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Publications

Publications by Aurélio Campilho

2017

Convolutional bag of words for diabetic retinopathy detection from eye fundus images

Authors
Costa, Pedro; Campilho, Aurelio;

Publication
IPSJ Trans. Computer Vision and Applications

Abstract

2016

Content-Based Image Retrieval by Metric Learning From Radiology Reports: Application to Interstitial Lung Diseases

Authors
Ramos, J; Kockelkorn, TTJP; Ramos, I; Ramos, R; Grutters, J; Viergever, MA; van Ginneken, B; Campilho, A;

Publication
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS

Abstract
Content-based image retrieval (CBIR) is a search technology that could aid medical diagnosis by retrieving and presenting earlier reported cases that are related to the one being diagnosed. To retrieve relevant cases, CBIR systems depend on supervised learning to map low-level image contents to high-level diagnostic concepts. However, the annotation by medical doctors for training and evaluation purposes is a difficult and time-consuming task, which restricts the supervised learning phase to specific CBIR problems of well-defined clinical applications. This paper proposes a new technique that automatically learns the similarity between the several exams from textual distances extracted from radiology reports, thereby successfully reducing the number of annotations needed. Our method first infers the relation between patients by using information retrieval techniques to determine the textual distances between patient radiology reports. These distances are subsequently used to supervise a metric learning algorithm, that transforms the image space accordingly to textual distances. CBIR systems with different image descriptions and different levels of medical annotations were evaluated, with and without supervision from textual distances, using a database of computer tomography scans of patients with interstitial lung diseases. The proposed method consistently improves CBIR mean average precision, with improvements that can reach 38%, and more marked gains for small annotation sets. Given the overall availability of radiology reports in picture archiving and communication systems, the proposed approach can be broadly applied to CBIR systems in different medical problems, and may facilitate the introduction of CBIR in clinical practice.

2014

Image Analysis and Recognition

Authors
Campilho, A; Kamel, M;

Publication
Lecture Notes in Computer Science

Abstract

2016

Preface

Authors
Campilho, A; Karray, F;

Publication
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Abstract

2017

EyeQual: Accurate, Explainable, Retinal Image Quality Assessment

Authors
Costa, P; Campilho, A; Hooi, B; Smailagic, A; Kitani, K; Liu, S; Faloutsos, C; Galdran, A;

Publication
2017 16TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA)

Abstract
Given a retinal image, can we automatically determine whether it is of high quality (suitable for medical diagnosis)? Can we also explain our decision, pinpointing the region or regions that led to our decision? Images from human retinas are vital for the diagnosis of multiple health issues, like hypertension, diabetes, and Alzheimer's; low quality images may force the patient to come back again for a second scanning, wasting time and possibly delaying treatment. However, existing retinal image quality assessment methods are either black boxes without explanations of the results or depend heavily on feature engineering or on complex and error-prone anatomical structures' segmentation. Therefore, we propose EyeQual, that solves exactly this problem. EyeQual is novel, fast for inference, accurate and explainable, pinpointing low-quality regions on the image. We evaluated EyeQual on two real datasets where it achieved 100% accuracy taking just 36 milliseconds for each image.

2015

Image Analysis and Recognition

Authors
Kamel, M; Campilho, A;

Publication
Lecture Notes in Computer Science

Abstract

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