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1 l imaging and fibre tracking with the use of diffusion tensor imaging.
2 nations of white-matter tracts identified by diffusion tensor imaging.
3 ges in white matter, which were confirmed by diffusion tensor imaging.
4 g resting-state functional MRI (rs-fMRI) and diffusion tensor imaging.
5 dex measurement of the corpus callosum using diffusion tensor imaging.
6 isotropy (FA) and mean diffusivity (MD) with diffusion tensor imaging.
7 s of apathy, depression, quality of life and diffusion tensor imaging.
8 nalyses included voxel-based morphometry and diffusion tensor imaging.
9 s throughout the brain were obtained through diffusion tensor imaging.
10 sis of fractional anisotropy (FA) in newborn diffusion tensor imaging.
11 ractional anisotropy values, as derived from diffusion tensor imaging.
12 ubjects underwent volumetric T1-weighted and diffusion tensor imaging.
13 linical control subjects were assessed using diffusion tensor imaging.
14  white matter microstructure was assessed by diffusion tensor imaging.
15                                              Diffusion tensor imaging, a translational imaging techni
16 hip among presurgical cognitive performance, diffusion tensor imaging abnormalities and postoperative
17 aumatic brain injury was not associated with diffusion tensor imaging abnormalities detectable with t
18                                              Diffusion tensor imaging abnormalities in a cohort of 97
19                                    While the diffusion tensor imaging abnormalities observed in the c
20                                  Presurgical diffusion tensor imaging abnormalities of the cerebellum
21 ntrolling for general cognitive performance, diffusion tensor imaging abnormalities of the cerebellum
22  matter and white matter atrophy, as well as diffusion-tensor imaging abnormalities (P < .01).
23                                Perfusion and diffusion tensor imaging accounted for variation in clin
24 sotropy in various brain regions revealed by diffusion tensor imaging, along with increased levels of
25                                              Diffusion tensor imaging also detected deficits in the c
26                                              Diffusion tensor imaging analysis revealed a significant
27                                          The diffusion tensor imaging analysis revealed that fraction
28 assessments, and magnetic resonance imaging, diffusion tensor imaging and (18)F-fluorodeoxyglucose po
29 be seizures in temporal lobe epilepsy, using diffusion tensor imaging and automated fibre quantificat
30 lly increases risk of MMI, to undertake both diffusion tensor imaging and cellular studies to evaluat
31                 Structural networks based on diffusion tensor imaging and cortical thickness were ana
32 herotomy (at mean age: 12.4 years) underwent Diffusion Tensor Imaging and evaluation of motor functio
33                                              Diffusion tensor imaging and fluorescence microscopy stu
34  structural connectivity (SC) as measured by diffusion tensor imaging and frontoparietal functional c
35  also can change white matter as measured by diffusion tensor imaging and increase resting-state midl
36 e to tissue microstructural changes, such as diffusion tensor imaging and magnetization transfer imag
37 haemic changes, all of which can affect both diffusion tensor imaging and magnetization transfer imag
38 roimaging methods-surface-based morphometry, diffusion tensor imaging and network-based statistics-ea
39  Here, we utilize quantitative techniques of diffusion tensor imaging and neurite orientation dispers
40 opontine nucleus structural connectivity via diffusion tensor imaging and performance on cognitive te
41                                      We used diffusion tensor imaging and probabilistic tractography
42  (n = 12; age and sex matched), we performed diffusion tensor imaging and structural MRI, polysomnogr
43 e and hippocampal volume were assessed using diffusion tensor imaging and structural MRI, respectivel
44 , anatomical connectivity was examined using diffusion tensor imaging and tract-based spatial statist
45         Network models were constructed from diffusion tensor imaging and tractography in physically
46                                              Diffusion tensor imaging and transverse relaxation time
47                              Sixty-direction diffusion-tensor imaging and magnetization-prepared rapi
48                                              Diffusion-tensor imaging and serial neurocognitive testi
49 operties and second-language immersion using diffusion tensor imaging, and (ii) to determine whether
50 control participants of both sexes underwent diffusion tensor imaging, and a large subset performed a
51 functional assessment, structural MRI (3 T), diffusion tensor imaging, and arterial spin labelled per
52 ed networks was probed using high-resolution diffusion tensor imaging, and cellular/regional activati
53 nance imaging, fractional anisotropy (FA) of diffusion tensor imaging, and cognitive differences in a
54 t 3T T1-weighted magnetic resonance imaging, diffusion tensor imaging, and cognitive testing.
