Abstract

BackgroundThe amount of inhomogeneities in a 99mTc Technegas single-photon emission computed tomography (SPECT) lung image, caused by reduced ventilation in lung regions affected by chronic obstructive pulmonary disease (COPD), is correlated to disease advancement. A quantitative analysis method, the CVT method, measuring these inhomogeneities was proposed in earlier work. To detect mild COPD, which is a difficult task, optimised parameter values are needed.MethodsIn this work, the CVT method was optimised with respect to the parameter values of acquisition, reconstruction and analysis. The ordered subset expectation maximisation (OSEM) algorithm was used for reconstructing the lung SPECT images. As a first step towards clinical application of the CVT method in detecting mild COPD, this study was based on simulated SPECT images of an advanced anthropomorphic lung software phantom including respiratory and cardiac motion, where the mild COPD lung had an overall ventilation reduction of 5%.ResultsThe best separation between healthy and mild COPD lung images as determined using the CVT measure of ventilation inhomogeneity and 125 MBq 99mTc was obtained using a low-energy high-resolution collimator (LEHR) and a power 6 Butterworth post-filter with a cutoff frequency of 0.6 to 0.7 cm−1. Sixty-four reconstruction updates and a small kernel size should be used when the whole lung is analysed, and for the reduced lung a greater number of updates and a larger kernel size are needed.ConclusionsA LEHR collimator and 125 99mTc MBq together with an optimal combination of cutoff frequency, number of updates and kernel size, gave the best result. Suboptimal selections of either cutoff frequency, number of updates and kernel size will reduce the imaging system’s ability to detect mild COPD in the lung phantom.

Highlights

  • The amount of inhomogeneities in a 99mTc Technegas single-photon emission computed tomography (SPECT) lung image, caused by reduced ventilation in lung regions affected by chronic obstructive pulmonary disease (COPD), is correlated to disease advancement

  • We have previously presented the quantitative CV threshold value (CVT) method [3,4] which measures inhomogeneities in lung SPECT images

  • The purpose of the CVT method is to discriminate between activity distributions in the lungs of Norberg et al EJNMMI Research (2015) 5:16 healthy subjects and subjects with mild COPD

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Summary

Introduction

The amount of inhomogeneities in a 99mTc Technegas single-photon emission computed tomography (SPECT) lung image, caused by reduced ventilation in lung regions affected by chronic obstructive pulmonary disease (COPD), is correlated to disease advancement. To detect mild COPD, which is a difficult task, optimised parameter values are needed. We have previously presented the quantitative CVT method [3,4] which measures inhomogeneities in lung SPECT images. The purpose of the CVT method is to discriminate between activity distributions in the lungs of Norberg et al EJNMMI Research (2015) 5:16 healthy subjects and subjects with mild COPD. The proportion of high CV values increases with disease advancement (increased heterogeneity of the activity distribution). The AUC(CVT), the area under the density curve (AUC) for CV values greater than CVT, is calculated for both healthy subjects and subjects with COPD. Since identifying mild lung function reduction is a very difficult task for the SPECT system in a clinical context, it is important that the parameter values used are optimised

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