To develop and evaluate MyoMapNet, a rapid myocardial T1 mapping approach that uses fully connected neural networks (FCNN) to estimate T1 values from four T1-weighted images collected after a single inversion pulse in four heartbeats (Look-Locker, LL4).
Method
We implemented an FCNN for MyoMapNet to estimate T1 values from a reduced number of T1-weighted images and corresponding inversion-recovery times. We studied MyoMapNet performance when trained using native, post-contrast T1, or a combination of both. We also explored the effects of number of T1-weighted images (four and five) for native T1. After rigorous training using in-vivo modified Look-Locker inversion recovery (MOLLI) T1 mapping data of 607 patients, MyoMapNet performance was evaluated using MOLLI T1 data from 61 patients by discarding the additional T1-weighted images. Subsequently, we implemented a prototype MyoMapNet and LL4 on a 3 T scanner. LL4 was used to collect T1 mapping data in 27 subjects with inline T1 map reconstruction by MyoMapNet. The resulting T1 values were compared to MOLLI.
Results
MyoMapNet trained using a combination of native and post-contrast T1-weighted images had excellent native and post-contrast T1 accuracy compared to MOLLI. The FCNN model using four T1-weighted images yields similar performance compared to five T1-weighted images, suggesting that four T1 weighted images may be sufficient. The inline implementation of LL4 and MyoMapNet enables successful acquisition and reconstruction of T1 maps on the scanner. Native and post-contrast myocardium T1 by MOLLI and MyoMapNet was 1170 ± 55 ms vs. 1183 ± 57 ms (P = 0.03), and 645 ± 26 ms vs. 630 ± 30 ms (P = 0.60), and native and post-contrast blood T1 was 1820 ± 29 ms vs. 1854 ± 34 ms (P = 0.14), and 508 ± 9 ms vs. 514 ± 15 ms (P = 0.02), respectively.
Conclusion
A FCNN, trained using MOLLI data, can estimate T1 values from only four T1-weighted images. MyoMapNet enables myocardial T1 mapping in four heartbeats with similar accuracy as MOLLI with inline map reconstruction.
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Abkürzungen
2D
Two dimensional
3D
Three dimensional
bSSFP
Balanced steady-state free precession
CI
Confidence interval
CMR
Cardiovascular magnetic resonance
CPMG-SE
Carr-Purcell-Meiboom-Gill spin echo
CPU
Central processing unit
CV
Coefficient of variation
DL
Deep learning
ECG
Electrocardiogram
ECV
Extracellular volume
FCNN
Fully connected neural network
FIRE
Framework for image reconstruction environment
Gd
Gadolinium
GPU
Graphics processing units
ICE
Siemens Image reconstruction environment.
IR-SE
Inversion recovery spin echo
LL4
Look-Locker in 4 heartbeats
ISMRMRD
International Society of Magnetic Resonance in Medicine Raw Data format
LV
Left ventricle/left ventricular
MAE
Mean absolute error
MOLLI
Modified Look-Locker inversion recovery
NN
Neural networks
ROI
Region of interest
RR
Duration of one heartbeat
SD
Standard deviation
ShMOLLI
Shortened modified Look-Locker inversion recovery
SNR
Signal-to-noise ratio
TI
Inversion time
Introduction
Cardiovascular magnetic resonance (CMR) myocardial T1 and extracellular volume (ECV) mapping enable non-invasive quantification of diffuse interstitial fibrosis [1]. Generally, myocardial T1 mapping consists of a preparation pulse and collection of a series of images to sample the recovering longitudinal magnetization at different time points. Based on the evolution of the longitudinal magnetization across the acquired T1-weighted images, T1 at each pixel could be determined [2‐4]. Over the past decade, there have been significant advances in myocardial T1 mapping sequence with different choices of magnetization preparation (e.g., inversion [5, 6], saturation [3, 7], or a combination of both [8]), number of collected T1-weighted images, and recovery period between different imaging blocks [6, 9]. Trade-offs depend on accuracy and precision [2, 10]. There are also differences in terms of coverage (e.g., single 2D, interleaved multislice 2D, or 3D) and respiratory motion compensation (free breathing vs. breath-holding) [11‐15]. There is also growing interest in using a single sequence to simultaneously measure different tissue relaxation times [16‐22]. These approaches often require a more complicated fitting model with more parameters, resulting in a loss of precision and significantly longer reconstruction time, which reduce their clinical utility.
