Dynamic Risk Prediction of Treatment Discontinuation Using Patient-Reported Outcomes Data in the Phase III NSABP B-35 Trial.

Vinicius F Calsavara, Norah L Henry, Ron D Hays, Sungjin Kim, Michael Luu, Márcio A Diniz, Gillian Gresham, Reena S Cecchini, Greg Yothers, Patricia A Ganz, André Rogatko, Mourad Tighiouart
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Abstract

Predicting an individual's risk of treatment discontinuation is critical for the implementation of precision chemoprevention. We developed partly conditional survival models to predict discontinuation of tamoxifen or anastrozole using patient-reported outcome (PRO) data from postmenopausal women with ductal carcinoma in situ enrolled in the NSABP B-35 clinical trial. In a secondary analysis of the NSABP B-35 clinical trial PRO data, we proposed two models for treatment discontinuation within each treatment arm (anastrozole or tamoxifen treated patients) using partly conditional Cox-type models with time-dependent covariates. A 70/30 split of the sample was used for the training and validation datasets. The predictive performance of the models was evaluated using calibration and discrimination measures based on the Brier score and AUC from time-dependent ROC curves. The predictive models stratified high-risk versus low-risk early discontinuation at a 6-month horizon. For anastrozole-treated patients, predictive factors included baseline body mass index (BMI) and longitudinal patient-reported symptoms such as insomnia, joint pain, hot flashes, headaches, gynecologic symptoms, and vaginal discharge, all collected up to 12 months [Brier score, 0.039; AUC, 0.76; 95% confidence interval (CI), 0.57-0.95]. As for tamoxifen-treated patients, predictive factors included baseline BMI, and time-dependent covariates: cognitive problems, feelings of happiness, calmness, weight problems, and pain (Brier score, 0.032; AUC, 0.78; 95% CI, 0.65-0.91). A real-time calculator based on these models was developed in Shiny to create a web-based application with a future goal to aid healthcare professionals in decision-making.

Prevention relevance: The dynamic prediction provided by partly conditional models offers valuable insights into the treatment discontinuation risks using PRO data collected over time from clinical trial participants. This tool may benefit healthcare professionals in identifying patients at high risk of premature treatment discontinuation and support interventions to prevent potential discontinuation.

Abstract Image

Abstract Image

使用NSABP-B-35三期试验中患者报告的结果数据进行治疗中止的动态风险预测。
预测个体停止治疗的风险对于实施精确的化学预防至关重要。我们利用参与NSABP B-35临床试验的绝经后导管原位癌(DCIS)患者报告的结果(PRO)数据,开发了部分条件生存模型来预测他莫昔芬或阿那曲唑的停用。在对NSABP B-35临床试验PRO数据的二次分析中,我们使用具有时间相关协变量的部分条件Cox型模型,在每个治疗组(阿那曲唑或他莫昔芬治疗的患者)内提出了两个停药模型。样本的70/30分割用于训练和验证数据集。使用基于Brier评分和曲线下面积(AUC)的校准和判别措施评估模型的预测性能,曲线下面积来自时间依赖的受试者操作特征曲线。预测模型在6个月内对高风险和低风险早期停药进行了分层。对于阿那曲唑治疗的患者,预测因素包括基线体重指数(BMI)和患者报告的失眠、关节疼痛、潮热、头痛、妇科症状和阴道分泌物等症状,所有这些症状都在12个月内收集(Brier评分0.039,AUC 0.76,95%CI 0.57-0.95),和时间相关协变量:认知问题、幸福感、平静、体重问题和疼痛(Brier评分0.032,AUC 0.78,95%CI 0.65-0.91)。Shiny开发了一个基于这些模型的实时计算器,以创建一个基于网络的应用程序,其未来目标是帮助医疗保健专业人员进行决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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