...
首页> 外文期刊>NeuroImage >Linear regression with spatial constraint to generate parametric images of ligand-receptor dynamic PET studies with a simplified reference tissue model.
【24h】

Linear regression with spatial constraint to generate parametric images of ligand-receptor dynamic PET studies with a simplified reference tissue model.

机译:具有空间约束的线性回归可使用简化的参考组织模型生成配体-受体动态PET研究的参数图像。

获取原文
获取原文并翻译 | 示例
           

摘要

For the quantitative analysis of ligand-receptor dynamic positron emission tomography (PET) studies, it is often desirable to apply reference tissue methods that eliminate the need for arterial blood sampling. A common technique is to apply a simplified reference tissue model (SRTM). Applications of this method are generally based on an analytical solution of the SRTM equation with parameters estimated by nonlinear regression. In this study, we derive, based on the same assumptions used to derive the SRTM, a new set of operational equations of integral form with parameters directly estimated by conventional weighted linear regression (WLR). In addition, a linear regression with spatial constraint (LRSC) algorithm is developed for parametric imaging to reduce the effects of high noise levels in pixel time activity curves that are typical of PET dynamic data. For comparison, conventional weighted nonlinear regression with the Marquardt algorithm (WNLRM) and nonlinear ridge regression with spatial constraint (NLRRSC) were also implemented using the nonlinear analytical solution of the SRTM equation. In contrast to the other three methods, LRSC reduces the percent root mean square error of the estimated parameters, especially at higher noise levels. For estimation of binding potential (BP), WLR and LRSC show similar variance even at high noise levels, but LRSC yields a smaller bias. Results from human studies demonstrate that LRSC produces high-quality parametric images. The variance of R(1) and k(2) images generated by WLR, WNLRM, and NLRRSC can be decreased 30%-60% by using LRSC. The quality of the BP images generated by WLR and LRSC is visually comparable, and the variance of BP images generated by WNLRM can be reduced 10%-40% by WLR or LRSC. The BP estimates obtained using WLR are 3%-5% lower than those estimated by LRSC. We conclude that the new linear equations yield a reliable, computationally efficient, and robust LRSC algorithm to generate parametric images of ligand-receptor dynamic PET studies.
机译:对于配体-受体动态正电子发射断层扫描(PET)研究的定量分析,通常希望应用参考组织方法来消除对动脉血液采样的需求。一种常见的技术是应用简化的参考组织模型(SRTM)。该方法的应用通常基于SRTM方程的解析解,其参数由非线性回归估计。在这项研究中,我们基于用于推导SRTM的相同假设,推导了一组新的积分形式的运算方程,其参数由常规加权线性回归(WLR)直接估算。此外,针对参数成像开发了具有空间约束的线性回归(LRSC)算法,以减少高像素噪声对PET动态数据中常见的像素时间活动曲线的影响。为了进行比较,还使用了SRTM方程的非线性解析解,使用Marquardt算法(WNLRM)进行了常规加权非线性回归,并使用空间约束进行了非线性脊回归(NLRRSC)。与其他三种方法相比,LRSC降低了估计参数的均方根误差百分比,尤其是在较高的噪声水平下。为了估计结合势(BP),即使在高噪声水平下,WLR和LRSC仍显示出相似的方差,但LRSC产生的偏差较小。人体研究结果表明,LRSC可以生成高质量的参数图像。通过使用LRSC,可以将WLR,WNLRM和NLRRSC生成的R(1)和k(2)图像的方差降低30%-60%。 WLR和LRSC生成的BP图像的质量在视觉上是可比的,并且WLR或LRSC可以将WNLRM生成的BP图像的变化降低10%-40%。使用WLR获得的BP估算值比LRSC估算的BP估算值低3%-5%。我们得出的结论是,新的线性方程产生了可靠,计算有效且鲁棒的LRSC算法,可生成配体-受体动态PET研究的参数图像。

著录项

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