BACKGROUND: Volumetric atrophy and microstructural alterations in diffusion tensor imaging (DTI) measures of the hippocampus have been reported in people with Alzheimer's disease (AD) and mild cognitive impairment (MCI). However, no study to date has jointly investigated concomitant microstructural and volumetric changes of the hippocampus in dementia with Lewy bodies (DLB). METHODS: A total of 84 subjects (23 MCI, 17 DLB, 14 AD, and 30 healthy controls) were recruited for a multi-modal imaging (3T MRI and DTI) study that included neuropsychological evaluation. Freesurfer was used to segment the total hippocampus and delineate its subfields. The hippocampal segmentations were co-registered to the mean diffusivity (MD) and fractional anisotropy (FA) maps obtained from the DTI images. RESULTS: Both AD and MCI groups showed significantly smaller hippocampal volumes compared to DLB and controls, predominantly in the CA1 and subiculum subfields. Compared to controls, hippocampal MD was elevated in AD, but not in MCI. DLB was characterized by both volumetric and microstructural preservation of the hippocampus. In MCI, higher hippocampal MD was associated with greater atrophy of the hippocampus and CA1 region. Hippocampal volume was a stronger predictor of memory scores compared to MD within the MCI group. CONCLUSIONS: Through a multi-modal integration, we report novel evidence that the hippocampus in DLB is characterized by both macrostructural and microstructural preservation. Contrary to recent suggestions, our findings do not support the view that DTI measurements of the hippocampus are superior to volumetric changes in characterizing group differences, particularly between MCI and controls.
BACKGROUND: Volumetric atrophy and microstructural alterations in diffusion tensor imaging (DTI) measures of the hippocampus have been reported in people with Alzheimer's disease (AD) and mild cognitive impairment (MCI). However, no study to date has jointly investigated concomitant microstructural and volumetric changes of the hippocampus in dementia with Lewy bodies (DLB). METHODS: A total of 84 subjects (23 MCI, 17 DLB, 14 AD, and 30 healthy controls) were recruited for a multi-modal imaging (3T MRI and DTI) study that included neuropsychological evaluation. Freesurfer was used to segment the total hippocampus and delineate its subfields. The hippocampal segmentations were co-registered to the mean diffusivity (MD) and fractional anisotropy (FA) maps obtained from the DTI images. RESULTS: Both AD and MCI groups showed significantly smaller hippocampal volumes compared to DLB and controls, predominantly in the CA1 and subiculum subfields. Compared to controls, hippocampal MD was elevated in AD, but not in MCI. DLB was characterized by both volumetric and microstructural preservation of the hippocampus. In MCI, higher hippocampal MD was associated with greater atrophy of the hippocampus and CA1 region. Hippocampal volume was a stronger predictor of memory scores compared to MD within the MCI group. CONCLUSIONS: Through a multi-modal integration, we report novel evidence that the hippocampus in DLB is characterized by both macrostructural and microstructural preservation. Contrary to recent suggestions, our findings do not support the view that DTI measurements of the hippocampus are superior to volumetric changes in characterizing group differences, particularly between MCI and controls.
Dementia with Lewy bodies (DLB) is the second leading cause of degenerative dementia after
Alzheimer's disease (AD), accounting for up to 15% of cases at autopsy (McKeith et
al., 2005). Despite the important
differences between AD and DLB in their archetypal presentations, they share some clinical,
neuropsychological, and pathological features, such the presence of amyloid and
neurofibrillary tangles. This can make differentiation between these disorders challenging
in clinical practice. Even after the development of consensus diagnostic criteria, the
sensitivity for differential diagnosis of DLB in clinical practice remains low, with many
DLB subjects misdiagnosed (McKeith et al., 2005).In the search for reliable imaging markers to distinguish DLB from AD, most of the
neuroimaging studies comparing DLB and AD have focused on macroscopic whole brain and medial
temporal lobe (MTL) changes. Relative MTL preservation in DLB compared to AD is one of the
most widely reported structural MRI distinctions between both conditions (Mak et
al., 2014). Our group has also reported
longitudinal data over 12 months that DLB is characterized by a milder rate of temporal
thinning compared to AD (Mak et al., 2015b).
However, these volumetric changes are relatively late events in the trajectory of
neurodegenerative processes (Jack et al., 2013), and are predated by many years of pathological protein
accumulation.The temporal gap between pathological onset and evident volumetric changes represents a
time-window when it may be possible to detect even more subtle changes in the hippocampus.
