Condous George, Van Calster Ben, Kirk Emma, Haider Zara, Timmerman Dirk, Van Huffel Sabine, Bourne Tom
Early Pregnancy, Gynaecological Ultrasound and MAS Unit, St. George's, University of London, London, United Kingdom.
Fertil Steril. 2007 Sep;88(3):572-80. doi: 10.1016/j.fertnstert.2006.12.015. Epub 2007 May 17.
OBJECTIVE(S): To see if the incorporation of clinical variables can improve the diagnostic performance of logistic regression models in the prediction of pregnancy of unknown location (PUL) outcome.
Prospective observational study.
Early Pregnancy Unit, St George's Hospital, University of London, London.
PATIENT(S): All women with a PUL were included in the final analysis. This was defined on transvaginal ultrasonography (TVS) as there being no signs of either an intra- or an extrauterine pregnancy or retained products of conception in a woman with a positive pregnancy test.
INTERVENTION(S): Noninterventional study; all women classified with a PUL were managed expectantly.
MAIN OUTCOMES MEASURE(S): Data were collected prospectively from women classified as having a PUL. More than 30 clinical, ultrasonographic and biochemical end points were defined and recorded for analysis (these included risk factors for ectopic pregnancy [EP] and site-specific tenderness on TVS). Women were followed until the final diagnosis was established: failing PUL, intrauterine pregnancy (IUP), or EP. A multinomial logistic regression model (M5) was developed on 197 training cases and tested prospectively on a further 173 PUL cases. The performance of M5 was evaluated using receiver operating characteristic (ROC) curves and compared with logistic regression model M4 (hCG ratio [hCG 48 h/hCG 0 h], logarithm [log] of hCG average, and quadratic effect of the hCG ratio {[hCG ratio-1.17] x [hCG ratio-1.17]}), which was previously published.
RESULT(S): Data from 376 consecutive women with a PUL were included in the analysis: 201 in the training set (109 [55.3%] failing PUL, 76 [38.6%] IUP, and 12 [6.1%] EP; four with a persisting PUL were excluded from the analysis) and 175 in the test set (94 [54.3%] with a failing PUL, 64 [37.0%] with an IUP, and 15 [8.7%] with an ectopic pregnancy; two with a persisting PUL were excluded from analysis). The most useful independent prognostic variables for the logistic regression model, M5, were as follows: log of serum hCG average, amount of vaginal bleeding, hCG ratio, and quadratic effect of the hCG ratio. On the test set, this model gave an area under the ROC curve of 0.979 for failing PUL, 0.979 for IUP, and 0.912 for EP. This model outperformed M4, which gave areas under the ROC curve of 0.978, 0.974, and 0.900, respectively; however, this was not significant.
CONCLUSION(S): Clinical information does not significantly improve the performance of logistic regression models in the prediction of PUL outcome. On the basis of our results, we believe that historical, examination, and ultrasonographic factors are not essential input variables in logistic regression model building in the PUL population. When approaching women with a PUL, biochemical data alone, and in particular the hCG ratio, can be used to predict PUL outcome with a high degree of certainty.
探讨纳入临床变量能否提高逻辑回归模型预测不明部位妊娠(PUL)结局的诊断性能。
前瞻性观察性研究。
伦敦大学圣乔治医院早期妊娠科。
所有PUL患者均纳入最终分析。经阴道超声检查(TVS)显示,妊娠试验阳性的女性既无宫内妊娠迹象,也无宫外妊娠迹象,亦无妊娠物残留。
非干预性研究;所有诊断为PUL的女性均进行观察管理。
前瞻性收集诊断为PUL的女性的数据。定义并记录30多个临床、超声和生化终点指标用于分析(包括异位妊娠(EP)的危险因素和TVS检查时的部位特异性压痛)。对女性进行随访,直至明确最终诊断:PUL失败、宫内妊娠(IUP)或EP。在197例训练病例上建立多项逻辑回归模型(M5),并对另外173例PUL病例进行前瞻性测试。使用受试者工作特征(ROC)曲线评估M5的性能,并与之前发表的逻辑回归模型M4(hCG比值[hCG 48小时/hCG 0小时]、hCG平均值的对数[log]以及hCG比值的二次效应{[hCG比值 - 1.17]×[hCG比值 - 1.17]})进行比较。
376例连续的PUL女性的数据纳入分析:训练集201例(109例[占55.3%]PUL失败,76例[占38.6%]IUP,12例[占6.1%]EP;4例持续性PUL被排除在分析之外),测试集175例(94例[占54.3%]PUL失败,64例[占37.0%]IUP,15例[占8.7%]异位妊娠;2例持续性PUL被排除在分析之外)。逻辑回归模型M5最有用的独立预后变量如下:血清hCG平均值的对数、阴道出血量、hCG比值以及hCG比值的二次效应。在测试集上,该模型对PUL失败的ROC曲线下面积为0.979,对IUP为0.979,对EP为(0.912)。该模型优于M4,M4的ROC曲线下面积分别为0.978、0.974和0.900;然而,差异无统计学意义。
临床信息并不能显著提高逻辑回归模型预测PUL结局的性能。基于我们的研究结果,我们认为在PUL人群中,病史、体格检查和超声因素并非逻辑回归模型构建中必不可少的输入变量。对于PUL女性,仅生化数据,尤其是hCG比值,可用于高度准确地预测PUL结局。