@incollection{arraut_quantum_2022, address = {Cham}, title = {A {Quantum} {Field} {Formulation} for a {Pandemic} {Propagation}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_6}, abstract = {In this chapter, a mathematical model explaining generically the propagation of a pandemic is proposed, helping in this way to identify the fundamental parameters related to the outbreak in general. Three free parameters for the pandemic are identified, which can be finally reduced to only two independent parameters. The model is inspired in the concept of spontaneous symmetry breaking, used normally in quantum field theory, and it provides the possibility of analyzing the complex data of the pandemic in a compact way. Data from 12 different countries are considered and the results presented. The application of nonlinear quantum physics equations to model epidemiologic time series is an innovative and promising approach.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Arraut, Ivan and Marques, João Alexandre Lobo and Fong, Simon James and Li, Gloria and Gois, Francisco Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_6}, keywords = {COVID-19, Mathematical modeling, Nonlinear analysis, Quantum field theory}, pages = {141--158}, } @incollection{fong_analysis_2022, address = {Cham}, title = {Analysis of the {COVID19} {Pandemic} {Behaviour} {Based} on the {Compartmental} {SEAIRD} and {Adaptive} {SVEAIRD} {Epidemiologic} {Models}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_2}, abstract = {A significant number of people infected by COVID19 do not get sick immediately but become carriers of the disease. These patients might have a certain incubation period. However, the classical compartmental model, SEIR, was not originally designed for COVID19. We used the simple, commonly used SEIR model to retrospectively analyse the initial pandemic data from Singapore. Here, the SEIR model was combined with the actual published Singapore pandemic data, and the key parameters were determined by maximizing the nonlinear goodness of fit R2 and minimizing the root mean square error. These parameters served for the fast and directional convergence of the parameters of an improved model. To cover the quarantine and asymptomatic variables, the existing SEIR model was extended to an infectious disease model with a greater number of population compartments, and with parameter values that were tuned adaptively by solving the nonlinear dynamics equations over the available pandemic data, as well as referring to previous experience with SARS. The contribution presented in this paper is a new model called the adaptive SEAIRD model; it considers the new characteristics of COVID19 and is therefore applicable to a population including asymptomatic carriers. The predictive value is enhanced by tuning of the optimal parameters, whose values better reflect the current pandemic.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, G. and Dey, N. and Crespo, Rubén G. and Herrera-Viedma, E. and Gois, F. Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_2}, keywords = {Adaptive SEAIRD model, Adaptive SVEAIRD model, Asymptomatic cases, Prediction models}, pages = {17--64}, } @incollection{bernardo_gois_predictive_2021, title = {Predictive models to the {COVID}-19}, isbn = {978-0-12-824536-1}, url = {https://www.sciencedirect.com/science/article/pii/B978012824536100023X}, abstract = {Following the World Health Organization proclaims a pandemic due to a disease that originated in China and advances rapidly across the globe, studies to predict the behavior of epidemics have become increasingly popular, mainly related to COVID-19. The critical point of these studies is to discuss the disease's behavior and the progression of the virus's natural course. However, the prediction of the actual number of infected people has proved to be a difficult task, due to a wide range of factors, such as mass testing, social isolation, underreporting of cases, among others. Therefore, the objective of this work is to understand the behavior of COVID-19 in the state of Ceará to forecast the total number of infected people and to aid in government decisions to control the outbreak of the virus and minimize social impacts and economics caused by the pandemic. So, to understand the behavior of COVID-19, this work discusses some forecast techniques using machine learning, logistic regression, filters, and epidemiologic models. Also, this work brings a new approach to the problem, bringing together data from Ceará with those from China, generating a hybrid dataset, and providing promising results. Finally, this work still compares the different approaches and techniques presented, opening opportunities for future discussions on the topic. The study obtains predictions with R2 score of 0.99 to short-term predictions and 0.93 to long-term predictions.}, language = {en}, urldate = {2021-05-26}, booktitle = {Data {Science} for {COVID}-19}, publisher = {Academic Press}, author = {Bernardo Gois, Francisco Nauber and Lima, Alex and Santos, Khennedy and Oliveira, Ramses and Santiago, Valdir and Melo, Saulo and Costa, Rafael and Oliveira, Marcelo and Henrique, Francisco das Chagas Douglas Marques and Neto, José Xavier and Martins Rodrigues Sobrinho, Carlos Roberto and Lôbo Marques, João Alexandre}, editor = {Kose, Utku and Gupta, Deepak and de Albuquerque, Victor Hugo C. and Khanna, Ashish}, month = jan, year = {2021}, doi = {10.1016/B978-0-12-824536-1.00023-X}, keywords = {COVID-19, Forecast, Holt Winters, Kalman filter, Machine learning, Prophet, SEIR}, pages = {1--24}, } @incollection{fong_probabilistic_2022, address = {Cham}, title = {Probabilistic {Forecasting} {Model} for the {COVID}-19 {Pandemic} {Based} on the {Composite} {Monte} {Carlo} {Model} {Integrated} with {Deep} {Learning} and {Fuzzy} {System}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_4}, abstract = {There are several techniques to support simulation of time series behavior. In this chapter, the approach will be based on the Composite Monte Carlo (CMC) simulation method. This method is able to model future outcomes of time series under analysis from the available data. The establishment of multiple correlations and causality between the data allows modeling the variables and probabilistic distributions and subsequently obtaining also probabilistic results for time series forecasting. To improve the predictor efficiency, computational intelligence techniques are proposed, including a fuzzy inference system and an Artificial Neural Network architecture. This type of model is suitable to be considered not only for the disease monitoring and compartmental classes, but also for managerial data such as clinical resources, medical and health team allocation, and bed management, which are data related to complex decision-making challenges.