Binczyk Franciszek, Tarnawski Rafal, Polanska Joanna
Biomed Eng Online. 2015;14 Suppl 2(Suppl 2):S5. doi: 10.1186/1475-925X-14-S2-S5. Epub 2015 Aug 13.
Nuclear Magnetic Resonance (NMR) spectroscopy is a popular medical diagnostic technique. NMR is also the favourite tool of chemists/biochemists to elucidate the molecular structure of small or big molecules; it is also a widely used tool in material science, in food science etc. In the case of medical diagnosis it allows for determining a metabolic composition of analysed tissue which may support the identification of tumour cells. Precession signal, that is a crucial part of MR phenomenon, contains distortions that must be filtered out before signal analysis. One of such distortions is phase error. Five popular algorithms: Automics, Shanon’s entropy minimization, Ernst’s method, Dispa and eDispa are presented and discussed. A novel adaptive tuning algorithm for Automics method was developed and numerically optimal solutions to automatic tuning of the other four algorithms were proposed. To validate the performance of the proposed techniques, two experiments were performed - the first one was done with the use of in silico generated data. For all presented methods, the fine tuning strategies significantly increased the correction accuracy. The highest improvement was observed for Automics algorithm, independently of noise level, with relative phase error dropping by average from 10.25% to 2.40% for low noise level and from 12.45% to 2.66% for high noise level. The second validation experiment, done with the use of phantom data, confirmed the in silico results. The obtained accuracy of the estimation of metabolite concentration was at 99.5%.
The proposed strategies for optimizing the phase correction algorithms significantly improve the accuracy of Nuclear Magnetic Resonance spectroscopy signal analysis.
核磁共振(NMR)光谱学是一种常用的医学诊断技术。NMR也是化学家和生物化学家用于阐明小分子或大分子分子结构的首选工具;它也是材料科学、食品科学等领域广泛使用的工具。在医学诊断中,它可以确定被分析组织的代谢成分,这可能有助于识别肿瘤细胞。进动信号是磁共振现象的关键部分,其中包含在信号分析之前必须滤除的失真。这种失真之一是相位误差。本文介绍并讨论了五种常用算法:Automics、香农熵最小化、恩斯特方法、Dispa和eDispa。开发了一种用于Automics方法的新型自适应调谐算法,并提出了其他四种算法自动调谐的数值最优解。为了验证所提出技术的性能,进行了两个实验——第一个实验使用了计算机模拟生成的数据。对于所有提出的方法,微调策略显著提高了校正精度。对于Automics算法,无论噪声水平如何,改进最为显著,低噪声水平下相对相位误差平均从10.25%降至2.40%,高噪声水平下从12.45%降至2.66%。第二个验证实验使用了体模数据,证实了计算机模拟结果。获得的代谢物浓度估计精度为99.5%。
所提出的优化相位校正算法的策略显著提高了核磁共振光谱信号分析的精度。