利用可解释的深度学习和多类支持向量机从虹膜细胞图像分析中进行早期色素斑点分割和分类。

IF 2.4 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Biochemistry and Cell Biology Pub Date : 2023-10-31 DOI:10.1139/bcb-2023-0183
Amjad R Khan, Rabia Javed, Tariq Sadad, Saeed Ali Bahaj, Gabriel Avelino Sampedro, Mideth Abisado
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引用次数: 0

摘要

在全球范围内,视网膜疾病影响着成千上万的人。对这些异常的早期诊断和治疗可能会阻止它们的发展,并防止许多人患上可预防的失明。虹膜斑点分割是至关重要的,因为获取的虹膜细胞图像会受到偏离角度虹膜、噪声和镜面反射的影响。目前使用的大多数虹膜分割技术都是基于边缘数据和非细胞图像。虹膜表面色素斑块的大小随着眼部综合征而增加。此外,在不合作的环境中拍摄的虹膜图像经常具有负噪声,使得难以精确分割。传统的诊断过程成本高昂且耗时,因为它们需要高素质的人员并且具有严格的环境。本文提出了一种可解释的深度学习模型,该模型与多类支持向量机相结合,用于分析虹膜细胞图像,用于早期色素斑分割和分类。实验中使用了三个基准数据集Mile、UPOL和Eyes SUB来测试所提出的方法。实验结果在标准度量上进行了比较,表明所提出的模型在分类误差方面优于文献中报道的方法。此外,观察到所提出的参数在定位虹膜表面上的微色素点方面是非常有效的。
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Early pigment spot segmentation and classification from iris cellular image analysis with explainable deep learning and multiclass support vector machine.

Globally, retinal disorders impact thousands of individuals. Early diagnosis and treatment of these anomalies might halt their development and prevent many people from developing preventable blindness. Iris spot segmentation is critical due to acquiring iris cellular images that suffer from the off-angle iris, noise, and specular reflection. Most currently used iris segmentation techniques are based on edge data and noncellular images. The size of the pigment patches on the surface of the iris increases with eye syndrome. In addition, iris images taken in uncooperative settings frequently have negative noise, making it difficult to segment them precisely. The traditional diagnosis processes are costly and time consuming since they require highly qualified personnel and have strict environments. This paper presents an explainable deep learning model integrated with a multiclass support vector machine to analyze iris cellular images for early pigment spot segmentation and classification. Three benchmark datasets MILE, UPOL, and Eyes SUB were used in the experiments to test the proposed methodology. The experimental results are compared on standard metrics, demonstrating that the proposed model outperformed the methods reported in the literature regarding classification errors. Additionally, it is observed that the proposed parameters are highly effective in locating the micro pigment spots on the iris surfaces.

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来源期刊
Biochemistry and Cell Biology
Biochemistry and Cell Biology 生物-生化与分子生物学
CiteScore
6.30
自引率
0.00%
发文量
50
审稿时长
6-12 weeks
期刊介绍: Published since 1929, Biochemistry and Cell Biology explores every aspect of general biochemistry and includes up-to-date coverage of experimental research into cellular and molecular biology in eukaryotes, as well as review articles on topics of current interest and notes contributed by recognized international experts. Special issues each year are dedicated to expanding new areas of research in biochemistry and cell biology.
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