402 research outputs found

    Automated Fovea Detection Based on Unsupervised Retinal Vessel Segmentation Method

    Get PDF
    The Computer Assisted Diagnosis systems could save workloads and give objective diagnostic to ophthalmologists. At first level of automated screening of systems feature extraction is the fundamental step. One of these retinal features is the fovea. The fovea is a small fossa on the fundus, which is represented by a deep-red or red-brown color in color retinal images. By observing retinal images, it appears that the main vessels diverge from the optic nerve head and follow a specific course that can be geometrically modeled as a parabola, with a common vertex inside the optic nerve head and the fovea located along the apex of this parabola curve. Therefore, based on this assumption, the main retinal blood vessels are segmented and fitted to a parabolic model. With respect to the core vascular structure, we can thus detect fovea in the fundus images. For the vessel segmentation, our algorithm addresses the image locally where homogeneity of features is more likely to occur. The algorithm is composed of 4 steps: multi-overlapping windows, local Radon transform, vessel validation, and parabolic fitting. In order to extract blood vessels, sub-vessels should be extracted in local windows. The high contrast between blood vessels and image background in the images cause the vessels to be associated with peaks in the Radon space. The largest vessels, using a high threshold of the Radon transform, determines the main course or overall configuration of the blood vessels which when fitted to a parabola, leads to the future localization of the fovea. In effect, with an accurate fit, the fovea normally lies along the slope joining the vertex and the focus. The darkest region along this line is the indicative of the fovea. To evaluate our method, we used 220 fundus images from a rural database (MUMS-DB) and one public one (DRIVE). The results show that, among 20 images of the first public database (DRIVE) we detected fovea in 85% of them. Also for the MUMS-DB database among 200 images we detect fovea correctly in 83% on them

    Automatic analysis of retinal images to aid in the diagnosis and grading of diabetic retinopathy

