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Article

Undersampled Diffusion-Weighted 129Xe MRI Morphometry of Airspace Enlargement: Feasibility in Chronic Obstructive Pulmonary Disease

1
Department of Physics and Astronomy, The University of Western Ontario, London, ON N6A 3K7, Canada
2
Division of Respirology, Department of Medicine, The University of Western Ontario, London, ON N6A 3K7, Canada
3
Robarts Research Institute, London, ON N6A 5B7, Canada
4
Department of Medical Biophysics, The University of Western Ontario, London, ON N6A 3K7, Canada
5
Graduate Program in Biomedical Engineering, The University of Western Ontario, London, ON N6A 3K7, Canada
*
Author to whom correspondence should be addressed.
Diagnostics 2023, 13(8), 1477; https://doi.org/10.3390/diagnostics13081477
Submission received: 2 March 2023 / Revised: 10 April 2023 / Accepted: 18 April 2023 / Published: 19 April 2023
(This article belongs to the Special Issue Diffusion-Weighted Imaging: Technique and Medical Applications)

Abstract

:
Multi-b diffusion-weighted hyperpolarized gas MRI measures pulmonary airspace enlargement using apparent diffusion coefficients (ADC) and mean linear intercepts (Lm). Rapid single-breath acquisitions may facilitate clinical translation, and, hence, we aimed to develop single-breath three-dimensional multi-b diffusion-weighted 129Xe MRI using k-space undersampling. We evaluated multi-b (0, 12, 20, 30 s/cm2) diffusion-weighted 129Xe ADC/morphometry estimates using a fully sampled and retrospectively undersampled k-space with two acceleration-factors (AF = 2 and 3) in never-smokers and ex-smokers with chronic obstructive pulmonary disease (COPD) or alpha-one anti-trypsin deficiency (AATD). For the three sampling cases, mean ADC/Lm values were not significantly different (all p > 0.5); ADC/Lm values were significantly different for the COPD subgroup (0.08 cm2s−1/580 µm, AF = 3; all p < 0.001) as compared to never-smokers (0.05 cm2s−1/300 µm, AF = 3). For never-smokers, mean differences of 7%/7% and 10%/7% were observed between fully sampled and retrospectively undersampled (AF = 2/AF = 3) ADC and Lm values, respectively. For the COPD subgroup, mean differences of 3%/4% and 11%/10% were observed between fully sampled and retrospectively undersampled (AF = 2/AF = 3) ADC and Lm, respectively. There was no relationship between acceleration factor with ADC or Lm (p = 0.9); voxel-wise ADC/Lm measured using AF = 2 and AF = 3 were significantly and strongly related to fully-sampled values (all p < 0.0001). Multi-b diffusion-weighted 129Xe MRI is feasible using two different acceleration methods to measure pulmonary airspace enlargement using Lm and ADC in COPD participants and never-smokers.

1. Introduction

Hyperpolarized 129Xe pulmonary MRI [1,2] provides physiologically relevant biomarkers of obstructive lung disease [3,4,5]. Recently, the 129Xe MRI pulmonary apparent diffusion coefficient (ADC) [6] was shown to be strongly related to ex vivo histological measurements of airspace enlargement in lung tissues harvested from COPD participants. In addition, 129Xe ventilation MRI was shown to be feasible using naturally abundant 129Xe [7]. Moreover, dissolved-phase 129Xe MRI may be employed for simultaneous ventilation/perfusion lung imaging [8,9,10,11], and there is a stable supply of 129Xe and commercially available polarizers capable of generating the necessary volumes of highly polarized gas for clinical investigations [12,13]. However, the low gyromagnetic ratio of 129Xe and the gradient strengths typical for clinical scanners (5 G/cm) dictate that rapid MRI acquisition strategies be developed [9]. This is especially true for multi-b diffusion-weighted MRI, as whole lung datasets are currently difficult to acquire during the relatively short 10–18 s breath hold timeframe [14] that is feasible in participants with lung disease. For participants with obstructive lung disease stemming from abnormal lung airspace enlargement, multi-b diffusion-weighted MRI [15,16] provides ADC and other acinar duct morphometric measurements that estimate mean linear intercept (Lm) values. This is important for young adults with bronchopulmonary dysplasia (BPD) [17] and alpha-1 antitrypsin deficiency (AATD) [18] in whom preliminary diffusion-weighted MRI studies [19,20] have been performed. Because emphysema leads to the destruction of the lung microstructure and a subsequent decrease in surface area of the alveolar walls, gas motion in the lungs is less restricted, leading to higher ADC values. Moreover, since Lm is inversely proportional to the lung surface-to-volume ratio, destruction or damage of the lung microstructure leads to larger Lm values. As ADC and Lm values increase, normal/healthy gas exchange diminishes, making these measurements clinically practical for evaluating lung function in emphysema.
Three-dimensional multi-b diffusion-weighted MRI [21], requiring a number of independent doses of gas for each slice or each b value, has been performed using 129Xe [14] and 3He [21,22]. While all these approaches are feasible in the research setting, the increased time for acquisition, the potential for lung volume mismatch, and repeated doses of hyperpolarized gas are not compatible with clinical examinations. Half-Fourier RARE-type or TrueFISP [23,24], parallel imaging [25], simultaneous slice acquisition [26], and compressed sensing (CS) [27] are promising options for decreasing image acquisition time. Recently, 3He ventilation MRI was shown using CS [27], and multi-b diffusion-weighted MRI was demonstrated using conventional k-space sampling [28], parallel imaging [29], CS [30] and undersampling in the spatial and in b-value directions [31].
We hypothesized that, by using k-space undersampling, whole lung three-dimensional multi-b diffusion-weighted 129Xe MRI can be achieved in a single 16 s breath-hold. Therefore, in this proof-of-concept evaluation, our objective was to retrospectively evaluate and compare ADC and morphometry estimates [32,33] in never-smokers and COPD study participants using partial Fourier reconstruction [34] and compressed sensing [35].

