免疫检查点抑制剂治疗过程中肝脏免疫相关不良事件的表型分析

IF 3.3 Q2 ONCOLOGY
Theodore C Feldman, David E Kaplan, Albert Lin, Jennifer La, Jerry S H Lee, Mayada Aljehani, David P Tuck, Mary T Brophy, Nathanael R Fillmore, Nhan V Do
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引用次数: 0

摘要

目的:我们介绍并验证了一种基于规则的算法,该算法可用于在真实世界的患者队列中检测中度至重度肝脏相关免疫相关不良事件(irAEs)。该算法可应用于大型数据集中的irAEs研究:我们制定了一套标准来定义肝脏 irAEs。这些标准包括:在免疫检查点抑制剂(ICI)治疗的前 2-14 周内实验室测量值升高的时间性、在实验室测量值升高开始的 2 周内进行类固醇干预,以及干预持续时间至少 2 周。这些标准基于出现中度至重度肝毒性(不良事件通用术语标准 2-4 级)的患者的动力学。我们对 682 名被诊断为肝细胞癌并接受 ICI 治疗的患者组成的回顾性队列应用了这些标准。所有患者都必须在开始使用 ICI 之前和之后进行基线实验室测量:两名临床盲人评审员对 63 例抽样相同的患者进行了评审。对不同意见进行审查,并将共识作为基本事实。其中,25 例患者出现了虹膜不良事件,16 例被确定为肝脏虹膜不良事件,36 例为非不良事件,2 例为未确定状态。在 63 例患者中,有 44 例患者的审查结果与审查员一致,其中包括 19 例虹膜AEs 患者(一致性为 0.70,Fleiss' kappa:0.43)。相比之下,该算法识别肝脏虹膜AEs的灵敏度和特异度分别为0.63和0.81,测试效率(正确分类百分比)为0.78,结果加权F1得分为0.74:在检测虹膜睫状体异常方面,该算法与基本事实的吻合度高于任何一个临床判定者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phenotyping Hepatic Immune-Related Adverse Events in the Setting of Immune Checkpoint Inhibitor Therapy.

Purpose: We present and validate a rule-based algorithm for the detection of moderate to severe liver-related immune-related adverse events (irAEs) in a real-world patient cohort. The algorithm can be applied to studies of irAEs in large data sets.

Methods: We developed a set of criteria to define hepatic irAEs. The criteria include: the temporality of elevated laboratory measurements in the first 2-14 weeks of immune checkpoint inhibitor (ICI) treatment, steroid intervention within 2 weeks of the onset of elevated laboratory measurements, and intervention with a duration of at least 2 weeks. These criteria are based on the kinetics of patients who experienced moderate to severe hepatotoxicity (Common Terminology Criteria for Adverse Events grades 2-4). We applied these criteria to a retrospective cohort of 682 patients diagnosed with hepatocellular carcinoma and treated with ICI. All patients were required to have baseline laboratory measurements before and after the initiation of ICI.

Results: A set of 63 equally sampled patients were reviewed by two blinded, clinical adjudicators. Disagreements were reviewed and consensus was taken to be the ground truth. Of these, 25 patients with irAEs were identified, 16 were determined to be hepatic irAEs, 36 patients were nonadverse events, and two patients were of indeterminant status. Reviewers agreed in 44 of 63 patients, including 19 patients with irAEs (0.70 concordance, Fleiss' kappa: 0.43). By comparison, the algorithm achieved a sensitivity and specificity of identifying hepatic irAEs of 0.63 and 0.81, respectively, with a test efficiency (percent correctly classified) of 0.78 and outcome-weighted F1 score of 0.74.

Conclusion: The algorithm achieves greater concordance with the ground truth than either individual clinical adjudicator for the detection of irAEs.

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来源期刊
CiteScore
6.20
自引率
4.80%
发文量
190
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