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Dive into the research topics where Teresa Araújo is active.

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Featured researches published by Teresa Araújo.


PLOS ONE | 2017

Classification of breast cancer histology images using Convolutional Neural Networks

Teresa Araújo; Guilherme Aresta; Eduardo Castro; José Rouco; Paulo Aguiar; Catarina Eloy; António Polónia; Aurélio Campilho

Breast cancer is one of the main causes of cancer death worldwide. The diagnosis of biopsy tissue with hematoxylin and eosin stained images is non-trivial and specialists often disagree on the final diagnosis. Computer-aided Diagnosis systems contribute to reduce the cost and increase the efficiency of this process. Conventional classification approaches rely on feature extraction methods designed for a specific problem based on field-knowledge. To overcome the many difficulties of the feature-based approaches, deep learning methods are becoming important alternatives. A method for the classification of hematoxylin and eosin stained breast biopsy images using Convolutional Neural Networks (CNNs) is proposed. Images are classified in four classes, normal tissue, benign lesion, in situ carcinoma and invasive carcinoma, and in two classes, carcinoma and non-carcinoma. The architecture of the network is designed to retrieve information at different scales, including both nuclei and overall tissue organization. This design allows the extension of the proposed system to whole-slide histology images. The features extracted by the CNN are also used for training a Support Vector Machine classifier. Accuracies of 77.8% for four class and 83.3% for carcinoma/non-carcinoma are achieved. The sensitivity of our method for cancer cases is 95.6%.


Proceedings of SPIE | 2017

Estimation of retinal vessel caliber using model fitting and random forests.

Teresa Araújo; Ana Maria Mendonça; Aurélio Campilho

Retinal vessel caliber changes are associated with several major diseases, such as diabetes and hypertension. These caliber changes can be evaluated using eye fundus images. However, the clinical assessment is tiresome and prone to errors, motivating the development of automatic methods. An automatic method based on vessel crosssection intensity profile model fitting for the estimation of vessel caliber in retinal images is herein proposed. First, vessels are segmented from the image, vessel centerlines are detected and individual segments are extracted and smoothed. Intensity profiles are extracted perpendicularly to the vessel, and the profile lengths are determined. Then, model fitting is applied to the smoothed profiles. A novel parametric model (DoG-L7) is used, consisting on a Difference-of-Gaussians multiplied by a line which is able to describe profile asymmetry. Finally, the parameters of the best-fit model are used for determining the vessel width through regression using ensembles of bagged regression trees with random sampling of the predictors (random forests). The method is evaluated on the REVIEW public dataset. A precision close to the observers is achieved, outperforming other state-of-the-art methods. The method is robust and reliable for width estimation in images with pathologies and artifacts, with performance independent of the range of diameters.


arXiv: Computer Vision and Pattern Recognition | 2018

UOLO - Automatic Object Detection and Segmentation in Biomedical Images.

Teresa Araújo; Guilherme Aresta; Adrian Galdran; Pedro Costa; Ana Maria Mendonça; Aurélio Campilho

We propose UOLO, a novel framework for the simultaneous detection and segmentation of structures of interest in medical images. UOLO consists of an object segmentation module which intermediate abstract representations are processed and used as input for object detection. The resulting system is optimized simultaneously for detecting a class of objects and segmenting an optionally different class of structures. UOLO is trained on a set of bounding boxes enclosing the objects to detect, as well as pixel-wise segmentation information, when available. A new loss function is devised, taking into account whether a reference segmentation is accessible for each training image, in order to suitably backpropagate the error. We validate UOLO on the task of simultaneous optic disc (OD) detection, fovea detection, and OD segmentation from retinal images, achieving state-of-the-art performance on public datasets.


RAMBO+BIA+TIA@MICCAI | 2018

Towards an Automatic Lung Cancer Screening System in Low Dose Computed Tomography

Guilherme Aresta; Teresa Araújo; Colin Jacobs; Bram van Ginneken; António Cunha; Isabel Ramos; Aurélio Campilho

We propose a deep learning-based pipeline that, given a low-dose computed tomography of a patient chest, recommends if a patient should be submitted to further lung cancer assessment. The algorithm is composed of a nodule detection block that uses the object detection framework YOLOv2, followed by a U-Net based segmentation. The found structures of interest are then characterized in terms of diameter and texture to produce a final referral recommendation according to the National Lung Screen Trial (NLST) criteria. Our method is trained using the public LUNA16 and LIDC-IDRI datasets and tested on an independent dataset composed of 500 scans from the Kaggle DSB 2017 challenge. The proposed system achieves a patient-wise recall of 89% while providing an explanation to the referral decision and thus may serve as a second opinion tool to speed-up and improve lung cancer screening.


