J Clin Neurol. 2009 Dec;5(4):153-166. English.
Published online Dec 31, 2009.
Copyright © 2009 Korean Neurological Association
Review

Current Challenges for the Early Detection of Alzheimer's Disease: Brain Imaging and CSF Studies

Rachel Mistur, MS,a Lisa Mosconi, PhD,a Susan De Santi, PhD,a Marla Guzman, BA,a Yi Li, MD,a Wai Tsui, MS,a,b and Mony J. de Leon, EdDa,b
    • aDepartment of Psychiatry, New York University School of Medicine, New York, NY, USA.
    • bNathan Kline Institute, Orangeburg, NY, USA.
Received September 16, 2009; Revised October 13, 2009; Accepted October 13, 2009.

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Abstract

The development of prevention therapies for Alzheimer's disease (AD) would greatly benefit from biomarkers that are sensitive to the subtle brain changes that occur in the preclinical stage of the disease. Reductions in the cerebral metabolic rate of glucose (CMRglc), a measure of neuronal function, have proven to be a promising tool in the early diagnosis of AD. In vivo brain 2-[18F]fluoro-2-Deoxy-D-glucose-positron emission tomography (FDG-PET) imaging demonstrates consistent and progressive CMRglc reductions in AD patients, the extent and topography of which correlate with symptom severity. There is increasing evidence that hypometabolism appears during the preclinical stages of AD and can predict decline years before the onset of symptoms. This review will give an overview of FDG-PET results in individuals at risk for developing dementia, including: presymptomatic individuals carrying mutations responsible for early-onset familial AD; patients with Mild Cognitive Impairment (MCI), often a prodrome to late-onset sporadic AD; non-demented carriers of the Apolipoprotein E (ApoE) ε4 allele, a strong genetic risk factor for late-onset AD; cognitively normal subjects with a family history of AD; subjects with subjective memory complaints; and normal elderly followed longitudinally until they expressed the clinical symptoms and received post-mortem confirmation of AD. Finally, we will discuss the potential to combine different PET tracers and CSF markers of pathology to improve the early detection of AD.

Keywords
Alzheimer disease; PET; CSF markers

Introduction

Alzheimer's disease (AD) is the most common form of dementia in the elderly and is the fourth leading cause of death in individuals over age 65 after heart disease, cancer, and stroke.1 AD is a progressive neurodegenerative disorder with insidious onset and characterized by severe decline in episodic memory. Instrumental signs include aphasia, apraxia, and agnosia, together with general cognitive symptoms, such as impaired judgment, decision-making, and orientation.2 Currently, there are no available tests for the definitive diagnosis of AD in vivo and the clinical diagnosis of AD remains a behavioral diagnosis after the exclusion of other causes. This greatly limits the potential for early intervention and prevention research. Furthermore, it is estimated that between 50% and 90% of dementia cases are left undiagnosed by standard clinical examinations.3

The definitive diagnosis of AD is based on the post-mortem observation of specific pathological lesions: intracellular neurofibrillary tangles (NFT), amyloid beta (Aβ) deposition in the form of extracellular senile plaques and blood vessel deposits, associated with neuronal and synaptic loss, and brain atrophy in specific brain areas.4, 5 Neurodegeneration in AD is estimated to begin as many as 20-30 years before the clinical manifestations become evident.6-9 During this preclinical phase, plaque and tangle load increase, and the first symptoms appear after specific brain circuits are structurally disrupted through synapse loss and neuronal death (see10 for review). It is widely recognized that the brain regions most vulnerable in early AD are in the medial temporal lobes [MTL, i.e., hippocampus, and transentorhinal, entorhinal cortex (EC), and subiculum].6, 7, 9 The pyramidal cells anatomically connected to the EC and the CA1 and subiculum regions of the hippocampus are particularly prone to NFT formation and degeneration, whereas primary sensory-motor, occipital areas, and cerebellum exhibit minimal neuronal loss.6, 7, 9 Disruption of the pyramidal neurons in the perforant path is thought to disconnect the hippocampus from the rest of the cortex, strongly contributing to the decline in memory observed in early AD.11 While there appears to be significant overlap between cerebrovascular disease and AD pathology,12, 13 a neuropathological definition for mixed forms of dementia remains to be established.

There is an association between NFT staging and severity of clinical status in AD. NFTs originate in the MTL, which plays a critical role in the neural control of memory functions, and then begin to cluster in the adjacent inferior temporal and posterior cingulate cortex (PCC) in mild AD, further disrupting episodic and autobiographic memory. In moderate to severe dementia, NFTs develop within the parieto-temporal and prefrontal association cortices, which are involved in the neural control of perception, attention, and language.6, 7 Despite an initial predilection for the neocortex, Aβ depositions are also found in the MTL at later stages of disease.14-16 For many years, the aggregation of large Aβ fibrils was considered the key event in AD pathogenesis and the main determinant of neuronal degeneration.17 A recent reformulation of the amyloid cascade hypothesis states that Aβ oligomers (Aβ-derived diffusible ligand, ADDL), not fibrillar Aβ, confer greater neurotoxicity to neurons by disrupting nerve signaling pathways and subsequently causing neuronal cell death.18

