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Publications

Publications by Pedro Henriques Abreu

2024

A Perspective on the Missing at Random Problem: Synthetic Generation and Benchmark Analysis

Authors
Cabrera-Sánchez, JF; Pereira, RC; Abreu, PH; Silva-Ramírez, EL;

Publication
IEEE ACCESS

Abstract
Progressively more advanced and complex models are proposed to address problems related to computer vision, forecasting, Internet of Things, Big Data and so on. However, these disciplines require preprocessing steps to obtain meaningful results. One of the most common problems addressed in this stage is the presence of missing values. Understanding the reason why missingness occurs helps to select data imputation methods that are more adequate to complete these missing values. Missing at Random synthetic generation presents challenges such as achieving extreme missingness rates and preserving the consistency of the mechanism. To address these shortcomings, three new methods that generate synthetic missingness under the Missing at Random mechanism are proposed in this work and compared to a baseline model. This comparison considers a benchmark covering 33 data sets and five missingness rates $(10\%, 20\%, 40\%, 60\%, 80\%)$ . Seven data imputation methods are compared to evaluate the proposals, ranging from traditional methods to deep learning methods. The results demonstrate that the proposals are aligned with the baseline method in terms of the performance and ranking of data imputation methods. Thus, three new feasible and consistent alternatives for synthetic missingness generation under Missing at Random are presented.

2024

Enhancing mammography: a comprehensive review of computer methods for improving image quality

Authors
Santos, JC; Santos, MS; Abreu, PH;

Publication
PROGRESS IN BIOMEDICAL ENGINEERING

Abstract
Mammography imaging remains the gold standard for breast cancer detection and diagnosis, but challenges in image quality can lead to misdiagnosis, increased radiation exposure, and higher healthcare costs. This comprehensive review evaluates traditional and machine learning-based techniques for improving mammography image quality, aiming to benefit clinicians and enhance diagnostic accuracy. Our literature search, spanning 2015 - 2024, identified 115 articles focusing on contrast enhancement and noise reduction methods, including histogram equalization, filtering, unsharp masking, fuzzy logic, transform-based techniques, and advanced machine learning approaches. Machine learning, particularly architectures integrating denoising autoencoders with convolutional neural networks, emerged as highly effective in enhancing image quality without compromising detail. The discussion highlights the success of these techniques in improving mammography images' visual quality. However, challenges such as high noise ratios, inconsistent evaluation metrics, and limited open-source datasets persist. Addressing these issues offers opportunities for future research to further advance mammography image enhancement methodologies.

2019

Generating Synthetic Missing Data: A Review by Missing Mechanism

Authors
Santos, MS; Pereira, RC; Costa, AF; Soares, JP; Santos, JAM; Abreu, PH;

Publication
IEEE Access

Abstract

2014

MusE Central: A Data Aggregation System for Music Events

Authors
Simões, D; Abreu, PH; Silva, DC;

Publication
New Perspectives in Information Systems and Technologies, Volume 2 [WorldCIST'14, Madeira Island, Portugal, April 15-18, 2014]

Abstract

2017

HCC Survival

Authors
Santos, MS; Abreu, PH; García Laencina, PJ; Simão, A; Carvalho, A;

Publication

Abstract

2017

Agents and Multi-Agent Systems for Health Care - 10th International Workshop, A2HC 2017, São Paulo, Brazil, May 8, 2017, and International Workshop, A-HEALTH 2017, Porto, Portugal, June 21, 2017, Revised and Extended Selected Papers

Authors
Montagna, S; Abreu, PH; Giroux, S; Schumacher, MI;

Publication
A2HC@AAMAS/A-HEALTH@PAAMS

Abstract

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