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Erschienen in: Journal of Cardiovascular Magnetic Resonance 1/2019

Open Access 01.12.2019 | Research

Diffusion weighted cardiovascular magnetic resonance imaging for discriminating acute from non-acute deep venous Thrombus

verfasst von: Gang Wu, John Morelli, Yan Xiong, Xuanlin Liu, Xiaoming Li

Erschienen in: Journal of Cardiovascular Magnetic Resonance | Ausgabe 1/2019

Abstract

Background

The importance of discriminating acute from non-acute thrombus is highlighted. The study aims to investigate the feasibility of readout-segmented diffusion weighted (DW) cardiovascular magnetic resonance (CMR) for discrimination of acute from non-acute deep venous thrombus (DVT).

Methods

For this prospective study from December 2015 to December 2017, 85 participants (mean age = 53 years, age range = 34~74) with DVT of lower extremities underwent readout-segmented DW CMR. DVT of ≤14 days were defined as acute (n = 55) and > 14 days as non-acute (n = 30). DVT visualization on b = 0, b = 800, and apparent diffusion coefficient (ADC) images were assessed using a 4-point scale (0~3, poor~excellent). DW CMR parameters were measured using region of interest (ROI). Relative signal intensity (rSI) and ADC were compared between acute and non-acute DVT using a Mann Whitney test. Sensitivity and specificity for ADC and rSI were calculated.

Results

ADC maps had higher visualization scores than b = 0 and b = 800 images (2.7 ± 0.5, 2.5 ± 0.6, and 2.4 ± 0.6 respectively, P<0.05). The mean ADC was higher in acute DVT than non-acute DVT (0.56 ± 0.17 × 10− 3 vs. 0.22 ± 0.12 × 10− 3 mm2/s, P<0.001). Using 0.32 × 10− 3 mm2/s as the cutoff, sensitivity and specificity for ADC to discriminate acute from non-acute DVT were 93 and 90% respectively. Sensitivity and specificity were 73 and 60% for rSI on b = 0, and 75 and 63% for rSI on b = 800.

Conclusions

Readout segmented diffusion-weighted CMR derived ADC distinguishes acute from non-acute DVT.

Trial registration

This study is retrospectively registered. Trial registration number: HUST-TJH-2015-146.
Hinweise

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Abkürzungen
ADC
Apparent diffusion coefficient
CMR
Cardiovascular magnetic resonance
CMRDTI
CMR direct thrombus imaging
DVT
Deep venous thrombus
DW
Diffusion weighted
ICC
Intra-class correlation coefficient
MT
Magnetization transfer
ROC
Receiver operator characteristics
ROI
Region of interest
rSI
Relative signal intensity
SI
Signal intensity
SNR
Signal-to-noise ratio
SPACE
Sampling perfection with application optimized contrast using different flip angle evolutions
UEI
Ultrasound elastography imaging

Background

Deep venous thrombus (DVT) is a common disease [1, 2]. Venous ultrasonography is the first-line test and reference standard for detection of DVT. However, ultrasound is unable to accurately distinguish between acute and non-acute thrombus [36]. The treatment for acute thrombus requires anticoagulants with rapid onset. Thrombolytic therapy is recommended for acute thrombus, especially for newly-formed DVT. Few organized thrombi can be resolved by thrombolytic agents, so thrombolysis is not recommended for chronic DVT. Long term oral warfarin is required for non-acute DVT to prevent recurrent thrombosis. Thrombectomy is a good choice for newly-formed thrombus with large size, but not suitable for non-acute DVT due to adhesion of venous wall. Thus, the importance of discriminating acute from non-acute thrombus is highlighted.
Clinical determination of DVT age is often based on patient-reported symptoms and duration [7, 8]. Nearly one third of DVT are incorrectly staged using traditional diagnostic methods [7, 8]. Several promising imaging techniques have been developed to objectively assess thrombus age. For example, the age of thrombus can be inferred from its firmness. In this respect, ultrasound elastography imaging (UEI) has been reported to distinguish between acute and chronic thrombus by some authors, providing a useful adjunct to conventional ultrasound [9, 10]. However, UEI is highly operator dependent and is limited in its precision [11]. Some authors have evaluated cardiovascular magnetic resonance (CMR) to determine the age of DVT [1214]. CMR direct thrombus imaging (CMRDTI) uses methemoglobin as an endogenous contrast agent [12, 15]. A study by Westerbeek et al. found that acute DVT demonstrated high T1 signal intensity on CMRDTI, which resolved within 3 months in 90% of patients [13]. Phinikaridou et al. used magnetic transfer (MT) and diffusion weighted (DW) imaging to visualize and detect protein composition of thrombus, thereby enabling determination of thrombus age in an animal model [14].
DW CMR has been widely used in clinical settings. Apparent diffusion coefficient (ADC) is the most widely used quantitative parameter [16]. We hypothesize that (1) diffusion in thrombus is restricted and (2) ADC decreases with thrombus age. The aim of the study is therefore to investigate the feasibility of segmented DW CMR for discriminating acute from non-acute DVT.