While the causes of neurodegeneration in AD are under investigation, the early appearance of pathological lesions and the progressive nature of cognitive deterioration in AD indicate a great need for developing biological markers of disease that are sensitive to the brain changes that are expected to occur decades prior to the onset of clinical symptoms. Ideally, a biological measure would be predictive of AD in presymptomatic individuals. Criteria for an ideal biomarker of the disease have been proposed by the Consensus Group on Molecular and Biochemical Markers of AD.19 In short, a model biomarker for the disease should detect a fundamental characteristic of the neuropathology and be validated in neuropathologically confirmed cases, with sensitivity and specificity of no less than 80%.19

Several modalities show promise in the development of early diagnostic tools for AD. These include: magnetic resonance imaging (MRI) measurements, positron emission tomography (PET) imaging of glucose metabolism in the MTL, PET imaging of Aβ deposits, and cerebrospinal fluid (CSF) biomarkers for tauopathy and Aβ. At present, none of these are recommended in any consensus guidelines for the diagnosis of AD, as they are not yet validated by large prospective studies.

Structural imaging, such as MRI, plays an important part in the diagnosis of AD by identifying other causes of dementia, such as tumor, subdural hematoma, and cerebrovascular diseases marked by infarcts and white-matter lesions.2 Cerebral atrophy, visualized as enlarged ventricles and cortical sulci, can also be identified by CT and MRI, but there is significant overlap with normal aging and other dementias.20 Nonetheless, several CT and MRI studies have shown that MTL atrophy is an early sign of AD and has value in predicting future dementia in non-demented subjects (see, among others).21-25 In addition to predicting future AD, hippocampal atrophy is also apparent in vascular cognitive impairment and can be useful in predicting cognitive decline related to vascular dementia.26

Ultimately, AD pathology has the effect of impairing neuronal function, which then leads to the clinical symptoms of dementia. Functional neuroimaging offers the unique capability to both visualize the direct effects of neuronal activity and quantify the rates of specific biological processes at the tissue level in vivo. PET imaging with 2-[18F]fluoro-2-Deoxy-D-glucose (FDG) has long been used to track AD-related brain changes by providing qualitative and quantitative estimates of the cerebral metabolic rate of glucose (CMRglc).

Glucose is the predominant source of energy for the brain. Early studies showed that glucose utilization is not only measurable, but also serves as an index of neuronal function.27 Brain energy metabolism is mainly associated with brain glutamate signaling,28 as more than 80% of brain's neurons are excitatory and 90% of synapses are glutamatergic. Thus, glucose metabolism can be interpreted as an index of synaptic functioning and density.27, 29-31 A recent animal study using FDG-PET showed a significant correlation between CMRglc in vivo and levels of synaptophysin, a marker of synaptic density, assessed at post-mortem.31 Additionally, astrocytes in the extraneuronal space have metabolic demands and contribute to the FDG-PET signal.32, 33 Recent studies have shown that coupling between energy metabolism and neuronal activity may also be achieved through astrocytic uptake of glucose and lactate shuttling to neurons.33

The present review will provide an overview of FDG-PET studies in AD, with an emphasis on the presymptomatic and preclinical detection of AD.

Alterations of Brain Glucose Metabolism in Alzheimer's Disease

One of the striking features of AD is the drastic reduction of CMRglc in specific brain regions. FDG-PET studies in AD demonstrate consistent and progressive CMRglc reductions, whose extent and topography correlate with symptoms severity (see34 for review). FDG-PET studies report that, as compared to age-matched healthy normal controls, AD patients show regional metabolic reductions in the parieto-temporal35, 36 and posterior cingulate cortices,37 against a background of widespread global metabolic impairment.38 The severity and topography of the metabolic reductions may also vary according to the age of onset of AD.39 Late-onset AD patients may be more likely to show mild metabolic reductions in the inferior temporal gyri, rather than extensive hypometabolism in the parieto-temporal regions, which are more typically observed in early-onset AD.39 CMRglc reductions are also apparent in the frontal lobe in advanced disease.40 This pattern of hypometabolism is seen in contrast to relative preservation of the primary motor and visual areas. Moreover, the cerebellum, thalamus and basal ganglia nuclei are spared from significant reductions in glucose metabolism.41 In comparison to AD, normal aging is characterized by subtle and diffuse CMRglc reductions in the frontal cortex and anterior cingulate cortex (ACC), accompanied by slight reductions in global CMRglc.42

These FDG-PET findings were initially reported in the early 1980's and have since been replicated numerous times. Furthermore, the pattern of hypometabolism described is largely accepted as a reliable in vivo hallmark of AD. Studies show that temporo-parietal abnormalities have high sensitivity in distinguishing AD from normal aging, despite some regional overlap.

These characteristic CMRglc reductions have also been used to differentiate AD from other neurodegenerative diseases, such as frontotemporal and Lewy body dementia (LBD),43 and cerebrovascular disease.44

One of the major challenges of the field remains to disentangle the relative contributions of AD, vascular cognitive impairment and, to a lesser extent, LBD to different stages of cognitive impairment in the general population.