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, Gloria and Dey, Nilanjan and Crespo, Rubén González and Herrera-Viedma, Enrique and Gois, Francisco Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_4}, keywords = {COVID-19, Composite Monte Carlo simulation, Healthcare decision-making systems, Prediction}, pages = {83--102}, } @incollection{marques_research_2022, address = {Cham}, title = {Research and {Technology} {Development} {Achievements} {During} the {COVID}-19 {Pandemic}—{An} {Overview}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_1}, abstract = {At the beginning of 2020, the World Health Organization (WHO) started a coordinated global effort to counterattack the potential exponential spread of the SARS-Cov2 virus, responsible for the coronavirus disease, officially named COVID-19. This comprehensive initiative included a research roadmap published in March 2020, including nine dimensions, from epidemiological research to diagnostic tools and vaccine development. With an unprecedented case, the areas of study related to the pandemic received funds and strong attention from different research communities (universities, government, industry, etc.), resulting in an exponential increase in the number of publications and results achieved in such a small window of time. Outstanding research cooperation projects were implemented during the outbreak, and innovative technologies were developed and improved significantly. Clinical and laboratory processes were improved, while managerial personnel were supported by a countless number of models and computational tools for the decision-making process. This chapter aims to introduce an overview of this favorable scenario and highlight a necessary discussion about ethical issues in research related to the COVID-19 and the challenge of low-quality research, focusing only on the publication of techniques and approaches with limited scientific evidence or even practical application. A legacy of lessons learned from this unique period of human history should influence and guide the scientific and industrial communities for the future.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Marques, João Alexandre Lobo and Fong, Simon James and Li, G. and Arraut, Ivan and Gois, F. Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_1}, keywords = {COVID-19, Research cooperation, Research ethics, Scientific research, Technology development}, pages = {1--15}, } @incollection{fong_application_2022, address = {Cham}, title = {The {Application} of {Supervised} and {Unsupervised} {Computational} {Predictive} {Models} to {Simulate} the {COVID19} {Pandemic}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_5}, abstract = {The application of different tools for predicting COVID19 cases spreading has been widely considered during the pandemic. Comparing different approaches is essential to analyze performance and the practical support they can provide for the current pandemic management. This work proposes using the susceptible-exposed-asymptomatic but infectious-symptomatic and infectious-recovered-deceased (SEAIRD) model for different learning models. The first analysis considers an unsupervised prediction, based directly on the epidemiologic compartmental model. After that, two supervised learning models are considered integrating computational intelligence techniques and control engineering: the fuzzy-PID and the wavelet-ANN-PID models. The purpose is to compare different predictor strategies to validate a viable predictive control system for the COVID19 relevant epidemiologic time series. For each model, after setting the initial conditions for each parameter, the prediction performance is calculated based on the presented data. The use of PID controllers is justified to avoid divergence in the system when the learning process is conducted. The wavelet neural network solution is considered here because of its rapid convergence rate. The proposed solutions are dynamic and can be adjusted and corrected in real time, according to the output error. The results are presented in each subsection of the chapter.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, Gloria and Dey, Nilanjan and Crespo, Rubén González and Herrera-Viedma, Enrique and Gois, Francisco Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_5}, keywords = {ANN predictor, COVID19, Epidemiology, Fuzzy predictor, PID control, SEAIRD}, pages = {103--139}, } @incollection{fong_comparison_2022, address = {Cham}, title = {The {Comparison} of {Different} {Linear} and {Nonlinear} {Models} {Using} {Preliminary} {Data} to {Efficiently} {Analyze} the {COVID}-19 {Outbreak}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_3}, abstract = {The COVID-19 pandemic spread generated an urgent need for computational systems to model its behavior and support governments and healthcare teams to make proper decisions. There are not many cases of global pandemics in history, and the most recent one has unique characteristics, which are tightly connected to the current society’s lifestyle and beliefs, creating an environment of uncertainty. Because of that, the development of mathematical/computational models to forecast the pandemic behavior since its beginning, i.e., with a restricted amount of data collected, is necessary. This chapter focuses on the analysis of different data mining techniques to allow the pandemic prediction with a small amount of data. A case study is presented considering the data from Wuhan, the Chinese city where the virus was first detected, and the place where the major outbreak occurred. The PNN + CF method (Polynomial Neural Network with Corrective Feedback) is presented as the technique with the best prediction performance. This is a promising method that might be considered in future eventual waves of the current pandemic or event to have a suitable model for future epidemic outbreaks around the world.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, G. and Dey, N. and Crespo, Rubén G. and Herrera-Viedma, E. and Gois, F. Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_3}, keywords = {Artificial neural networks, Epidemiology, Machine learning, Prediction models}, pages = {65--81}, }