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1.IntroductionThe development of protective ventilation strategies to improve mechanical ventilation of patients in intensive care is of great importance. In particular, the ventilation of acute respiratory distress syndrome (ARDs) patients has to be improved to decrease the mortality of patients with lung injuries. Furthermore, artificial ventilation has to be optimized to prevent worsening of pre-existing lung injuries.1, 2, 3 However, approaches to improve artificial ventilation are hampered by our lack of understanding of their effects on the actual units of gas exchange, i.e., the alveoli. One approach to circumvent this limitation is the development of numerical models of the lung on an alveolar scale.4 With the help of such models, alveolar dynamics can be simulated and different protective ventilation strategies can be characterized concerning the mechanical stress exerted on the alveolar structures. The basis for such models is detailed knowledge of the alveolar behavior in an in vivo situation, especially information about alveolar volume change during the breathing cycle. However, adequate in vivo 3-D information about the parenchymal dynamics at the level of individual alveoli is not available in the current literature. The most established modality to image in vivo lung tissue at the alveolar level is intravital microcopy (IVM), which allows 2-D, high resolution, and real-time imaging of the subpleural lung surface. Yet IVM does not provide 3-D information on alveolar dynamics during ventilation.5 Additionally, there are focusing problems during the ventilation cycle for this technique, requiring the positioning of cover glasses on the lung surface for stabilization, which in turn may influence the dynamic behavior of the imaged alveoli beneath. 3-D imaging techniques like computed tomography or magnetic resonance tomography, on the other hand, do not provide a sufficient spatial resolution to image alveoli in vivo.6, 7 To investigate the alveolar behavior during ventilation in vivo, an imaging technique is hence required that provides high resolution, allows for 3-D imaging without influencing the alveolar mechanics, yields high acquisition rates to perform real-time imaging, and can be applied in vivo. Optical coherence tomography (OCT)8 is an optical imaging technique allowing contactless 3-D imaging of strongly scattering samples like biological tissue. With a spatial resolution of less than and measurement ranges of up to , OCT is suitable to image subpleural alveoli that have diameters of approximately .9 2.Methods and Materials2.1.Animal ModelAll experiments were performed in accordance with the Guide for the Care and Use of Laboratory Animals (Institute of Laboratory Animal Resources, 7th edition, 1996). The study was approved by the animal care and use committee of the local government authorities. In anesthetized mice , a thorax window was surgically prepared as described in detail by Tabuchi, Pries, and Kuebler.10 The window was closed by a transparent membrane, and negative intrapleural pressure was reconstituted via a transdiaphragmal catheter. The prepared window is suitable to perform in vivo imaging of subpleural alveoli by 3-D optical coherence tomography (OCT). The mice were mechanically ventilated with room air at a frequency of 100 breaths per minute, an inspiratory plateau pressure of , and a positive end expiratory pressure of . Arterial blood pressure was continuously measured as a vital parameter by an intra-arterial catheter in the carotis artery. Lung injury was induced by endotracheal application of hydrochloric acid ( ; body weight). 2.2.Image AcquisitionA swept source OCT system with an axial and lateral resolution of in air was used. The used light source is centered at and provides a -wide spectrum [full-width at half maximum (FWHM)], an optical power of approximately , and a tuning rate of . In vivo 3-D OCT imaging of murine subpleural alveoli gated to the inspiratory and expiratory plateau phases in healthy as well as injured mouse lungs has previously been reported by us.11 Due to the improvement of the data acquisition speed of the OCT technique, it is now no longer necessary to gate the OCT imaging to the plateau phases. The line rate of the used OCT system facilitates the acquisition of 3-D OCT image stacks in the inspiratory phase. The data acquisition is triggered to the pulmonary airway pressure measured on-line by the ventilator. To acquire 3-D image stacks at different pressure levels during the inspiratory phase, the acquisition of the image stack was divided into the acquisition of single B-scans. In every respiratory cycle, one B-scan was acquired at a defined airway pressure. The single B-scans were assembled off-line to one 3-D OCT image stack for each pressure level during the inspiratory phase. 