In recent years, there has been considerable progress in the application of diffusion
imaging to investigate aberrations at microstructural scale (Le Bihan, 2003). In neurodegeneration, the disintegration of microstructural
barriers (i.e. cell membranes, intracellular organelles, and myelin) results in a
quantifiable difference in the diffusion of water along white matter tracts that could be
indexed by various diffusion tensor imaging (DTI) metrics. Fractional anisotropy (FA)
reflects the directional coherence (tendency for water diffusion to occur in a single
direction) of water diffusion along axons, and lower FA is commonly interpreted as disrupted
microstructural integrity. Mean diffusivity (MD) is a measure of the average rate of
diffusion in all directions and generally increases with axonal degeneration and
demyelination. Such DTI alterations are not visible on conventional structural MRI
sequences, and previous evidence suggests that they could precede gray matter atrophy
(Kantarci et al., 2005).
Furthermore, alhough diffusion imaging is traditionally associated with white matter tracts,
there is recent interest in its utility for the detection of microscopic abnormalities
within gray matter structures. In particular, elevated MD within the hippocampus has been
reported by several groups in AD and to a lesser extent in MCI (Kantarci et
al., 2005; Müller et
al., 2005; Fellgiebel and Yakushev, 2011). These studies have triggered an unresolved
debate regarding the relative merits of microstructural (DTI) and volumetric measurements
(T1-MRI) in terms of characterizing subtle aberrations and predicting disease progression.
Although earlier studies have reported that hippocampal MD was a better predictor of
conversion from MCI to AD compared to hippocampal volume (Kantarci et al.,
2005), others have reported conflicting findings
(Brueggen et al., 2015). A
meta-analysis also concluded that the effect sizes for volumetric MTL measurements are at
least similar, if not larger, than respective DTI indices (Clerx et al.,
2012).We proposed that a simultaneous investigation of the volumetric and microstructural
properties of the hippocampus could better differentiate DLB from AD and MCI. There is
limited evidence of FA and MD changes within the hippocampus in DLB, although one study
revealed increased MD of MTL regions in AD compared to DLB (Kantarci et
al., 2010). Furthermore, while previous
work from our group has directly compared the gray matter characteristics in DLB relative to
AD (Mak et al., 2015b), the
differential patterns of vulnerability across the hippocampal subfields compared to mild
cognitive impairment (MCI) is not clear, even though increasing evidence suggests that DLB
could be preceded by an MCI phase (Donaghy et al., 2014). This could further complicate differential diagnosis in the
early stages of DLB. Lastly, it remains unclear how, and to what extent, the patterns of
microstructural changes are related to macrostructural atrophy in the hippocampus.Combining DTI and T1-MRI imaging, we conducted a thorough investigation of the hippocampus
in patients with DLB in comparison to healthy controls and patients with MCI and AD. This
study is an extension of literature on three fronts: (a) we applied a novel hippocampal
segmentation pipeline (Iglesias et al., 2015) to delineate hippocampal subfields, (b) we evaluated covarying patterns of
microstructural deficits and volumetric atrophy in the hippocampus; (c) this study yielded
novel insights concerning the inter-modality associations of microstructural changes and
volumetric atrophy within the hippocampus and its sub-regions.We first hypothesized that MCI and AD would show total hippocampal and subfield atrophy
relative to healthy controls and DLB. Specifically, we expected to find a more severe
atrophy of the CA1 in MCI and AD since it has been established to be a preferential site of
tau aggregation and early neuronal loss (Braak and Braak, 1991). Second, these patterns of volumetric atrophy would be accompanied by
microstructural changes in MCI and AD. We hypothesized that DLB will be characterized by
microstructural changes in the absence of pronounced hippocampal atrophy. Lastly, we also
expected that MD, as a surrogate marker of neuronal loss, would be associated with
concomitant volumetric atrophy within the hippocampus.
