Literature DB >> 31595200

Characterization of Alzheimer's Disease Using Ultra-high b-values Apparent Diffusion Coefficient and Diffusion Kurtosis Imaging.

Yingnan Xue1, Zhenhua Zhang1, Caiyun Wen1, Huiru Liu1, Suyuan Wang1, Jiance Li1, Qichuan Zhuge2, Weijian Chen1, Qiong Ye1.   

Abstract

The aim of the study is to investigate the diffusion characteristics of Alzheimer's disease (AD) patients using an ultra-high b-values apparent diffusion coefficient (ADC_uh) and diffusion kurtosis imaging (DKI). A total of 31 AD patients and 20 healthy controls (HC) who underwent both MRI examination and clinical assessment were included in this study. Diffusion weighted imaging (DWI) was acquired with 14 b-values in the range of 0 and 5000 s/mm2. Diffusivity was analyzed in selected regions, including the amygdala (AMY), hippocampus (HIP), thalamus (THA), caudate (CAU), globus pallidus (GPA), lateral ventricles (LVe), white matter (WM) of the frontal lobe (FL), WM of the temporal lobe (TL), WM of the parietal lobe (PL) and centrum semiovale (CS). The mean, median, skewness and kurtosis of the conventional apparent diffusion coefficient (ADC), DKI (including two variables, Dapp and Kapp) and ADC_uh values were calculated for these selected regions. Compared to the HC group, the ADC values of AD group were significantly higher in the right HIP and right PL (WM), while the ADC_uh values of the AD group increased significantly in the WM of the bilateral TL and right CS. In the AD group, the Kapp values in the bilateral LVe, bilateral PL/left TL (WM) and right CS were lower than those in the HC group, while the Dapp value of the right PL (WM) increased. The ADC_uh value of the right TL was negatively correlated with MMSE (mean, r=-0.420, p=0.019). The ADC value and Dapp value have the same regions correlated with MMSE. Compared with the ADC_uh, combining ADC_uh and ADC parameters will result in a higher AUC (0.894, 95%CI=0.803-0.984, p=0.022). Comparing to ADC or DKI, ADC_uh has no significant difference in the detectability of AD, but ADC_uh can better reflect characteristic alternation in unconventional brain regions of AD patients. Copyright:
© 2019 Xue et al.

Entities:  

Keywords:  ADC_uh; Alzheimer’s Disease; Apparent Diffusion Coefficient; DKI; Diffusion Kurtosis Imaging; Ultra-high B-values Apparent Diffusion Coefficient

Year:  2019        PMID: 31595200      PMCID: PMC6764724          DOI: 10.14336/AD.2018.1129

Source DB:  PubMed          Journal:  Aging Dis        ISSN: 2152-5250            Impact factor:   6.745


Alzheimer’s disease (AD) is a progressive neuro-degenerative disease. As reported by the World Health Organization (WHO), the prevalence of dementia in the world is estimated to be 50 million, and there are nearly 10 million new cases every year, with AD potentially contributing to 60-70% of these cases [1, 2]. The pathogenesis of AD is extremely complicated and has never been clearly clarified. At present, many studies have shown that the deposition of β-amyloid peptide (Aβ) and neurofibrillary tangles (NFTs) are the main pathological changes in Alzheimer's disease [3-6], while apolipoprotein E4 (ApoE4), α-synuclein (α-Syn), aquaporin-4 (AQP4) and hyperphosphorylated tau play important roles in the process of Aβ deposition and NFTs [7-13]. Recently, it was reported that the herpesvirus may be the original reason for AD [14]. In this study, they found a high level of human herpesvirus (HHV-6A and HHV-7) in the brain regions that present AD neuropathological changes. Many studies have demonstrated the deposition of Aβ resistance to the herpesvirus infection. The herpesvirus can also induce the formation of Aβ deposits [15-18]. Regardless of the initial cause of AD, the abnormal deposition of Aβ is still an important step in the occurrence and development of AD [14, 19, 20]. The imbalance between the production and clearance of Aβ leads to the deposition of Aβ, resulting in increased soluble Aβ and increased plaque accumulation in the brain. AQP4 has been given more attention in recent years in the research of AD. AQP4 is an important carrier of water metabolism in the brain. Aβ in the brain can be cleaned by water transport, and a lack of AQP4 can decrease the clearance of soluble Aβ [9, 21]. A wealth of studies has shown that the expression and distribution of AQP4 are altered in clinical and animal AD models [22-24]. The ultra-high b-values apparent diffusion coefficient (ADC_uh) could eliminate the influence of microvascular perfusion and the signal intensity changes, which are mainly the result of the slow diffusion component [25]. Some scholars believe that ADC_uh reflects the transport of water via aquaporins, which might be linked to the expression of AQP4 [26, 27]. Compared to ADC, ADC_uh showed a relatively higher sensitivity to WM degeneration in AD [28]. Varied non-Gaussian diffusion models show potential in aiding in the understanding of microstructure alternations in AD. Moreover, compared with diffusion tensor imaging (DTI), diffusion kurtosis imaging (DKI) can reflect the microstructure changes of white fiber more accurately and sensitively [29-31]. Correlations between the microstructural alterations and severity of cognitive deficiency in AD were demonstrated using DKI [32]. The purpose of this study was to evaluate the diffusion characteristics of ADC_uh and DKI and to explore their role in the differential diagnosis of AD.

