| Literature DB >> 30333744 |
Shraddha Sapkota1, Tao Huan2, Tran Tran2, Jiamin Zheng2, Richard Camicioli1,3, Liang Li2, Roger A Dixon1,4.
Abstract
Background: Among the neurodegenerative diseases of aging, sporadic Alzheimer's disease (AD) is the most prevalent and perhaps the most feared. With virtually no success at finding pharmaceutical therapeutics for altering progressive AD after diagnosis, research attention is increasingly directed at discovering biological and other markers that detect AD risk in the long asymptomatic phase. Both early detection and precision preclinical intervention require systematic investigation of multiple modalities and combinations of AD-related biomarkers and risk factors. We extend recent unbiased metabolomics research that produced a set of metabolite biomarker panels tailored to the discrimination of cognitively normal (CN), cognitively impaired and AD patients. Specifically, we compare the prediction importance of these panels with five other sets of modifiable and non-modifiable AD risk factors (genetic, lifestyle, cognitive, functional health and bio-demographic) in three clinical groups. Method: The three groups were: CN (n = 35), mild cognitive impairment (MCI; n = 25), and AD (n = 22). In a series of three pairwise comparisons, we used machine learning technology random forest analysis (RFA) to test relative predictive importance of up to 19 risk biomarkers from the six AD risk domains.Entities:
Keywords: Alzheimer’s disease; biomarkers; cognition; cognitively normal; genetics; mild cognitive impairment; salivary metabolomics; victoria longitudinal study
Year: 2018 PMID: 30333744 PMCID: PMC6175993 DOI: 10.3389/fnagi.2018.00296
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
Clinical characteristics of CN, MCI and AD groupsa.
| Characteristics | CN | MCI | AD |
|---|---|---|---|
| 35 | 25 | 22 | |
| Age (years)b | 69.94 (3.80) | 70.40 (3.38) | 77.09 (11.20) |
| Gender (M/F) | 13/22 | 10/15 | 6/16 |
| Education, yearsb | 15.69 (2.69) | 14.68 (2.94) | 11.59 (3.23) |
| Mini-Mental State Examb | 28.46 (1.42) | 27.39 (3.14) | 21.32 (4.76) |
CN, Cognitively Normal; MCI, Mild Cognitive Impairment; AD, Alzheimer’s disease. .
Figure 1Results of random forest analyses (RFA) for three pairwise comparisons. The three panels of the figure display strongest predictors for discriminating clinical status: (A) Alzheimer’s disease (AD) vs. Cognitively Normal (CN); (B) AD vs. Mild Cognitive Impairment (MCI); (C) MCI vs. CN. Dashed black line is the cut off for variable importance in discriminating clinical status relative to other factors in the model. APOE, Apolipoprotein E (rs7412, rs429358); CR1, Complement receptor 1 (rs6656401); CLU, Clusterin (rs11136000); PICALM, Phosphatidylinositol-binding clathrin assembly protein (rs3851179); BMI, Body Mass Index; SRT, Simple Reaction Time; MMSE, Mini-Mental State Exam.