55 logical immunostaining, electron microscopy, diffusion tensor imaging, and electrophysiology.
56      We evaluated the animals using CT, MRI, diffusion tensor imaging, and immunohistochemistry.
57  and the medial lemniscus was performed with diffusion tensor imaging, and lesions were classified by
58 in-behavior relationships derived from fMRI, diffusion tensor imaging, and online repetitive transcra
59 imaging measures of voxel-based morphometry, diffusion tensor imaging, and resting-state functional c
60 d with amyloid positron emission tomography, diffusion tensor imaging, and structural magnetic resona
61 rent ALS pathological stages as evaluated by diffusion-tensor imaging, and in single patients NFL lev
62       Conclusion Diffusion-weighted imaging, diffusion-tensor imaging, and intravoxel incoherent moti
63             However, data based primarily on diffusion tensor imaging approaches remain inconclusive.
64 ural MRI, resting--state functional MRI, and diffusion tensor imaging--are highly sensitive to common
65    Fractional anisotropy was calculated from diffusion tensor imaging as a measure of diffuse axonal
66 al connectivity abnormalities, measured with diffusion tensor imaging, as well as the convergent impa
67  microstructural organization using neonatal diffusion tensor imaging, associated with skills importa
68 ns) of healthy rat ventricles-obtained using diffusion tensor imaging at 100 mum resolution-were regi
69 erm newborns underwent a brain MRI including diffusion tensor imaging at approximately 2 weeks of age
70 d underwent resting-state functional MRI and diffusion tensor imaging at each time point, along with
71 te matter tract degeneration was assessed on diffusion-tensor imaging at each time-point.
72 ine, neuropsychological, retinal vessel, and diffusion tensor imaging-based cerebral WM evaluations.
73       A high amyloid load does not influence diffusion tensor imaging-based measures of white matter
74                                        Using diffusion tensor imaging-based probabilistic tracking, w
75  Magnetic resonance imaging (T1-weighted and diffusion tensor imaging-based structural connectome), a
76 a white matter diffusion profile by means of diffusion-tensor imaging-based parameters and constraine
77 in microstructural integrity, as measured by diffusion tensor imaging before surgery, on postoperativ
78                                          For diffusion tensor imaging, brains were scanned with a dif
79 y and microstructural brain development with diffusion tensor imaging by measuring fractional anisotr
80               However, both clinical and DTI diffusion-tensor imaging changes did not persist beyond
81 opological centrality of nodes in the normal diffusion tensor imaging connectome were generally repli
82 RI (85% sensitivity, 83% specificity) and on diffusion tensor imaging data (88% sensitivity, 92% spec
83                                  We analyzed diffusion tensor imaging data from 35 patients and 35 he
84 h and a regional-based analysis, we analyzed diffusion tensor imaging data from healthy individuals w
85  of brain anatomical networks estimated from diffusion tensor imaging data on healthy volunteers (n =
86 ntations could be represented by each of the diffusion tensor imaging data sets or by an idealized ru
87                                              Diffusion tensor imaging data were acquired in 63 patien
88 ng and functional magnetic resonance imaging/diffusion tensor imaging data, we also find that variabi
89 tivity matrices calculated from skeletonized diffusion tensor imaging data.
90 s, we employed probabilistic tractography on diffusion tensor imaging data.
91            Here, analysing a publicly shared diffusion tensor imaging dataset, we found that, during
92 aging scanner to acquire T1-weighted images, diffusion tensor imaging datasets, and single volume dif
93 ging was used to calculate T1 volumetric and Diffusion Tensor Imaging derived fractional anisotropy a
94 PT and aMF in motor compensation by relating diffusion-tensor-imaging-derived parameters of white mat
95 invasive magnetic resonance spectroscopy and diffusion tensor imaging detected differences between th
96 changes corresponded with Magnetic Resonance Diffusion Tensor Imaging differences.
