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Research ArticlePediatrics
Open Access

Glutaric Aciduria Type 1: Comparison between Diffusional Kurtosis Imaging and Conventional MR Imaging

B. Bian, Z. Liu, D. Feng, W. Li, L. Wang, Y. Li and D. Li
American Journal of Neuroradiology August 2023, 44 (8) 967-973; DOI: https://doi.org/10.3174/ajnr.A7928
B. Bian
aFrom the Departments of Radiology (B.B., Z.L., D.L.)
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Z. Liu
aFrom the Departments of Radiology (B.B., Z.L., D.L.)
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D. Feng
bOutpatient Pediatrics (D.F.)
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W. Li
dState Key Laboratory of Stem Cell and Reproductive Biology (W.L., L.W.), Chinese Academy of Sciences and University, Beijing, China
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L. Wang
dState Key Laboratory of Stem Cell and Reproductive Biology (W.L., L.W.), Chinese Academy of Sciences and University, Beijing, China
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Y. Li
cGene Therapy Laboratory (Y.L.), The First Hospital of Jilin University, Changchun, Jilin, China
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D. Li
aFrom the Departments of Radiology (B.B., Z.L., D.L.)
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Abstract

BACKGROUND AND PURPOSE: Routine MR imaging has limited use in evaluating the severity of glutaric aciduria type 1. To better understand the mechanisms of brain injury in glutaric aciduria type 1, we explored the value of diffusional kurtosis imaging in detecting microstructural injury of the gray and white matter.

MATERIALS AND METHODS: This study included 17 patients with glutaric aciduria type 1 and 17 healthy controls who underwent conventional MR imaging and diffusional kurtosis imaging. The diffusional kurtosis imaging metrics of the gray and white matter were measured. Then, the MR imaging scores and diffusional kurtosis imaging metrics of all ROIs were further correlated with the morbidity scores and Barry-Albright dystonia scores.

RESULTS: The MR imaging scores showed no significant relation to the morbidity and Barry-Albright dystonia scores. Compared with healthy controls, patients with glutaric aciduria type 1 showed higher kurtosis values in the basal ganglia, corona radiata, centrum semiovale, and temporal lobe (P < .05). The DTI metrics of the basal ganglia were higher than those of healthy controls (P < .05). The fractional anisotropy value of the temporal lobe and the mean diffusivity values of basal ganglia in glutaric aciduria type 1 were lower than those in the control group (P < .05). The diffusional kurtosis imaging metrics of the temporal lobe and basal ganglia were significantly correlated with the Barry-Albright dystonia scores. The mean kurtosis values of the anterior and posterior putamen and Barry-Albright dystonia scores were most relevant (r = 0.721, 0.730, respectively). The mean kurtosis values of the basal ganglia had the best diagnostic efficiency with area under the curve values of 0.837 for the temporal lobe, and the mean diffusivity values of the basal ganglia in glutaric aciduria type 1 were lower than those in the control group (P < .05). The diffusional kurtosis imaging metrics of the temporal lobe and basal ganglia were significantly correlated with the Barry-Albright dystonia scores. The mean kurtosis values of the anterior and posterior putamen and Barry-Albright dystonia scores were most relevant (r = 0.721, 0.730, respectively). The mean kurtosis values of the basal ganglia had the best diagnostic efficiency with area under the curve values of 0.837.

CONCLUSIONS: Diffusional kurtosis imaging provides more comprehensive quantitative information regarding the gray and white matter micropathologic damage in glutaric aciduria type 1 than routine MR imaging scores.

