| Literature DB >> 31750077 |
Brian E Vestal1,2, Nichole E Carlson2, Raúl San José Estépar3, Tasha Fingerlin1, Debashis Ghosh2, Katerina Kechris2, David Lynch4.
Abstract
Pulmonary emphysema is a destructive disease of the lungs that is currently diagnosed via visual assessment of lung Computed Tomography (CT) scans by a radiologist. Visual assessment can have poor inter-rater reliability, is time consuming, and requires access to trained assessors. Quantitative methods that reliably summarize the biologically relevant characteristics of an image are needed to improve the way lung diseases are characterized. The goal of this work was to show how spatial point process models can be used to create a set of radiologically derived quantitative lung biomarkers of emphysema. We formalized a general framework for applying spatial point processes to lung CT scans, and developed a Shot Noise Cox Process to quantify how radiologically based emphysematous tissue clusters into larger structures. Bayesian estimation of model parameters was done using spatial Birth-Death MCMC (BD-MCMC). In simulations, we showed the BD-MCMC estimation algorithm is able to accurately recover model parameters. In an application to real lung CT scans from the COPDGene cohort, we showed variability in the clustering characteristics of emphysematous tissue across disease subtypes that were based on visual assessments of the CT scans.Entities:
Keywords: Birth–death MCMC; COPD; Cox cluster process; Emphysema
Year: 2018 PMID: 31750077 PMCID: PMC6867806 DOI: 10.1016/j.spasta.2018.12.003
Source DB: PubMed Journal: Spat Stat