MATERIALS AND METHODS

This study was approved by the institutional review board, and the consents were signed.

Subjects

Thirty-one patients who were suspected of mild to moderate cognitive impairment were included in this study. All patients underwent the Mini-Mental State Examination (MMSE). Inclusion criteria were as follows: (1) Ages range, 50-85 (including 50 and 85 years); (2) Most likely diagnostic criteria for AD in accordance with the National Institute of Neurological and Communicative Disorders and Stroke (NINCDS) - Alzheimer's Disease and Related Disorders Association (ADRDA) (NINCDS-ADRDA) (1984); (3) MMSE Total score, 11 ≤ MMSE total score ≤ 26 (for primary school education level, 11≤ MMSE total score ≤ 22); (4) Hachinski ischemic scale (HIS), total score ≤ 4; Hamilton Depression Rating Scale (HAMD17), total score ≤ 10; (5) The patients' memory decline lasts at least 12 months and there is a trend of progressive aggravation; (6) For subjects ≤ 70 years old, the grade of white matter (WM) damage (Fazekas scale for WM lesion) ≤1; For subjects > 70 years old, grade of WM damage ≤2; (7) Lacunar infarct, diameter >2 cm, number of lesions less than or equal to 2; (8) Key areas such as the thalamus (THA), hippocampus (HIP), entorhinal cortex, paranasal cortex, and other cortical and subcortical nucleus clumps have no infraction, and an MRI showed the greatest possibility of AD; (9) Neurological examination had no obvious signs; (10)The patient has a degree of primary education or above, and has the ability to complete the program's cognitive ability tests and other tests; (11) Exclusion criteria: other types of dementia, history of nervous system disease, people with mental illness. Twenty control subjects participated in the study, and all of them underwent the MMSE. Inclusion criteria were as follows: (1) Ages range, 50-85 (including 50 and 85 years); (2) The patient has a degree of primary education or above; grade of Fazekas scale for WM lesions ≤1 (mild WM lesions), lacunar infarct, diameter >2 cm, number of lesions were less than or equal to 2; (3) Key areas such as the THA, HIP, entorhinal cortex, paranasal cortex, other cortical and subcortical nucleus clumps have no infraction, no brain atrophy; (4) Neurological examination has no obvious sign; No obvious cognitive impairment; (5) Exclusion criteria: have suffered from nervous system disease, psychiatric patient, pressure≥100 mmHg or <60 mmHg, patients with unstable or severe heart/lung/liver/kidney/hematopoietic diseases. Moreover, 10 healthy volunteers aged between 23 and 28 were recruited for a repeatability verification of our test. On the same day, each volunteer underwent an MRI scan twice, and the scanning instrument and scanning sequences were consistent with those of AD patients.

