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Simultaneous Analysis and Quality Assurance for Diffusion Tensor Imaging

机译:扩散张量成像的同时分析和质量保证

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摘要

Diffusion tensor imaging (DTI) enables non-invasive, cyto-architectural mapping of in vivo tissue microarchitecture through voxel-wise mathematical modeling of multiple magnetic resonance imaging (MRI) acquisitions, each differently sensitized to water diffusion. DTI computations are fundamentally estimation processes and are sensitive to noise and artifacts. Despite widespread adoption in the neuroimaging community, maintaining consistent DTI data quality remains challenging given the propensity for patient motion, artifacts associated with fast imaging techniques, and the possibility of hardware changes/failures. Furthermore, the quantity of data acquired per voxel, the non-linear estimation process, and numerous potential use cases complicate traditional visual data inspection approaches. Currently, quality inspection of DTI data has relied on visual inspection and individual processing in DTI analysis software programs (e.g. DTIPrep, DTI-studio). However, recent advances in applied statistical methods have yielded several different metrics to assess noise level, artifact propensity, quality of tensor fit, variance of estimated measures, and bias in estimated measures. To date, these metrics have been largely studied in isolation. Herein, we select complementary metrics for integration into an automatic DTI analysis and quality assurance pipeline. The pipeline completes in 24 hours, stores statistical outputs, and produces a graphical summary quality analysis (QA) report. We assess the utility of this streamlined approach for empirical quality assessment on 608 DTI datasets from pediatric neuroimaging studies. The efficiency and accuracy of quality analysis using the proposed pipeline is compared with quality analysis based on visual inspection. The unified pipeline is found to save a statistically significant amount of time (over 70%) while improving the consistency of QA between a DTI expert and a pool of research associates. Projection of QA metrics to a low dimensional manifold reveal qualitative, but clear, QA-study associations and suggest that automated outlier/anomaly detection would be feasible.
机译:扩散张量成像(DTI)通过多个磁共振成像(MRI)采集的体素数学建模,使体内组织微体系结构的非侵入性细胞结构映射得以实现,每个采集对水扩散的敏感性不同。 DTI计算从根本上是估计过程,并且对噪声和伪像敏感。尽管在神经影像学界已被广泛采用,但鉴于患者的运动倾向,与快速成像技术相关的伪像以及硬件更改/故障的可能性,保持一致的DTI数据质量仍然具有挑战性。此外,每个体素获取的数据量,非线性估计过程以及众多潜在的用例使传统的视觉数据检查方法变得复杂。当前,DTI数据的质量检查依赖于DTI分析软件程序(例如DTIPrep,DTI-studio)中的外观检查和单独处理。但是,应用统计方法的最新进展产生了几种不同的度量标准,用于评估噪声水平,伪影倾向,张量拟合的质量,估计量度的方差和估计量度的偏差。迄今为止,这些度量标准已被广泛地单独研究。在这里,我们选择补充指标以集成到自动DTI分析和质量保证管道中。该管道将​​在24小时内完成,存储统计输出,并生成图形摘要质量分析(QA)报告。我们评估了从儿童神经影像学研究中对608个DTI数据集进行经验质量评估的这种简化方法的实用性。将所提出的管道的质量分析的效率和准确性与基于目测的质量分析进行比较。发现统一管道可以节省大量统计时间(超过70%),同时提高DTI专家和研究人员池之间QA的一致性。 QA指标向低维流形的投影揭示了定性但清晰的QA研究关联,并表明自动化的异常值/异常检测将是可行的。

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