预测肿瘤放射科门诊病人爽约的社会经济和人口因素:就诊评估。

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES Frontiers in health services Pub Date : 2023-11-27 eCollection Date: 2023-01-01 DOI:10.3389/frhs.2023.1288329
Allen M Chen
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引用次数: 0

摘要

目的:虽然患者错过预约会降低门诊效率并限制有效的资源分配,但放射肿瘤学领域对 "未预约 "的预测因素却知之甚少:方法:我们查阅了从 2008 年 10 月至 2022 年 4 月期间连续转诊的初诊患者的前瞻性数据登记。记录的人口统计学特征包括年龄、性别、种族、语言偏好、生活状况和保险状况。与患者居住地址相关联的邮政编码数据用于根据公开的家庭收入中位数数据确定社会经济地位(SES)。未到场就诊是指患者未能取消就诊且未在预约时间签到的所有就诊情况。结果显示,共有 9,241 人连续取消了预约:在 4 年的时间里,共有 9,241 名患者连续转诊并登录数据库,其中 5,755 人成功预约并登记。共有 523 名患者(9%)未能赴约。未赴约与低收入状况、无家可归的生活状况以及黑人或拉丁裔种族有关(p p 结论):我们的研究结果凸显了人口、经济和种族差异对癌症患者正确使用医疗服务的影响。未来旨在减少爽约现象的干预措施可将资源用于本分析中确定的高危人群,改善医疗服务的可及性,并优化诊所效率。
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Socioeconomic and demographic factors predictive of missed appointments in outpatient radiation oncology: an evaluation of access.

Purpose: While missed patient appointments reduce clinic efficiency and limit effective resource allocation, factors predictive of "no shows" are poorly understood in radiation oncology.

Methods and materials: A prospective data registry of consecutive patients referred for initial consultation from October 2,018 to April 2022 was reviewed. Demographic characteristics recorded included age, gender, race, language preference, living situation, and insurance status. Zip code data linked to a patient's residential address was used to determine socioeconomic status (SES) based on publicly available data on median household income. No show encounters were defined as all encounters where the patient failed to cancel their visit and did not sign-in to their scheduled appointment. Descriptive statistics were presented to identify factors predictive of missed appointments.

Results: A total of 9,241 consecutive patients were referred and logged into the database during the 4-year period, of which 5,755 were successfully scheduled and registered. A total of 523 patients (9%) failed to show for their appointments. Missed appointments were associated with low-income status, homeless living situation, and Black or Latino race (p < 0.05, for all). The proportion of White, Latino, Asian, and Black patients who missed appointments was 6%, 14%, 9%, and 12%, respectively (p < 0.001). Patient characteristics independently associated with higher odds of appointment non-adherence included low-income status ((OR) = 2.90, 95% CI (1.44-5.89) and Black or Latino race [(OR) = 3.31, 95% CI: 1.22-7.65].

Conclusions: Our results highlight the influence of demographic, financial, and racial disparities on proper health care utilization among patients with cancer. Future interventions aimed at reducing appointment no shows could channel resources to the at risk-populations identified in this analysis, improving access to care, and optimize clinic efficiency.

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