Gen Li’s research while affiliated with Zhongyuan University of Technology and other places

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Publications (5)


A simple non-trivial comparative classification scenario
The red sample is located in a dense blue region, despite presenting high conformity with the sparse green triangular pattern. (a) The input training data provided to all algorithms is presented in the figure. The red sample is provided only for the testing phase. (b-i) Various traditional machine learning techniques. All failed to predict the red testing sample into the green class. (j) The high-level classification technique is the only one to correctly assign the red testing sample to the green class.
Overview of the modified high-level classification technique
(a) Image feature extraction phase maps images to points in n-dimensional space. (b) The training phase constructs the network for each of the classes; normal and COVID-19. (c) The testing phase incorporates the unlabeled sample to be evaluated by its impact on a defined network measure, predicting its membership to the network with the least variation of the measures under consideration.
Chest X-ray images of healthy and infected COVID-19 lungs
(a-d) Healthy chest X-ray images. (e-h) COVID-19 chest X-ray images. The images are taken from the COVID-19 Radiography Database [37].
Four normal X-ray images and their corresponding binary images
The original gray-level images are leftmost. Each binary image, from left to right, is generated with threshold values 100, 110, 120, 130, 140, and 150, respectively.
Four COVID-19 X-ray images and their corresponding binary images
The original gray-level images are leftmost. Each binary image, from left to right, is generated with threshold values 100, 110, 120, 130, 140, and 150, respectively.

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Complex network-based classification of radiographic images for COVID-19 diagnosis
  • Article
  • Full-text available

September 2023

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68 Reads

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2 Citations

Weiguang Liu

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Jianglong Yan

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In this work, we present a network-based technique for chest X-ray image classification to help the diagnosis and prognosis of patients with COVID-19. From visual inspection, we perceive that healthy and COVID-19 chest radiographic images present different levels of geometric complexity. Therefore, we apply fractal dimension and quadtree as feature extractors to characterize such differences. Moreover, real-world datasets often present complex patterns, which are hardly handled by only the physical features of the data (such as similarity, distance, or distribution). This issue is addressed by complex networks, which are suitable tools for characterizing data patterns and capturing spatial, topological, and functional relationships in data. Specifically, we propose a new approach combining complexity measures and complex networks to provide a modified high-level classification technique to be applied to COVID-19 chest radiographic image classification. The computational results on the Kaggle COVID-19 Radiography Database show that the proposed method can obtain high classification accuracy on X-ray images, being competitive with state-of-the-art classification techniques. Lastly, a set of network measures is evaluated according to their potential in distinguishing the network classes, which resulted in the choice of communicability measure. We expect that the present work will make significant contributions to machine learning at the semantic level and to combat COVID-19.

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Characterizing data patterns with core-periphery network modeling

November 2022

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25 Reads

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1 Citation

Journal of Computational Science

Traditional classification techniques usually classify data samples according to the physical organization, such as similarity, distance, and distribution, of the data features, which lack a general and explicit mechanism to represent data classes with semantic data patterns. Therefore, the incorporation of data pattern formation in classification is still a challenge problem. Meanwhile, data classification techniques can only work well when data features present high level of similarity in the feature space within each class. Such a hypothesis is not always satisfied, since, in real-world applications, we frequently encounter the following situation: On one hand, the data samples of some classes (usually representing the normal cases) present well defined patterns; on the other hand, the data features of other classes (usually representing abnormal classes) present large variance, i.e., low similarity within each class. Such a situation makes data classification a difficult task. In this paper, we present a novel solution to deal with the above mentioned problems based on the mesostructure of a complex network, built from the original data set. Specifically, we construct a core–periphery network from the training data set in such way that the normal class is represented by the core sub-network and the abnormal class is characterized by the peripheral sub-network. The testing data sample is classified to the core class if it gets a high coreness value; otherwise, it is classified to the periphery class. The proposed method is tested on an artificial data set and then applied to classify x-ray images for COVID-19 diagnosis, which presents high classification precision. In this way, we introduce a novel method to describe data pattern of the data “without pattern” through a network approach, contributing to the general solution of classification.