3-D OCT image stacks were obtained at airway pressures of , and to document the dynamic changes of subpleural alveolar structures during the inspiratory phase by time-resolved 3-D OCT datasets. We call this images stack “virtual 4-D” because we acquire 3-D images of the lung parenchyma with temporal resolution during the inspiratory phase. The acquired datasets have a dimension of , which corresponds to a volume of . The identical area was imaged again after instillation of hydrochloric acid to assess the changes of alveolar dynamics in the acutely injured lung. 2.3.Image AnalysisEn-face OCT images were taken from the 3-D OCT datasets to quantify the alveolar area change during the inspiration phase. The procedure of extracting the OCT en-face images is described in detail in Meissner 12, 13 The extracted 2-D images display the subpleural alveolar tissue at a depth of approximately beneath and parallel to the pleura. In these images, all alveolar areas not touching the image border were quantified and normalized to the respective area measured at an airway pressure of .12, 13 3.ResultsEvaluation of the acquired image stack demonstrates that virtual 4-D, airway pressure-gated imaging of subpleural lung tissue in vivo is in principle feasible by OCT. Figure 1 presents an exemplarily volume rendering taken from an injured lung at an airway pressure of . The lung tissue is bordered by the visceral pleura (part b), which can be seen on the upper side of the tissue block. Furthermore, single alveoli (part a) are recognizable beneath the pleura. The dashed line represents the plane that was used to extract the OCT en-face images for analysis at a depth of approximately beneath the pleura. The picture series shown in Fig. 2 displays the OCT en-face images taken from the 3-D datasets. In the upper two rows are images of healthy lung tissue, and in the lower rows are images of injured lung tissue from the same animal. The image sequences show alveolar changes with increasing airway pressures during the inspiratory phase. Black structures in the en-face images represent the air-filled alveoli, and white structures are the alveolar walls. Identical structures can be observed in all images, demonstrated by the landmark in the OCT en-face images. However, in the image taken at airway pressure in the healthy lung, it was impossible to identify this structure. Furthermore, the margin between two lung lobes is recognizable and denoted by the black arrow. The main difference between the image sequences obtained in healthy and injured lungs is the reduced movement of the injured lung during the inspiratory phase, as demonstrated by the lack of dislocation of the lobe margin. This notion is supported by the quantitative analysis of alveolar distension in healthy and injured lungs. Figure 3 shows the alveolar area change during the increase of airway pressure from in the inspiratory phase. Alveolar area was normalized to the area measured at . The black line presents the area change in an exemplarily healthy lung, the dashed line in an injured lung. Both graphs show an increase in alveolar area with increasing airway pressure during the inspiratory phase. In healthy lungs, the major part of expansion occurs between 2 and airway pressure, whereas the larger part of expansion in injured lungs happens at airway pressures higher than . Compared to alveolar size at , the increase of airway pressure to increased alveolar area in healthy lungs by 12%, while alveoli only expanded by 8% in injured lungs. Both the right shift of the area-pressure curve and the overall reduced alveolar expansion reflect the reduced alveolar compliance and the increased stiffness of the injured lung. 4.DiscussionIn this study, we demonstrate the feasibility of in vivo virtual 4-D imaging of subpleural alveolar structures by optical coherence tomography in healthy and injured lungs of ventilated mice. This new method allows for imaging of alveoli during the dynamic respiratory cycle without applying constant positive airway pressure (CPAP)12 or gating to the inspiratory or expiratory plateau phases.11 During the entire data acquisition process, the mouse is regularly ventilated, warranting that the recorded data realistically reflect the physiological situation in the dynamically ventilated lung. Off-line assembly of the single B-scans acquired in sequent respiratory cycles at different pressure levels allows for virtual 4-D imaging of the lung parenchyma. We termed the acquired image stacks virtual 4-D, since the reconstructed 3-D image stacks at different airway pressures in fact represent the tissue at the identical phase of the ventilation cycle, because the acquisition of each stack was carried out over a series of successive breathing cycles. The observed expansion of the alveolar area in healthy lungs and the reduced alveolar compliance in lung injury corresponds to our previously reported data from OCT and IVM imaging in vivo 11 and in isolated lungs.9 Our results are thus in accordance with the notion of decreased alveolar expansion in lung injury due to stiffening of the lung parenchyma.12 However, the alveolar expansion measured in this study is smaller than comparable data on alveolar expansion published previously.11, 12 This quantitative discrepancy is likely attributable in part to different experimental conditions. In our study, fast data acquisition during the regular inspiratory phase allowed us to refrain from the application of CPAPs over a longer period of time, like in studies with isolated lungs. Taken together, the presented imaging technique allows to our knowledge the first virtual 4-D imaging of subpleural alveoli in vivo. The method can be further improved by using faster and higher spatially resolving OCT setups to obtain more detailed knowledge about the alveolar dynamics during the ventilation cycle.14, 15 A faster OCT system will also allow minimizing motion artifacts, while high resolution setups can reduce the apparent underestimation of the alveolar area by the OCT technique.12 AcknowledgmentsThis project was supported by the German Research Foundation (DFG) “Protective Artificial Respiration” (PAR)—KO 1814/6-1 and KU 1218/4-1. ReferencesJ. A. Frank and M. A. Matthay,
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