Literature DB >> 32712522

Holistic multitask regression network for multiapplication shape regression segmentation.

Clara M Tam1, Dong Zhang2, Bo Chen3, Terry Peters2, Shuo Li4.   

Abstract

A holistic multitask regression approach was implemented to tackle the limitations of clinical image analysis. Standard practice requires identifying multiple anatomic structures in multiple planes from multiple anatomic regions using multiple modalities. The proposed novel holistic multitask regression network (HMR-Net) formulates organ segmentation as a multitask learning problem. Multitask learning leverages the strength of joint task problem solving from capturing task correlations. HMR-Net performs multitask regression by estimating an organ's class, regional location, and precise contour coordinates. The estimation of each coordinate point also corresponds to another regression task. HMR-Net leverages hierarchical multiscale and fused organ features to handle nonlinear relationships between image appearance and distinct organ properties. Simultaneously, holistic shape information is captured by encoding coordinate correlations. The multitask pipeline enables the capturing of holistic organ information (e.g. class, location, shape) to perform shape regression for medical image segmentation. HMR-Net was validated on eight representative datasets obtained from a total of 222 subjects. A mean average precision and dice score reaching up to 0.81 and 0.93, respectively, was achieved on the representative multiapplication database. The generalized model demonstrates comparable or superior performance compared to state-of-the-art algorithms. The high-performance accuracy demonstrates our model as an effective general framework to perform organ shape regression in multiple applications. This method was proven to provide high-contrast sensitivity to delineate even the smallest and oddly shaped organs. HMR-Net's flexible framework holds great potential in providing a fully automatic preliminary analysis for multiple types of medical images.
Copyright © 2020 Elsevier B.V. All rights reserved.

Keywords:  Cross-stitch units; Deep learning; Manifold regularization; Multiapplication; Multitask learning; Shape regression segmentation

Mesh:

Year:  2020        PMID: 32712522     DOI: 10.1016/j.media.2020.101783

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  3 in total

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Authors:  Biao Qu; Jianpeng Cao; Chen Qian; Jinyu Wu; Jianzhong Lin; Liansheng Wang; Lin Ou-Yang; Yongfa Chen; Liyue Yan; Qing Hong; Gaofeng Zheng; Xiaobo Qu
Journal:  Quant Imaging Med Surg       Date:  2022-06

2.  A deep learning framework for vertebral morphometry and Cobb angle measurement with external validation.

Authors:  Danis Alukaev; Semen Kiselev; Tamerlan Mustafaev; Ahatov Ainur; Bulat Ibragimov; Tomaž Vrtovec
Journal:  Eur Spine J       Date:  2022-05-21       Impact factor: 2.721

3.  Diagnosis of COVID-19 Pneumonia Based on Graph Convolutional Network.

Authors:  Xiaoling Liang; Yuexin Zhang; Jiahong Wang; Qing Ye; Yanhong Liu; Jinwu Tong
Journal:  Front Med (Lausanne)       Date:  2021-01-21
  3 in total

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