Three-dimensional (3D) phase-resolved functional lung (PREFUL) is a functional magnetic resonance imaging (MRI) technique that allows for quantification of regional ventilation of the whole human lung volume, using tidal breathing and contrast-agent free acquisition for 8 min. Here, we present an MR protocol to collect and analyze 3D PREFUL imaging data.
Pulmonary magnetic resonance imaging (MRI) offers a variety of radiation-free techniques tailored to assess regional lung ventilation or its surrogates. These techniques encompass direct measurements, exemplified by hyperpolarized gas MRI and fluorinated gas MRI, as well as indirect measurements facilitated by oxygen-enhanced MRI and proton-based Fourier decomposition (FD) MRI. In recent times, there has been substantial progress in the field of FD MRI, which involved improving spatial/temporal resolution, refining sequence design and postprocessing, and developing a comprehensive whole-lung approach.
The two-dimensional (2D) phase-resolved functional lung (PREFUL) MRI stands out as an FD-based approach developed for the comprehensive assessment of regional ventilation and perfusion dynamics, all within a single MR acquisition. Recently, a new advancement has been made with the development of 3D PREFUL to assess dynamic ventilation of the entire lung using 8 min exam with a self-gated sequence.
The 3D PREFUL acquisition involves employing a stack-of-stars spoiled-gradient-echo sequence with a golden angle increment. Following the compressed sensing image reconstruction of approximately 40 breathing phases, all the reconstructed respiratory-resolved images undergo registration onto a fixed breathing phase. Subsequently, the ventilation parameters are extracted from the registered images.
In a study cohort comprising healthy volunteers and patients with chronic obstructive pulmonary disease, the 3D PREFUL ventilation parameters demonstrated strong correlations with measurements obtained from pulmonary function tests. Additionally, the interscan repeatability of the 3D PREFUL technique was deemed to be acceptable, indicating its reliability for repeated assessments of the same individuals.
In summary, 3D PREFUL ventilation MRI provides a whole lung coverage and captures ventilation dynamics with enhanced spatial resolution compared to 2D PREFUL. 3D PREFUL technique offers a cost-effective alternative to hyperpolarized 129Xe MRI, making it an attractive option for patient-friendly evaluation of pulmonary ventilation.
According to the World Health Organization (WHO), chronic respiratory diseases are the third leading cause of death, placing a significant burden on healthcare1. The diagnosis and monitoring of several respiratory diseases involve pulmonary functional tests, which lack spatial information and may not be feasible in young patients. Multiple other nuclear medicine modalities provide spatial measures of ventilation, such as positron emission tomography (PET)2, single-photon emission computed tomography (SPECT)3, or computed tomography4. A significant drawback of these techniques is the usage of ionizing radiation for imaging. Therefore, those measurements are not feasible in sensitive populations like children or for repeated measurements in clinical studies.
Magnetic resonance imaging methods gained interest in the last two decades because they offer radiation free measurement of pulmonary function. Above all, hyperpolarized gas MRI techniques5 have been used for the assessment of pulmonary ventilation in healthy controls and patients with pulmonary disease while achieving a superior signal-to-noise (SNR) ratio when compared to 19F6 or oxygen-enhanced MRI7. The common disadvantages of gas MRI techniques include the requirement for additional personnel, hardware costs, or the need for patient cooperation during the breathold measurement. To address these limitations, methods based on Fourier Decomposition (FD) MRI8 have been introduced for evaluating pulmonary ventilation and perfusion. As an alternative to FD MRI, a phase-resolved functional lung (PREFUL) MRI9 was developed, validated10,11,12, and tested in multiple studies, including multicentre studies13,14. Nevertheless, the 2D acquisition results in long acquisition times for complete lung coverage and limited spatial resolution. An elegant solution is offered by self-gated 3D acquisitions, albeit at the expense of the perfusion information15,16,17. One of these techniques, 3D PREFUL MRI17, has been developed not only to assess static ventilation but also ventilation dynamics during an 8 min MR exam, providing superior image resolution when compared to 2D methods.
Following the original publication describing the method17, the technique's repeatability has been assessed and compared to clinically the well-established spirometric measurements18, and more recently, an accelerated image registration framework has been introduced while improving the repeatability of ventilation parameters and preserving the image quality of ventilation maps19. This patient-friendly and easily scalable technique, capable of quantitatively mapping regional ventilation in the human lung, has the potential to significantly contribute to early detection, diagnosis of respiratory disease, or follow-up monitoring of therapy effects20. These treatment changes in regional lung function, such as improved ventilation volume, have the potential to become biomarkers for assessing the impact of therapies and could be a useful tool in multicenter clinical studies.
The article aims to provide a comprehensive and visual explanation of the 3D PREFUL technology, with the goal of fostering a wider translation of this technique.
One of the most critical pitfalls is the acquisition itself. Care must be taken to ensure that the MR sequence parameters are set properly. Importantly, echo time, repetition time, number of slices, matrix size, and pixel bandwidth are the crucial parameters. Deviations from the recommended settings may result in insufficient temporal resolution or prolonged acquisitions. Also, data transfer is important to ensure that the data are completely delivered to the selected computer or server for evaluation. The data evaluation proceeds entirely automatically once the path to the acquired data is set. Postprocessing commences with image reconstruction, where retrospective binning plays a crucial role. Verifying the binning signal is recommended to ensure a clear depiction of the breathing pattern.After inspecting the binning signal, no additional steps are necessary, as the algorithm itself handles poor breathing patterns by excluding outliers (data points above the 95th percentile and below the 10th percentile). After image reconstruction, the process of image registration occurs. This step should be verified as follows: the registered images should be free from breathing and cardiac motion. Specifically, the positions of the diaphragm and heart should be 'frozen'. The next step involves deep-learning-based segmentation of lung parenchyma and vessels. This segmentation process is highly time-consuming for the entire 3D lung volume; hence, the use of AI-based tools is beneficial. However, in certain situations, such as the occurrence of peripheral consolidations, these algorithms may not yield accurate results. Consequently, the segmentation mask should be thoroughly checked and manually corrected if necessary. All of these steps are critical for evaluating the ventilation parameters and may result in inaccurate calculations.
