研究者業績

川田 奈緒子

カワタ ナオコ  (NAOKO KAWATA)

基本情報

所属
千葉大学 大学院医学研究院 特任准教授

研究者番号
00400896
ORCID ID
 https://orcid.org/0000-0002-4083-4531
J-GLOBAL ID
202001012260082986
researchmap会員ID
R000001410

論文

 58
  • Yuma Iwao, Naoko Kawata, Yuki Sekiguchi, Hideaki Haneishi
    Heliyon 10(17) e37272 2024年9月15日  査読有り
    RATIONALE AND OBJECTIVES: To analyze morphological changes in patients with COVID-19-associated pneumonia over time, a nonrigid registration technique is required that reduces differences in respiratory phase and imaging position and does not excessively deform the lesion region. A nonrigid registration method using deep learning was applied for lung field alignment, and its practicality was verified through quantitative evaluation, such as image similarity of whole lung region and image similarity of lesion region, as well as visual evaluation by a physician. MATERIALS AND METHODS: First, the lung field positions and sizes of the first and second CT images were roughly matched using a classical registration method based on iterative calculations as a preprocessing step. Then, voxel-by-voxel transformation was performed using VoxelMorph, a nonrigid deep learning registration method. As an objective evaluation, the similarity of the images was calculated. To evaluate the invariance of image features in the lesion site, primary statistics and 3D shape features were calculated and statistically analyzed. Furthermore, as a subjective evaluation, the similarity of images and whether nonrigid transformation caused unnatural changes in the shape and size of the lesion region were visually evaluated by a pulmonologist. RESULTS: The proposed method was applied to 509 patient data points with high image similarity. The variances in histogram characteristics before and after image deformation were confirmed. Visual evaluation confirmed the agreement between the shape and internal structure of the lung field and the natural deformation of the lesion region. CONCLUSION: The developed nonrigid registration method was shown to be effective for quantitative time series analysis of the lungs.
  • Xingyu Zhou, Chen Ye, Takayuki Okamoto, Yuma Iwao, Naoko Kawata, Ayako Shimada, Hideaki Haneishi
    Japanese Journal of Radiology 2024年8月3日  査読有り
  • Xingyu Zhou, Chen Ye, Yuma Iwao, Takayuki Okamoto, Naoko Kawata, Ayako Shimada, Hideaki Haneishi
    Diagnostics 2023年10月  査読有り
  • Naoko Kawata, Yuma Iwao, Yukiko Matsuura, Masaki Suzuki, Ryogo Ema, Yuki Sekiguchi, Hirotaka Sato, Akira Nishiyama, Masaru Nagayoshi, Yasuo Takiguchi, Takuji Suzuki, Hideaki Haneishi
    Japanese journal of radiology 2023年7月13日  査読有り
    PURPOSE: As of March 2023, the number of patients with COVID-19 worldwide is declining, but the early diagnosis of patients requiring inpatient treatment and the appropriate allocation of limited healthcare resources remain unresolved issues. In this study we constructed a deep-learning (DL) model to predict the need for oxygen supplementation using clinical information and chest CT images of patients with COVID-19. MATERIALS AND METHODS: We retrospectively enrolled 738 patients with COVID-19 for whom clinical information (patient background, clinical symptoms, and blood test findings) was available and chest CT imaging was performed. The initial data set was divided into 591 training and 147 evaluation data. We developed a DL model that predicted oxygen supplementation by integrating clinical information and CT images. The model was validated at two other facilities (n = 191 and n = 230). In addition, the importance of clinical information for prediction was assessed. RESULTS: The proposed DL model showed an area under the curve (AUC) of 89.9% for predicting oxygen supplementation. Validation from the two other facilities showed an AUC > 80%. With respect to interpretation of the model, the contribution of dyspnea and the lactate dehydrogenase level was higher in the model. CONCLUSIONS: The DL model integrating clinical information and chest CT images had high predictive accuracy. DL-based prediction of disease severity might be helpful in the clinical management of patients with COVID-19.
  • 佐藤 広崇, 川田 奈緒子, 島田 絢子, 鈴木 拓児
    日本放射線技術学会総会学術大会予稿集 79回 176-176 2023年3月  

MISC

 138

共同研究・競争的資金等の研究課題

 5