Image acquisition and processing

All MR scans were conducted at a 3.0T Philips (Achieva, The Netherlands) system with an 8-channel receive-only head coil. Diffusion weighted imaging (DWI) data were acquired with a single-shot spin-echo echo planar imaging (EPI) sequence in the following parameters: echo time/repetition time (TE/TR) =113/8000 ms, field of view = 220*220 mm2, matrix=124*120, reconstruction = 256*256, slice thickness = 5.0 mm without gap, No. of slices = 25, SENSE = 2.0, 14 b-values = 0, 25, 50, 75, 100, 150, 200, 500, 800, 1000, 2000, 3000, 4000, 5000 s/mm2, scan time = 5 min 36 sec. Voxelwise-computed diffusion weighted imaging (vcDWI) was acquired to achieve an anatomical reference that was geometrically identical to the previously acquired DWI data. Selections of region of interest. (A, C) The selected ROIs on the vcDWI maps. (B, D) The ROIs were projected onto the ADC_uh maps. The yellow part is the ROI range. AMY, amygdala; HIP, hippocampus; THA, thalamus; CAU, caudate; GPA, globus pallidus; LVe, lateral ventricles; FL, frontal lobe (WM); TL, temporal lobe (WM); PL, parietal lobe (WM); CS, centrum semiovale. The DWI data were preprocessed in FSL (Release 5.0, Oxford, UK) for the brain extraction and the motion correction. All parametric maps were generated by home-developed programming in MATLAB (The MathWorks Inc., Natick, MA, USA). ADC was calculated with mono-exponential fitting of signal intensities over b-values=0, 200, 500, 800, 1000 s/mm2. ADC_uh was calculated with mono-exponential fitting of signal intensities over b-values= 2000, 3000, 4000, 5000 s/mm2 [26]. For DKI, signal intensities all less than or equal to b-value= 3000 were used for fitting [33]. where S is the signal intensity, S0 is the signal intensity at b = 0, Dapp is the diffusion coefficient, and Kapp quantifies the deviation of the dispersion mode from the Gaussian distribution. The Levenberg-Marquardt (LM) algorithm was applied for optimization. Points with values < 0 are nulled. vcDWI is voxelwise-computed DWI, and its maps can be calculated as follow [34]: Regions of interest (ROIs) were manually drawn on vcDWI in ImageJ (NIH, USA). Twelve structures: bilateral amygdala (AMY), hippocampus (HIP), thalamus (THA), caudate (CAU), globus pallidus (GPA), lateral ventricles (LVe), WM of the frontal lobe (FL), WM of the temporal lobe (TL), WM of the parietal lobe (PL) and Centrum semiovale (CS), were analyzed. All ROIs were acquired by avoiding the boundary of the brain area in both vcDWI and ADC_uh maps. The outline of ROIs was performed by two radiologists in consensus (5 and 8 years of experience in neuroimaging diagnosis). Representative vcDWI and ADC_uh maps with ROIs are shown in Fig. 1.
Figure 1.

Selections of region of interest. (A, C) The selected ROIs on the vcDWI maps. (B, D) The ROIs were projected onto the ADC_uh maps. The yellow part is the ROI range. AMY, amygdala; HIP, hippocampus; THA, thalamus; CAU, caudate; GPA, globus pallidus; LVe, lateral ventricles; FL, frontal lobe (WM); TL, temporal lobe (WM); PL, parietal lobe (WM); CS, centrum semiovale.

Statistical analysis

Data are presented in the form of mean ± STD. The mean, median, skewness, kurtosis of parameters (ADC, ADC_uh, Dapp, Kapp) and age, MMSE between AD and the control group were compared using the Student’s t test or the Mann-Whitney U test. The gender distributions of both groups were compared using the chi-square test. Correlations between the diffusion characteristics and MMSE were evaluated using the Spearman’s rank correlation, and this step was performed in SPSS (IBM Corp, version 25.0). Rejection of the parameters with a Coefficient of Variance (CV) is greater than 0.5. Binary logistic regression analyses (backward, wald) were used to select data (SPSS, IBM Corp, version 25.0). Receiver operating characteristic (ROC) was used to assess the diagnostic utility of ADC_uh and DKI parameters. All classification analyses and evaluations were implemented in MedCalc (version 18.6). P values < 0.05 were considered statistically significant. All data of repeatability experiments were categorized by parameters, and Bland-Altman analyses were used to evaluate the consistency of the two tests, and Spearman’s rank correlation was used to evaluate the correlation between the two tests. Demographic and cognitive characteristics of all participants. Chi-square test; Unpaired t-test, two-tailed test; MMSE=Mini-Mental State Examination, AD = Alzheimer's disease; HC = Healthy control.

RESULTS

The subject’s clinical and neuropsychological data are summarized in Table 1. The HC group has lower MMSE scores than the AD group (AD: 18.48±4.711; HC: 27.85±1.565; P< 0.05) as expected. The mean age of the HC group (56.70±6.26 years) was 8.24 years less than the AD group (64.94±8.21 years). There was no significant difference in gender composition between these two groups.
Table 1

Demographic and cognitive characteristics of all participants.

ADHCp-value
Number (M/F)11/208/120.774*
Age(years)64.94±8.20556.70±6.2580.000**
MMSE18.48±4.71127.85±1.5650.000**

Chi-square test;

Unpaired t-test, two-tailed test; MMSE=Mini-Mental State Examination, AD = Alzheimer's disease; HC = Healthy control.

