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辅助性病变强化系统:一种用于眼底图像阅片者的辅助系统。

Assistive lesion-emphasis system: an assistive system for fundus image readers.

作者信息

Rangrej Samrudhdhi B, Sivaswamy Jayanthi

机构信息

International Institute of Information Technology, Hyderabad, India.

出版信息

J Med Imaging (Bellingham). 2017 Apr;4(2):024503. doi: 10.1117/1.JMI.4.2.024503. Epub 2017 May 24.

Abstract

Computer-assisted diagnostic (CAD) tools are of interest as they enable efficient decision-making in clinics and the screening of diseases. The traditional approach to CAD algorithm design focuses on the automated detection of abnormalities independent of the end-user, who can be an image reader or an expert. We propose a reader-centric system design wherein a reader's attention is drawn to abnormal regions in a least-obtrusive yet effective manner, using saliency-based emphasis of abnormalities and without altering the appearance of the background tissues. We present an assistive lesion-emphasis system (ALES) based on the above idea, for fundus image-based diabetic retinopathy diagnosis. Lesion-saliency is learnt using a convolutional neural network (CNN), inspired by the saliency model of Itti and Koch. The CNN is used to fine-tune standard low-level filters and learn high-level filters for deriving a lesion-saliency map, which is then used to perform lesion-emphasis via a spatially variant version of gamma correction. The proposed system has been evaluated on public datasets and benchmarked against other saliency models. It was found to outperform other saliency models by 6% to 30% and boost the contrast-to-noise ratio of lesions by more than 30%. Results of a perceptual study also underscore the effectiveness and, hence, the potential of ALES as an assistive tool for readers.

摘要

计算机辅助诊断(CAD)工具备受关注,因为它们能够在临床中实现高效决策并进行疾病筛查。传统的CAD算法设计方法侧重于独立于最终用户(可以是图像读取者或专家)自动检测异常情况。我们提出了一种以读者为中心的系统设计,其中以一种最不显眼但却有效的方式将读者的注意力吸引到异常区域,利用基于显著性的异常强调,且不改变背景组织的外观。我们基于上述理念提出了一种辅助病变强调系统(ALES),用于基于眼底图像的糖尿病视网膜病变诊断。受Itti和Koch的显著性模型启发,使用卷积神经网络(CNN)来学习病变显著性。该CNN用于微调标准的低级滤波器并学习高级滤波器,以得出病变显著性图,然后通过空间可变的伽马校正版本来执行病变强调。所提出的系统已在公共数据集上进行了评估,并与其他显著性模型进行了基准测试。结果发现,它比其他显著性模型性能高出6%至30%,并将病变的对比度噪声比提高了30%以上。一项感知研究的结果也强调了ALES作为读者辅助工具的有效性及其潜力。

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