The Early Diagnosis of Alzheimer's Disease

Importantly, MTL CMRglc reductions have been observed on FDG-PET before the onset of AD symptoms and a growing list of observations has highlighted the importance of PET as a tool for the detection of early disease and for estimating an increased risk for future dementia. This list of observations includes (Table 1):

Table 1
Preclinical diagnostic findings

  • Presymptomatic individuals carrying autosomal dominant mutations responsible for early-onset familial AD;

  • Patients with Mild Cognitive Impairment (MCI), which is in many cases a prodrome to AD;

  • Cognitively normal elderly who declined to MCI and AD several years after PET scan acquisition;

  • Cognitively normal individuals carriers of the Apolipoprotein E (ApoE) E4 allele, a susceptibility factor for late-onset AD;

  • Cognitively normal subjects with subjective memory complaints;

  • Cognitively normal subjects with a maternal family history of AD.

The main FDG-PET findings from these studies are reviewed below.

Conversion Studies

Presymptomatic early-onset familial Alzheimer's disease

Autosomal dominant mutations have been identified in three genes, i.e., amyloid precursor protein (APP, on chromosome 21), Presenilin 1 (PS1, on chromosome 14), and Presenilin 2 (PS2, on chromosome 1), which are associated with early-onset familial AD (FAD). FAD accounts for <5% of AD cases in the general population and is characterized by autosomal dominant inheritance with 100% penetrance and a specific early age of symptom-onset for a given pedigree (see45 for review). Therefore, the study of presymptomatic mutation carriers, close to the expected age of dementia onset provides unique information about preclinical AD-related brain changes in individuals who are destined to develop the disease.

Several FDG-PET studies examining presymptomatic FAD have shown parieto-temporal, posterior cingulate, and frontal cortex hypometabolism in most FAD cases, as compared to age-matched controls.46, 47 A study by Kennedy et al.47 showed that whole-brain CMRglc in presymptomatic FAD individuals is intermediate between controls and symptomatic FAD patients, suggesting a progression of global CMRglc impairment throughout the course of disease. However, these early studies examined only the neocortex. They did not examine the MTL, nor did they perform partial volume correction of the FDG-PET values. Since these patients also showed significant atrophy on MRI, it remained to be established whether the CMRglc reductions were an effect of an increasing CSF pool or if they reflect functional deficits in the remaining tissue. Unfortunately, CSF is not resolved by the PET camera and therefore cannot be avoided in tissue sampling. As a result, partial volume effects of CSF lower CMRglc values obtained with FDG-PET.

We recently addressed this issue in an FDG-PET and MRI study of presymptomatic PS-1 carriers from families with early-onset FAD, examined an average of 13 years prior to the estimated age at disease onset.48 Our data show MTL and cortical hypometabolism in presymptomatic FAD, as compared to age-matched non-carriers from the same families. Furthermore, these CMRglc reductions in FAD individuals exceeded tissue loss. Specifically, we compared CMRglc and volumes in several brain regions, including the hippocampus, EC, PCC, parietal and temporal cortices, and the whole-brain. Significant volume reductions in FAD as compared to controls were restricted to the parietal cortex. Conversely, CMRglc reductions on FDG-PET were observed in all regions examined and remained significant after MRI partial volume correction. After partial volume correction, the CMR glc reductions ranged from 13% (whole brain) to 21% (PCC), reflecting true reductions of brain glucose utilization per unit brain volume. After partial-volume correction, MTL CMRglc values were reduced by 12% in the hippocampus and 20% in the EC. Overall, presymptomatic FAD patients displayed wide-spread CMRglc reductions in the brain regions typically hypometabolic in clinically diagnosed dementia patients. In contrast, structural brain atrophy was relatively absent in these individuals.48 These results provide definitive evidence that CMRglc reductions precede clinical symptoms as well as gross structural brain changes. Similar observations have been made in the preclinical stages of late-onset AD.49, 50 Fore a more detailed discussion on the value of PET relative to structural MRI, see.20

Mild cognitive impairment

A successful strategy to examine the preclinical stages of sporadic AD has been to investigate MCI patients. MCI is recognized by many as a transitional state between healthy aging and dementia, during which individuals are able to perform the usual activities of daily living, but suffer mild memory impairments and/or other cognitive difficulties exceeding those expected on the basis of normal aging. These symptoms reduce the quality of life for the patient and put them at higher risk for developing AD.51, 52 In particular, patients in research settings having salient memory deficits, e.g., amnestic MCI, decline to AD with an estimated conversion rate of 10-30% per year.51, 52

While parieto-temporal and PCC hypometabolism is consensually recognized as the metabolic signature of AD, there is currently no specific pattern of hypometabolism considered to be a hallmark for MCI, as related to AD (see20, 34 for recent reviews). In keeping with the concept of MCI as an intermediate stage along the hypothesized continuum from normal aging to AD, MCI patients generally present with mild global and regional hypometabolism within the same brain regions typically affected in clinical AD,37, 49, 53-62 including an increasing numbers of reports of MTL CMRglc reductions.

