11 research outputs found

    Real-time high-speed volumetric imaging using compressive sampling optical coherence tomography

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    Volumetric imaging of the Optic Nerve Head (ONH) morphometry with Optical Coherence Tomography (OCT) requires dense sampling and relatively long acquisition times. Compressive Sampling (CS) is an emerging technique to reduce volume acquisition time with minimal image degradation by sparsely sampling the object and reconstructing the missing data in software. In this report, we demonstrated real-time CS-OCT for volumetric imaging of the ONH using a 1060nm Swept-Source OCT prototype. We also showed that registration and averaging of CS-recovered volumes enhanced visualization of deep structures of the sclera and lamina cribrosa. This work validates CS-OCT as a means for reducing volume acquisition time and for preserving high-resolution in volume-averaged images. Compressive sampling can be integrated into new and existing OCT systems without changes to the optics, requiring only software changes and post-processing of acquired data

    Automated 3-D method for the correction of axial artifacts in spectral-domain optical coherence tomography images

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    The 3-D spectral-domain optical coherence tomography (SD-OCT) images of the retina often do not reflect the true shape of the retina and are distorted differently along the x and y axes. In this paper, we propose a novel technique that uses thin-plate splines in two stages to estimate and correct the distinct axial artifacts in SD-OCT images. The method was quantitatively validated using nine pairs of OCT scans obtained with orthogonal fast-scanning axes, where a segmented surface was compared after both datasets had been corrected. The mean unsigned difference computed between the locations of this artifact-corrected surface after the single-spline and dual-spline correction was 23.36 ± 4.04 μm and 5.94 ± 1.09 μm, respectively, and showed a significant difference (p < 0.001 from two-tailed paired t-test). The method was also validated using depth maps constructed from stereo fundus photographs of the optic nerve head, which were compared to the flattened top surface from the OCT datasets. Significant differences (p < 0.001) were noted between the artifact-corrected datasets and the original datasets, where the mean unsigned differences computed over 30 optic-nerve-head-centered scans (in normalized units) were 0.134 ± 0.035 and 0.302 ± 0.134, respectively

    Real-time eye motion correction in phase-resolved OCT angiography with tracking SLO

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    In phase-resolved OCT angiography blood flow is detected from phase changes in between A-scans that are obtained from the same location. In ophthalmology, this technique is vulnerable to eye motion. We address this problem by combining inter-B-scan phase-resolved OCT angiography with real-time eye tracking. A tracking scanning laser ophthalmoscope (TSLO) at 840 nm provided eye tracking functionality and was combined with a phase-stabilized optical frequency domain imaging (OFDI) system at 1040 nm. Real-time eye tracking corrected eye drift and prevented discontinuity artifacts from (micro)saccadic eye motion in OCT angiograms. This improved the OCT spot stability on the retina and consequently reduced the phase-noise, thereby enabling the detection of slower blood flows by extending the inter-B-scan time interval. In addition, eye tracking enabled the easy compounding of multiple data sets from the fovea of a healthy volunteer to create high-quality eye motion artifact-free angiograms. High-quality images are presented of two distinct layers of vasculature in the retina and the dense vasculature of the choroid. Additionally we present, for the first time, a phase-resolved OCT angiogram of the mesh-like network of the choriocapillaris containing typical pore openings. © 2012 Optical Society of America

    Angiography of the retina and the choroid with phase-resolved OCT using interval-optimized backstitched B-scans

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    In conventional phase-resolved OCT blood flow is detected from phase changes between successive A-scans. Especially in high-speed OCT systems this results in a short evaluation time interval. This method is therefore often unable to visualize complete vascular networks since low flow velocities cause insufficient phase changes. This problem was solved by comparing B-scans instead of successive A-scans to enlarge the time interval. In this paper a detailed phase-noise analysis of our OCT system is presented in order to calculate the optimal time intervals for visualization of the vasculature of the human retina and choroid. High-resolution images of the vasculature of a healthy volunteer taken with various time intervals are presented to confirm this analysis. The imaging was performed with a backstitched B-scan in which pairs of small repeated B-scans are stitched together to independently control the time interval and the imaged lateral field size. A time interval of ≥2.5 ms was found effective to image the retinal vasculature down to the capillary level. The higher flow velocities of the choroid allowed a time interval of 0.64 ms to reveal its dense vasculature. Finally we analyzed depth-resolved histograms of volumetric phase-difference data to assess changes in amount of blood flow with depth. This analysis indicated different flow regimes in the retina and the choroid. © 2012 Optical Society of America

    Review on retrospective procedures to correct retinal motion artefacts in OCT imaging

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    Motion artefacts from involuntary changes in eye fixation remain a major imaging issue in optical coherence tomography (OCT). This paper reviews the state-of-the-art of retrospective procedures to correct retinal motion and axial eye motion artefacts in OCT imaging. Following an overview of motion induced artefacts and correction strategies, a chronological survey of retrospective approaches since the introduction of OCT until the current days is presented. Pre-processing, registration, and validation techniques are described. The review finishes by discussing the limitations of the current techniques and the challenges to be tackled in future developments

