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评估基于技术的患者报告结局监测,以发现和治疗与免疫检查点抑制剂相关的毒性作用。

Evaluation of Technology-Enabled Monitoring of Patient-Reported Outcomes to Detect and Treat Toxic Effects Linked to Immune Checkpoint Inhibitors.

机构信息

Division of Cancer Medicine, Department of Genitourinary Medical Oncology, The University of Texas MD Anderson Cancer Center, Houston.

Division of Pathology and Laboratory Medicine, Department of Translational Molecular Pathology, The University of Texas MD Anderson Cancer Center, Houston.

出版信息

JAMA Netw Open. 2021 Aug 2;4(8):e2122998. doi: 10.1001/jamanetworkopen.2021.22998.

Abstract

IMPORTANCE

Immune checkpoint inhibitors can produce distinct toxic effects that require prompt recognition and timely management.

OBJECTIVE

To develop a technology-enabled, dynamically adaptive protocol that can provide the accurate information needed to inform specific remedies for immune toxic effects in patients treated with immune checkpoint inhibitors.

DESIGN, SETTING, AND PARTICIPANTS: An open-label cohort study was conducted at a single tertiary referral center from September 6, 2019, to September 3, 2020. The median follow-up duration was 63 (interquartile range, 35.5-122) days. Fifty patients with genitourinary cancers treated with immune checkpoint inhibitors were enrolled.

INTERVENTIONS

A fit-for-purpose electronic platform was developed to enable active patient and care team participation. A smartphone application downloaded onto patients' personal mobile devices prompted them to report their symptoms at least 3 times per week. The set of symptoms and associated queries were paired with alert thresholds for symptoms requiring clinical action.

MAIN OUTCOMES AND MEASURES

The primary end point of this interim analysis was feasibility, as measured by patient and care team adherence, and lack of increase in care team staffing. Operating characteristics were estimated for each symptom alert and used to dynamically adapt the alert thresholds to ensure sensitivity while reducing unnecessary alerts.

RESULTS

Of the 50 patients enrolled, 47 had at least 1 follow-up visit and were included in the analysis. Median age was 65 years (range, 37-86), 39 patients (83%) were men, and 39 patients (83%) had metastatic cancer, with the most common being urothelial cell carcinoma and renal cell carcinoma (22 [47%] patients each). After initial onboarding, no further care team training or additional care team staffing was required. Patients had a median study adherence rate of 74% (interquartile range, 60%-86%) and 73% of automated alerts were reviewed within 3 days by the clinic team. Symptoms with the highest positive predictive value for adverse events requiring acute intervention included dizziness (21%), nausea/vomiting (26%), and shortness of breath (14%). The symptoms most likely to result in unnecessary alerts were arthralgia and myalgia, fatigue, and cough.

CONCLUSIONS AND RELEVANCE

The findings of this cohort study suggest an acceptable and fiscally sound method can be developed to create a dynamic learning system to detect and manage immune-related toxic effects.

摘要

重要性

免疫检查点抑制剂会产生明显的毒性作用,需要及时识别和处理。

目的

开发一种技术支持的、自适应的方案,为接受免疫检查点抑制剂治疗的患者提供准确的信息,以告知具体的免疫毒性作用治疗方法。

设计、地点和参与者:这是一项单中心、三队列、开放标签的队列研究,于 2019 年 9 月 6 日至 2020 年 9 月 3 日在一家三级转诊中心进行。中位随访时间为 63(四分位距,35.5-122)天。共纳入 50 例接受免疫检查点抑制剂治疗的泌尿生殖系统癌症患者。

干预措施

开发了一个适合目的的电子平台,以实现患者和护理团队的积极参与。患者将智能手机应用程序下载到个人移动设备上,以便他们每周至少报告 3 次症状。将症状和相关查询与需要临床干预的症状的报警阈值配对。

主要结局和测量指标

本中期分析的主要终点是可行性,通过患者和护理团队的依从性以及护理团队人员配置的增加来衡量。为每个症状警报估计了操作特征,并使用这些特征来动态调整警报阈值,以确保敏感性,同时减少不必要的警报。

结果

50 名入组患者中,有 47 名至少有一次随访并纳入分析。中位年龄为 65 岁(范围 37-86 岁),39 名患者(83%)为男性,39 名患者(83%)患有转移性癌症,最常见的是尿路上皮细胞癌和肾细胞癌(各 22 例[47%])。在初始入职后,不需要对护理团队进行进一步培训或增加护理团队人员。患者的研究依从率中位数为 74%(四分位距,60%-86%),临床团队在 3 天内审查了 73%的自动警报。对需要急性干预的不良事件具有最高阳性预测值的症状包括头晕(21%)、恶心/呕吐(26%)和呼吸急促(14%)。最有可能导致不必要警报的症状是关节痛和肌痛、疲劳和咳嗽。

结论和相关性

这项队列研究的结果表明,可以开发出一种可接受且经济合理的方法来创建一个动态学习系统,以检测和管理免疫相关的毒性作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa58/8406081/29066b537714/jamanetwopen-e2122998-g001.jpg

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