Department of Obstetrics and Gynecology, Stanford University School of Medicine, Stanford, CA 94305, USA.
Proc Natl Acad Sci U S A. 2010 Aug 3;107(31):13570-5. doi: 10.1073/pnas.1002296107. Epub 2010 Jul 19.
Nearly 75% of in vitro fertilization (IVF) treatments do not result in live births and patients are largely guided by a generalized age-based prognostic stratification. We sought to provide personalized and validated prognosis by using available clinical and embryo data from prior, failed treatments to predict live birth probabilities in the subsequent treatment. We generated a boosted tree model, IVFBT, by training it with IVF outcomes data from 1,676 first cycles (C1s) from 2003-2006, followed by external validation with 634 cycles from 2007-2008, respectively. We tested whether this model could predict the probability of having a live birth in the subsequent treatment (C2). By using nondeterministic methods to identify prognostic factors and their relative nonredundant contribution, we generated a prediction model, IVF(BT), that was superior to the age-based control by providing over 1,000-fold improvement to fit new data (p<0.05), and increased discrimination by receiver-operative characteristic analysis (area-under-the-curve, 0.80 vs. 0.68 for C1, 0.68 vs. 0.58 for C2). IVFBT provided predictions that were more accurate for approximately 83% of C1 and approximately 60% of C2 cycles that were out of the range predicted by age. Over half of those patients were reclassified to have higher live birth probabilities. We showed that data from a prior cycle could be used effectively to provide personalized and validated live birth probabilities in a subsequent cycle. Our approach may be replicated and further validated in other IVF clinics.
近 75%的体外受精 (IVF) 治疗无法实现活产,患者主要依据普遍的基于年龄的预后分层进行指导。我们试图通过利用先前失败治疗中的可用临床和胚胎数据来提供个性化和经过验证的预后,以预测后续治疗中的活产概率。我们通过使用来自 2003 年至 2006 年的 1676 个首次周期 (C1) 的 IVF 结果数据对 boosted tree 模型 IVFBT 进行训练,然后分别使用来自 2007 年至 2008 年的 634 个周期进行外部验证。我们测试了该模型是否可以预测后续治疗 (C2) 中活产的概率。通过使用不确定方法来识别预后因素及其相对非冗余贡献,我们生成了一个预测模型 IVF(BT),该模型通过提供超过 1000 倍的拟合新数据的改进 (p<0.05),并且通过接收者操作特征分析 (曲线下面积,0.80 对 C1,0.68 对 C2) 提高了区分能力,优于基于年龄的对照模型。IVFBT 对超出年龄预测范围的大约 83%的 C1 和大约 60%的 C2 周期的预测更为准确。其中一半以上的患者被重新分类为具有更高的活产概率。我们表明,先前周期的数据可有效用于提供后续周期的个性化和经过验证的活产概率。我们的方法可以在其他 IVF 诊所中复制并进一步验证。