The regional patterns of CMRglc reductions in MCI are milder and more variable than those found in AD and correspond to variations in the patterns of cognitive and behavioral abnormalities in individual patients.62, 63 Importantly, FDG-PET studies in MCI showed that hippocampal hypometabolism is a consistent feature of MCI patients regardless of the neuropsychological profile.49, 50, 55, 61 Studies have shown a more diversified metabolic profile in non-amnestic MCI (i.e., patients with selective deficits in attention and language51) who show either an absence of cortical hypometabolism or hypometabolism in brain regions including, but not restricted to the anterior cingulate and parieto-temporal cortices.49, 55, 61, 64, 65 In contrast, amnestic MCI patients more consistently show pronounced abnormalities in the parieto-temporal cortices and PCC.37, 56-58, 66 Therefore, early metabolic reductions in the PCC may represent a more specific marker of AD than hippocampal hypometabolism.58 Given the higher rate of decline to AD in amnestic compared to non-amnestic MCI,52 these data suggest that more severe and spatially extended CMRglc reductions in AD-specific regions may predispose these patients to develop AD in the near future.

In addition to cross-sectional examination of FDG-PET in the differentiation of MCI from normal aging, a growing body of longitudinal FDG-PET examinations has examined the predictive value of these measures in the decline from MCI to AD. These studies, most of which focused on amnestic MCI patients, demonstrated that baseline CMRglc reductions are more pronounced in MCI who progress to AD, as compared to MCI who remained stable. The reported prediction accuracies range from 75% to 100%.37, 53, 54, 57, 60, 62 Moreover, there is evidence showing that the metabolic changes in declining MCI patients are progressive and that longitudinal CMRglc measures both predict and correlate with decline to AD.58

Decline from normal cognition to mild cognitive impairment and to Alzheimer's disease

Very little work has been done with FDG-PET to monitor the progression from normal aging to sporadic AD. Such studies are limited because of the intrinsic difficulty of observing clinical change for a group with a low incidence of decline (1-3%/year) and a slow progression of cognitive deterioration.67 Following cognitively normal persons over time until they develop dementia requires large subject samples, long follow-up intervals, and great expense.

Few published FDG-PET studies have monitored decline from normal to MCI49 or from normal to MCI and dementia.50, 68 In the first study, de Leon et al.49 studied 67 normal elderly, 48 of whom completed a 3-year follow-up. Within the longitudinal subgroup, 11 declined to MCI and one to AD. The results showed that reduced baseline CMRglc in the EC predicted a future diagnosis of MCI with 83% sensitivity and 85% specificity. Moreover, longitudinal CMRglc reductions were found in the EC, hippocampus, and lateral temporal cortex during the progression to MCI. Importantly, these effects remained significant after correcting the CMRglc values for MRI partial volume effects, suggesting that these early CMRglc reductions in MCI are independent of tissue loss and represent true reductions of glucose consumption per gram of brain tissue. However, considering that many MCI remain stable, it was not established whether the observed CMRglc reductions in MCI were in fact due to AD.

In 2006, Jagust and colleagues68 also looked at early metabolic changes in cognitively normal individuals studied longitudinally. Sixty subjects were followed for a mean of 4 years and received baseline FDG-PET scans and annual evaluations of global cognition, assessed by the Modified Mini-Mental State Examination (MMSE). Within this cohort, six subjects developed incident dementia or cognitive impairment after the initial visit. The results showed that baseline CMRglc reductions in the angular gyri, left mid-temporal gyrus, and left middle frontal gyrus predicted rate of change on the MMSE, and were associated with faster cognitive decline.68

We recently published the first longitudinal FDG-PET study monitoring the conversion from normal cognition to AD. Mosconi et al. examined 77 normal elderly who were followed over 6-14 years and received multiple FDG-PET examinations. Over this interval, 11 baseline normal subjects developed dementia, 6 of whom were diagnosed with AD, and 19 declined to MCI. Decline for both outcome groups occurred, on average, 8 years after the baseline exam. CMRglc in the hippocampus and cortical regions were examined as predictors and correlates of change in clinical status. The baseline hippocampal CMRglc was the only regional predictor of future cognitive decline and predicted decline from normal to AD with 81% accuracy, including two post-mortem confirmed AD cases. The baseline hippocampal CMRglc also predicted decline from normal to MCI with 71% accuracy and from normal to another dementia with 77% accuracy. Hippocampal hypometabolism was also a significant predictor of the time to decline. On survival analysis, for individuals with hippocampal CMRglc ≤24 µmol/100 g/min, the predicted time to decline to AD was 7 years. For hippocampal CMRglc of 25-29 µmol/100 g/min, the predicted time to decline was 9.5 years, and for CMRglc ≥30 µmol/100 g/min, greater than 14 years. In AD, for every unit decrease in baseline hippocampal CMRglc, the time to decline decreased by 8.7% [95% CI: 3.0-14.1%] [χ2 (1)=8.6, p=0.003], which corresponds to a time ratio (TR) of 1.1 (95% CI: 1.0-1.4) years; the time to decline to other dementias is decreased by 4.7% (95% CI: 0.3-8.9%) [χ2 (1)=4.6, p<0.05], for a TR of 1.0 (95% CI: 0.8-1.2) years; the time to decline in MCI is decreased by 7.2% (95% CI: 2.8-11.5%) [χ2 (1)=9.93, p<0.01], for a TR of 1.08 years (95% CI: 1.03-1.11). Furthermore, normal subjects who later declined experienced greater rates of hippocampal, PCC and temporal cortex CMRglc reductions, as compared to non-declining subjects.69

In addition, these FDG-PET data provided direct evidence for a topographical progression of CMRglc abnormalities, which appear to originate in the MTL during the normal stages of cognition, extend to the PCC at the MCI stage, and finally spread to the parieto-temporal cortices in advanced dementia,50 in keeping with NFT pathology findings.9

Overall, our results demonstrated an association between reduced hippocampal CMRglc during normal aging, shorter time intervals until the onset of dementia, and increased risk for cognitive decline, years in advance of the clinical diagnosis.