Among different myocardial T1 mapping sequences, Modified Look-Locker inversion recovery (MOLLI) is the most widely used due to its high precision and broad vendor availability [5]. Within a single breath-hold scan, MOLLI performs three sets of Look-Locker inversion-recovery experiments to collect 3, 3, and 5 electrocardiogram (ECG)-triggered T1-weighted images, respectively, with 3 resting heartbeats between every two Look-Locker experiments for magnetization recovery. This acquisition scheme is referred to as MOLLI3(3)3(3)5. A 3-parameter inversion-recovery model with Look-Locker correction is used to calculate T1. However, MOLLI3(3)3(3)5 suffers from inaccurate T1 estimates and long 17 heartbeat breath-holding time. Subsequently, several derivations of MOLLI have been proposed to improve accuracy, precision, or shorten imaging time. For example, MOLLI5(3)3 and MOLLI4(1)3(1)2 protocols both reduce single breathholding to 11 heart beats(9), and the latter improves precision for short T1 times. Shortened MOLLI (ShMOLLI) uses a 5(1)1(1)1 scheme to further reduce imaging time and alleviate effects of heart rate variation by using a conditional fitting algorithm [6]. Inversion group fitting has also been proposed, consisting of a shorter waiting period between Look-Locker experiments, albeit with lower precision [23, 24].
Anzeige
Alternatives to standard curve-fitting techniques in parametric mapping include dictionary-based reconstruction [16, 25, 26], simulated signal recovery [27], and machine learning [28, 29]. Shao et al. used Bloch equation simulation with slice profile correction to model the signal evolution for MOLLI T1 accuracy [27]. They extended this algorithm using deep learning (DL) for rapid T1 map reconstruction [30]. Similarly, Zhang et al. and Hamilton et al. used DL to rapidly reconstruct T1 and T2 maps from images collected using MR fingerprinting [29, 31]. To reduce motion artifacts, an interleaved T1 mapping sequence with radial sampling used a convolutional neural network model to reconstruct highly accelerated T1-weighted image to minimize the acquisition window of the single-shot image [32]. DL was also recently used for joint saturation- and inversion-recovery T1 mapping to improve precision [33]. These studies indicated that DL has the potential to improve myocardial tissue characterization by increasing precision, reducing reconstruction time, decreasing motion sensitivity, and addressing imaging confounders of the myocardial T1 mapping sequence. However, none reduce the overall scan time for myocardial T1 mapping.
In this study, we sought to develop and evaluate a rapid myocardial T1 mapping technique, referred to as MyoMapNet, to perform myocardial T1 mapping in 4 heartbeats with similar accuracy and precision as conventional MOLLI. A single Look-Locker experiment is performed to collect four T1-weighted images (LL4), which are subsequently used in a fully connected neural network (FCNN) to rapidly build T1 map. We hypothesize that a DL-based method can learn T1 from a limited number of T1-weighted samples along the inversion-recovery curve. After initial development and evaluation, we implemented a MyoMapNet prototype on the scanner for seamless integration into the T1 mapping acquisition and reconstruction clinical workflow.
Methods
MyoMapNet
LL4 performs an inversion pulse followed by four ECG-triggered single-shot balanced steady-state free precession (bSSFP) images acquired on successive cardiac cycles within a single breath-hold (Fig. 1A). The inversion-recovery time, defined as the period between the inversion pulse and the acquisition of the central k-space line, is TI1 for the first image and TI1 + (n-1)*RR for the image acquired in the nth cardiac cycle. Subsequently, an FCNN is used to estimate T1 from four T1-weighted signals with corresponding TIs at each pixel (Fig. 1B). A detailed description of the FCNN architecture and optimization are presented in the training section.
×
We first sought to investigate the performance of MyoMapNet trained with three different datasets: (1) using only the first 4 images from native T1 mapping data by MOLLI5(3)3 (MyoMapNet4, PreGd); (2) using only the first 4 images from post-contrast T1 mapping data by MOLLI4(1)3(1)2 (MyoMapNet4, PostGd); and (3) using the first 4 images of both native and post-contrast T1 mapping data according to their respective MOLLI protocols (MyoMapNet4, Pre+PostGd).
