Ardekani Babak A, Bermudez Elaine, Mubeen Asim M, Bachman Alvin H
The Nathan S. Kline Institute for Psychiatric Research, Orangeburg, NY, USA.
Department of Psychiatry, New York University School of Medicine, New York, NY, USA.
J Alzheimers Dis. 2017;55(1):269-281. doi: 10.3233/JAD-160594.
Mild cognitive impairment (MCI) is a transitional stage from normal aging to Alzheimer's disease (AD) dementia. It is extremely important to develop criteria that can be used to separate the MCI subjects at imminent risk of conversion to Alzheimer-type dementia from those who would remain stable. We have developed an automatic algorithm for computing a novel measure of hippocampal volumetric integrity (HVI) from structural MRI scans that may be useful for this purpose.
To determine the utility of HVI in classification between stable and progressive MCI patients using the Random Forest classification algorithm.
We used a 16-dimensional feature space including bilateral HVI obtained from baseline and one-year follow-up structural MRI, cognitive tests, and genetic and demographic information to train a Random Forest classifier in a sample of 164 MCI subjects categorized into two groups [progressive (n = 86) or stable (n = 78)] based on future conversion (or lack thereof) of their diagnosis to probable AD.
The overall accuracy of classification was estimated to be 82.3% (86.0% sensitivity, 78.2% specificity). The accuracy in women (89.1%) was considerably higher than that in men (78.9%). The prediction accuracy achieved in women is the highest reported in any previous application of machine learning to AD diagnosis in MCI.
The method presented in this paper can be used to separate stable MCI patients from those who are at early stages of AD dementia with high accuracy. There may be stronger indicators of imminent AD dementia in women with MCI as compared to men.
轻度认知障碍(MCI)是从正常衰老到阿尔茨海默病(AD)痴呆的过渡阶段。制定能够区分即将转化为阿尔茨海默型痴呆的MCI受试者和病情将保持稳定的受试者的标准极为重要。我们开发了一种自动算法,可从结构MRI扫描中计算出海马体积完整性(HVI)的一种新测量值,这可能有助于实现此目的。
使用随机森林分类算法确定HVI在稳定型和进展型MCI患者分类中的效用。
我们使用一个16维特征空间,包括从基线和一年随访结构MRI获得的双侧HVI、认知测试以及基因和人口统计学信息,在164名MCI受试者样本中训练随机森林分类器,这些受试者根据其诊断未来是否转化为可能的AD分为两组[进展型(n = 86)或稳定型(n = 78)]。
分类的总体准确率估计为82.3%(敏感性86.0%,特异性78.2%)。女性的准确率(89.1%)显著高于男性(78.9%)。在女性中实现的预测准确率是此前机器学习在MCI的AD诊断中的任何应用所报告的最高准确率。
本文提出的方法可用于以高准确率区分稳定型MCI患者和处于AD痴呆早期阶段的患者。与男性相比,MCI女性可能有更强的即将发生AD痴呆的指标。