Risk Factors for Alzheimer's Disease

Apolipoprotein E E4 genotype

The epsilon 4 allele of the ApoE gene on chromosome 19 is a widely recognized genetic risk factor for late-onset AD.70, 71 The ApoE gene codes for the production of lipoproteins, which mediate the transport of lipids throughout bodily fluids such as blood and CSF. ApoE is specifically thought to maintain neuronal homeostasis by transporting lipids such as cholesterol and phospholipids, which are responsible for neuronal plasticity, throughout the central nervous system.72 ApoE also provides lipids necessary for the repair of damaged nerve cell membranes. There are three common isoforms of the ApoE allele, including ApoE-2, ApoE-3, and ApoE-4. The ApoE-4 genotype has been designated as a risk factor for AD since 40% of AD patients have at least one ApoE-4 allele and there is also a negative association between the dose of ApoE-4 allele and the mean age of onset of AD.71

The mechanisms by which the ApoE-4 allele confers increased risk of future AD is under study, although it is believed that ApoE-4 may confer decreased plasticity of neuronal synapses and an inability to repair damaged neurons, as compared to the other allelic variants.72

FDG-PET studies examining the effects of the ApoE-4 allele on CMRglc in non-demented individuals reported that, compared to non-carriers, ApoE-4 carriers have mild but definite CMRglc reductions in the same regions as clinically affected AD patients.73-79 There is evidence in middle-age ApoE-4 carriers that the metabolic reductions are progressive and correlate with reductions in cognitive performance.73, 76 One study showed a 25% decline in CMRglc over an interval of 2 years in cognitively normal persons carrying two ApoE-4 alleles.76 Moreover, the same pattern of hypometabolism was observed in 20-40 year-old carriers. These CMRglc reductions are considered the earliest brain abnormalities yet found in living persons at risk for AD.77

Nonetheless, these studies are limited by the relatively short follow-up intervals and it remains to be established whether the CMRglc reductions in ApoE-4 carriers are predictive of decline to AD.

Subjective memory complaints

Subjective memory complaints (SMC) are widespread in the elderly community with a prevalence of 25-50%. For many, these complaints represent a preclinical sign of incipient dementia.80 We recently published an FDG-PET study examining CMRglc in cognitively normal individuals with and without SMC.79 The results showed that normal individuals with SMC have significant CMRglc reductions in several brain regions, including the parahippocampal gyri (PHG), parieto-temporal and inferior frontal cortices, fusiform gyrus, and thalamus, as compared to demographically matched individuals with no such complaints. Hypometabolism in the PHG region, which anteriorly includes the EC,81 was the most significant predictor of SMC status. These reductions distinguished subjects with and without SMC with 75% accuracy and an odds ratio of 2.4 (95% CI=1.3-4.8, p<0.001). In other words, normal individuals with SMC are more than twice as likely to have PHG deficits, as compared to those with no complaints.79 Moreover, we also explored the effects of ApoE genotype on CMRglc and showed a significant interaction between SMC and ApoE status. Among subjects with SMC, carriers of the ApoE-4 genotype had the lowest CMRglc measures in the PHG, temporal and frontal cortices, and thalamus, as compared to the three other subgroups. Again, the CMRglc reductions were most prominent in the PHG (18%).

Maternal family history of Alzheimer's disease

After advanced age, the most prominent demographic risk factor for developing AD is a first-degree family history of late-onset AD.71 Normal individuals with a first-degree relative affected with AD, particularly those with an affected parent, have a 4- to 10-fold increased risk for developing AD.82-84 We recently performed the first imaging study to compare individuals with and without a parental history of AD. In this analysis, we also examined the effects of maternal and paternal history of AD on CMRglc in normal individuals.85 Specifically, we examined the FDG-PET scans of 49 cognitively normal elderly grouped according to their family history of AD. We compared individuals with a maternal (FHm), paternal (FHp), or no family history of AD (FH-). The results showed that FHm individuals have CMRglc reductions in the PCC/precuneus, parieto-temporal and frontal cortices, and MTL, as compared to FHp and FH- individuals.85 Intriguingly, these brain regions are typically affected in clinical AD patients. The results remained significant after accounting for other potential risk factors for AD, such as age, female gender, ApoE genotype, and presence of subjective memory complaints. The ApoE-4 genotype was represented in 22% of our FHm subjects and the same effects were found in the group of ApoE-4 non-carriers.

