首页> 外文会议>2016 12th International Conference on Natural Computation, Fuzzy Systems and Knowledge Discovery >The optimized fractional anisotropy and apparent diffusion coefficient threshold in fiber tracking of pelvic floor muscles
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The optimized fractional anisotropy and apparent diffusion coefficient threshold in fiber tracking of pelvic floor muscles

机译:骨盆底肌纤维追踪中的最优分数各向异性和表观扩散系数阈值

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This study aims at finding optimal threshold in diffusion tensor tractography (DTT) of pelvic floor muscles. Twenty healthy adults (ten males and ten females) were included in this study. Conventional MRI sequences(T1WI, FSE-T2WI) and diffusion Tensor Imaging (DTI) were acquired in GE Signa HDxt 3.0T MRI. Then the DTI were post-processed in ADW4.5 workstation. Levator ani muscle, coccygeus and obturtor internus were chosen as seeds to track fibres by regulating different fractional anisotropy (FA) and apparent diffusion coefficient (ADC) threshold. DTT of fiber tracking under FA threshold by every 0.03 from 0.10 to 0.25 and under ADC threshold by every 0.0002 from 0.0015 to 0.0025 were recorded. Then these DTT images and conventional MRI images were evaluated by two radiologists. A four-point Likert scale was used to qualitatively assess the predefined anatomical structure in pelvic floor. The result was that DTT images of levator ani muscle, coccygeus and obturtor internus with FA 0.19 and ADC 0.0021 gained the highest score among all figures. Then we can conclude that DTT of pelvic floor muscles processed with FA 0.19 and ADC 0.0021 were good enough to obtain reliable images.
机译:这项研究的目的是寻找骨盆底肌肉弥散张量图(DTT)的最佳阈值。这项研究包括二十名健康的成年人(十名男性和十名女性)。在GE Signa HDxt 3.0T MRI中采集了常规MRI序列(T1WI,FSE-T2WI)和扩散张量成像(DTI)。然后将DTI在ADW4.5工作站中进行后处理。通过调节不同的分数各向异性(FA)和表观扩散系数(ADC)阈值,选择左臀肌,尾骨和闭孔内翻作为种子来跟踪纤维。记录在FA阈值下从0.10到0.25的每0.03以及在ADC阈值下0.0015到0.0025的每0.0002的光纤跟踪的DTT。然后由两名放射科医生评估这些DTT图像和常规MRI图像。四点李克特量表用于定性评估骨盆底预定的解剖结构。结果是,FA值为0.19,ADC为0.0021的肛提肌,尾骨和闭孔内膜的DTT图像在所有图中得分最高。然后我们可以得出结论,用FA 0.19和ADC 0.0021处理的骨盆底肌肉的DTT足以获得可靠的图像。

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