Anzeige
Considering the potential loss of T1 precision using only four T1-weighted images, we also investigated the model's performance using five T1-weighted images. Given that existing MOLLI data were used for training, only MOLLI5(3)3 acquired prior to contrast injection was available. We therefore only evaluated MyoMapNet with five native T1-weighted signals. We refer to this model as MyoMapNet5, PreGd. Additional file 1: Table S1 summarizes inputs and nature of data used for training of each model. We subsequently used these four models to estimate phantom and in-vivo T1 with and without contrast to determine whether two separate FC networks for native and post-contrast T1 estimation were needed or if a single model for a single sequence could be used to simplify imaging and map estimation.
Existing data for training, validation, and testing
T1 mapping data from 749 patients (407 male; 16–96 yrs) undergoing MOLLI scans between Jan 1, 2019, and Oct 15, 2020, were retrospectively collected (Fig. 2). Patients were referred for a clinical CMR exam for various cardiovascular indications. Our local institutional review board approved use of in-vivo data for research with a consent waiver. Patient information was handled in compliance with the Health Insurance Portability and Accountability Act (HIPAA).
×
Every patient had either native or both native and post-contrast T1-weighted images acquired by MOLLI5(3)3 and MOLLI4(1)3(1)2 for three left-ventricle (LV) short-axis view slices. All images were collected on a 3 T CMR scanner (MAGNETOM Vida, Siemens Healthineers, Erlangen, Germany) using body and spine phased-array coils. Imaging parameters used in both sequences are summarized in Additional file 1: Table S2. Post-contrast T1 mapping was scanned 15–20 min after injection of 0.1 mmol/kg Gd-DTPA (Gadavist, Bayer Healthcare, Berlin, Germany). The motion-correction algorithm of the vendor was used to align the myocardium across T1-weighted images for each scan. T1 maps for both sequences were calculated offline using a 3-parameter inversion-recovery model with Look-Locker correction. We randomly divided this dataset into training (~ 80%), validation (~ 10%), and testing (~ 10%) (Fig. 2).
MyoMapNet training
MyoMapNet was implemented in Python using the PyTorch library (1.4.0). Training, validation, and testing were performed on a DGX-1 workstation (NVIDIA Santa Clara, California, USA) equipped with 88 Intel Xeon central processing units (2.20 GHz), one NVIDIA Tesla V100 graphics processing unit (GPU) with 32 GB memory and 5120 Tensor cores, and 504 GB RAM.
In the training step, we first sought to investigate the choice of hyperparameters and training performance to obtain the best model. We investigated various hyperparameters, including the number of hidden layers from 2 to 6; the number of neurons in each hidden layer (50, 100, 200, 400); activation functions such as rectified linear activation (Relu) and Leaky Relu; different sizes of mini-batches (32, 40, 64, 80); different optimizers(Adam and stochastic gradient descent (SGD)); and different learning rates (0.001, 0.01).
The model parameters consisted of all weights and biases that were learned during training by minimizing the mean absolute error (MAE):
To avoid overfitting or underfitting, T1 estimation errors of the training and validation datasets were monitored during training. For the training dataset, T1 estimation error over the entire image and expected T1 ranges (i.e., myocardium and blood) were calculated. In addition to reporting global T1 estimation error over the image in the validation dataset, we also monitored and reported errors for the myocardium and blood.
The trained MyoMapNet prototype was deployed on a 3 T CMR scanner (MAGNETOM Vida, Siemens Healthineers, Erlangen, Germany) for inline T1 map building (Fig. 3). The inline integration was implemented using the Siemens Framework for Image Reconstruction (FIRE) prototype framework. Briefly, the FIRE framework provides an interface for raw data or image between the Siemens Image Reconstruction Environment (ICE) pipeline and an external environment similar to Python. The pre-trained MyoMapNet4, Pre+PostGd model was deployed in a containerized (chroot) Python 3.6 environment compatible with the FIRE framework. Data acquired on the scanner underwent standard image reconstruction and motion correction in the Siemens ICE pipeline. Motion-corrected T1-weighted images were then converted into International Society of Magnetic Resonance in Medicine Raw Data format (ISMRMRD) [34]. Before feeding into MyoMapNet, the T1-weighted signals were normalized to 0–1.1. T1 map was then reconstructed by MyoMapNet and sent back to the ICE pipeline in ISMRMRD format, where distortion correction and DICOM images were generated and displayed on the CMR console.
