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Blood flow in the retina can be noninvasively imaged using Doppler optical coherent tomography,1 scanning laser-Doppler flowmetry,2–4 laser speckle contrast imaging (LSCI),5 and magnetic resonance imaging (MRI),6–8 among others. LSCI, in particular, offers a cost-effective means to measure instantaneous blood flow with high-spatiotemporal resolution.9,10 The majority of LSCI retinal applications are in humans,11,12 with few rodent applications,13,14 despite this, rodents are widely used for models of retinal diseases. This is in part due to the difficulties in dealing with the refractive properties of the curved cornea and the poor quality of the rodent lens, which results in challenges in delivering and receiving light to generate good images of the retina. A common approach to overcome some of these problems is to use a contact lens to be placed over the cornea.13–15 While this approach helps to reduce refractive error, delivering coherent light to the eye remains challenging in that it requires a difficult and time-consuming alignment of the camera to find the correct angle.14,15 We implemented a solution to overcome these problems by using an endoscope to obtain images and to deliver light.16,17 The optics of the endoscope help to correct the refraction of the cornea without the need for a contact lens. Additionally, the fiber-optic guide built into the endoscope is in a ring structure around the edge of the endoscope, which is very efficient in delivering uniform light to the retina without obstructing the reflected light. This same fiber-optic guide could be used to deliver laser light for generating a speckle pattern, while a camera can easily be placed on the end of the endoscope. There is also no need to align optics for the camera sensor, as the endoscope connects directly to it. We demonstrated the utility of this approach by imaging blood flow changes in the rat retina using hyperoxia, hypercapnia, and visual (flicker) stimulations. A schematic of the imaging instrument is shown in Fig. 1(a). The animal was secured in a stereotaxis to eliminate motion, and mineral oil was placed on the surface of the cornea to prevent dryness. The endoscope (5-mm diameter, 11.5-cm length, Karl Storz 67260AA, Tuttlingen, Germany), depicted from different angles in Figs. 1(c) and 1(d), was then placed directly in contact with the mineral oil, carefully avoid pressuring the corneal surface. A laser diode (785 nm, Thorlabs, Newton, New Jersey) connected to the fiber-optic input was used to deliver light through the endoscope onto the eye using a ring-shaped illumination pattern. We would not expect the light to affect the optical properties or the physiology of the eye. The scattered laser light was captured by the CMOS camera (Basler 602f, , Basler, Ahrensburg, Germany) connected to the endoscope using a custom lens adapter (SN# OY620143-A). For green-light reflectance images, the laser diode was replaced with a green LED and delivered using a fiber-optic guide. Images from the camera were collected at a rate of 70 frames per second and an exposure time of 5 ms using custom written software. During functional activation, a slightly altered setup was used, as shown in Fig. 1(b). The 530-nm light from a green LED was combined with the laser diode output using a dual-branch light guide (Edmund Optics, Barrington, New Jersey). Figure 1(e) shows a photograph of the system in use. All animal experiments were approved by the Institutional Animal Care and Use Committee and in accordance with the Association for Research in Vision and Ophthalmology Statement for the Use of Animals in Ophthalmic and Visual Research. Adult male Sprague-Dawley rats (, ) were anesthetized with 1% isoflurane, paralyzed with pancuronium bromide to prevent eye motion,18 and mechanically ventilated. End-tidal , heart rate, and oxygen saturation were monitored continuously and maintained within normal physiological ranges. Gas challenges were used to induce blood-flow changes in the eye. Inhalation gas was switched to either hyperoxia (100% ) or hypercapnia (7.5% in air) for 5 min, and then back to breath normal air. For functional activation studies, a green LED (530 nm, Thorlabs) was used as a stimulus source and modulated at a rate of 10 Hz for 10 s. The image of scattered laser light from the tissue surface, often referred to as a raw speckle image, is generated from a random static interference pattern that results from coherent light reflecting off of a rough surface. If an object consists of moving particles, as in the case with red blood cells in tissue, then the speckle pattern will fluctuate at a frequency due to the Doppler shift created by the moving particle. While other factors can affect this, these fluctuations are mainly caused by the changes in blood flow. The speckle contrast image () is defined as the ratio of the standard deviation () to the mean intensity () in a small region of the raw speckle image. Each raw speckle image was converted to a speckle contrast map in real time using optimized algorithms,19 and each set of 10 speckle contrast images was averaged together to reduce the image-to-image variations to less than 1%. This averaged speckle contrast image was then converted to an image of relative correlation times using Eq. (1): where is the exposure time of the camera and is the autocorrelation time, which was estimated from the speckle contrast value. These correlation times were then used to calculate relative blood-flow changes, as the two are inversely proportional.Green-light reflectance images were initially used to confirm the retinal vessel locations. The green-light reflectance image [Fig. 2(a)] showed the larger retinal vessels branching from the optic nerve head as well as a smaller meshwork of choroidal vasculature throughout the eye. Compared with the reflectance images, the LSCI images [Fig. 2(b)] showed better contrast of the retinal and choroidal vessels as well as relatively higher flow in the posterior ciliary artery. During the gas challenge, ocular blood flow increased from 11% to 31% during hypercapnia [Fig. 2(c)] and decreased from 23% to 40% during hyperoxia [Fig. 2(d)]. These changes are particularly apparent in the retinal vessels. There are also blood-flow changes in the “background,” due to the dense vascular meshwork of the choroidal vessels. These results are consistent with blood-flow changes reported by using laser Doppler flowmetry20 and MRI.21 LSCI was then used to investigate visual stimulation in the rat retina. Time-course data from several regions of interest showed increased blood flow during visual stimulation (Fig. 3). While blood flow from a given region would have signaled contributions from both the retina and the choroid, selecting regions with large identifiable retinal vessels were likely heavily weighted toward retinal blood flow. The maximum blood-flow response was 10% and 15% depending on the region of interest, and the time to reach 50% of the peak blood-flow response from stimulus onset was 3.2 s in the retinal vessels, consistent with those reported previously in rats (2.25 s)13 and humans (3.4 s).22 Given that it is difficult to compare relative blood-flow changes across animals, the time-to-peak measurements may offer advantages in the study of retinal diseases. While it is possible to measure hemodynamic responses by reflectance imaging, the commonly used visible light for neurological studies interferes with retinal measurement, because it stimulates the retina.23 Moreover, the reflectance changes (which have complex signal sources) are difficult to interpret with respect to physiological parameters. By contrast, an advantage of LSCI is that it uses infrared light, which should not visually stimulate the retina,22 and provides a single physiological parameter (ca. blood flow). In conclusion, this study demonstrated the feasibility of performing LSCI via an endoscope to generate images of blood flow in the rat retina. Because rodents are common animal models for human retinal diseases, this approach may prove useful to investigate retinal disease pathophysiology and novel treatment strategies in rodent models. Future studies will focus on integrating interleaving LSCI and oximetric acquisition, applying this approach to study retinal diseases, and evaluating novel treatments. AcknowledgmentsThis work was supported in part by the Department of Veterans Affairs (VA MERIT Award) and NIH (R01 EY018855 and R01 EY014211). ReferencesO. Tanet al.,
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