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J Physiol 591.10 (2013) pp 2379–2380 2379 The Journal of Physiology Neuroscience JOURNAL CLUB Be still my beating brain – reduction of brain micromotion during in vivo two-photon imaging Catharine G. Clark 1 , Galen J. Marchetti 1 and Colin N. Young 2 1 Department of Biomedical Engineering, College of Engineering, Cornell University, Ithaca, NY, USA 2 Department of Biomedical Sciences, College of Veterinary Medicine, Cornell University, Ithaca, NY, USA Email: [email protected] In light of the incredible complexity of the brain, the study of neural physiology in health and disease pre- sents many challenges. However, with the advancement of powerful imaging tools, such as two-photon excitation fluorescence microscopy (2PEFM), we now have the opportunity to glimpse into the inner workings of the brain with high spatial and temporal resolution (Denk et al. 1990). This advanced imaging technique allows for examination of dynamic interactions and activity of cellular sub-types (e.g. microglia, astrocytes, neurons) and the surrounding brain microvasculature (Helmchen & Denk, 2005). While the advantages are many, a major challenge in capturing undistorted high-resolution images is the inherent rapid micromotion caused by respiration and heartbeat. In a recent issue of The Journal of Physiology , Paukert & Bergles (2012) present a novel methodology to overcome this confounding movement and enhance the 2PEFM imaging resolution of cellular structures. Previous attempts to correct for brain micromotion, due to vital physiological functions, have included complex and invasive techniques such as muscle paralysis, cardiopulmonary bypass, and animal intubation. While these approaches may reduce micromotion they have profound effects on normal physiological function – ultimately confounding the very purpose of functional studies. In addition to physical attempts to improve specimen stability, post-imaging analysis is frequently incorporated, involving complex image manipulation. For example, many studies fit images to a Hidden Markov Model, a common statistical tool used in a variety of biomedical imaging contexts to extract data from noisy images (Dombeck et al. 2007; Chen et al. 2010). Statistical analyses such as these are highly useful, although they frequently require mathematical assumptions and don’t reach the authenticity of pure image data. Moreover, not all motion artifacts can be corrected with existing statistical models, as micromotion displacements that occur during the acquisition of individual frames (such as those caused by heartbeats) are difficult to correct post hoc . More recently, Laffray et al. (2011) developed an approach to eradicate micromotion by using an optical stabilization sensor to dynamically refocus the objective onto the plane of inter- est, while monitoring the position of the animal. Although this may improve image stability, the device is costly and has yet to be implemented in commercial systems. As such, Paukert & Bergles (2012) sought to design and develop a cost-effective imaging approach to reduce in-frame variability, improve overall resolution and increase image stability. Transgenic anaesthetized mice were used to image the cellular architecture of neuro- nal processes in cortical regions. 2PEFM imaging of dendrites was first performed by rapidly scanning one focal plane, as traditionally done. The authors found that motion artifacts were still present even when commonly used post hoc image registration was performed. Such artifacts led to movements of entire dendritic spines up to 1.5 μm, or shifts of 10% of the entire field of view, which produces profound limitations when imaging finer details of neural dendrites (Chen et al. 2011). Interestingly, comparing images that were acquired at the same time in the cardiac cycle significantly reduced the image distortions. These findings suggest that the beating of the heart is the major contributor to image distortion. In order to control for brain micro- motion caused by the beating of the heart, acquisition of individual frame scans were synchronized to the cardiac cycle. Specifically, each scan was triggered when an electrocardiogram (ECG) signal exceeded a set voltage, which occurred only during the R-wave of the cardiac cycle. Using this approach, the authors demonstrate that the dissimilarity between consecutively taken images was significantly reduced by R-wave-triggered scanning, compared to traditional non-discriminant scanning. This technique was also beneficial in reducing image distortion when consecutive sub-frames (1/10 of a full frame due to heartbeat triggered scanning) were interlaced and image stacks were constructed from multiple focal planes. Removing frames that were acquired during respiratory movement did not further improve image quality, supporting the claim that micro-displacements of dendritic spines are primarily due to the beating heart. Collectively, the findings of Paukert & Bergles (2012) demonstrate that syncing 2PEFM acquisition with cardiac activity improves image stability and spatial resolution. In addition to demonstrating that the majority of in-frame neural tissue movements are due to heartbeat-induced distortions, this methodological approach may help facilitate the use of 2PEFM in a number of major areas. First, the novelty of this approach is that reliance on probabilistic assumptions is reduced, increasing the objectivity of highly sensitive data. Paukert and Bergles demonstrate that the image stability of small neural structures (dendritic spines) can be enhanced through the use of cardiac-triggered 2PEFM acquisition. In this regard, 2PEFM offers the ability to track morphological changes of individual dendritic spines over time periods of minutes to months (Hofer et al. 2008). Coupling ECG-based scanning and enhanced imaging stability, with studies of the synaptic structural plasticity, may greatly enhance our understanding of the workings of neuronal processes. Indeed, alterations in the reorganization and dynamic turnover of synapses has been linked to the development of the nervous system, to processing of experiences (e.g. learning) and neuro- degenerative conditions, such as memory loss (Pan & Gan, 2008). Furthermore, 2PEFM absorption technology allows for micrometre scale disruption of biological processes, permitting the removal of sub-micrometre structures. However, ablation and photolysis rely on focusing the laser beam to a fixed point in space and are therefore highly sensitive to tissue movements. Cardiac-triggered C 2013 The Authors. The Journal of Physiology C 2013 The Physiological Society DOI: 10.1113/jphysiol.2013.253138

