75 research outputs found

    Texture Analysis for Glaucoma Classification

    Get PDF

    Automated Glaucoma Detection Using Hybrid Feature Extraction in Retinal Fundus Images

    Get PDF
    Glaucoma is one of the most common causes of blindness. Robust mass screening may help to extend the symptom-free life for affected patients. To realize mass screening requires a cost-effective glaucoma detection method which integrates well with digital medical and administrative processes. To address these requirements, we propose a novel low cost automated glaucoma diagnosis system based on hybrid feature extraction from digital fundus images. The paper discusses a system for the automated identification of normal and glaucoma classes using higher order spectra (HOS), trace transform (TT), and discrete wavelet transform (DWT) features. The extracted features are fed to a support vector machine (SVM) classifier with linear, polynomial order 1, 2, 3 and radial basis function (RBF) in order to select the best kernel for automated decision making. In this work, the SVM classifier, with a polynomial order 2 kernel function, was able to identify glaucoma and normal images with an accuracy of 91.67%, and sensitivity and specificity of 90% and 93.33%, respectively. Furthermore, we propose a novel integrated index called Glaucoma Risk Index (GRI) which is composed from HOS, TT, and DWT features, to diagnose the unknown class using a single feature. We hope that this GRI will aid clinicians to make a faster glaucoma diagnosis during the mass screening of normal/glaucoma images

    Machine learning strategies for diagnostic imaging support on histopathology and optical coherence tomography

    Full text link
    Tesis por compendio[ES] Esta tesis presenta soluciones de vanguardia basadas en algoritmos de computer vision (CV) y machine learning (ML) para ayudar a los expertos en el diagnĂłstico clĂ­nico. Se centra en dos ĂĄreas relevantes en el campo de la imagen mĂ©dica: la patologĂ­a digital y la oftalmologĂ­a. Este trabajo propone diferentes paradigmas de machine learning y deep learning para abordar diversos escenarios de supervisiĂłn en el estudio del cĂĄncer de prĂłstata, el cĂĄncer de vejiga y el glaucoma. En particular, se consideran mĂ©todos supervisados convencionales para segmentar y clasificar estructuras especĂ­ficas de la prĂłstata en imĂĄgenes histolĂłgicas digitalizadas. Para el reconocimiento de patrones especĂ­ficos de la vejiga, se llevan a cabo enfoques totalmente no supervisados basados en tĂ©cnicas de deep-clustering. Con respecto a la detecciĂłn del glaucoma, se aplican algoritmos de memoria a corto plazo (LSTMs) que permiten llevar a cabo un aprendizaje recurrente a partir de volĂșmenes de tomografĂ­a por coherencia Ăłptica en el dominio espectral (SD-OCT). Finalmente, se propone el uso de redes neuronales prototĂ­picas (PNN) en un marco de few-shot learning para determinar el nivel de gravedad del glaucoma a partir de imĂĄgenes OCT circumpapilares. Los mĂ©todos de inteligencia artificial (IA) que se detallan en esta tesis proporcionan una valiosa herramienta de ayuda al diagnĂłstico por imagen, ya sea para el diagnĂłstico histolĂłgico del cĂĄncer de prĂłstata y vejiga o para la evaluaciĂłn del glaucoma a partir de datos de OCT.[CA] Aquesta tesi presenta solucions d'avantguarda basades en algorismes de *computer *vision (CV) i *machine *learning (ML) per a ajudar als experts en el diagnĂČstic clĂ­nic. Se centra en dues Ă rees rellevants en el camp de la imatge mĂšdica: la patologia digital i l'oftalmologia. Aquest treball proposa diferents paradigmes de *machine *learning i *deep *learning per a abordar diversos escenaris de supervisiĂł en l'estudi del cĂ ncer de prĂČstata, el cĂ ncer de bufeta i el glaucoma. En particular, es consideren mĂštodes supervisats convencionals per a segmentar i classificar estructures especĂ­fiques de la prĂČstata en imatges histolĂČgiques digitalitzades. Per al reconeixement de patrons especĂ­fics de la bufeta, es duen a terme enfocaments totalment no supervisats basats en tĂšcniques de *deep-*clustering. Respecte a la detecciĂł del glaucoma, s'apliquen algorismes de memĂČria a curt termini (*LSTMs) que permeten dur a terme un aprenentatge recurrent a partir de volums de tomografia per coherĂšncia ĂČptica en el domini espectral (SD-*OCT). Finalment, es proposa l'Ășs de xarxes neuronals *prototĂ­picas (*PNN) en un marc de *few-*shot *learning per a determinar el nivell de gravetat del glaucoma a partir d'imatges *OCT *circumpapilares. Els mĂštodes d'intel·ligĂšncia artificial (*IA) que es detallen en aquesta tesi proporcionen una valuosa eina d'ajuda al diagnĂČstic per imatge, ja siga per al diagnĂČstic histolĂČgic del cĂ ncer de prĂČstata i bufeta o per a l'avaluaciĂł del glaucoma a partir de dades d'OCT.[EN] This thesis presents cutting-edge solutions based on computer vision (CV) and machine learning (ML) algorithms to assist experts in clinical diagnosis. It focuses on two relevant areas at the forefront of medical imaging: digital pathology and ophthalmology. This work proposes different machine learning and deep learning paradigms to address various supervisory scenarios in the study of prostate cancer, bladder cancer and glaucoma. In particular, conventional supervised methods are considered for segmenting and classifying prostate-specific structures in digitised histological images. For bladder-specific pattern recognition, fully unsupervised approaches based on deep-clustering techniques are carried out. Regarding glaucoma detection, long-short term memory algorithms (LSTMs) are applied to perform recurrent learning from spectral-domain optical coherence tomography (SD-OCT) volumes. Finally, the use of prototypical neural networks (PNNs) in a few-shot learning framework is proposed to determine the severity level of glaucoma from circumpapillary OCT images. The artificial intelligence (AI) methods detailed in this thesis provide a valuable tool to aid diagnostic imaging, whether for the histological diagnosis of prostate and bladder cancer or glaucoma assessment from OCT data.GarcĂ­a Pardo, JG. (2022). Machine learning strategies for diagnostic imaging support on histopathology and optical coherence tomography [Tesis doctoral]. Universitat PolitĂšcnica de ValĂšncia. https://doi.org/10.4995/Thesis/10251/182400Compendi

