five

raw dataset (PAS)

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DataCite Commons2025-04-01 更新2024-11-06 收录
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https://figshare.com/articles/dataset/raw_dataset_PAS_/27236184/1
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Objective: Prenatal determination of placenta accreta spectrum (PAS) disorders and its severity is crucial, as it is a highly morbid condition. The aim was to investigate the intraplacental fetal artery (IFA) as a novel ultrasonographic marker in predicting cesarean-hysterectomy need in PAS disorders. Methods: This study was conducted prospectively with a total of 62 women with placenta previa and ≥1 previous cesarean-section who were managed for PAS disorders between September 2022 and January 2024. All women were classified according to the ultrasonographic classification system for prenatal PAS disorders, and ultrasonographic assessments for IFA were performed. Odd ratios were calculated to test the association of IFA and other parameters related to PAS disorders with cesarean-hysterectomy need. Receiver operating characteristic analysis was performed to evaluate the ability of maximum diameter (D-max) of IFA to predict cesarean-hysterectomy need. Results: The study was completed with 49 women who underwent a cesarean-section with uterus-sparing surgery (n=22) and a cesarean-hysterectomy (n=27). Outer placental-half extension of IFA and each 1 mm increase in IFA D-max >3.5 mm were associated with a 58.82- and 3.52-fold increased risk of cesarean-hysterectomy, respectively. An IFA D-max of >3.5 mm was associated with cesarean-hysterectomy need at any PAS stage [area under the curve (AUC)=0.845, 95% CI:0.71-0.93, p<0.001)] and in PAS 2 patients (AUC=0.750, 95% CI:0.56-0.89, p=0.010), in whom prenatal prediction of cesarean-hysterectomy need is difficult. Conclusion: Evaluation of maximum diameter and outer placental-half extension of IFA along with other markers of PAS disorders improved the ability of ultrasonography to predict cesarean-hysterectomy need.
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figshare
创建时间:
2024-10-15
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