基于CRISP-DM方法和CNN分类的心脏MRI医疗决策

Houneida Sakly, Mohamed Bjaoui, Mourad Said, N. Kraiem, M. Bouhlel
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摘要

在本研究中,将CRISP-DM技术与深度卷积神经网络(CNN)相结合用于医疗决策分类,对心肌受试者进行评估,并从心脏磁共振(CMR)图像中估计左心室(LV)体积。医学预后受测量的影响很大。将该模型的结果与使用决策树学习方法构建的深度CNN的结果进行了比较。研究结果表明,k最近邻分类器(k=1,准确率为88%)和带有决策树的深度CNN架构对主题的分类准确率很高(62%)。采用主成分分析(PCA)方法对圆度、质心(px)、粗糙度和偏心等重要特征进行分类和优化。从训练网络中获得的估计特征与使用心肌周围灰度像素计算射血分数具有很强的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical decision-Making based on Combined CRISP-DM Approach and CNN Classification for Cardiac MRI
In this study, a combined CRISP-DM technique with a deep convolutional neural network (CNN) for medical decision classification is used to perform evaluating of myocardial subjects as well as left ventricular (LV) volume estimate from cardiac magnetic resonance (CMR) images. The medical prognosis is strongly influenced by the measurement. The results of the proposed model were compared with those of a deep CNN built using the decision tree learning method. The findings demonstrate that the K-nearest neighbor classifier (k=1 with 88% accuracy) and deep CNN architecture with a decision tree classified topics with good accuracy (62 percent). The principal component analysis (PCA) approach was used to classify and optimize the important characteristics of roundness, centroid (px), roughness, and eccentricity. The estimated features acquired from the trained network had a strong correlation with the computation of the ejection fraction using grey-level pixels around the myocardium.
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