2. Theory

The signal dependence related to diffusion-sensitization can be determined through the probability density function or diffusion propagator (P) for fluid diffusion in confined media with unknown geometry [20,32,33]:
S b / S 0 = 0 P D exp D b ¯ d D
where D is diffusivity, S(b) is the signal at a particular b-value, and S0 is the MR signal-intensity in the absence of diffusion-sensitizing gradients. The diffusion propagator can be ascertained through the inverse Laplace transform of S(b) [33]. To apply this, the analytical representation for S(b) is required. Thus, experimental S(b) values can be fitted, as demonstrated for multi-b diffusion-weighted 3He MRI [20,30,31] as follows:
S b / S 0 = exp D b ¯ α
where D′ is the apparent diffusivity and α is the heterogeneity index (0 < α ≤ 1.0). The diffusion propagator can be determined through substitution of Equation (2) into Equation (1) and then applying the inverse Laplace transform [33]:
P D = B / D D / D 1 α / 2 / 1 α exp 1 α α α 1 α D D α 1 α f D
and   f D = 1 / 1 + C D / D 0.5 α α 2 / 1 α ,     α 0.5                 1 + C D / D 0.5 α α 2 / 1 α ,     α > 0.5
where f(D) is the auxiliary function, and parameters B and C are functions of the heterogeneity index [33]. Mean D estimates can be determined using the probability density function distribution to calculate mean airway length maps [32] (LmD = 2 Δ D , where Δ is the diffusion time). For multi-b diffusion-weighted 3He MRI, Lm is empirically observed to be proportional to LmD [20]:
L m = 562   μ m + 4.3 L m D
Mean airway length depends on both Δ and diffusivity, so Equation (5) cannot be used for 129Xe MRI-based Lm estimates. In order to extend Equation (5) to 129Xe gas, the empirical relationship in Equation (6) was previously determined and proposed [36]:
L m = 562   μ m + 4.3 L m D 2 D 0 He Δ He 2 D 0 Xe Δ Xe
where D 0 He is the free diffusion coefficient of 3He in a nitrogen gas mixture (0.88 cm2/s), ΔHe = 1.46 ms [20], D 0 Xe is the free diffusion coefficient of 129Xe (0.12 cm2s−1/0.14 cm2s−1 [37]), and ΔXe is the diffusion time. To validate our approach, a single participant (COPD-5) was evaluated using both 3He and 129Xe MRI. Stretched-exponential model 3He MRI Lm values for participant COPD-5 (LmD = 290 ± 50 µm and Lm = 700 ± 180 µm) were similar to previously published estimates [20].

3. Materials and Methods

3.1. Study Participants

Four never-smokers, four COPD ex-smokers with emphysema, and one AATD study participant with COPD provided written informed consent to an ethics board-approved protocol (The University of Western Ontario Health Sciences Research Ethics Board, approval ID 18130 and 18131) that was compliant with the Health Insurance Portability and Accountability Act (HIPAA, USA). Ex-smokers with COPD and AATD participants with COPD were enrolled between 50–80 years of age as part of the Thoracic Imaging Network of Canada (TinCan) cohort [38]; never-smokers without a history of tobacco smoking or chronic respiratory disease were enrolled between 45–80 years of age. Some of the participants evaluated here were previously reported [14,37] as a part of the TINCan study.