    Analysis of Retinal Image Data to Support Glaucoma Diagnosis

    Get PDF
    Fundus kamera je ĆĄiroce dostupnĂ© zobrazovacĂ­ zaƙízenĂ­, kterĂ© umoĆŸĆˆuje relativně rychlĂ© a nenĂĄkladnĂ© vyĆĄetƙenĂ­ zadnĂ­ho segmentu oka – sĂ­tnice. Z těchto dĆŻvodĆŻ se mnoho vĂœzkumnĂœch pracoviĆĄĆ„ zaměƙuje prĂĄvě na vĂœvoj automatickĂœch metod diagnostiky nemocĂ­ sĂ­tnice s vyuĆŸitĂ­m fundus fotografiĂ­. Tato dizertačnĂ­ prĂĄce analyzuje současnĂœ stav vědeckĂ©ho poznĂĄnĂ­ v oblasti diagnostiky glaukomu s vyuĆŸitĂ­m fundus kamery a navrhuje novou metodiku hodnocenĂ­ vrstvy nervovĂœch vlĂĄken (VNV) na sĂ­tnici pomocĂ­ texturnĂ­ analĂœzy. Spolu s touto metodikou je navrĆŸena metoda segmentace cĂ©vnĂ­ho ƙečiĆĄtě sĂ­tnice, jakoĆŸto dalĆĄĂ­ hodnotnĂœ pƙíspěvek k současnĂ©mu stavu ƙeĆĄenĂ© problematiky. Segmentace cĂ©vnĂ­ho ƙečiĆĄtě rovnÄ›ĆŸ slouĆŸĂ­ jako nezbytnĂœ krok pƙedchĂĄzejĂ­cĂ­ analĂœzu VNV. Vedle toho prĂĄce publikuje novou volně dostupnou databĂĄzi snĂ­mkĆŻ sĂ­tnice se zlatĂœmi standardy pro Ășčely hodnocenĂ­ automatickĂœch metod segmentace cĂ©vnĂ­ho ƙečiĆĄtě.Fundus camera is widely available imaging device enabling fast and cheap examination of the human retina. Hence, many researchers focus on development of automatic methods towards assessment of various retinal diseases via fundus images. This dissertation summarizes recent state-of-the-art in the field of glaucoma diagnosis using fundus camera and proposes a novel methodology for assessment of the retinal nerve fiber layer (RNFL) via texture analysis. Along with it, a method for the retinal blood vessel segmentation is introduced as an additional valuable contribution to the recent state-of-the-art in the field of retinal image processing. Segmentation of the blood vessels also serves as a necessary step preceding evaluation of the RNFL via the proposed methodology. In addition, a new publicly available high-resolution retinal image database with gold standard data is introduced as a novel opportunity for other researches to evaluate their segmentation algorithms.

