CNN 融合:有望用于眼科疾病诊断的技术

Ankur Biswas , Rita Banik
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摘要

眼科疾病是一个重大的全球性健康问题,如果不及早发现和治疗,会导致视力受损甚至失明。深度学习是一种流行的方法,预先训练好的模型现在经常被用来从不同的医学图像中诊断各种疾病。为了对眼科疾病进行准确可靠的分类,本研究提出了一种融合或集合技术,利用 ResNet50、DenseNet 和 EfficientNet 等预训练模型的力量。所提出的集合模型融合了三种架构范例的优点,从而提高了性能,并引导汇聚每种范例的独特优势,以实现更好的整体分类结果。该集合架构已在多个眼底图像数据集上进行了包容性验证,显示出比独立模型更高的性能。92% 的准确率证明了集合模型在白内障、糖尿病视网膜病变、青光眼和正常眼睛等眼部疾病分类中的潜力。除了达到最先进的准确度外,集合模型的 AUC-ROC 分数也达到了 1.00。这项技术提供了一种可行的选择,通过结合不同的模型能力,提高了识别各种眼部疾病的准确性和可靠性。实证数据和结论表明,集合模型有可能为眼科医学成像和患者护理领域做出重大贡献,因为它可以实现精确、及时的治疗,从而显著改善全球数百万眼科疾病患者的生活。
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CNN Fusion: A Promising Technique for Ophthalmic Disorder Diagnosis

Ophthalmic disorders represent a major global health problem leading to visual impairment and even blindness if not detected and treated early. Deep learning is a popular approach where pre-trained models are now often used to diagnose a variety of diseases from different medical images. In order to provide an accurate and reliable categorization of ophthalmic illnesses, this study suggests a fusion or ensemble technique that harnesses the power of pre-trained models like ResNet50, DenseNet and EfficientNet. The proposed ensemble model enhances the performance by incorporating the benefits of three architectural paradigms, guiding the convergence of each one's distinct strengths to achieve improved overall classification result. The ensemble architecture has undertaken inclusive validation on multiple fundus image datasets, showing improved performance over lone models. An accuracy of 92% demonstrates the potential of ensemble model in the categorization of eye diseases like cataract, diabetic retinopathy, glaucoma and normal eyes. In addition to achieving cutting-edge accuracy, the ensemble also offers an AUC-ROC score of 1.00. This technique presents a viable alternative for boosting the accuracy and reliability in identifying various eye illnesses by combining diverse model capabilities. The empirical data and conclusions show that the ensemble model has the potential to make a substantial contribution to the field of ocular medical imaging and patient care by enabling precise and timely treatments that may significantly improve the lives of millions of people worldwide who are impacted by ophthalmic diseases.

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