ABBREVIATIONS:

AD
axial diffusivity
AK
axial kurtosis
AP
anterior putamen
AUC
under the curve
BAD
Barry-Albright dystonia
CBH
cerebellar hemisphere
CH
caudate head
CR
corona radiata
CS
centrum semiovale
DKI
diffusional kurtosis imaging
DN
bilateral dentate nucleus
FA
fractional anisotropy
FL
frontal lobes
GA-1
glutaric aciduria type 1
GCDH
glutaryl-CoA dehydrogenase
GP
globus pallidus
HC
healthy control
MD
mean diffusivity
MK
mean kurtosis
P
pons
PL
parietal lobes
PP
posterior putamen
RD
radial diffusivity
RK
radial kurtosis
ROC
receiver operating characteristic curve
SN
substantia nigra
Th
thalamus
TL
temporal lobes

Glutaric aciduria type-1 (GA-1) is a rare autosomal recessive disorder characterized by a deficiency of glutaryl-CoA dehydrogenase (GCDH) activity, often involving the CNS.1⇓-3 Mutations in the GCDH gene encoding the mitochondrial matrix protein GCDH have been found. They result in defective or missing GCDH and lead to abnormal accumulation of organic acids, such as glutaric acid, 3-hydroxy-glutaric acid, and glutarylcarnitine in the blood, urine, CSF, and brain tissue. Bilateral striatal necrosis was previously pathologically and clinically found in patients with GA-1, resulting in a severe dystonic movement disorder.4⇓-6 The clinical manifestations of patients with GA-1 include an acute encephalopathic crisis precipitated by intercurrent febrile illness, macrocephalus, hypotonia, and choreoathetosis and seizures, and patients usually end with permanent motor and mental disability.

MR imaging findings are an important tool for the diagnosis of GA-1, which include characteristic cyst-like bilateral enlargement of the Sylvian fissures, signal abnormalities, and atrophy of the supratentorial WM and the deep GM structures.7⇓-9 However, we found a clinicoradiologic contradiction in conventional brain MR imaging results. Specifically, we established that patients with GA-1 may have outcomes of dystonia deterioration that are quite different, even if similar abnormal signals of the striatum have been obtained (Fig 1). In addition, Mohammad et al,8 Sadek et al,9 and Garbade et al10 came to different conclusions judging by routine MR imaging–detected abnormalities, revealing the association between clinical and imaging features. Therefore, conventional imaging examinations are insufficient to accurately assess brain damage in patients with GA-1.

Fig 1.
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Fig 1.

Clinicoradiologic contradiction. Both patients showed T2WI prolongation and no diffusion restriction in the putamen, but the BAD scores were very different.

On the basis of a Gaussian distribution model, DTI is used to quantitatively assess the damage to brain tissue. This approach can be widely applied to detect CNS metabolic disease changes, such as those of leukoencephalopathy with brainstem and spinal cord involvement and high lactate, metachromatic leukodystrophy, phenylketonuria, and Krabbe disease.11⇓⇓-14 However, the displacement of water molecules is restricted by barriers, including cell membranes and organelles—that is, the movement of water molecules in the human body does not follow the Gaussian distribution. Hence, studies on biologic structures by DTI may be inappropriate.15 Diffusional kurtosis imaging (DKI) quantifies non-Gaussian diffusion of water in biologic systems and has been suggested to be advantageous over DTI; it better characterizes both normal and pathologic brain tissue and is particularly valuable for the assessment of GM.15 The kurtosis reveals the degree of water diffusion restriction and brain tissue microstructural complexity.

To date, no studies have used DKI for the assessment of patients with GA-1. In this investigation, we used DKI to detect GM and WM microstructural changes in 17 patients with GA-1. We aimed to elucidate whether DKI parameters could be sufficiently sensitive to detect micropathologic changes in similar abnormal signal areas and whether they could be of value for severity evaluation.

MATERIALS AND METHODS

Subjects

This prospective study was performed in accordance with the Declaration of Helsinki for studies involving humans and after approval of the First Hospital of Jilin University internal review board (20K060-001) and the parents of the patients. The diagnosis of GA-1 was established by brain MR imaging and biochemical (urine organic acids and plasma acylcarnitines) and GCDH gene mutation analyses.16 A group of 17 healthy controls (HCs) of similar age and sex were enrolled by community recruitment. All healthy subjects had no history of neurologic or psychiatric disorders and had normal MR imaging findings. The patients with GA-1 and HCs did not differ in either age or sex (P > .9 in both instances) (Table). Written informed consent was obtained from parents or authorized legal representatives of all children who participated in the study. After diagnosis, metabolic treatment was started in all patients with GA-1, including a lysine-free, low-lysine diet; a tryptophan-reduced amino acid formula; and other therapies for treating neurologic manifestations according to relevant guidelines.16

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Demographic characteristics of patients with GA-1 and healthy controls

MR Imaging

All patients were scanned using a 3T MR imaging system with a 32-channel head coil (Ingenia Elition X; Philips Healthcare). The sequences and parameters were as follows:

  • 3D-T1WI: TR/TE = 6.6/3.0 ms, FOV = 240 × 240 × 170 mm, matrix = 240 × 240, in-plane resolution = 1 × 1 mm, section thickness = 1 mm, imaging time = 8 minutes 21 seconds.