97 tter structure and function were assessed by diffusion tensor imaging (DTI) and (1)H magnetic resonan
98  of the uncinate fasciculus (UF) measured by Diffusion Tensor Imaging (DTI) and anxiety symptoms in a
99 ify a PD-specific MRI pattern using combined diffusion tensor imaging (DTI) and arterial spin labelin
100 actional anisotropy (FA) measure provided by diffusion tensor imaging (DTI) and cross-hemispheric com
101 etest reliability of high spatial resolution diffusion tensor imaging (DTI) and diffusion kurtosis im
102 21, crush = 23, cut/repair = 19) and ex vivo diffusion tensor imaging (DTI) and diffusion kurtosis im
103 ation in the field of epilepsy, such as with Diffusion Tensor Imaging (DTI) and Diffusion Tensor Trac
104 tions between PC integrity, measured through diffusion tensor imaging (DTI) and fractional anisotropy
105                                              Diffusion tensor imaging (DTI) and genome-wide single-nu
106 ve cerebrospinal fluid (CSF) sampling, brain diffusion tensor imaging (DTI) and magnetic resonance sp
107                                   Metrics of diffusion tensor imaging (DTI) and magnetization transfe
108                                              Diffusion tensor imaging (DTI) and neurite orientation d
109 ic disorders, and integrated these data with diffusion tensor imaging (DTI) and psychometric measurem
110                                              Diffusion tensor imaging (DTI) and resting-state functio
111  not only contrast-enhanced T1 MRI, but also diffusion tensor imaging (DTI) and resting-state functio
112 ned longitudinally from 6 to 48 months using diffusion tensor imaging (DTI) and tract-based spatial s
113 al, EVF/task-based and resting-state MRI and diffusion tensor imaging (DTI) before and after completi
114 d the processing and statistical analyses of diffusion tensor imaging (DTI) data across sites and met
115                                Processing of diffusion tensor imaging (DTI) data and statistical anal
116         We conducted a secondary analysis of diffusion tensor imaging (DTI) data for 28 contact athle
117                                              Diffusion tensor imaging (DTI) data were acquired from 2
118 monemia-associated astrocytic changes, while diffusion tensor imaging (DTI) demonstrates changes in n
119                                              Diffusion tensor imaging (DTI) enables comprehensive who
120                                              Diffusion tensor imaging (DTI) enables in-vivo quantific
121 encing a first episode of psychosis received diffusion tensor imaging (DTI) exams, clinical assessmen
122                                        While diffusion tensor imaging (DTI) failed to distinguish sim
123          INTRODUCTION: Discrepancies between diffusion tensor imaging (DTI) findings and functional r
124                      This study investigates diffusion tensor imaging (DTI) for providing microstruct
125                                              Diffusion tensor imaging (DTI) harnesses the power of co
126                                              Diffusion tensor imaging (DTI) has been used to evaluate
127  included using both T1-weighted imaging and diffusion tensor imaging (DTI) in a cross-sectional samp
128                                              Diffusion tensor imaging (DTI) is a derivative MRI techn
129                                              Diffusion tensor imaging (DTI) is a unique in vivo imagi
130 tructural changes in white matter (WM) using diffusion tensor imaging (DTI) may be a useful outcome m
131 ted white matter abnormalities of ASPD using diffusion tensor imaging (DTI) measures: fractional anis
132                  We extracted tract-specific diffusion tensor imaging (DTI) metrics to assess changes
133 fer measurements), myelin water fraction and diffusion tensor imaging (DTI) metrics, in addition to p
134                                              Diffusion tensor imaging (DTI) MRI is a sensitive techni
135 pecific structural connectivity derived from diffusion tensor imaging (DTI) of 22 individuals with le
136                                              Diffusion tensor imaging (DTI) of perfusion fixed specim
137       Structural connectivity was defined by diffusion tensor imaging (DTI) of white matter tract mic
138                                     Standard diffusion tensor imaging (DTI) parameters were computed
139                                              Diffusion tensor imaging (DTI) provides us an insight in
140 sotropy (FA) and mean diffusivity (MD) in MR diffusion tensor imaging (DTI) requires adequate signal-
141 on structural magnetic resonance imaging and diffusion tensor imaging (DTI) scanning.
