研究者業績

岡 宗一

オカ ソウイチ  (Souichi Oka)

基本情報

所属
武蔵野大学 データサイエンス学部 教授

J-GLOBAL ID
202501016620735953
researchmap会員ID
R000091022

論文

 105
  • Souichi Oka, Kiyo Yoshida, Yoshiyasu Takefuji
    The Journal of thoracic and cardiovascular surgery 171(3) e78-e79 2026年3月  査読有り筆頭著者
  • Souichi Oka, Yoshiki Takahashi, Yoshiyasu Takefuji
    Annals of epidemiology 115 76-77 2026年3月  査読有り筆頭著者
  • Souichi Oka, Nobuko Inoue, Yoshiyasu Takefuji
    Journal of dairy science 109(3) 2071-2072 2026年3月  査読有り筆頭著者
  • Souichi Oka, Kiyo Yoshida, Yoshiyasu Takefuji
    Clinical nutrition ESPEN 102982-102982 2026年2月25日  査読有り筆頭著者
  • Souichi Oka, Yoshiyasu Takefuji
    Cancers 18(4) 2026年2月11日  査読有り招待有り筆頭著者
    BACKGROUND: Artificial intelligence (AI) is becoming important in oncology, supporting risk prediction, treatment planning, and biomarker discovery. However, current evaluation practices often assume that high predictive accuracy implies reliable interpretation-a misconception that may undermine reproducibility and clinical decision-making. This study aims to reassess interpretability by introducing feature ranking order consistency as a stability-focused metric to evaluate how model explanations respond to minimal input perturbations. METHODS: Using The Cancer Genome Atlas (TCGA) breast cancer multi-omics dataset, we compared supervised models-Linear Regression, Least Absolute Shrinkage and Selection Operator (LASSO), Random Forest, and Extreme Gradient Boosting (XGBoost)-with unsupervised and statistical methods, including Principal Component Analysis (PCA), Highly Variable Gene Selection, and Spearman's rank correlation. Each method produced a Top 20 feature ranking, and stability was assessed by testing whether rankings remained consistent after removing the top-ranked feature. Predictive performance was evaluated using a Random Forest classifier with stratified 10-fold cross-validation. RESULTS: Supervised models exhibited unstable feature importance rankings even under minimal perturbations (<0.1% feature removal), suggesting that high predictive accuracy may obscure fragile or misleading explanations. In contrast, Highly Variable Gene Selection and Spearman's correlation consistently produced stable, biologically coherent feature sets and maintained competitive predictive performance. CONCLUSIONS: Interpretive instability is a major limitation of many machine learning models in oncology. Incorporating stability-based criteria-such as feature ranking consistency-into evaluation frameworks is essential for ensuring reproducible, trustworthy, and clinically actionable AI. As AI adoption accelerates, prioritizing interpretability alongside accuracy is critical for responsible deployment in precision oncology.

MISC

 21

講演・口頭発表等

 9

担当経験のある科目(授業)

 2
  • 1998年4月 - 2001年3月
    情報処理  (東京工科大学 メディア学部)
  • 1996年4月 - 1998年3月
    情報処理  (小田原高等看護専門学校)

所属学協会

 1

産業財産権

 84