Harrington Heart and Vascular Institute, University Hospitals Cleveland Medical Center, Cleveland, Ohio.
Department of Population and Quantitative Health Sciences, Case Western Reserve University School of Medicine, Cleveland, Ohio.
Am J Cardiol. 2023 Aug 15;201:150-157. doi: 10.1016/j.amjcard.2023.06.037. Epub 2023 Jun 27.
Cardio-oncology mortality (COM) is a complex issue that is compounded by multiple factors that transcend a depth of socioeconomic, demographic, and environmental exposures. Although metrics and indexes of vulnerability have been associated with COM, advanced methods are required to account for the intricate intertwining of associations. This cross-sectional study utilized a novel approach that combined machine learning and epidemiology to identify high-risk sociodemographic and environmental factors linked to COM in United States counties. The study consisted of 987,009 decedents from 2,717 counties, and the Classification and Regression Trees model identified 9 county socio-environmental clusters that were closely associated with COM, with a 64.1% relative increase across the spectrum. The most important variables that emerged from this study were teen birth, pre-1960 housing (lead paint indicator), area deprivation index, median household income, number of hospitals, and exposure to particulate matter air pollution. In conclusion, this study provides novel insights into the socio-environmental drivers of COM and highlights the importance of utilizing machine learning approaches to identify high-risk populations and inform targeted interventions for reducing disparities in COM.
心血管肿瘤学死亡率(COM)是一个复杂的问题,受多种因素影响,这些因素超越了社会经济、人口和环境暴露的深度。尽管与 COM 相关的脆弱性指标和指数已经存在,但需要先进的方法来考虑关联的复杂交织。这项横断面研究采用了一种新方法,将机器学习和流行病学相结合,以确定与美国县 COM 相关的高风险社会人口和环境因素。该研究包括来自 2717 个县的 987,009 名死者,分类和回归树模型确定了 9 个与 COM 密切相关的县社会环境群,整个范围内的相对增加率为 64.1%。从这项研究中出现的最重要的变量是青少年出生率、1960 年前的住房(含铅油漆指标)、地区贫困指数、家庭中位数收入、医院数量和暴露于颗粒物空气污染。总之,这项研究为 COM 的社会环境驱动因素提供了新的见解,并强调了利用机器学习方法来识别高风险人群并为减少 COM 差异提供信息的重要性。