    IMPROVED AUTOMATIC DETECTION OF GLAUCOMA USING CUP-TO-DISK RATIO AND HYBRID CLASSIFIERS.

    Get PDF
    Glaucoma is one of the most complicated disorder in human eye that causes permanent vision loss gradually if not detect in early stage. It can damage the optic nerve without any symptoms and warnings. Different automated glaucoma detection systems were developed for analyzing glaucoma at early stage but lacked good accuracy of detection. This paper proposes a novel automated glaucoma detection system which effectively process with digital colour fundus images using hybrid classifiers. The proposed system concentrates on both Cup-to Disk Ratio (CDR) and different features to improve the accuracy of glaucoma. Morphological Hough Transform Algorithm (MHTA) is designed for optic disc segmentation. Intensity based elliptic curve method is used for separation of optic cup effectively. Further feature extraction and CDR value can be estimated. Finally, classification is performed with combination of Naive Bayes Classifier and K Nearest Neighbour (KNN). The proposed system is evaluated by using High Resolution Fundus (HRF) database which outperforms the earlier methods in literature in various performance metrics

    Retinal vessel segmentation using textons

    Get PDF
    Segmenting vessels from retinal images, like segmentation in many other medical image domains, is a challenging task, as there is no unified way that can be adopted to extract the vessels accurately. However, it is the most critical stage in automatic assessment of various forms of diseases (e.g. Glaucoma, Age-related macular degeneration, diabetic retinopathy and cardiovascular diseases etc.). Our research aims to investigate retinal image segmentation approaches based on textons as they provide a compact description of texture that can be learnt from a training set. This thesis presents a brief review of those diseases and also includes their current situations, future trends and techniques used for their automatic diagnosis in routine clinical applications. The importance of retinal vessel segmentation is particularly emphasized in such applications. An extensive review of previous work on retinal vessel segmentation and salient texture analysis methods is presented. Five automatic retinal vessel segmentation methods are proposed in this thesis. The first method focuses on addressing the problem of removing pathological anomalies (Drusen, exudates) for retinal vessel segmentation, which have been identified by other researchers as a problem and a common source of error. The results show that the modified method shows some improvement compared to a previously published method. The second novel supervised segmentation method employs textons. We propose a new filter bank (MR11) that includes bar detectors for vascular feature extraction and other kernels to detect edges and photometric variations in the image. The k-means clustering algorithm is adopted for texton generation based on the vessel and non-vessel elements which are identified by ground truth. The third improved supervised method is developed based on the second one, in which textons are generated by k-means clustering and texton maps representing vessels are derived by back projecting pixel clusters onto hand labelled ground truth. A further step is implemented to ensure that the best combinations of textons are represented in the map and subsequently used to identify vessels in the test set. The experimental results on two benchmark datasets show that our proposed method performs well compared to other published work and the results of human experts. A further test of our system on an independent set of optical fundus images verified its consistent performance. The statistical analysis on experimental results also reveals that it is possible to train unified textons for retinal vessel segmentation. In the fourth method a novel scheme using Gabor filter bank for vessel feature extraction is proposed. The ii method is inspired by the human visual system. Machine learning is used to optimize the Gabor filter parameters. The experimental results demonstrate that our method significantly enhances the true positive rate while maintaining a level of specificity that is comparable with other approaches. Finally, we proposed a new unsupervised texton based retinal vessel segmentation method using derivative of SIFT and multi-scale Gabor filers. The lack of sufficient quantities of hand labelled ground truth and the high level of variability in ground truth labels amongst experts provides the motivation for this approach. The evaluation results reveal that our unsupervised segmentation method is comparable with the best other supervised methods and other best state of the art methods
    • 

    corecore