Predicting postpartum hemorrhage (PPH) before delivery is crucial for enhancing patient outcomes, enabling timely transfer and implementation of prophylactic therapies. We attempted to utilize machine learning (ML) using basic pre-labor clinical data and laboratory measurements to predict postpartum Hemoglobin (Hb) in non-complicated singleton pregnancies. The local databases of two academic care centers on patient delivery were incorporated into the current study. Patients with preexisting coagulopathy, traumatic cases, and allogenic blood transfusion were excluded from all analyses. The association of pre-delivery variables with 24-h post-delivery hemoglobin level was evaluated using feature selection with Elastic Net regression and Random Forest algorithms. A suite of ML algorithms was employed to predict post-delivery Hb levels. Out of 2051 pregnant women, 1974 were included in the final analysis. After data pre-processing and redundant variable removal, the top predictors selected via feature selection for predicting post-delivery Hb were parity (B: 0.09 [0.05-0.12]), gestational age, pre-delivery hemoglobin (B:0.83 [0.80-0.85]) and fibrinogen levels (B:0.01 [0.01-0.01]), and pre-labor platelet count (B*1000: 0.77 [0.30-1.23]). Among the trained algorithms, artificial neural network provided the most accurate model (Root mean squared error: 0.62), which was subsequently deployed as a web-based calculator: https://predictivecalculators.shinyapps.io/ANN-HB . The current study shows that ML models could be utilized as accurate predictors of indirect measures of PPH and can be readily incorporated into healthcare systems. Further studies with heterogenous population-based samples may further improve the generalizability of these models.
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http://dx.doi.org/10.1038/s41598-024-64278-z | DOI Listing |
Arch Gynecol Obstet
December 2024
Department of Obstetrics and Gynecology, Rappaport Faculty of Medicine, Lady Davis Carmel Medical Center, Technion University, 7 Michal Street, 34361, Haifa, Israel.
Purpose: To assess the postpartum sensitivity and accuracy of serum HbA1c levels, compared to the gold standard of 75-g Oral Glucose Tolerance Test (OGTT), for diagnosis of dysglycemia in patients with a history of gestational diabetes mellitus (GDM).
Methods: A nationwide retrospective analysis of individuals with a history of GDM and with records of both postpartum 2 h-OGTT and serum HbA1c measured anytime between delivery until 12 months post-delivery. Results were stratified into 3 different intervals: 0-3 months, 3-12 months, and > 12 months after delivery, according to the timing of both OGTT and HbA1c performance.
Arch Gynecol Obstet
August 2024
Raya Strauss Wing Department of Obstetrics and Gynecology, Galilee Medical Center, Nahariya, Israel.
Objective: Early diagnosis of retained products of conception (RPOC) is critical for directing clinical management and for preventing associated complications. This study aimed to evaluate the utility of post-delivery ultrasound in patients with risk factors for RPOC.
Study Design: A retrospective cohort-study was conducted in a single tertiary university-affiliated hospital (January 2016-September 2022).
Int J Gynaecol Obstet
January 2025
Department of Obstetrics and Gynecology, Lady Davis Carmel Medical Center, Rappaport Faculty of Medicine, Technion University, Haifa, Israel.
Objective: The aim of this study was to assess the usefulness of routine hemoglobin testing following elective and urgent cesarean section (CS) in patients without primary postpartum hemorrhage (PPH).
Methods: This retrospective cohort study included women who underwent vaginal delivery (VD), elective CS, and urgent CS at Carmel Medical Center from 2015 to 2020. Data were extracted from the obstetric database, excluding deliveries with PPH.
Natl Med J India
June 2024
ICMR-National Institute of Research in Tribal Health, Garha, Jabalpur 482003, Madhya Pradesh, India.
Background Malaria in pregnancy (MIP) is a major public health problem due to the vulnerability of pregnant women to infections, resulting in adverse maternal/foetal outcomes in endemic areas. Methods We did a field-based study to assess the burden of MIP (prevalence at the time of enrolment and follow-up) and to identify risk factors for MIP in the Birsa and Baihar blocks of district Balaghat in Madhya Pradesh, which have perennial malaria transmission. Malaria screening (during 2015-2017) was done by microscopy and bivalent rapid diagnostic test (SD Bioline RDT, malaria antigen Plasmodium falciparum/Plasmodium vivax Pf/Pv).
View Article and Find Full Text PDFSci Rep
June 2024
Department of Community Medicine, School of Medicine, Alborz University of Medical Sciences, Karaj, Iran.
Predicting postpartum hemorrhage (PPH) before delivery is crucial for enhancing patient outcomes, enabling timely transfer and implementation of prophylactic therapies. We attempted to utilize machine learning (ML) using basic pre-labor clinical data and laboratory measurements to predict postpartum Hemoglobin (Hb) in non-complicated singleton pregnancies. The local databases of two academic care centers on patient delivery were incorporated into the current study.
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