Jones Catherine, Keegan Thomas, Knox Andy, Birtle Alison, Mendes Jessica A, Heys Kelly, Atkinson Peter, Sedda Luigi
University Hospitals of Morecambe Bay NHS Foundation Trust, Kendal, LA9 7RG, UK.
Lancaster Medical School, Lancaster University, Lancaster, LA1 4YG, UK.
Public Health Pract (Oxf). 2024 Oct 25;8:100552. doi: 10.1016/j.puhip.2024.100552. eCollection 2024 Dec.
This study aims to analyse the geographical co-occurrence of cancers and their individual and shared risk factors in a highly deprived area of the North West of England to aid the identification of potential interventions.
An ecological study design was employed and applied at postcode sector level in the Morecambe Bay region.
A novel spatial joint modelling framework designed to account for large frequencies of left-censored cancer data was employed. Nine cancer types (breast, colorectal, gynaecology, haematology, head and neck, lung, skin, upper gastrointestinal, urology) alongside demographic, behavioural factors and socio-economic variables were included in the model. Explanatory factors were selected by employing an accelerated failure model with lognormal distribution. Post-processing included principal components analysis and hierarchical clustering to delineate geographic areas with similar spatial risk patterns of different cancer types.
15,506 cancers were diagnosed from 2017 to 2022, with the highest incidence in skin, breast and urology cancers. Factors such as age, ethnicity, frailty and comorbidities were associated with cancer risk for most of the cancer types. A positive geographical association was found mostly between the colorectal, haematology, upper GI, urology and head and neck cancer types. That is, these cancers had their largest risk in the same areas, similarly to their lowest risk values. The spatial distribution of the risk and cumulative risk of the cancer types revealed regional variations, with five clusters identified based on cancer type risk, demographic and socio-economic characteristics. Rural areas were the least affected by cancer and the urban area of Barrow-in-Furness was the area with the highest cancer risk, three times greater than the risk in the surrounding rural areas.
This study emphasizes the utility of joint disease mapping by geographically identifying common or shared factors that, if targeted, could lead to reduced risk of multiple cancers simultaneously. The findings suggest the need for tailored public health interventions, considering specific risk factors and socio-economic disparities. Policymakers can utilize the spatial patterns identified to allocate resources effectively and implement targeted cancer prevention programmes.
本研究旨在分析英格兰西北部一个高度贫困地区癌症的地理共现情况及其个体和共同风险因素,以帮助确定潜在的干预措施。
采用生态研究设计,并应用于莫克姆湾地区的邮政编码区层面。
采用了一种新颖的空间联合建模框架,以考虑大量左删失癌症数据的频率。该模型纳入了九种癌症类型(乳腺癌、结直肠癌、妇科癌症、血液学癌症、头颈癌、肺癌、皮肤癌、上消化道癌、泌尿系统癌)以及人口统计学、行为因素和社会经济变量。通过采用对数正态分布的加速失效模型选择解释因素。后处理包括主成分分析和层次聚类,以描绘不同癌症类型具有相似空间风险模式的地理区域。
2017年至2022年期间共诊断出15506例癌症,皮肤癌、乳腺癌和泌尿系统癌的发病率最高。年龄、种族、虚弱和合并症等因素与大多数癌症类型的癌症风险相关。在结直肠癌、血液学癌症、上消化道癌、泌尿系统癌和头颈癌类型之间大多发现了正地理关联。也就是说,这些癌症在相同区域的风险最高,最低风险值情况类似。癌症类型的风险和累积风险的空间分布显示出区域差异,根据癌症类型风险、人口统计学和社会经济特征确定了五个聚类。农村地区受癌症影响最小,弗内斯港的市区是癌症风险最高的地区,比周边农村地区的风险高两倍。
本研究强调了通过地理识别共同或共享因素进行联合疾病绘图的实用性,如果针对这些因素,可能会同时降低多种癌症的风险。研究结果表明需要考虑特定风险因素和社会经济差异,制定针对性的公共卫生干预措施。政策制定者可以利用所确定的空间模式有效分配资源并实施针对性的癌症预防计划。