A. P. Sunija, Adithya K. Krishna, V. Gopi, P. Palanisamy
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引用次数: 1
Abstract
Diabetic Retinopathy (DR) is the principal cause of vision loss that interrupts the regular interaction of vascular, neural, and retinal constituents leading to impaired neuronal function and retinal abnormalities. Diagnosis of DR from Optical Coherence Tomography (OCT) image is difficult and time-consuming because several small features must be identified and graded, which results in a strenuous diagnosis when integrated with the complexity of the grading system. This study focuses on classifying DR from normal Spectral Domain-OCT (SD-OCT) images using the Directed Acyclic Graph (DAG) network without any pre-processing techniques. The proposed DAG-CNN model comprises 16 convolutional blocks, which learns multi-scale features automatically from multiple layers in the convolutional network and combines them effectively for the DR and normal prediction. The proposed model is tested on the public OCTID_DR and private LFH_DR SD-OCT databases containing DR and healthy OCT images. The model achieved an accuracy, precision, recall, F1-score, and AUC on OCTID_DR database of 0.9841, 0.9727, 0.9818, 0.9772, and 0.9836, respectively; and on LFH_DR database the respective values are 0.9988, 1, 0.9976, 0.9988, and 0.9988 with only 0.1569 Million of learnable parameters. This method significantly reduces the number of learnable parameters and the model’s computational complexity in terms of memory required and FLoating point OPerations (FLOPs). Guided Gradient-weighted Class Activation Mapping (Grad-CAM) is performed to highlight the regions of SD-OCT images that contribute to the decision of the classifier. Our model significantly surpasses the accuracy of the existing models with lower resource consumption and higher real-time performance.
糖尿病视网膜病变(DR)是导致视力丧失的主要原因,它中断了血管、神经和视网膜成分的正常相互作用,导致神经元功能受损和视网膜异常。从光学相干断层扫描(OCT)图像中诊断DR是困难和耗时的,因为必须识别和分级几个小特征,这导致在与分级系统的复杂性相结合时的艰苦诊断。本研究的重点是在没有任何预处理技术的情况下,使用有向无环图(DAG)网络从正常光谱域- oct (SD-OCT)图像中分类DR。提出的DAG-CNN模型由16个卷积块组成,该模型自动从卷积网络的多个层中学习多尺度特征,并将它们有效地组合在一起进行DR和normal预测。在包含DR和健康OCT图像的公共OCTID_DR和私有LFH_DR SD-OCT数据库上对该模型进行了测试。模型在OCTID_DR数据库上的准确率、精密度、召回率、F1-score和AUC分别为0.9841、0.9727、0.9818、0.9772和0.9836;在LFH_DR数据库上,分别为0.9988、1、0.9976、0.9988、0.9988,可学习参数只有0.15.69万个。该方法显著减少了可学习参数的数量,降低了模型在内存和浮点运算方面的计算复杂度。使用梯度加权分类激活映射(Grad-CAM)来突出SD-OCT图像中有助于分类器决策的区域。我们的模型以更低的资源消耗和更高的实时性显著超越了现有模型的准确性。
期刊介绍:
Biomedical Engineering: Applications, Basis and Communications is an international, interdisciplinary journal aiming at publishing up-to-date contributions on original clinical and basic research in the biomedical engineering. Research of biomedical engineering has grown tremendously in the past few decades. Meanwhile, several outstanding journals in the field have emerged, with different emphases and objectives. We hope this journal will serve as a new forum for both scientists and clinicians to share their ideas and the results of their studies.
Biomedical Engineering: Applications, Basis and Communications explores all facets of biomedical engineering, with emphasis on both the clinical and scientific aspects of the study. It covers the fields of bioelectronics, biomaterials, biomechanics, bioinformatics, nano-biological sciences and clinical engineering. The journal fulfils this aim by publishing regular research / clinical articles, short communications, technical notes and review papers. Papers from both basic research and clinical investigations will be considered.