  • T2WI: TR/TE = 3600/1200 ms, FOV = 230 × 230 × 134 mm, matrix = 288 × 288, section thickness = 5 mm, imaging time = 1 minute 12 seconds.

  • FLAIR: TR/TE = 9000/143 ms, FOV = 230 × 230 × 125 mm, matrix = 256 × 256, section thickness = 5 mm, imaging time = 2 minutes 42 seconds.

  • DWI: single-shot echo-planar sequence. TR/TE = 2084/72 ms, FOV = 230 × 230 × 125 mm, matrix = 152 × 126, section thickness = 2.5 mm, imaging time = 0 minutes 25 seconds. A b-value of 1000 s/mm2 was chosen.

  • DKI: echo-planar imaging diffusion sequence with a total number of 55 diffusion-encoding directions. TR/TE = 4128/80 ms, FOV = 220 × 220 × 130 mm, matrix = 88 × 86, section thickness = 2.5 mm with a 1-mm gap, imaging time = 4 minutes 37 seconds. There were 3 b-values of 0, 1000, and 2000 s/mm2.

Clinical and Neurologic Outcome and Neuroimaging Evaluation

Patients underwent a thorough history-taking, clinical examination, and neurologic-outcome assessment, management, and treatment. All patients with GA-1 and HCs were evaluated using the morbidity scores and Barry-Albright dystonia (BAD) scores.9,10,17 Morbidity score items included loss of mobility, feeding problems, respiratory problems, and seizures necessitating treatment. A point was given for the presence of each item, with a total morbidity score ranging from 0 (asymptomatic) to 4 (severe morbidity). Dystonia severity was quantified using the BAD score, which is a 5-point, criterion-based, ordinal scale designed to assess dystonia in 8 body regions: eyes, mouth, neck, trunk, and the 4 extremities. Raters scored dystonia as none (0), slight (1), mild (2), moderate (3), and severe (4).

Conventional MR Imaging Scores

In the study, MR imaging scores were analyzed on the basis of a previously described pattern-recognition approach of assessing GA-1.8⇓-10 All routine MR images of patients with GA-1 were independently reviewed and scored by authors B.B. and D.L., who have 10 and 21 years of experience with neuroimaging, respectively. In addition, 2 reviewers were blinded to the clinical and biochemical examinations of patients. The cortex was scored as follows: 0 = unaffected, 1 = temporal atrophy, and 2 = frontotemporal atrophy. Each putamen, caudate, globus pallidus, thalamus, dentate, hippocampus, and cerebellum was rated as follows: 0 = unaffected, 1 = T2 hyperintensity, and 2 = atrophy. Each of the ventricles and external CSF spaces was rated as follows: 0 = unaffected, 1 = mildly/moderately dilated, and 2 = markedly dilated. Other scored abnormalities were of the WM (0 = unaffected, 1 = localized T2 hyperintensity, 2 = generalized/diffuse hyperintensity) and the subdural hematoma/hygroma (0 = none, 1 = unilateral, 2 = bilateral).

