Optimising Preeclampsia First-Trimester Screening Using Three Parameters.

Pub Date : 2023-09-01 DOI:10.29271/jcpsp.2023.09.995
Shehla Baqai, Shazia Tufail, Anam Waheed, Qurat Ul Ain Hanif
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Abstract

Objective: To evaluate the performance of first-trimester preeclampsia-screening algorithm in predicting preeclampsia (PE).

Study design: Observational study. Place and Duration of the Study: Department of Obstetrics and Gynaecology, Combined Military Hospitals (CMH) Lahore, Pakistan, between 1st January and 31st August 2022.

Methodology: Data of 100 women of any parity aged 18-35 years at gestational age < 13 weeks based on the last menstrual period (LMP), was analysed. First trimester Fetal Medicine Foundation (FMF) screening algorithm for preeclampsia was used entering maternal characteristics, mean arterial pressure and uterine pulsatility index only, for risk calculation. Patients were followed up till delivery for the development of preeclampsia and fetomaternal outcomes. Clinical characteristics of women with and without preeclampsia were compared using the Chi-square and independent samples t-test.

Results: The mean age of patients was 29.29±4.56 years and 60% were nullipara. Seventy-eight patients were placed in the low-risk category and 22 patients were in the high-risk category according to the FMF algorithm. Preeclampsia developed in 13 patients. For a risk cut-off of 1 in 100, the FMF algorithm showed a detection rate of 38% with diagnostic accuracy of 75% and a false positive rate (FPR) of 20%.

Conclusion: Although the performance of adapted FMF algorithm to predict preeclampsia gestational was low, it was found superior to prediction by maternal risk factors alone. Adjustment for additional factors or ethnicity-specific values may help in further improvement of detection rate.

Key words: Blood pressure, Biomarkers, Biological markers, Preeclampsia, Risk assessment.

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使用三个参数优化早期子痫前期筛查。
目的:评价早期子痫前期筛查算法对子痫前期(PE)的预测效果。研究设计:观察性研究。研究地点和时间:2022年1月1日至8月31日在巴基斯坦拉合尔联合军事医院妇产科进行。方法:对100例年龄在18-35岁、胎龄< 13周的任意胎次妇女的最后一次月经(LMP)数据进行分析。采用妊娠早期胎儿医学基金会(FMF)子痫前期筛查算法,仅输入母体特征、平均动脉压和子宫搏动指数进行风险计算。随访患者直至分娩,以观察子痫前期的发展和胎儿结局。采用卡方检验和独立样本t检验比较有和无先兆子痫妇女的临床特征。结果:患者平均年龄29.29±4.56岁,60%为无产者。根据FMF算法将78例患者归为低危组,22例患者归为高危组。13例患者出现子痫前期。对于1 / 100的风险截止值,FMF算法的检出率为38%,诊断准确率为75%,假阳性率(FPR)为20%。结论:虽然自适应FMF算法预测妊娠期子痫前期的准确率较低,但优于单纯使用母体危险因素预测。调整其他因素或种族特定值可能有助于进一步提高检出率。关键词:血压,生物标志物,生物标志物,子痫前期,风险评估
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