Receiver-operating characteristic curves (ROC) of classifications between AD and HC patients. ADC, ADC_uh, and DKI were separately assessed for differential diagnosis. Then, any combination of them was assessed separately. Finally, all of them was assessed together. Compared to ADC_uh, a higher AUC was obtained by combining ADC_uh values and ADC values (0.897, 95% CI=0.779-0.964, p=0.022). There was no significant difference between the other ROCs. The diagonal line represents a random classification performance. Comparisons of regional diffusion intensity in ADC or ADC_uh between AD and HC group. HIP, Hippocampus; THA, Thalamus; CAU, Caudate nucleus; LVe, Lateral ventricle; FL, Frontal lobe; TL, Temporal lobe; PL, Parietal lobe; CS, Centrum semiovale. P-value < 0.05 for all. As shown in Table 2, the ADC values of the right HIP and the right PL WM of the AD group were higher than the HC group (mean and median, p < 0.05 for all). The ADC value of the left FL was higher than that of HC (kurtosis, p= 0.036). The ADC values of the left CAU and the right LVe were all higher than those of HC (skewness, p < 0.05 for all). The ADC_uh values of the bilateral TL WM and right CS of the AD were higher than those of the HC (mean and median, p<0.05 for all). The ADC_uh value of the left THA was higher in the AD group (mean, p=0.047), and the ADC_uh value of left LVe was higher than that of HC (Kurtosis, p=0.028).
Table 2

Comparisons of regional diffusion intensity in ADC or ADC_uh between AD and HC group.

Mean ± SDCVP-value
ADC
right HIP mean (×10-3mm/s)AD0.961±0.1260.1310.008
HC0.874±0.0950.109
right HIP median (×10-3mm/s)AD0.956±0.1160.1220.001
HC0.877±0.0950.109
left CAU skewnessAD0.053±0.55410.4840.013
HC-0.313±0.515-1.645
right LVe skewnessAD0.377±0.8812.3380.000
HC-0.619±0.873-1.410
left FL kurtosisAD2.888±0.6890.2390.036
HC0.254±0.5130.202
right PL mean (×10-3mm/s)AD0.815±0.0910.1110.002
HC0.750±0.0510.068
right PL median (×10-3mm/s)AD0.818±0.0940.1150.003
HC0.754±0.0500.066
ADC_uh
left THA mean (×10-3mm/s)AD0.358±0.0320.0890.047
HC0.336±0.0460.123
left LVe kurtosisAD3.16±0.8000.2530.028
HC2.71±0.6080.224
right TL mean (×10-3mm/s)AD0.274±0.0420.1540.033
HC0.252±0.0290.116
right TL median (×10-3mm/s)AD0.273±0.0450.1650.032
HC0.249±0.0300.120
left TL mean (×10-3mm/s)AD0.276±0.0390.1410.022
HC0.250±0.0380.152
left TL median (×10-3mm/s)AD0.273±0.0380.1380.038
HC0.249±0.0420.170
right CS mean (×10-3mm/s)AD0.273±0.0380.0880.021
HC0.203±0.0150.073
right CS median (×10-3mm/s)AD0.214±0.0190.0890.016
HC0.201±0.0150.074

HIP, Hippocampus; THA, Thalamus; CAU, Caudate nucleus; LVe, Lateral ventricle; FL, Frontal lobe; TL, Temporal lobe; PL, Parietal lobe; CS, Centrum semiovale. P-value < 0.05 for all.

Dapp values of the right PL (mean and median) and left FL (Kurtosis) were significantly higher than those of the HC group (p<0.05), and Kapp values in the bilateral PL WM, left LVe WM, left TL WM, and right CS showed obvious differences with the HC group (mean and median of Kapp, p<0.05). The right THA (median of Kapp), right LVe (mean of Kapp) and boilateral FL (kurtosis of Kapp) presented significant differences between these two groups (p<0.05). All of the above parameters are listed in Table 3.
Table 3

Comparisons of regional diffusion intensities in Dapp or Kapp between the AD and HC groups.

Mean±SDCVP-value
DAPP
left FL kurtosisAD3.020±0.7750.2570.030
HC2.620±0.7400.282
right PL mean (×10-3mm/s)AD0.942±0.1050.1120.003
HC0.870±0.0600.069
right PL median (×10-3mm/s)AD0.943±0.1070.1130.004
HC0.870±0.0630.073
KAPP
right THA medianAD0.713±0.0720.1010.046
HC0.754±0.0750.099
right LVe meanAD0.266±0.0490.1850.042
HC0.296±0.0690.233
left LVe meanAD0.263±0.0490.1870.004
HC0.298±0.0440.149
left LVe medianAD0.279±0.0400.1430.006
HC0.308±0.0380.125
right FL kurtosisAD5.950±3.1400.5730.009
HC3.940±2.4600.624
left FL kurtosisAD5.750±3.0100.5240.019
HC4.380±3.2500.742
left TL meanAD0.740±0.1060.1440.009
HC0.816±0.0900.111
left TL medianAD0.754±0.1040.1380.018
HC0.819±0.0860.105
right PL meanAD1.000±0.1390.1380.019
HC1.090±0.1280.117
right PL medianAD0.994±0.1270.1280.015
HC1.090±0.1330.122
left PL meanAD0.949±0.1460.1540.007
HC1.070±0.1420.133
left PL medianAD0.940±0.1430.1520.010
HC1.050±0.1460.139
right CS meanAD1.060±0.1130.1070.011
HC1.150±0.1020.089
right CS medianAD1.040±0.1090.1050.004
HC1.130±0.1040.092

Dapp is the diffusion coefficient (unit: ×10-3mm2/s); Kapp quantifies the deviation of the dispersion mode from the Gaussian distribution (unitless).