Methods
Participant recruitment and clinical assessment
As part of the Neuroimaging of Inflammation in Memory and Related Other Disorders
(NIMROD) study (Bevan-Jones et al., in press), 23 MCI, 17 DLB, and 14 AD subjects were
recruited from cognitive disorder clinics in neurology, old age psychiatry and related
services at Cambridge University Hospital (CUH) and other Trusts within the region
including Cambridgeshire, Lincolnshire, Bedfordshire, Norfolk, Suffolk, Hertfordshire, and
Essex. Case registers held by the Dementias and Neurodegeneration specialty of the UK
Clinical Research Network (DeNDRoN) and the Join Dementia Research (JDR) platform were
also used. MCI was defined as Mini Mental State Examination (MMSE) greater than 24 but
with memory impairment beyond that expected for age and education which does not meet
criteria for probable AD and is not explained by another diagnosis (Albert et
al., 2011). DLB was diagnosed according
to the 2005 consensus criteria for probable dementia with Lewy bodies (McKeith et
al., 2005), and probable AD was
diagnosed according to the National Institute on Aging-Alzheimer's Association diagnostic
guidelines (McKhann et al., 2011). As some of the assessment scales required caregiver input for completion,
we also obtained written informed consent from the caregivers. A total of 30 healthy
controls were recruited from amongst spouses of subjects and from volunteers on JDR lists.
They were defined as subjects with MMSE scores greater than 26 and with an absence of (i)
regular memory complaints, (ii) signs or symptoms suggestive of dementia, and (iii)
unstable or significant medical illnesses. Participants underwent an assessment that
included clinical, demographic, and global cognition (MMSE). We further investigated the
Rey Auditory Verbal Learning test (RAVLT) as a more detailed measure of semantic memory
(Rey, 1941). Verbal learning was assessed using
a 15-item word list over five trials (RAVL Total), immediate (A6) and delayed recall (A30)
and true recognition (True Recognition) (i.e. recognition minus false positives). From
these tests, we constructed a composite Z-score for memory domain based
on the means and standard deviations of our healthy controls.
T1 and diffusion MRI
Participants underwent structural MRI at the Wolfson Brain Imaging Centre using a 3 T
Siemens Magnetom Verio (Siemens AG, Erlangen, Germany) (28 controls, 21 MCI, 12 AD, and 11
DLB) or a 3 T Magnetom Trio Tim scanner (Siemens, Surrey, England) (two controls, two MCI,
and four DLB). An initial three-dimensional structural high-resolution T1 weighted
sequence was acquired in the sagittal plane (MPRAGE isotropic) for all participants to
exclude any structural brain abnormality (176 slices of 1.0 mm thickness, TE = 2.98 msec,
TR = 2,300 msec, flip angle = 9°, SENSE = 1, field of view = 256 × 240 mm2,
acquisition matrix 256 × 240; voxel size = 1 × 1 × 1 mm3). The DTI protocol was
as follows: 63 slices of 2.0 mm thickness, TE = 106 msec, TR = 11,700 msec, SENSE = 2,
field of view = 192 × 192 mm2, acquisition matrix 96 × 96; voxel size = 2 × 2 ×
2 mm3).
Processing of T1 images
Cortical reconstruction and volumetric segmentation of MRI data were performed using the
beta version of Freesurfer 6 image analysis suite (http://surfer.nmr.mgh.harvard.edu/). The processing of T1 MRI images includes the
following steps: removal of non-brain tissue, automated Talairach transformation,
segmentation of the subcortical white matter and deep gray matter volumetric structures,
intensity normalization, tessellation of the gray matter/white matter boundary, automated
topology correction, and surface deformation to optimally place the gray matter/white
matter and gray matter/CSF boundaries. The cortical thickness was calculated as the
closest distance from the gray/white matter boundary to the gray/CSF boundary at each
vertex. All surface models in our study were visually inspected for accuracy. Manual
corrections were performed in the event of tissue misclassification/white matter errors
while blinded to diagnostic group information. Four subjects (two AD and two DLB) who had
excessive pial or white matter surface segmentation errors after the manual correction
were excluded from all analyses.
Hippocampal subfield volumetry
To investigate the differential involvement of the hippocampal subfields across the
groups, we used an automated segmentation tool based on a probabilistic statistical atlas
built upon ultra-high resolution ex vivo MRI data (Figure 1). Volumetric measurements for CA1, CA2–3, CA4, dentate
gyrus (DG), and total subiculum (subiculum, presubiculum, and parasubiculum) were
obtained. Technical details of this method have been previously described (Iglesias
et al., 2015). Importantly,
this technique represents a significant update over a previous version (van Leemput
et al., 2009), overcoming
several limitations which have been documented in our previous work and others (Mak
et al., 2015a). Compared to
its previous version (van Leemput et al., 2009), the ultra-high resolution of the ex vivo MRI
training data provided a better contrast between the subfield boundaries, which improved
the reliability of the annotations in this version atlas. As a result, the subfield
volumes estimated from this technique yielded greater agreement with those from
histological studies (Iglesias et al., 2015). Total intracranial volume (ICV) was used to correct volumetric
segmentations for inter-individual differences in head sizes. This was calculated by the
use of an atlas normalization procedure, which has been found to correlate strongly
(r = 0.93) with manually derived ICV (Buckner et al.,
2004).