×
MyoMapNet performance
Phantom evaluation
A T1MES prototype phantom containing 12 vials with different T1 and T2 values for cardiac T1 mapping at 3 T was used [35]. Reference T1 and T2 of phantom vials were measured by inversion-recovery spin-echo (IR-SE) and Carr-Purcell-Meiboom-Gill spin-echo (CPMG-SE), respectively. MOLLI5(3)3, MOLLI4(1)3(1)2, and LL4 were performed at a simulated heart rate of 60 bpm. Each sequence was repeated ten times, and repetitions of all sequences were performed in random order. Imaging parameters for all sequences are described in Additional file 1: Table S2. T1 maps for two MOLLI sequences were fitted offline using a three-parameter inversion-recovery signal model with Look-Locker correction.
In-vivo evaluation using existing MOLLI data
We evaluated four trained MyoMapNet models (Additional file 1: Table S1) using existing MOLLI data. Similar to the training steps, we extracted the first four or five T1-weighted images of MOLLI5(3)3 or MOLLI4(1)3(1)2 and their TIs, which were then fed into MyoMapNet to predict T1 values. For this evaluation, we included data from 61 patients, of which 40 had both native and post-contrast T1 images, and 21 had only native T1 data. Since these datasets were not used in either training or validation, they were new to the model.
In-vivo evaluation using prospectively collected LL4
To further evaluate MyoMapNet performance for accelerated T1 mapping LL4, we prospectively recruited 28 subjects consisting of 20 patients (12 male; 61 ± 12 yrs) referred for a clinical CMR and 8 healthy subjects (5 male; 27 ± 14 yrs). These in-vivo experiments were HIPAA compliant and approved by our Institutional Review Board. Written informed consent was obtained from each subject prior to imaging. Native T1 data was collected in 25 subjects and post-contrast T1 data in 16 subjects. Due to IRB restrictions, gadolinium was not administered to any healthy subjects, and four patients did not receive contrast as part of their clinical protocol. In addition to clinical T1 mapping by MOLLI, we collected T1-weighted images for a single mid-LV slice using LL4 within a single breath-hold. All imaging parameters, RF shape, gradient waveforms, and timing of LL4 were identical to conventional MOLLI, with the only difference being the number of T1-weighted images. Imaging parameters are described in Additional file 1: Table S2. A T1 map using our prototype inline MyoMapNet4, Pre+PostGd was reconstructed on the scanner. To further evaluate model performance, we exported images and then used each model to predict T1.
Statistical analysis
For phantom T1, a circular region of interest (ROI) composed of ~ 120 pixels was drawn on each vial. The mean, standard deviation (SD), and coefficient of variation (CV) of T1 pixels within each ROI were calculated. For each sequence, mean, SD, and CV for each vial were averaged across all ten repetitions.
For each in-vivo T1 map, contours for the endo- and epicardium boundaries and blood pool were manually drawn to measure the entire LV myocardium and blood T1. T1 was reported as mean ± SD. CV was then calculated to compare the intrasubject variation. ECV was calculated for the subject who had both native and post-contrast T1 with their blood hematocrit sampled prior to CMR imaging. For MyoMapNet5, PreGd (if any) and MyoMapNet4, PreGd, ECV was calculated with post-contrast T1 from MyoMapNet4, PostGd.
Bland–Altman analysis was performed to determine agreement in T1 or ECV values between the two methods (i.e., MOLLI and MyoMapNet). Paired Student’s t-test was also used for pair-wise comparisons. A P-value less than 0.05 was considered statistically significant. Statistical analyses were performed using GraphPad Prism (version 9.2.0, GraphPad Software, San Diego, California, USA).
Anzeige
Results
MyoMapNet training
Table 1 lists the MAE for various hyperparameters. Based on these preliminary optimization results, we chose the model with six layers. The number of neurons for each layer is 400, 400, 100, 100, 50, and 50. The activation function is Leaky Relu with a mini-batch of 64. The Adam optimizer was used with a learning rate of 0.01 and a weight decay of 0.0001.
Table 1.
