McConnell Brain Imaging Centre, Montreal Neurological Institute, McGill University, Montreal, Canada.
McConnell Brain Imaging Centre, Montreal Neurological Institute, McGill University, Montreal, Canada.
Neuroimage Clin. 2018;20:685-696. doi: 10.1016/j.nicl.2018.08.028. Epub 2018 Aug 31.
Frontotemporal dementia (FTD) is difficult to diagnose, due to its heterogeneous nature and overlap in symptoms with primary psychiatric disorders. Brain MRI for atrophy is a key biomarker but lacks sensitivity in the early stage. Morphometric MRI-based measures and machine learning techniques are a promising tool to improve diagnostic accuracy. Our aim was to review the current state of the literature using morphometric MRI to classify FTD and assess its applicability for clinical practice. A search was completed using Pubmed and PsychInfo of studies which conducted a classification of subjects with FTD from non-FTD (controls or another disorder) using morphometric MRI metrics on an individual level, using single or combined approaches. 28 relevant articles were included and systematically reviewed following PRISMA guidelines. The studies were categorized based on the type of FTD subjects included and the group(s) against which they were classified. Studies varied considerably in subject selection, MRI methodology, and classification approach, and results are highly heterogeneous. Overall many studies indicate good diagnostic accuracy, with higher performance when differentiating FTD from controls (highest result was accuracy of 100%) than other dementias (highest result was AUC of 0.874). Very few machine learning algorithms have been tested in prospective replication. In conclusion, morphometric MRI with machine learning shows potential as an early diagnostic biomarker of FTD, however studies which use rigorous methodology and validate findings in an independent real-life cohort are necessary before this method can be recommended for use clinically.
额颞叶痴呆(FTD)难以诊断,因为其具有异质性,且症状与原发性精神障碍重叠。脑 MRI 用于评估萎缩是一个关键的生物标志物,但在早期阶段缺乏敏感性。基于形态计量 MRI 的测量和机器学习技术是提高诊断准确性的有前途的工具。我们的目的是使用形态计量 MRI 来回顾当前文献的状态,以对 FTD 进行分类,并评估其在临床实践中的适用性。使用 Pubmed 和 PsychInfo 进行了检索,检索了使用形态计量 MRI 指标在个体水平上对 FTD 受试者进行分类的研究,这些研究的对象是非 FTD(对照或另一种疾病),使用了单一或联合方法。共纳入了 28 篇相关文章,并按照 PRISMA 指南进行了系统综述。这些研究是基于纳入的 FTD 受试者的类型和与之进行分类的组进行分类的。研究在受试者选择、MRI 方法和分类方法方面差异很大,结果高度异质。总体而言,许多研究表明诊断准确性较高,在区分 FTD 与对照组(最高准确性为 100%)方面的性能优于其他痴呆症(最高 AUC 为 0.874)。很少有机器学习算法在前瞻性复制中进行了测试。总之,基于形态计量 MRI 的机器学习具有作为 FTD 早期诊断生物标志物的潜力,但是需要使用严格的方法学并在独立的现实队列中验证研究结果,然后才能推荐该方法在临床上使用。