3.2. Pulmonary Function Tests and CT

Spirometry, plethysmography, and the diffusing capacity of the lung for carbon-monoxide (DLCO) were performed according to American Thoracic Society (ATS) guidelines [39] using a plethysmograph and attached gas analyzer (MedGraphics Corporation. 350 Oak Grove Parkway, Saint Paul, MN, USA). CT was also performed in supine (64-slice Lightspeed VCT scanner GEHC, Milwaukee, WI, USA; 64 × 0.625 mm, 120 kVp, effective mA = 100, tube rotation time = 500 ms, pitch = 1.0), using a spiral acquisition in breath-hold after inhalation of 1 L N2 from functional residual capacity (FRC). A slice thickness of 1.25 mm and a standard convolution kernel were used.

3.3. 129Xe and 3He MRI Acquisition

MRI was performed at 3.0 T (MR750, GEHC, Waukesha, WI, USA) using whole-body gradients (Gmax = 5 G/cm, slew rate = 200 mTm−1s−1), as previously described [14]. 129Xe gas (86% enriched, measured polarization 12–40%) was provided by commercial polarizer systems (XeBox-E10, Xemed LLC, Durham, NH; XeniSpin™, Polarean Inc, Durham, NC, USA). All participants inhaled 1 L of a 50/50 by volume 129Xe/4He gas mixture from functional residual capacity (FRC). For all 3He MRI, polarized 3He gas (polarization ~40%) was provided by a commercial system (HelispinTM, Polarean Inc, Durham, NC [40]). Participants inhaled 1 L of a 3He/N2 a gas mixture (30/70 by volume) from FRC, as previously described [38].
A three-dimensional FGRE sequence was employed for ventilation MRI (15 mm coronal slices, matrix size 80 × 128, total acquisition time 16 s, 0.5 ms rectangular RF pulse, variable flip angle (VFA), TE/TR = 2.0 ms/9 ms, bandwidth = 24.5 kHz, FOV = 40 × 40 cm2), as previously described [3]. For 3He MRI, a multi-slice interleaved centric two-dimensional FGRE diffusion-weighted sequence was acquired for seven 30 mm coronal slices (matrix size = 128 × 80, total acquisition time = 16 s, 0.9 ms selective RF pulse, TE/TR = 3.9 ms/5.6 ms, bandwidth = 62.5 kHz, FOV = 40 × 40 cm2, b = 0, 1.6, 3.2, 4.8, 6.4 s/cm2). The diffusion-sensitization gradient pulse ramp up/down time = 0.5 ms, with ΔHe = 1.46 ms, which was initiated at the maximum b value to ensure that maximum MR signal was acquired at greater b values, as previously described [20].
For 129Xe MRI in the AATD participant, four interleaved acquisitions (3D FGRE, 0.5 ms rectangular RF pulse, VFA, TE/TR = 9.0 ms/10.0 ms, matrix size = 64 × 64, number of slices = 7; slice thickness = 30 mm, and FOV = 40 × 40 cm2), with and without diffusion-sensitization, were acquired for a given line of k-space. For participants with COPD and never-smokers, two interleaved acquisitions (2D FGRE, TE/TR = 9.8 ms/11.0 ms, matrix size = 128 × 128, number of slices = 7; slice thickness = 30 mm, and FOV = 40 × 40 cm2), with and without diffusion–sensitization, were acquired for a given line of k-space to ensure that RF depolarization (5° constant flip angle was used), and T1 relaxation effects were minimal [14]. In all cases, the diffusion–sensitization gradient pulse ramp up/down time = 500 μs, constant time = 2 ms, and ΔXe = 5 ms, providing four b values 0, 12.0, 20.0, and 30.0 s/cm2. 3He/129Xe MRI scans for the AATD participants were conducted back-to-back.