Methods

This prospective study was approved by the university Institutional Review Board. Written informed consent was obtained from each participant before the study.

Study participants

Inclusion criteria were 1) participants with pain or edema in a lower extremity suspected of DVT (Fig. 1). Exclusion criteria were: (1) standard contraindications to CMR; (2) DVT removal with catheter-directed techniques; and (3) pulmonary embolism. From December 2015 to December 2017, an ultrasound radiologist with 15 years’ experience on ultrasound diagnosis of lower extremity vascular diseases classified study participants with acute (less than or equal to 14 days) versus non-acute DVT (greater than 14 days) according to Fig. 1. Thrombus age ≤ 14d were: 1) first ultrasound negative; 2) second ultrasound positive; 3) ultrasound interval less than or equal to 14 days. Thrombus age >14d were: 1) first ultrasound positive; 2) second ultrasound positive; 3) ultrasound interval more than 14 days. Inclusion and exclusion of participants are shown in Fig. 2.

Ultrasound examinations

Standard venous ultrasound was performed by a radiologist specialized in peripheral vascular disease with 16 years of experience. We defined a thrombus present in the same location for > 14 days as a non-acute DVT and a thrombus present ≤ 14 days as an acute DVT.

CMR examinations

The intervals between the ultrasound determination and the CMR examination were less than 24 h. All CMR examinations were performed on a 3 T whole-body scanner (Magnetom Skyra, Siemens Healthineers, Erlagen, Germany). Study participants were placed in supine position, feet-first. Two 18-element body coils were used to cover the regions of interest in the portions of the lower extremity.
Three-Dimensional sampling perfection with application optimized contrast using different flip angle evolutions (SPACE) was performed in the coronal plane for localization with the following parameters: TR/TE, 3200/100 ms; field of view, 44.8 cm × 28.7 cm; slice thickness, 1.8 mm; echo train length, 100; echo spacing, 4.04 ms; phase direction, head-foot; phase oversampling, 50%; slice number, 30 or more. After the full length of the thrombus was evaluated with SPACE, axial DW CMR was performed covering the center of the thrombus. Given the small size of the thrombus in axial dimensions, DW CMR with multiple readout segments was used. The main parameters of the readout-segmented DW CMR were as follows: TR/TE, 3000/70 ms; matrix size, 224 × 224; field of view, 22.4 cm × 22.4 cm or fit of leg size; slice thickness, 4 mm; slice number, 12–20; readout segments, 7 or more; b-values, 0 and 800 s/mm2; directions, 3; scanning time, 3~5 min. If more than one thrombus was identified by SPACE, the thrombus with the greatest length was studied for the sake of simplicity.

