Abstract
Introduction
Cancer and ageing have a bidirectional relationship: age is the strongest risk factor for cancer, and cancer and treatments can accelerate ageing. Consequently, biological age of patients with cancer is likely to deviate from chronological age. Validated biomarkers of biological age are needed to quantify this and stratify interventions to minimise accelerated ageing.
Methods
Using the BioAge R Package, PhenoAge was calculated from eight blood test results of patients attending the Geriatric Oncology Liaison Development (GOLD) clinic at Guy’s Hospital between 2022 and 2025. PhenoAgeAccel, a biomarker of accelerated ageing, was the residual from a linear regression of PhenoAge by age.
Results
Data were available for 173 patients (62% male). Mean PhenoAge was higher than mean age (84.3 (12.6) vs 76.2 (7.24), p<0.001), though the two were correlated (r=0.579, p<0.001). Unlike age, PhenoAge and PhenoAgeAccel were associated with one-year mortality (PhenoAge OR = 1.083, 95% CI: 1.038-1.136; PhenoAgeAccel OR = 1.096, 95% CI: 1.047-1.155, p<0.001).
In all patients, PhenoAge correlated with Clinical Frailty Scale and Timed Up and Go (CFS: Rs=0.31, p<0.001; TUG: Rs=0.25, p<0.005), whereas there were no correlations with age (CFS: Rs=0.1, p=0.21; TUG: Rs=0.16, p=0.07). PhenoAgeAccel correlated with the number of CGA interventions made per patient (Rs=0.17, p<0.05), but age and PhenoAge did not.
Patients with diabetes had a higher PhenoAgeAccel (3.40 (9.78) vs -1.71 (10.53), p=0.002). In patients receiving systemic anti-cancer treatment (SACT), PhenoAgeAccel pre-SACT was lower than when measured post-SACT (2.18 (10.64) vs. -2.87 (7.98); p=0.048) overall and in matched samples (n = 21, 7.76 ± 11.98 vs -2.87 ± 7.98, p<0.001).
Conclusions
PhenoAgeAccel is a promising biomarker to identify older people with cancer who may benefit from holistic geriatric assessment, dose reductions, or future geroprotective measures. This process could be automated through integration of PhenoAge within electronic healthcare record systems and clinician alerts.
Comments
Always good to routine…
Always good to routine hospital data being utilised in scores like this - interesting stuff! How long after chemo were the tests done? Was this repeated at another time point later on in their recovery? I imagine some of the ageing effects of chemo might relate to chemo induced cellular senescence which in theory has a degree of reversibility depending on how well the immune system recovers.
Thanks for your comment!…
Thanks for your comment! Unfortunately in this analysis we included results obtained at any time point after starting chemo (including from the first few days following treatment up to patients who had already completed treatment). That's a really interesting point in terms of reversibility of these changes and is definitely something we would like to explore in a future study with more detailed analysis by both time following treatment and specific treatment type.