PLOS ONE | 2018

Parametric model fitting-based approach for retinal blood vessel caliber estimation in eye fundus images

Teresa Araújo; Ana Maria Mendonça; Aurélio Campilho

Background Changes in the retinal vessel caliber are associated with a variety of major diseases, namely diabetes, hypertension and atherosclerosis. The clinical assessment of these changes in fundus images is tiresome and prone to errors and thus automatic methods are desirable for objective and precise caliber measurement. However, the variability of blood vessel appearance, image quality and resolution make the development of these tools a non-trivial task. Metholodogy A method for the estimation of vessel caliber in eye fundus images via vessel cross-sectional intensity profile model fitting is herein proposed. First, the vessel centerlines are determined and individual segments are extracted and smoothed by spline approximation. Then, the corresponding cross-sectional intensity profiles are determined, post-processed and ultimately fitted by newly proposed parametric models. These models are based on Difference-of-Gaussians (DoG) curves modified through a multiplying line with varying inclination. With this, the proposed models can describe profile asymmetry, allowing a good adjustment to the most difficult profiles, namely those showing central light reflex. Finally, the parameters of the best-fit model are used to determine the vessel width using ensembles of bagged regression trees with random feature selection. Results and conclusions The performance of our approach is evaluated on the REVIEW public dataset by comparing the vessel cross-sectional profile fitting of the proposed modified DoG models with 7 and 8 parameters against a Hermite model with 6 parameters. Results on different goodness of fitness metrics indicate that our models are constantly better at fitting the vessel profiles. Furthermore, our width measurement algorithm achieves a precision close to the observers, outperforming state-of-the art methods, and retrieving the highest precision when evaluated using cross-validation. This high performance supports the robustness of the algorithm and validates its use in retinal vessel width measurement and possible integration in a system for retinal vasculature assessment.


international conference on image analysis and recognition | 2017

Improving convolutional neural network design via variable neighborhood search

Teresa Araújo; Guilherme Aresta; Bernardo Almada-Lobo; Ana Maria Mendonça; Aurélio Campilho

An unsupervised method for convolutional neural network (CNN) architecture design is proposed. The method relies on a variable neighborhood search-based approach for finding CNN architectures and hyperparameter values that improve classification performance. For this purpose, t-Distributed Stochastic Neighbor Embedding (t-SNE) is applied to effectively represent the solution space in 2D. Then, k-Means clustering divides this representation space having in account the relative distance between neighbors. The algorithm is tested in the CIFAR-10 image dataset. The obtained solution improves the CNN validation loss by over \(15\%\) and the respective accuracy by \(5\%\). Moreover, the network shows higher predictive power and robustness, validating our method for the optimization of CNN design.


European Congress on Computational Methods in Applied Sciences and Engineering | 2017

Retinal Image Quality Assessment by Mean-Subtracted Contrast-Normalized Coefficients

Adrian Galdran; Teresa Araújo; Ana Maria Mendonça; Aurélio Campilho

The automatic assessment of visual quality on images of the eye fundus is an important task in retinal image analysis. A novel quality assessment technique is proposed in this paper. We propose to compute Mean-Subtracted Contrast-Normalized (MSCN) coefficients on local spatial neighborhoods of a given image and analyze their distribution. It is known that for natural images, such distribution behaves normally, while distortions of different kinds perturb this regularity. The combination of MSCN coefficients with a simple measure of local contrast allows us to design a simple but effective retinal image quality assessment algorithm that successfully discriminates between good and low-quality images, while delivering a meaningful quality score. The proposed technique is validated on a recent database of quality-labeled retinal images, obtaining results aligned with state-of-the-art approaches at a low computational cost.


international conference on image analysis and recognition | 2015

Optical Flow Based Approach for Automatic Cardiac Cycle Estimation in Ultrasound Images of the Carotid

Teresa Araújo; Guilherme Aresta; José Rouco; Carmen Ferreira; Elsa Azevedo; Aurélio Campilho

This paper proposes a method to detect a reference frame in an ultrasound video of the carotid artery. This reference frame, usually located at the end of the diastole, is used as the location to measure several vascular biomarkers. Our approach is based on the analysis of the movement of the carotid walls in ultrasound images using an optical flow technique. A periodic movement resembling heart beat is observed in the resulting signals. The comparison of these signals with electrocardiograms validates the proposed method for detecting the reference frame.


medical image computing and computer-assisted intervention | 2018

A No-Reference Quality Metric for Retinal Vessel Tree Segmentation.

Adrian Galdran; Pedro Costa; Alessandro Bria; Teresa Araújo; Ana Maria Mendonça; Aurélio Campilho


arXiv: Computer Vision and Pattern Recognition | 2018

BACH: Grand Challenge on Breast Cancer Histology Images.

Guilherme Aresta; Teresa Araújo; Scotty Kwok; Sai Saketh Chennamsetty; K P Mohammed Safwan; Alex Varghese; Bahram Marami; Marcel Prastawa; Monica Chan; Michael J. Donovan; Gerardo Fernandez; Jack Zeineh; Matthias Kohl; Christoph Walz; Florian Ludwig; Stefan Braunewell; Maximilian Baust; Quoc Dang Vu; Minh Nguyen Nhat To; Eal Kim; Jin Tae Kwak; Sameh Galal; Veronica Sanchez-Freire; Nadia Brancati; Maria Frucci; Daniel Riccio; Yaqi Wang; Lingling Sun; Kaiqiang Ma; Jiannan Fang

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Guilherme Aresta

Faculdade de Engenharia da Universidade do Porto

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Adrian Galdran

University of the Basque Country

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José Rouco

University of A Coruña

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Eduardo Castro

Faculdade de Engenharia da Universidade do Porto

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