医学
内科学
癌症
队列
人口
氯沙坦
危险系数
阿司匹林
比例危险模型
队列研究
血管紧张素II
血压
置信区间
环境卫生
作者
John Busby,Úna C. McMenamin,Andrew D. Spence,Brian T. Johnston,Ceri Hughes,Chris R. Cardwell
摘要
Summary Background Angiotensin receptor blockers ( ARB s; including candesartan, losartan, olmesartan and valsartan) are widely used to treat hypertension, heart failure and diabetic neuropathy. There is considerable pre‐clinical evidence that ARB s can reduce cancer progression, particularly for gastric cancer. Despite this, epidemiological studies have yet to assess the impact of ARB use on gastro‐oesophageal cancer survival. Aim To investigate the association between post‐diagnosis ARB use and gastro‐oesophageal cancer survival. Methods We selected a cohort of patients with newly‐diagnosed gastro‐oesophageal cancer between 1998 and 2012 from English cancer registries. We linked to prescription and clinical records from the Clinical Practice Research Datalink, and to death records from the Office for National Statistics. We used time‐dependant Cox‐regression models to calculate hazard ratios ( HR s) comparing gastro‐oesophageal cancer‐specific mortality between post‐diagnosis ARB users and non‐users, after adjusting for demographics, comorbidities and post‐diagnosis aspirin or statin use. Results Our cohort included 5124 gastro‐oesophageal cancer patients, of which 360 used ARB s, and 3345 died due to their gastro‐oesophageal cancer during follow‐up. After adjustment, ARB users had moderately lower risk of gastro‐oesophageal cancer mortality than the non‐users ( HR = 0.83, 95% CI 0.71‐0.98). There was evidence of a dose–response relationship with the lowest HR s observed among patients receiving at least 2 years of prescriptions ( HR = 0.42, 95% CI 0.25‐0.72). Conclusions In this large population‐based gastro‐oesophageal cancer cohort, we found moderately reduced cancer‐specific mortality among ARB users. However, confirmation in further independent epidemiological studies with sufficient staging information is required.
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