The delineation of largely deformed brain midline using regression-based line detection network.


Journal

Medical physics
ISSN: 2473-4209
Titre abrégé: Med Phys
Pays: United States
ID NLM: 0425746

Informations de publication

Date de publication:
Nov 2020
Historique:
received: 23 12 2019
revised: 19 05 2020
accepted: 20 05 2020
pubmed: 30 5 2020
medline: 15 5 2021
entrez: 30 5 2020
Statut: ppublish

Résumé

The human brain has two cerebral hemispheres that are roughly symmetric and separated by a midline, which is nearly a straight line shown in axial computed tomography (CT) images in healthy subjects. However, brain diseases such as hematoma and tumors often cause midline shift, where the degree of shift can be regarded as a quantitative indication in clinical practice. To facilitate clinical evaluation, we need computer-aided methods to automate this quantification. Nevertheless, most existing studies focused on the landmark- or symmetry-based methods that provide only the existence of shift or its maximum distance, which could be easily affected by anatomical variability and large brain deformations. Intuitive results such as midline delineation or measurement are lacking. In this study, we focus on developing an automated and robust method based on the fully convolutional neural network for the delineation of midline in largely deformed brains. We propose a novel regression-based line detection network (RLDN) for the robust midline delineation, especially in largely deformed brains. Specifically, to improve the robustness of delineation in largely deformed brains, we regard the delineation of the midline as the skeleton extraction task and then use the multiscale bidirectional integration module to acquire more representative features. Based on the skeleton extraction, we incorporate the regression task into it to delineate more accurate and continuous midline, especially in largely deformed brains. Our study utilized the public CQ 500 dataset (128 subjects) for training with hold-out validation on 61 subjects from a private cohort accrued from a local hospital. The mean line distance error and F1-score were 1.17 ± 0.72 mm with 0.78 on CQ 500 test set, and 4.15 ± 3.97 mm with 0.61 on the private dataset. Besides, significant differences (P < 0.05) were observed between our method and other comparative ones on these two datasets. This work provides a novel solution to acquire robust delineation of the midline, especially in largely deformed brains, and achieves state-of-the-art performance on the public and our private dataset, which makes it possible for automated diagnosis of relevant brain diseases in the future.

Identifiants

pubmed: 32471017
doi: 10.1002/mp.14302
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

5531-5542

Subventions

Organisme : National Key Research and Development Program of China
ID : 2018YFC0116400
Organisme : National Natural Science Foundation of China (NSFC)
ID : 51907077
Organisme : National Natural Science Foundation of China (NSFC)
ID : 61672542
Organisme : National Natural Science Foundation of China (NSFC)
ID : 61573380
Organisme : Fundamental Research Funds for the Central South University
ID : 2018zzts566

Informations de copyright

© 2020 American Association of Physicists in Medicine.

Références

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Auteurs

Hao Wei (H)

School of Computer Science and Engineering, Central South University, Hunan, 410083, China.
Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.

Xiangyu Tang (X)

Department of Radiology, Tongji Hospital, Huazhong University of Science and Technology, Wuhan, 430030, China.

Minqing Zhang (M)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.
College of Software Engineering, Southeast University, Jiangsu, 211189, China.

Qingfeng Li (Q)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.
School of Biomedical Engineering, Southern Medical University, Guangdong, 518055, China.

Xiaodan Xing (X)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.
Medical Imaging Center, Shanghai Advanced Research Institute, Shanghai, 201210, China.

Xiang Sean Zhou (X)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.

Zhong Xue (Z)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.

Wenzhen Zhu (W)

Department of Radiology, Tongji Hospital, Huazhong University of Science and Technology, Wuhan, 430030, China.

Zailiang Chen (Z)

School of Computer Science and Engineering, Central South University, Hunan, 410083, China.

Feng Shi (F)

Shanghai United Imaging Intelligence Co., Ltd., Shanghai, 201807, China.

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