Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1468-1471. doi: 10.1109/EMBC48229.2022.9871344.
With sound pressure levels reaching up to 130 dB, acoustic noise in Magnetic Resonance Imaging (MRI) is one of the main sources of patient discomfort in otherwise one of the safest medical imaging modalities. In this work, a noise prediction-based approach, termed predictive noise cancelling (PNC), is applied, for the first time, to suppress noise in MRI. In PN C the noise from the scanner gradient coils is predicted based on linear time-invariant models, which relate the individual gradient coil (X, Y and Z) input to the acoustic noise output. A model setup was constructed of a custom speaker box and MRI -compatible microphone to demonstrate live noise reduction. Additional tuning steps, including output channel equalization and clock mismatch correction, were performed to maximize noise reduction. A calibration sequence was designed to determine the model and tuning parameters. Analysis of actual scanner noise shows an upper limit of 21 dB noise reduction with the proposed linear model. For the components of a clinical example sequence, the setup demonstrated in-bore live noise reduction of up to 10 dB (7.01 ± 0.31 dB, 6.42 ± 2.04 dB and 9.28 ± 0.26 dB for X, Y and Z gradient coils respectively) in the presence of system imperfections. Clinical relevance - The results indicate promising noise attenuation without the need to modify scanner hardware or compromises in acquisition speed or quality. This has potential to substantially and cost effectively improve patient comfort in clinical MRI.
在磁共振成像(MRI)中,声压级高达 130dB,是患者不适的主要来源之一,而 MRI 是最安全的医学成像方式之一。在这项工作中,首次应用了一种基于噪声预测的方法,称为预测噪声消除(PNC),以抑制 MRI 中的噪声。在 PNC 中,根据线性时不变模型预测来自扫描仪梯度线圈的噪声,该模型将单个梯度线圈(X、Y 和 Z)的输入与声噪声输出相关联。构建了一个定制扬声器盒和 MRI 兼容麦克风的模型设置,以演示实时降噪。进行了额外的调谐步骤,包括输出通道均衡和时钟失配校正,以最大限度地减少噪声。设计了校准序列以确定模型和调谐参数。对实际扫描仪噪声的分析表明,使用所提出的线性模型可将噪声降低 21dB。对于临床示例序列的组件,在系统不完善的情况下,该设置在孔内实时降噪高达 10dB(X、Y 和 Z 梯度线圈分别为 7.01 ± 0.31dB、6.42 ± 2.04dB 和 9.28 ± 0.26dB)。临床相关性——结果表明,在不需要修改扫描仪硬件或在采集速度或质量上做出妥协的情况下,有望实现显著且具有成本效益的降噪。这有可能大大提高临床 MRI 中的患者舒适度。