes Traitement de l'Information et Systèmes, ETIS UMR 8051, CY Paris Cergy University, ENSEA, CNRS, 95000 Cergy, France.
J Clin Med. 2022 May 17;11(10):2822. doi: 10.3390/jcm11102822.
Background: Bubbles often mask the mucosa during capsule endoscopy (CE). Clinical scores assessing the cleanliness and the amount of bubbles in the small bowel (SB) are poorly reproducible unlike machine learning (ML) solutions. We aimed to measure the amount of bubbles with ML algorithms in SB CE recordings, and compare two polyethylene glycol (PEG)-based preparations, with and without simethicone, in patients with obscure gastro-intestinal bleeding (OGIB). Patients & Methods: All consecutive outpatients with OGIB from a tertiary care center received a PEG-based preparation, without or with simethicone, in two different periods. The primary outcome was a difference in the proportions (%) of frames with abundant bubbles (>10%) along the full-length video sequences between the two periods. SB CE recordings were analyzed by a validated computed algorithm based on a grey-level of co-occurrence matrix (GLCM), to assess the abundance of bubbles in each frame. Results: In total, 105 third generation SB CE recordings were analyzed (48 without simethicone and 57 with simethicone-added preparations). A significant association was shown between the use of a simethicone-added preparation and a lower abundance of bubbles along the SB (p = 0.04). A significantly lower proportion of “abundant in bubbles” frames was observed in the fourth quartile (30.5% vs. 20.6%, p = 0.02). There was no significant impact of the use of simethicone in terms of diagnostic yield, SB transit time and completion rate. Conclusion: An accurate and reproducible computed algorithm demonstrated significant decrease in the abundance of bubbles along SB CE recordings, with a marked effect in the last quartile, in patients for whom simethicone had been added in PEG-based preparations, compared to those without simethicone.
在胶囊内镜检查(CE)期间,气泡常常会掩盖黏膜。与机器学习(ML)解决方案不同,评估小肠(SB)中气泡清洁度和数量的临床评分重复性较差。我们旨在使用ML算法测量SB CE记录中的气泡数量,并比较两种含或不含西甲硅油的聚乙二醇(PEG)制剂对不明原因消化道出血(OGIB)患者的影响。
一家三级医疗中心的所有连续门诊OGIB患者在两个不同时期接受了含或不含西甲硅油的PEG制剂。主要结局是两个时期全长视频序列中气泡丰富(>10%)的帧比例(%)的差异。通过基于灰度共生矩阵(GLCM)的经过验证的计算算法分析SB CE记录,以评估每一帧中气泡的丰富程度。
总共分析了105份第三代SB CE记录(48份未使用西甲硅油,57份使用了添加西甲硅油的制剂)。结果显示,使用添加西甲硅油的制剂与SB中较低的气泡丰富程度之间存在显著关联(p = 0.04)。在第四个四分位数中,观察到“气泡丰富”帧的比例显著降低(30.5%对20.6%,p = 0.02)。在诊断率、SB通过时间和完成率方面,使用西甲硅油没有显著影响。
与未添加西甲硅油的患者相比,对于在PEG制剂中添加了西甲硅油的患者,一种准确且可重复的计算算法显示SB CE记录中气泡的丰富程度显著降低,在最后一个四分位数中有显著效果。