For AD patients, right PL values in the ADC map and Dapp map (mean and median) were negatively correlated with MMSE, while the values of ADC_uh in the right TL were negatively correlated with MMSE, as listed in Table 4. The kurtosis of the ADC and Dapp values from the left FL were significantly positively correlated with MMSE (rho=0.550, p=0.001; rho=0.546, p=0.001, respectively). Moreover, the combination of ADC_uh and ADC values lead to a higher AUC (0.897, 95%CI= 0.779-0.964, p= 0.022) compared to only the ADC_uh values (Table 5).
Table 4

Correlations with MMSE score for all parameters.

rhop
ADC left FL kurtosis550**0.001
ADC right PL mean-.368*0.042
ADC right PL median-.356*0.049
ADC_uh right TL mean-.420*0.019
ADC_uh right TL median-.386*0.032
Dapp left FL kurtosis.546**0.001
Dapp right PL mean-.416*0.020
Dapp right PL median-.403*0.024

FL, Frontal lobe; TL, Temporal lobe; PL, Parietal lobe. ADC and DKI have similar correlation with MMSE, and their locations are right PL and left FL. ADC_uh shows a special sensitivity to the correlation between right TL and MMSE.

Table 5

Comparison of receiver-operating characteristic (ROC) curves.

AUC95% CI aPb
ADC0.8260.694 - 0.918NL
ADC_uh0.7660.627 - 0.8730.501
DKI0.8470.718 - 0.9320.728
ADC+ADC_uh0.897#0.779 - 0.9640.172
ADC+DKI0.8400.711 - 0.9280.729
ADC_uh+DKI0.8940.775 - 0.9620.284
ADC+ADC_uh+DKI0.8680.743 - 0.9460.416

AUC, the areas below the ROC curves.

Binomial precision;

Compared with ADC;

P=0.022 versus ADC_uh.

Comparisons of regional diffusion intensities in Dapp or Kapp between the AD and HC groups. Dapp is the diffusion coefficient (unit: ×10-3mm2/s); Kapp quantifies the deviation of the dispersion mode from the Gaussian distribution (unitless). In the repeatability test of the MRI, the mean and median values of all parameters are highly correlated (p<0.05 for all). For the kurtosis and skewness of ADC and Kapp, there is a good correlation between the two tests. However, for the kurtosis and skewness of ADC_uh, there is no significant correlation (Table 6). In the Bland-Altman analysis, there is no significant difference between the parameters of the two tests except for the Kapp kurtosis (Fig. 3).
Table 6

The correlations of ADC, ADC_uh, Dapp and Kapp parameters between the two tests.

rhop
ADC mean0.7820.000**
ADC median0.7600.000**
ADC skewness0.1940.006*
ADC kurtosis0.2260.001*
ADC_uh mean0.9010.000**
ADC_uh median0.8970.000**
ADC_uh skewness0.1330.061
ADC_uh kurtosis0.0580.412
Dapp mean0.7100.000**
Dapp median0.6750.000**
Dapp skewness0.1690.017*
Dapp kurtosis0.1420.046*
Kapp mean0.9290.000**
Kapp median0.9340.000**
Kapp skewness0.1930.006*
Kapp kurtosis0.2780.000**

**p<0.001,

*p<0.05; Spearman’s rank correlation was used.

Figure 3.

Bland-Altman plots of reproducibility of MRI. Bland-Altman plots for ADC mean (A), ADC_uh mean (B), Dapp mean (C) and Kapp mean (D) show a low mean difference between the two tests (continuous line: mean difference, dashed lines: 95% confidence interval of the mean difference).

