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Publication A Alma e o Lugar de uma Comunidade Singular(Universidade Católica Editora, 2019)Simoes, Jose Manuel - Some of the metrics are blocked by yourconsent settings
Publication A DCRC Model for Text Classification(Springer International Publishing, 2023) ;Hao, Zhaoquan ;Jin, Jiangyong ;Liang, Shengbin ;Cheng, SuyingShen, YanqingTraditional text classification models have some drawbacks, such as the inability of the model to focus on important parts of the text contextual information in text processing. To solve this problem, we fuse the long and short-term memory network BiGRU with a convolutional neural network to receive text sequence input to reduce the dimensionality of the input sequence and to reduce the loss of text features based on the length and context dependency of the input text sequence. Considering the extraction of important features of the text, we choose the long and short-term memory network BiLSTM to capture the main features of the text and thus reduce the loss of features. Finally, we propose a BiGRU-CNN-BiLSTM model (DCRC model) based on CNN, GRU and LSTM, which is trained and validated on the THUCNews and Toutiao News datasets. The model outperformed the traditional model in terms of accuracy, recall and F1 score after experimental comparison. - Some of the metrics are blocked by yourconsent settings
Publication A figura feminina na ficção de Senna Fernandes: identidade, subalternidade e agência(Universidade Católica Portuguesa, 2020)Correia, Ana - Some of the metrics are blocked by yourconsent settings
Publication A Quantum Field Formulation for a Pandemic Propagation(Springer International Publishing, 2022); ; ;Fong, Simon James ;Li, Gloria ;Gois, Francisco Nauber BernardoNeto, Jose XavierIn 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. - Some of the metrics are blocked by yourconsent settings
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Publication AI and deep learning for processing the huge amount of patient-centric data that assist in clinical decisions(Academic Press, 2022); ;Bernardo Gois, Francisco Nauber ;Nunes da Silveira, Jarbas Aryel ;Li, TengyueFong, Simon JamesThe area of clinical decision support systems (CDSS) is facing a boost in research and development with the increasing amount of data in clinical analysis together with new tools to support patient care. This creates a vibrant and challenging environment for the medical and technical staff. This chapter presents a discussion about the challenges and trends of CDSS considering big data and patient-centered constraints. Two case studies are presented in detail. The first presents the development of a big data and AI classification system for maternal and fetal ambulatory monitoring, composed by different solutions such as the implementation of an Internet of Things sensors and devices network, a fuzzy inference system for emergency alarms, a feature extraction model based on signal processing of the fetal and maternal data, and finally a deep learning classifier with six convolutional layers achieving an F1-score of 0.89 for the case of both maternal and fetal as harmful. The system was designed to support maternal�fetal ambulatory premises in developing countries, where the demand is extremely high and the number of medical specialists is very low. The second case study considered two artificial intelligence approaches to providing efficient prediction of infections for clinical decision support during the COVID-19 pandemic in Brazil. First, LSTM recurrent neural networks were considered with the model achieving R2=0.93 and MAE=40,604.4 in average, while the best, R2=0.9939, was achieved for the time series 3. Second, an open-source framework called H2O AutoML was considered with the �stacked ensemble� approach and presented the best performance followed by XGBoost. Brazil has been one of the most challenging environments during the pandemic and where efficient predictions may be the difference in saving lives. The presentation of such different approaches (ambulatory monitoring and epidemiology data) is important to illustrate the large spectrum of AI tools to support clinical decision-making. - Some of the metrics are blocked by yourconsent settings
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Publication Analysis of the COVID19 Pandemic Behaviour Based on the Compartmental SEAIRD and Adaptive SVEAIRD Epidemiologic Models(Springer International Publishing, 2022) ;Fong, Simon James; ;Li, G. ;Dey, Nilanjan ;Crespo, Ruben G. ;Herrera-Viedma, E. ;Gois, Francisco Nauber BernardoNeto, Jose XavierA 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. - Some of the metrics are blocked by yourconsent settings