Results of hyperparameter optimization
Layers
Number of neurons in each layer
Activation function
Batch size
Learning rate
Mean Error of estimated T1 (ms)
All pixels
Myocardium
Blood
3
400, 400, 1
Leaky Relu
64
0.01
145.5
-26.7
17.9
4
400, 200, 100, 1
Leaky Relu
32
0.01
145.8
-22.6
9.1
5
400, 400, 200, 100, 1
Relu
64
0.01
176.5
26.2
192.8
6
400, 400, 200, 200, 100, 1
Leaky Relu
64
0.01
111.8
-9.4
-7.9
7
400, 400, 400, 400, 200, 100, 1
Relu
64
0.001
137.6
18.1
60.2
Adam optimizer yields the best result in all experiments. The selected hyperparameters for MyoMapNet are highlighted as bold
Loss curves for MyoMapNet4, Pre+PostGd, calculated over the entire image, show the stability of the model (Fig. 4A). The training and validation losses decrease to the point of stability with small differences between validation and training. For the training dataset, the loss curves for T1 ranged from 1000 to 1400 ms and from 1500 to 2000 ms demonstrates similar performance as the loss calculated over the entire image (Fig. 4B). A similar observation was made when calculating the losses in the validation dataset (Fig. 4C). For the validation dataset, MAE for myocardium and blood were ~ 27 ms and ~ 10 mm, respectively.
×
Phantom evaluation
There was no significant visual difference between phantom T1 maps scanned by MOLLI and LL4 with three MyoMapNet models (Fig. 5). Bland–Altman analysis (Fig. 6) shows excellent agreement between MyoMapNet and MOLLI with negligible bias in T1 estimate (mean bias of less than 1 ms). There was no difference in SD or CV between MOLLI and MyoMapNet, indicating the similar precision among different methods (Additional file 1: Table S3).
×
×
In-vivo evaluation using existing data
T1 maps for all subjects across all methods are available on our laboratory Harvard Dataverse. Visually, both maps from MOLLI and MyoMapNet have good image quality with homogeneous signal across the whole LV myocardium and clear boundaries (Fig. 7). Mean, SD, and CV values of native/post-contrast T1 and corresponding ECV values (if any) averaged across all subjects across all methods are summarized in Table 2 and Additional file 1: Table S4. For both native myocardium and blood T1, excellent agreement was achieved between MyoMapNet and MOLLI5(3)3 with a mean T1 difference of 2 ms and -3 ms (MyoMapNet 4, PreGd vs. MOLLI5(3)3), 2 ms and -2 ms (MyoMapNet 4, Pre+PostGd vs. MOLLI5(3)3), and 1 ms and 0 ms (MyoMapNet 5, PreGd vs. MOLLI5(3)3). The 95% confidence interval (CI) for T1 differences between MyoMapNet and MOLLI5(3)3 ranged from -10 ms to 14 ms for myocardium and ranged from -51 ms to 46 ms for blood. Bland–Altman analysis also showed excellent agreement between MyoMapNet and MOLLI4(1)3(1)2 for post-contrast T1 estimation (Fig. 8). The mean myocardium and blood T1 difference between them was -2 ms and 2 ms (MyoMapNet 4, PostGd vs. MOLLI4(1)3(1)2), and -3 ms and 1 ms (MyoMapNet 4, Pre+PostGd vs. MOLLI4(1)3(1)2), respectively. The corresponding 95% CI for T1 difference ranged from -15 ms to 9 ms for myocardium and from -11 ms to 12 ms for blood. The mean difference in ECV between MyoMapNet and MOLLI was ~ 0.4% with 95% CI from -1.1% to 1.9% (all P < 0.05) (Fig. 8).
Table 2.
