医学
置信区间
检查表
荟萃分析
癌症
相对风险
持续时间(音乐)
系统回顾
梅德林
儿科
内科学
文学类
法学
认知心理学
艺术
心理学
政治学
作者
Nicolás Francisco Fernández‐Martínez,Dafina Petrova,Zuzana Špacírová,Rocío Barrios‐Rodríguez,Mário Pérez‐Sayáns,Luis Miguel Martín-delosReyes,Beatriz Pérez‐Gómez,Miguel Rodríguez‐Barranco,María‐José Sánchez
标识
DOI:10.3389/fpubh.2023.1183244
摘要
Introduction Previous studies measuring intervals on the oral cancer care pathway have been heterogenous, showing mixed results with regard to patient outcomes. The aims of this research were (1) to calculate pooled meta-analytic estimates for the duration of the patient, diagnostic and treatment intervals in oral cancer, considering the income level of the country, and (2) to review the evidence on the relationship of these three intervals with tumor stage at diagnosis and survival. Materials and methods We conducted a systematic review with meta-analysis following PRISMA 2020 guidelines (pre-registered protocol CRD42020200752). Following the Aarhus statement, studies were eligible if they reported data on the length of the patient (first symptom to first presentation to a healthcare professional), diagnostic (first presentation to diagnosis), or treatment (diagnosis to start of treatment) intervals in adult patients diagnosed with primary oral cancer. The risk of bias was assessed with the Aarhus checklist. Results Twenty-eight studies reporting on 30,845 patients met the inclusion criteria. The pooled median duration of the patient interval was 47 days (95% CI = 31–73), k = 18, of the diagnosis interval 35 days (95% CI = 21–38), k = 11, and of the treatment interval 30 days (95% CI = 23–53), k = 19. In lower-income countries, the patient and treatment intervals were significantly longer, and longer patient intervals were related to later stage at diagnosis. In studies with a lower risk of bias from high-income countries, longer treatment intervals were associated with lower survival rates. Conclusion Interval duration on the oral cancer care pathway is influenced by the socio-economic context and may have implications for patient outcomes.
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