Distinguishing Iron and Calcium using MARS Spectral CT

2018 IEEE NUCLEAR SCIENCE SYMPOSIUM AND MEDICAL IMAGING CONFERENCE PROCEEDINGS (NSS/MIC)(2018)

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摘要
This study aims to demonstrate that spectral CT imaging can identify and quantify inflammatory components of unstable plaque such as iron, calcium and lipid in phantoms and excised human atherosclerotic plaques. Spectral CT acquisition protocol was optimised using the MARS spectral scanner. A phantom with multiple concentrations of ferric nitrate (25, 50, 100, 200 and 400 mg/ml), hydroxyapatite (104.3, 402.3, and 603.3 mg/cm 3 ), iodine (9 and 18 mg/ml), lipid and water was scanned followed by blood clots and excised human plaques using energy thresholds 20, 28, 36 and 44 keV at 80 kVp, 55 μA tube current and 100 ms exposure time. CT images were reconstructed in narrow energy bins. Differences in linear attenuation coefficients between different concentrations of ferric nitrate and hydroxyapatite were compared using the receiver operating characteristic (ROC) curve and considered successful if AUC≥0.8. Differentiation between iron and calcium was successful at 400 mg/ml ferric nitrate and 100 mg/ml hydroxyapatite (AUC≥0.9; 99% correct material identification). The optimised calibrations were implemented in blood clots and plaque scans, which successfully identified iron signal within the clots, and areas of intraplaque haemorrhage and calcification in the carotid plaque specimens.
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tube current,linear attenuation coefficients,ROC curve,optimised calibrations,intraplaque haemorrhage,calcification,energy thresholds,lipid,iodine,hydroxyapatite,ferric nitrate,MARS spectral CT,CT image reconstruction,exposure time,unstable plaque,inflammatory components,spectral CT imaging,carotid plaque specimens,iron signal,plaque scans,calcium,receiver operating characteristic curve,narrow energy bins,excised human plaques,blood clots,multiple concentrations,MARS spectral scanner,spectral CT acquisition protocol,excised human atherosclerotic plaques,phantom,electron volt energy 20.0 keV,electron volt energy 28.0 keV,electron volt energy 36.0 keV,electron volt energy 44.0 keV,time 100.0 ms,current 55.0 muA
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