Data analysis

Two radiologists with 8 and 11 years’ experience on CMR diagnosis of vascular diseases blinded to all information evaluated DVT visualization on b = 0, b = 800 and ADC images in consensus. A subjective score was given according to a 4-point scale: 0 = poor depiction of thrombus caused by artifacts or other image degradation with ROI assessment not possible; 1 = moderate depiction of thrombus with unclear boundaries but ROI assessment possible; 2 = good depiction of thrombus, adequate thrombus-to-background contrast, clear boundary; 3 = excellent depiction of thrombus, excellent thrombus-to-background contrast, clear boundary. The signal type of DVT on DW CMR source images was also determined by the two readers in consensus: hyperintensity was defined as brighter than background, isointensity as close to background, and hypointensity as darker than background.
Two radiologists with 11 and 9 years’ experience on imaging diagnosis of vascular diseases blinded to all information measured the signal intensity (SI) of thrombus, normal muscle and background air on DW source images, and ADC values on ADC maps by drawing ROI. ROI on muscles avoided edema areas. The standard deviation of air SI was defined as noise. The relative signal intensity (rSI) was obtained by calculating the ratio of thrombus SI to muscle SI. rSI0 and rSI800 represented rSI on b = 0 and b = 800 images, respectively. The signal-to-noise ratio (SNR) was obtained by calculating the ratio of thrombus SI to noise.

Statistical analysis

All data statistical analysis was performed with SPSS (version 22.0, Statistical Package for the Social Sciences (SSPS) International Business Machines, Inc., Armonk, New York, USA). The Wilcoxon signed-rank test was used to compare the visualization scores between different maps. The Mann Whitney test was used to compare the visualization scores between acute and non-acute DVT. Intra-class correlation coefficient (ICC) was calculated to determine the inter-reader viability in measurement of parameters. ICC above 0.8 was considered excellent inter-reader reproducibility, thus data from two readers were averaged. A Mann Whitney test was used to determine the difference in DW CMR parameters between acute and non-acute DVT. A non-paired student’s t test was used to compare study participant age. A Chi square test was used to identify gender differences. Receiver operating characteristic (ROC) curves were constructed to evaluate the ability in discriminating acute from non-acute DVT. Cutoff corresponding with the highest Youden Index was chosen. P values less than 0.05 was considered significant difference.

Results

From December 2015 to December 2017, 85 study participants (53 years, range = 34~74) underwent CMR, including 55 participants with acute DVT (male: female = 23: 32, average age = 53 years) and 30 participants with non-acute DVT (male: female = 11: 19, average age = 52 years). There was no difference in age or gender between the two groups (P>0.05). Possible causes of DVT and correlated diseases are listed in Table 1. Exclusion of participants for any reason is shown in Fig. 2.
Table 1
Study participant demographics with causes of and predisposing disorders for DVT
 
Acute DVT
(n = 55)
Non-acute DVT
(n = 30)
Total
(n = 85)
Male: female
23:32
11:19
34:51
Mean age, age range
53, 37~74
52, 34~71
53, 34~74
Causes
Ttumor
13
12
25
 Operation
19
5
24
 Limb immobility activity
9
5
14
 Others
14
8
22
Correlated diseases
 Cancer
22
16
38
 Cerebral infarction
5
3
8
 Myelitis
4
2
6
 Rheumatoid diseases
3
2
5
 Trauma
7
1
8
 Pregnancy
2
0
2
 Infection
2
1
3
 Others
10
5
15
DVT deep venous thrombus
The DVT visualization scores are shown in Table 2. 53% of the b = 0 images (45/85) provided excellent depiction of DVT and 45% (38/85) a good depiction. 41% of the b = 800 images (35/85) provided excellent depiction and 53% (45/85) good. 68% of the ADC maps (58/85) provided excellent depiction and 32% (27/85) good depiction. The average scores for b = 0, b = 800 images and the ADC maps are shown in Table 2. Visualization scores were higher with the ADC maps than with the b = 0 and b = 800 images (P < 0.05). Scores did not differ between acute and non-acute DVT (P > 0.05).
Table 2
Visualization of DVT was scored according to the following scale: 0 = poor depiction of thrombus; 1 = moderate depiction of thrombus; 2 = good depiction of thrombus; 3 = excellent depiction of thrombus. The Wilcoxon signed-rank test was used to compare the visualization scores of DVT between different maps. The Mann Whitney test was used to compare the visualization scores between acute and non-acute DVT
 