    Get PDF
    Diabetic retinopathy (DR) is the most common complication of diabetes mellitus and one of the leading causes of preventable blindness in the adult working population. Visual loss can be prevented from the early stages of DR, when the treatments are effective. Therefore, early diagnosis is paramount. However, DR may be clinically asymptomatic until the advanced stage, when vision is already affected and treatment may become difficult. For this reason, diabetic patients should undergo regular eye examinations through screening programs. Traditionally, DR screening programs are run by trained specialists through visual inspection of the retinal images. However, this manual analysis is time consuming and expensive. With the increasing incidence of diabetes and the limited number of clinicians and sanitary resources, the early detection of DR becomes non-viable. For this reason, computed-aided diagnosis (CAD) systems are required to assist specialists for a fast, reliable diagnosis, allowing to reduce the workload and the associated costs. We hypothesize that the application of novel, automatic algorithms for fundus image analysis could contribute to the early diagnosis of DR. Consequently, the main objective of the present Doctoral Thesis is to study, design and develop novel methods based on the automatic analysis of fundus images to aid in the screening, diagnosis, and treatment of DR. In order to achieve the main goal, we built a private database and used five retinal public databases: DRIMDB, DIARETDB1, DRIVE, Messidor and Kaggle. The stages of fundus image processing covered in this Thesis are: retinal image quality assessment (RIQA), the location of the optic disc (OD) and the fovea, the segmentation of RLs and EXs, and the DR severity grading. RIQA was studied with two different approaches. The first approach was based on the combination of novel, global features. Results achieved 91.46% accuracy, 92.04% sensitivity, and 87.92% specificity using the private database. We developed a second approach aimed at RIQA based on deep learning. We achieved 95.29% accuracy with the private database and 99.48% accuracy with the DRIMDB database. The location of the OD and the fovea was performed using a combination of saliency maps. The proposed methods were evaluated over the private database and the public databases DRIVE, DIARETDB1 and Messidor. For the OD, we achieved 100% accuracy for all databases except Messidor (99.50%). As for the fovea location, we also reached 100% accuracy for all databases except Messidor (99.67%). The joint segmentation of RLs and EXs was accomplished by decomposing the fundus image into layers. Results were computed per pixel and per image. Using the private database, 88.34% per-image accuracy (ACCi) was reached for the RL detection and 95.41% ACCi for EX detection. An additional method was proposed for the segmentation of RLs based on superpixels. Evaluating this method with the private database, we obtained 84.45% ACCi. Results were validated using the DIARETDB1 database. Finally, we proposed a deep learning framework for the automatic DR severity grading. The method was based on a novel attention mechanism which performs a separate attention of the dark and the bright structures of the retina. The Kaggle DR detection dataset was used for development and validation. The International Clinical DR Scale was considered, which is made up of 5 DR severity levels. Classification results for all classes achieved 83.70% accuracy and a Quadratic Weighted Kappa of 0.78. The methods proposed in this Doctoral Thesis form a complete, automatic DR screening system, contributing to aid in the early detection of DR. In this way, diabetic patients could receive better attention for their ocular health avoiding vision loss. In addition, the workload of specialists could be relieved while healthcare costs are reduced.La retinopatía diabética (RD) es la complicación más común de la diabetes mellitus y una de las principales causas de ceguera prevenible en la población activa adulta. El diagnóstico precoz es primordial para prevenir la pérdida visual. Sin embargo, la RD es clínicamente asintomática hasta etapas avanzadas, cuando la visión ya está afectada. Por eso, los pacientes diabéticos deben someterse a exámenes oftalmológicos periódicos a través de programas de cribado. Tradicionalmente, estos programas están a cargo de especialistas y se basan de la inspección visual de retinografías. Sin embargo, este análisis manual requiere mucho tiempo y es costoso. Con la creciente incidencia de la diabetes y la escasez de recursos sanitarios, la detección precoz de la RD se hace inviable. Por esta razón, se necesitan sistemas de diagnóstico asistido por ordenador (CAD) que ayuden a los especialistas a realizar un diagnóstico rápido y fiable, que permita reducir la carga de trabajo y los costes asociados. El objetivo principal de la presente Tesis Doctoral es estudiar, diseñar y desarrollar nuevos métodos basados en el análisis automático de retinografías para ayudar en el cribado, diagnóstico y tratamiento de la RD. Las etapas estudiadas fueron: la evaluación de la calidad de la imagen retiniana (RIQA), la localización del disco óptico (OD) y la fóvea, la segmentación de RL y EX y la graduación de la severidad de la RD. RIQA se estudió con dos enfoques diferentes. El primer enfoque se basó en la combinación de características globales. Los resultados lograron una precisión del 91,46% utilizando la base de datos privada. El segundo enfoque se basó en aprendizaje profundo. Logramos un 95,29% de precisión con la base de datos privada y un 99,48% con la base de datos DRIMDB. La localización del OD y la fóvea se realizó mediante una combinación de mapas de saliencia. Los métodos propuestos fueron evaluados sobre la base de datos privada y las bases de datos públicas DRIVE, DIARETDB1 y Messidor. Para el OD, logramos una precisión del 100% para todas las bases de datos excepto Messidor (99,50%). En cuanto a la ubicación de la fóvea, también alcanzamos un 100% de precisión para todas las bases de datos excepto Messidor (99,67%). La segmentación conjunta de RL y EX se logró descomponiendo la imagen del fondo de ojo en capas. Utilizando la base de datos privada, se alcanzó un 88,34% de precisión por imagen (ACCi) para la detección de RL y un 95,41% de ACCi para la detección de EX. Se propuso un método adicional para la segmentación de RL basado en superpíxeles. Evaluando este método con la base de datos privada, obtuvimos 84.45% ACCi. Los resultados se validaron utilizando la base de datos DIARETDB1. Finalmente, propusimos un método de aprendizaje profundo para la graduación automática de la gravedad de la DR. El método se basó en un mecanismo de atención. Se utilizó la base de datos Kaggle y la Escala Clínica Internacional de RD (5 niveles de severidad). Los resultados de clasificación para todas las clases alcanzaron una precisión del 83,70% y un Kappa ponderado cuadrático de 0,78. Los métodos propuestos en esta Tesis Doctoral forman un sistema completo y automático de cribado de RD, contribuyendo a ayudar en la detección precoz de la RD. De esta forma, los pacientes diabéticos podrían recibir una mejor atención para su salud ocular evitando la pérdida de visión. Además, se podría aliviar la carga de trabajo de los especialistas al mismo tiempo que se reducen los costes sanitarios.Escuela de DoctoradoDoctorado en Tecnologías de la Información y las Telecomunicacione

    Location of the optic disc in scanning laser ophthalmoscope images and validation

    Get PDF
    In this thesis we propose two methods for optic disc (OD) localization in scanning laser ophthalmoscope (SLO) images. The methods share a locating phase, while differ in the OD segmentation. We tested the algorithms on a pilot of 50 images (1536x1536) from a Heildelberg SPECTRALIS SLO camera, annotated by four expert ophthalmologists. The second algorithm performs better than the first one achieving accuracy of 90%. We compared also our methods with a validated OD algorithm on fundus images