3.4. Image Analysis

As shown in Figure 1, two k-space masks, mimicking the acceleration factor 2 (AF = 2; half-echo sampling in the phase-encoding direction), and AF = 3, were applied to the fully sampled multi-b diffusion-weighted 129Xe k-space data. A partial Fourier reconstruction (MATLAB R2013b MathWorks, Natick, MA, USA) [41] was used to reconstruct diffusion-weighted images with AF = 2, while compressed sensing (MATLAB) [35] was used to reconstruct diffusion-weighted images with AF = 3. All fully sampled k-space data for 129Xe MRI were reconstructed into a 128 × 128 matrix (Fourier transform, IDL6.4, ITT Visual Information Solutions, Boulder, CO, USA). Therefore, the nominal voxel size was 3.1 × 3.1 × 15 mm3 for the static ventilation images and 3.1 × 3.1 × 30 mm3 for the diffusion-weighted images. Diffusion-weighted 3He MRI k-space data were zero-filled to a 128 × 128 matrix and then Fourier transformed (IDL6.4). Therefore, the nominal image voxel size was 3.1 × 3.1 × 30 mm3.
To generate D′ and α maps, a nonlinear least squares algorithm (MATLAB) was used to fit Equation (2) on a voxel-by-voxel basis. In turn, D′ and α were used to compute P(D) for the 0 < DD0 interval based on Equations (3) and (4) on a voxel-by-voxel basis (IDL 6.4).
A semi-automated segmentation approach was used to generate ventilation defect percent (VDP), as previously described [42]. ADC maps were generated for two b-values (0 and 12 s/cm2) on a voxel-by-voxel basis, as previously described [3] The relative area of the CT density histogram with attenuation values ≤−950 Hounsfield units (RA950) [43] and low attenuating clusters were determined using Pulmonary Workstation 2.0 (VIDA Diagnostics Inc., Coralville, IA, USA).

3.5. Statistics

Differences between ADC and Lm values generated from fully and undersampled k-space were calculated on a voxel-by-voxel basis [30] using Equation (7):
Difference = i = 1 N j = 1 M FullySampled ij - UnderSampled ij FullySampled ij × 100 %
where N and M were the corresponding map matrix sizes. Multivariate analysis of variance (MANOVA) and independent t tests were performed using SPSS Statistics, V22.0 (SPSS Inc., Chicago, IL, USA). For all participants and for the COPD subgroup, repeated measures of ANOVA with AF = [1, 2, and 3] as repeated ADC/Lm measurements were corrected using a Greenhouse-Geisser correction and used to determine any main effects for the acceleration factor regarding ADC or Lm. Relationships between voxel-wise ADC and Lm with acceleration factor were determined using Spearman correlation coefficients (ρ). Agreement between acceleration factors for both ADC and Lm were determined using the Bland-Altman method [44] by using GraphPad Prism version 7.00 (GraphPad Software Inc., San Diego, CA, USA). Results were considered significant when the probability of two-tailed type I error (α) was less than 5% (p < 0.05).

4. Results

Table 1 summarizes pulmonary function, CT, and demographic measurements for all participants. Never-smokers reported significantly different FEV1/FVC, TLC, and DLCO as compared to COPD participants.
Figure 2 shows the representative centre coronal 129Xe ADC and Lm maps for a single never-smoker, as well as COPD and AATD participants using all three approaches (fully sampled, AF = 2, 3). As shown in Figure 2, in the elderly never-smoker (FEV1 = 105%pred, DLCO = 94%pred, RA950 = 0.14%, VDP = 4%), ADC and diffusivity maps were homogeneous, and the Lm maps were contiguous, and undersampled (AF = 2 and 3) maps were qualitatively similar to the fully sampled map. For the COPD participant (FEV1 = 59%pred, DLCO = 43%pred, RA950 = 12% and VDP = 15%) with severe emphysema, ADC and Lm maps were qualitatively similar in relation to the undersampled and fully sampled cases. For the representative AATD participant with severe emphysema (FEV1 = 58%pred, DLCO = 50%pred, RA950 = 19%, VDP = 27%), all k-space sampling methods provided continuous and qualitatively similar lung ADC and Lm maps.
Table 2 and Table S1 summarizes mean ADC, LmD, and Lm, as well as D′ and α, for all participants; a by-participant list of these data is provided in a Supporting Table S1 (online). For all three k-space sampling methods, ADC and Lm were significantly different in the COPD subgroup 0.08 cm2s−1/580 µm, AF = 3; all p < 0.05) as compared to never-smokers (0.05 cm2s−1/300 µm, AF = 3), concomitant with abnormal airspace enlargement in COPD participants. For never-smokers, mean differences of 7%/7% for ADC and 10%/7% (AF = 2/AF = 3) for Lm values were observed compared to fully sampled values. For the COPD subgroup, mean differences (AF = 2/AF = 3) of 3%/4% for ADC and 11%/10% for Lm were observed between fully sampled and undersampled values. For the AATD participant, there was a mean difference of 7%/8% and 13%/12% (AF = 2/AF = 3) for ADC and Lm values, respectively.
For all participants (p = 0.9) and for the COPD subgroup (p = 0.4), ANOVA showed that there was no relationship between acceleration factor and ADC or Lm. Figure 3A,B shows that AF-1 ADC values were significantly correlated with AF-2 (r2 = 0.82, ρ = 0.90, p < 0.0001, y = 0.88x + 0.008) and AF-3 (r2 = 0.86, ρ = 0.92, p < 0.0001, y = 0.87x + 0.008) values, and there was strong agreement for ADC AF-1 with AF-2 (bias = −0.0002 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s) and AF-3 (bias = −0.0007 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s). Figure 3C also shows ADC differences for AF-1 with AF-2 and AF-3 for each participant. Figure 3D,E shows that AF-1 Lm; was significantly correlated with AF-2 (r2 = 0.64, ρ = 0.75, p < 0.0001, y = 0.79x + 101) and AF-3 (r2 = 0.66, ρ = 0.76, p < 0.0001, y = 0.77x + 78) values, with strong agreement for Lm AF-1 with AF-2 (bias = 8 ± 146 μm, lower limit = −278 μm, upper limit = 293 μm) and AF-3 (bias = −24 ± 141 μm, lower limit = −300 μm, upper limit = 252 μm). Figure 3F shows Lm differences for AF-1 with AF-2 and AF-3 for each participant.