Native, post-contrast T1 and corresponding ECV for the esixting data by MyoMapNet and MOLLI. MyoMapNet T1 were calculated by discarding T1-weighted images from the MOLLI sequence
Myocardium
Blood
Native T1 (ms)
MyoMapNet4, Pre
1190 ± 38§
1847 ± 99
MyoMapNet4, Pre+PostGd
1190 ± 39§
1849 ± 100
MyoMapNet5, Pre
1190 ± 38
1850 ± 104
MOLLI5(3)3
1188 ± 40
1850 ± 100
Post-Contrast T1 (ms)
MyoMapNet4, PostGd
573 ± 54§
432 ± 69§
MyoMapNet4, Pre+PostGd
572 ± 56§
430 ± 68
MOLLI4(1)3(1)2
575 ± 54
429 ± 70
ECV (%)
MyoMapNet4, Pre
28.5 ± 2.7§
MyoMapNet4, Pre+PostGd
28.5 ± 2.8§
MyoMapNet5, Pre
28.5 ± 2.7§
MOLLI
28.1 ± 2.9
ECV Extracellular volume. Mean and standard deviation were calculated by averaging the corresponding results of each subject across all subjects
§p-value < 0.05 when compared to MOLLI5(3)3 or MOLLI4(1)3(1)2
×
×
Anzeige
In terms of precision (Additional file 1: Table S4), SD of the myocardium and blood T1 from MyoMapNet were ~ 2 ms and ~ 4 ms slightly higher than those from MOLLI5(3)3, and ~ 5 ms and ~ 7 ms higher than those from MOLLI4(1)3(1)2 (all P < 0.05), respectively. The native myocardium and blood T1 CV were 5.0% and 2.0% by MOLLI or all three MyoMapNet models (all P < 0.05). For post-contrast myocardium and blood T1, CV was 5.2% and 2.2% from MOLLI4(1)3(1)2, and ~ 6.0% and 3.7% from MyoMapNet models (all P < 0.05), respectively.
We found that MyoMapNet5, PreGd with 5 T1-weighted images did not significantly improve T1 precision compared to MyoMapNet4, PreGd or MyoMapNet4, Pre+PostGd with only 4 T1-weighted images for native T1 or both native and post-contrast T1. The latter two could again save ~ 1 s imaging time. Therefore, MyoMapNet5, PreGd was no longer used in any prospective evaluations.
In-vivo evaluation using LL4 data
In-vivo scanning by LL4 was successfully completed in all subjects. In maps from all MyoMapNet models and two MOLLI sequences, myocardium and blood had homogeneous signals (Fig. 9). Mean T1 differences in native myocardium and blood between MyoMapNet and MOLLI was 13 ms and 20 ms (MyoMapNet4, PreGd vs. MOLLI5(3)3), and 13 ms and 33 ms (MyoMapNet4, Pre+PostGd vs. MOLLI5(3)3) (Fig. 10A–D). Mean post-contrast myocardium and blood T1 difference was -4 ms and 7 ms between MyoMapNet4, PostGd and MOLLI4(1)3(1)2, and -2 ms and 7 ms between MyoMapNet4, Pre+PostGd and MOLLI4(1)3(1)2, respectively (Fig. 10E–H). ECV for MOLLI and MyoMapNet were ~ 28% and ~ 30% (All P < 0.05, Fig. 10I–J and Table 3).
Table 3.
Native and post-contrast T1 values for prospectively collected data by LL4 with MyoMapNet and MOLLI
Myocardium
Blood
Native T1 (ms)
MyoMapNet4, Pre
1183 ± 56§
1840 ± 34
MyoMapNet4, Pre+PostGd
1183 ± 57§
1854 ± 34
MOLLI5(3)3
1170 ± 55
1820 ± 29
Post-Contrast T1 (ms)
MyoMapNet4, PostGd
641 ± 29
515 ± 15§
MyoMapNet4, Pre+PostGd
630 ± 30
514 ± 15§
MOLLI4(1)3(1)2
645 ± 26
508 ± 9
§p-value < 0.05 when compared to MOLLI5(3)3 or MOLLI4(1)3(1)2
×
×
SD for native myocardium T1 did not differ between MOLLI5(3)3 and MyoMapNet4, PreGd (P = 0.95) or MyoMapNet4, Pre+PostGd (P = 0.59) (Additional file 1: Table S5). SD of the native blood T1 from MyoMapNet was higher than that from MOLLI5(3)3 (34 ms vs. 29 ms, all P < 0.05). For post-contrast T1, SD of myocardium T1 was 26 ms from MOLLI4(1)3(1)2 and ~ 30 ms from MyoMapNet (MOLLI4(1)3(1)2 vs. MyoMapNet4, PostGd: P = 0.24; MOLLI4(1)3(1)2 vs. MyoMapNet4, Pre+PostGd: P = 0.04). Similar to the native T1 measurement, the SD for blood T1 from MyoMapNet was higher than that from MOLLI4(1)3(1)2 (15 ms vs. 9 ms, all P < 0,05). The mean CV of native myocardium and blood T1 was ~ 5% and 2% by MOLLI5(3)3 and MyoMapNet. The CV of the post-contrast T1 by MyoMapNet was higher than those by MOLLI5(3)3 (myocardium: 4.3% vs. 3.8%; blood: 2.7% vs. 1.7%, all P < 0,05; Additional file 1: Table S5).