DKI Analysis

DKI data of all patients were exported from the workstation and converted to the NIfTI data format by MRIcron (https://www.nitrc.org/projects/mricron/). The NIfTI data were imported into the free software Diffusional Kurtosis Estimator (http://www.nitrc.org/projects/dke) for spatial smoothing, median filtering, linear trend removal, and denoise processing.18

Seven DKI metrics were extracted (Fig 2): mean kurtosis (MK), radial kurtosis (RK), axial kurtosis (AK), fractional anisotropy (FA), axial diffusivity (AD), radial diffusivity (RD), and mean diffusivity (MD). The metrics values were measured in the brain regions: bilateral dentate nucleus (DN), cerebellar hemisphere (CBH), pons (P), substantia nigra (SN), globus pallidus (GP), anterior putamen (AP), posterior putamen (PP), caudate head (CH), thalamus (Th), corona radiata (CR), centrum semiovale (CS), frontal lobes (FL), parietal lobes (PL), and temporal lobes (TL). The ROI (32 mm2: cerebellar hemisphere, pons, thalamus, and 16 mm2: other brain regions) method was applied in all subjects by a radiologist who had 10 years of experience in neuroimaging. All brain regions were measured 3 times bilaterally, and an average size was calculated to minimize the error value.

Fig 2.
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Fig 2.

Example of the selection of ROIs (red circle) from the DN, CBH, P, SN, GP, AP, PP, CH, Th, CR, CS, FL, PL, and TL of patients with GA-1. Radiologists manually drew the ROIs (16 mm2 and 32 mm2) on the gray level of the MK map.

Statistical Analysis

All statistical tests were performed using SPSS 22.0 statistical software (IBM). For DKI parameters in the ROIs, quantitative results are expressed as mean (SD). All data were tested for normality and variance homogeneity before analyses. A comparison between the patients with GA-1 and the control group of the same brain region was performed by t test for 2 independent samples to evaluate the DKI parameters. A P value < .05 was considered to indicate a statistically significant difference. Qualitative data were expressed as frequency and percentage. A dichotomized design was applied for routine MR imaging findings, with interobserver reliability expressed as a Fleiss κ. The correlations between MR imaging and morbidity scores or BAD scores were tested statistically using the Mann-Whitney U statistic or the Kruskal-Wallis test.9,10 The Pearson or Spearman correlation analysis was used to test the relationships between DKI parameters and morbidity scores or BAD scores. Receiver operating characteristic curve (ROC) analysis was used to evaluate the diagnostic performance of different brain region parameters with the strongest correlations. An area under the curve (AUC) of >0.5 indicated a significant diagnostic value, and an AUC value closer to 1 was indicative of a better diagnostic value.

RESULTS

Study Population

We included 17 patients (11 female, 6 male) with confirmed GA-1 and complete information, including MR imaging findings and neurologic outcomes. A summary of demographic, clinical, and laboratory features, and MR imaging scores of patients with GA-1 is presented in the Online Supplemental Data. The mean age at MR imaging was 38.4 (SD, 17) months; median, 35 months; range, 11–84 months for all patients. Four (23.5%) patients with GA-1 had insidious onset, and 9 (52.9%) manifested acute onset, whereas 4 (23.5%) were asymptomatic. All patients had hypokinesia and dystonia, and one (5.8%) had a seizure during the MR imaging.

Conventional MR Imaging Abnormalities and Association of MR Imaging Scores with the Morbidity and Barry-Albright Dystonia Scores

The MR imaging abnormalities of 17 patients with GA-1 are given in the Online Supplemental Data. 100% of the patients with GA-1 had expansion of the CSF anterior to the temporal lobes and widening of the Sylvian fissures, though the degrees of expansion were not always symmetric. Ventricle dilation was present in 94% of the examined patients (n = 16). None of the patients had subdural hematoma/hygroma. WM changes were present in 88% of the patients (n = 15). In the GM, the striatum had a high signal or atrophy on T2WI. The most frequently occurring abnormalities (100%) were of the putamen and the globus pallidus. The abnormalities of the caudate head, thalamus, dentate, hippocampus, and cerebellum were 59%, 18%, 47%, 23%, and 0, respectively. Six patients (35%) had hyperintensities in the corpus callosum. The central tegmental tract had restricted diffusion and low ADC in 4 patients (23%). The values of the associations of the MR imaging scores with the morbidity and BAD scores are given in the Online Supplemental Data. All brain regions showed no relation to the morbidity and BAD scores.

