首页> 外文学位 >Optimization of physiologic noise correction in functional magnetic resonance imaging.
【24h】

Optimization of physiologic noise correction in functional magnetic resonance imaging.

机译:功能磁共振成像中生理噪声校正的优化。

获取原文
获取原文并翻译 | 示例

摘要

Though in widespread clinical and research use as a tool to evaluate brain function, functional magnetic resonance imaging (FMRI) data is severely contaminated by noise, due in large part to physiologic noise caused by respiratory and cardiac variations over time. This dissertation attempts to better characterize several physiologic noise correction techniques applied to pain FMRI data. Three studies are described that collectively work toward determining an optimal physiologic noise correction algorithm to be used in future pain FMRI studies.;First, a novel algorithm, RetroSLICE, is described that uses linear regression to correct acquired images for signal intensity fluctuations correlated to measured respiratory, cardiac, and capnometry variations. The impact of this technique was assessed for a 1.5 T pain FMRI experiment. Each physiologic noise regressor used as a part of the RetroSLICE algorithm independently resulted in a decrease in timecourse variance and an improvement in model fit. Combined correction for the instantaneous effects of respiratory and cardiac variations caused a 5.4% decrease in signal variance and increased model fit (mean R 2a) by 65%. The addition of ETCO2 correction as part of the general linear model led to 39% further improvement in model fit. Each of these corrections also caused changes in the group activation map.;Next, an optimal transfer function between ETCO2 level and BOLD signal changes was empirically determined using FMRI data in which paced breathing forced a 35% decrease in ETCO2. ETCO2 data convolved with this optimized response function was compared to another measure, the respiratory volume over time (RVT) convolved with an optimized respiration response function. When regressed against FMRI data collected during a breathing modulation task, ETCO2 was more strongly and diffusely correlated to the data than RVT. Conversely, when the same comparative analysis was performed on pain FMRI data, RVT was more strongly correlated than ETCO2. In both cases, allowing +/- 2 s flexibility in the response function peak times did not change the relative correlation to the MR data of the ETCO 2 compared to the RVT timecourses.;Finally, the well-known physiologic noise correction algorithm, RETROICOR, was implemented on pain FMRI data collected at 1.5 and 3.0 T. Respiratory and cardiac correction with Fourier series phase fitting caused an 8.2% decrease in signal variance and a 227% increase in model fit at 1.5 T, indicating performance superior to RetroSLICE. At 3.0 T, significantly greater improvements were seen: a 10.4% decrease in signal noise and 240% increase in mean R 2a. ETCO2 correction applied with the optimized response function previously determined caused insignificant changes in noise reduction and model fit. Further exploration of the properties of the RETROICOR algorithm showed no difference in impact when applied with physiologic input data sampled at a much higher rate or when accounting for the interleaved slice acquisition order. These findings suggest that RETROICOR should be included as a part of the physiologic noise correction procedure in pain FMRI studies at 1.5 and 3.0 T.
机译:尽管在临床和研究中已广泛用作评估脑功能的工具,但功能性磁共振成像(FMRI)数据受到噪声的严重污染,这在很大程度上是由于呼吸和心脏随时间变化而引起的生理噪声。本文试图更好地表征应用于疼痛功能磁共振成像数据的几种生理噪声校正技术。描述了三项研究,这些研究共同致力于确定用于将来的疼痛FMRI研究中的最佳生理噪声校正算法。;首先,描述了一种新颖的算法RetroSLICE,该算法使用线性回归来校正获取的图像以获取与测量相关的信号强度波动呼吸,心脏和二氧化碳图变化。对于1.5 T疼痛FMRI实验评估了该技术的影响。用作RetroSLICE算法一部分的每个生理噪声回归器独立地导致时程方差的减少和模型拟合的改善。呼吸和心脏变化的瞬时影响的综合校正导致信号变化减少5.4%,模型拟合增加(平均R 2a)65%。 ETCO2校正作为通用线性模型的一部分,使模型拟合进一步提高了39%。这些校正中的每一个都还导致了组激活图的变化。接下来,使用FMRI数据凭经验确定ETCO2水平和BOLD信号变化之间的最佳传递函数,在该数据中,有节奏的呼吸迫使ETCO2下降35%。将包含此优化响应功能的ETCO2数据与另一项指标进行比较,将呼吸量随时间变化(RVT)与优化呼吸响应功能进行了卷积。当对呼吸调节任务期间收集的FMRI数据进行回归分析时,与RVT相比,ETCO2与数据的相关性更强且更分散。相反,当对疼痛FMRI数据进行相同的比较分析时,RVT与ETCO2的相关性更强。在两种情况下,与RVT时程相比,在响应函数峰值时间中允许+/- 2 s的灵活性都不会改变与ETCO 2的MR数据的相对相关性。最后,著名的生理噪声校正算法RETROICOR在1.5和3.0 T时收集的疼痛FMRI数据上实施。,使用傅里叶级数相位拟合进行的呼吸和心脏矫正导致1.5 T时信号差异减少8.2%,模型拟合增加227%,表明其性能优于RetroSLICE。在3.0 T时,可以看到明显更大的改善:信号噪声降低10.4%,平均R 2a增加240%。 ETCO2校正与先前确定的优化响应函数一起应用时,导致降噪和模型拟合的变化不明显。进一步研究RETROICOR算法的属性时,当以更高的速率采样生理输入数据或考虑到交错的切片获取顺序时,在影响上没有差异。这些发现表明,在1.5和3.0 T的疼痛FMRI研究中,应将RETROICOR作为生理噪声校正程序的一部分。

著录项

  • 作者

    Vogt, Keith M.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 149 p.
  • 总页数 149
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号