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

 108
  • Souichi Oka, Kiyo Yoshida, Yoshiyasu Takefuji
    MICROBIAL RISK ANALYSIS 31 2026年6月  査読有り筆頭著者
  • Souichi Oka, Takuma Yamazaki, Yoshiyasu Takefuji
    Psychiatry research 360 117104-117104 2026年6月  査読有り筆頭著者
    This critique evaluates Monti et al.'s investigation into associations between air pollution, apparent temperature, and schizophrenia severity. While their findings indicate significant short‑ and medium‑term effects of PM10 and thermal stress on PANSS scores, several methodological limitations warrant caution. Their study relies on residential exposure assignments, which may not capture individual mobility or indoor environments, potentially introducing substantial exposure misclassification. Despite appropriately modeling delayed and non-linear effects, the DLNM's reliance on predefined spline structures may oversimplify the complex, synergistic interactions among atmospheric variables. Seasonal discrepancies-such as the absence of PM10 effects in autumn-winter-may reflect unmodeled dependencies or limited pollutant data, particularly for PM2.5 and black carbon. To address these constraints, future research should incorporate flexible, data‑driven approaches, particularly those capable of uncovering latent structures within environmental mixtures. Unsupervised feature‑clustering methods can identify correlated pollutant groupings and reduce dimensional noise, while rank‑based correlation metrics provide robust assessment of non‑linear dependencies that are often obscured by parametric spline specifications. These non‑parametric techniques can complement DLNM by capturing multivariate synergies and interaction patterns that rigid basis structures may overlook. Overall, integrating such approaches is essential for advancing analytical capacity and improving risk assessment for vulnerable psychiatric populations.
  • Souichi Oka, Kiyo Yoshida, Yoshiyasu Takefuji
    The journal of pain 41 106179-106179 2026年4月  査読有り筆頭著者
  • Souichi Oka, Kota Takemura, Yoshiyasu Takefuji
    Briefings in bioinformatics 27(2) 2026年3月1日  査読有り筆頭著者
    Li et al. (CircRM: Profiling circular RNA modifications from nanopore direct RNA sequencing. Brief Bioinform 2026;27:bbaf726.) introduced Circular RNA Modifications (CircRM), a computational framework employing eXtreme Gradient Boosting and SHapley Additive exPlanations (SHAP) to profile RNA modifications in circular RNAs, achieving high predictive accuracy. However, we argue that strong predictive performance does not validate the biological reliability of the resulting feature-importance rankings. In heterogeneous feature spaces, tree-based models exhibit inherent biases, favoring continuous, high-cardinality variables-such as genomic position-over sparse sequence patterns, potentially obscuring true biological determinants. Furthermore, reliance on SHAP introduces theoretical vulnerabilities; recent findings on attribution limitations indicate that baseline sensitivity can decouple explanations from local mechanistic behavior. To address these analytical pitfalls, we advocate for a robust framework incorporating Highly Variable Gene Selection and Feature Agglomeration to mitigate multicollinearity, complemented by model-agnostic non-parametric methods such as Spearman's rho and Kendall's tau. Adopting these strategies ensures that computational profiling yields biologically actionable insights rather than reflecting statistical artifacts.
  • Souichi Oka, Yoshiyasu Takefuji
    Clinical lung cancer 27(2) 197-198 2026年3月  査読有り筆頭著者

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