    Automated Analysis of Retinal and Choroidal OCT and OCTA Images in AMD

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    La dégénérescence maculaire liée à l'âge (DMLA) est une maladie oculaire progressive qui se manifeste principalement au niveau de la rétine externe et de la choroïde. Le projet de recherche vise à déterminer si des mesures obtenues à partir d'images de tomographie par cohérence optique (OCT) et d'angiographie OCT (OCTA) peuvent être utilisées afin de fournir de nouvelles informations sur des biomarqueurs de la DMLA, ainsi qu’une méthode de détection précoce de la maladie. À cette fin, un appareil permettant l’OCT et l’OCTA a été utilisé pour imager des sujets DMLA précoces et intermédiaires, et des sujets témoins. À la configuration sélectionnée de l’appareil OCT, chaque acquisition d'un œil fournit un volume de données qui est constitué de 300 images transversales appelées B-scan. Au total, des acquisitions de 10 yeux de sujets atteints de DMLA précoce et intermédiaire (3000 images B-scan) et un cas de DMLA néovasculaire, 12 yeux de sujets âgés de plus de 50 ans (3600 images B-scan) et 11 yeux de sujets âgés de moins de 50 ans (3300 images B-scan) ont été obtenues. Cinq méthodes d'extraction de caractéristiques ont été reproduites ou développées afin de déterminer si des différences significatives au niveau de l’œil pouvaient être observées entre les sujets atteints de DMLA précoce et intermédiaire et les sujets témoins d’âge similaire. Grâce à des tests non paramétriques, il a été établi que deux méthodes connues d'extraction de biomarqueurs de la DMLA (analyse d’absence de signal de débit sanguin au niveau de la choriocapillaire et une méthode de segmentation des drusen) produisent des mesures qui montrent des différences significatives entre les groupes, et qui sont représentées de façon uniforme à travers le plan frontal de l’œil. Il a ensuite été souhaité de tirer parti des mesures et de générer un modèle de classification de la DMLA interprétable basé sur l'apprentissage automatique au niveau des B-scans. Des spectres de fréquence résultant de la transformé de Fourier rapide de séries spatiales dérivées de mesures considérées comme représentatives des deux biomarqueurs ont été obtenues, et utilisées comme caractéristiques pour former un classifieur de type forêt aléatoire et un classifieur de type forêt profonde. L'analyse en composantes principales (PCA) a été utilisée pour réduire la dimensionnalité de l’espace des caractéristiques, et la performance des modèles et l'importance des prédicteurs ont été évaluées. Une nouvelle méthode a été conçue qui permet une reconstruction 3D automatisée et une évaluation quantitative de la structure des signaux OCTA et ainsi des vaisseaux rétiniens. Des mesures représentatives des drusen et de la choriocapillaire ont été utilisées pour créer des modèles interprétables pour la classification de la DMLA précoce et intermédiaire. Alors que la prévalence mondiale de la DMLA augmente et que les appareils OCT deviennent plus disponibles, un plus grand nombre de personnes hautement qualifiées est nécessaire pour interpréter les informations médicales et fournir les soins cliniques appropriés. L'analyse et le classement du niveau de sévérité de la DMLA par des experts par le biais d'images OCT sont coûteux et prennent du temps. Les modèles proposés pourraient servir à automatiser la détection de la DMLA, même lorsqu'elle est asymptomatique, et signaler à un ophtalmologue la nécessité de surveiller et de traiter la condition avant la survenue de pertes graves de la vision. Les modèles sont transparents et sont en mesure de fournir une classification à partir d’une seule image transversale. Par conséquent, l'outil diagnostic automatisé pourrait également être utilisé dans des situations où seules des données médicales partielles sont disponibles ou lorsque l'accès aux ressources de soins de santé est limité.----------ABSTRACT Age-related macular degeneration (AMD) is a progressive eye disease which manifests primarily at the outer retina and choroid. The research project aimed to determine whether measures obtained from optical coherence tomography (OCT) and OCT angiography (OCTA) images could be used to provide novel AMD biomarker insight and an early disease detection method. To that end, an OCT and OCTA enabled device was used to image AMD subjects and controls. At the selected device scan size, each scan of one eye gathered using an OCT device provides a volume of data which is constructed of 300 cross-sectional images termed B-scans. In total, scans of 10 eyes from subjects with early and intermediate AMD (3,000 B-scan images) and a case of neovascular AMD, 12 eyes from subjects over the age of 50 years old (3,600 B-scan images), and 11 eyes from subjects under the age of 50 years old (3,300 B-scan images) were obtained. Five feature extraction methods were either reproduced or developed in order to determine if significant differences could be observed between the early and intermediate AMD subjects and control subjects at the eye level. Through non-parametric testing it was established that two AMD biomarker extraction methods (choriocapillaris flow voids analysis and a drusen segmentation method) produced measures which showed significant differences between groups, and which were also uniformly represented across the frontal plane of the eye. It was then desired to leverage the measures and generate a B-scan level, interpretable machine learning-based AMD classification model. Frequency spectrums resulting from the fast Fourier transforms of spatial series derived from measures believed to be representative of the two biomarkers were obtained and used as features to train a random forest and a deep forest classifier. Principal component analysis was used to reduce dimensionality of the feature space, and model performance and predictor importance were assessed. A new method was devised which allows automated 3D reconstruction and quantitative evaluation of retinal flow signal patterns and incidentally of retinal microvasculature. Measures representative of drusen and choriocapillaris were leveraged to create interpretable models for the classification of early and intermediate AMD. As the worldwide prevalence of AMD increases and OCT devices are becoming more available, a greater number of highly trained personnel is needed to interpret medical information and provide the appropriate clinical care. Expert analysis and grading of AMD through OCT images are expensive and time consuming. The models proposed could serve to automate AMD detection, even when it is asymptomatic, and signal to an ophthalmologist the need to monitor and treat the condition before the occurrence of severe visual loss. The models are transparent and provide classification from single cross-sectional images. Therefore, the automated diagnosis tool could also be used in situations where only partial medical data are available, or where there is limited access to health care resources

    Ultraschnelle optische Kohärenztomographie am Augenhintergrund

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