Deep Learning Models and Fusion Classification Technique for Accurate Diagnosis of Retinopathy of Prematurity in Preterm Newborn

IF 1.2 Q3 MULTIDISCIPLINARY SCIENCES
Nazar Salih, Mohamed Ksantini, Nebras Hussein, Donia Ben Halima, Ali Abdul Razzaq, Sohaib Ahmed
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引用次数: 0

Abstract

Retinopathy of prematurity (ROP) is the most common cause of irreversible childhood blindness, and its diagnosis and treatment rely on subjective grading based on retinal vascular features. However, this method is laborious and error-prone, so automated approaches are desirable for greater precision and productivity. This study aims to develop a deep learning-based strategy to accurately diagnose the plus disease of ROP in preterm newborns using transfer learning models and a fusion classification technique. The Private Clinic Al-Amal Eye Center in Baghdad, Iraq, provided us with 2776 ROP screening fundus images between 2015 and 2020, and the images were used to train three deep convolutional neural network models (ResNet50, Densenet161, and EfficientNetB5). A fusion classifier approach was used to merge the three models for a thorough and precise diagnosis. The three models have relative accuracy rates of 69.78%, 80.57 %, and 81.29 % in their respective classifications. The overall accuracy, however, increased to 90.28 percent when the fusion classifier was employed. This shows that the proposed method helps identify ROP in premature infants. The study's findings imply the proposed method has the potential to significantly enhance the precision and speed with which ROP is diagnosed, which in turn could lead to earlier detection and treatment of the illness and a decreased likelihood of childhood blindness.
早产儿视网膜病变准确诊断的深度学习模型与融合分类技术
早产儿视网膜病变(ROP)是儿童不可逆失明的最常见原因,其诊断和治疗依赖于基于视网膜血管特征的主观分级。然而,这种方法很费力且容易出错,因此自动化的方法更适合于更高的精度和生产率。本研究旨在开发一种基于深度学习的策略,利用迁移学习模型和融合分类技术来准确诊断早产儿ROP的附加疾病。伊拉克巴格达私人诊所Al-Amal眼科中心在2015 - 2020年间为我们提供了2776张ROP筛查眼底图像,这些图像用于训练三个深度卷积神经网络模型(ResNet50、Densenet161和EfficientNetB5)。一种融合分类器的方法被用来合并三个模型,以进行彻底和精确的诊断。三种模型在分类中的相对准确率分别为69.78%、80.57%和81.29%。然而,当使用融合分类器时,总体准确率增加到90.28%。这表明所提出的方法有助于早产儿ROP的识别。这项研究的结果表明,该方法有可能显著提高ROP诊断的准确性和速度,从而可以更早地发现和治疗这种疾病,并降低儿童失明的可能性。
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来源期刊
Baghdad Science Journal
Baghdad Science Journal MULTIDISCIPLINARY SCIENCES-
CiteScore
2.00
自引率
50.00%
发文量
102
审稿时长
24 weeks
期刊介绍: The journal publishes academic and applied papers dealing with recent topics and scientific concepts. Papers considered for publication in biology, chemistry, computer sciences, physics, and mathematics. Accepted papers will be freely downloaded by professors, researchers, instructors, students, and interested workers. ( Open Access) Published Papers are registered and indexed in the universal libraries.
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