5. Discussion

Hyperpolarized gas 129Xe MRI was approved by the Food and Drug Administration (FDA) for clinical use in December 2022, opening the doors for wide clinical adoption and usage of this imaging modality. Diffusion-weighted hyperpolarized gas 129Xe MRI, along with static ventilation and gas exchange measurements, should be useful for the diagnosis, observation, and treatment outcome assessment of various pulmonary diseases, including smoking-related emphysema, AATD, and bronchopulmonary dysplasia. As 129Xe MRI is a radiation-free non-invasive imaging modality, it could potentially become the main lung imaging method for young adults and newborns.
In this proof-of-concept study, we investigated the influence of k-space undersampling on 129Xe MRI ADC and Lm values using three different sampling approaches and a stretched exponential model. We retrospectively evaluated nine participants, including never-smokers, COPD ex-smokers, and a single AATD participant to explore the feasibility of this approach.
COPD ex-smokers and AATD participants were previously studied using 3He MRI ADC and morphometry measurements [20,45,46,47,48]. However, to our knowledge, this is the first demonstration of undersampled 129Xe MRI ADC and Lm across a spectrum of emphysema severity and using the stretched exponential method. Previous 129Xe morphometry studies [49,50], in mainly healthy participants, provided a framework for this examination in participants with emphysema. Several factors are expected to influence ADC and Lm values, such as severity of emphysema and lung aging, due to the fact these measurements are an indirect reflection of the lungs’ and alveoli’s ability to move and transfer gasses: Lm is the lung microstructure dimension and ADC describes the motion of gasses within the lungs and the airway restrictions. As such, any destruction of the airways and alveoli leads to a change in ADC and Lm values, but the destruction pattern and the distribution of these ADC and Lm values differ from normal lung aging compared to emphysematous lungs [28].
Across a wide range of emphysema severity, partial Fourier reconstruction (AF = 2) and compressed sensing (AF = 3) did not significantly alter ADC and Lm values (p > 0.05) compared to those generated using fully-sampled Fourier transform reconstruction. In other words, for the never-smoker and COPD subgroups, fully and under-sampled estimates of ADC, LmD, and Lm were not significantly different. For both participant subgroups, the difference in Lm values calculated based on Equation (7) was the same for AF = 2/AF = 3, indicating that the two different image reconstruction methods led to similar morphometry estimates. Moreover, for all participants and for the COPD subgroup, there was no relationship for acceleration factor with ADC or Lm. The strong and significant voxel-wise correlations for AF-1 ADC and Lm values with AF-2 and AF-3 values also support the notion that undersampling does not alter or bias ADC or Lm values and can be considered for participant studies.
It is important to note that, for the never-smoker subgroup, LmD estimates were smaller (140 µm vs. 160 µm) than previous estimates [49] for four healthy volunteers at 1.5 T (same Δ = 5 ms and b-values). The difference may be due to the smaller D 0 Xe used here and previously described [37] (0.12 cm2/s vs. 0.14 cm2/s [49]), and this further demonstrates the need for a time- and gas-independent airspace morphometry estimate, such as Lm. The correlation between DLCO and ADC values has previously been studied by Kirby et al. [51], but such a correlation has not yet been reported for Lm values.