Discussion
In this study, we developed and evaluated MyoMapNet, an accelerated myocardial T1 mapping approach that can perform T1 mapping within four heartbeats. An FCNN was trained to estimate T1 values using four T1 weighted signals sampled along a single Look-Locker inversion-recovery curve. Through phantom and in-vivo validation using existing data and prospectively collected data, we demonstrated that a MyoMapNet model trained with a combination of native and post-contrast T1 mapping data can be used to calculate T1 for both native and post-contrast T1 mapping. Thus, a single FCNN model for both native and post-contrast T1 mapping using a single LL4 sequence is sufficient. Our inline implementation of the model demonstrated feasibility for rapidly deploying such a model on the scanner.
It is well established that MOLLI has several confounders (e.g., heart rate, T2 sensitivity, magnetization transfer) [2, 36, 37]. In addition, MOLLI T1 is lower than actual T1 due to the intermittent bSSFP readout compared to a standard continuous gradient-echo Look-Locker acquisition. Since we used MOLLI data for training the model, the current implementation of MyoMapNet has theoretically similar limitations as MOLLI. Alternative approaches in which the model is trained using a more accurate T1 mapping sequence could improve the accuracy of MypMapNet. Numerical simulations using the Bloch equation could be used to generate synthetic data for training with the ground truth. A combination of simulated and in-vivo signals could also be used to train the network to further improve MyoMaoNet accuracy and robustness.
We investigated MyoMapNet performance in terms of accuracy and precision using only four T1-weighted images and compared it with conventional MOLLI. However, one can create T1 map using a reduced number of T1-weighted images using a conventional 2 or 3-parameter fitting model. Fitts et al. [38] proposed an arrhythmia insensitive rapid cardiac T1 mapping pulse sequence based on only two T1-weighted images; however, estimated T1 values differed with conventional MOLLI [39]. Our group had previously compared MyoMapNet versus a conventional fitting model using the same number of T1-weighted imaging. In comparison to MyoMapNet, conventional fitting had lower precision and larger bias. Additionally, curve-fitting performance differs for images with different signal-to-noise ratios and T1 values. For the existing MOLLI dataset used in this study, we performed a head-to-head comparison of both approaches (results are included in Supplementary Materials), which also demonstrated similar loss of precision and increased bias.
We randomly divided our existing MOLLI dataset into 80%-10%-10% for training, validation, and testing. While there is no optimal split percentage, using 60–80% of the data for training is quite common. The model performance could be impacted by the splitting ratio [40]. Since we used independent prospectively collected data for further evaluation of the final trained model and its generalizability, we did not investigate different data splitting ratios. An alternative approach would be to stratify the data based on the distribution of T1 values, so all expected ranges of T1 are represented in the training dataset. Further studies are warranted to further improve the training and generalizability of the model by studying the optimal dataset size and splitting ratio.
We used an FCNN for MyoMapNet to estimate T1 from the reduced number of T1-weighted images. The evaluation indicated that such an FCNN model had comparable precision with MOLLI and was better than curve-fitting method (Additional file 2: Figures S3 and S4). In this model, each pixel is treated independently. Alternatively, a convolutional neural network that incorporates data from neighboring pixels could also be used. In a prior preliminary study, we implemented such a model (data not shown) and observed superior noise performance that could potentially improve T1 precision. Further investigation is warranted to evaluate alternative DL models for MyoMapNet.
Respiratory motion can cause image artifacts in myocardial T1 mapping. Breath-holding or free-breathing imaging with slice tracking in combination with image registration has been used to reduce effects of motion on the parametric mapping [41‐43]. In MyoMapNet, we used motion correction to remove any potential misalignment between different T1-weighted images [44]. Further investigation is needed to evaluate whether the breath-hold requirement can be potentially eliminated to reduce patient burden.
We collected prospectively accelerated data to further evaluate MyoMapNet beyond the existing dataset. Although both sequences use similar imaging parameters, there are differences such as breath-holding and in-flow. This was reflected in the greater difference between the two methods in the experiment with prospectively accelerated data than existing MOLLI data. However, such evaluation is necessary to evaluate the performance of an accelerated method in CMR. An inline implementation of MyoMapNet substantially facilitates prototyping and testing of different models on the scanner. We are also taking additional steps to make MyoMapNet and its inline implementation freely available.