Poor(0)
Moderate(1)
Good(2)
Excellent(3)
Mean ± SD
 
P
b = 0 map
0
2
38
45
2.5 ± 0.6
ADC vs. b = 0
<0.001
b = 800 map
0
5
45
35
2.4 ± 0.6
ADC vs. b = 800
<0.001
ADC map
0
0
27
58
2.7 ± 0.5
b = 0 vs. b = 800
0.02
 
b = 0 map
b = 800 map
ADC map
Acute
2.6 ± 0.6
2.4 ± 0.6
2.7 ± 0.5
Non-acute
2.4 ± 0.5
2.2 ± 0.6
2.7 ± 0.5
P
0.27
0.09
0.82
The mean SNR was 96.4 ± 65.5 for thrombus at b = 0 map, and the SNR range was 18.8~254.5. The mean SNR was 134.3 ± 101.4 for thrombus at b = 800 map, and the SNR range was 21.2~297.1.
All DVT demonstrated low ADC values compared to adjacent tissue (see Table 3, Figs. 3, 4). Most DVT had adequate thrombus-to-background contrast (see Figs. 3, 4). ICC for DW CMR parameters are shown in Table 4. As all ICC above 0.8, the data from two readers were averaged.
Table 3
Appearance of acute and non-acute DVT on DW CMR
 
b = 0 s/mm2
b = 800 s/mm2
ADC map
Hyperintensity
Isointensity
Hypointensity
Hyperintensity
Isointensity
Hypointensity
Hyper
Iso
Hypo
Acute
33
3
19
34
4
17
0
0
55
Non-acute
5
2
23
6
3
21
0
0
30
Total
38
5
42
40
7
38
0
0
85
Hyper, ADC value higher than background; iso, ADC value close to background; hypo, ADC value lower than background
DVT deep venous thrombus
Table 4
DW CMR parameters were compared between acute and non-acute DVT. Relative signal intensity was the ratio of thrombus SI to normal muscle SI. The units are 10−3 mm2/s for ADC. Sensitivity and specificity in identifying acute DVT from non-acute DVT were obtained using the cutoff given in table
 
ICC
Acute vs. non-acute
P
Cutoff
Sensitivity, 95%CI
Specificity, 95%CI
rSI0
0.91
2.0 ± 1.3 vs. 1.0 ± 0.8
0.01
0.95
73% (40/55), 59%~ 83%
60% (18/30), 41%~ 77%
rSI800
0.89
3.1 ± 1.9 vs. 1.6 ± 1.3
0.02
1.55
75% (41/55), 61%~ 85%
63% (19/30), 44%~ 79%
ADC
0.89
0.56 ± 0.17 vs. 0.22 ± 0.12
<0.001
0.32
93% (51/55), 82%~ 98%
90% (27/30), 72%~ 97%
DVT deep venous thrombus, SI signal intensity, ICC intra-class correlation coefficient, CI confidence interval, rSI0 relative signal intensity on b = 0, rSI800 relative signal intensity on b = 800

Comparison between acute and non-acute DVT

Signal types of acute and non-acute DVT are compared in Table 3. The rSI0 and rSI800 were higher in acute DVT versus non-acute DVT (P<0.05, Table 4). The acute DVT mean ADC was higher than that of non-acute DVT (0.56 ± 0.17 × 10− 3 mm2/s vs. 0.22 ± 0.12 × 10− 3 mm2/s, P<0.001). Figure 5 is a comparison of acute and non-acute DVT. Both are hypointensity on DW source images. They have similar signal intensity, but ADC values differ greatly.
Figure 6 shows the distribution of ADC values of acute and non-acute DVT. When using 0.32 × 10− 3 mm2/s as the cutoff, the sensitivity and specificity for ADC in discriminating acute from non-acute DVT were 93% (51/55, 95% confidence interval, 82%~ 98%) and 90% (27/30, 95% confidence interval, 72%~ 97%) respectively. The cutoffs, sensitivities and specificities for rSI0 and rSI800 are shown in Table 4.

