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Crystal Ball for AD? Studies Quantitate Risk Factors, Markers of Progression
4 August 2006. Using data from a longitudinal study of nearly 2000 Finnish adults, researchers have devised a simple scoring scheme to judge if the middle aged are at risk of developing dementia later in life. The study, from Miaa Kivipelto at the Karolinska Institute in Stockholm, Sweden, and colleagues there and at the University of Kuopio and University of Helsinki, both in Finland, shows that the presence of modifiable vascular risk factors in middle age, including high blood pressure, cholesterol and obesity, predict the occurrence of dementia (due to Alzheimer disease in most cases) 20 years later. A score based on these and other risk factors (age, education, physical activity, and ApoE status) was a good predictor of dementia by age 70, with higher scores indicating higher risk. With further improvement and validation, the novel dementia risk score, analogous to assessments now used for cardiovascular disease or diabetes, could help patients by allowing doctors to target AD education and prevention to the people most at risk. The work appeared online August 2 in Lancet Neurology.

In a slightly different vein, another longitudinal study, this one from Clifford Jack and colleagues at the Mayo Clinic in Rochester, Minnesota, shows that changes in metabolite levels in the brain, detected by proton magnetic resonance spectroscopy (MRS) correlate with cognitive decline. Their work, currently in press, but available since July 24 in Neurobiology of Aging online, suggests another potential tool to track the progress of AD and gauge the effectiveness of treatments.

Knowing as early as possible who has AD is the current focus of a tremendous research effort, much of it involving brain imaging. MRI-based volumetric measurements show changes in brain volume, for example, and FDG PET scans reveal decreases in glucose uptake that track with progression of clinical dementia. But to try to get a handle on AD before it starts, the Scandinavian researchers investigated mid-life risk factors among participants in the Cardiovascular Risk Factors, Aging and Dementia (CAIDE) study. Between 1982 and 1987, thousands of Finnish residents were interviewed and examined for a variety of cardiovascular risk factors as part of the study. Kivipelto and colleagues followed up on 1,409 participants (original mean age 50). When the same participants were re-examined 20 years later (mean age 71.3), 61 were clinically diagnosed as demented, with most of those (48) having AD (Kivipelto et al., 2005).

Comparisons of the demented and nondemented subjects showed that future dementia was predicted by middle age measures of education and cardiovascular risk factors including hypertension, hypercholesterolemia and obesity. As expected, ApoE status also correlated strongly with dementia, as did age. Regression analysis was used to assign a whole number to each of these risk factors based on its relative contribution to dementia risk. In addition, sex, physical activity level, and ApoE status were also scored. (Scores denoted the presence or absence of a risk factor, or in the cases of age and education, one of three possible levels). Adding the individual risk scores gave an overall dementia risk score: higher tallies were associated with higher risk, which varied from 1 percent or less at scores in the lowest quintile, to approximately 20 percent in the highest quintile.

Of course, the formula could be improved by adding in information on more risk factors which were not covered in the Finnish study, including family history of dementia, serum triglycerides, HDL and LDL concentrations, waist-hip ratio, presence of diabetes or glucose intolerance, and C-reactive protein, the authors note. In addition, the scheme will need to be validated in other populations, and at later follow-up ages, as most dementia develops after age 70.

While the individual predictive value of the dementia rating score was considered good (77 percent sensitivity and 63 percent specificity), its main use will be in targeting prevention and education efforts, the authors say. “The risk score provides a quantitative estimation of the probability of becoming demented, but it cannot definitely state whether a person will develop dementia. Therefore, the score should be mainly used to target the preventive measures to those most at risk, and it should not be used to label individuals as being demented or nondemented in the future,” they write.

The bright side is that many of the contributing risk factors are modifiable by medication and/or lifestyle changes. Indeed, the results highlight that many of the same primary preventions (reducing blood pressure and cholesterol levels and controlling body weight, for example) should reduce the risk of both cardiovascular disease and Alzheimer disease. The results of trials to assess whether the effects of mitigating cardiovascular risk factors like hypertension can reduce dementia in reality have shown some positive indications, but the results have not been conclusive.

