2024
DOI: 10.1038/s41598-024-61690-3
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Diagnostic utility of clinicodemographic, biochemical and metabolite variables to identify viable pregnancies in a symptomatic cohort during early gestation

Christopher J. Hill,
Marie M. Phelan,
Philip J. Dutton
et al.

Abstract: A significant number of pregnancies are lost in the first trimester and 1–2% are ectopic pregnancies (EPs). Early pregnancy loss in general can cause significant morbidity with bleeding or infection, while EPs are the leading cause of maternal mortality in the first trimester. Symptoms of pregnancy loss and EP are very similar (including pain and bleeding); however, these symptoms are also common in live normally sited pregnancies (LNSP). To date, no biomarkers have been identified to differentiate LNSP from p… Show more

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“…This versatile workflow guides handling various data types, particularly omics data, and is not limited to PDAC metastasis analysis. It can be applied to diverse contexts, and this team has applied it to other problems such as identification of biomarker candidates of pancreatic cancer-related diabetes using proteomics data [ 71 ], biomarker discovery in adverse pregnancy outcomes [ 72 , 73 ] or gene signature prediction in human breast cancer subtypes. The workflow presented here integrates algorithms for data integration, variable selection, resampling techniques, and modelling to enhance its overall robustness.…”
Section: Discussionmentioning
confidence: 99%
“…This versatile workflow guides handling various data types, particularly omics data, and is not limited to PDAC metastasis analysis. It can be applied to diverse contexts, and this team has applied it to other problems such as identification of biomarker candidates of pancreatic cancer-related diabetes using proteomics data [ 71 ], biomarker discovery in adverse pregnancy outcomes [ 72 , 73 ] or gene signature prediction in human breast cancer subtypes. The workflow presented here integrates algorithms for data integration, variable selection, resampling techniques, and modelling to enhance its overall robustness.…”
Section: Discussionmentioning
confidence: 99%