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Medical image classification based on artificial intelligence approaches: A practical study on normal and abnormal confocal corneal images

机译:基于人工智能方法的医学图像分类:正常和异常共焦角膜图像的实践研究

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Corneal images can be acquired using confocal microscopes which provide detailed views of the different layers inside a human cornea. Some corneal problems and diseases can occur in one or more of the main corneal layers: the epithelium, stroma and endothelium. Consequently, for automatically extracting clinical information associated with corneal diseases, identifying abnormality or evaluating the normal cornea, it is important to be able to automatically recognise these layers reliably. Artificial intelligence (AI) approaches can provide improved accuracy over the conventional processing techniques and save a useful amount of time over the manual analysis time required by clinical experts. Artificial neural networks (ANNs), adaptive neuro fuzzy inference systems (ANFIS) and a committee machine (CM) have been investigated and tested to improve the recognition accuracy of the main corneal layers and identify abnormality in these layers. The performance of the CM, formed from ANN and ANFIS, achieves an accuracy of 100% for some classes in the processed data sets. Three normal corneal data sets and seven abnormal corneal images associated with diseases in the main corneal layers have been investigated with the proposed system. Statistical analysis for these data sets is performed to track any change in the processed images. This system is able to pre-process (quality enhancement, noise removal), classify corneal images, identify abnormalities in the analysed data sets and visualise corneal stroma images as well as each individual keratocyte cell in a 3D volume for further clinical analysis. (C) 2015 Elsevier B.V. All rights reserved.
机译:可以使用共聚焦显微镜获取角膜图像,该共聚焦显微镜可提供人角膜内部不同层的详细视图。在一个或多个主要角膜层中可能会发生一些角膜问题和疾病:上皮,基质和内皮。因此,为了自动提取与角膜疾病有关的临床信息,识别异常或评估正常角膜,重要的是能够可靠地自动识别这些层。人工智能(AI)方法可以提供比传统处理技术更高的准确性,并且可以节省临床专家所需的手动分析时间所需要的时间。已经对人工神经网络(ANN),自适应神经模糊推理系统(ANFIS)和委员会机器(CM)进行了测试和测试,以提高对角膜主要层的识别准确性并识别这些层中的异常。由ANN和ANFIS组成的CM的性能对于已处理数据集中的某些类别达到100%的精度。使用该系统研究了三个正常角膜数据集和七个与主要角膜层疾病相关的异常角膜图像。对这些数据集进行统计分析以跟踪已处理图像中的任何变化。该系统能够进行预处理(质量增强,消除噪音),对角膜图像进行分类,识别分析数据集中的异常并以3D体积可视化角膜基质图像以及每个单个角膜细胞,以进行进一步的临床分析。 (C)2015 Elsevier B.V.保留所有权利。

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