Comparison of the Brain Region DKI Metrics in Patients with GA-1 and Healthy Subjects

The kurtosis metrics (MK, AK, and RK values) and FA, AD, and RD values of the AP, PP, CH, and GP of the GA-1 group were significantly higher than those of the corresponding brain region in the control group (P < .05). The MD values of the AP, PP, CH, and GP in the GA-1 group were significantly lower than those in the control group (P < .05). The MK, AK, and RK values of the CS and the CR in the GA-1 group were significantly higher than those in the control group (P < .05). The RD, AD, AK, and RK values of the TL in the GA-1 group were higher, whereas the FA values were lower than those in the control group (P < .05) (Fig 3). No significant difference was observed in the DKI parameters of other ROI between the 2 groups.

Fig 3.
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Fig 3.

DKI values of ROI bar graphs in predefined ROIs with differences (P < .05) in the patients with GA-1 and healthy groups.

Correlation between DKI Metrics and BAD Scores and Morbidity Scores

The data of the association of the DKI parameters of different ROIs with the BAD scores and morbidity scores are provided in the Online Supplemental Data. The results (Fig 4) show a negative correlation in the FA of the TL, MK, AK, and RK of the AP and PP; MK and AK of the GP; and MK of the CH, with significant differences (all, P < .05). In addition, there was a significant positive association of the AD values of the TL (r = 0.596, P = .012) and the MD values of the PP (r = 0.548, P = .023) with the BAD scores.

Fig 4.
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Fig 4.

The association analyses with maximal correlation coefficients between the DKI metrics (FA, MD, MK, AK, and RK values) and the BAD scores.

ROC Analyses for Diagnostic Performances

The values of MK in the AP, PP, CH and GP, as well as RK in the AP distinguished the patients with GA-1 (AUC > 0.5, P < .05), among which the MK of the AP had the highest AUC (0.837), whereas the MK of the GP had the lowest AUC (0.723) (Fig 5).

Fig 5.
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Fig 5.

ROC curve analyses (AP, PP, CH and GP) were performed for the diagnosis of GA-1 to assess the diagnostic performance in the brain structures of the DKI parameters with the strongest correlation. The AUCs of different parameters were compared.

DISCUSSION

In patients with GA-1, acute striatal necrosis during infancy is the principal cause of morbidity and mortality, which leads to chronic oromotor, skeletal, and respiratory complications of dystonia.5 A previous study revealed that routine MR imaging abnormalities may regress, be stable for years, or progress.8 In our investigation, 17 patients with GA-1 manifested characteristic and region-specific brain MR imaging abnormalities (Online Supplemental Data), but no brain structure abnormality appeared to correlate with the morbidity and BAD scores (Table, all P > .05), a finding inconsistent with the results of a previous study in which striatal necrosis was identified by routine MR imaging as the most reliable predictor of a movement disorder,8 which may be related to the small sample size used in our research. In addition, Strauss et al found that older GA-1 patients with significant T2 or FLAIR hypersignal and intact basal ganglia could have normal motor function and neurocognitive performance, which also indicates that conventional MR has disadvantages in precisely assessing GA-1 patients' motor impairment.19

To better understand the mechanisms of gray/white matter damage, we first prospectively investigated the changes of the DKI parameters in 17 patients with GA-1. In many CNS diseases,20⇓-22 such as multiple sclerosis and Parkinson disease, DKI metrics have become an important biomarker for the detection of anisotropic and isotropic diffusion.23 DKI provides not only the diffusion tensor metrics (FA, MD, AD, and RD) but also the kurtosis metrics (AK, RK, and MK).15,23 Furthermore, kurtosis reveals the degree of diffusion restriction and tissue microstructural complexity. A change in the MK value depends on the structural complexity of the ROIs, and an increase of the MK value is due to increased cell-packing density and microstructural complexity.18,22 AK and RK are of value for providing additional information of the axonal and myelin integrity of the WM bundles. The decrease in RK is associated with demyelination, whereas a change in AK reflects axonal degeneration. Additionally, increases in RD and AD are linked to myelin degeneration and axonal degeneration, respectively.24