Discussion

Our underlying hypothesis was that ADC decreases with thrombus age. We therefore investigated the use of readout-segmented DW CMR to discriminate acute (≤ 14 days) from non-acute (> 14 days) DVT. Our primary findings were: 1) ADC was different between acute and non-acute DVT (0.56 ± 0.17 × 10− 3 mm2/s vs. 0.22 ± 0.12 × 10− 3 mm2/s, respectively, P < 0.001); 2) ADC values had 93% sensitivity and 90% specificity for discriminating acute from non-acute DVT.
DVT visualization scores were highest with ADC maps, because the thrombus-to-background contrast on ADC map was always adequate. DVT ADC was lower than that of muscle background in every case. In some cases, thrombus signal was close to background on DW CMR source images, thus reducing conspicuity.
Free water content is less in non-acute DVT compared with acute DVT, because water content decreases with thrombus age [17, 18]. The space where water molecular can diffuse is narrower in non-acute thrombus versus acute thrombus, as DVT becomes more compact with age [19]. Thus ADC of non-acute DVT should be lower than that of acute DVT. Our study supports this hypothesis.
ADC had acceptable sensitivity and specificity in the DVT discrimination. The signal of thrombus on DW CMR varied and could be low, intermediate, or high signal. DVT signal intensity on b = 0 map depends on both water content and paramagnetic composition. Paramagnetic methemoglobin content gradually increases with thrombus age due to oxidation of hemoglobin, peaking at about 7~10 days and then gradually decreasing due to phagocytosis [20]. Thus, acute DVT with age of about 7~10 days might be expected to demonstrate low T2 signal due to the resulting T2 shortening. In fact, some acute DVT in our study were low signal intensity on b = 0 images. Most non-acute DVT had low signal intensity on b = 0 images, likely secondary to low water content.
We used readout-segmented DW CMR instead of traditional DW CMR due to the small axial dimensions of thrombus, because traditional DW CMR did not provide adequate spatial resolution, and was frequently degraded by susceptibility artifacts in lower extremity. By using segmented readouts, readout-segmented DW CMR is able to overcome some of the aforementioned limitations. For example, increased matrix size and/or smaller field of view enable higher in-plane resolution. Unfortunately, readout-segmented DW CMR does require longer acquisition times versus single shot DW CMR. Long scan times typically result in more patient induced motion. Fortunately, our DW CMR was 2D-acquisition performed in the transverse plane, perpendicular to the long axis of leg, so was not susceptible to leg motion. The acquisition time increases with number of readout segments, so the selection of the number of readout segments must balance spatial resolution and acquisition time.
Main clinical constraints that prevented readout-segmented DW CMR may be as follows: 1) the availability of CMR is inadequate in some centers; 2) some patients have contraindications to CMR examination; 3) readout-segmented DW CMR is not as conventional as fast spin echo T1 or T2, so radiologists need training of scan and measurement. However, all the constraints could be overcome with the development of hardware and software.
Our study has several limitations. First, thrombectomy was not performed for the participants studied, so DVT could not be pathologically assessed to establish the actual water and methemoglobin content. Second, the DVT age classification in our study is binary (≤14 days and >14 days). ADC values may in reality differ among hyper-acute, acute DVT, sub-acute, and chronic DVT. Finally, the sample size is relatively small, especially for non-acute DVT. Larger, multi-center studies may help further clarify these results.

Conclusions

In conclusion, using readout-segmented DW CMR, ADC values were greater for acute DVT (≤14 days) compared to non-acute DVT (>14 days). ADC values may be helpful for determining the age of DVT, and could potentially be used to help triage therapy in selected patients.

Acknowledgements

We thank Bowen Hou and Yitong Li for scanning part of participants.
This study was approved by Institutional Review Board of Huazhong University of Science and Technology. Written informed consent was obtained from each participant before the study.
Not applicable.

Competing interests

The authors declare that they have no competing interests.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated.

