Effect of tube current on computed tomography radiomic features

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作者
Dennis Mackin
Rachel Ger
Cristina Dodge
Xenia Fave
Pai-Chun Chi
Lifei Zhang
Jinzhong Yang
Steve Bache
Charles Dodge
A. Kyle Jones
Laurence Court
机构
[1] The University of Texas MD Anderson Cancer Center,Department of Radiation Physics
[2] The University of Texas Health Science Center at Houston,Graduate School of Biomedical Sciences
[3] Texas Children’s Hospital,Department of Radiology
[4] The University of Texas MD Anderson Cancer Center,Department of Imaging Physics
[5] Houston Methodist Hospital,Imaging Physics
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Scientific Reports | / 8卷
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摘要
Variability in the x-ray tube current used in computed tomography may affect quantitative features extracted from the images. To investigate these effects, we scanned the Credence Cartridge Radiomics phantom 12 times, varying the tube current from 25 to 300 mA∙s while keeping the other acquisition parameters constant. For each of the scans, we extracted 48 radiomic features from the categories of intensity histogram (n = 10), gray-level run length matrix (n = 11), gray-level co-occurrence matrix (n = 22), and neighborhood gray tone difference matrix (n = 5). To gauge the size of the tube current effects, we scaled the features by the coefficient of variation of the corresponding features extracted from images of non-small cell lung cancer tumors. Variations in the tube current had more effect on features extracted from homogeneous materials (acrylic, sycamore wood) than from materials with more tissue-like textures (cork, rubber particles). Thirty-eight of the 48 features extracted from acrylic were affected by current reductions compared with only 2 of the 48 features extracted from rubber particles. These results indicate that variable x-ray tube current is unlikely to have a large effect on radiomic features extracted from computed tomography images of textured objects such as tumors.
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