Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 88fa0347-619f-4d6e-b0a6-d243f06ce163 |
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Downloads | 1178 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 31 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4300 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 175 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:21 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | bde64419-c4c3-4a7f-be23-b38ae6f67454 |
---|---|
Downloads | 1109 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 35 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4760 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:21 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 95560836-9108-4a9d-89ba-a62ba334043e |
---|---|
Downloads | 1161 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 31 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4300 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:20 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 31040ec1-2c09-4b2d-b772-1079d262cc87 |
---|---|
Downloads | 1159 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 33 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4930 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:19 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 8fc09359-0ea0-4b14-b636-e1d34cc971df |
---|---|
Downloads | 1145 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 40 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 5250 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:18 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 4be8d222-d941-4da5-97cf-c9b04dd8b50e |
---|---|
Downloads | 1103 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 34 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4630 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:17 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | 413d7d8f-4644-4bef-86e2-89f01cd84215 |
---|---|
Downloads | 1134 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 35 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4900 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:16 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | eef301df-b4d5-4a69-b627-84a324e29631 |
---|---|
Downloads | 1154 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 36 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4900 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:15 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | fa38d775-b213-4c99-847b-9a9ec9ace97c |
---|---|
Downloads | 1087 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 35 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4760 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:14 a.m. |
Project: | NYU machine learning data |
Anatomy: | Knee |
Fullysampled: | Yes |
Uploader: | florianknoll |
Tags: |
UUID | a48786e2-75f8-4c09-8dcc-a3ee20b9ae81 |
---|---|
Downloads | 1111 |
References | Hammernik K, Klatzer T, Kobler E, Recht M, Sodickson D, Pock T, Knoll F. Learning a Variational Network for Reconstruction of Accelerated MRI Data. Magnetic Resonance in Medicine 79: 3055–3071 (2018) |
Comments | This is part of the training and test data that was used for our 2017 MRM manuscript on learning a variational network to reconstruct accelerated MR data. The data accompanies the code repository at: https://github.com/VLOGroup/mri-variationalnetwork. |
Funding Support | NIH P41 EB017183 |
Protocol Name | SAG |
Series Description | SAG |
System Vendor | SIEMENS |
System Model | Skyra |
System Field Strength | 2.89362 T |
Receiver Bandwidth | 0.793 |
Number of Channels | 15 |
Coil Name | TxRx_15Ch_Knee:1:K5 |
Institution Name | HJD |
Matrix Size | 640 x 646 x 1 |
Field Of View | 280 mm x 282.8 mm x 4.5 mm |
Number of Averages | 1 |
Number of Slices | 36 |
Number of Phases | 1 |
Number of Repetition | 1 |
Number of Contrasts | 1 |
Trajectory | cartesian |
Parallel Imaging Factor | 1.0 x 1.0 |
Repetition Time | 4900 ms |
Echo Time | 50 ms |
Inversion Time | 100 ms |
Flip Angle | 180 ° |
Sequence Type | TurboSpinEcho |
Echo Spacing | 10.01 ms |
Upload Date | Aug. 7, 2018, 7:13 a.m. |