University of Hyogo Academic Staff search

Takemura Tadamasa

  (竹村 匡正)

Profile Information

Affiliation
University of Hyogo
Professor, Graduate School of Health Sciences, Kobe University
Degree
博士(保健学)(Mar, 2003, 大阪大学)

J-GLOBAL ID
200901083307620880
researchmap Member ID
6000016392

京都大学大学院医学研究科 非常勤講師

姫路獨協大学 非常勤講師

国立循環器病研究センター 客員研究員

神戸大学医学部附属病院 医学研究員


Research Interests

 3

Papers

 124
  • 竹村 匡正
    Precision Medicine, 7(12) 71-74, Nov, 2024  Lead authorCorresponding author
  • Precision Medicine, 7(9) 47-51, Aug, 2024  Lead authorCorresponding author
  • Kenji Yoshitsugu, Eisuke Shimizu, Hiroki Nishimura, Rohan Khemlani, Shintaro Nakayama, Tadamasa Takemura
    Bioengineering, 11(3) 273-273, Mar 12, 2024  Peer-reviewedCorresponding author
    Ophthalmological services face global inadequacies, especially in low- and middle-income countries, which are marked by a shortage of practitioners and equipment. This study employed a portable slit lamp microscope with video capabilities and cloud storage for more equitable global diagnostic resource distribution. To enhance accessibility and quality of care, this study targets corneal opacity, which is a global cause of blindness. This study has two purposes. The first is to detect corneal opacity from videos in which the anterior segment of the eye is captured. The other is to develop an AI pipeline to detect corneal opacities. First, we extracted image frames from videos and processed them using a convolutional neural network (CNN) model. Second, we manually annotated the images to extract only the corneal margins, adjusted the contrast with CLAHE, and processed them using the CNN model. Finally, we performed semantic segmentation of the cornea using annotated data. The results showed an accuracy of 0.8 for image frames and 0.96 for corneal margins. Dice and IoU achieved a score of 0.94 for semantic segmentation of the corneal margins. Although corneal opacity detection from video frames seemed challenging in the early stages of this study, manual annotation, corneal extraction, and CLAHE contrast adjustment significantly improved accuracy. The incorporation of manual annotation into the AI pipeline, through semantic segmentation, facilitated high accuracy in detecting corneal opacity.
  • Kenji Yoshitsugu, Kazumasa Kishimoto, Tadamasa Takemura
    2023 IEEE EMBS Special Topic Conference on Data Science and Engineering in Healthcare, Medicine and Biology, Dec 7, 2023  Peer-reviewed
  • Takayuki Mototani, Tadamasa Takemura
    45th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Jul, 2023  Peer-reviewed

Misc.

 158

Presentations

 27

Research Projects

 19