As a follow-up to our cross-sectional study, we examined 66 cognitively normal subjects, which included 37 FH-, 9 FHp, and 20 FHm. These groups were controlled for age, education, prevalence of subjective memory complaints, and ApoE genotype.86 We compared CMRglc across FH groups at baseline, 2-year follow-up, and longitudinally. FHm showed significantly greater reductions in CMRglc in the PCC, parieto-temporal lobes, and MTL at baseline and follow-up when compared to FHp and FH-.86 The reductions in FHm increased from 13% at baseline to 23% at follow-up in the same brain regions and this increase in severity was significant. In comparison, there was no significant difference between CMRglc at baseline and follow-up in FHp and FH-. Additionally, the mean annual decline in CMRglc for FHm (-3.14±1.3 µmol/100 g/min) was significantly greater than that observed in FH- (-0.75±1.5 µmol/100 g/min) and in FHp (-0.56±0.91 µmol/100 g/min) (p<0.001).86 The progressive hypometabolism seen in FHm is similar to that seen in ApoE-4 carriers, although the observed CMRglc reductions are independent of ApoE genotype. This evidence suggests an alternative mechanism by which FHm increases vulnerability to brain glucose hypometabolism. According to our previous PET findings, these CMRglc reductions may predispose FHm individuals to developing AD in the future. However, as with the ApoE-4 genotype, it is necessary to longitudinally follow subjects in all family history categories to determine whether the observed CMRglc alterations truly predict the onset of AD.

The biological and genetic mechanisms that underlie the CMRglc reductions in individuals with a maternal family history of AD are not known. With all that is known about the molecular processes involved in glucose metabolism, hypometabolism may be due to, among other factors, a combination of defective mitochondrial function and possible mitochondrial DNA (mtDNA) mutations.87 mtDNA is entirely maternally inherited in humans and diseases associated with mtDNA mutations often present as sporadic disorders.87 These pieces of evidence lend support to a mtDNA transmission hypothesis. Although other genetic mechanisms (i.e., epigenetic imprinting, chromosome X transmission, and mutations in nuclear DNA affecting mitochondrial function) could potentially account for our findings, our findings suggest maternal transmission of hypometabolism in normal subjects at risk for AD.

Combining PET Tracers

Overall, the addition of other PET tracers to FDG-PET may be of use in the early detection of AD. An effective strategy to increase the diagnostic accuracy in AD would be to combine the sensitivity of FDG-PET with another modality that provides a disease-specific measure of pathology. Recently, several PET tracers for Aβ plaques have been developed. The best known tracer, N-methyl-[11C]2-(4'-methylaminophenyl)-6-hydroxybenzothiazole, also known as Pittsburgh Compound-B (PIB), binds to Aβ plaques in the brain.88 Several PIB-PET studies demonstrated significant PIB retention in AD patients as compared to controls, mostly evident in the middle- and pre- frontal cortex, parieto-temporal regions, PCC/precuneus, occipital lobes, thalamus and striatum (Fig. 1).88-92 These regions are consistent with the known pattern of Aβ plaque deposition observed at post-mortem, and correlate with reductions in CSF Aβ1-42.93 PIB-PET studies have shown significant PIB retention in the AD patients, and in as many as 61% of MCI90-92 and 22% of normal elderly.92 One follow-up PIB-PET publication indicates a lack of longitudinal progression,94 suggesting that amyloid deposition may plateau at the AD stage. At this early stage of development, PIB-PET has also been shown to facilitate an improved differential diagnosis of different dementias.92, 95 Although, a recent study suggested that PIB may not be specific for dense, classical plaques.96 PIB appears to bind to a family of amyloid substrates ranging from diffuse plaques to plaques in the vascular system (i.e., cerebral amyloid angiopathy), as well as NFT.97 These data, together with the observation that many normal elderly have brain amyloid deposits, suggest that PIB-PET imaging may be more suitable to rule out AD, since a patient without PIB uptake is unlikely to have AD.

Fig. 1
Two representative cases: magnetic resonance image (MRI, left column), FDG-PET (middle column) and PIB-PET (right column) of a normal control (top row) and an AD patient (bottom row). FDG: 2-[18F]fluoro-2-Deoxy-D-glucose, PIB: Pittsburgh Compound-B, AD: Alzheimer's disease.

The 20-minute radioactive decay half-life of 11C limits the use of PIB to centers with an on-site cyclotron, which makes it difficult to employ the tracer in clinical practice. To overcome these limitations, amyloid tracers labeled with fluorine-18 (18F, 110 minute half-life) have been developed. The first fluorinated Aβ PET tracer to become available is 2-(1-{6-[(2-[18F]Fluoroethyl)(methyl)amino]-2-naphthyl}ethylidene) malononitrile (18F-FDDNP), which binds with high specificity to both Aβ fibrils and NFTs.98, 99 18F-FDDNP binding was elevated in AD and MCI patients as compared to healthy elderly, and showed uptake in the parieto-temporal, PCC, and frontal regions, yielding 100% diagnostic separation between AD and controls, and 95% between MCI and controls.99 Moreover, there was a strong correlation between tracer uptake and scores on tests of memory and global cognition, as well as longitudinal progression for a subgroup of non-demented subjects that deteriorated over 2 years.99 One potential early diagnostic advantage of 18F-FDDNP over PIB is its capacity to bind NFT in addition to Aβ plaques.100 It is known that neurofibrillary tangle pathology, unlike Aβ deposition, appears in the early stages of disease in the hippocampal formation9 and increased NFT load in this region is associated with impairment of cognition.101 One issue raised is the narrow range of tracer binding across subjects and subsequently low percentage change in binding across groups, ranging from 5-8% increase in patients with MCI and AD relative to controls.100 Further studies are needed to assess the extent to which 18F-FDDNP increases both early diagnosis and diagnostic specificity.

