AIで乳房細胞の「機械的年齢」からがんリスクを特定(Researchers Teach AI to Spot Cancer Risk by Squeezing Individual Breast Cells)

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2026-04-23 カリフォルニア大学バークレー校(UCB)

米カリフォルニア大学バークレー校の研究チームは、単一の乳腺細胞を「圧縮(スクイーズ)」してその力学的特性を測定し、がんリスクを判定するAI技術を開発した。細胞の硬さや変形しやすさといった物理的性質は、がん化の進行と密接に関連しており、本研究ではこれらのデータを機械学習で解析することで、高精度なリスク評価を実現した。従来の遺伝子検査や画像診断とは異なり、細胞レベルの力学情報を活用する新しいアプローチである点が特徴である。この手法により、早期段階でのがんリスク検出や個別化医療の高度化が期待され、診断精度の向上と負担軽減に寄与する可能性がある。

<関連情報>

MechanoAgeは、単一細胞の機械的特性に基づいて乳がんになりやすい人を特定する機械学習プラットフォームです MechanoAge, a machine learning platform to identify individuals susceptible to breast cancer based on mechanical properties of single cells

Stefan Hinz ∙ Sturla M. Grøndal ∙ Masaru Miyano ∙ Jennifer C. Lopez ∙ Kristen L. Cotner ∙ Taylor Thomsen ∙ et al.
eBioMedicine  Published:April 23, 2026
DOI:https://doi.org/10.1016/j.ebiom.2026.106241

AIで乳房細胞の「機械的年齢」からがんリスクを特定(Researchers Teach AI to Spot Cancer Risk by Squeezing Individual Breast Cells)

Summary

Background

Emerging evidence links cellular ageing and biophysical alterations with cancer susceptibility. Existing breast cancer risk models inadequately identify individuals at latent risk, particularly among women without known genetic mutations or family history. Risk is often underestimated or overestimated due to reliance on population-level data and absence of individualised tissue-based markers of breast cancer risk.

Methods

We profiled primary human mammary epithelial cells (HMECs) from women of varying ages and risk backgrounds using mechano-node-pore sensing (mechano-NPS), a high-throughput microfluidic platform that measures single-cell physical and mechanical properties. We developed a machine learning classifier, MechanoAge, to estimate chronological age based on mechanical phenotypes, and a biological age-based risk index, Mechano-RISQ. We further assessed cytoskeletal protein keratin 14 (KRT14) as a key mediator of underlying mechanical states through overexpression and knockdown experiments.

Findings

Epithelial cells from normal tissue of young BRCA1/2 mutation carriers (n = 4), women with family history of breast cancer (n = 3), and tissue contralateral to a tumour-bearing breast (n = 9) exhibited elevated Mechano-RISQ scores, which reflects accelerated biological ageing compared to age-matched controls (n = 18). KRT14 overexpression induced a biologically aged phenotype in cells obtained from younger women, whereas knockdown partially reversed this state in cells from older women. CyTOF profiling and modelling showed KRT14 modulation impacted protein expression signatures associated with ageing and risk.

Interpretation

Mechano-RISQ offers a proof of principle approach for identifying individuals at elevated risk of breast cancer, especially among average-risk populations, and may complement existing risk models by incorporating biophysical measures of mammary epithelial cell ageing.

Funding

NIH R01EB024989, R01CA237602, and P30CA033572, DOD BC181737, American Cancer Society—Fred Ross Desert Spirit Postdoctoral Fellowship (PF-21-184-01-CSM).

医療・健康
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