Liu Bilan, Zhu Tong, Zhong Jianhui
Department of Electrical and Computer Engineering, University of Rochester, Rochester, NY, USA.
Department of Imaging Sciences, University of Rochester, Rochester, NY, USA.
Magn Reson Imaging. 2015 Apr;33(3):276-85. doi: 10.1016/j.mri.2014.10.011. Epub 2014 Nov 7.
Image quality of diffusion tensor imaging (DTI) is critical for image interpretation, diagnostic accuracy and efficiency. However, DTI is susceptible to numerous detrimental artifacts that may impair the reliability and validity of the obtained data. Although many quality control (QC) software tools are being developed and are widely used and each has its different tradeoffs, there is still no general agreement on an image quality control routine for DTIs, and the practical impact of these tradeoffs is not well studied. An objective comparison that identifies the pros and cons of each of the QC tools will be helpful for the users to make the best choice among tools for specific DTI applications. This study aims to quantitatively compare the effectiveness of three popular QC tools including DTI studio (Johns Hopkins University), DTIprep (University of North Carolina at Chapel Hill, University of Iowa and University of Utah) and TORTOISE (National Institute of Health). Both synthetic and in vivo human brain data were used to quantify adverse effects of major DTI artifacts to tensor calculation as well as the effectiveness of different QC tools in identifying and correcting these artifacts. The technical basis of each tool was discussed, and the ways in which particular techniques affect the output of each of the tools were analyzed. The different functions and I/O formats that three QC tools provide for building a general DTI processing pipeline and integration with other popular image processing tools were also discussed.
扩散张量成像(DTI)的图像质量对于图像解读、诊断准确性和效率至关重要。然而,DTI容易受到众多有害伪影的影响,这些伪影可能会损害所获数据的可靠性和有效性。尽管许多质量控制(QC)软件工具正在开发并广泛使用,且各有不同的权衡之处,但对于DTI的图像质量控制流程仍未达成普遍共识,而且这些权衡的实际影响也未得到充分研究。对每种QC工具的优缺点进行客观比较,将有助于用户在特定DTI应用的工具中做出最佳选择。本研究旨在定量比较三种流行的QC工具的有效性,包括DTI studio(约翰霍普金斯大学)、DTIprep(北卡罗来纳大学教堂山分校、爱荷华大学和犹他大学)和TORTOISE(美国国立卫生研究院)。合成数据和体内人脑数据均被用于量化主要DTI伪影对张量计算的不利影响,以及不同QC工具在识别和校正这些伪影方面的有效性。讨论了每种工具的技术基础,并分析了特定技术影响每种工具输出的方式。还讨论了三种QC工具为构建通用DTI处理管道以及与其他流行图像处理工具集成而提供的不同功能和输入/输出格式。