142 ks) underwent magnetic resonance imaging and diffusion tensor imaging (DTI) scans, early in life (pos
143                                              Diffusion tensor imaging (DTI) studies consistently repo
144 with Down syndrome (DS) are limited, with no diffusion tensor imaging (DTI) studies covering that age
145                                              Diffusion tensor imaging (DTI) studies have detected whi
146 hysiology of bipolar disorder (BD); however, diffusion tensor imaging (DTI) studies have reported het
147                                              Diffusion tensor imaging (DTI) studies in the related co
148                              Cross-sectional diffusion tensor imaging (DTI) studies indicate that, af
149                                              Diffusion tensor imaging (DTI) studies show widespread w
150                                To date, most diffusion tensor imaging (DTI) studies used fractional a
151     This investigation was a cross-sectional diffusion tensor imaging (DTI) study at an outpatient ac
152 urpose To develop a diagnostic tool based on diffusion tensor imaging (DTI) to distinguish between PS
153  impact of brief exposure to hyperoxia using diffusion tensor imaging (DTI) to identify axonal injury
154          The aim of this study was to use MR diffusion tensor imaging (DTI) to identify brain microst
155          Thirty-three MMT patients underwent diffusion tensor imaging (DTI) twice - at the start of t
156                                        Brain diffusion tensor imaging (DTI) was performed before and
157 ng state functional connectivity (rs-FC) and diffusion tensor imaging (DTI) yielded convergent result
158                             Here, we applied diffusion tensor imaging (DTI), a modality of magnetic r
159 unctional magnetic resonance imaging (fMRI), diffusion tensor imaging (DTI), and electroencephalograp
160 1) who underwent magnetic resonance imaging, diffusion tensor imaging (DTI), and positron emission to
161  such as single voxel spectroscopy (MRS) and diffusion tensor imaging (DTI), in children with X-linke
162 tients by using magnetic resonance (MRI) and diffusion tensor imaging (DTI), unbiased stereology and
163 the thalamus and less thalamic fiber loss by diffusion tensor imaging (DTI).
164 ine motor skill assessment and scanning with diffusion tensor imaging (DTI).
165 tion and can be assessed non-invasively with diffusion tensor imaging (DTI).
166  (FA) and mean diffusivity were derived from diffusion tensor imaging (DTI).
167 th improvements in cognitive function, using diffusion tensor imaging (DTI).
168 ond the motor pathways, can be visualised by diffusion tensor imaging (DTI).
169 ment effects on white matter integrity using diffusion tensor imaging (DTI).
170 M) in multiple sclerosis (MS) patients using diffusion tensor imaging (DTI).
171  quantitative magnetic resonance imaging and diffusion tensor imaging (DTI).
172 monstrated using fiber tractography based on diffusion tensor imaging (DTI).
173 ting transsexuals and healthy controls using diffusion tensor imaging (DTI).
174 hite matter microstructural properties using Diffusion Tensor Imaging (DTI).
175 ed magnetic resonance (MR) imaging, with two diffusion-tensor imaging (DTI) acquisitions and arterial
176 ology of the brain was examined by MRI using diffusion-tensor imaging (DTI) and immunohistochemistry
177          Purpose To determine the changes of diffusion-tensor imaging (DTI) and tractography in the d
178                                MRI including diffusion-tensor imaging (DTI) may enable detection of m
179 l DWI, diffusion kurtosis imaging (DKI), and diffusion-tensor imaging (DTI) with quantitative histopa
180 eters from diffusion-weighted imaging (DWI), diffusion-tensor imaging (DTI), and intravoxel incoheren
181 ctober 13, 2011, and June 15, 2015, by using diffusion-tensor imaging (DTI).Materials and MethodsIn t
182 arametric (ie, three-dimensional T1-weighted diffusion tensor imaging [DTI]) brain imaging.
183 l imaging approach (voxel-based morphometry, diffusion-tensor imaging, electroencephalography) to tes
184                                              Diffusion tensor imaging estimated microstructural prope
185                                 Stability of diffusion tensor imaging findings was verified by repeat
186 ated brain structural and Magnetic Resonance Diffusion Tensor Imaging findings.
187                                              Diffusion-tensor imaging findings were correlated with s
188 VI is indicative of better agreement between diffusion tensor imaging fractional anisotropy across th
189                     Whole-brain and regional diffusion tensor imaging fractional anisotropy were used
190 te functional magnetic resonance imaging and diffusion tensor imaging fractional anisotropy were used
191 r quantification of brain connectivity using diffusion tensor imaging, functional connectivity, and g
192 l ganglia volumetry; white matter integrity (diffusion tensor imaging); gray matter density (voxel-ba
193                 Connectomic approaches using diffusion tensor imaging have contributed to our underst
194             Diffusion-weighted sequences and diffusion tensor imaging have opened a new horizon in ne
195  m as quickly as possible with concurrent 3T diffusion tensor imaging in 164 participants (57.1% fema
196 , we modeled the structural connectome using diffusion tensor imaging in a sample of 949 youths (aged
197 ffusion properties of white matter tracts by diffusion tensor imaging in the presence of cerebrospina
198 rostructural integrity of white matter using diffusion tensor imaging in two healthy control samples
199  and to evaluate white matter integrity with diffusion-tensor imaging in patients who are recovering
200 ic white matter (WM) tracts as detected with diffusion-tensor imaging in the absence of clinically di
201 d mean diffusivity were measured by means of diffusion-tensor imaging in the white matter adjacent to
202 sonance imaging [MRI], resting-state MRI, or diffusion tensor imaging) in combination with multivaria
203 dial diffusivity in this region, measured by diffusion tensor imaging, inversely predicted thickness.
