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Artículo

VISTA: vision improvement via split and reconstruct deep neural network for fundus image quality assessment

Khalid, Saif; Abdulwahab, Saddam; Stanchi, Oscar AgustínIcon ; Quiroga, Facundo Manuel; Ronchetti, Franco; Puig, Domenec; Rashwan, Hatem A.
Fecha de publicación: 10/2024
Editorial: Springer
Revista: Neural Computing And Applications
ISSN: 0941-0643
Idioma: Inglés
Tipo de recurso: Artículo publicado
Clasificación temática:
Ciencias de la Computación

Resumen

Widespread eye conditions such as cataracts, diabetic retinopathy, and glaucoma impact people worldwide. Ophthalmology uses fundus photography for diagnosing these retinal disorders, but fundus images are prone to image quality challenges. Accurate diagnosis hinges on high-quality fundus images. Therefore, there is a need for image quality assessment methods to evaluate fundus images before diagnosis. Consequently, this paper introduces a deep learning model tailored for fundus images that supports large images. Our division method centres on preserving the original image’s high-resolution features while maintaining low computing and high accuracy. The proposed approach encompasses two fundamental components: an autoencoder model for input image reconstruction and image classification to classify the image quality based on the latent features extracted by the autoencoder, all performed at the original image size, without alteration, before reassembly for decoding networks. Through post hoc interpretability methods, we verified that our model focuses on key elements of fundus image quality. Additionally, an intrinsic interpretability module has been designed into the network that allows decomposing class scores into underlying concepts quality such as brightness or presence of anatomical structures. Experimental results in our model with EyeQ, a fundus image dataset with three categories (Good, Usable, and Rejected) demonstrate that our approach produces competitive outcomes compared to other deep learning-based methods with an overall accuracy of 0.9066, a precision of 0.8843, a recall of 0.8905, and an impressive F1-score of 0.8868.
Palabras clave: Autoencoder network , Retinal image , Explainability , Fundus image , Gradability , Quality assessment , Interpretability
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info:eu-repo/semantics/restrictedAccess Excepto donde se diga explícitamente, este item se publica bajo la siguiente descripción: Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Unported (CC BY-NC-SA 2.5)
Identificadores
URI: http://hdl.handle.net/11336/247248
URL: https://link.springer.com/10.1007/s00521-024-10174-6
DOI: http://dx.doi.org/10.1007/s00521-024-10174-6
Colecciones
Articulos(CCT - LA PLATA)
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - LA PLATA
Citación
Khalid, Saif; Abdulwahab, Saddam; Stanchi, Oscar Agustín; Quiroga, Facundo Manuel; Ronchetti, Franco; et al.; VISTA: vision improvement via split and reconstruct deep neural network for fundus image quality assessment; Springer; Neural Computing And Applications; 10-2024; 1-20
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