Retinal image-based disease classification using hybrid deep architecture with improved image features.

IF 1.4 4区 医学 Q3 OPHTHALMOLOGY
L B Lisha, Sylaja Vallee Narayan S R
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引用次数: 0

Abstract

Objective: Ophthalmologists use retinal fundus imaging as a useful tool to diagnose retinal issues. Recently, research on machine learning has concentrated on disease diagnosis. However, disease detection is less accurate, more likely to be misidentified, and often takes a long time to get the right conclusions. This study suggested a new hybrid Deep Learning (DL) approach for retinal illness classification using retinal images to overcome these problems. Three crucial stages are included in this proposed study: preprocessing, feature extraction, and disease classification.

Methods: At first, the retinal images are preprocessed using the Modified Gaussian Filtering technique to enhance the quality of the image. Subsequently, ResNet, VGG16-based feature descriptors are applied to the preprocessed image along with Improved Multi-Texton features, and statistical features are derived to obtain the most pertinent characteristics and minimize the dimensionality to boost the performance of the model. Then, these obtained features are employed in the hybrid classification model, which is a combination of an Improved LinkNet (ILinkNet) and SqueezeNet models. These models independently process the features for effective classification of disease. Lastly, the final classification results are obtained by averaging the outcomes of both classifiers.

Results: Additionally, the efficiency of the proposed ILink-SqNet model is assessed in comparison to the current techniques. As a result, the ILink-SqNet model achieved a precision of 0.951, which surpasses the result of MobileNet (0.846), SpinalNet (0.821), CNN-Trans (0.836), and LinkNet (0.859), SqueezeNet (0.794) and Fundus-DeepNet (0.762) respectively.

Conclusion: Therefore, the suggested ILink-SqNet method provides a robust and effective solution for disease classification, ultimately contributing to better patient outcomes and more efficient clinical practices.

基于视网膜图像的疾病分类:基于改进图像特征的混合深度架构。
目的:眼科医生将视网膜眼底成像作为诊断视网膜病变的有效工具。最近,机器学习的研究主要集中在疾病诊断上。然而,疾病检测的准确性较低,更容易被误诊,而且往往需要很长时间才能得出正确的结论。本研究提出了一种新的基于视网膜图像的混合深度学习(DL)视网膜疾病分类方法来克服这些问题。本研究包括三个关键阶段:预处理、特征提取和疾病分类。方法:首先利用改进高斯滤波技术对视网膜图像进行预处理,提高图像质量。随后,将基于ResNet、vgg16的特征描述符与改进的Multi-Texton特征一起应用于预处理后的图像,并导出统计特征,以获得最相关的特征并最小化维数,从而提高模型的性能。然后,将这些获得的特征用于混合分类模型,该模型是改进的LinkNet (ILinkNet)和SqueezeNet模型的组合。这些模型独立处理特征以进行有效的疾病分类。最后,对两个分类器的分类结果进行平均,得到最终的分类结果。结果:此外,与当前技术相比,所提出的ILink-SqNet模型的效率进行了评估。结果表明,ILink-SqNet模型的精度为0.951,超过了MobileNet(0.846)、SpinalNet(0.821)、CNN-Trans(0.836)和LinkNet(0.859)、SqueezeNet(0.794)和Fundus-DeepNet(0.762)模型的精度。结论:因此,所建议的ILink-SqNet方法为疾病分类提供了一种稳健有效的解决方案,最终有助于改善患者预后和提高临床实践效率。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
451
期刊介绍: International Ophthalmology provides the clinician with articles on all the relevant subspecialties of ophthalmology, with a broad international scope. The emphasis is on presentation of the latest clinical research in the field. In addition, the journal includes regular sections devoted to new developments in technologies, products, and techniques.
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