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Predicting Conversion of Mild Cognitive Impairments to Alzheimer's Disease and Exploring Impact of Neuroimaging

机译:预测轻度认知障碍向阿尔茨海默氏病的转化并探讨神经影像学的影响

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Nowadays, a lot of scientific efforts are concentrated on the diagnosis of Alzheimers Disease (AD) applying deep learning methods to neuroimaging data. Even for 2017, there were published more than hundred papers dedicated to AD diagnosis, whereas only a few works considered a problem of mild cognitive impairments (MCI) conversion to AD. However, the conversion prediction is an important problem since approximately 15% of patients with MCI converges to AD every year. In the current work, we are focusing on the conversion prediction using brain Magnetic Resonance Imaging and clinical data, such as demographics, cognitive assessments, genetic, and biochemical markers. First of all, we applied state-of-the-art deep learning algorithms on the neuroimaging data and compared these results with two machine learning algorithms that we fit on the clinical data. As a result, the models trained on the clinical data outperform the deep learning algorithms applied to the MR images. To explore the impact of neuroimaging further, we trained a deep feed-forward embedding using similarity learning with Histogram loss on all available MRIs and obtained 64-dimensional vector representation of neuroimaging data. The use of learned representation from the deep embedding allowed to increase the quality of prediction based on the neuroimaging. Finally, the current results on this dataset show that the neuroimaging does have an effect on conversion prediction, however cannot noticeably increase the quality of the prediction. The best results of predicting MCI-to-AD conversion are provided by XGBoost algorithm trained on the clinical and embedding data. The resulting accuracy is ACC = 0.76 ± 0.01 and the area under the ROC curve -ROC AUC = 0.86 ±0.01.
机译:如今,许多科学研究都集中在将深度学习方法应用于神经影像数据的阿尔茨海默氏病(AD)诊断上。即使在2017年,也发表了数百篇致力于AD诊断的论文,而只有少数著作认为轻度认知障碍(MCI)转化为AD存在问题。但是,转换预测是一个重要的问题,因为每年约有15%的MCI患者会聚到AD。在当前的工作中,我们将重点放在使用脑磁共振成像和临床数据(例如人口统计学,认知评估,遗传和生物化学标记)的转化预测上。首先,我们在神经影像数据上应用了最先进的深度学习算法,并将这些结果与我们适合临床数据的两种机器学习算法进行了比较。结果,在临床数据上训练的模型优于应用于MR图像的深度学习算法。为了进一步探索神经影像的影响,我们在所有可用的MRI上使用直方图丢失相似性学习训练了深度前馈嵌入,并获得了神经影像数据的64维矢量表示。从深度嵌入中学习到的表示的使用可以提高基于神经成像的预测质量。最后,此数据集上的当前结果表明,神经影像确实对转换预测有影响,但是不能显着提高预测的质量。通过对临床和嵌入数据进行训练的XGBoost算法,可以提供预测MCI到AD转换的最佳结果。结果精度为ACC = 0.76±0.01,ROC曲线下面积-ROC AUC = 0.86±0.01。

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