DISCUSSION

It was originally found in our study that the ADC_uh values of deep WM in the bilateral TL of AD patients were higher than that of the HC group. This is inspired by an earlier study where the ADC value of averaged bilateral temporal stems of AD patients was reported to be higher than in healthy people [35]. Considering that the disease progression in each side of the brain may be asynchronous, we compared them separately in this study. Compared to the HC group, the AD group showed increased ADC_uh values in the right CS. In the ADC_uh map, the signal intensity we measured is mainly due to the slow diffusion components, and AQP4 is a key part of the slow transport of water molecules in the brain. WM changes in AD patients include axonal damage and gliosis [36]. The distribution of AQP4 is closely related to astrocytes, as AQP4 is located mainly in astrocytic foot processes, particularly at the borders between the brain parenchyma and major fluid compartments [37, 38]. Another group of scholars found a correlation between ADC_uh parameters and the AQP4 expression in the solid parts of the cerebral astrocytoma [27]. Although no confirmation study of the changes in the distribution of AQP4 in the brain of AD patients was reported previously, we may assume that the changes in the ADC_uh map suggest some changes in the distribution of AQP4. A previous study showed that the development of AD was closely related to the deposition of Aβ [39, 40], which exists in both the normal aging brain and the AD brain. The defect in the Aβ clearance may be the key reason for AD [37]. In the process of Aβ clearance, AQP4 plays an important role [21, 23]. Human amyloid precursor protein was overexpressed in HIP and the surrounding WM of transgenic AD mice [41]. This might be able to explain the changes in ADC_uh values in the white matter of bilateral TL in our study. In this study, we also found that the ADC_uh values in both the left THA and left LVe were significantly different between the AD and HC groups. The lateral ventricle contains a choroid plexus structure, its distribution in the ventricle is uneven, and an abundance of AQP4 was expressed in the choroid plexus [42, 43]. The changes of AQP4 expression have been confirmed in patients with AD [44], which might explain the changes in ADC_uh from the side. Bland-Altman plots of reproducibility of MRI. Bland-Altman plots for ADC mean (A), ADC_uh mean (B), Dapp mean (C) and Kapp mean (D) show a low mean difference between the two tests (continuous line: mean difference, dashed lines: 95% confidence interval of the mean difference). Correlations with MMSE score for all parameters. FL, Frontal lobe; TL, Temporal lobe; PL, Parietal lobe. ADC and DKI have similar correlation with MMSE, and their locations are right PL and left FL. ADC_uh shows a special sensitivity to the correlation between right TL and MMSE. A previous study of 7 pairs of samples, for all 3 b values =1000, 2000, 4000 s/mm2, reported that the mean diffusions in the regions of PL WM were higher in the AD group than in the HC group [28]. However, we found some differences only in the right TL WM between AD patients and HC patients in ADC maps. The sample size is different between our study and theirs. Their PL ROIs were placed in the subcortical WM in the PL, while our PL ROIs were placed in the deep WM. Those differences may contribute to the result above. The ADC value in the right HIP of our AD group was higher than that of HC group. This conclusion was similar to the results of other teams [35, 45]. Comparison of receiver-operating characteristic (ROC) curves. AUC, the areas below the ROC curves. Binomial precision; Compared with ADC; P=0.022 versus ADC_uh. In our study, except for the right TL and left CS, all analyzed deep WM regions of AD patients showed abnormalities in the DKI parameters. The WM regions showed that the increased Dapp and decreased Kapp in this study were in agreement with the areas reported in some of the previous DKI studies [32, 46]. In this DKI computing model, the Dapp values tend to be close to the ADC values [33]. In this study, abnormal regions on the Dapp parameter maps are also found to be abnormal on the ADC parameter maps. The Kapp parameter maps performed a high sensitivity for the WM of AD patients. A previous study has shown abnormal changes in DKI in cortical and deep gray matter of AD patients [47], which may be related to the difference in the choice of DKI related parameters. In our study, we only selected the parameters of Dapp and Kapp. Of course, DKI can detect changes in the microstructures of the brain in patients with AD, include the intracerebral lesions caused by Aβ [48, 49]. Our cohort of patients included moderate AD patients. Compared with early AD patients, they may have more significant changes in the microstructure of brain. Thus, in our study, we can observe several brain regions with abnormal changes. More lesions on DKI than ADC or ADC_uh can be observed, although it cannot include all the abnormal areas of ADC or ADC_uh. Kapp of bilateral LVes have shown abnormalities, which may be related to an uneven choroid plexus distribution in bilateral LVes. Several studies have shown significant changes in the histological morphology of choroid plexus in AD patients [50, 51]. The correlations of ADC, ADC_uh, Dapp and Kapp parameters between the two tests. **p<0.001, *p<0.05; Spearman’s rank correlation was used. The correlation analysis showed that the brain areas that correlated with MMSE in ADC and DKI were consistent, while ADC_uh of the right TL have a negative correlation with MMSE. The result of the correlation analysis also suggests the unique sensitivity of ADC_uh to TL WM lesions. In a previous study, the resting state functional magnetic resonance imaging (rs-fMRI) was used for AD classification. The AUC of a single parameter was 0.82-0.84, and the AUC of a combination of multiple parameters was 0.85 [52]. In our study, ADC and DKI independently showed a similar ability of classification. When they were combined with ADC_uh, increased AUC values were obtained. However, the performance of the combination does not differ significantly from ADC. Currently, the change of cortical gray matter volume is still one of the most sensitive indices of AD. Some scholars have classified AD from controls by using Voxel-wise gray matter densities and achieved a highest AUC of 0.941 in their research [53]. There are several limitations in our study. First, a previous study found that amyloid aggregation in the brain of AD was not linearly related to the progress of AD [54]. Our cohort did not group early and medium AD patients separately, which may have an impact on our results. Second, the number of cases involved in the study is small. The age of the AD and HC groups is different, and the age span is too large. Third, the slice of the MRI image is thicker, there are some small structures such as HIP that cannot be completely shown, and the selected ROI may be the body or head. Finally, the degree of WM degeneration may also be affected by education, work, or basic diseases such as diabetes, hypertension, etc. The effects of these factors were not corrected in this study. In summary, the detectability of AD by ADC_uh does not differ significantly from that by ADC or DKI. However, ADC_uh combined with ADC or DKI can obtain a higher AUC value. ADC_uh can reflect some special physiological and pathological changes of WM in the unique regions of AD brain, which have not yet been clearly revealed, and AQP4 may be an important part of them. This characteristic is obviously different from those of ADC and DKI. Additionally, the utilization of ADC_uh is potentially useful for noninvasively monitoring the pathophysiological changes of AD and the diagnosis of AD.
  52 in total

