Keyword search (4,163 papers available)

"Segmentation" Keyword-tagged Publications:

Title Authors PubMed ID
1 Towards user-centered interactive medical image segmentation in VR with an assistive AI agent Spiegler P; Harirpoush A; Xiao Y; 41509996
ENCS
2 MedCLIP-SAMv2: Towards universal text-driven medical image segmentation Koleilat T; Asgariandehkordi H; Rivaz H; Xiao Y; 40779830
ENCS
3 Exploring interaction paradigms for segmenting medical images in virtual reality Jones Z; Drouin S; Kersten-Oertel M; 40402355
ENCS
4 MRI as a viable alternative to CT for 3D surgical planning of Cavitary bone tumors Chae Y; Cheers GM; Kim M; Reidler P; Klein A; Fevens T; Holzapfel BM; Mayer-Wagner S; 40049253
ENCS
5 Open access segmentations of intraoperative brain tumor ultrasound images Behboodi B; Carton FX; Chabanas M; de Ribaupierre S; Solheim O; Munkvold BKR; Rivaz H; Xiao Y; Reinertsen I; 39047165
SOH
6 FishSegSSL: A Semi-Supervised Semantic Segmentation Framework for Fish-Eye Images Paul S; Patterson Z; Bouguila N; 38535151
ENCS
7 Impaired performance of rapid grip in people with Parkinson's disease and motor segmentation Rebecca J Daniels 38507858
PSYCHOLOGY
8 PILLAR: ParaspInaL muscLe segmentAtion pRoject - a comprehensive online resource to guide manual segmentation of paraspinal muscles from magnetic resonance imaging Anstruther M; Rossini B; Zhang T; Liang T; Xiao Y; Fortin M; 37996857
SOH
9 Compatible-domain Transfer Learning for Breast Cancer Classification with Limited Annotated Data Shamshiri MA; Krzyzak A; Kowal M; Korbicz J; 36758326
ENCS
10 Measures of motor segmentation from rapid isometric force pulses are reliable and differentiate Parkinson's disease from age-related slowing Howard SL; Grenet D; Bellumori M; Knight CA; 35768733
PSYCHOLOGY
11 Spoken Word Segmentation in First and Second Language: When ERP and Behavioral Measures Diverge Gilbert AC; Lee JG; Coulter K; Wolpert MA; Kousaie S; Gracco VL; Klein D; Titone D; Phillips NA; Baum SR; 34603133
PSYCHOLOGY
12 Sharp U-Net: Depthwise convolutional network for biomedical image segmentation Zunair H; Ben Hamza A; 34348214
ENCS
13 LUMINOUS database: lumbar multifidus muscle segmentation from ultrasound images Belasso CJ; Behboodi B; Benali H; Boily M; Rivaz H; Fortin M; 33097024
PERFORM
14 Two-stage ultrasound image segmentation using U-Net and test time augmentation. Amiri M; Brooks R; Behboodi B; Rivaz H; 32350786
IMAGING
15 Statistical learning of multiple speech streams: A challenge for monolingual infants. Benitez VL, Bulgarelli F, Byers-Heinlein K, Saffran JR, Weiss DJ 31444822
CONCORDIA
16 High resolution atlas of the venous brain vasculature from 7 T quantitative susceptibility maps. Huck J, Wanner Y, Fan AP, Jäger AT, Grahl S, Schneider U, Villringer A, Steele CJ, Tardif CL, Bazin PL, Gauthier CJ 31278570
PSYCHOLOGY
17 The first MICCAI challenge on PET tumor segmentation. Hatt M, Laurent B, Ouahabi A, Fayad H, Tan S, Li L, Lu W, Jaouen V, Tauber C, Czakon J, Drapejkowski F, Dyrka W, Camarasu-Pop S, Cervenansky F, Girard P, Glatard T, Kain M, Yao Y, Barillot C, Kirov A, Visvikis D 29268169
IMAGING
18 A dataset of multi-contrast population-averaged brain MRI atlases of a Parkinson׳s disease cohort. Xiao Y, Fonov V, Chakravarty MM, Beriault S, Al Subaie F, Sadikot A, Pike GB, Bertrand G, Collins DL 28491942
PERFORM

 

Title:Two-stage ultrasound image segmentation using U-Net and test time augmentation.
Authors:Amiri MBrooks RBehboodi BRivaz H
Link:https://www.ncbi.nlm.nih.gov/pubmed/32350786
DOI:10.1007/s11548-020-02158-3
Publication:International journal of computer assisted radiology and surgery
Keywords:DetectionSegmentationU-NetUltrasound
PMID:32350786 Category:Int J Comput Assist Radiol Surg Date Added:2020-05-01
Dept Affiliation: IMAGING
1 Concordia University, 1493 Saint-Catherine St W, Montreal, Quebec, Canada. amirim@encs.concordia.ca.
2 Concordia University, 1493 Saint-Catherine St W, Montreal, Quebec, Canada.
3 Nuance Communications, 1500 Boulevard Robert-Bourassa, Montreal, Quebec, H3A 3S7, Canada.

Description:

PURPOSE: Detecting breast lesions using ultrasound imaging is an important application of computer-aided diagnosis systems. Several automatic methods have been proposed for breast lesion detection and segmentation; however, due to the ultrasound artefacts, and to the complexity of lesion shapes and locations, lesion or tumor segmentation from ultrasound breast images is still an open problem. In this paper, we propose using a lesion detection stage prior to the segmentation stage in order to improve the accuracy of the segmentation.

METHODS: We used a breast ultrasound imaging dataset which contained 163 images of the breast with either benign lesions or malignant tumors. First, we used a U-Net to detect the lesions and then used another U-Net to segment the detected region. We could show when the lesion is precisely detected, the segmentation performance substantially improves; however, if the detection stage is not precise enough, the segmentation stage also fails. Therefore, we developed a test-time augmentation technique to assess the detection stage performance.

RESULTS: By using the proposed two-stage approach, we could improve the average Dice score by 1.8% overall. The improvement was substantially more for images wherein the original Dice score was less than 70%, where average Dice score was improved by 14.5%.

CONCLUSIONS: The proposed two-stage technique shows promising results for segmentation of breast US images and has a much smaller chance of failure.

PMID: 32350786 [PubMed - indexed for MEDLINE]





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