204                        Further, we show that diffusion tensor imaging is sensitive to these cellular
205                                              Diffusion Tensor Imaging is the most advanced imaging te
206                                              Diffusion-tensor imaging is potentially promising but to
207                 This study evaluates whether diffusion tensor imaging magnetic resonance neurography
208                                              Diffusion tensor imaging maps were calculated and transf
209 atosus with past NPSLE, significantly higher diffusion tensor imaging mean and radial diffusivities w
210 inal fluid (CSF) Ptau collected at baseline, diffusion tensor imaging measure twice, 2 year apart, an
211 crimination power of a novel set of cortical Diffusion Tensor Imaging measures (DTI), on FTD subtypes
212 egional measures of TSPO using [11C]DPA-713, diffusion tensor imaging measures of regional white matt
213                                              Diffusion tensor imaging measures properties of water di
214                                              Diffusion tensor imaging measures recovery of axonal inj
215  Correlations among clinical, structural and diffusion tensor imaging measures were calculated.
216 nance imaging brain data included a study of diffusion tensor imaging metrics (mean diffusivity, frac
217 h/without past NPSLE and healthy controls on diffusion tensor imaging metrics and on diffusion coeffi
218 measurement of cord cross-sectional area and diffusion tensor imaging metrics in the GM and posterior
219 ormance of pain attenuation was explained by diffusion tensor imaging metrics of increased white matt
220                           Brain white matter diffusion tensor imaging metrics were assessed using who
221 s from C2-3 to T2-3 level were measured, and diffusion tensor imaging metrics, i.e. fractional anisot
222 ng (NODDI) model as well as the conventional diffusion tensor imaging model.
223 orodeoxyglucose PET imaging) and structural (diffusion tensor imaging MRI) measures.
224 sychological assessments, 3 T structural and diffusion tensor imaging MRI, 18F-fluorodeoxyglucose and
225 Children's Environmental Health, we acquired diffusion tensor imaging, multiplanar chemical shift ima
226 ealthy controls using the magnetic resonance diffusion tensor imaging, myocardial tagging, and biomec
227 om T1-weighted volumetric (n = 1,136) and/or diffusion tensor imaging (n = 1,088) had been collected.
228 ion kurtosis imaging as well as conventional diffusion tensor imaging of 89 preterm neonates aged 31-
229                             Finally, in vivo diffusion tensor imaging of CSPG4(A131T) mutation carrie
230 y) and volume of axon pathways using in vivo diffusion tensor imaging of fronto-frontal, fronto-tempo
231 sms of local versus distal acupuncture using diffusion tensor imaging of white matter microstructure
232                                              Diffusion-tensor imaging of the knee was performed at 3.
233                                        Using diffusion tensor imaging on a subset of patients, we als
234 stigated the association between presurgical diffusion tensor imaging parameters of brain microstruct
235       Group comparisons on tissue volume and diffusion tensor imaging parameters were made between DM
236 0 years without associated changes in GM and diffusion tensor imaging parameters.
237 hy control subjects in postural sway and DTI diffusion-tensor imaging parameters (P < .05).
238 iance were performed to evaluate whether DTI diffusion-tensor imaging parameters significantly change
239  with streamline tractography; values of DTI diffusion-tensor imaging parameters were then obtained f
240 res: Quantitative neurologic examination and diffusion tensor imaging performed 1 to 3 times through
241 temperament, magnetic resonance imaging, and diffusion tensor imaging phenotypes.
242                                              Diffusion-tensor imaging provided evidence for long-term
243 aims to evaluate how parameters derived from diffusion tensor imaging reflect axonal disruption and d
244                                              Diffusion tensor imaging revealed reduced reorientation
245                                              Diffusion tensor imaging revealed that trait anxiety pre
246 ond time-point, they also underwent a second diffusion tensor imaging scan.