GA-1 animal model studies show that the pathologic mechanism of brain injury is realized via cytotoxic edema, bilateral striatal neurodegeneration, neuronal swelling, and vacuole formation leading to cerebral capillary occlusion.5,25 Thus, the extracellular tortuosity, decreased membrane permeability, and cell swelling during cytotoxic edema in specific brain regions of patients with GA-1 are reflected by an increase in kurtosis metrics and FA. We found that the increase in MK, AK, and RK of the putamen, caudate head, and pallidum (Fig 3) could be related to cell swelling, ischemic state, and an increase in the volume fraction of limited water diffusion. The cytotoxic edema reduced the extracellular volume and restriction in water motion, which gave rise to a decrease in the MD value. In addition, the changes in MK, AK, and RK of the centrum semiovale and corona radiata revealed that water diffusion may be limited in the fiber structure and may be affected by the cytotoxic effect of glutaric acid, which may indicate that in patients with GA-1, kurtosis metrics are more sensitive to the damage of the WM bundles than DTI metrics (FA, MD, AD, and RD). The kurtosis value is able to reflect the changes in microstructure in both WM and GM.26 Temporal lobe atrophy is a common MR imaging manifestation, but the mechanism of its neuron damage is not fully understood.7 In this study, RD, AD, AK, and RK of the temporal lobe were higher than those in the control group, indicating that the changes might be associated with the alterations of the glutaric acid level.

In our study, the significant correlation between the BAD score and DKI metrics, including the MK, AK, and RK in the putamen, caudate head, and pallidum, supported the hypothesis that striatum microstructural changes may contribute to a permanent motor decline and dystonia (Fig 4). The anterior putamen MK values had the strongest correlations with the BAD scores compared with the FA, MD, AD, AK, and RK values. Thus, kurtosis metrics can serve as a sensitive imaging biomarker in detecting striatum pathology in patients with GA-1. Our results indicate that DKI enables the timely detection of changes in the brain tissue microstructure of patients with GA-1, which is more beneficial for the assessment of the disease severity compared with routine brain MR imaging scores. By comparing the diagnostic efficiency of DKI parameters, we found that the MK and RK of the anterior putamen (AUC = 0.837 and 0.824, respectively) in patients with GA-1 had a higher sensitivity for dystonia assessment than other parameters.

Our study has some limitations. First, the small sample size may have influenced the results. Second, the DKI metrics were measured on the basis of ROIs manually placed in various regions, which might have yielded imperfect reference values and thus bias. In addition, the ROI-based approach was focused on a limited number of spatially-defined regions within the brain, such as in the large WM tracts (eg, the corpus callosum). Third, more time points and longer time spans are required to better investigate the changes of the gray/white matter across time. Fourth, this was not a multicenter study; thus, its results may not be generalizable.

CONCLUSIONS

To our knowledge, this is the first DKI study of GA-1. Using DKI, we compared the magnitude and direction of diffusion in patients with GA-1 with abnormalities in different brain areas to gain insight into the microstructure of the affected brain tissue. The kurtosis values could serve as a surrogate biomarker for assessment of putaminal damage and reflect dyskinesia, which is correlated with prognosis. In the future, longitudinal studies with larger samples and a greater age span are needed to understand the MR imaging markers of GA-1.

Footnotes

  • This work was supported by the Natural Science Foundation of Jilin Province, YDZJ202101ZYTS019, YDZJ202101ZYTS084 and National Key Research and Development Program, 2019YFA0110800.

  • Disclosure forms provided by the authors are available with the full text and PDF of this article at www.ajnr.org.

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  • Received March 21, 2023.
  • Accepted after revision June 7, 2023.
  • © 2023 by American Journal of Neuroradiology
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American Journal of Neuroradiology: 44 (8)
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B. Bian, Z. Liu, D. Feng, W. Li, L. Wang, Y. Li, D. Li
Glutaric Aciduria Type 1: Comparison between Diffusional Kurtosis Imaging and Conventional MR Imaging
American Journal of Neuroradiology Aug 2023, 44 (8) 967-973; DOI: 10.3174/ajnr.A7928

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Glutaric Aciduria Type 1: DK vs. Conventional MRI
B. Bian, Z. Liu, D. Feng, W. Li, L. Wang, Y. Li, D. Li
American Journal of Neuroradiology Aug 2023, 44 (8) 967-973; DOI: 10.3174/ajnr.A7928
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