    ACHIKO-D350: A dataset for early AMD detection and drusen segmentation

    Get PDF
    Age related macular degeneration is the third leading cause of global blindness. Its prevalence is increasing in these years for the coming of ”aging population”. Early detection and grading can prevent it from becoming severe and protect vision. Drusen is an important indicator for AMD. Thus automatic drusen detection and segmentation has attracted much research attention in the past years. However, a barrier handicapping the research of drusen segmentation is the lack of a public dataset and test platform. To address this issue, in this paper, we publish a dataset, named ACHIKO-D350, with manually marked drusen boundary. ACHIKO-D350 includes 254 healthy fundus images and 96 fundus images with drusen. The images with drusen cover a wide range of types, including images with sparsely distributed drusen or clumped drusen, images of poor quality, and both well macular centered images and mis-centered images. ACHIKO-D350 will be used for performance evaluation of drusen segmentation methods. It will facilitate an objective evaluation and comparison

    Advanced image processing techniques for detection and quantification of drusen

    Get PDF
    Dissertation presented to obtain the degree of Doctor of Philosophy in Electrical Engineering, speciality on Perceptional Systems, by the Universidade Nova de Lisboa, Faculty of Sciences and TechnologyDrusen are common features in the ageing macula, caused by accumulation of extracellular materials beneath the retinal surface, visible in retinal fundus images as yellow spots. In the ophthalmologists’ opinion, the evaluation of the total drusen area, in a sequence of images taken during a treatment, will help to understand the disease progression and effectiveness. However, this evaluation is fastidious and difficult to reproduce when performed manually. A literature review on automated drusen detection showed that the works already published were limited to techniques of either adaptive or global thresholds which showed a tendency to produce a significant number of false positives. The purpose for this work was to propose an alternative method to automatically quantify drusen using advanced digital image processing techniques. This methodology is based on a detection and modelling algorithm to automatically quantify drusen. It includes an image pre-processing step to correct the uneven illumination by using smoothing splines fitting and to normalize the contrast. To quantify drusen a detection and modelling algorithm is adopted. The detection uses a new gradient based segmentation algorithm that isolates drusen and provides basic drusen characterization to the modelling stage. These are then fitted by Gaussian functions, to produce a model of the image, which is used to compute the affected areas. To validate the methodology, two software applications, one for semi-automated (MD3RI) and other for automated detection of drusen (AD3RI), were implemented. The first was developed for Ophthalmologists to manually analyse and mark drusen deposits, while the other implemented algorithms for automatic drusen quantification.Four studies to assess the methodology accuracy involving twelve specialists have taken place. These compared the automated method to the specialists and evaluated its repeatability. The studies were analysed regarding several indicators, which were based on the total affected area and on a pixel-to-pixel analysis. Due to the high variability among the graders involved in the first study, a new evaluation method, the Weighed Matching Analysis, was developed to improve the pixel-to-pixel analysis by using the statistical significance of the observations to differentiate positive and negative pixels. From the results of these studies it was concluded that the methodology proposed is capable to automatically measure drusen in an accurate and reproducible process. Also, the thesis proposes new image processing algorithms, for image pre-processing, image segmentation,image modelling and images comparison, which are also applicable to other image processing fields

    Retinal Fundus Image Analysis for Diagnosis of Glaucoma: A Comprehensive Survey

    Full text link
    © 2016 IEEE. The rapid development of digital imaging and computer vision has increased the potential of using the image processing technologies in ophthalmology. Image processing systems are used in standard clinical practices with the development of medical diagnostic systems. The retinal images provide vital information about the health of the sensory part of the visual system. Retinal diseases, such as glaucoma, diabetic retinopathy, age-related macular degeneration, Stargardt's disease, and retinopathy of prematurity, can lead to blindness manifest as artifacts in the retinal image. An automated system can be used for offering standardized large-scale screening at a lower cost, which may reduce human errors, provide services to remote areas, as well as free from observer bias and fatigue. Treatment for retinal diseases is available; the challenge lies in finding a cost-effective approach with high sensitivity and specificity that can be applied to large populations in a timely manner to identify those who are at risk at the early stages of the disease. The progress of the glaucoma disease is very often quiet in the early stages. The number of people affected has been increasing and patients are seldom aware of the disease, which can cause delay in the treatment. A review of how computer-aided approaches may be applied in the diagnosis and staging of glaucoma is discussed here. The current status of the computer technology is reviewed, covering localization and segmentation of the optic nerve head, pixel level glaucomatic changes, diagonosis using 3-D data sets, and artificial neural networks for detecting the progression of the glaucoma disease
    corecore