Figure 1.
Illustration of hippocampal subfield from a representative subject in each group.
Abbreviations: AD, Alzheimer's disease; MCI, mild cognitive impairment; DLB,
dementia with Lewy bodies; MD, mean diffusivity; FA, fractional anisotropy; CA,
cornu ammonis; DG, dentate gyrus.
Illustration of hippocampal subfield from a representative subject in each group.
Abbreviations: AD, Alzheimer's disease; MCI, mild cognitive impairment; DLB,
dementia with Lewy bodies; MD, mean diffusivity; FA, fractional anisotropy; CA,
cornu ammonis; DG, dentate gyrus.
Diffusion imaging parameters
The full multi-modal pipeline is illustrated in Figure
2. DTI data was pre-processed in native space using Freesurfer. Briefly, each DTI
volume was corrected for residual eddy currents and head movement by affine registration
to the b = 0 image (no diffusion weighting). Diffusion tensors were
fitted using linear least squares optimization, and FA and MD images were calculated from
the eigenvectors of the tensors. Intra-subject registration between the individual
low-b diffusion and T1 MRI was performed by using an affine
registration method that seeks to maximize the intensity contrast of the
b = 0 image across the cortical gray/white boundary obtained from the T1.
For our analyses of DTI parameters in the hippocampus, we sampled the T1 segmentations
from the processed structural data into the diffusion space. All registrations were
visually inspected for gross misalignments (Figure S1, available as supplementary material
attached to the electronic version of this paper at http://journals.cambridge.org/ipg). Consistent with previous methodologies (Fjell
et al., 2008; Den Heijer
et al., 2012), hippocampal
masks were eroded inwards by 1 voxel across its boundary to account for partial volume
effects (PVE) especially near the CSF. For each subject, MD and FA values were averaged
across all voxels.
Figure 2.
Image analysis pipeline. FA and MD maps were derived from DTI data in native space.
Hippocampal segmentations from T1 were co-registered and resampled into the
diffusion space for quantitative analysis of FA and MD values in the
hippocampus.
Image analysis pipeline. FA and MD maps were derived from DTI data in native space.
Hippocampal segmentations from T1 were co-registered and resampled into the
diffusion space for quantitative analysis of FA and MD values in the
hippocampus.
Statistical analyses
Statistical analyses were performed with the STATA13 (http://www.stata.com/)
software. Distribution of continuous variables was tested for normality using the
Skewness–Kurtosis test and visual inspection of histograms. Parametric data were assessed
using either t-tests or analysis of variance (ANOVA) for continuous
variables. For non-parametric data, Wilcoxon rank-sum test or Kruskal–Wallis test was
used. χ2 tests were used to examine differences between
categorical variables. To limit the number of statistical comparisons, and because neither
AD nor DLB pathologies differentially involve either hemisphere, right and left
hemispheric volumes were averaged for statistical analyses. ANCOVA – accounting for age,
gender, and ICV – and post-hoc Tukey tests were used to compare imaging measurements
between the groups. Associations among the three hippocampal measures (volume, MD, and FA)
were assessed using Spearman rank correlations to evaluate whether hippocampal volume
changes and microstructural diffusion changes were affiliated phenomena or independent
from each other. To investigate the association of hippocampal measurements with memory
domain, we performed partial correlations, correcting for age, gender, and ICV.
Furthermore, we performed a series of statistical analyses to justify for the pooling of
subjects who were scanned in the Magnetom Verio (n = 72) and Magnetom
Trio (n = 8) scanners. First, a χ2 test did
not reveal a significant difference in the distribution of subjects scanned in each
scanner across the groups. Second, comparability of the data was confirmed by analysis of
variance of hippocampal volumes including group diagnosis, age, gender, intracranial
volumes, and scanner as factors. In these analyses, the scanner effect was insignificant
(p = 0.755). Lastly, within each diagnostic group, we also compared hippocampal volumes
obtained from the two scanners, revealing no trend-level or significant differences.
Statistical threshold of significance for all tests was set at p < 0.05.
