Vanderbilt University Institute of Imaging Science, Vanderbilt University Medical Center, Nashville, Tennessee, USA.
Department of Biomedical Engineering, Vanderbilt University, Nashville, Tennessee, USA.
NMR Biomed. 2025 Jan;38(1):e5277. doi: 10.1002/nbm.5277. Epub 2024 Oct 21.
Amide proton transfer (APT) imaging, a technique sensitive to tissue pH, holds promise in the diagnosis of ischemic stroke. Achieving accurate and rapid APT imaging is crucial for this application. However, conventional APT quantification methods either lack accuracy or are time-consuming. Machine learning (ML) has recently been recognized as a potential solution to improve APT quantification. In this paper, we applied an ML model trained on a new type of partially synthetic data, along with an optimization approach utilizing recursive feature elimination, to predict APT imaging in an animal stroke model. This partially synthetic datum is not a simple blend of measured and simulated chemical exchange saturation transfer (CEST) signals. Rather, it integrates the underlying components including all CEST, direct water saturation, and magnetization transfer effects partly derived from measurements and simulations to reconstruct the CEST signals using an inverse summation relationship. Training with partially synthetic data requires less in vivo data compared to training entirely with fully synthetic or in vivo data, making it a more practical approach. Since this type of data closely resembles real tissue, it leads to more accurate predictions than ML models trained on fully synthetic data. Results indicate that an ML model trained on this partially synthetic data can successfully predict the APT effect with enhanced accuracy, providing significant contrast between stroke lesions and normal tissues, thus clearly delineating lesions. In contrast, conventional quantification methods such as the asymmetric analysis method, three-point method, and multiple-pool model Lorentzian fit showed inadequate accuracy in quantifying the APT effect. Moreover, ML methods trained using in vivo data and fully synthetic data exhibited poor predictive performance due to insufficient training data and inaccurate simulation pool settings or parameter ranges, respectively. Following optimization, only 13 frequency offsets were selected from the initial 69, resulting in significantly reduced scan time.
酰胺质子转移(APT)成像是一种对组织 pH 值敏感的技术,有望用于诊断缺血性中风。实现准确快速的 APT 成像是该应用的关键。然而,传统的 APT 定量方法要么缺乏准确性,要么耗时较长。机器学习(ML)最近被认为是提高 APT 定量的潜在解决方案。在本文中,我们应用了一种基于新型部分合成数据的 ML 模型,以及一种利用递归特征消除的优化方法,来预测动物中风模型中的 APT 成像。这种部分合成数据不是测量和模拟化学交换饱和转移(CEST)信号的简单混合。相反,它集成了潜在的成分,包括所有的 CEST、直接水饱和和磁化转移效应,部分来源于测量和模拟,以使用逆求和关系重建 CEST 信号。与完全使用全合成或体内数据训练相比,使用部分合成数据进行训练需要更少的体内数据,因此是一种更实用的方法。由于这种类型的数据与真实组织非常相似,因此它比基于全合成数据训练的 ML 模型具有更高的准确性。结果表明,基于这种部分合成数据训练的 ML 模型可以成功地以更高的准确性预测 APT 效应,在中风病变和正常组织之间提供显著的对比度,从而清晰地描绘出病变。相比之下,传统的定量方法,如不对称分析方法、三点法和多池模型洛伦兹拟合,在定量 APT 效应方面的准确性不足。此外,使用体内数据和全合成数据训练的 ML 方法由于训练数据不足和模拟池设置或参数范围不准确,分别表现出较差的预测性能。经过优化,从最初的 69 个频率偏移中仅选择了 13 个,从而显著减少了扫描时间。