Karimi Davood, Warfield Simon K
Harvard Medical School and Boston Children's Hospital, Boston, Massachusetts, USA.
Imaging Neurosci (Camb). 2024;2. doi: 10.1162/imag_a_00353. Epub 2024 Nov 12.
Diffusion-weighted magnetic resonance imaging (dMRI) of the brain offers unique capabilities including noninvasive probing of tissue microstructure and structural connectivity. It is widely used for clinical assessment of disease and injury, and for neuroscience research. Analyzing the dMRI data to extract useful information for medical and scientific purposes can be challenging. The dMRI measurements may suffer from strong noise and artifacts, and may exhibit high inter-session and inter-scanner variability in the data, as well as inter-subject heterogeneity in brain structure. Moreover, the relationship between measurements and the phenomena of interest can be highly complex. Recent years have witnessed increasing use of machine learning methods for dMRI analysis. This manuscript aims to assess these efforts, with a focus on methods that have addressed data preprocessing and harmonization, microstructure mapping, tractography, and white matter tract analysis. We study the main findings, strengths, and weaknesses of the existing methods and suggest topics for future research. We find that machine learning may be exceptionally suited to tackle some of the difficult tasks in dMRI analysis. However, for this to happen, several shortcomings of existing methods and critical unresolved issues need to be addressed. There is a pressing need to improve evaluation practices, to increase the availability of rich training datasets and validation benchmarks, as well as model generalizability, reliability, and explainability concerns.
脑部扩散加权磁共振成像(dMRI)具有独特的功能,包括对组织微观结构和结构连通性进行无创探测。它广泛应用于疾病和损伤的临床评估以及神经科学研究。分析dMRI数据以提取医学和科学用途的有用信息可能具有挑战性。dMRI测量可能会受到强噪声和伪影的影响,数据在不同扫描时段和不同扫描仪之间可能表现出高度变异性,以及个体间脑结构的异质性。此外,测量结果与感兴趣现象之间的关系可能非常复杂。近年来,机器学习方法在dMRI分析中的应用越来越多。本手稿旨在评估这些工作,重点关注解决数据预处理与归一化、微观结构映射、纤维束成像以及白质纤维束分析的方法。我们研究了现有方法的主要发现、优点和缺点,并提出了未来研究的主题。我们发现机器学习可能特别适合处理dMRI分析中的一些难题。然而,要实现这一点,需要解决现有方法的几个缺点和关键的未解决问题。迫切需要改进评估方法,增加丰富训练数据集和验证基准的可用性,以及解决模型通用性、可靠性和可解释性等问题。