The current multiple sclerosis (MS) diagnostic criteria lack specificity, and this may lead to misdiagnosis, which remains an issue in present-day clinical practice. In addition, conventional biomarkers only moderately correlate with MS disease progression. Recently, advanced MS lesional imaging biomarkers such as cortical lesions (CL), the central vein sign (CVS), and paramagnetic rim lesions (PRL), visible in specialized magnetic resonance imaging (MRI) sequences, have shown higher specificity in differential diagnosis. Moreover, studies have shown that CL and PRL are potential prognostic biomarkers, the former correlating with cognitive impairments and the latter with early disability progression. As machine learning-based methods have achieved extraordinary performance in the assessment of conventional imaging biomarkers, such as white matter lesion segmentation, several automated or semi-automated methods have been proposed for CL, CVS, and PRL as well. In the present review, we first introduce these advanced MS imaging biomarkers and their imaging methods. Subsequently, we describe the corresponding machine learning-based methods that were used to tackle these clinical questions, putting them into context with respect to the challenges they are still facing, including non-standardized MRI protocols, limited datasets, and moderate inter-rater variability. We conclude by presenting the current limitations that prevent their broader deployment and suggesting future research directions.
翻译:目前的多发性硬化(MS)诊断标准缺乏具体性,这可能导致误诊断,这在当今临床实践中仍然是一个问题。此外,常规生物标志仅与MS疾病的进展有中度关联。最近,先进的MS腐蚀性成像生物标志,如骨质损伤(CL)、中央血管标志(CVS)和在专门磁共振成像序列中可见的对磁共振成像(MRI)序列中发现的对磁共振成像(PRL)显示在差异诊断中具有更高的特殊性。此外,研究表明CL和PRL是潜在的预测性生物标志,以前与认知缺陷有关,而后者则与早期残疾发展有关。最近,由于基于机器学习的方法在评估常规成像生物标志(CL)、中央血管标志(CVS)和parmagnative-rial RI(PRL)等常规成像学生物标志(PRL)时取得了非凡的性表现,因此,我们首先引入了这些先进的MS成像生物标志及其成像方法。随后,我们描述了相应的机器学习方法,包括用于解决这些临床问题的不甚广度问题,我们目前使用的标准化方法。