The empirical equation (Equation (6)) was developed based on Equation (5), which, in turn, was previously validated in COPD participants with a wide range of emphysema severity [20]. For the single AATD participant evaluated here using both 3He and 129Xe, mean 3He MRI Lm estimates [20], based on Equation (5), and mean 129Xe MRI Lm estimates, based on Equation (6), were similar (700 ± 180 µm vs. 690 ± 210 µm, for 3He and 129Xe, respectively); the approximate 1–2% difference in 3He- and 129Xe-derived Lm values likely reflected potential differences in slice location and in-plane resolution. At the same time, for the AATD participant, there was a 25% difference between Lm D He and Lm D Xe estimates (290 ± 50 µm vs. 220 ± 40 µm, for 3He and 129Xe, respectively), likely due to the Δ/D0 dependence of the mean airway length scale [49]. Unfortunately, there are no published 129Xe Lm values for comparison in participants with similar age or with the image matrix size used here. Previous 129Xe Lm estimates for young healthy volunteers were smaller [52] than the values reported here (200 µm vs. 280 µm), which is consistent with the fact that the participants evaluated here were significantly older than in the previous study. 129Xe Lm values for never-smokers and COPD participants were not significantly different from the SEM-based Lm values estimated using 3He MRI previously reported [20]; this suggests that Equation (6) may be considered for 129Xe MRI SEM morphometry estimates, although the relationship between Lm and LmD still needs to be confirmed in a larger study.
We acknowledge a number of study limitations, including the retrospective nature of this work and the small sample size: although this sample size would not be sufficient for clinical diagnostics conclusions, it should be sufficient for this methodology development and confirmation study. Generally, acceleration factors are guided by image matrix size, the number of b-values, and breath hold duration. For example, the in-plane resolution of multi-b diffusion-weighted 129Xe k-space used for the AATD participant (64 × 64) could be matched with multi-b diffusion-weighted 3He k-space (128 × 128) used for the same participant by using AF = 2 or half-echo partial Fourier reconstruction. Compressed sensing with at least AF = 3 can be considered to increase the in-plane resolution and number of b values. Moreover, acceleration with AF = 2 is not complicated to implement on FGRE acquisitions [53], and image reconstruction is also relatively straightforward. In contrast, the compressed sensing acquisition scheme we utilized cannot be implemented with FGRE methods and likely requires non-Cartesian [54] or pseudo non-Cartesian [55] sampling methods, which are more complex, requiring application of k-space regridding/interpolation and density-weighting algorithms. Recently, an ingenious compressed sensing approach [31] was pioneered that combined undersampling in both spatial and diffusion-sensitising directions using 3He MRI with an acceleration factor of 7. It is this type of novel approach that will help translate MRI morphometry methods to clinical use.
In summary, in elderly volunteers and participants with emphysema, we evaluated two different acceleration techniques with diffusion-weighted 129Xe MRI. All sampling methods generated ADC and stretched-exponential model lung LmD and Lm values that were strongly related and not significantly different. The results of this retrospective feasibility analysis provide support for the notion that undersampled single-breath diffusion-weighted 129Xe MRI may be considered for studies of emphysema in participants.
The clinically-conducted ADC and Lm measurements should allow for accurate regional probing of the alveolus sizes and surface-to-volume estimates for a wide range of age groups: this information could then be used for the treatment decision and therapy outcome assessments.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/diagnostics13081477/s1, Table S1: Participant listing of imaging measurements and estimates.

Author Contributions

Data curation, A.O.; Formal analysis, S.P. and A.O.; Funding acquisition, G.P.; Supervision, A.O.; Validation, D.G.M.; Writing—original draft preparation, S.P.; Writing—review and editing, S.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Natural Sciences and Engineering Research Council (NSERC) of Canada grant number R5942A04.

Institutional Review Board Statement

This study was conducted in accordance with the Health Insurance Portability and Accountability Act (HIPAA, USA), and approved by the University of Western Ontario Health Sciences Research Ethics Board (approval ID 18130 and 18131).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study. Written informed consent has been obtained from the patients to publish this paper.