In the imaging study, Mayo researcher and first author Kejal Kantarci measured changes in metabolite levels in brain over the course of several years in normal elderly or patients with mild cognitive impairment or AD. The ratio of N-acetylaspartate (NAA)/creatine, a marker for neuronal integrity, declined more in the posterior cingulate gyrus (a region affected early in AD) in people with MCI and AD, compared to controls. Importantly, the change over time correlated with measurements of dementia over the course of the study, and correlated with clinical progression similar to changes in ventricular volume.

The choline/creatine ratio has been reported to be elevated with aging and in AD, and the investigators found that changes in that marker predict changes in the Mini-mental State Exam scores in patients with AD and with MCI progressing to AD. Interestingly, in patients with stable MCI, the choline/creatine ratio declined, which the authors suggest could represent a compensatory mechanism in some people to upregulate acetyl choline synthesis and slow cognitive decline.

The results suggest that both the NAA/creatine and choline/creatine ratios could be useful as disease markers and surrogates for therapeutic effects of new treatments. Changes may indicate either enhanced neuronal survival (NAA and choline) or normalization of choline metabolism, measures of brain physiology that could be “equally useful” as volumetric measurements in monitoring drug effects in patients with AD, the authors conclude.—Pat McCaffrey.

References:
Kivipelto K, Ngandu T, Laatikainen T, Winblad B, Soininen H, Tuomilehto J. Risk score for the prediction of dementia risk in 20 years among middle aged people: a longitudinal, population-based study. Lancet Neurology. 2006 August 3. Published online. Abstract

Kantarci K, Weigand SD, Petersen RC, Boeve BF, Knopman DS, Gunter J, Reyes D, Shiung M, O'brien PC, Smith GE, Ivnik RJ, Tangalos EG, Jack CR Jr. Longitudinal (1)H MRS changes in mild cognitive impairment and Alzheimer's disease. Neurobiol Aging. 2006 Jul 20; [Epub ahead of print] Abstract

 
Comments on News and Primary Papers
  Comment by:  Kristine Yaffe, ARF Advisor
Submitted 4 August 2006  |  Permalink Posted 4 August 2006

It is very important to identify those people at risk for developing dementia in later life, but few studies have tried to identify risk scores for predicting dementia. The focus these authors place on the middle aged is of great interest, because it can help with the early identification of people at risk, most likely prior to the development of neuropathological burden. In this regard, the paper is a major contribution.

The focus on cardiovascular risks is very interesting as well. First of all, that is mostly what they measured, which puts certain limits on the model, but it also confirms prior studies identifying mid- and late-life cardiovascular disease risk factors for dementia. These risk factors, including hyperlipidemia, hypertension, and obesity, are similar to those linking metabolic syndrome (that comprises these domains as a composite as well) with dementia.

While the paper is useful in that we can start to identify folks at risk, until we have definitive prevention strategies there is not a whole lot we can do other than advise people to control...  Read more


  Comment by:  Lon Schneider, ARF Advisor (Disclosure)
Submitted 4 August 2006  |  Permalink Posted 4 August 2006

From a scientific perspective, it is desirable to be able to predict who develops dementia and when. It’s even better to be able to prevent it. Niels Bohr cautioned, however, that “Prediction is very difficult, especially of the future.”

Kivipelto and colleagues offer up a risk assessment tool, derived from a population-based Finnish study, that is reminiscent of the coronary heart disease risk scales hosted on the American Heart Association’s website. The dementia risk scale is similarly based on simple demographic and clinical characteristics, most of which are individually well-established statistical dementia risk factors: age, low education, male gender, high blood pressure, obesity, high cholesterol, decreased physical activities, and in one version of the scale, ApoE genotype.

In principle, any middle-aged person can modify four of these factors in directions that would presumably decrease risk for...  Read more


  Comment by:  Mary Reid
Submitted 5 August 2006  |  Permalink Posted 6 August 2006

Hypertension, obesity, and high cholesterol levels, signs also reported in hypercortisolism, all seem to point to high cortisol levels as a predictor for the development of AD. Of interest is the study by Peskind et al. (1) which reports higher CSF cortisol concentrations associated with increased frequency of the ApoE-ε4 allele. Cohen and colleagues (2) also report increased cortisol levels in those with lower income and education. The Cushingoid features of Down syndrome may help explain the association with DS and AD.

