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Deep-learning-based automatic segmentation and classification for craniopharyngiomas.
Yan, Xiaorong; Lin, Bingquan; Fu, Jun; Li, Shuo; Wang, He; Fan, Wenjian; Fan, Yanghua; Feng, Ming; Wang, Renzhi; Fan, Jun; Qi, Songtao; Jiang, Changzhen.
Afiliação
  • Yan X; Department of Neurosurgery, First affiliated Hospital of Fujian Medical University, Fuzhou, Fujian, China.
  • Lin B; Department of Medical Image Center, Southern Medical University, Nanfang Hospital, Guangzhou, China.
  • Fu J; Department of Neurosurgery, First affiliated Hospital of Fujian Medical University, Fuzhou, Fujian, China.
  • Li S; Department of Plastic Surgery, Peking Union Medical College Hospital, Beijing, China.
  • Wang H; Department of Neurosurgery, Peking Union Medical College Hospital, Beijing, China.
  • Fan W; Department of Neurosurgery, Xuanwu Hospital, Capital Medical University, China International Neuroscience Institute, Beijing, China.
  • Fan Y; Department of Neurosurgery, First affiliated Hospital of Fujian Medical University, Fuzhou, Fujian, China.
  • Feng M; Department of Neurosurgery, Beijing Tiantan Hospital, Beijing Neurosurgical Institute, Capital Medical University, Beijing, China.
  • Wang R; Department of Neurosurgery, Peking Union Medical College Hospital, Beijing, China.
  • Fan J; Department of Neurosurgery, Peking Union Medical College Hospital, Beijing, China.
  • Qi S; Department of Neurosurgery, Southern Medical University, Nanfang Hospital, Fuzhou, Fujian, China.
  • Jiang C; Department of Neurosurgery, Southern Medical University, Nanfang Hospital, Fuzhou, Fujian, China.
Front Oncol ; 13: 1048841, 2023.
Article em En | MEDLINE | ID: mdl-37213305
ABSTRACT

Objective:

Neuronavigation and classification of craniopharyngiomas can guide surgical approaches and prognostic information. The QST classification has been developed according to the origin of craniopharyngiomas; however, accurate preoperative automatic segmentation and the QST classification remain challenging. This study aimed to establish a method to automatically segment multiple structures in MRIs, detect craniopharyngiomas, and design a deep learning model and a diagnostic scale for automatic QST preoperative classification.

Methods:

We trained a deep learning network based on sagittal MRI to automatically segment six tissues, including tumors, pituitary gland, sphenoid sinus, brain, superior saddle cistern, and lateral ventricle. A deep learning model with multiple inputs was designed to perform preoperative QST classification. A scale was constructed by screening the images.

Results:

The results were calculated based on the fivefold cross-validation method. A total of 133 patients with craniopharyngioma were included, of whom 29 (21.8%) were diagnosed with type Q, 22 (16.5%) with type S and 82 (61.7%) with type T. The automatic segmentation model achieved a tumor segmentation Dice coefficient of 0.951 and a mean tissue segmentation Dice coefficient of 0.8668 for all classes. The automatic classification model and clinical scale achieved accuracies of 0.9098 and 0.8647, respectively, in predicting the QST classification.

Conclusions:

The automatic segmentation model can perform accurate multi-structure segmentation based on MRI, which is conducive to clearing tumor location and initiating intraoperative neuronavigation. The proposed automatic classification model and clinical scale based on automatic segmentation results achieve high accuracy in the QST classification, which is conducive to developing surgical plans and predicting patient prognosis.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: Front Oncol Ano de publicação: 2023 Tipo de documento: Article País de afiliação: China

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: Front Oncol Ano de publicação: 2023 Tipo de documento: Article País de afiliação: China