Data Availability Statement

Data are not available due to the ethical restrictions.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Undersampled k-space masks mimicking accelerated acquisition methods (A) Partial Fourier Reconstruction: 50% undersampled k-space in the phase-encoding direction, or AF = 2. (B) Compressed Sensing: 66% undersampled k-space, or AF = 3.
Figure 1. Undersampled k-space masks mimicking accelerated acquisition methods (A) Partial Fourier Reconstruction: 50% undersampled k-space in the phase-encoding direction, or AF = 2. (B) Compressed Sensing: 66% undersampled k-space, or AF = 3.
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Figure 2. Representative 129Xe ADC and Lm map for elderly never-smoker, COPD participant and AATD participant. Never-smoker-4 is a 71-year-old female with FEV1 = 105%pred, DLCO = 94%pred, RA950 = 0.1%, and VDP= 4%. COPD-2 is a 69-year-old male COPD ex-smoker with FEV1 = 59%pred, DLCO = 43, RA950 = 12%, and VDP = 15%. COPD-5 is a 66-year-old male AATD never-smoker with FEV1 = 58%pred, DLCO = 50%pred, RA950 = 19%, and VDP = 27%. AF = acceleration factor; ADC = MRI apparent-diffusion-coefficient.
Figure 2. Representative 129Xe ADC and Lm map for elderly never-smoker, COPD participant and AATD participant. Never-smoker-4 is a 71-year-old female with FEV1 = 105%pred, DLCO = 94%pred, RA950 = 0.1%, and VDP= 4%. COPD-2 is a 69-year-old male COPD ex-smoker with FEV1 = 59%pred, DLCO = 43, RA950 = 12%, and VDP = 15%. COPD-5 is a 66-year-old male AATD never-smoker with FEV1 = 58%pred, DLCO = 50%pred, RA950 = 19%, and VDP = 27%. AF = acceleration factor; ADC = MRI apparent-diffusion-coefficient.
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Figure 3. Relationships between ADC and Lm with acceleration factor. (A) ADC; AF-1 was significantly correlated with AF-2 (r2 = 0.82, ρ = 0.90, p < 0.0001, y = 0.88x + 0.008) black dots, and AF-1 was significantly correlated with ADC A-F3 (r2 = 0.86, ρ = 0.92, p < 0.0001, y = 0.87x + 0.008) grey dots. (B) Bland-Altman analysis of agreement for ADC AF-1 with AF-2 (bias = −0.0002 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s) black dots and Bland-Altman analysis of agreement for ADC AF-1 with AF-3 (bias = −0.0007 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s) grey dots. (C) ADC differences for AF-1 with AF-2 (black) and AF-3 (gray) for each participant. (D) Lm; AF-1 was significantly correlated with AF-2 (r2 = 0.64, ρ = 0.75, p < 0.0001, y = 0.79x + 101) black dots. AF-1 was significantly correlated with AF-3 (r2 = 0.66, ρ = 0.76, p < 0.0001, y = 0.77x + 78) grey dots. (E) Bland-Altman analysis of agreement for Lm AF-1 with AF-2 (bias = 8 ± 146 μm, lower limit = −278 μm, upper limit = 293 μm) in black. Bland-Altman analysis of agreement for Lm AF-1 with AF-3 (bias = −24 ± 141 μm, lower limit = −300 μm, upper limit = 252 μm) in grey. (F) Lm differences for AF-1 and AF-2 (black) and AF-3 (gray) for each participant. Dotted lines indicate the 95% confidence intervals.
Figure 3. Relationships between ADC and Lm with acceleration factor. (A) ADC; AF-1 was significantly correlated with AF-2 (r2 = 0.82, ρ = 0.90, p < 0.0001, y = 0.88x + 0.008) black dots, and AF-1 was significantly correlated with ADC A-F3 (r2 = 0.86, ρ = 0.92, p < 0.0001, y = 0.87x + 0.008) grey dots. (B) Bland-Altman analysis of agreement for ADC AF-1 with AF-2 (bias = −0.0002 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s) black dots and Bland-Altman analysis of agreement for ADC AF-1 with AF-3 (bias = −0.0007 ± 0.01 cm2/s, lower limit = −0.02 cm2/s, upper limit = 0.02 cm2/s) grey dots. (C) ADC differences for AF-1 with AF-2 (black) and