Treatment decisions in cancer care are guided by treatment effect estimates from randomized controlled trials (RCTs). RCTs estimate the average effect of one treatment versus another in a certain population. However, treatments may not be equally effective for every patient in a population. Knowing the effectiveness of treatments tailored to specific patient and tumor characteristics would enable individualized treatment decisions. Getting tailored treatment effects by averaging outcomes in different patient subgroups in RCTs requires an unfeasible number of patients to have sufficient statistical power in all relevant subgroups for all possible treatments. The American Joint Committee on Cancer (AJCC) recommends that researchers develop outcome prediction models (OPMs) in an effort to individualize treatment decisions. OPMs sometimes called risk models or prognosis models, use patient and tumor characteristics to predict a patient outcome such as overall survival. The assumption is that the predictions are useful for treatment decisions using rules such as "prescribe chemotherapy only if the OPM predicts the patient has a high risk of recurrence". Recognizing the importance of reliable predictions, the AJCC published a checklist for OPMs to ensure dependable OPM prediction accuracy in the patient population for which the OPM was designed. However, accurate outcome predictions do not imply that these predictions yield good treatment decisions. In this perspective, we show that OPM rely on a fixed treatment policy which implies that OPM that were found to accurately predict outcomes in validation studies can still lead to patient harm when used to inform treatment decisions. We then give guidance on how to develop models that are useful for individualized treatment decisions and how to evaluate whether a model has value for decision-making.
翻译:癌症护理的治疗决定以随机控制试验(RCTs)的治疗效果估计为指导。RCTs估计了某一人群中一种治疗相对于另一种治疗的平均效果。然而,治疗可能并非对人口中每个病人都同样有效。了解针对特定病人和肿瘤特征的治疗效果,可以作出个性化治疗决定。通过在RCTs的不同病人分组中平均结果来量身定做的治疗效果,需要有无法实现的病人数量,以便在所有有关分组中拥有足够的统计能力,以便进行所有可能的治疗。美国癌症联合委员会(AJCCs)建议研究人员制定结果预测模型(OPM),以努力将治疗决定个性化。OPMs有时称风险模型或预测模型,使用病人和肿瘤特征来预测病人结果,如总体存活。假设这些预测对治疗决定有用,例如“只有在OPM预测病人的模型显示病人有很高的复发风险时,病人才会有不可行的统计能力。美国癌症联合委员会(AJCC)为OPMs发布了一份清单,以确保OPM预测结果在病人治疗决定中具有可信赖的准确性,而我们为OPM的预测结果提供了准确的预测。我们所设计的预测结果,而这种预测是用来预测结果。我们所设计的预测的结果。我们所所所所设计的预测测测测测测测测测测测测测测测结果。