Analysis of Radiographic Images of Patients with COVID-19 Using Fractal Dimension and Complex Network-Based High-Level Classification

January 2022

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18 Reads

Studies in Computational Intelligence

An important task in combating COVID-19 involves the quick and correct diagnosis of patients, which is not only critical to the patient’s prognosis, but can also help to optimize the configuration of hospital resources. This work aims to classify chest radiographic images to help the diagnosis and prognosis of patients with COVID-19. In comparison to images of healthy lungs, chest images infected by COVID-19 present geometrical deformations, like the formation of filaments. Therefore, fractal dimension is applied here to characterize the levels of complexity of COVID-19 images. Moreover, real data often contains complex patterns beyond physical features. Complex networks are suitable tools for characterizing data patterns due to their ability to capture the spatial, topological and functional relationship between the data. Therefore, a complex network-based high-level data classification technique, capable of capturing data patterns, is modified and applied to chest radiographic image classification. Experimental results show that the proposed method can obtain high classification precision on X-ray images. Still in this work, a comparative study between the proposed method and the state-of-the-art classification techniques is also carried out. The results show that the performance of the proposed method is competitive. We hope that the present work generates relevant contributions to combat COVID-19.


Classification of Dispersed Patterns of Radiographic Images with COVID-19 by Core-Periphery Network Modeling

January 2022

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10 Reads

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1 Citation

Studies in Computational Intelligence

In real world data classification tasks, we always face the situations where the data samples of the normal cases present a well defined pattern and the features of abnormal data samples vary from one to another, i.e., do not show a regular pattern. Up to now, the general data classification hypothesis requires the data features within each class to present a certain level of similarity. Therefore, such real situations violate the classic classification condition and make it a hard task. In this paper, we present a novel solution for this kind of problems through a network approach. Specifically, we construct a core-periphery network from the training data set in such way that core node set is formed by the normal data samples and peripheral node set contains the abnormal samples of the training data set. The classification is made by checking the coreness of the testing data samples. The proposed method is applied to classify radiographic image for COVID-19 diagnosis. Computer simulations show promising results of the method. The main contribution is to introduce a general scheme to characterize pattern formation of the data “without pattern”.


Citations (3)


... The COVID-19 Radiography Database is particularly comprehensive, including images for COVID-19, normal, and viralpneumonia cases [46]. Its regular updates with new X-ray images ensure that it remains relevant and beneficial for ongoingresearch [47]. ...

Reference:

Enhancing Medical Image Analysis with CNN and MobileNet: A Particle Swarm Optimization Approach ARTICLE INFO ABSTRACT
Complex network-based classification of radiographic images for COVID-19 diagnosis

... It is demonstrated in the transmission of rumors or information in social networks, [11,12] in the organization of the human connection in neurodevelopment, [13,14] in the transportation networks of airline flights, [15] and in the characterizing data patterns. [16] The core of the network is often regarded to be comprised of the densely inter-connected high-degree nodes, which impact adaptability, flexibility, and controllability. [17,18] Lots of profiling methods have been proposed based on optimizing a suitable fitness function using the coreness value to define the density of links inside the core, [2] referring to a quality index with respect to the size of the expected core and the fuzziness of the boundary, [19] or applying Markov chains to describe random walks to index the coreness of individual nodes. ...

Characterizing data patterns with core-periphery network modeling
  • Citing Article
  • November 2022

Journal of Computational Science

... Sentiment analysis is a technique that is executed automatically to obtain personal information to understand sentiment from text data sources [14]. Sentiment analysis is a technique to extract text data to obtain information about positive, neutral, or negative sentiments [15]. Sentiment analysis also shows sadness, joy, or anger [16]. ...

Sentiment Infomation based Model For Chinese text Sentiment Analysis
  • Citing Conference Paper
  • November 2020