Another fluorinated tracer for Aβ deposits, trans-4-(N-methyl-amino)-4'-{2-[2-(2-[18F]fluoro-ethoxy)-ethoxy]-ethoxy}-stilbene (18F-BAY94-9172), has recently become available.102 18F-BAY94-9172 binding matched the reported post mortem distribution of plaques, and was consistently higher in AD patients, as compared to healthy controls and FTD patients. Visual interpretation was 100% sensitive and 90% specific for the detection of AD.102

At the present time, amyloid imaging studies have not yet reported on early diagnosis, or on predictions of longitudinal clinical change. Additional validation studies are needed before Aβ PET imaging can enter into clinical practice.

CSF biomarkers

CSF is in direct contact with the brain and the molecular composition of CSF reflects biochemical changes in the central nervous system. Consequently, many studies have examined the CSF as a possible source for biomarkers of AD pathology. Several candidate diagnostic biomarkers have emerged. The most widely studied CSF analytes include markers for tau [i.e., total (T-tau) and hyperphosphorylated tau (P-tau) proteins] and Aβ pathology (i.e., peptide fragments of Aβ40 and Aβ42 amino-acid residues), as well as isoprostane (IsoP, a marker of lipid peroxidation and inflammation).

CSF tau studies

Two types of CSF measures for tau pathology have been used in AD: T-tau and markers for isoforms (X) of P-Tau (P-TauX). T-tau, the first biomarker to be available, is the most widely used. Overall, CSF T-tau reflects both the normal metabolism of tau and the nonspecific release of tau following neuronal damage, whereas P-tau231 reflects abnormal tau metabolism that is both sensitive and specific for AD.103 The evidence consistently demonstrates elevated CSF concentrations of T-tau in AD and in MCI compared to NL controls.104 CSF T-tau is increased to around 300% in AD as compared to controls, probably as a result of neuronal and axonal degeneration, with a mean sensitivity of 84% and 91% specificity.105 Moreover, 11 studies show that CSF T-tau (and P-tauX in several studies) alone or in combination with Aβ42 predicts the conversion from MCI to AD.106 Equivalent prediction accuracies for CSF T-tau and P-tau231-235 were reported by Arai,107 by Hansson using P-tau181,108 and by our group109 with P-tau231. However, reports about CSF X-tau levels in normal aging are limited and contradictory; some show age-related elevations in T-tau110 and others do not.111, 112 Our adult lifespan data shows age-related increases after age 60 for both P-tau231 and T-tau, and both demonstrate additive ε4 related effects.113 The T-tau level is not specific for AD, as CSF T-tau levels are also elevated in other neurodegenerative diseases.114, 115 In acute stroke, the T-tau, but not the P-tau118 levels, were increased and later returned to normal.116 However, P-tau231 offers reasonable diagnostic specificity for AD. Hampel and his co-investigators found that the levels of P-tau231, but not T-tau, were consistently elevated in AD as compared with frontotemporal dementia (FTD), LBD, vascular dementia, and NL elderly controls.117 More recent work extended the specificity of P-tau231 for AD to major depression118 and CJD.119 Similarly, others demonstrated the advantage of P-tau181 over T-tau in comparisons between AD with FTD120, 121 and with non-AD dementias.122, 123 A recent longitudinal biomarker study using MRI showed that changes in the levels of P-tau231 were longitudinally associated with the change in the hippocampal volume in MCI patients.124 However, there is very limited evidence for CSF tau levels to increase with clinical progression,124, 125 thus making the CSF measurement a potentially ancillary measurement to be used with modalities that do confer longitudinal information, such as FDG-PET or MRI. At present there are no reports of the combined use of tau biomarkers with FDG-PET in longitudinal designs.

CSF Aβ studies

CSF-Aβ42 is reduced in AD to around 50% of control concentrations, which may be due to the deposition of the peptide in brain plaques or to reduced neuronal production. Cross-sectional CSF Aβ studies consistently show reduced Aβ42 levels in both late onset AD104, 106 and MCI,108, 126 but there is a dearth of longitudinal data. The available longitudinal data show Aβ42 levels decrease in AD, but the magnitude of change has limited diagnostic value.115, 127 The background effects of aging on CSF turnover and Aβ production and clearance are poorly understood.128-130 Peskind et al.131 recently showed that CSF Aβ42 reductions were increasingly found with old age and detected at younger ages in ε4 carriers, and our data confirm that observation.113

Fagan recently reported that CSF Aβ42 reductions are associated with PIB evidence for deposition, but that the relationship is bimodal rather than linear.93 CSF Aβ42 reductions predict decline from MCI to dementia106 and from CDR=0 to CDR>0 when combined with T-tau or P-tau181.132 To date, only one study importantly showed that high CSF T-tau/Aβ42 or P-tau181/Aβ42 ratios, but not X-tau or Aβx measures alone, predicted decline from CDR=0 (normal) to CDR>0 (impaired).132

The diagnostic utility of CSF Aβ40, a predominant feature of vascular amyloid, as an AD biomarker is less well understood than Aβ42. A limited number of reports have shown elevated CSF Aβ40 levels with increasing age.133, 134 However, several cross-sectional studies failed to observe differences between AD and NL135, 136 and for this reason the Aβ42/40 ratio, controlling for overall Aβ production and clearance, is often used as a diagnostic marker.