1.  Mild cognitive impairment and Alzheimer disease: regional diffusivity of water.

Authors:  K Kantarci; C R Jack; Y C Xu; N G Campeau; P C O'Brien; G E Smith; R J Ivnik; B F Boeve; E Kokmen; E G Tangalos; R C Petersen
Journal:  Radiology       Date:  2001-04       Impact factor: 11.105

2.  q-space and conventional diffusion imaging of axon and myelin damage in the rat spinal cord after axotomy.

Authors:  Jonathan A D Farrell; Jiangyang Zhang; Melina V Jones; Cynthia A Deboy; Paul N Hoffman; Bennett A Landman; Seth A Smith; Daniel S Reich; Peter A Calabresi; Peter C M van Zijl
Journal:  Magn Reson Med       Date:  2010-05       Impact factor: 4.668

Review 3.  Anti-Viral Properties of Amyloid-β Peptides.

Authors:  Karine Bourgade; Gilles Dupuis; Eric H Frost; Tamàs Fülöp
Journal:  J Alzheimers Dis       Date:  2016-10-04       Impact factor: 4.472

4.  Multiscale Analysis of Independent Alzheimer's Cohorts Finds Disruption of Molecular, Genetic, and Clinical Networks by Human Herpesvirus.

Authors:  Ben Readhead; Jean-Vianney Haure-Mirande; Cory C Funk; Matthew A Richards; Paul Shannon; Vahram Haroutunian; Mary Sano; Winnie S Liang; Noam D Beckmann; Nathan D Price; Eric M Reiman; Eric E Schadt; Michelle E Ehrlich; Sam Gandy; Joel T Dudley
Journal:  Neuron       Date:  2018-06-21       Impact factor: 17.173

5.  T1, diffusion tensor, and quantitative magnetization transfer imaging of the hippocampus in an Alzheimer's disease mouse model.

Authors:  Heather T Whittaker; Shenghua Zhu; Domenico L Di Curzio; Richard Buist; Xin-Min Li; Suzanna Noy; Frances K Wiseman; Jonathan D Thiessen; Melanie Martin
Journal:  Magn Reson Imaging       Date:  2018-03-12       Impact factor: 2.546

Review 6.  Neuropathological stageing of Alzheimer-related changes.

Authors:  H Braak; E Braak
Journal:  Acta Neuropathol       Date:  1991       Impact factor: 17.088

7.  Non-Gaussian diffusion alterations on diffusion kurtosis imaging in patients with early Alzheimer's disease.

Authors:  Lixiang Yuan; Man Sun; Yuanyuan Chen; Miaomiao Long; Xin Zhao; Jianzhong Yin; Xu Yan; Dongxu Ji; Hongyan Ni
Journal:  Neurosci Lett       Date:  2016-01-18       Impact factor: 3.046

8.  High b value diffusion-weighted imaging is more sensitive to white matter degeneration in Alzheimer's disease.

Authors:  Takashi Yoshiura; Futoshi Mihara; Atsuo Tanaka; Koji Ogomori; Yasumasa Ohyagi; Takayuki Taniwaki; Takeshi Yamada; Takao Yamasaki; Atsushi Ichimiya; Naoko Kinukawa; Yasuo Kuwabara; Hiroshi Honda
Journal:  Neuroimage       Date:  2003-09       Impact factor: 6.556

9.  Association of cerebrospinal fluid α-synuclein with total and phospho-tau181 protein concentrations and brain amyloid load in cognitively normal subjective memory complainers stratified by Alzheimer's disease biomarkers.