DL is rapidly improving the clinical workflow of myocardial tissue characterization. Recent studies have demonstrated the potential of DL to automate analysis and image quality control [45‐48]. These methods could automatically perform motion correction, segmentation, and parameter quantification, thereby reducing the burden of manual analysis and observer-related variability. MyoMapNet could be easily integrated with an automated analysis and quality control method to facilitate rapid data collection and the analysis workflow.
In T1 mapping, the choice of inversion time can impact the accuracy and precision [49]. In LL4, after the inversion pulse, samplings along the relaxation curve are separated by the cardiac cycle. Hence, the effective inversion-recovery times are determined by the RR interval length [2, 8]. Except for the first image shortly acquired after the inversion pulse, the rest of the images have a long inversion-recovery time (> RR interval length). This would reduce sensitivity to T1 relaxation when the patient has a low heart rate or mis-triggered heartbeat during imaging, which impacts the T1 map quality, especially post-contrast T1 [49]. In our study, we did not investigate the optimal choice of inversion time of the first T1-weighted images, as we used conventional MOLLI sequence timing and parameters. Other acquisition schemes can potentially be developed to reduce sensitivity to heart rate and improve performance for short T1 values.
Limitations
Our study has several limitations. We did not evaluate the optimal choice of DL architecture; however, the results from the FCNN show excellent agreement with MOLLI. We used existing MOLLI data for training, and it is widely known that MOLLI has intrinsic underestimation. We did not investigate how different confounders, such as B1 or B0 inhomogeneity, could impact MyoMapNet performance. We used a large patient dataset with various clinical indications; however, we did not evaluate the performance of MyoMapNet for specific cardiomyopathies with abnormal T1 values. Finally, data from a single vendor and field strength were used for training, and the generalizability of the trained network should be studied.
Conclusion
The MyoMapNet enables fast myocardial T1 mapping from only four T1-weighted images collected by a single Look-Locker sequence, leading to shorter scan time and rapid map reconstruction.
Acknowledgements
The authors thank Dr. Warren J. Manning for his editorial assistance.
Declarations
Ethics approval and consent to participate
This study was approved by the BIDMC Institutional Review Board (IRB) and was Health Insurance Portability and Accountability Act (HIPPA)-compliant.
Consent for publication
All other authors have reported that they have no relationships relevant to the contents of this paper to disclose.
Competing interests
There is a pending patent application for MyoMapNet. The authors declare that they have no other competing interests. Dr. Matthias Stuber served as a Guest Editor for this manuscript.
Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. 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 in a credit line to the data.
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Accelerated cardiac T1 mapping in four heartbeats with inline MyoMapNet: a deep learning-based T1 estimation approach
verfasst von
Rui Guo Hossam El-Rewaidy Salah Assana Xiaoying Cai Amine Amyar Kelvin Chow Xiaoming Bi Tuyen Yankama Julia Cirillo Patrick Pierce Beth Goddu Long Ngo Reza Nezafat
Frauen, die zum Zeitpunkt der Brustkrebsdiagnose eine hohe mammografische Brustdichte aufweisen, haben ein erhöhtes Risiko für ein baldiges Rezidiv, legen neue Daten nahe.
Sie sei „ethisch geboten“, meint Gesundheitsminister Karl Lauterbach: mehr Transparenz über die Qualität von Klinikbehandlungen. Um sie abzubilden, lässt er gegen den Widerstand vieler Länder einen virtuellen Klinik-Atlas freischalten.
Gesundheitsminister Lauterbach hat die vom Bundeskabinett beschlossene Klinikreform verteidigt. Kritik an den Plänen kommt vom Marburger Bund. Und in den Ländern wird über den Gang zum Vermittlungsausschuss spekuliert.
In einer Leseranfrage in der Zeitschrift Journal of the American Academy of Dermatology möchte ein anonymer Dermatologe bzw. eine anonyme Dermatologin wissen, ob er oder sie einen Patienten behandeln muss, der eine rassistische Tätowierung trägt.
Update Radiologie
Bestellen Sie unseren Fach-Newsletterund bleiben Sie gut informiert.