CSF isoprostane studies

Oxidative stress is a recognized feature of AD and other neurodegenerative diseases.137 Postmortem studies by both the Pratico and Montine groups show elevated brain138 and CSF IsoP levels139 in AD. IsoP are isomers of enzymatically derived prostaglandins, which are produced by O2 radical-catalyzed peroxidation of polyunsaturated fatty acids.140 Most AD work has focused on IsoP's derived from prostaglandin F, which is a reliable marker of in vivo oxidative stress.141 These studies also demonstrate correlations between neuronal oxidation138 and Braak staging.139 There is a growing awareness that IsoP changes are early features of AD that may even precede the development of fibrillar amyloid plaques.142-144 At postmortem CSF IsoP is elevated in MCI,144 and there is consensus that the levels are elevated in both AD145, 146 and MCI in vivo.124, 147 In collaboration with Pratico, our CSF IsoP data show longitudinal elevations in MCI124 that accurately predict the decline from MCI to AD.109 Specifically, IsoP levels do change with clinical progression109 and with progressive brain damage.148 While there is no mechanistic basis to expect that elevated IsoP levels are AD-specific, several studies show that CSF IsoP levels are higher in AD than FTD149, 150 and other dementias.151

Combining PET with CSF biomarkers

Unfortunately, there is not much literature examining CSF biomarkers and PET. We recently published the first study to examine the relationship in normal subjects with subjective memory complaints (SMC) between hypometabolism on FDG-PET and CSF markers of AD pathology.79 Across all subjects, CMRglc in the MTL, parieto-temporal and frontal cortices were significantly correlated with CSF levels of T-Tau, P-Tau231 and IsoP, while no significant relationships with PET were found between CSF Aβ40 and Aβ42. ApoE-4 carriers with SMC showed the highest CSF T-Tau, P-Tau231 and IsoP levels, and the lowest MTL CMRglc on PET, compared to all other subgroups. These data indicate a relationship between MTL CMRglc reductions, tau pathology and lipid membrane peroxidation in normal individuals at risk for late-onset AD, and suggest that the relationship between these biomarkers becomes tighter when subjects start to show memory deficits. Longitudinal follow-up examinations of these subjects are needed to determine whether the observed CSF and CMRglc abnormalities foreshadow clinical decline.

Conclusions

In recent years, several FDG-PET studies have shown that brain glucose hypometabolism in the hippocampal formation, combined with cortical abnormalities, is useful in accurately distinguishing AD from normal aging and, to some extent, from other dementias. These MTL changes can be found in both sporadic AD and early onset FAD individuals, even at the stages where patients are cognitively normal. For sporadic AD, this pattern of hypometabolism has also been reported among those at increased risk for AD, such as those with subjective memory complaints, carriers of the ApoE-4 genotype, and those with a maternal history of AD. Consequently, FDG-PET imaging is a candidate modality for detecting subtle brain changes in early AD.

There is considerable evidence that CMRglc is sensitive to progression effects152 and can be used as outcome measure in long-term treatment studies of AD.76, 153 A major advantage of PET over other clinically based assessments, such as cognitive performance, is the potential for reducing the sample sizes and study duration. It was estimated that, in order to detect a 33% treatment response with 80% power in a typical 1-year, double-blind, placebo-controlled treatment study, using the MMSE as endpoint would require 224 AD patients per group, whereas a minimal 36 patients per group would be needed for an FDG-PET study.153

Further longitudinal studies are necessary to examine whether the risk for developing a specific form of dementia can be predicted based on the detection of individual FDG-PET patterns of CMRglc abnormalities among cognitively normal subjects or subjects with MCI. Currently, the AD Neuroimaging Initiative (ADNI) is pooling large amounts of longitudinal data which may provide this opportunity in the future (see: http://www.loni.ucla.edu/ADNI/).

There remains a great need to increase the preclinical diagnostic specificity, and to test whether the combination of the disease-sensitive CMRglc measures with pathology-specific biomarkers, such as with CSF measures of Aβ or tauopathy proteins, or amyloid PET imaging, would improve the differential diagnosis of AD, prior to the onset of dementia.

Accurate characterization of the extent and nature of brain damage in individual patients, based on converging evidence from different biomarkers, could play an important role in the prediction of subjects' clinical course. Other potential benefits include the selection of individualized treatment plans and screening of patients with more uniform underlying pathology for targeted research and drug trials. Overall, CMRglc FDG-PET measures predict cognitive decline from normal aging with sensitivity and specificity greater than 80%, and correlate with clinical progression in AD. CMRglc is therefore a promising candidate biomarker for AD.19 Overall, PET imaging appears to be of great clinical importance to the early and differential diagnosis of Alzheimer's type dementia.

Acknowledgements

This chapter was largely derived from a previous chapter that appears in Imaging the Aging Brain, eds. William Jagust and Mark D'Esposito, New York, NY: Oxford University Press, 2009. This study was supported by National Institutes of Health/National Institute on Aging Grants AG13616, AG12101, AG08051, AG022374, and AG032554; by the National Alzheimer's Disease Coordinating Center; by National Institutes of Health/National Center for Research Resources Grant M01-RR0096; and by the Alzheimer's Association.

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