Authors:  Andrea Vergallo; René-Sosata Bun; Nicola Toschi; Filippo Baldacci; Henrik Zetterberg; Kaj Blennow; Enrica Cavedo; Foudil Lamari; Marie-Odile Habert; Bruno Dubois; Roberto Floris; Francesco Garaci; Simone Lista; Harald Hampel
Journal:  Alzheimers Dement       Date:  2018-07-26       Impact factor: 21.566

10.  Diffusion kurtosis imaging allows the early detection and longitudinal follow-up of amyloid-β-induced pathology.

Authors:  Jelle Praet; Nikolay V Manyakov; Leacky Muchene; Zhenhua Mai; Vasilis Terzopoulos; Steve de Backer; An Torremans; Pieter-Jan Guns; Tom Van De Casteele; Astrid Bottelbergs; Bianca Van Broeck; Jan Sijbers; Dirk Smeets; Ziv Shkedy; Luc Bijnens; Darrel J Pemberton; Mark E Schmidt; Annemie Van der Linden; Marleen Verhoye
Journal:  Alzheimers Res Ther       Date:  2018-01-09       Impact factor: 6.982

View more
  8 in total

1.  Gray and white matter abnormalities in primary trigeminal neuralgia with and without neurovascular compression.

Authors:  Min Wu; Xiaofeng Jiang; Jun Qiu; Xianming Fu; Chaoshi Niu
Journal:  J Headache Pain       Date:  2020-11-25       Impact factor: 7.277

2.  Anisotropy of Anomalous Diffusion Improves the Accuracy of Differentiating and Grading Alzheimer's Disease Using Novel Fractional Motion Model.

Authors:  Lei Du; Zifang Zhao; Boyan Xu; Wenwen Gao; Xiuxiu Liu; Yue Chen; Yige Wang; Jian Liu; Bing Liu; Shilong Sun; Guolin Ma; Jiahong Gao
Journal:  Front Aging Neurosci       Date:  2020-11-19       Impact factor: 5.750

3.  Free-water diffusion tensor imaging improves the accuracy and sensitivity of white matter analysis in Alzheimer's disease.

Authors:  Maurizio Bergamino; Ryan R Walsh; Ashley M Stokes
Journal:  Sci Rep       Date:  2021-03-26       Impact factor: 4.379

4.  Altered Microstructure of Cerebral Gray Matter in Neuromyelitis Optica Spectrum Disorder-Optic Neuritis: A DKI Study.

Authors:  Hanjuan Zhang; Qing Li; Lei Liu; Xiaoxia Qu; Qian Wang; Bingbing Yang; Junfang Xian
Journal:  Front Neurosci       Date:  2021-12-20       Impact factor: 4.677

5.  Application Value of Mathematical Models of Diffusion-Weighted Magnetic Resonance Imaging in Differentiating Breast Cancer Lesions.

Authors:  Xiaolong Jiang; Chao Chen; Jie Liu; Sheng Liu
Journal:  Evid Based Complement Alternat Med       Date:  2021-08-28       Impact factor: 2.629

6.  Whole brain atlas-based diffusion kurtosis imaging parameters for evaluation of minimal hepatic encephalopathy.

Authors:  Prateek Gupta; Sameer Vyas; Teddy Salan; Chirag Jain; Sunil Taneja; R K Dhiman; Paramjeet Singh; Chirag K Ahuja; Nirmalya Ray; Varan Govind
Journal:  Neuroradiol J       Date:  2021-06-29

7.  Postnatal Guinea Pig Brain Development, as Revealed by Magnetic Resonance and Diffusion Kurtosis Imaging.

Authors:  Roger J Mullins; Su Xu; Jiachen Zhuo; Steve Roys; Edna F R Pereira; Edson X Albuquerque; Rao P Gullapalli
Journal:  Brain Sci       Date:  2020-06-12

Review 8.  The influence of white matter hyperintensity on cognitive impairment in Parkinson's disease.

Authors:  Hailing Liu; Bin Deng; Fen Xie; Xiaohua Yang; Zhenchao Xie; Yonghua Chen; Zhi Yang; Xiyan Huang; Shuzhen Zhu; Qing Wang
Journal:  Ann Clin Transl Neurol       Date:  2021-07-26       Impact factor: 4.511

  8 in total

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