Highlights<'/> A new expert system based on fuzzy logic and image processing algorithms for early glaucoma diagnosis
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A new expert system based on fuzzy logic and image processing algorithms for early glaucoma diagnosis

机译:基于模糊逻辑和图像处理算法的青光眼早期诊断专家系统

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HighlightsA novel system based on fuzzy logic for early has hereupon been developped for early glaucoma diagnosis.The present method not only analyses the usual instrument-based ((CDR, ISNT rule, eyes’ asymmetry),but also examines for the first time the risk factors in glaucoma detection such as age, family ancestry and race.The proposed system has achieved an accuracy of 96.15%, a sensitivity of 97.8% and a specificity of 94.8% reaching an improvement of 1–9% over earlier methods.The results were analyzed and compares with the most recent similar works.AbstractDecision-making systems based on images have increasingly become essential nowadays mostly in the medical field. Indeed, the image has become one of the most fundamental tools for both clinical research and sicknesses’ diagnosis. In this context, we treat glaucoma disease which can affect the optic nerve head (ONH), thus causing its destruction and leading to an irreversible vision loss. This paper presents a new glaucoma Fuzzy Expert System for early glaucoma diagnosis. Original ONH images are first pre-treated using appropriate filters to remove the noise. Canny detector algorithm is then used to detect the contours. Main parameters are then extracted, after having identified elliptical forms of both optic disc and excavation. This operation is performed by using Randomized Hough Transform. Finally, a classification algorithm, based on fuzzy logic approaches, is proposed to determine patients’ conditions. Our system is advantageous as far as it takes into consideration both instrumental parameters and risk factors (age, race, family history…) which make an important contribution to the valuable identification of cases suspected to have glaucoma.The proposed system is tested on a real dataset of ophthalmologic images of both normal and glaucomatous cases. Compared with other existing systems, the experimental results show the superiority of the proposed methods. The percentage of good predictions is more than 96%, reaching an improvement of 1–9% over earlier methods.
机译: 突出显示 目前已开发出一种基于模糊逻辑的新型系统,用于早期青光眼的诊断。 本方法不仅分析了通常的基于工具的(( CDR,ISNT规则,眼睛的不对称性),而且还首次检查了青光眼检测的风险因素,例如年龄,家庭血统和种族。 拟议的系统已达到96.15%的精度,即重复性为97.8%,特异性为94.8%,与以前的方法相比提高了1–9%。 分析了结果并将其与最新的类似作品进行比较。 摘要 基于决策系统如今,在医学领域,图像上的图像已变得越来越重要。实际上,图像已经成为临床研究和疾病诊断的最基本工具之一。在这种情况下,我们治疗青光眼疾病,它会影响视神经头(ONH),从而导致其破坏并导致不可逆的视力丧失。本文提出了一种用于青光眼早期诊断的新型青光眼模糊专家系统。首先使用适当的滤镜对原始ONH图像进行预处理,以去除噪声。然后,使用Canny检测器算法检测轮廓。在确定了视盘和挖掘的椭圆形之后,然后提取主要参数。通过使用随机霍夫变换执行此操作。最后,提出了一种基于模糊逻辑方法的分类算法来确定患者的病情。我们的系统在考虑仪器参数和危险因素(年龄,种族,家族病史...)方面具有优势,这对有价值的可疑青光眼病例鉴定具有重要意义。 建议的系统在正常和青光眼病例的眼科影像真实数据集上进行了测试。与其他现有系统相比,实验结果表明了所提方法的优越性。良好预测的百分比超过96%,比以前的方法提高了1–9%。

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