从CT图像中检测COVID-19, BiGAN和cyclegan学习的隐藏特征在多大程度上有效?比较研究。

IF 2.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Supercomputing Pub Date : 2023-01-01 DOI:10.1007/s11227-022-04775-y
Sima Sarv Ahrabi, Alireza Momenzadeh, Enzo Baccarelli, Michele Scarpiniti, Lorenzo Piazzo
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引用次数: 1

摘要

双向生成对抗网络(Bidirectional generative adversarial networks, BiGANs)和循环生成对抗网络(cyclic generative adversarial networks, cyclegan)是两种新兴的机器学习模型,到目前为止,它们被用作生成模型,即从目标概率分布中采样生成输出数据。然而,这些模型也配备了编码模块,经过弱监督训练,原则上可以用于从输入数据中提取隐藏特征。目前,如何将这些提取的特征有效地用于分类任务仍然是一个未开发的领域。因此,出于这一考虑,在本文中,我们开发并数值测试了一种新型推理引擎的性能,该引擎依赖于利用BiGAN和cyclegan学习的隐藏特征,用于在计算机断层扫描(CT)中从其他肺部疾病中检测COVID-19疾病。在这方面,本文的主要贡献是双重的。首先,我们开发了一种基于核密度估计(KDE)的推理方法,该方法在训练阶段利用BiGANs和cyclegan提取的隐藏特征来估计COVID-19患者CT扫描的(先验未知的)概率密度函数(PDF),然后在推理阶段将其作为目标COVID-PDF用于检测COVID-19疾病。作为第二个主要贡献,我们在数值上评估和比较了实现的BiGAN和CycleGAN模型与一些最先进的方法的分类精度,这些方法依赖于卷积自编码器(CAEs)的无监督训练来获得特征提取。通过考虑不同训练损失函数和距离度量的谱来进行性能比较。所提出的基于cyclegan (resp.)的分类精度。,基于bigan的)模型的性能比考虑的基准基于cae的模型的相应模型高出约16% (p。, 14%)。
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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How much BiGAN and CycleGAN-learned hidden features are effective for COVID-19 detection from CT images? A comparative study.

Bidirectional generative adversarial networks (BiGANs) and cycle generative adversarial networks (CycleGANs) are two emerging machine learning models that, up to now, have been used as generative models, i.e., to generate output data sampled from a target probability distribution. However, these models are also equipped with encoding modules, which, after weakly supervised training, could be, in principle, exploited for the extraction of hidden features from the input data. At the present time, how these extracted features could be effectively exploited for classification tasks is still an unexplored field. Hence, motivated by this consideration, in this paper, we develop and numerically test the performance of a novel inference engine that relies on the exploitation of BiGAN and CycleGAN-learned hidden features for the detection of COVID-19 disease from other lung diseases in computer tomography (CT) scans. In this respect, the main contributions of the paper are twofold. First, we develop a kernel density estimation (KDE)-based inference method, which, in the training phase, leverages the hidden features extracted by BiGANs and CycleGANs for estimating the (a priori unknown) probability density function (PDF) of the CT scans of COVID-19 patients and, then, in the inference phase, uses it as a target COVID-PDF for the detection of COVID diseases. As a second major contribution, we numerically evaluate and compare the classification accuracies of the implemented BiGAN and CycleGAN models against the ones of some state-of-the-art methods, which rely on the unsupervised training of convolutional autoencoders (CAEs) for attaining feature extraction. The performance comparisons are carried out by considering a spectrum of different training loss functions and distance metrics. The obtained classification accuracies of the proposed CycleGAN-based (resp., BiGAN-based) models outperform the corresponding ones of the considered benchmark CAE-based models of about 16% (resp., 14%).

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来源期刊
Journal of Supercomputing
Journal of Supercomputing 工程技术-工程:电子与电气
CiteScore
6.30
自引率
12.10%
发文量
734
审稿时长
13 months
期刊介绍: The Journal of Supercomputing publishes papers on the technology, architecture and systems, algorithms, languages and programs, performance measures and methods, and applications of all aspects of Supercomputing. Tutorial and survey papers are intended for workers and students in the fields associated with and employing advanced computer systems. The journal also publishes letters to the editor, especially in areas relating to policy, succinct statements of paradoxes, intuitively puzzling results, partial results and real needs. Published theoretical and practical papers are advanced, in-depth treatments describing new developments and new ideas. Each includes an introduction summarizing prior, directly pertinent work that is useful for the reader to understand, in order to appreciate the advances being described.
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Topic sentiment analysis based on deep neural network using document embedding technique. A Fechner multiscale local descriptor for face recognition. Data quality model for assessing public COVID-19 big datasets. BTDA: Two-factor dynamic identity authentication scheme for data trading based on alliance chain. Driving behavior analysis and classification by vehicle OBD data using machine learning.
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