Intelligent Application of Laser for Medical Prognosis: An Instance for Laser Mark Diabetic Retinopathy

Sumit Das, Dipansu Mondal, Diprajyoti Majumdar
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Abstract

ABSTRACT: Refractive laser surgery is all about the accuracy, whether screening or surgery, given the age and profile of the patient enduring these trials, there is no margin for error. Most of them are for aesthetic reasons, contact lens intolerance, or professional reasons, including athletes. In this article, the role of artificial intelligence and deep learning in laser eye surgeries has been introduced. The presence of lingering laser spots on the retina after refractive laser surgery in diabetic retinopathy poses a potential risk to visual integrity and ocular well-being. The hypothesis for the research paper is that the hybridized convolutional neural network models, including LeNet-1, AlexNet, VGG16, PolyNet, Inception V2, and Inception-ResNetV2, will yield varying levels of performance in classifying and segmenting laser spots in the retina after diabetic retinopathy surgery. The hypothesis predicts that Inception-ResNetV2 will demonstrate superior results compared to the other CNN versions. The research aims to provide a novel approach for laser therapies and treatments, facilitating the rapid classification, highlighting, and segmentation of laser marks on the retina for prompt medical precautions. The comparative analysis revealed that Inception-ResNetV2 exhibited exceptional performance in both training and validation, achieving the highest accuracy (96.54%) for classifying diabetic retinopathy images. Notably, VGG16 also demonstrated strong performance with a validation accuracy of 94%. Conversely, LeNet-1, AlexNet, PolyNet, and Inception V2 displayed comparatively lower accuracy rates, suggesting their architectures may be less optimized for this particular image classification task. This achievement holds immense promise for timely detection, precise localization, and optimal management of laser spots, fostering enhanced visual outcomes and elevating the standards of patient care in this context.
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激光在医学预后中的智能应用:以激光标记糖尿病视网膜病变为例
摘要:无论是筛查还是手术,屈光激光手术的准确性都是至关重要的,考虑到患者的年龄和特征,在这些试验中,没有误差的余地。大多数是审美原因,隐形眼镜不耐受,或职业原因,包括运动员。本文介绍了人工智能和深度学习在激光眼科手术中的作用。糖尿病视网膜病变屈光激光手术后视网膜上残留的激光斑对视觉完整性和眼部健康构成潜在风险。本研究论文的假设是,混合卷积神经网络模型,包括LeNet-1、AlexNet、VGG16、PolyNet、Inception V2和Inception- resnetv2,将在糖尿病视网膜病变手术后视网膜激光斑的分类和分割中产生不同程度的性能。假设预测Inception-ResNetV2与其他CNN版本相比将表现出更好的结果。本研究旨在为激光治疗和治疗提供一种新的方法,促进视网膜上激光标记的快速分类、突出和分割,以便及时进行医疗预防。对比分析显示,Inception-ResNetV2在训练和验证方面都表现出色,对糖尿病视网膜病变图像的分类准确率最高(96.54%)。值得注意的是,VGG16也表现出了很强的性能,验证准确率达到94%。相反,LeNet-1、AlexNet、PolyNet和Inception V2显示出相对较低的准确率,这表明它们的架构可能不太适合这个特定的图像分类任务。这一成就为及时检测、精确定位和最佳管理激光斑点、增强视觉效果和提高患者护理标准提供了巨大的希望。
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