Non INESC TEC publications - Indexed Articles in Journals
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Browsing Non INESC TEC publications - Indexed Articles in Journals by Author "6071"
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ItemCATARACTS: Challenge on automatic tool annotation for cataRACT surgery( 2019) Al Hajj,H ; Lamard,M ; Conze,PH ; Roychowdhury,S ; Hu,XW ; Marsalkaite,G ; Zisimopoulos,O ; Dedmari,MA ; Zhao,FQ ; Prellberg,J ; Sahu,M ; Adrian Galdran ; Teresa Finisterra Araújo ; Vo,DM ; Panda,C ; Dahiya,N ; Kondo,S ; Bian,ZB ; Vandat,A ; Bialopetravicius,J ; Flouty,E ; Qiu,CH ; Dill,S ; Mukhopadhyay,A ; Costa,P ; Guilherme Moreira Aresta ; Ramamurthys,S ; Lee,SW ; Aurélio Campilho ; Zachow,S ; Xia,SR ; Conjeti,S ; Stoyanov,D ; Armaitis,J ; Heng,PA ; Macready,WG ; Cochener,B ; Quellec,G ; 6321 ; 6825 ; 6320 ; 6071Surgical tool detection is attracting increasing attention from the medical image analysis community. The goal generally is not to precisely locate tools in images, but rather to indicate which tools are being used by the surgeon at each instant. The main motivation for annotating tool usage is to design efficient solutions for surgical workflow analysis, with potential applications in report generation, surgical training and even real-time decision support. Most existing tool annotation algorithms focus on laparoscopic surgeries. However, with 19 million interventions per year, the most common surgical procedure in the world is cataract surgery. The CATARACTS challenge was organized in 2017 to evaluate tool annotation algorithms in the specific context of cataract surgery. It relies on more than nine hours of videos, from 50 cataract surgeries, in which the presence of 21 surgical tools was manually annotated by two experts. With 14 participating teams, this challenge can be considered a success. As might be expected, the submitted solutions are based on deep learning. This paper thoroughly evaluates these solutions: in particular, the quality of their annotations are compared to that of human interpretations. Next, lessons learnt from the differential analysis of these solutions are discussed. We expect that they will guide the design of efficient surgery monitoring tools in the near future. © 2018 Elsevier B.V.
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ItemCATARACTS: Challenge on automatic tool annotation for cataRACT surgery( 2019) Macready,WG ; 6071Surgical tool detection is attracting increasing attention from the medical image analysis community. The goal generally is not to precisely locate tools in images, but rather to indicate which tools are being used by the surgeon at each instant. The main motivation for annotating tool usage is to design efficient solutions for surgical workflow analysis, with potential applications in report generation, surgical training and even real-time decision support. Most existing tool annotation algorithms focus on laparoscopic surgeries. However, with 19 million interventions per year, the most common surgical procedure in the world is cataract surgery. The CATARACTS challenge was organized in 2017 to evaluate tool annotation algorithms in the specific context of cataract surgery. It relies on more than nine hours of videos, from 50 cataract surgeries, in which the presence of 21 surgical tools was manually annotated by two experts. With 14 participating teams, this challenge can be considered a success. As might be expected, the submitted solutions are based on deep learning. This paper thoroughly evaluates these solutions: in particular, the quality of their annotations are compared to that of human interpretations. Next, lessons learnt from the differential analysis of these solutions are discussed. We expect that they will guide the design of efficient surgery monitoring tools in the near future. © 2018 Elsevier B.V.
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ItemAn unsupervised metaheuristic search approach for segmentation and volume measurement of pulmonary nodules in lung CT scans( 2019) Elham Shakibapour ; António Cunha ; Guilherme Moreira Aresta ; Ana Maria Mendonça ; Aurélio Campilho ; 6071 ; 6381 ; 7034 ; 6271 ; 6321This paper proposes a new methodology to automatically segment and measure the volume of pulmonary nodules in lung computed tomography (CT) scans. Estimating the malignancy likelihood of a pulmonary nodule based on lesion characteristics motivated the development of an unsupervised pulmonary nodule segmentation and volume measurement as a preliminary stage for pulmonary nodule characterization. The idea is to optimally cluster a set of feature vectors composed by intensity and shape-related features in a given feature data space extracted from a pre-detected nodule. For that purpose, a metaheuristic search based on evolutionary computation is used for clustering the corresponding feature vectors. The proposed method is simple, unsupervised and is able to segment different types of nodules in terms of location and texture without the need for any manual annotation. We validate the proposed segmentation and volume measurement on the Lung Image Database Consortium and Image Database Resource Initiative – LIDC-IDRI dataset. The first dataset is a group of 705 solid and sub-solid (assessed as part-solid and non-solid) nodules located in different regions of the lungs, and the second, more challenging, is a group of 59 sub-solid nodules. The average Dice scores of 82.35% and 71.05% for the two datasets show the good performance of the segmentation proposal. Comparisons with previous state-of-the-art techniques also show acceptable and comparable segmentation results. The volumes of the segmented nodules are measured via ellipsoid approximation. The correlation and statistical significance between the measured volumes of the segmented nodules and the ground-truth are obtained by Pearson correlation coefficient value, obtaining an R-value = 92.16% with a significance level of 5%. © 2018 Elsevier Ltd