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Modeling the heterogeneity in risk of progression to Alzheimer's disease across cognitive profiles in mild cognitive impairment

机译:在轻度认知障碍中跨认知模式对发展为阿尔茨海默氏病风险的异质性进行建模

摘要

Heterogeneity in risk of conversion to Alzheimer's disease (AD) among individuals with mild cognitive impairment (MCI) is well known. Novel statistical methods that are based on partially ordered set (poset) models can be used to create models that provide detailed and accurate information about performance with specific cognitive functions. This approach allows for the study of direct links between specific cognitive functions and risk of conversion to AD from MCI. It also allows for further delineation of multi-domain amnestic MCI, in relation to specific non-amnestic cognitive deficits, and the modeling of a range of episodic memory functioning levels. From the Alzheimer's Disease Neuroimaging Initiative (ADNI) study, conversion at 24 months of 268 MCI subjects was analyzed. It was found that 101 of those subjects (37.7%) converted to AD within that time frame. Poset models were then used to classify cognitive performance for MCI subjects. Respective observed conversion rates to AD were calculated for various cognitive subgroups, and by APOE e4 allele status. These rates were then compared across subgroups. The observed conversion rate for MCI subjects with a relatively lower functioning with a high level of episodic memory at baseline was 61.2%. In MCI subjects who additionally also had relatively lower perceptual motor speed functioning and at least one APOE e4 allele, the conversion rate was 84.2%. In contrast, the observed conversion rate was 9.8% for MCI subjects with a relatively higher episodic memory functioning level and no APOE e4 allele. Relatively lower functioning with cognitive flexibility and perceptual motor speed by itself also appears to be associated with higher conversion rates. Among MCI subjects, specific baseline cognitive profiles that were derived through poset modeling methods, are clearly associated with differential rates of conversion to AD. More precise delineation of MCI by such cognitive functioning profiles, including notions such as multidomain amnestic MCI, can help in gaining further insight into how heterogeneity arises in outcomes. Poset-based modeling methods may be useful for providing more precise classification of cognitive subgroups among MCI for imaging and genetics studies, and for developing more efficient and focused cognitive test batteries.
机译:患有轻度认知障碍(MCI)的个体中发生阿尔茨海默氏病(AD)风险的异质性是众所周知的。基于部分有序集(姿势)模型的新颖统计方法可用于创建提供有关具有特定认知功能的表现的详细而准确的信息的模型。这种方法可以研究特定的认知功能与MCI转化为AD的风险之间的直接联系。它还允许进一步描述与特定的非遗忘性认知缺陷有关的多域记忆删除MCI,以及一系列情景记忆功能水平的建模。根据阿尔茨海默氏病神经影像学倡议(ADNI)研究,分析了268名MCI受试者在24个月时的转化情况。发现在该时间段内有101名受试者(37.7%)转化为AD。然后使用Poset模型对MCI受试者的认知表现进行分类。计算了各个认知亚组的相应观察到的AD转化率,并通过APOE e4等位基因状态进行了计算。然后将这些比率在各亚组之间进行比较。在基线时,功能相对较低,情景记忆水平较高的MCI受试者的观察到的转化率为61.2%。在另外还具有相对较低的感知运动速度功能和至少一个APOE e4等位基因的MCI受试者中,转化率为84.2%。相反,对于具有相对较高的情节记忆功能水平且没有APOE e4等位基因的MCI受试者,观察到的转化率为9.8%。具有认知灵活性和感知运动速度的相对较低的功能本身也似乎与较高的转化率相关。在MCI受试者中,通过poset建模方法得出的特定基线认知特征显然与不同的AD转化率相关。通过此类认知功能配置文件(包括诸如多域记忆删除MCI等概念)对MCI进行更精确的描述,可以帮助您进一步了解结果如何产生异质性。基于Poset的建模方法可能有助于在MCI中提供更精确的认知亚组分类,以进行成像和遗传学研究,并开发更有效,更专注的认知测试电池。

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