- ICH GCP
- US-Register für klinische Studien
- Klinische Studie NCT03965026
Activity Modeling in Birth Room
At this time, two methods exist to calculate a pregnant woman's presumed delivery date (DPA) : one adds 280 days to last menstruation date (Naegele rule), other estimates early pregnancy's date by imagery and adds 270 days. Unless pathology requires a trigger, this DPA estimated a early pregnancy is not re-estimated. These methods are simple and arbitrary : Mongelli and al. in 1996 found that out of nearly 40 000 unique pregnancies, only 4% give birth at determined DPA by echography and 70% at more or less 5 days. Jukic and al. in 2013 they estimate a natural variation of 37 days between pregnancy durations. Face of these poor performances, the calculating DPA method seems to be open to improvement.
Thus, the DPA calculation formula does not take into account the individual patients characteristics (age, occupation, antecedents ...), nor the follow-up data collected during pregnancy. Jukic and al. in 2013 propose a first model with some individual characteristics and medical measures (period between ovulation and early pregnancy, hormone peak) to refine the estimation. Their study gives promising results but their small patients number (a hundred) does not allow them to detect all interactions. Moreover, their method calculation is not dynamic, i.e it does not refine the DPA as pregnancy progresses. To our knowledge, no studies developing an evolutionary model over time for the DPA exist. However, objectives of a more accurate estimate of expected date are multiple and important. The investigators will mention here the two main ones :
- A better understanding of mecanisms leading to early labour or abnormally long gestation in order to anticipate patients at risk
- A better material and human needs anticipation, allowing a more efficient organization more adapted to activity and a care of each parturient in optimal conditions.
Our study will focus on predictive model elaboration of pregnancy duration that will evolve as the pregnancy progresses and new data collected. The investigators are considering a machine learning methodology by patient's medical record computerization at the Groupe Hospitalier Paris Saint-Joseph (GHPSJ) since early 2016. Thus, for patients who gave birth from end of 2016, the investigators have a large amount of information on their pregnancy and follow-up on hospital servers, which motivates an automatic approach based on massive data analysis.
This study thus intends to implement advanced techniques in Machine Learning (Online Learning, Support Vector Machine ...) to advance a powerful calculation model.
Studienübersicht
Status
Bedingungen
Studientyp
Einschreibung (Tatsächlich)
Kontakte und Standorte
Studienorte
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Paris, Frankreich
- Groupe Hospitalier Paris Saint Joseph
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Teilnahmekriterien
Zulassungskriterien
Studienberechtigtes Alter
Akzeptiert gesunde Freiwillige
Studienberechtigte Geschlechter
Probenahmeverfahren
Studienpopulation
Beschreibung
Inclusion Criteria:
- Patient whose age ≥ 18 years old
- Patient who gave birth at GHPSJ maternity between 01/01/2017 and 02/28/2018
Exclusion Criteria:
- Patient who expressed her opposition to participate in the study
- Patient under guardianship or curatorship (unless consent is provided)
- Patient who gave birth at less than 32 weeks amenorrhea
- Pregnancy marked by MFIU (fetal death in utero)
Studienplan
Wie ist die Studie aufgebaut?
Designdetails
- Beobachtungsmodelle: Kohorte
- Zeitperspektiven: Retrospektive
Was misst die Studie?
Primäre Ergebnismessungen
Ergebnis Maßnahme |
Maßnahmenbeschreibung |
Zeitfenster |
|---|---|---|
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Anticipate deliveries number 48 hours in advance
Zeitfenster: Day 0
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Number of anticipate deliveries -H48 Number of deliveries at day 0 So the investigators reported the mean difference between expected and actual delivery date for included patients. |
Day 0
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Mitarbeiter und Ermittler
Ermittler
- Hauptermittler: Elie AZRIA, Professor, Groupe Hospitalier Paris Saint Joseph
Publikationen und hilfreiche Links
Allgemeine Veröffentlichungen
- Mongelli M, Wilcox M, Gardosi J. Estimating the date of confinement: ultrasonographic biometry versus certain menstrual dates. Am J Obstet Gynecol. 1996 Jan;174(1 Pt 1):278-81. doi: 10.1016/s0002-9378(96)70408-8.
- Jukic AM, Baird DD, Weinberg CR, McConnaughey DR, Wilcox AJ. Length of human pregnancy and contributors to its natural variation. Hum Reprod. 2013 Oct;28(10):2848-55. doi: 10.1093/humrep/det297. Epub 2013 Aug 6.
Studienaufzeichnungsdaten
Haupttermine studieren
Studienbeginn (Tatsächlich)
Primärer Abschluss (Tatsächlich)
Studienabschluss (Tatsächlich)
Studienanmeldedaten
Zuerst eingereicht
Zuerst eingereicht, das die QC-Kriterien erfüllt hat
Zuerst gepostet (Tatsächlich)
Studienaufzeichnungsaktualisierungen
Letztes Update gepostet (Tatsächlich)
Letztes eingereichtes Update, das die QC-Kriterien erfüllt
Zuletzt verifiziert
Mehr Informationen
Begriffe im Zusammenhang mit dieser Studie
Andere Studien-ID-Nummern
- MODELSAN
Plan für individuelle Teilnehmerdaten (IPD)
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Arzneimittel- und Geräteinformationen, Studienunterlagen
Studiert ein von der US-amerikanischen FDA reguliertes Arzneimittelprodukt
Studiert ein von der US-amerikanischen FDA reguliertes Geräteprodukt
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