加强青光眼诊断:合成图像中的生成对抗网络以及使用预训练 MobileNetV2 进行分类。

IF 1.6 Q2 MULTIDISCIPLINARY SCIENCES
MethodsX Pub Date : 2024-12-18 DOI:10.1016/j.mex.2024.103116
I. Govindharaj , D. Santhakumar , K. Pugazharasi , S. Ravichandran , R. Vijaya Prabhu , J. Raja
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引用次数: 0

摘要

这种疾病影响视神经,是不可逆视力丧失的主要原因,大多无症状和不受控制。因此,早期和准确的诊断对于预防或减少其影响至关重要,然而,传统的诊断技术往往不能提供具体的结果。在这方面,我们提出了一种基于生成对抗网络(GAN)和MobileNetV2预训练架构的诊断青光眼的新方法。在这里,使用gan解决了小数据集带来的医学成像不平衡问题,以提高眼底图像的质量。这些图像是用更先进的方法合成的,保证了图像的真实感和精细的细节,特别是眼底图像中的血管网络。采用高斯滤波去除数据中的噪声,提高输入的质量。采用增强的水平集算法进行视杯分割,准确分离青光眼特征。最后,MobileNetV2模型进行了微调,使正常和青光眼图像的可靠区分。使用以下结果详细描述了所提出的演示文稿的有效性:分类准确率为98.9%。这种方法不仅有助于青光眼筛查,而且还可以揭示gan和迁移学习在医学成像中的益处。•一种生成高质量眼底图像数据集的GAN方法,以尽量减少数据集差异。•实现改进的增强水平集算法的光学杯分割。•建立在预先训练的MobileNetV2之上,获得更好的青光眼分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhancing glaucoma diagnosis: Generative adversarial networks in synthesized imagery and classification with pretrained MobileNetV2

Enhancing glaucoma diagnosis: Generative adversarial networks in synthesized imagery and classification with pretrained MobileNetV2
The disease affects the optic nerve and represents the principle reasons of irreversible vision loss, mostly asymptomatic and uncontrolled. Consequently, early and accurate diagnosis is critical to prevent or reduce its effect, however, conventional diagnostic techniques often fail to provide concrete results. In this regard, we present a new approach built on Generative Adversarial Networks (GAN) and MobileNetV2 pretrained architecture for diagnosing glaucoma. Here, the imbalance in medical imaging that comes with small datasets is addressed using GANs to generate improved quality of the fundus images. Such images are synthesized using more advanced methods assured in enhancing picture reality and fine protégé to details, specifically on the vessel network in fundus images. Gaussian Filtering is used to clean the data from noise which improve the quality of inputs. Optic cup segmentation is done by an enhanced level set algorithm, to accurately separate glaucomatous characteristics. Lastly, the MobileNetV2 model is fine-tuned to make reliable differentiation of normal and glaucoma images. The effectiveness of the proposed presentations is described in detail using the following results: accuracy of classification – 98.9 %. This approach does not only contribute to glaucoma screening but also can also reveal the benefits of the GANs and transfer learning in medical imaging.
  • A GAN approach to generate high-quality fundus image datasets in an attempt to minimize dataset differences.
  • Implemented improved Enhanced Level Set Algorithm for Optic Cup segmentation.
  • Built on top of the pretrained MobileNetV2 to obtain better results of glaucoma classification.
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来源期刊
MethodsX
MethodsX Health Professions-Medical Laboratory Technology
CiteScore
3.60
自引率
5.30%
发文量
314
审稿时长
7 weeks
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