研究者業績

甲斐 千遥

カイ チハル  (Chiharu Kai)

基本情報

所属
藤田医科大学 医療科学部・研究推進ユニット・知能情報工学分野

研究者番号
90963934
J-GLOBAL ID
202201015704098560
researchmap会員ID
R000037703

論文

 20
  • 佐藤郁美, 廣野悠太, 甲斐千遥, 吉田皓文, 西山博久, 児玉直樹, 笠井聡
    看護理工学会誌 13 75-83 2025年11月  査読有り
  • Chiharu Kai, Satoshi Kasai, Rei Teramoto, Akifumi Yoshida, Hideaki Tamori, Satoshi Kondo, Phan Thanh Hai, Nguyen Van Cong, Dinh Minh Tuan, Thai Van Loc, Naoki Kodama
    Frontiers in Radiology 5(1703927) 2025年11月  査読有り
  • Sachi Ishizuka, Chiharu Kai, Tsunehiro Ohtsuka, Hitoshi Futamura, Naoki Kodama, Satoshi Kasai
    Cureus 17(3) e80545 2025年4月  査読有り
  • Akifumi Yoshida, Yoichi Sato, Chiharu Kai, Yuta Hirono, Ikumi Sato, Satoshi Kasai
    Frontiers in Medicine 12 2025年3月26日  査読有り
    Introduction Osteoporosis increases the risk of fragility fractures, especially of the lumbar spine and femur. As fractures affect life expectancy, it is crucial to detect the early stages of osteoporosis. Dual X-ray absorptiometry (DXA) is the gold standard for bone mineral density (BMD) measurement and the diagnosis of osteoporosis; however, its low screening usage is problematic. The accurate estimation of BMD using chest radiographs (CXR) could expand screening opportunities. This study aimed to indicate the clinical utility of osteoporosis screening using deep-learning-based estimation of BMD using bidirectional CXRs. Methods This study included 1,624 patients aged ≥ 20 years who underwent DXA and bidirectional (frontal and lateral) chest radiography at a medical facility. A dataset was created using BMD and bidirectional CXR images. Inception-ResNet-V2-based models were trained using three CXR input types (frontal, lateral, and bidirectional). We compared and evaluated the BMD estimation performances of the models with different input information. Results In the comparison of models, the model with bidirectional CXR showed the highest accuracy. The correlation coefficients between the model estimates and DXA measurements were 0.766 and 0.683 for the lumbar spine and femoral BMD, respectively. Osteoporosis detection based on bidirectional CXR showed higher sensitivity and specificity than the models with single-view CXR input, especially for osteoporosis based on T-score ≤ –2.5, with 92.8% sensitivity at 50.0% specificity. Discussion These results suggest that bidirectional CXR contributes to improved accuracy of BMD estimation and osteoporosis screening compared with single-view CXR. This study proposes a new approach for early detection of osteoporosis using a deep learning model with frontal and lateral CXR inputs. BMD estimation using bidirectional CXR showed improved detection performance for low bone mass and osteoporosis, and has the potential to be used as a clinical decision criterion. The proposed method shows potential for more appropriate screening decisions, suggesting its usefulness in clinical practice.
  • Chiharu Kai, Takahiro Irie, Yuuki Kobayashi, Hideaki Tamori, Satoshi Kondo, Akifumi Yoshida, Yuta Hirono, Ikumi Sato, Kunihiko Oochi, Satoshi Kasai
    Journal of Imaging Informatics in Medicine 2025年2月14日  査読有り筆頭著者

講演・口頭発表等

 51

担当経験のある科目(授業)

 6

所属学協会

 2

共同研究・競争的資金等の研究課題

 3