脳解剖の年齢・性別パターンからアルツハイマー病を予測する研究(WPI Study IDs Age- and Sex-Based Patterns in Brain Anatomy to Predict Alzheimer’s)

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2026-03-05 ウースター工科大学 (WPI)

米国ウースター工科大学(WPI)の研究チームは、アルツハイマー病の発症をより早期に予測するための新しい解析手法を開発した。研究では、脳画像データや臨床情報など複数の医療データを統合し、機械学習を用いて将来の認知機能低下やアルツハイマー病発症の可能性を予測するモデルを構築した。モデルは患者ごとのパターンを解析し、従来よりも早い段階で疾患進行の兆候を検出できる可能性を示した。これにより、発症前または初期段階で治療や生活介入を行うための判断材料を提供できると期待される。研究者は、この手法が臨床診断の補助や患者のリスク評価の精度向上に役立ち、将来的には個別化医療やアルツハイマー病研究の進展にも貢献するとしている。

<関連情報>

神経解剖学に基づく機械学習による性別と年齢を問わないアルツハイマー病の予測 Neuroanatomical-based machine learning prediction of Alzheimer’s Disease across sex and age

Bhaavin K. Jogeshwar ∙ Senbao Lu ∙ Benjamin C. Nephew
Neuroscience  Published:December 14, 2025
DOI:https://doi.org/10.1016/j.neuroscience.2025.12.030

Graphical abstract

脳解剖の年齢・性別パターンからアルツハイマー病を予測する研究(WPI Study IDs Age- and Sex-Based Patterns in Brain Anatomy to Predict Alzheimer’s)

Highlights

  • FastSurfer enabled rapid volumetric analysis of 815 MRI scans.
  • Feature importance rankings guided the interpretation of structural MRI predictors.
  • Hippocampus, amygdala, and entorhinal cortex were top-ranked in all subgroup analyses.
  • Random Forest classified AD, from MCI, and CN with 92.87% accuracy.
  • Sex and age subgroups revealed distinct regional patterns of brain atrophy.

Abstract

Alzheimer’s Disease (AD) is a progressive neurodegenerative disorder characterized by cognitive decline and memory loss. In 2024 it affected approximately 1 in 9 people aged 65 and older in the U.S., 6.9 million individuals. Early detection and accurate AD diagnosis are crucial for improving patient outcomes. Magnetic resonance imaging (MRI) has emerged as a valuable tool for examining brain structure and identifying potential AD biomarkers. This study performs predictive analyses by employing machine learning techniques to identify key brain regions associated with AD using numerical data derived from anatomical MRI scans, going beyond standard statistical methods. Using the Random Forest Algorithm, we achieved 92.87 % accuracy in detecting AD from Mild Cognitive Impairment and Cognitive Normals. Subgroup analyses across nine sex- and age-based cohorts (69–76 years, 77–84 years, and unified 69–84 years) revealed the hippocampus, amygdala, and entorhinal cortex as con– sistent top-rank predictors. These regions showed distinct volume reductions across age and sex groups, reflecting distinct age- and sex-related neuroanatomical patterns. Younger males and females (aged 69–76) exhibited volume decreases in the right hippocampus, suggesting its importance in the early stages of AD. Older males (77–84) showed substantial volume decreases in the left inferior temporal cortex. The left middle temporal cortex showed decreased volume in females, suggesting a potential female-specific influence, while the right entorhinal cortex may have a male-specific impact. These age-specific sex differences could inform clinical research and treatment strategies, aiding in identifying neuroanatomical markers and therapeutic targets for future clinical interventions.

医療・健康
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