Publication Artificial Intelligence Prediction for the COVID-19 Data Based on LSTM Neural Networks and H2O AutoML(Springer International Publishing, 2020); ;Gois, Francisco Nauber Bernardo ;Xavier-Neto, JoseFong, Simon JamesThe use of computational intelligence techniques is being considered for a vast number of applications not only because of its increasing popularity but also because the results achieve good performance and are promising to keep improving. In this chapter, we present the basic theoretical aspects and assumptions of the LSTM model and H20 AutoML framework. It is evaluated on the prediction of the COVID-19 epidemiological data series for five different countries (China, United States, Brazil, Italy, and Singapore), each of them with specific curves, which are results of policies and decisions during the pandemic spread. The discussion about the results is performed with the focus on three evaluation criteria: Score, MAE, and MSE. Higher Score was obtained when the sample time series was smoothly increasing or decreasing. The results obtained by the AutoML framework achieved a higher Score and lower MAE and MSE when compared with LSTM and also with other techniques proposed in the book, such as ARIMA and Kalman predictor. The application of machine learning algorithm selector might be a promising candidate for a good predictor for epidemic time series. - Some of the metrics are blocked by yourconsent settings
Publication Artificial neural network-based approaches for computer-aided disease diagnosis and treatment(Academic Press, 2022); ;Gois, Francisco Nauber Bernardo ;Madeiro, Joao Paulo do Vale ;Li, TengyueFong, Simon JamesThe adoption of computer-aided diagnosis and treatment systems based on different types of artificial neural networks (ANNs) is already a reality in several hospital and ambulatory premises. This chapter aims to present a discussion focused on the challenges and trends of adopting these computerized systems, highlighting solutions based on different types and approaches of ANN, more specifically, feed-forward, recurrent, and deep convolutional architectures. One section is focused on the application of AI/ANN solutions to support cardiology in different applications, such as the classification of the heart structure and functional behavior based on echocardiography images the automatic analysis of the heart electric activity based on ECG signals and the diagnosis support of angiogram images during surgical interventions. Finally, a case study is presented based on the application of a deep learning convolutional network together with a recent technique called transfer learning to detect brain tumors using an MRI images data set. According to the findings, the model has a high degree of specificity (precision of 0.93 and recall of 0.94 for images with no brain tumor) and can be used as a screening tool for images that do not contain a brain tumor. The f1-score for images with brain tumor was 0.93. The results achieved are very promising and the proposed solution may be considered to be used as a computer-aided diagnosis tool based on deep learning convolutional neural networks. Future works will consider other techniques and compare them with the one presented here. With the comprehensive approach and overview of multiple applications, it is valid to conclude that computer-aided diagnosis and treatment systems are important tools to be considered today and will be an essential part of the trend of personalized medicine over the coming years. - Some of the metrics are blocked by yourconsent settings
Publication Attitudes and self-beliefs of ability towards mathematics and science and their effects on career choices: A case study with Macao-Chinese girls(Edi�oes UniversitArias Lus�fonas, 2018) ;Correia, Ana ;Fernandes, ClaraMaia, Joao - Some of the metrics are blocked by yourconsent settings
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Publication Binding Ties of Miscegenation and Identity: The Narratives of Henrique Senna Fernandes (Macao) and Rex Shelley (Singapore)(ISEAS–Yusof Ishak Institute, 2011)Morais, IsabelDespite the dynamics of globalization and rapid economic and political development, it is still noticeable nowadays that several Portuguese creolized communities in postcolonial societies have resisted cultural homogenization, particularly those scattered throughout the detached, peripheral regions of East and Southeast Asia that were under the Estado da Índia's sovereignty and influence (Goa, Daman, Diu, Sri Lanka, Malacca, Macao and Timor) and that the Portuguese created alongside the local political authorities (Indonesia and today's Singapore). By the beginning of the seventeenth century, the official population in the colonies of several territories in Asia that proudly claimed Portuguese ancestry had reached nearly one-and-a-half million individuals, as a legacy of colonial (dis)encounters. Centuries later, the Portuguese descendants of this “shadow empire” forged through trading, matrimonial alliances and cultural networks — notwithstanding a pragmatic adaptation to times of unprecedented political, economic and cultural upheaval — persist in a quest for identity and cultural reaffirmation of “Portuguese” cultural differentiation, which continues to be faithfully perpetuated and transmitted, centuries after the earlier Portuguese contacts ceased. These communities show distinctive aspects of what could be called a certain “Luso-Eurasianness”, exhibited in oral literature, religious practices, family surnames, ceremonies, cuisine, public structures, ways of speaking and, above all, in identity-making religious and cultural reinterpretation of lived and shared commonalities. This study argues that, even if relatively scant attention has been paid to the literary production of the communities considered here, in particular in Anglophone postcolonial studies, they have influenced and continue to exercise seminal influence on most postcolonial imaginaries, either in their respective societies or in the contemporary fiction of the Luso diaspora. - Some of the metrics are blocked by yourconsent settings
Publication Breve Abordagem ao Percurso Vivencial e Poético de Um ‘Autor Maldito’: Carlos Augusto Montalto de Jesus (1863-1932) na China e pelo Mundo Fora(University of Saint Joseph, 2022)Morais, Isabel - Some of the metrics are blocked by yourconsent settings
Publication Catholic social teaching and environmental responsibility(Konrad-Adenauer-Stiftung and College of Religious, Mahidol University, 2016) ;Rothlin, StephanMcCann, Dennis - Some of the metrics are blocked by yourconsent settings
Publication Challenges and Learning Strategy for young children with special needs during the pandemic in Indonesia(Policy Review, Curriculum, and Adaptation of Implementation Policy Research Centre Research Agency of Development and Book Ministry of Education, Culture, Research and Technology, 2021) ;Fridani, L. - Some of the metrics are blocked by yourconsent settings
Publication Charter UIA/UNESCO for Architectural Education(International Union of Architects, 2017) ;Mohamed, E. ;Soares, NunoRevedin, J. - Some of the metrics are blocked by yourconsent settings
Publication Classification of COVID-19 CT Scans Using Convolutional Neural Networks and Transformers(Springer International Publishing, 2023) ;Bernardo Gois, Francisco Nauber; Fong, Simon JamesCOVID-19 is a respiratory disorder caused by CoronaVirus and SARS (SARS-CoV2). WHO declared COVID-19 a global pandemic in March 2020 and several nations’ healthcare systems were on the verge of collapsing. With that, became crucial to screen COVID-19-positive patients to maximize limited resources. NAATs and antigen tests are utilized to diagnose COVID-19 infections. NAATs reliably detect SARS-CoV-2 and seldom produce false-negative results. Because of its specificity and sensitivity, RT-PCR can be considered the gold standard for COVID-19 diagnosis. This test’s complex gear is pricey and time-consuming, using skilled specialists to collect throat or nasal mucus samples. These tests require laboratory facilities and a machine for detection and analysis. Deep learning networks have been used for feature extraction and classification of Chest CT-Scan images and as an innovative detection approach in clinical practice. Because of COVID-19 CT scans’ medical characteristics, the lesions are widely spread and display a range of local aspects. Using deep learning to diagnose directly is difficult. In COVID-19, a Transformer and Convolutional Neural Network module are presented to extract local and global information from CT images. This chapter explains transfer learning, considering VGG-16 network, in CT examinations and compares convolutional networks with Vision Transformers (ViT). Vit usage increased VGG-16 network F1-score to 0.94. - Some of the metrics are blocked by yourconsent settings
Publication Classification of Severity of COVID-19 Patients Based on the Heart Rate Variability(Springer International Publishing, 2023) ;Pordeus, Daniel ;Ribeiro, Pedro ;Zacarias, Laila ;Paulo Madeiro, Joao ;Lobo Marques, Joao Alexandre ;Miguel Rodrigues, Pedro ;Leite, Camila ;Alves Neto, Manoel ;Aires Peixoto Jr, Arnaldo ;de Oliveira, Adriel; Fong, Simon JamesThe continuous development of robust machine learning algorithms in recent years has helped to improve the solutions of many studies in many fields of medicine, rapid diagnosis and detection of high-risk patients with poor prognosis as the coronavirus disease 2019 (COVID-19) spreads globally, and also early prevention of patients and optimization of medical resources. Here, we propose a fully automated machine learning system to classify the severity of COVID-19 from electrocardiogram (ECG) signals. We retrospectively collected 100 5-minute ECGs from 50 patients in two different positions, upright and supine. We processed the surface ECG to obtain QRS complexes and HRV indices for RR series, including a total of 43 features. We compared 19 machine learning classification algorithms that yielded different approaches explained in a methodology session.