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Computer aided decision support system for mitral valve diagnosis and classification using depthwise separable convolution neural network

机译:计算机辅助决策支持系统,用于二尖瓣诊断和分类使用深度可分离卷积神经网络

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The significance of mitral valve (MV) treatment is increasing recently because of an aging population. The computer vision-based acquisition and quantification of the valve anatomy becomes helpful for surgical and intercessional planning. The right option of common treatment and implantation is pertinent for the most favorable results. Several studies reported that the decision support system (DSS) could offer decisions based on the virtual involvement planning and prediction models. Generally, the segmentation and classification of MV from the computed tomography (CT) images are highly complicated, owing to the variations in appearance and visibility. In this paper, an efficient automated DSS model is introduced using watershed segmentation with Xception model for the MV classification. It incorporates four modules: bilateral filtering (BF) based preprocessing, watershed segmentation, Xception based feature extraction and random forest (RF) classification. A watershed algorithm with channel separation is used to segment the MV images. The Xception model with random forest (RF) model is utilized for training and classifying images. A detailed simulation is performed on the CT images collected from hospitals. The presented WS-X model is tested and a comparative study is made with the relevant works to highlight its superior nature. The obtained results stressed out that the WS-X model is an appropriate model for the MV problem under various aspects.
机译:二尖瓣(MV)治疗的意义最近因人口老化而增加。基于计算机视觉的阀门解剖学的获取和量化对于外科手术和中央部位规划有助于。常见治疗和植入的正确选择是最有利的结果。几项研究报告说,决策支持系统(DSS)可以根据虚拟参与计划和预测模型提供决策。通常,由于外观和可见性的变化,从计算机断层扫描(CT)图像中MV的分割和分类非常复杂。在本文中,使用具有Xcepion模型的流域分割来引入有效的自动化DSS模型,用于MV分类。它采用了四个模块:基于双侧滤波(BF)的预处理,流域分割,基于七韵的特征提取和随机林(RF)分类。使用信道分离的流域算法用于对MV图像进行分割。具有随机森林(RF)模型的Xcepion模型用于培训和分类图像。在从医院收集的CT图像上执行详细的模拟。呈现的WS-X模型经过测试,并采用相关工程进行比较研究,以突出其优越性。所获得的结果强调,WS-X模型是各个方面的MV问题的适当模型。

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