Results
Sample characteristics and clinical features
Demographics, clinical characteristics of the sample are summarized in Table 1. There was a significant difference in age
(F(3,76) = 4.16; p = 0.009) and education
(χ²(3) = 17.11; p = 0.001) across the groups, although the
subject groups were well matched for gender (χ²(3) = 4.77; p =
0.19). As expected, we found significant group differences in MMSE
(χ²(3) = 45.28; p < 0.001), with patient groups
performing worse relative to controls. MCI had higher MMSE scores compared to DLB (p
< 0.001). All patient groups performed worse on the memory domain score compared to
healthy controls (χ²(3) = 51.96; p < 0.001). We found
no differences in memory function between MCI and DLB and between AD and DLB.
Table 1.
Clinical and demographic characteristics of the study sample
HC
MCI
AD
DLB
P value
N
30
23
12
15
Gender (M:F)
16:14
12:11
9:3
12:3
χ² = 4.77, p = 0.190a
Age (years)
68.7 ± 6.9
75.8 ± 7.4
71.7 ± 9.5
72.6 ± 5.8
F(3,76) = 4.16, p =
0.009b,*
Education (years)
14.9 ± 3.0
12.4 ± 2.6
14.7 ± 3.2
11.3 ± 1.8
p = 0.001c,*
GDS
1.7 ± 2.15
2.4 ± 2.1
2.3 ± 2.8
5.0 ± 3.8
p = 0.003c,*
MMSE
28.9 ± 1.1
26.8 ± 1.7
24.8 ± 2.9
23.0 ± 3.9
p < 0.001c,*
ACE-r
91.7 ± 5.6
82.5 ± 6.6
72.8 ± 10.0
69.0 ± 9.6
F(3,76) = 41.78, p
< 0.001b,*
IFS
22.5 ± 4.3
18.0 ± 5.3
13.0 ± 3.7
9.3± 4.0
F(3,74) = 31.87, p
< 0.001b,*
Values expressed as mean ± 1 SD. ACE-r: Addenbrooke's Cognitive Examination
revised; AD: Alzheimer's disease; DLB: dementia with Lewy bodies; GDS: Geriatric
Depression Scale; HC: healthy controls; IFS: Institute of Cognitive Neurology
Frontal Screening; MCI: mild cognitive impairment; MMSE: Mini-Mental State
Examination.
Significant at p < 0.05.
χ2 (df = 3).
ANOVA.
Kruskal–Wallis test (df = 3).
Clinical and demographic characteristics of the study sampleValues expressed as mean ± 1 SD. ACE-r: Addenbrooke's Cognitive Examination
revised; AD: Alzheimer's disease; DLB: dementia with Lewy bodies; GDS: Geriatric
Depression Scale; HC: healthy controls; IFS: Institute of Cognitive Neurology
Frontal Screening; MCI: mild cognitive impairment; MMSE: Mini-Mental State
Examination.Significant at p < 0.05.χ2 (df = 3).ANOVA.Kruskal–Wallis test (df = 3).
Total hippocampus
Comparisons of volume, FA, and MD measurements of the total hippocampus across the groups
are illustrated in Figure 3. There was an
expected main effect of group on total hippocampus [(F(6,73) =
17.23; p < 0.001)] after correcting for age, gender, and total intracranial
volumes. Post-hoc Tukey tests revealed total hippocampal atrophy in both MCI and AD groups
relative to controls (p < 0.001). Hippocampal volumes were significantly smaller in
AD (p = 0.001) and MCI (p = 0.038) compared to DLB. Hippocampal MD was significantly
elevated in AD relative to controls (p = 0.009). There was no significant main effect of
hippocampal FA.
Figure 3.
Bar charts showing the group comparisons of total hippocampal volume
(mm3), MD, and FA across the groups. Volumetric comparisons
(mm3) of the hippocampal subfields are also shown. Abbreviations: AD,
Alzheimer's disease; MCI, mild cognitive impairment; DLB, dementia with Lewy bodies;
MD, mean diffusivity; FA, fractional anisotropy; CA, cornu ammonis; DG, dentate
gyrus.
Bar charts showing the group comparisons of total hippocampal volume
(mm3), MD, and FA across the groups. Volumetric comparisons
(mm3) of the hippocampal subfields are also shown. Abbreviations: AD,
Alzheimer's disease; MCI, mild cognitive impairment; DLB, dementia with Lewy bodies;
MD, mean diffusivity; FA, fractional anisotropy; CA, cornu ammonis; DG, dentate
gyrus.
