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Synthetic temporal bone CT generation from UTE-MRI using a cycleGAN-based deep learning model: advancing beyond CT-MR imaging fusion.
You, Sung-Hye; Cho, Yongwon; Kim, Byungjun; Kim, Jeeho; Im, Gi Jung; Park, Euyhyun; Kim, InSeong; Kim, Kyung Min; Kim, Bo Kyu.
Afiliação
  • You SH; Department of Radiology, Anam Hospital, Korea University College of Medicine, Seoul, Korea.
  • Cho Y; Biomedical Research Center, Korea University College of Medicine, Seoul, Korea.
  • Kim B; Department of Computer Science and Engineering, Soonchunhyang University, Asan-si, Korea.
  • Kim J; Department of Radiology, Anam Hospital, Korea University College of Medicine, Seoul, Korea. bj1492.kim@gmail.com.
  • Im GJ; Department of Data Science, Korea University College of Informatics, Seoul, Korea.
  • Park E; Department of Otorhinolaryngology-Head and Neck Surgery, Korea University College of Medicine, Seoul, Korea.
  • Kim I; Department of Otorhinolaryngology-Head and Neck Surgery, Korea University College of Medicine, Seoul, Korea.
  • Kim KM; Siemens Healthineers, Erlangen, Germany.
  • Kim BK; Department of Radiology, Anam Hospital, Korea University College of Medicine, Seoul, Korea.
Eur Radiol ; 2024 Jul 18.
Article em En | MEDLINE | ID: mdl-39026063
ABSTRACT

OBJECTIVES:

The aim of this study is to develop a deep-learning model to create synthetic temporal bone computed tomography (CT) images from ultrashort echo-time magnetic resonance imaging (MRI) scans, thereby addressing the intrinsic limitations of MRI in localizing anatomic landmarks in temporal bone CT. MATERIALS AND

METHODS:

This retrospective study included patients who underwent temporal MRI and temporal bone CT within one month between April 2020 and March 2023. These patients were randomly divided into training and validation datasets. A CycleGAN model for generating synthetic temporal bone CT images was developed using temporal bone CT and pointwise encoding-time reduction with radial acquisition (PETRA). To assess the model's performance, the pixel count in mastoid air cells was measured. Two neuroradiologists evaluated the successful generation rates of 11 anatomical landmarks.

RESULTS:

A total of 102 patients were included in this study (training dataset, n = 54, mean age 58 ± 14, 34 females (63%); validation dataset, n = 48, mean age 61 ± 13, 29 females (60%)). In the pixel count of mastoid air cells, no difference was observed between synthetic and real images (679 ± 342 vs 738 ± 342, p = 0.13). For the six major anatomical sites, the positive generation rates were 97-100%, whereas those of the five major anatomical structures ranged from 24% to 83%.

CONCLUSION:

We developed a model to generate synthetic temporal bone CT images using PETRA MRI. This model can provide information regarding the major anatomic sites of the temporal bone using MRI. CLINICAL RELEVANCE STATEMENT The proposed algorithm addresses the primary limitations of MRI in localizing anatomic sites within the temporal bone. KEY POINTS CT is preferred for imaging the temporal bone, but has limitations in differentiating pathology there. The model achieved a high success rate in generating synthetic images of six anatomic sites. This can overcome the limitations of MRI in visualizing key anatomic sites in the temporal skull.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article