Recent studies on modelling the progression of Alzheimer's disease use a single modality for their predictions while ignoring the time dimension. However, the nature of patient data is heterogeneous and time dependent which requires models that value these factors in order to achieve a reliable diagnosis, as well as making it possible to track and detect changes in the progression of patients' condition at an early stage. This article overviews various categories of models used for Alzheimer's disease prediction with their respective learning methods, by establishing a comparative study of early prediction and detection Alzheimer's disease progression. Finally, a robust and precise detection model is proposed.
翻译:最近对阿尔茨海默氏病演变情况进行建模的研究采用单一的预测模式,而忽略了时间因素,然而,病人数据的性质是多种多样的,而且取决于时间,这就要求有对这些因素进行估价的模型,以便实现可靠的诊断,并使得有可能在早期阶段跟踪和发现病人病情演变的变化,本文章通过建立早期预测和检测阿尔茨海默氏病演变情况的比较研究,概述了用于阿兹海默氏病预测的各种类型模型及其各自的学习方法。最后,还提出了一个可靠和精确的检测模型。