Analysis of framework networks for sign detection in deep learning models

Pavlo Pukach
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Abstract

This paper analyzes and compares modern deep learning models for the classification of MRI images of the knee joint. An analysis of modern deep computer vision architectures for feature extraction from MRI images is presented. This analysis was used to create applied architectures of machine learning models. These models are aimed at automating the process of diagnosing knee injuries in medical devices and systems. This work is devoted to different types of feature detection framework networks for machine learning architectures that perform magnetic resonance imaging (MRI) image classification of the knee. The resulting models were evaluated on the MRNet validation dataset, calculating the metrics (ROC-AUC), prediction accuracy, F1 score, and Cohen’s K-Kappa. The results of this work also show that Cohen's Kappa metric is important for evaluating models on the MRNet architecture because it provides a deeper understanding of the classification decisions of each model.
深度学习模型中符号检测的框架网络分析
本文分析和比较了用于膝关节MRI图像分类的现代深度学习模型。分析了用于MRI图像特征提取的现代深度计算机视觉体系结构。该分析用于创建机器学习模型的应用架构。这些模型旨在在医疗设备和系统中自动化诊断膝关节损伤的过程。这项工作致力于为执行膝关节磁共振成像(MRI)图像分类的机器学习架构提供不同类型的特征检测框架网络。结果模型在MRNet验证数据集上进行评估,计算指标(ROC-AUC)、预测精度、F1分数和Cohen’s K-Kappa。这项工作的结果还表明,Cohen的Kappa度量对于评估MRNet体系结构上的模型是重要的,因为它提供了对每个模型的分类决策的更深入的理解。
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