TY - JOUR
T1 - Automated assessment of the quality of diffusion tensor imaging data using color cast of color-encoded fractional anisotropy images
AU - He, Xiaofu
AU - Liu, Wei
AU - Li, Xuzhou
AU - Li, Qingli
AU - Liu, Feng
AU - Rauh, Virginia A.
AU - Yin, Dazhi
AU - Bansal, Ravi
AU - Duan, Yunsuo
AU - Kangarlu, Alayar
AU - Peterson, Bradley S.
AU - Xu, Dongrong
PY - 2014/6
Y1 - 2014/6
N2 - Diffusion tensor imaging (DTI) data often suffer from artifacts caused by motion. These artifacts are especially severe in DTI data from infants, and implementing tight quality controls is therefore imperative for DTI studies of infants. Currently, routine procedures for quality assurance of DTI data involve the slice-wise visual inspection of color-encoded, fractional anisotropy (CFA) images. Such procedures often yield inconsistent results across different data sets, across different operators who are examining those data sets, and sometimes even across time when the same operator inspects the same data set on two different occasions. We propose a more consistent, reliable, and effective method to evaluate the quality of CFA images automatically using their color cast, which is calculated on the distribution statistics of the 2D histogram in the color space as defined by the International Commission on Illumination (CIE) on lightness and a and b (LAB) for the color-opponent dimensions (also known as the CIELAB color space) of the images. Experimental results using DTI data acquired from neonates verified that this proposed method is rapid and accurate. The method thus provides a new tool for real-time quality assurance for DTI data.
AB - Diffusion tensor imaging (DTI) data often suffer from artifacts caused by motion. These artifacts are especially severe in DTI data from infants, and implementing tight quality controls is therefore imperative for DTI studies of infants. Currently, routine procedures for quality assurance of DTI data involve the slice-wise visual inspection of color-encoded, fractional anisotropy (CFA) images. Such procedures often yield inconsistent results across different data sets, across different operators who are examining those data sets, and sometimes even across time when the same operator inspects the same data set on two different occasions. We propose a more consistent, reliable, and effective method to evaluate the quality of CFA images automatically using their color cast, which is calculated on the distribution statistics of the 2D histogram in the color space as defined by the International Commission on Illumination (CIE) on lightness and a and b (LAB) for the color-opponent dimensions (also known as the CIELAB color space) of the images. Experimental results using DTI data acquired from neonates verified that this proposed method is rapid and accurate. The method thus provides a new tool for real-time quality assurance for DTI data.
KW - CIELAB color space
KW - Color-encoded fractional anisotropy (CFA)
KW - Diffusion tensor imaging (DTI)
KW - Quality assessment
UR - https://www.scopus.com/pages/publications/84899095353
U2 - 10.1016/j.mri.2014.01.013
DO - 10.1016/j.mri.2014.01.013
M3 - 文章
C2 - 24637081
AN - SCOPUS:84899095353
SN - 0730-725X
VL - 32
SP - 446
EP - 456
JO - Magnetic Resonance Imaging
JF - Magnetic Resonance Imaging
IS - 5
ER -