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Literatur
1.
Zurück zum Zitat White RH. The epidemiology of venous thromboembolism. Circulation. 2003;107:I4–8.CrossRef White RH. The epidemiology of venous thromboembolism. Circulation. 2003;107:I4–8.CrossRef
2.
Zurück zum Zitat Naess IA, Christiansen SC, Romundstad P, et al. Incidence and mortality of venous thrombosis: a population-based study. JTH. 2007;5:692–9.PubMed Naess IA, Christiansen SC, Romundstad P, et al. Incidence and mortality of venous thrombosis: a population-based study. JTH. 2007;5:692–9.PubMed
3.
Zurück zum Zitat Chong LY, Fenu E, Stansby G, et al. Management of venous thromboembolic diseases and the role of thrombophilia testing: summary of NICE guidance. BMJ. 2012;344:e3979.CrossRef Chong LY, Fenu E, Stansby G, et al. Management of venous thromboembolic diseases and the role of thrombophilia testing: summary of NICE guidance. BMJ. 2012;344:e3979.CrossRef
4.
Zurück zum Zitat Bates SM, Jaeschke R, Stevens SM, et al. Diagnosis of DVT: antithrombotic therapy and prevention of thrombosis, 9th ed: American college of chest physicians evidence-based clinical practice guidelines. Chest. 2012;141:e351S–418S.CrossRef Bates SM, Jaeschke R, Stevens SM, et al. Diagnosis of DVT: antithrombotic therapy and prevention of thrombosis, 9th ed: American college of chest physicians evidence-based clinical practice guidelines. Chest. 2012;141:e351S–418S.CrossRef
5.
Zurück zum Zitat Cronan JJ, Leen V. Recurrent deep venous thrombosis: limitations of US. Radiology. 1989;170:739–42.CrossRef Cronan JJ, Leen V. Recurrent deep venous thrombosis: limitations of US. Radiology. 1989;170:739–42.CrossRef
6.
Zurück zum Zitat Merli G. Diagnostic assessment of deep vein thrombosis and pulmonary embolism. Am J Med. 2005;118(Suppl 8A):3S–12S.CrossRef Merli G. Diagnostic assessment of deep vein thrombosis and pulmonary embolism. Am J Med. 2005;118(Suppl 8A):3S–12S.CrossRef
7.
Zurück zum Zitat Wells PS, Hirsh J, Anderson DR, et al. Accuracy of clinical assessment of deep-vein thrombosis. Lancet. 1995;345:1326–30.CrossRef Wells PS, Hirsh J, Anderson DR, et al. Accuracy of clinical assessment of deep-vein thrombosis. Lancet. 1995;345:1326–30.CrossRef
8.
Zurück zum Zitat Kurklinsky AK, Kalsi H, Wysokinski WE, et al. Fibrin d-dimer concentration, deep vein thrombosis symptom duration, and venous thrombus volume. Angiology. 2011;62:253–6.CrossRef Kurklinsky AK, Kalsi H, Wysokinski WE, et al. Fibrin d-dimer concentration, deep vein thrombosis symptom duration, and venous thrombus volume. Angiology. 2011;62:253–6.CrossRef
9.
Zurück zum Zitat Kocakoc E. Detection of deep vein thrombosis with Doppler sonography. J Thromb Thrombolysis. 2008;26:159–60.CrossRef Kocakoc E. Detection of deep vein thrombosis with Doppler sonography. J Thromb Thrombolysis. 2008;26:159–60.CrossRef
10.
Zurück zum Zitat Rubin JM, Xie H, Kim K, et al. Sonographic elasticity imaging of acute and chronic deep venous thrombosis in humans. J Ultrasound Med. 2006;25:1179–86.CrossRef Rubin JM, Xie H, Kim K, et al. Sonographic elasticity imaging of acute and chronic deep venous thrombosis in humans. J Ultrasound Med. 2006;25:1179–86.CrossRef
11.
Zurück zum Zitat Xie H, Kim K, Aglyamov SR, et al. Correspondence of ultrasound elasticity imaging to direct mechanical measurement in aging DVT in rats. Ultrasound Med Biol. 2005;31:1351–9.CrossRef Xie H, Kim K, Aglyamov SR, et al. Correspondence of ultrasound elasticity imaging to direct mechanical measurement in aging DVT in rats. Ultrasound Med Biol. 2005;31:1351–9.CrossRef
12.
Zurück zum Zitat Moody AR. Magnetic resonance direct thrombus imaging. JTH. 2003;1:1403–9.PubMed Moody AR. Magnetic resonance direct thrombus imaging. JTH. 2003;1:1403–9.PubMed
13.
