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Fully Automated Segmentation Models of Supratentorial Meningiomas Assisted by Inclusion of Normal Brain Images.
Hwang, Kihwan; Park, Juntae; Kwon, Young-Jae; Cho, Se Jin; Choi, Byung Se; Kim, Jiwon; Kim, Eunchong; Jang, Jongha; Ahn, Kwang-Sung; Kim, Sangsoo; Kim, Chae-Yong.
Afiliación
  • Hwang K; Department of Neurosurgery, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam-si 13620, Gyeonggi-do, Republic of Korea.
  • Park J; Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
  • Kwon YJ; Seoul National University College of Medicine, Seoul 03080, Republic of Korea.
  • Cho SJ; Department of Radiology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam-si 13620, Gyeonggi-do, Republic of Korea.
  • Choi BS; Department of Radiology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam-si 13620, Gyeonggi-do, Republic of Korea.
  • Kim J; Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
  • Kim E; Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
  • Jang J; Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
  • Ahn KS; Department of Functional Genome Institute, PDXen Co., Daejeon 34027, Republic of Korea.
  • Kim S; Cancer Research Institute, Seoul National University College of Medicine, Seoul 03080, Republic of Korea.
  • Kim CY; Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
J Imaging ; 8(12)2022 Dec 15.
Article en En | MEDLINE | ID: mdl-36547492
To train an automatic brain tumor segmentation model, a large amount of data is required. In this paper, we proposed a strategy to overcome the limited amount of clinically collected magnetic resonance image (MRI) data regarding meningiomas by pre-training a model using a larger public dataset of MRIs of gliomas and augmenting our meningioma training set with normal brain MRIs. Pre-operative MRIs of 91 meningioma patients (171 MRIs) and 10 non-meningioma patients (normal brains) were collected between 2016 and 2019. Three-dimensional (3D) U-Net was used as the base architecture. The model was pre-trained with BraTS 2019 data, then fine-tuned with our datasets consisting of 154 meningioma MRIs and 10 normal brain MRIs. To increase the utility of the normal brain MRIs, a novel balanced Dice loss (BDL) function was used instead of the conventional soft Dice loss function. The model performance was evaluated using the Dice scores across the remaining 17 meningioma MRIs. The segmentation performance of the model was sequentially improved via the pre-training and inclusion of normal brain images. The Dice scores improved from 0.72 to 0.76 when the model was pre-trained. The inclusion of normal brain MRIs to fine-tune the model improved the Dice score; it increased to 0.79. When employing BDL as the loss function, the Dice score reached 0.84. The proposed learning strategy for U-net showed potential for use in segmenting meningioma lesions.
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Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: J Imaging Año: 2022 Tipo del documento: Article

Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: J Imaging Año: 2022 Tipo del documento: Article