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Publications

Publications by Ana Pereira

2024

Navigating the Future of Enterprises: Insights into Digital Transformation, Virtual Reality, and the Metaverse

Authors
Silva, R; Pereira, I; Nicola, S; Madureira, A; Bettencourt, N; Reis, JL; Santos, JP; de Oliveira, DA;

Publication
2024 IEEE 22ND MEDITERRANEAN ELECTROTECHNICAL CONFERENCE, MELECON 2024

Abstract
Over the past two decades, Digital Transformation (DT) has been focused on improving businesses, industries, and the general public through significant breakthroughs. This paper examines the significant developments brought forth by DT and how they impact organizations. This analysis explores the impact of Virtual Reality (VR) and the Metaverse on global businesses, taking inspiration from successful case studies such as Netflix, Amazon, and Meta. This study emphasizes the potential of virtual reality and the Metaverse in facilitating remote meetings, training employees, engaging with consumers, and gathering data. Case studies and strategic recommendations are offered for overcoming barriers to the adoption of these digital technologies. The study finishes by addressing the future trajectory of DT and emphasizing the significance of devoting time, commitment, and resources to effectively utilize the range of potential offered by VR and the Metaverse. It highlights the importance for organizations to comprehend and handle this ever-changing environment to remain at the forefront of the digital frontier.

2022

Emerging Technologies and Applications for a Smart and Sustainable World

Authors
Jabbar Meerja, A; Bin Ibne Reaz, M; Madureira, AM;

Publication

Abstract
This reference distills information about emerging technologies and applications for smart city design and sustainable urban planning. Chapters present technology use-cases that have radical novelty and high scalability with a prominent impact on community living standards. These technologies prepare urban and rural dwellings for the transformation to the smart world.Applications and techniques highlighted in the book use a combination of artificial intelligence and IoT technologies in areas like transportation, energy, healthcare, education, governance, and manufacturing, to name a few.The book serves as a learning resource for smart city design and sustainable infrastructure planning. Scholars and professionals who are interested in understanding ways for transforming communities into smart communities can also benefit from the cases presented in the book.

2023

Healing profiles in patients with a chronic diabetic foot ulcer: An exploratory study with machine learning

Authors
Pereira, MG; Vilaça, M; Braga, D; Madureira, A; Da Silva, J; Santos, D; Carvalho, E;

Publication
WOUND REPAIR AND REGENERATION

Abstract
Diabetic foot ulcers (DFU) are one of the most frequent and debilitating complications of diabetes. DFU wound healing is a highly complex process, resulting in significant medical, economic and social challenges. Therefore, early identification of patients with a high-risk profile would be important to adequate treatment and more successful health outcomes. This study explores risk assessment profiles for DFU healing and healing prognosis, using machine learning predictive approaches and decision tree algorithms. Patients were evaluated at baseline (T0; N = 158) and 2 months later (T1; N = 108) on sociodemographic, clinical, biochemical and psychological variables. The performance evaluation of the models comprised F1-score, accuracy, precision and recall. Only profiles with F1-score >0.7 were selected for analysis. According to the two profiles generated for DFU healing, the most important predictive factors were illness representations on T1 IPQ-B (IPQ-B <= 9.5 and < 10.5) and the DFU duration (<= 13 weeks). The two predictive models for DFU healing prognosis suggest that biochemical factors are the best predictors of a favorable healing prognosis, namely IL-6, microRNA-146a-5p and PECAM-1 at T0 and angiopoietin-2 at T1. Illness perception at T0 (IPQ-B <= 39.5) also emerged as a relevant predictor for healing prognosis. The results emphasize the importance of DFU duration, illness perception and biochemical markers as predictors of healing in chronic DFUs. Future research is needed to confirm and test the obtained predictive models.

2018

Proceedings of the Eighth International Conference on Soft Computing and Pattern Recognition (SoCPaR 2016)

Authors
Abraham, A; Cherukuri, AK; Madureira, AM; Muda, AK;

Publication
Advances in Intelligent Systems and Computing

Abstract

2020

Proceedings of the Tenth International Conference on Soft Computing and Pattern Recognition (SoCPaR 2018)

Authors
Madureira, AM; Abraham, A; Gandhi, N; Silva, C; Antunes, M;

Publication
Advances in Intelligent Systems and Computing

Abstract

2022

Innovations in Bio-Inspired Computing and Applications

Authors
Abraham, A; Madureira, AM; Kaklauskas, A; Gandhi, N; Bajaj, A; Muda, AK; Kriksciuniene, D; Ferreira, JC;

Publication
Lecture Notes in Networks and Systems

Abstract

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