DeepMSWeb: A Web-Based Decision Support System via Deep Learning for Automatic Detection of MS Lesions

M. Yildirim, E. Dandıl
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引用次数: 2

Abstract

Multiple Sclerosis (MS) is a common neurological disorder in recent years. The diagnosis process of the disease starts with the accurate and precise detection of lesions from MR images. In addition, important achievements are achieved with computer aided decision support systems, which are used as an auxiliary secondary tool in the detection of MS. In this study, we present a web-based decision support system (DeepMSWeb) developed via deep learning for the detection of MS lesions on a publicly-available dataset. Mask R-CNN architecture, one of the deep learning models, is used in the infrastructure of DeepMSWeb, and the developed web application has a flexible and user-friendly interface. In addition, experimental studies are carried out with DeepMSWeb on the dataset consisting of MR images for the detection of MS lesions, and the detection accuracy of the application is supported by similarity measurement metrics. Radiologists who have experienced DeepMsWeb are confirmed that DeepMSWeb can be used as a decision support system for the detection of MS lesions. In addition, it is evaluated that DeepMs Web can be used in different screen sizes, is easy to use and is a fast as decision support tool.
DeepMSWeb:基于深度学习的MS病变自动检测决策支持系统
多发性硬化症(MS)是近年来常见的神经系统疾病。该疾病的诊断过程始于从MR图像中准确和精确地检测病变。此外,计算机辅助决策支持系统也取得了重要成就,该系统被用作MS检测的辅助辅助工具。在本研究中,我们提出了一个基于网络的决策支持系统(DeepMSWeb),该系统通过深度学习开发,用于在公开可用的数据集上检测MS病变。DeepMSWeb的基础架构中使用了深度学习模型之一的Mask R-CNN架构,开发的web应用具有灵活的用户友好界面。此外,在由MR图像组成的数据集上,利用DeepMSWeb进行了MS病变检测的实验研究,并通过相似性度量指标来支持应用程序的检测精度。体验过DeepMsWeb的放射科医生证实,DeepMsWeb可以作为MS病变检测的决策支持系统。此外,据评估,DeepMs Web可以在不同的屏幕尺寸上使用,易于使用,并且是一个快速的决策支持工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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