Tăbăcaru Gigi, Moldovanu Simona, Răducan Elena, Barbu Marian
Department of Automatic Control and Electrical Engineering, Faculty of Automation, Computers, Electrical, Engineering and Electronics, "Dunarea de Jos" University of Galati, 800008 Galați, Romania.
Computer Science and Information Technology, Faculty of Automation, Computers, Electrical Engineering and Electronics, "Dunarea de Jos" University of Galati, 800210 Galati, Romania.
J Imaging. 2023 Dec 28;10(1):8. doi: 10.3390/jimaging10010008.
Ensemble learning is a process that belongs to the artificial intelligence (AI) field. It helps to choose a robust machine learning (ML) model, usually used for data classification. AI has a large connection with image processing and feature classification, and it can also be successfully applied to analyzing fundus eye images. Diabetic retinopathy (DR) is a disease that can cause vision loss and blindness, which, from an imaging point of view, can be shown when screening the eyes. Image processing tools can analyze and extract the features from fundus eye images, and these corroborate with ML classifiers that can perform their classification among different disease classes. The outcomes integrated into automated diagnostic systems can be a real success for physicians and patients. In this study, in the form image processing area, the manipulation of the contrast with the gamma correction parameter was applied because DR affects the blood vessels, and the structure of the eyes becomes disorderly. Therefore, the analysis of the texture with two types of entropies was necessary. Shannon and fuzzy entropies and contrast manipulation led to ten original features used in the classification process. The machine learning library PyCaret performs complex tasks, and the empirical process shows that of the fifteen classifiers, the gradient boosting classifier (GBC) provides the best results. Indeed, the proposed model can classify the DR degrees as normal or severe, achieving an accuracy of 0.929, an F1 score of 0.902, and an area under the curve (AUC) of 0.941. The validation of the selected model with a bootstrap statistical technique was performed. The novelty of the study consists of the extraction of features from preprocessed fundus eye images, their classification, and the manipulation of the contrast in a controlled way.
集成学习是一个属于人工智能(AI)领域的过程。它有助于选择一个强大的机器学习(ML)模型,该模型通常用于数据分类。AI与图像处理和特征分类有很大关联,并且它也能成功应用于眼底图像分析。糖尿病视网膜病变(DR)是一种可导致视力丧失和失明的疾病,从成像角度来看,在眼部筛查时可以显示出来。图像处理工具可以分析并从眼底图像中提取特征,这些特征与能够在不同疾病类别中进行分类的ML分类器相互印证。整合到自动化诊断系统中的结果对医生和患者来说可能是真正的成功。在本研究中,在图像处理领域,由于DR会影响血管且眼睛结构变得紊乱,所以应用了通过伽马校正参数来操纵对比度的方法。因此,有必要用两种熵来分析纹理。香农熵和模糊熵以及对比度操纵产生了在分类过程中使用的十个原始特征。机器学习库PyCaret执行复杂任务,实证过程表明,在十五个分类器中,梯度提升分类器(GBC)提供了最佳结果。事实上,所提出的模型可以将DR程度分类为正常或严重,准确率达到0.929,F1分数为0.902,曲线下面积(AUC)为0.941。使用自举统计技术对所选模型进行了验证。该研究的新颖之处在于从预处理的眼底图像中提取特征、对其进行分类以及以可控方式操纵对比度。