Utilising computer vision artificial intelligence to identify defects in airway ciliary motility and mucociliary clearance

IF 0.7 Q3 MEDICINE, GENERAL & INTERNAL
Mathieu Bottier, Andreia Lucia Do Nascimento Pinto, Emily Howieson, Britt J Van Akker, Oliver Hamilton, Ioannis Katramados, Jane Davies, Amelia Shoemark, Claire Hogg, Thomas Burgoyne
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引用次数: 0

Abstract

Mucociliary clearance is an essential defence mechanism against chronic airway infection and inflammation. Defects in ciliary motility are either primary, as in primary ciliary dyskinesia (PCD), or secondary. Identification of mucociliary clearance defects allows the implementation of appropriate management. High-speed video-microscopy (HSVM) is used to assess cilia motility from nasal biopsy samples. It is a time consuming and subjective requiring significant expertise. Computer vision can improve the identification of cilia motility defects by minimising subjectivity and reducing the cost and time to analyse samples. Using an artificial intelligence platform (Intel® Geti™), we have trained several models using archived HSVM videos from patients referred to the Royal Brompton Hospital who were diagnosed with PCD and display a range of ciliary motility phenotypes and non-PCD controls. The videos used are converted to optical flow to provide temporal information to the machine learning algorithm. We are training the platform to classify different categories of beat pattern: Immotile, Normal, Reduced Amplitude and Rotation. Models also include assessing sample quality and cilia beating orientation. The preliminary data based on projects currently in development are promising: the model classifying normal beating vs immotile cilia (around 30,000 frames) has a predictive accuracy of 100% and the beat pattern recognition model (around 25,000 frames) has a predictive accuracy of 97%. Further training and testing are ongoing, and more models are being developed to include a greater range of motility phenotypes and to encompass chronic inflammatory lung diseases.
利用计算机视觉人工智能识别气道纤毛运动和纤毛粘液清除缺陷
纤毛粘膜清除是抵抗慢性气道感染和炎症的重要防御机制。纤毛运动障碍可以是原发性的,如原发性纤毛运动障碍(PCD),也可以是继发性的。鉴别纤毛粘液清除缺陷可以实施适当的管理。高速视频显微镜(HSVM)用于评估纤毛运动性从鼻活检样本。这是一个耗时且主观的过程,需要大量的专业知识。计算机视觉可以通过最小化主观性和减少分析样本的成本和时间来提高纤毛运动性缺陷的识别。使用人工智能平台(Intel®Geti™),我们使用来自皇家布朗普顿医院诊断为PCD的患者的存档HSVM视频训练了几个模型,这些患者显示出一系列纤毛运动表型和非PCD对照。使用的视频被转换成光流,为机器学习算法提供时间信息。我们正在训练平台对不同类型的节拍模式进行分类:静止、正常、减少振幅和旋转。模型还包括评估样品质量和纤毛跳动方向。基于目前正在开发的项目的初步数据是有希望的:对正常跳动和不动纤毛(约30,000帧)进行分类的模型预测准确率为100%,而跳动模式识别模型(约25,000帧)的预测准确率为97%。正在进行进一步的培训和测试,并正在开发更多的模型,以包括更大范围的运动表型,并包括慢性炎症性肺病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Imaging
Imaging MEDICINE, GENERAL & INTERNAL-
CiteScore
0.70
自引率
25.00%
发文量
6
审稿时长
7 weeks
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