Department of Radiology, Leiden University Medical Centre, Leiden, The Netherlands
Leiden Institute for Brain and Cognition, Leiden University, Leiden, The Netherlands.
J Neurol Neurosurg Psychiatry. 2019 Nov;90(11):1207-1214. doi: 10.1136/jnnp-2019-320774. Epub 2019 Jun 15.
Multimodal MRI-based classification may aid early frontotemporal dementia (FTD) diagnosis. Recently, presymptomatic FTD mutation carriers, who have a high risk of developing FTD, were separated beyond chance level from controls using MRI-based classification. However, it is currently unknown how these scores from classification models progress as mutation carriers approach symptom onset. In this longitudinal study, we investigated multimodal MRI-based classification scores between presymptomatic FTD mutation carriers and controls. Furthermore, we contrasted carriers that converted during follow-up ('converters') and non-converting carriers ('non-converters').
We acquired anatomical MRI, diffusion tensor imaging and resting-state functional MRI in 55 presymptomatic FTD mutation carriers and 48 healthy controls at baseline, and at 2, 4, and 6 years of follow-up as available. At each time point, FTD classification scores were calculated using a behavioural variant FTD classification model. Classification scores were tested in a mixed-effects model for mean differences and differences over time.
Presymptomatic mutation carriers did not have higher classification score increase over time than controls (p=0.15), although carriers had higher FTD classification scores than controls on average (p=0.032). However, converters (n=6) showed a stronger classification score increase over time than non-converters (p<0.001).
Our findings imply that presymptomatic FTD mutation carriers may remain similar to controls in terms of MRI-based classification scores until they are close to symptom onset. This proof-of-concept study shows the promise of longitudinal MRI data acquisition in combination with machine learning to contribute to early FTD diagnosis.
基于多模态磁共振成像的分类方法可能有助于早期额颞叶痴呆(FTD)的诊断。最近,通过基于磁共振成像的分类,有很高 FTD 发病风险的无症状 FTD 突变携带者能够超出随机水平与对照组区分开来。然而,目前尚不清楚这些分类模型的分数在突变携带者接近发病时如何进展。在这项纵向研究中,我们研究了无症状 FTD 突变携带者和对照组之间基于多模态磁共振成像的分类评分。此外,我们还对比了随访期间发生转化的携带者(“转化者”)和未发生转化的携带者(“未转化者”)。
我们在基线时采集了 55 名无症状 FTD 突变携带者和 48 名健康对照者的解剖磁共振成像、弥散张量成像和静息态功能磁共振成像,在随访 2、4 和 6 年时也采集了这些数据(如果有的话)。在每个时间点,我们使用行为变异型 FTD 分类模型计算 FTD 分类评分。使用混合效应模型测试分类评分的均值差异和随时间的差异。
无症状突变携带者的分类评分随时间的增加并不高于对照组(p=0.15),尽管携带者的平均 FTD 分类评分高于对照组(p=0.032)。然而,转化者(n=6)的分类评分随时间的增加明显强于未转化者(p<0.001)。
我们的研究结果表明,在接近发病之前,无症状 FTD 突变携带者在基于磁共振成像的分类评分方面可能与对照组相似。这项概念验证研究表明,结合机器学习进行纵向磁共振数据采集有望有助于早期 FTD 诊断。