247  volunteers between 8 and 26 years underwent diffusion tensor imaging scanning and completed a delay-
248  used as seeds for tractographic analysis of diffusion tensor imaging scans acquired in the same subj
249                                  Presurgical diffusion tensor imaging scans of 136 older (>/=70 years
250                     For n = 376 individuals, diffusion tensor imaging scans were also available.
251 magnetic resonance imaging (MRI) including a diffusion tensor imaging sequence to assess microstructu
252                                              Diffusion tensor imaging showed converging imaging abnor
253                                              Diffusion-tensor imaging shows the columnar microstructu
254 l magnetic resonance imaging marker based on diffusion tensor imaging, skeletonization of white matte
255 me or graph-theory measures from whole-brain diffusion tensor imaging structural connectomes.
256            We report here a meta-analysis of diffusion tensor imaging studies in these conditions.
257                                Findings from diffusion tensor imaging studies of white matter integri
258 or the interpretation of the human and mouse diffusion tensor-imaging studies upon which it is based.
259                            Here we present a diffusion tensor imaging study that examined white matte
260                Regression data incorporating diffusion tensor imaging suggest that microstructural pr
261        In the present study, we used a novel diffusion tensor imaging technique to obtain high resolu
262 s underwent multimodal MR imaging, including diffusion-tensor imaging, three-dimensional (3D) T1-weig
263                       Follow-up MRI included diffusion tensor imaging to assess white matter integrit
264                                      We used diffusion tensor imaging to characterize putative white
265 ng structural magnetic resonance imaging and diffusion tensor imaging to determine neuroanatomic diff
266    We used voxel-based morphometry (VBM) and diffusion tensor imaging to identify structural and conn
267                       The present study used diffusion tensor imaging to investigate whether military
268                                      We used diffusion tensor imaging to study the white matter in sp
269                                  Here we use diffusion tensor imaging to test whether changes in whit
270                                              Diffusion tensor imaging tractography demonstrates a clo
271                                              Diffusion tensor imaging tractography revealed increased
272 ctural networks were built using whole-brain diffusion tensor imaging tractography, and analysed usin
273 apping, susceptibility weighted imaging, and diffusion tensor imaging tractography.
274 olume and thickness reduction or grey matter diffusion tensor imaging values alterations were observe
275                                              Diffusion tensor imaging was applied in healthy particip
276 l white matter mean diffusivity derived from diffusion tensor imaging was compared between groups in
277       Brain grey and white matter volume and diffusion tensor imaging was compared between survivor g
278                                              Diffusion tensor imaging was performed to measure fracti
279                             Dual heart-phase diffusion tensor imaging was successfully performed in 9
280 indices and whole-brain analyses (n = 2146); diffusion tensor imaging was used to assess global and s
281                               In this study, diffusion tensor imaging was used to evaluate white matt
282                                              Diffusion tensor imaging was used to identify group diff
283                                              Diffusion tensor imaging was used to model white matter
284  strength of white matter connectivity using diffusion tensor imaging, we characterize a left frontal
285                                        Using diffusion tensor imaging, we defined fractional anisotro
286                                        Using diffusion tensor imaging, we first showed extensive whit
287                                  By means of diffusion tensor imaging, we here show that dyslexic mal
288                         Using functional and diffusion tensor imaging, we present a comprehensive neu
289 hensive voxelwise analyses of volumetric and diffusion tensor imaging, we used an unsupervised machin
290 g functional magnetic resonance imaging, and diffusion tensor imaging were assessed before and 2 mont
291 utive function task, and structural MRI with diffusion tensor imaging were conducted.
292                                      OCT and diffusion tensor imaging were used.
293 usion-weighted imaging, MR spectroscopy, and diffusion-tensor imaging) were performed.
294 n magnetic resonance imaging data, including diffusion tensor imaging, were acquired in 16 patients w
295                                           On diffusion tensor imaging, white matter injury was promin
296      This hypothesis was tested by combining diffusion tensor imaging with a multistep decision task
297                          We did so combining diffusion tensor imaging with diffusion-weighted magneti
298                                     Finally, diffusion tensor imaging with multivariate analysis of 3
299      We introduce a new method that combines diffusion tensor imaging with probabilistic tractography
300 racts within the human brain (measured using diffusion tensor imaging) with data from a large sample

 
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