Retinopathy of Prematurity (ROP) is a potentially blinding eye disorder because of damage to the eye's retina which can affect babies born prematurely. Screening of ROP is essential for early detection and treatment. This is a laborious and manual process which requires trained physician performing dilated ophthalmological examination which can be subjective resulting in lower diagnosis success for clinically significant disease. Automated diagnostic methods can assist ophthalmologists increase diagnosis accuracy using deep learning. Several research groups have highlighted various approaches. This paper proposes the use of new novel fundus preprocessing methods using pretrained transfer learning frameworks to create hybrid models to give higher diagnosis accuracy. The evaluations show that these novel methods in comparison to traditional imaging processing contribute to higher accuracy in classifying Plus disease, Stages of ROP and Zones. We achieve accuracy of 97.65% for Plus disease, 89.44% for Stage, 90.24% for Zones
翻译:由于对眼睛视网膜的损伤会影响早产婴儿,过早出生婴儿的视网膜会受到损伤,对前天病的视网膜病是一种可能失明的眼病。对前天病进行筛查对早期发现和治疗至关重要。这是一个艰巨和人工的过程,需要经过培训的医生进行扩大眼科检查,这种检查具有主观性,导致临床重大疾病的诊断成功率较低。自动化诊断方法可以帮助眼科医生通过深层学习提高诊断准确性。一些研究团体强调了各种办法。本文提议使用新的新小基金预处理方法,使用预先培训的转移学习框架来创建混合模型,以提供更高的诊断准确性。评价表明,这些与传统成像处理相比的新方法有助于提高补充性疾病、转机和Z阶段分类的准确性。我们实现了补充性疾病的准确性97.65%,阶段为89.44%,地区为90.24%。