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在基于人群的癌症登记处确定诊断时的癌症分期:一项快速综述。

Determining cancer stage at diagnosis in population-based cancer registries: A rapid scoping review.

作者信息

Pung Li, Moorin Rachael, Trevithick Richard, Taylor Karen, Chai Kevin, Garcia Gewerc Cristiana, Ha Ninh, Smith Stephanie

机构信息

School of Population Health, Curtin University, Perth, WA, Australia.

Public Health, North Metropolitan Health Service, Perth, WA, Australia.

出版信息

Front Health Serv. 2023 Mar 8;3:1039266. doi: 10.3389/frhs.2023.1039266. eCollection 2023.

Abstract

INTRODUCTION

Population-based cancer registries are the main source of data for population-level analysis of cancer stage at diagnosis. This data enables analysis of cancer burden by stage, evaluation of screening programs and provides insight into differences in cancer outcomes. The lack of standardised collection of cancer staging in Australia is well recognised and is not routinely collected within the Western Australia Cancer Registry. This review aimed to explore how cancer stage at diagnosis is determined in population-based cancer registries.

METHODS

This review was guided by the Joanna-Briggs Institute methodology. A systematic search of peer-reviewed research studies and grey literature from 2000 to 2021 was conducted in December 2021. Literature was included if peer-reviewed articles or grey literature sources used population-based cancer stage at diagnosis, and were published in English between 2000 and 2021. Literature was excluded if they were reviews or only the abstract was available. Database results were screened by title and abstract using Research Screener. Full-texts were screened using Rayyan. Included literature were analysed using thematic analysis and managed through NVivo.

RESULTS

The findings of the 23 included articles published between 2002 and 2021 consisted of two themes. (1) "Data sources and collection processes" outlines the data sources used, as well as the processes and timing of data collection utilised by population-based cancer registries. (2) "Staging classification systems" reveals the staging classification systems employed or developed for population-based cancer staging, including the American Joint Committee on Cancer's Tumour Node Metastasis and related systems; simplified systems classified into localised, regional, and distant categories; and miscellaneous systems.

CONCLUSIONS

Differences in approaches used to determine population-based cancer stage at diagnosis challenge attempts to make interjurisdictional and international comparisons. Barriers to collecting population-based stage at diagnosis include resource availability, infrastructure differences, methodological complexity, interest variations, and differences in population-based roles and emphases. Even within countries, disparate funding sources and funder interests can challenge the uniformity of population-based cancer registry staging practices. International guidelines to guide cancer registries in collecting population-based cancer stage is needed. A tiered framework of standardising collection is recommended. The results will inform integrating population-based cancer staging into the Western Australian Cancer Registry.

摘要

引言

基于人群的癌症登记处是用于癌症诊断阶段人群水平分析的数据主要来源。该数据能够按阶段分析癌症负担、评估筛查项目,并洞察癌症结局的差异。澳大利亚缺乏癌症分期的标准化收集,这一点已得到广泛认可,并且西澳大利亚癌症登记处也未常规收集此类数据。本综述旨在探讨在基于人群的癌症登记处中,如何确定癌症诊断阶段。

方法

本综述以乔安娜 - 布里格斯研究所的方法为指导。2021年12月,对2000年至2021年的同行评审研究和灰色文献进行了系统检索。如果同行评审文章或灰色文献来源使用了基于人群的癌症诊断阶段,并且在2000年至2021年期间以英文发表,则纳入文献。如果是综述或仅提供摘要,则排除文献。使用Research Screener通过标题和摘要对数据库结果进行筛选。使用Rayyan对全文进行筛选。对纳入的文献进行主题分析,并通过NVivo进行管理。

结果

2002年至2021年发表的23篇纳入文章的研究结果包含两个主题。(1)“数据来源和收集过程”概述了所使用的数据来源,以及基于人群的癌症登记处的数据收集过程和时间。(2)“分期分类系统”揭示了为基于人群的癌症分期所采用或开发的分期分类系统,包括美国癌症联合委员会的肿瘤淋巴结转移及相关系统;简化为局部、区域和远处类别的系统;以及其他系统。

结论

用于确定基于人群的癌症诊断阶段的方法差异,对进行跨辖区和国际比较的尝试构成了挑战。收集基于人群的诊断阶段数据的障碍包括资源可用性、基础设施差异、方法复杂性、兴趣差异以及基于人群的角色和重点的差异。即使在一个国家内部,不同的资金来源和资助者兴趣也可能对基于人群的癌症登记分期实践的一致性构成挑战。需要国际指南来指导癌症登记处收集基于人群的癌症阶段数据。建议采用分层标准化收集框架。研究结果将为将基于人群的癌症分期纳入西澳大利亚癌症登记处提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3645/10012750/f37d51ab2966/frhs-03-1039266-g001.jpg

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