遠田 建 (エンダ ケン)

医学研究院特任助教

経歴

■ 経歴
経歴
  • 2026年04月 - 現在
    北海道大学, 連携研究センター 医学研究AI支援部門, 特任助教
  • 2021年03月 - 2023年04月
    北海道大学病院, 初期臨床研修医
学歴
  • 2022年04月 - 2026年03月, 北海道大学, 大学院医学研究院
  • 2012年04月 - 2021年03月, 北海道大学, 医学部医学科

研究活動情報

■ 論文
  • Transfer Learning Strategies for Pathological Foundation Models: A Systematic Evaluation in Brain Tumor Classification
    Ken Enda; Yoshitaka Oda; Zen‐ichi Tanei; Kenichi Satoh; Hiroaki Motegi; Shunsuke Terasaka; Shigeru Yamaguchi; Takahiro Ogawa; Lei Wang; Masumi Tsuda; Shinya Tanaka
    Pathology International, 2026年02月, [査読有り], [筆頭著者]
    研究論文(学術雑誌)
  • Artificial intelligence can extract important features for diagnosing axillary lymph node metastasis in early breast cancer using contrast-enhanced ultrasonography
    Tomohiro Oshino; Ken Enda; Hirokazu Shimizu; Megumi Sato; Mutsumi Nishida; Fumi Kato; Yoshitaka Oda; Mitsuchika Hosoda; Kohsuke Kudo; Norimasa Iwasaki; Shinya Tanaka; Masato Takahashi
    Scientific Reports, 2025年02月15日, [査読有り], [筆頭著者]
    英語, 研究論文(学術雑誌), Abstract
    Contrast-enhanced ultrasound (CEUS) plays a pivotal role in the diagnosis of primary breast cancer and in axillary lymph node (ALN) metastasis. However, the imaging features that are clinically crucial for lymph node metastasis have not been fully elucidated. Hence, we developed a bimodal model to predict ALN metastasis in patients with early breast cancer by integrating CEUS images with the annotated imaging features. The model adopted a light-gradient boosting machine to produce feature importance, enabling the extraction of clinically crucial imaging features. In this retrospective study, the diagnostic performance of the model was investigated using 788 CEUS images of ALNs obtained from 788 patients who underwent breast surgery between 2013 and 2021, with the ground truth defined by the pathological diagnosis. The results indicated that the test cohort had an area under the receiver operating characteristic curve (AUC) value of 0.93 (95% confidence interval: 0.88, 0.98). The model had an accuracy of 0.93, which was higher than the radiologist’s diagnosis (accuracy of 0.85). The most important imaging features were heterogeneous enhancement, diffuse cortical thickening, and eccentric cortical thickening. Our model has an excellent diagnostic performance, and the extracted imaging features could be crucial for confirming ALN metastasis in clinical settings.
  • Diagnosis on Ultrasound Images for Developmental Dysplasia of the Hip with a Deep Learning-Based Model Focusing on Signal Heterogeneity in the Bone Region
    Hirokazu Shimizu; Ken Enda; Hidenori Koyano; Takuya Ogawa; Daisuke Takahashi; Shinya Tanaka; Norimasa Iwasaki; Tomohiro Shimizu
    Diagnostics, 2025年02月07日, [査読有り], [筆頭著者]
    研究論文(学術雑誌)
  • Asphyxiation due to obstructive fibrinous tracheal pseudomembrane after closure of repeated tracheostomy in a case of von Recklinghausen disease
    Taiki Hara; Ken Enda; Taku Maeda; Yohei Ikebe; Hideki Ujiie; Masahiro Onozawa
    Respiratory Medicine Case Reports, 2025年, [査読有り]
    英語, 研究論文(学術雑誌)
  • Bimodal machine learning model for unstable hips in infants: integration of radiographic images with automatically-generated clinical measurements
    Hirokazu Shimizu; Ken Enda; Hidenori Koyano; Tomohiro Shimizu; Shun Shimodan; Komei Sato; Takuya Ogawa; Shinya Tanaka; Norimasa Iwasaki; Daisuke Takahashi
    Scientific Reports, 2024年08月01日, [査読有り], [筆頭著者]
    英語, 研究論文(学術雑誌)
  • Fatal case of subdural empyema caused by Campylobacter rectus and Slackia exigua
    Yuki Munekata; Saki Yamamoto; Shun Kato; Yutaro Kitagawa; Ken Enda; Nanase Okazaki; Satoshi Tanikawa; Zen-ichi Tanei; Yohei Ikebe; Takahiro Osawa; Soichiro Takamiya; Hideki Ujiie; Masahiro Onozawa; Satoshi Hirano; Miki Fujimura; Shinya Tanaka
    Autopsy Case Reports, 2023年, [査読有り]
    研究論文(学術雑誌)
  • Machine Learning Algorithms: Prediction and Feature Selection for Clinical Refracture after Surgically Treated Fragility Fracture
    Hirokazu Shimizu; Ken Enda; Tomohiro Shimizu; Yusuke Ishida; Hotaka Ishizu; Koki Ise; Shinya Tanaka; Norimasa Iwasaki
    Journal of Clinical Medicine, 2022年04月05日, [査読有り], [筆頭著者]
    英語, 研究論文(学術雑誌), Background: The number of patients with fragility fracture has been increasing. Although the increasing number of patients with fragility fracture increased the rate of fracture (refracture), the causes of refracture are multifactorial, and its predictors are still not clarified. In this issue, we collected a registry-based longitudinal dataset that contained more than 7000 patients with fragility fractures treated surgically to detect potential predictors for clinical refracture. Methods: Based on the fact that machine learning algorithms are often used for the analysis of a large-scale dataset, we developed automatic prediction models and clarified the relevant features for patients with clinical refracture. Formats of input data containing perioperative clinical information were table data. Clinical refracture was documented as the primary outcome if the diagnosis of fracture was made at postoperative outpatient care. A decision-tree-based model, LightGBM, had moderate accuracy for the prediction in the test and the independent dataset, whereas the other models had poor accuracy or worse. Results: From a clinical perspective, rheumatoid arthritis (RA) and chronic kidney disease (CKD) were noted as the relevant features for patients with clinical refracture, both of which were associated with secondary osteoporosis. Conclusion: The decision-tree-based algorithm showed the precise prediction of clinical refracture, in which RA and CKD were detected as the potential predictors. Understanding these predictors may improve the management of patients with fragility fractures.
■ 書籍等出版物
  • がんゲノム病理学
    田中, 伸哉; 西原, 広史, コラム記載
    文光堂, 2025年04月, 9784830604980, viii, 245p, 日本語, [その他]
■ 所属学協会
  • 日本メディカルAI学会
  • 日本病理学会
■ Works(作品等)
  • WSI Toolbox
    遠田建, 2026年11月17日 - 現在, WSI解析用ツール, [コンピュータソフト]
  • tym
    遠田建, 2017年06月16日, Luaで設定記述可能なターミナルエミュレーター, [コンピュータソフト]