Department of Radiation Oncology, Comprehensive Cancer Center Vienna, Medical University Vienna, Vienna, Austria; Christian Doppler Laboratory for Image and Knowledge Driven Precision Radiation Oncology, Department of Radiation Oncology, Medical University Vienna, Vienna, Austria.
Department of Radiation Oncology, Comprehensive Cancer Center Vienna, Medical University Vienna, Vienna, Austria; Christian Doppler Laboratory for Image and Knowledge Driven Precision Radiation Oncology, Department of Radiation Oncology, Medical University Vienna, Vienna, Austria.
Radiother Oncol. 2024 Oct;199:110427. doi: 10.1016/j.radonc.2024.110427. Epub 2024 Jul 16.
This study evaluates the impact of integrating a novel, in-house developed electronic Patient-Reported Outcome Measures (ePROMs) tool with a commercial Oncology Information System (OIS) on patient response rates and potential biases in real-world data science applications.
We designed an ePROMs tool using the NodeJS web application framework, automatically sending e-mail questionnaires to patients based on their treatment schedules in the OIS. The tool is used across various treatment sites to collect PROMs data in a real-world setting. This research examined the effects of increasing automation levels on both recruitment and response rates, as well as potential biases across different patient cohorts. Automation was implemented in three escalating levels, from telephone reminders for missing reports to minimal intervention from study nurses.
From August 2020 to December 2023, 1,944 patients participated in the PROMs study. Our findings indicate that automating the workflows substantially reduced the patient management workload. However, higher levels of automation led to lower response rates, particularly in collecting late-phase symptoms in breast and head-and-neck cancer cohorts. Additionally, email-based PROMs introduced an age bias when recruiting new patients for the ePROMs study. Nevertheless, age was not a significant predictor of early dropout or missing symptom reports among patients participating. Notably, increased automation was significantly correlated with lower response rates in breast (p = 0.026) and head-and-neck cancer patients (p < 0.001).
Integrating ePROMs within the OIS can significantly reduce workload and personnel resources. However, this efficiency may compromise patient responses in certain groups. A balance must be achieved between workload, resource allocation, and the sensitivity needed to detect clinically significant effects. This may necessitate customized automation levels tailored to specific cancer groups, highlighting a fundamental trade-off between operational efficiency and data quality.
本研究评估了将一种新型内部开发的电子患者报告结局测量工具(ePROMs)与商业肿瘤学信息系统(OIS)集成,对真实世界数据科学应用中患者反应率和潜在偏差的影响。
我们使用 NodeJS 网络应用程序框架设计了一个 ePROMs 工具,根据患者在 OIS 中的治疗计划自动向患者发送电子邮件问卷。该工具在多个治疗站点使用,以在真实环境中收集 PROMs 数据。本研究考察了增加自动化水平对招募和反应率的影响,以及不同患者队列之间的潜在偏差。自动化实施了三个逐步升级的级别,从对缺失报告的电话提醒到研究护士的最小干预。
自 2020 年 8 月至 2023 年 12 月,共有 1944 名患者参加了 PROMs 研究。我们的研究结果表明,自动化工作流程大大减轻了患者管理的工作量。然而,更高水平的自动化导致反应率降低,尤其是在收集乳腺癌和头颈部癌症队列的晚期症状时。此外,基于电子邮件的 PROMs 在招募新患者参加 ePROMs 研究时引入了年龄偏差。然而,年龄并不是患者早期退出或缺失症状报告的显著预测因素。值得注意的是,在乳腺癌(p=0.026)和头颈部癌症患者(p<0.001)中,增加自动化与较低的反应率显著相关。
将 ePROMs 集成到 OIS 中可以显著减少工作量和人员资源。然而,这种效率可能会影响某些群体的患者反应。必须在工作量、资源分配和检测临床显著影响所需的敏感性之间取得平衡。这可能需要针对特定癌症群体定制自动化水平,突出了运营效率和数据质量之间的基本权衡。