稳健性(进化)
混淆
噪音(视频)
松弛法
数学
航程(航空)
统计
计算机科学
算法
人工智能
磁共振成像
化学
医学
放射科
自旋回波
材料科学
生物化学
基因
图像(数学)
复合材料
作者
Diego Hernando,J. Harald Kramer,Scott B. Reeder
摘要
Purpose To develop R2* mapping techniques corrected for confounding factors and optimized for noise performance. Theory and Methods Conventional R2* mapping is affected by two key confounding factors: noise‐related bias and the presence of fat in tissue. Noise floor effects introduce bias in magnitude‐based reconstructions, particularly at high R2* values. The presence of fat, if uncorrected, introduces severe protocol‐dependent bias. In this work, the bias/noise properties of different R2* mapping reconstructions (magnitude‐ and complex‐fitting, fat‐uncorrected, and fat‐corrected) are characterized using Cramer‐Rao Bound analysis, simulations, and in vivo data. A framework for optimizing the choice of echo times is provided. Finally, the robustness of liver R2* mapping in the presence of fat is evaluated in 28 subjects. Results Fat‐corrected R2* mapping removes fat‐related bias without noise penalty over a wide range of R2* values. Complex nonlinear least‐squares fitted and fat‐corrected R2* reconstructions that account for the spectral complexity of fat provide robust R2* estimates with low bias and optimized noise performance over a wide range of echo times combinations and R2* values. Conclusion The use of complex fitting and fat‐correction improves the robustness, noise performance, and accuracy of R2* measurements, and are necessary to establish R2* as quantitative imaging biomarker in the liver. Magn Reson Med 70:1319–1331, 2013. © 2013 Wiley Periodicals, Inc.
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