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Modelling Airway Geometry as Stock Market Data Using Bayesian Changepoint Detection

机译:使用贝叶斯变化点检测将气道几何建模为股市数据

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摘要

Numerous lung diseases, such as idiopathic pulmonary fibrosis (IPF), exhibit dilation of the airways. Accurate measurement of dilatation enables assessment of the progression of disease. Unfortunately the combination of image noise and airway bifurcations causes high variability in the profiles of cross-sectional areas, rendering the identification of affected regions very difficult. Here we introduce a noise-robust method for automatically detecting the location of progressive airway dilatation given two profiles of the same airway acquired at different time points. We propose a probabilistic model of abrupt relative variations between profiles and perform inference via Reversible Jump Markov Chain Monte Carlo sampling. We demonstrate the efficacy of the proposed method on two datasets; (ⅰ) images of healthy airways with simulated dilatation; (ⅱ) pairs of real images of IPF-afFected airways acquired at 1 year intervals. Our model is able to detect the starting location of airway dilatation with an accuracy of 2.5 mm on simulated data. The experiments on the IPF dataset display reasonable agreement with radiologists. We can compute a relative change in airway volume that may be useful for quantifying IPF disease progression.
机译:许多肺部疾病,例如特发性肺纤维化(IPF),表现为气道扩张。准确测量扩张程度可以评估疾病的进展。不幸的是,图像噪声和气道分叉的结合导致横截面轮廓的高度变化,从而很难识别受影响的区域。在这里,我们介绍了一种噪声鲁棒性方法,该方法可在给定的同一气道在不同时间点获取的两个剖面的情况下,自动检测进行性气道扩张的位置。我们提出了配置文件之间的突然相对变化的概率模型,并通过可逆跳转马尔可夫链蒙特卡洛采样执行推理。我们在两个数据集上证明了该方法的有效性。 (ⅰ)具有模拟扩张的健康气道图像; (ⅱ)每隔1年获取的一对受IPF影响的气道的真实图像。我们的模型能够在模拟数据上以2.5 mm的精度检测气道扩张的起始位置。 IPF数据集上的实验与放射科医生显示出合理的共识。我们可以计算出气道容积的相对变化,这可能有助于量化IPF疾病进展。

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