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Classification using fractional anisotropy predicts conversion in genetic frontotemporal dementia a proof of concept

机译:使用分数各向异性的分类预测遗传额兆痴呆症的转化概念证明

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摘要

Frontotemporal dementia is a highly heritable and devastating neurodegenerative disease. About 10–20% of all frontotemporal dementia is caused by known pathogenic mutations, but a reliable tool to predict clinical conversion in mutation carriers is lacking. In this retrospective proof-of-concept case-control study, we investigate whether MRI-based and cognition-based classifiers can predict which mutation carriers from genetic frontotemporal dementia families will develop symptoms (‘convert’) within 4 years. From genetic frontotemporal dementia families, we included 42 presymptomatic frontotemporal dementia mutation carriers. We acquired anatomical, diffusion-weighted imaging, and resting-state functional MRI, as well as neuropsychological data. After 4 years, seven mutation carriers had converted to frontotemporal dementia (‘converters’), while 35 had not (‘non-converters’). We trained regularized logistic regression models on baseline MRI and cognitive data to predict conversion to frontotemporal dementia within 4 years, and quantified prediction performance using area under the receiver operating characteristic curves. The prediction model based on fractional anisotropy, with highest contribution of the forceps minor, predicted conversion to frontotemporal dementia beyond chance level (0.81 area under the curve, family-wise error corrected P = 0.025 versus chance level). Other MRI-based and cognitive features did not outperform chance level. Even in a small sample, fractional anisotropy predicted conversion in presymptomatic frontotemporal dementia mutation carriers beyond chance level. After validation in larger data sets, conversion prediction in genetic frontotemporal dementia may facilitate early recruitment into clinical trials.
机译:终身性痴呆是一种高度遗传和毁灭性的神经退行性疾病。所有额定痴呆症的10-20%是已知的致病性突变引起的,但缺乏可靠的工具以预测突变载体中的临床转化。在这项回顾性概念案例对照研究中,我们研究了基于MRI的和认知的分类剂是否可以预测来自遗传终止态痴呆家族的哪种突变载体将在4年内产生症状('转换')。从遗传额仪性痴呆症家庭中,我们包括42个假设型额兆痴呆症突变载体。我们获得了解剖学,扩散加权成像和休息状态的官能MRI,以及神经心理数据。 4年后,七个突变载体转化为额定仪式痴呆('转换器),而35则没有(“非转换器”)。我们在基线MRI和认知数据上培训了正则逻辑回归模型,以在4年内预测对额颞痴呆症的转化,以及使用接收器操作特性曲线下的区域的量化预测性能。基于分数各向异性的预测模型,钳子轻微的贡献的最高贡献,预测转换为额定痴呆症超出机会水平(曲线下的0.81面积,家庭明智的误差校正P = 0.025与机会级别)。其他基于MRI的和认知功能并没有胜过机会水平。即使在一个小样本中,分数各向异性也预测了在局限性水平的假设型颞型痴呆症突变载体中的转化。在较大数据集中验证后,遗传额仪性痴呆中的转换预测可以促进早期募集到临床试验中。

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