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Page 1: Be still my beating brain - reduction of brain micromotion during               in vivo               two-photon imaging

J Physiol 591.10 (2013) pp 2379–2380 2379

The

Jou

rnal

of

Phys

iolo

gy

Neuroscience

J O U R N A L C L U B

Be still my beating brain –reduction of brain micromotionduring in vivo two-photonimaging

Catharine G. Clark1, Galen J. Marchetti1

and Colin N. Young2

1Department of Biomedical Engineering,College of Engineering, Cornell University,Ithaca, NY, USA2Department of Biomedical Sciences,College of Veterinary Medicine, CornellUniversity, Ithaca, NY, USA

Email: [email protected]

In light of the incredible complexityof the brain, the study of neuralphysiology in health and disease pre-sents many challenges. However, with theadvancement of powerful imaging tools,such as two-photon excitation fluorescencemicroscopy (2PEFM), we now have theopportunity to glimpse into the innerworkings of the brain with high spatialand temporal resolution (Denk et al. 1990).This advanced imaging technique allows forexamination of dynamic interactions andactivity of cellular sub-types (e.g. microglia,astrocytes, neurons) and the surroundingbrain microvasculature (Helmchen & Denk,2005). While the advantages are many, amajor challenge in capturing undistortedhigh-resolution images is the inherent rapidmicromotion caused by respiration andheartbeat. In a recent issue of The Journalof Physiology, Paukert & Bergles (2012)present a novel methodology to overcomethis confounding movement and enhancethe 2PEFM imaging resolution of cellularstructures.

Previous attempts to correct for brainmicromotion, due to vital physiologicalfunctions, have included complex andinvasive techniques such as muscle paralysis,cardiopulmonary bypass, and animalintubation. While these approaches mayreduce micromotion they have profoundeffects on normal physiological function –ultimately confounding the very purposeof functional studies. In addition tophysical attempts to improve specimenstability, post-imaging analysis is frequentlyincorporated, involving complex imagemanipulation. For example, many studiesfit images to a Hidden Markov Model,

a common statistical tool used in avariety of biomedical imaging contextsto extract data from noisy images(Dombeck et al. 2007; Chen et al. 2010).Statistical analyses such as these are highlyuseful, although they frequently requiremathematical assumptions and don’t reachthe authenticity of pure image data.Moreover, not all motion artifacts can becorrected with existing statistical models,as micromotion displacements that occurduring the acquisition of individual frames(such as those caused by heartbeats) aredifficult to correct post hoc. More recently,Laffray et al. (2011) developed an approachto eradicate micromotion by using anoptical stabilization sensor to dynamicallyrefocus the objective onto the plane of inter-est, while monitoring the position of theanimal. Although this may improve imagestability, the device is costly and has yet tobe implemented in commercial systems. Assuch, Paukert & Bergles (2012) sought todesign and develop a cost-effective imagingapproach to reduce in-frame variability,improve overall resolution and increaseimage stability.

Transgenic anaesthetized mice were usedto image the cellular architecture of neuro-nal processes in cortical regions. 2PEFMimaging of dendrites was first performedby rapidly scanning one focal plane, astraditionally done. The authors found thatmotion artifacts were still present evenwhen commonly used post hoc imageregistration was performed. Such artifactsled to movements of entire dendritic spinesup to 1.5 μm, or shifts of ∼10% ofthe entire field of view, which producesprofound limitations when imaging finerdetails of neural dendrites (Chen et al. 2011).Interestingly, comparing images that wereacquired at the same time in the cardiac cyclesignificantly reduced the image distortions.These findings suggest that the beating ofthe heart is the major contributor to imagedistortion.

