Literature DB >> 25532205

Multi-Center MRI Carotid Plaque Component Segmentation Using Feature Normalization and Transfer Learning.

Arna van Engelen, Anouk C van Dijk, Martine T B Truijman, Ronald Van't Klooster, Annegreet van Opbroek, Aad van der Lugt, Wiro J Niessen, M Eline Kooi, Marleen de Bruijne.   

Abstract

Automated segmentation of plaque components in carotid artery magnetic resonance imaging (MRI) is important to enable large studies on plaque vulnerability, and for incorporating plaque composition as an imaging biomarker in clinical practice. Especially supervised classification techniques, which learn from labeled examples, have shown good performance. However, a disadvantage of supervised methods is their reduced performance on data different from the training data, for example on images acquired with different scanners. Reducing the amount of manual annotations required for each new dataset will facilitate widespread implementation of supervised methods. In this paper we segment carotid plaque components of clinical interest (fibrous tissue, lipid tissue, calcification and intraplaque hemorrhage) in a multi-center MRI study. We perform voxelwise tissue classification by traditional same-center training, and compare results with two approaches that use little or no annotated same-center data. These approaches additionally use an annotated set of different-center data. We evaluate 1) a nonlinear feature normalization approach, and 2) two transfer-learning algorithms that use same and different-center data with different weights. Results showed that the best results were obtained for a combination of feature normalization and transfer learning. While for the other approaches significant differences in voxelwise or mean volume errors were found compared with the reference same-center training, the proposed approach did not yield significant differences from that reference. We conclude that both extensive feature normalization and transfer learning can be valuable for the development of supervised methods that perform well on different types of datasets.

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Year:  2014        PMID: 25532205     DOI: 10.1109/TMI.2014.2384733

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  4 in total

1.  Transfer learning from RF to B-mode temporal enhanced ultrasound features for prostate cancer detection.

Authors:  Shekoofeh Azizi; Parvin Mousavi; Pingkun Yan; Amir Tahmasebi; Jin Tae Kwak; Sheng Xu; Baris Turkbey; Peter Choyke; Peter Pinto; Bradford Wood; Purang Abolmaesumi
Journal:  Int J Comput Assist Radiol Surg       Date:  2017-03-27       Impact factor: 2.924

Review 2.  Multimodality carotid plaque tissue characterization and classification in the artificial intelligence paradigm: a narrative review for stroke application.

Authors:  Luca Saba; Skandha S Sanagala; Suneet K Gupta; Vijaya K Koppula; Amer M Johri; Narendra N Khanna; Sophie Mavrogeni; John R Laird; Gyan Pareek; Martin Miner; Petros P Sfikakis; Athanasios Protogerou; Durga P Misra; Vikas Agarwal; Aditya M Sharma; Vijay Viswanathan; Vijay S Rathore; Monika Turk; Raghu Kolluri; Klaudija Viskovic; Elisa Cuadrado-Godia; George D Kitas; Neeraj Sharma; Andrew Nicolaides; Jasjit S Suri
Journal:  Ann Transl Med       Date:  2021-07

3.  Quantitative Analysis of Lipid-Rich Necrotic Core in Carotid Atherosclerotic Plaques by In Vivo Magnetic Resonance Imaging and Clinical Outcomes.

Authors:  Jun Xia; Anyu Yin; Zhenzhou Li; Xin Liu; Xianghong Peng; Ni Xie
Journal:  Med Sci Monit       Date:  2017-06-06

4.  Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations.

Authors:  RuoXi Qin; Huike Zhang; LingYun Jiang; Kai Qiao; Jinjin Hai; Jian Chen; Junling Xu; Dapeng Shi; Bin Yan
Journal:  Comput Math Methods Med       Date:  2020-01-24       Impact factor: 2.238

  4 in total

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