El Khoury Christiane J
Program in Public Health, Renaissance School of Medicine at Stony Brook, Stony Brook, NY 11790, USA.
Department of Medical Oncology, The Sidney Kimmel Comprehensive Cancer Center at Thomas Jefferson University, Philadelphia, PA 19107, USA.
Cancers (Basel). 2024 Jul 30;16(15):2715. doi: 10.3390/cancers16152715.
: PCa is one of the cancers that exhibits the widest disparity gaps. Geographical place of residence has been shown to be associated with healthcare access/utilization and PCa outcomes. Geographical Information Systems (GIS) are widely being utilized for PCa disparities research, however, inconsistencies in their application exist. This systematic review will summarize GIS application within PCa disparities research, highlight gaps in the literature, and propose alternative approaches. : This paper followed the methods of the Cochrane Collaboration and the criteria set of the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA). Articles published in peer-reviewed journals were searched through the PubMed, Embase, and Web of Science databases until December 2022. The main inclusion criteria were employing a GIS approach and examining a relationship between geographical components and PCa disparities. The main exclusion criteria were studies conducted outside the US and those that were not published in English. : A total of 25 articles were included; 23 focused on PCa measures as outcomes: incidence, survival, and mortality, while only 2 examined PCa management. GIS application in PCa disparities research was grouped into three main categories: mapping, processing, and analysis. GIS mapping allowed for the visualization of quantitative, qualitative, and temporal trends of PCa factors. GIS processing was mainly used for geocoding and smoothing of PCa rates. GIS analysis mainly served to evaluate global spatial autocorrelation and distribution of PCa cases, while local cluster identification techniques were mainly employed to identify locations with poorer PCa outcomes, soliciting public health interventions. : Varied GIS applications and methodologies have been used in researching PCa disparities. Multiple geographical scales were adopted, leading to variations in associations and outcomes. Geocoding quality varied considerably, leading to less robust findings. Limitations in cluster-detection approaches were identified, especially when variations were captured using the Spatial Scan Statistic. GIS approaches utilized in other diseases might be applied within PCa disparities research for more accurate inferences. A novel approach for GIS research in PCa disparities could be focusing more on geospatial disparities in procedure utilization especially when it comes to PCa screening techniques. : This systematic review summarized and described the current state and trend of GIS application in PCa disparities research. Although GIS is of crucial importance when it comes to PCa disparities research, future studies should rely on more robust GIS techniques, carefully select the geographical scale studied, and partner with GIS scientists for more accurate inferences. Such interdisciplinary approaches have the potential to bridge the gaps between GIS and cancer prevention and control to further advance cancer equity.
前列腺癌是差异差距最为显著的癌症之一。研究表明,居住地理位置与医疗保健的可及性/利用率以及前列腺癌的预后相关。地理信息系统(GIS)被广泛应用于前列腺癌差异研究,然而,其应用存在不一致性。本系统综述将总结GIS在前列腺癌差异研究中的应用,突出文献中的差距,并提出替代方法。
本文遵循Cochrane协作网的方法以及系统评价和Meta分析的首选报告项目(PRISMA)的标准。通过PubMed、Embase和Web of Science数据库检索截至2022年12月发表于同行评审期刊的文章。主要纳入标准为采用GIS方法并研究地理因素与前列腺癌差异之间的关系。主要排除标准为在美国境外开展的研究以及非英文发表的研究。
共纳入25篇文章;23篇聚焦于将前列腺癌指标作为结局:发病率、生存率和死亡率,而仅有2篇研究了前列腺癌的管理。GIS在前列腺癌差异研究中的应用主要分为三大类:制图、处理和分析。GIS制图可实现前列腺癌因素的定量、定性和时间趋势的可视化。GIS处理主要用于前列腺癌发病率的地理编码和平滑处理。GIS分析主要用于评估前列腺癌病例的全局空间自相关性和分布,而局部聚类识别技术主要用于识别前列腺癌预后较差的地区,以寻求公共卫生干预措施。
在前列腺癌差异研究中使用了各种GIS应用和方法。采用了多个地理尺度,导致关联和结果存在差异。地理编码质量差异很大,导致研究结果的可靠性较低。已识别出聚类检测方法的局限性,尤其是在使用空间扫描统计量捕捉差异时。其他疾病中使用的GIS方法可能适用于前列腺癌差异研究,以得出更准确的推论。一种用于前列腺癌差异研究的GIS新方法可能是更多地关注程序利用方面的地理空间差异,尤其是在前列腺癌筛查技术方面。
本系统综述总结并描述了GIS在前列腺癌差异研究中的应用现状和趋势。尽管GIS在前列腺癌差异研究中至关重要,但未来的研究应依赖更强大的GIS技术,谨慎选择研究的地理尺度,并与GIS科学家合作以得出更准确的推论。这种跨学科方法有潜力弥合GIS与癌症预防控制之间的差距,以进一步推动癌症公平。