In order to control for brain micro-motion caused by the beating of theheart, acquisition of individual framescans were synchronized to the cardiaccycle. Specifically, each scan was triggeredwhen an electrocardiogram (ECG) signalexceeded a set voltage, which occurredonly during the R-wave of the cardiaccycle. Using this approach, the authors

demonstrate that the dissimilarity betweenconsecutively taken images was significantlyreduced by R-wave-triggered scanning,compared to traditional non-discriminantscanning. This technique was also beneficialin reducing image distortion whenconsecutive sub-frames (1/10 of a fullframe due to heartbeat triggered scanning)were interlaced and image stacks wereconstructed from multiple focal planes.Removing frames that were acquiredduring respiratory movement did notfurther improve image quality, supportingthe claim that micro-displacements ofdendritic spines are primarily due to thebeating heart. Collectively, the findings ofPaukert & Bergles (2012) demonstrate thatsyncing 2PEFM acquisition with cardiacactivity improves image stability and spatialresolution.

In addition to demonstrating thatthe majority of in-frame neural tissuemovements are due to heartbeat-induceddistortions, this methodological approachmay help facilitate the use of 2PEFMin a number of major areas. First, thenovelty of this approach is that relianceon probabilistic assumptions is reduced,increasing the objectivity of highly sensitivedata. Paukert and Bergles demonstrate thatthe image stability of small neural structures(dendritic spines) can be enhanced throughthe use of cardiac-triggered 2PEFMacquisition. In this regard, 2PEFM offersthe ability to track morphological changesof individual dendritic spines over timeperiods of minutes to months (Hofer et al.2008). Coupling ECG-based scanning andenhanced imaging stability, with studies ofthe synaptic structural plasticity, may greatlyenhance our understanding of the workingsof neuronal processes. Indeed, alterations inthe reorganization and dynamic turnover ofsynapses has been linked to the developmentof the nervous system, to processing ofexperiences (e.g. learning) and neuro-degenerative conditions, such as memoryloss (Pan & Gan, 2008). Furthermore,2PEFM absorption technology allows formicrometre scale disruption of biologicalprocesses, permitting the removal ofsub-micrometre structures. However,ablation and photolysis rely on focusingthe laser beam to a fixed point in spaceand are therefore highly sensitive totissue movements. Cardiac-triggered

C© 2013 The Authors. The Journal of Physiology C© 2013 The Physiological Society DOI: 10.1113/jphysiol.2013.253138

Page 2: Be still my beating brain - reduction of brain micromotion during               in vivo               two-photon imaging

2380 Journal Club J Physiol 591.10

ablation techniques, implementingPaukert and Bergles’ methodology,may facilitate and stabilize a widerange of ablation experiments, therebyenhancing our understanding of physio-logical/pathophysiological structures andprocesses.

Aside from enhancing image stability,the approaches employed by Paukert& Bergles (2012) may also aid studiesfocused on the functional aspects ofsingle neuronal synapses. For example,2PEFM photostimulation and uncaging ofneurotransmitters (e.g. glutamate), permitsthe stimulation of individual synapses.Moreover, studies designed to investigatenetwork activity rely on measuring calciumcurrents as a functional output. Whilethe majority of these studies have beenperformed in vitro due to image stabilityissues, advancements have been made invivo (e.g. Noguchi et al. 2011). Importantly,it is well known that anaesthesia hasa profound effect on neural activityand it is evident that the design ofstudies will have to evolve to includeconscious animals. In this regard, Dombecket al. (2007) demonstrated an awake2PEFM imaging preparation, which allowsfor investigation of neuronal structuresand calcium imaging under resting andrunning conditions. While considered asignificant advancement, a major hurdleregarding this particular animal preparationwill be overcoming mechanical movementartifacts. The authors themselves notedthat this preparation could work wellin conjunction with motion-correctingsoftware. In short, as optical techniques andin vivo preparations continue to advance,consideration of the beating of the hearton functional outcomes will need to beaddressed and as such, Paukert and Bergles’approach may prove to be beneficial.

