Department of Computer Science and Engineering, Marthandam College of Engineering and Technology, Kuttakuzhi, Veeyannoor, Kanyakumari, Tamil Nadu, India.
Department of Electronics and Communication Engineering, St. Xavier's Catholic College of Engineering, Chunkankadai, Kanyakumari, Tamil Nadu, India.
Med Biol Eng Comput. 2024 Sep;62(9):2911-2938. doi: 10.1007/s11517-024-03076-1. Epub 2024 May 7.
Most diabetes patients are liable to have diabetic retinopathy (DR); however, the majority of them might not be even aware of the ailment. Therefore, early detection and treatment of DR are necessary to prevent vision loss. But, avoiding DR is not a simple process. An ophthalmologist can typically identify DR through an optical evaluation of the fundus and through the evaluation of color pictures. However, due to the increased count of DR patients, this could not be possible as it consumes more time. To rectify this problem, a novel deep ensemble-based DR classification technique is developed in this work. Initially, a Wiener filter (WF) is applied for preprocessing the image. Then, the enhanced U-Net-based segmentation process is done. Subsequent to the segmentation process, features are extracted that include statistical features, inferior superior nasal temporal (ISNT), cup to disc ratio (CDR), and improved LGBP as well. Further, deep ensemble classifiers (DEC) like CNN, Bi-GRU, and DMN are used to recognize the disease. The outcomes from DMN, CNN, and Bi-GRU are then subjected to improved SLF. Additionally, the weights of DMN, CNN, and Bi-GRU are adjusted via pelican updated Tasmanian devil optimization (PU-TDO). Finally, outputs on DR (microaneurysms, hemorrhages, hard exudates, and soft exudates) are obtained. The performance of DEC + PU-TDO for diabetic retinopathy is computed over extant models with regard to different measures for four datasets. The results on accuracy using the DEC + PU-TDO scheme for the IDRID dataset is maximum around 0.975 at 90th LP while other models have less accuracy. The FPR of DEC + PU-TDO is less around 0.039 at the 90th LP for the SUSTech-SYSU dataset, while other extant models have maximum FPR.
大多数糖尿病患者都容易患有糖尿病视网膜病变(DR);然而,他们中的大多数人甚至可能没有意识到这种疾病。因此,早期发现和治疗 DR 对于防止视力丧失是必要的。但是,预防 DR 并不是一个简单的过程。眼科医生通常可以通过眼底的光学评估和彩色照片的评估来识别 DR。然而,由于 DR 患者数量的增加,这可能是不可能的,因为它需要更多的时间。为了解决这个问题,本工作开发了一种基于深度集成的新型 DR 分类技术。首先,应用维纳滤波器(WF)对图像进行预处理。然后,进行基于增强型 U-Net 的分割处理。在分割处理之后,提取特征,包括统计特征、上下鼻颞(ISNT)、杯盘比(CDR)和改进的 LGBP。此外,还使用深度集成分类器(DEC),如 CNN、Bi-GRU 和 DMN,来识别疾病。然后将 DMN、CNN 和 Bi-GRU 的输出提交给改进的 SLF。此外,通过 pelican 更新塔斯马尼亚恶魔优化(PU-TDO)调整 DMN、CNN 和 Bi-GRU 的权重。最后,得到 DR(微动脉瘤、出血、硬性渗出物和软性渗出物)的输出。在考虑到四个数据集的不同措施的情况下,与现有模型相比,DEC+PU-TDO 对糖尿病视网膜病变的性能进行了计算。在 IDRID 数据集上,使用 DEC+PU-TDO 方案的准确率最高,在 90 阶 LP 时约为 0.975,而其他模型的准确率较低。在 SUSTech-SYSU 数据集上,在 90 阶 LP 时,DEC+PU-TDO 的 FPR 较低,约为 0.039,而其他现有模型的 FPR 较高。