AF-3 (gray) for each participant. (D) Lm; AF-1 was significantly correlated with AF-2 (r2 = 0.64, ρ = 0.75, p < 0.0001, y = 0.79x + 101) black dots. AF-1 was significantly correlated with AF-3 (r2 = 0.66, ρ = 0.76, p < 0.0001, y = 0.77x + 78) grey dots. (E) Bland-Altman analysis of agreement for Lm AF-1 with AF-2 (bias = 8 ± 146 μm, lower limit = −278 μm, upper limit = 293 μm) in black. Bland-Altman analysis of agreement for Lm AF-1 with AF-3 (bias = −24 ± 141 μm, lower limit = −300 μm, upper limit = 252 μm) in grey. (F) Lm differences for AF-1 and AF-2 (black) and AF-3 (gray) for each participant. Dotted lines indicate the 95% confidence intervals.
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Table 1. Participant demographic and imaging measurements.
Table 1. Participant demographic and imaging measurements.
Parameter
(Mean ± SD)
Never-Smokers
(n = 4)
COPD
(n = 5)
Significant Difference
p
Male Sex n (%)2 (50)4 (80)-
Age years66 (13)72 (5)0.8
FVC%pred102 (8)100 (21)0.9
FEV1%pred103 (6)58 (30)0.1
FEV1/FVC%76 (2)42 (14)0.02
RV%pred102 (9)160 (57)0.3
TLC%pred102 (8)123 (8)0.04
RV/TLC%pred39 (9)48 (14)0.9
DLCO%pred104 (12)39 (13)0.0009
VDP%4 (0.3)28 (14)0.2
RA950%-19 (9)-
COPD = ex-smoker with COPD; FEV1 = forced-expiratory-volume-1-sec; %pred = percent-predicted; FVC = forced-vital-capacity; RV = residual-volume; TLC = total-lung-capacity; DLCO = diffusing capacity of the lung for carbon monoxide; VDP = ventilation defect percent; RA950 = relative area of the CT density histogram ≤−950 Hounsfield units; the significant difference was performed using an unpaired t-test with post hoc Holm-Bonferroni correction.
Table 2. Imaging measurements and morphometry estimates.
Table 2. Imaging measurements and morphometry estimates.
Fully-SampledAF = 2AF = 3Fully-Sampled—AF = 2Fully-Sampled—AF = 3p-Value *
Never-Smokers (n = 4)
ADC cm2/s0.05 (0.01)0.05 (0.01)0.05 (0.01)7%7%>0.99
LmD µm140 (30)130 (30)140 (30)6%5%0.94
Lm µm280 (130)300 (130)300 (130)10%7%0.59
COPD (n = 5)
ADC cm2/s0.08 (0.02)0.08 (0.02)0.08 (0.02)3%4%0.99
LmD µm190 (50)190 (50)190 (50)5%5%0.97
Lm µm560 (250)570 (260)580 (260)11%10%0.95
AATD (n = 1)
ADC cm2/s0.08 (0.01)0.08 (0.01)0.08 (0.01)7%8%-
LmD µm220 (40)230 (30)230 (30)6%5%-
Lm µm690 (210)730 (180)730 (180)13%12%-
p-value ADC **<0.0001<0.0001<0.0001
p-value LmD **0.0030.0450.02---
p-value Lm **0.0020.0090.005---
* ANOVA between fully-sampled, AF = 2 and AF = 3; ** Independent t-test for three different k-space sampling methods (never-smokers vs. COPD). COPD = ex-smoker with COPD; AF = acceleration factor; LmD = MRI mean airway length scale estimate; Lm = MRI mean linear intercept estimate. Note that the AATD participant is also included in the COPD subgroup and values.
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Perron, S.; McCormack, D.G.; Parraga, G.; Ouriadov, A. Undersampled Diffusion-Weighted 129Xe MRI Morphometry of Airspace Enlargement: Feasibility in Chronic Obstructive Pulmonary Disease. Diagnostics 2023, 13, 1477. https://doi.org/10.3390/diagnostics13081477

AMA Style

Perron S, McCormack DG, Parraga G, Ouriadov A. Undersampled Diffusion-Weighted 129Xe MRI Morphometry of Airspace Enlargement: Feasibility in Chronic Obstructive Pulmonary Disease. Diagnostics. 2023; 13(8):1477. https://doi.org/10.3390/diagnostics13081477

Chicago/Turabian Style

Perron, Samuel, David G. McCormack, Grace Parraga, and Alexei Ouriadov. 2023. "Undersampled Diffusion-Weighted 129Xe MRI Morphometry of Airspace Enlargement: Feasibility in Chronic Obstructive Pulmonary Disease" Diagnostics 13, no. 8: 1477. https://doi.org/10.3390/diagnostics13081477

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