Perhaps chronic hypercortisolism negatively regulates ACTH secretion and may explain the downregulation of the ACTH responsive gene seladin-1 (selective Alzheimer’s disease indicator-1) in AD (3). It is encoded by the DHCR24 gene and converts desmosterol to cholesterol. The Crameri group (4) finds that overexpression of seladin-1 resulted in both reduced BACE processing of APP and Aβ formation. It would be interesting to see whether ACTH treatment normalized BACE processing of APP and Aβ formation in the seladin-1 deficient mouse brains.

References:
1. Peskind ER, Wilkinson CW, Petrie EC, Schellenberg GD, Raskind MA. Increased CSF cortisol in AD is a function of APOE genotype. Neurology. 2001 Apr 24;56(8):1094-8. Comment in: Neurology. 2001 Oct 23;57(8):1522-3. Abstract

2. Cohen S, Doyle WJ, Baum A. Socioeconomic status is associated with stress hormones. Psychosom Med. 2006 May-Jun;68(3):414-20. Abstract

3. Greeve I, Hermans-Borgmeyer I, Brellinger C, Kasper D, Gomez-Isla T, Behl C, Levkau B, Nitsch RM. The human DIMINUTO/DWARF1 homolog seladin-1 confers resistance to Alzheimer's disease-associated neurodegeneration and oxidative stress. J Neurosci. 2000 Oct 1;20(19):7345-52. Abstract

4. Crameri A, Biondi E, Kuehnle K, Lutjohann D, Thelen KM, Perga S, Dotti CG, Nitsch RM, Ledesma MD, Mohajeri MH. The role of seladin-1/DHCR24 in cholesterol biosynthesis, APP processing and Abeta generation in vivo. EMBO J. 2006 Jan 25;25(2):432-43. Epub 2006 Jan 12. Abstract

View all comments by Mary Reid


  Comment by:  David Harper, Perry Renshaw
Submitted 8 August 2006  |  Permalink Posted 8 August 2006

Several recent studies, including the large, NIH-sponsored Alzheimer’s Disease Neuroimaging Initiative, have been launched to clarify the utility of using different imaging modalities as potential surrogate markers for disease processes. Considerable excitement was generated when initial reports appeared showing the 1H MRS measurements of N-acetylaspartate/creatine (NAA/Cr) ratio differed in patients with Alzheimer disease compared to normal elderly. The question of whether these techniques could discern chemical changes associated with earlier stages in the illness, such as those associated with mild cognitive impairment (MCI), would indeed be of great interest.

The authors of the current study have taken a well-characterized, large population (total n = 197) of control, MCI, and Alzheimer patients and studied them longitudinally in order to address these questions. Recent evidence has shown that in their target region, the posterior cingulate, changes that are observable with voxel-based morphometry and fMRI occur in MCI patients who convert to Alzheimer disease—these...  Read more


  Comment by:  Perminder Sachdev
Submitted 17 August 2006  |  Permalink Posted 17 August 2006

This report by Kantarci et al. is a welcome addition to the literature on neuroimaging measures that are of potential interest in diagnosis and charting of the longitudinal course of mild cognitive impairment (MCI). The authors used single voxel proton magnetic resonance spectroscopy (MRS) of the posterior cingulate region, and combined it with structural volumetric MRI, to study MCI and Alzheimer disease (AD) patients and healthy control subjects. At baseline, MRS measures were significantly different between MCI and controls as well as AD and controls, with reduced N-acetylaspartate/creatine (NAA/Cr) ratios and increased choline/creatine (Cho/Cr) and myoinositol/creatine (mI/Cr) ratios in both MCI and AD groups. These findings are consistent with the published literature (1). Interestingly, baseline MRS data did not distinguish the MCI subjects who went on to develop dementia from those who did not. The authors did not examine the NAA/mI and NAA/Cho ratios as discriminators, although the former has been reported to be the most accurate discriminator between AD and controls (2)....  Read more
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