Hippocampal subfields
The comparisons of hippocampal subfield volumes across the groups are described in Figure 3. AD showed global atrophy across all its
subfields compared to controls. With the exception of the CA2-3, all other regions were
also smaller in MCI compared to controls. DLB did not show any local atrophy across all
the regions compared to controls. Among the patient groups, CA1 was smaller in AD (p =
0.005) and trend-level in MCI (p = 0.066) compared to DLB. Furthermore, both MCI (p =
0.003) and AD (p<0.001) showed significant total subiculum atrophy compared to
DLB.
Associations of microstructural white matter changes with gray matter
Associations between microstructural and volumetric measurements are shown in Figure 4. Hippocampal FA was positively correlated
with volume in the control group (r = 0.4, p = 0.039). In addition,
hippocampal MD was negatively correlated with volume in MCI (r = −0.4, p
= 0.032) and a trend-level association was observed in DLB (r = −0.5, p =
0.09). Overall hippocampal MD was also negatively associated with local subfield atrophy
of the CA1 in MCI (r = −0.4, p = 0.046) and the total subiculum in DLB
(r = −0.6, p = 0.020).
Figure 4.
Scatter-plots of hippocampal volumes against FA and MD measures for each group.
Abbreviations: AD, Alzheimer's disease; MCI, mild cognitive impairment; DLB,
dementia with Lewy bodies; MD, mean diffusivity; FA, fractional anisotropy; CA,
cornu ammonis.
Scatter-plots of hippocampal volumes against FA and MD measures for each group.
Abbreviations: AD, Alzheimer's disease; MCI, mild cognitive impairment; DLB,
dementia with Lewy bodies; MD, mean diffusivity; FA, fractional anisotropy; CA,
cornu ammonis.
Associations of imaging measures with memory domain
Within the MCI group, memory was associated with total hippocampal volume
(r = 0.6, p = 0.01), and to a lesser extent with hippocampal MD
(r = −0.44, p = 0.052). To compare the relative strength of MD and
volume in the association with memory, we found that including hippocampal volume into a
multivariate regression model weakened the association of hippocampal MD with memory (p =
0.123). In the full model (covariates: age, gender, intracranial volume, MD), hippocampal
volume remained significantly correlated with memory (p = 0.012). No
correlations were found with hippocampal FA.
Discussion
The combination of measures of macrostructural volume and microstructural properties
provided new insights into the change in hippocampal subfields in AD, MCI, and DLB. The main
findings in relation to our hypotheses were as follows: (a) hippocampal and subfield atrophy
was more prominent in both AD and MCI than DLB; (b) group differences and memory
correlations of hippocampal volumes were more pronounced compared to FA and MD; and (c)
increased hippocampal MD was associated with smaller hippocampal and CA1 volumes in MCI and
subicular volumes in DLB.
Volumetric comparisons of the hippocampal subfields
Our findings of total hippocampal atrophy and widespread subfield losses in both MCI and
AD are in agreement with the literature (de Flores et al., 2015). None of the subfields in AD and MCI were
spared with the exception of CA2-3 in the MCI group. These findings are corroborated by
previous imaging studies (Apostolova et al., 2006; Wisse et al., 2015; Mak et al., 2015a), including post-mortem evidence indicating greater CA1, CA2,
CA3, and subiculum atrophy in AD relative to healthy controls (Bobinski et al., 1995).In contrast to both AD and MCI, the DLB group exhibited hippocampal preservation compared
to healthy controls across the subfields. In particular, CA1 and subiculum volumes were
significantly smaller in AD compared to DLB. The differential vulnerability of the CA1 in
AD and DLB is also consistent with distinct neuropsychological profiles of both groups, in
that episodic memory impairment is often a relatively late event in the progression of DLB
compared to AD. The CA1 has extensive reciprocal projections with the enthorinal cortex
and previous evidence from high-resolution 4T imaging (Mueller et al.,
2011) and lesion (Rempel-Clower et
al., 1996) studies have indicated a
characteristic involvement of CA1 neurons in subserving episodic memory processes. In
addition, the observation of CA1 preservation in DLB confirmed previous work from our
group (Firbank et al., 2010;
Mak et al., 2015a) and others
(Delli Pizzi et al., 2016)
using a different technique (van Leemput et al., 2009). These findings in DLB are also largely consistent with
histopathological evidence in DLB, indicating that neuronal loss and Lewy neurites are
largely confined to the CA2-3 with sparing of the CA1 and subiculum regions (Harding
et al., 2002). However, CA1
atrophy in DLB has also been reported by others (Sabattoli et al., 2008; Chow et al., 2012). Differences in the findings could be
attributed in part to different techniques of analyses: subfield volumetric analyses (Mak
et al., 2015a; Delli Pizzi
et al., 2016),
radial-distance mapping (Chow et al., 2012), and analyses of shape deformations (Sabattoli et al.,
2008). In addition, the mean age of the DLB
subjects in Chow et al. (2012)
and Sabattoli et al. (2008)
were on average 6 years older than the DLB subjects in this study (mean age = 72.6). This
age difference between the studies is noteworthy considering the preferential
vulnerability of CA1 to age-related processes, where volume loss is most pronounced in the
seventh decade of life (Mueller et al., 2007).