Since the original publication17, several developments have been made in the 3D PREFUL technique. The sorting algorithm of the acquired radial projections has been fully automated and improved so that the whole lung is segmented using Otsu's thresholding method and used as a navigator signal for binning data into respiratory phases. Further, the manual lung parenchyma and vessel segmentation have been replaced by fully automatic deep-learning-based algorithms to reduce time-consuming procedures. Additionally, the processing time of the image registration part might be reduced up to 10 minutes if the Forsberg registration toolbox is implemented19. Along with previous developments, the implemented code enables to coregister images of two-time points (follow-up measurements) and evaluate the voxelwise progression of the disease or therapy-induced ventilation changes20. The current version of the Matlab script does not require any user interaction and could be implemented in a pipeline for the automated processing of data with specific flags in the future.
The main disadvantage of 3D PREFUL is that no local blood flow measurement is feasible since the inflow effect cannot be captured when using a nonselective hard RF pulse for excitation. Secondly, currently, the whole postprocessing (including data transfer, image reconstruction, image registration, and ventilation analysis) requires 2 hours for each subject. Thirdly, currently, only a preliminary comparison of 3D PREFUL-derived ventilation parameters to more validated techniques was demonstrated40. Fourthly, the evaluation of acquired data is performed on a high-performance computer; therefore, the results are not directly available to the physician at the console. Fifthly, feasibility studies of 3D PREFUL on different field strengths and various scanner vendors are lacking.
3D Phase Resolved Functional Lung (PREFUL) MRI allows quantitative mapping of regional ventilation dynamics of the whole human lung during free breathing17. There are several cost-effective alternatives to 3D PREFUL, such as spirometry or multiple breath washout techniques; however, both lack spatial information and require breathing maneuvers, and they are therefore not feasible for young children or neonates. Alternative imaging methods expose patients to ionizing radiation, such as nuclear medicine methods CT, or are not widely available (hyperpolarized 129Xe or 19F gas imaging using MRI). 3D PREFUL provides an assessment of ventilation dynamics, can be performed using a standard clinical scanner, and does not require contrast agents, making it attractive to be translated to a clinical research setting. The fact that 3D PREFUL does not require the use of radiation or contrast agents and offers a patient-friendly, free-breathing acquisition makes it well-suited for repeat or longitudinal studies that quantitatively evaluate regional responses to therapy. Secondly, the 3D PREFUL assessment of lung ventilation may be especially valuable in young children, where radiation exposure should be avoided.
The capability of 3D PREFUL to generate functional ventilation images of the human lung holds the potential for early diagnosis. Specifically, the ability to produce repeatable and quantitative regional ventilation maps allows for longitudinal studies, e.g., disease progression or monitoring of therapy effects. Moreover, the regional information on ventilation dynamics can provide greater sensitivity to early changes related to lung disease that are not detectable by pulmonary function tests.
The authors have nothing to disclose.
This work was funded by the German Center for Lung Research (DZL). The authors profited from a number of beneficial discussions with colleagues, in particular with Marcel Gutberlet, Agilo Kern, Lea Behrendt, Arnd Obert, Julian Glandorf, Till Kaireit, Tawfik Moher Alsady, Gesa Pöhler, Maximilian Zubke, Robin Müller, Marius Wernz, Cristian Crisosto, Milan Speth, Julienne Scheller, and Sonja Lüdiger. The authors acknowledge Robert Grimm (Siemens Healthineers) for writing the MR imaging sequence, and further, the authors would also like to thank Frank Schröder and Sven Thiele from the Department of Radiology (Hannover Medical School) for outstanding technical assistance in performing the MRI examinations.
ANTs | Open source medical image analysis research community | Image registration toolbox | |
BART | Open source imaging | https://www.opensourceimaging.org/project/berkeley-advanced-reconstruction-toolbox-bart/ | Image reconstruction toolbox |
Body coil | Siemens / Philips / GE | https://www.siemens-healthineers.com/en-us/magnetic-resonance-imaging/options-and-upgrades/coils | At least 6-channel body coil; Philips [https://www.usa.philips.com/healthcare/solutions/magnetic-resonance/coils-overview ] |
Forsberg | Image registration toolbox | https://github.com/fordanic/image-registration | Image registration toolbox |
Image reconstruction code | BioVisioneers GmbH | www.biovisioneers.com | Software for the MR reconstruction and analysis |
Matlab | Mathworks | Software | |
MRI | Siemens / Philips / GE | https://www.siemens-healthineers.com/magnetic-resonance-imaging | Philips [https://www.philips.co.in/healthcare/solutions/magnetic-resonance], GE [https://www.gehealthcare.com/products/magnetic-resonance-imaging]; 1.5 T / 3 T |
Sequence | Siemens / Philips / GE | MRI sequence, 3D gradient echo sequence with stack-of-stars trajectory and golden angle increment; 1. Siemens Grasp-Vibe Sequence – https://t.ly/P31kM , 2. Philips Multi Vane XD Sequence https://t.ly/wMWZZ , 3. GE Lava-Star, Disco-Star – https://t.ly/vimm2 |
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