Purpose. Proton Magnetic Resonance Spectroscopic Imaging (1H-MRSI) provides non-invasive spectral-spatial mapping of metabolism. However, long-standing problems in whole-brain 1H-MRSI are spectral overlap of metabolite peaks with large lipid signal from scalp, and overwhelming water signal that distorts spectra. Fast and effective methods are needed for high-resolution 1H-MRSI to accurately remove lipid and water signals while preserving the metabolite signal. The potential of supervised neural networks for this task remains unexplored, despite their success for other MRSI processing. Methods. We introduce a deep-learning method based on a modified Y-NET network for water and lipid removal in whole-brain 1H-MRSI. The WALINET (WAter and LIpid neural NETwork) was compared to conventional methods such as the state-of-the-art lipid L2 regularization and Hankel-Lanczos singular value decomposition (HLSVD) water suppression. Methods were evaluated on simulated and in-vivo whole-brain MRSI using NMRSE, SNR, CRLB, and FWHM metrics. Results. WALINET is significantly faster and needs 8s for high-resolution whole-brain MRSI, compared to 42 minutes for conventional HLSVD+L2. Quantitative analysis shows WALINET has better performance than HLSVD+L2: 1) more lipid removal with 41% lower NRMSE, 2) better metabolite signal preservation with 71% lower NRMSE in simulated data, 155% higher SNR and 50% lower CRLB in in-vivo data. Metabolic maps obtained by WALINET in healthy subjects and patients show better gray/white-matter contrast with more visible structural details. Conclusions. WALINET has superior performance for nuisance signal removal and metabolite quantification on whole-brain 1H-MRSI compared to conventional state-of-the-art techniques. This represents a new application of deep-learning for MRSI processing, with potential for automated high-throughput workflow.
翻译:目的:质子磁共振波谱成像(1H-MRSI)能够提供非侵入性的代谢物谱-空间映射。然而,全脑1H-MRSI中长期存在的问题包括代谢物峰与头皮来源的强脂质信号之间的谱重叠,以及扭曲谱形的压倒性水信号。高分辨率1H-MRSI需要快速有效的方法来精确去除水和脂质信号,同时保留代谢物信号。尽管监督神经网络在其他MRSI处理任务中已取得成功,但其在此任务中的潜力尚未被探索。方法:我们提出了一种基于改进的Y-NET网络的深度学习方法,用于全脑1H-MRSI中的水和脂质去除。将WALINET(水和脂质神经网络)与传统方法进行比较,包括最先进的脂质L2正则化和Hankel-Lanczos奇异值分解水抑制方法。使用NRMSE、SNR、CRLB和FWHM指标在模拟和体内全脑MRSI数据上评估各方法性能。结果:WALINET速度显著更快,处理高分辨率全脑MRSI仅需8秒,而传统HLSVD+L2方法需要42分钟。定量分析表明WALINET性能优于HLSVD+L2:1)脂质去除更彻底,NRMSE降低41%;2)代谢物信号保留更好,模拟数据中NRMSE降低71%,体内数据中SNR提高155%且CRLB降低50%。在健康受试者和患者中,通过WALINET获得的代谢图谱显示出更好的灰质/白质对比度及更清晰的结构细节。结论:与传统最先进技术相比,WALINET在全脑1H-MRSI的干扰信号去除和代谢物定量方面具有更优性能。这代表了深度学习在MRSI处理中的新应用,有望实现自动化高通量工作流程。