Microstructural comparisons of the hippocampus
Previous studies in AD have demonstrated that increased MD represents loss of neuron cell
bodies, axons, and dendrites, which could lead to macroscopic structural changes. As
described, global hippocampal and subfield atrophy was evident in AD and MCI compared to
healthy controls. Furthermore, these macrostructural changes are paralleled by microscopic
disturbances in the AD group, which showed elevated MD compared to controls. We did not
find any microstructural differences between MCI and AD. This is consistent with previous
studies (Kantarci et al., 2001;
Fellgiebel et al., 2004) and
fits with our observation of comparable hippocampal volumes in both groups.
Neurodegenerative processes in AD such as extensive cell loss and atrophy could lead to
increased diffusivity that could explain the observations of increased MD in AD.
Specifically, pathologic disruption of cell membranes, loss of myelin, and axonal
processes would lessen the restriction on diffusivity and result in an increase in MD. In
addition, neuroinflammation and associated microglial activation in AD – a topic of
ongoing investigation by our group – is commonly associated with neuritic senile plaques,
which are also expected to increase MD by producing an expansion of the extracellular
space. From autopsy studies, it is established that accumulation of intracellular tau
occurs early within the hippocampus (Braak and Braak, 1991), potentially leading to larger amounts of extracellular fluid, which in
turn lead to a higher hippocampal MD. Future studies with in vivo tau
imaging would be desirable to probe the involvement of tau pathology in the
microstructural disintegration of the hippocampus.However, we did not detect significant microstructural alterations of FA and MD in MCI.
Our findings are thus only partially consistent with previous studies of MCI and AD
(Kantarci et al., 2001;
Fellgiebel et al., 2004; Müller
et al., 2005), where elevated
MD was reported in both MCI and AD without FA decreases. On the other hand, the absence of
microstructural changes in our MCI group is corroborated by other studies (Bozzao
et al., 2001; Zimny
et al., 2013). As such, the
literature of MD changes in MCI is inconclusive at present. Several reasons could account
for these discrepant findings. The earlier studies reporting increased hippocampal MD in
MCI markedly differed in acquisition protocols: 1.5T scanner, thicker slices (5 mm vs 2 mm
in our study) and fewer directions (3 and 6 vs 64 in our study) (Kantarci et
al., 2001; Fellgiebel et
al., 2004; Müller et
al., 2005). These thicker sections
could potentially compound the PVE from CSF voxels surrounding the atrophic hippocampus,
leading to higher MD in MCI and AD.Although MCI and AD have been the subject of hippocampal FA and MD analyses, the
microstructural properties of the hippocampus in DLB is still unknown. Contrary to our
hypothesis, no differences in FA and MD were found in DLB compared to healthy controls and
MCI/AD, suggesting that the volumetric preservation of the hippocampus was accompanied by
intact microstructural properties. Furthermore, the lack of significant FA/MD differences
between DLB and MCI/AD suggests that volumetric hippocampal measurements have greater
clinical utility in differential diagnosis compared to DTI analyses.
Inter-modality correlations: microstructural changes and volumetric atrophy
We showed a negative correlation between hippocampal MD and volume in the MCI group,
confirming findings from previous studies in MCI (Kantarci et al., 2005). Further, our findings extended the literature
by demonstrating that the MD of the whole hippocampus was also related to localized
atrophy of the CA1 in MCI, and the subiculum in DLB. The negative association between the
overall hippocampal MD and subiculum atrophy in DLB is particularly interesting in light
of the preserved subiculum volume at the group level. We could therefore surmise that the
co-varying hippocampal MD is reflecting an early process of neuronal loss that may
eventually lead to subicular atrophy, as previously found in older samples of DLB subjects
(mean age 78) (Chow et al., 2012; Mak et al., 2015a). This notion is also supported by recent histopathological evidence that
MD, other than volume, was the most prominent in vivo marker for neuronal
density, where it showed negative correlations with both neuronal density and hippocampal
size (Goubran et al., 2015). It
would be necessary to test this hypothesis in a longitudinal design with baseline measures
of MD and rate of hippocampal atrophy over time or vice versa.
