基于智能手机的糖尿病视网膜病变检测的优化特征选择方法

Shubhi Gupta, Sanjeev Thakur, Ashutosh Gupta
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引用次数: 1

摘要

糖尿病视网膜病变(DR)会对视网膜血管造成损害。它也被称为无声疾病,因为它只会引起轻微的视力问题或根本没有症状。每年的眼科检查对于早期发现至关重要。因此,它使用眼底相机来捕捉视网膜图像,但由于其尺寸和费用,它是一种不切实际的广泛筛查方法。因此,智能手机正被用于制造轻便、廉价的视网膜成像系统,可以执行自动DR检测和筛查。首先进行预处理,包括绿色通道转换和CLAHE(对比度有限自适应直方图均衡化)。此外,分割过程从WT(分水岭变换)视盘分割和三重半带滤波器组异常分割(渗出物、微动脉瘤、出血和IRMA) (THFB)开始。然后使用Haralick和ADTCWT(各向异性对偶树复小波变换)方法去除各种特征。基于寿命选择的优化器(LCBO)算法选择最优特征。然后将选择的特征放入ML分类器中,该分类器将严重程度分为平均,轻度DR,中度DR,极端DR和增殖DR。在Python环境中模拟了所提出的工作,并使用APTOS-2019-Blindness-Detection和EyePacs等数据集来测试所提出方案的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Feature Selection Approach for Smartphone Based Diabetic Retinopathy Detection
Diabetic Retinopathy (DR) causes damage to the retina's blood vessels. It's also known as a silent illness because it causes only minor vision problems or no signs at all. Annual eye examinations are critical for early detection. As a result, it employs fundus cameras to capture retinal images, but it is an impractical method for widespread screening due to its size and expense. As a result, smartphones are being used to create lightweight, and inexpensive retinal imaging systems that can perform automated DR detection and screening. Preprocessing is done first, including green channel conversion and CLAHE (Contrast Limited Adaptive Histogram Equalization). Furthermore, the segmentation process begins with WT (watershed transform) optic disc segmentation and Triplet half band filter bank abnormality segmentation (exudates, micro aneurysms, hemorrhages, and IRMA) (THFB). Haralick and ADTCWT (Anisotropic Dual Tree Complex Wavelet Transform) methods are then used to remove the various features. Life choice-based optimizer (LCBO) algorithm selects the optimal features. The selected features are then put into an ML classifier, which divides the severity levels into average, mild DR, moderate DR, extreme DR, and proliferative DR. The proposed work is simulated in a Python environment, and datasets such as APTOS-2019-Blindness-Detection and EyePacs are used to test the efficiency of the proposed scheme.
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