翻转角度
体素
成像体模
核磁共振
光谱学
磁共振成像
校准
脉冲序列
奇异值分解
核磁共振波谱
化学
光学
材料科学
计算物理学
物理
数学
算法
计算机科学
统计
医学
放射科
量子力学
人工智能
作者
Josefin Hartmann,Johanna Gellermann,Tobias Brandt,Manfred Schmidt,Stanislav Pyatykh,Jürgen Hesser,Oliver J. Ott,Rainer Fietkau,Christoph Bert
标识
DOI:10.1177/1533034616656310
摘要
Objective: The difference in the resonance frequency of water and methylene moieties of lipids quantifies in magnetic resonance spectroscopy the absolute temperature using a predefined calibration curve. The purpose of this study was the investigation of peak evaluation methods and the magnetic resonance spectroscopy sequence (point-resolved spectroscopy) parameter optimization that enables thermometry during deep hyperthermia treatments. Materials and Methods: Different Lorentz peak-fitting methods and a peak finding method using singular value decomposition of a Hankel matrix were compared. Phantom measurements on organic substances (mayonnaise and pork) were performed inside the hyperthermia 1.5-T magnetic resonance imaging system for the parameter optimization study. Parameter settings such as voxel size, echo time, and flip angle were varied and investigated. Results: Usually all peak analyzing methods were applicable. Lorentz peak-fitting method in MATLAB proved to be the most stable regardless of the number of fitted peaks, yet the slowest method. The examinations yielded an optimal parameter combination of 8 cm 3 voxel volume, 55 millisecond echo time, and a 90° excitation pulse flip angle. Conclusion: The Lorentz peak-fitting method in MATLAB was the most reliable peak analyzing method. Measurements in homogeneous and heterogeneous phantoms resulted in optimized parameters for the magnetic resonance spectroscopy sequence for thermometry.
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