While this methodology advances thepotential uses of 2PEFM, triggering imagingscans by cardiac activity inherently limitstemporal resolution. Paukert & Bergles(2012) worked with a high frame acquisitionrate of 6.2 Hz on mice with a heartrate around 8.7 Hz. As such, cardiactriggered image acquisition had to beinterrupted mid-scan. As mentioned bythe authors, faster scanning techniquesand interlacing subsequent scans to createan entire image frame may reduce thisissue, but information will still unavoidablybe lost during cardiac activity. While

this is likely not to be an issue formore stable structures (dendrites) or evendynamic cellular movements (microglia),it may be a concern when imaging fast,beat-to-beat physiological changes. Indeed,2PEFM has revealed pulsatile changes incortical blood flow, coinciding with thecardiac cycle (Santisakultarm et al. 2012).Therefore, 2PEFM examinations of cerebralmicrovascular flow and/or neural–vascularcoupling may not warrant the use ofheartbeat-focused image acquisition, ascrucial data may be lost.

Beyond the brain, continual technologicaladvancements of 2PEFM havedemonstrated the utility of this techniquefor in vivo imaging, from the spinal cordto pancreatic β cells (Dunn & Sutton,2008). While each examination presentsunique challenges, image stability remainsa confounding factor for all of them.The brain in fact contends with theleast amount of micromotion due tothe structural confinements of the skull,whereas other areas are mechanically drivenby respiratory and cardiac movements andare susceptible to image shifts of up to tensof micrometres. Indeed, 2PEFM studiesexamining mitochondrial function, physio-logical coupling and calcium currents incardiac myocytes have been performed inLangendorff-perfused heart preparationsto reduce the interference of physiologicalprocesses. Similarly, ex vivo preparationshave been used to study other organs,such as the lung (Dunn & Sutton, 2008).It is therefore clear that the ECG-basedacquisition of image frames, as outlinedby Paukert & Bergles (2012), may proveto be beneficial for future examinationsdeeper within and outside of cortical brainregions.

In summary, Paukert & Bergles (2012)have provided an effective methodologyto still the beating brain. The use ofthis technique, in conjunction with othermovement correction strategies, may havewide ranging applicability and aid in ourunderstanding of the complex physiologyof the brain and beyond in both health anddisease.

References

Chen S, Tran S, Sigler A & Murphy TH (2011).Automated and quantitative image analysis ofischemic dendritic blebbing using in vivo2-photon microscopy data. J NeurosciMethods 195, 222–231.

Chen T, Xue Z, Wang C, Qu Z, Wong KK &Wong STC (2010). Motion artifact correctionof multi-photon imaging of awake micemodels using speed embedded HMM. MedImage Comput Comput Assist Interv 13,473–480.

Denk W, Strickler JH & Webb WW (1990). Twophoton laser scanning fluorescencemicroscopy. Science 248, 73–76.

Dombeck DA, Khabbaz AN, Collman F,Adelman TL & Tank DW (2007). Imaginglarge-scale neural activity with cellularresolution in awake, mobile mice. Neuron 56,43–57.

Dunn KW & Sutton TA (2008). Functionalstudies in living animals using multiphotonmicroscopy. ILAR J 49, 66–77.

Helmchen F & Denk W (2005). Deep tissue twophoton microscopy. Nature Methods 2,932–940.

Hofer SB, Mrsic-Flogel TD, Bonhoeffer T &Hubener M (2008). Experience leaves a lastingstructural trace in cortical circuits. Nature467, 313–317.

Laffray S, Pages S, Dufour H, De Konink P, DeKonink Y & Cote D (2011). Adaptivemovement compensation for in vivo imagingof fast cellular dynamics within a movingtissue. PloS One 6, e19928.

Noguchi J, Nagaoka A, Watanabe S, Ellis-DaviesGC, Kitamura K, Kano M, Matsuzaki M &Kasai H (2011). In vivo two-photon uncagingof glutamate revealing the structure–functionrelationships of dendritic spines in theneocortex of adult mice. J Physiol 589,2447–2457.

Pan F & Gan WB (2008). Two-photon imagingof dendritic spine development in the mousecortex. Dev Neurobiol 68, 771–778.

Paukert M & Bergles DE (2012). Reduction ofmotion artifacts during in vivo two-photonimaging of brain through heartbeat triggeredscanning. J Physiol 590, 2955–2963.

Santisakultarm TP, Cornelius NR, Nishimura N,Schafer AI, Silver RT, Doerschuk PC, OlbrichtWL & Schaffer CB (2012). In vivo two-photonexcited fluorescence microscopy revealscardiac- and respiration-dependent pulsatileblood flow in cortical blood vessels in mice.Am J Physiol Heart Circ Physiol 302,H1367–1377.

Acknowledgements

The authors would like to thank Dr ChrisB. Schaffer (Department of BiomedicalEngineering, Cornell University) for hisinsightful comments.

C© 2013 The Authors. The Journal of Physiology C© 2013 The Physiological Society