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A method of progression detection for glaucoma using K-means and the GLCM algorithm toward smart medical prediction

机译:使用K-Meance和GLCM算法对智能医学预测的Glaucoma的进展检测方法

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Diabetes mellitus is one of the leading medical issues, causing national financial weight and low personal satisfaction. People with diabetes have an extended possibility of glaucoma. The pain caused by glaucoma is irreversible. This can occur when abnormal vein growth from diabetic retinopathy (DR), a significant consequence of diabetic illness, hinders the characteristic use of the eye-impacting the retina of diabetic individuals. A period of DR can prompt permanent vision impairment. The early discovery and observation of DR are critical to forestalling it or for effective treatment, yet the issue related to early identification of DR is minor changes on the retinal fundus picture: it incorporates hemorrhages, exudates, red sores, cotton fleece spots, and drusen. Early location or screening of changes on the retinal picture is exceptionally testing and tedious for ophthalmologists because the size and shading changes are at first coordinated with neighborhood veins in the retinal picture. Therefore, glaucoma is one of the most unsafe visual maladies, continuing to influence and burden a considerable portion of our populace. Accordingly, it is essential to distinguish glaucoma early. The proposed frameworks have focused on the cup-to-disc ratio for the identification of glaucoma, which might be the best methodology for building a proficient, vigorous, and precise computerized framework for glaucoma diagnosis. This strategy advocates the use of a half-and-half methodology of manual elements with profound learning. It can improve the precision of glaucoma conclusion using robotized systems.
机译:糖尿病是主要的医疗问题之一,导致国家的财务重量和人身满意度低。患有糖尿病的人具有延长青光眼的可能性。青光眼引起的疼痛是不可逆转的。当糖尿病视网膜病变(DR)的异常静脉生长,糖尿病疾病的显着后果时,这可能会发生这种情况,阻碍了眼睛撞击糖尿病个体视网膜的特征使用。博士的一段时间可以提示永久视力损伤。 DR的早期发现和观察对于预测它或有效治疗至关重要,但与早期识别DR相关的问题是视网膜上的微小变化:它包含出血,渗出物,红色疮,棉羊毛斑,棉花羊毛斑和德鲁森。视网膜图片的早期位置或筛选的变化是针对眼科医生的异常测试和乏味,因为尺寸和阴影变化首先与视网膜图像中的邻脉静脉协调。因此,青光眼是最不安全的视觉疾病之一,继续影响和负担我们的大量群体。因此,对于早期区分青光眼至关重要。所提出的框架专注于鉴定青光眼的杯盘比率,这可能是建立熟练,蓬勃,精确的计算机化诊断的最佳方法。该战略主张利用具有深远学习的手工元素的半秋方法。它可以提高使用Robotized Systems的青光眼结论的精度。

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