A Deep Learning-based 3D CNN for Automated COVID-19 Lung Lesions Segmentation from 3D Chest CT Scans

A. Kermi, Hadj Cheikh Djennelbaroud, M. T. Khadir
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Abstract

This paper presents an automated COVID-19 lung lesions segmentation method based on a deep three-dimensional convolutional neural network model which automatically detects and extracts multifocal, bilateral and peripheral lung lesions from chest 3D-CT scans. The proposed CNN model is based on a modified 11-layer U-net architecture and employs a loss function that combines Dice coefficient and Cross-Entropy. It has been tested and evaluated on Covid-19-20_v2 training dataset containing a total of 199 3D-CT scans of different subjects with COVID-19 lesions representing different sizes, shapes and locations in CT images. The obtained results have proven to be satisfactory and objective, as well as similar and close to ground truth data provided by medical experts. On these challenging CT data, the proposed CNN obtained average scores of 0.7639, 0.8129 and 0.9986 corresponding to Dice Similarity Coefficient, Sensitivity and Specificity metrics respectively.
基于深度学习的3D CNN从3D胸部CT扫描中自动分割COVID-19肺部病变
本文提出了一种基于深度三维卷积神经网络模型的新型冠状病毒肺炎(COVID-19)肺部病灶自动分割方法,该方法能够自动检测和提取胸部3D-CT扫描的多灶、双侧和周围肺病灶。提出的CNN模型基于改进的11层U-net架构,并采用结合Dice系数和Cross-Entropy的损失函数。在COVID-19 -20_v2训练数据集上进行了测试和评估,该数据集包含199个不同受试者的3D-CT扫描,CT图像中不同的COVID-19病变代表不同的大小,形状和位置。所获得的结果是令人满意和客观的,与医学专家提供的实际数据相似和接近。在这些具有挑战性的CT数据上,所提出的CNN在Dice Similarity Coefficient、Sensitivity和Specificity三个指标上的平均得分分别为0.7639、0.8129和0.9986。
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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