Zurück zum Zitat Westerbeek RE, Van Rooden CJ, Tan M, et al. Magnetic resonance direct thrombus imaging of the evolution of acute deep vein thrombosis of the leg. JTH. 2008;6:1087–92.PubMed Westerbeek RE, Van Rooden CJ, Tan M, et al. Magnetic resonance direct thrombus imaging of the evolution of acute deep vein thrombosis of the leg. JTH. 2008;6:1087–92.PubMed
14.
Zurück zum Zitat Phinikaridou A, Andia M, Saha P, et al. In vivo magnetization transfer and diffusion-weighted magnetic resonance imaging detects thrombus composition in a mouse model of deep vein thrombosis. Circ Cardiovasc Imaging. 2013;6:433–40.CrossRef Phinikaridou A, Andia M, Saha P, et al. In vivo magnetization transfer and diffusion-weighted magnetic resonance imaging detects thrombus composition in a mouse model of deep vein thrombosis. Circ Cardiovasc Imaging. 2013;6:433–40.CrossRef
15.
Zurück zum Zitat Xie G, Chen H, He X, et al. Black-blood thrombus imaging (BTI): a contrast-free cardiovascular magnetic resonance approach for the diagnosis of non-acute deep vein thrombosis. J Cardiovasc Magn Reson. 2017;19:4.CrossRef Xie G, Chen H, He X, et al. Black-blood thrombus imaging (BTI): a contrast-free cardiovascular magnetic resonance approach for the diagnosis of non-acute deep vein thrombosis. J Cardiovasc Magn Reson. 2017;19:4.CrossRef
16.
Zurück zum Zitat Nguyen C, Lu M, Fan Z, et al. Contrast-free detection of myocardial fibrosis in hypertrophic cardiomyopathy patients with diffusion-weighted cardiovascular magnetic resonance. J Cardiovasc Magn Reson. 2015;17:107. Nguyen C, Lu M, Fan Z, et al. Contrast-free detection of myocardial fibrosis in hypertrophic cardiomyopathy patients with diffusion-weighted cardiovascular magnetic resonance. J Cardiovasc Magn Reson. 2015;17:107.
17.
Zurück zum Zitat Karande GY, Hedgire SS, Sanchez Y, et al. Advanced imaging in acute and chronic deep vein thrombosis. Cardiovasc Diagn Ther. 2016;6:493–507.CrossRef Karande GY, Hedgire SS, Sanchez Y, et al. Advanced imaging in acute and chronic deep vein thrombosis. Cardiovasc Diagn Ther. 2016;6:493–507.CrossRef
18.
Zurück zum Zitat Mendichovszky IA, Priest AN, Bowden DJ, et al. Combined MR direct thrombus imaging and non-contrast magnetic resonance venography reveal the evolution of deep vein thrombosis: a feasibility study. Eur Radiol. 2017;27:2326–32.CrossRef Mendichovszky IA, Priest AN, Bowden DJ, et al. Combined MR direct thrombus imaging and non-contrast magnetic resonance venography reveal the evolution of deep vein thrombosis: a feasibility study. Eur Radiol. 2017;27:2326–32.CrossRef
19.
Zurück zum Zitat Grover SP, Evans CE, Patel AS, et al. Assessment of venous thrombosis in animal models. Arterioscler Thromb Vasc Biol. 2016;36:245.CrossRef Grover SP, Evans CE, Patel AS, et al. Assessment of venous thrombosis in animal models. Arterioscler Thromb Vasc Biol. 2016;36:245.CrossRef
20.
Zurück zum Zitat Saha P, Andia ME, Modarai B, et al. Magnetic resonance T1 relaxation time of venous Thrombus is determined by Iron processing and predicts susceptibility to lysis. Circulation. 2013;128:729–36.CrossRef Saha P, Andia ME, Modarai B, et al. Magnetic resonance T1 relaxation time of venous Thrombus is determined by Iron processing and predicts susceptibility to lysis. Circulation. 2013;128:729–36.CrossRef
Metadaten
Titel
Diffusion weighted cardiovascular magnetic resonance imaging for discriminating acute from non-acute deep venous Thrombus
verfasst von
Gang Wu
John Morelli
Yan Xiong
Xuanlin Liu
Xiaoming Li
Publikationsdatum
01.12.2019
Verlag
BioMed Central
Erschienen in
Journal of Cardiovascular Magnetic Resonance / Ausgabe 1/2019
Elektronische ISSN: 1532-429X
DOI
https://doi.org/10.1186/s12968-019-0552-5

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