Correlations of DTI and volumetric measurements with memory
Recent studies have suggested the superiority of microscopic DTI changes compared to
volume loss in the strength of correlations with clinical measures and prediction of
subsequent cognitive decline (Kantarci et al., 2005; Müller et al., 2005). Müller et al. (2005) showed that increased hippocampal MD was the strongest
independent predictor of verbal memory in a combined MCI and control group, whereas
hippocampal volume only explains a small variance of memory function. Although we found a
near-significant correlation between hippocampal MD and memory within the MCI group, it
was substantially attenuated after including hippocampal volume as a covariate.
Furthermore, hippocampal volume remained as the sole independent predictor of memory in
the full model. Given the mean age of our MCI group, it is possible that some of our MCI
subjects are approaching the later stages of AD, and that volumetric loss represents a
closer temporal event to cognitive impairment than earlier microstructural changes. Future
amyloid imaging in the MCI group will be of particular relevance. An additional analysis
pooling the entire sample also yielded the same conclusion by showing that volume was more
strongly correlated with memory than MD (data not shown). There were no correlations
between FA and the memory domain across the groups. These null findings, including ours,
could be attributed, in part, to the heterogeneous orientations of the fibers within the
hippocampus, in turn manifesting in a floor-effect of low FA values.
Strengths and limitations
The chief strength of this study is the joint-analysis of DTI and GM based on a rigorous
intra-subject registration, allowing us to investigate the association of microscopic
cellular changes with macrostructural atrophy in the same individual and stereotaxic
space. Nonetheless, we acknowledge that multi-modal imaging is not without potential
pitfalls. The larger voxel dimensions of DTI data render it prone to PVE by averaging of
CSF across tissue types. For instance, erroneous inclusion of CSF voxels, particularly in
subjects with severe hippocampal atrophy, would induce higher MD values due to the
unrestricted pattern of diffusion in the CSF space. For each participant in this study, we
also performed a thorough visual inspection of the resampled hippocampal segmentations in
diffusion space, revealing no participant with gross misalignments of registrations
(Figure S1). Furthermore, we also accounted for potential CSF contamination by eroding the
boundaries of the hippocampus. Some other potential limitations of this study include the
lack of neuropathological verification of AD and DLB, as subject groups were based on
clinical diagnosis, though this is an inherent limitation of all ante-mortem imaging
studies. Furthermore, we have previously demonstrated good agreement between clinical and
pathological diagnosis using the consensus clinical diagnostic method adopted here
(McKeith et al., 2005).
Finally, any interpretation of our findings should consider the caveat that we did not
correct for multiple comparisons due to the high correlation among the hippocampal
subfields and the over-conservatism of Bonferroni in this particularly setting.
Conclusion
In this multi-modal study, we used an improved segmentation technique to compare atrophy
patterns of hippocampus and its subfields in a well-characterized group of MCI, AD, and DLB
subjects, revealing different topographical patterns of subfield atrophy in DLB relative to
both MCI and AD. Furthermore, we jointly evaluated microstructures of the hippocampus and
their associations with hippocampal volumes and memory. Despite recent suggestions that
microstructural changes could be more sensitive than macroscopic atrophy, our present
findings of (a) hippocampal atrophy in the absence of diffusion changes in MCI and (b)
stronger volumetric-memory correlations instead of MD do not argue in favor of that notion.
On-going longitudinal neuropsychological assessments in this cohort will enable us to
clarify the relative predictive utility of hippocampal MD and volumetric measurements.
Conflict of interest
None declared.
Description of authors’ roles
EM developed the research question, performed the imaging and statistical analyses, and
wrote the paper.SG assisted with the visual inspection of image processing and co-registrations, performed
the statistical analyses, and revised the paper.LS, GBW, RA, LP, PVR, and AJ provided critical feedback and revised the paper.RA, LP, PVR, and AJ also conducted the data collection.JOB and JBR designed the study protocols, supervised the study, and both are the
co-principal investigators of the study.
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