Obstetrics and Gynaecology (Lund)
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- 2026
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Mark
Peritoneal recurrence following nephrectomy for localized renal cancer : A multicenter European real-world analysis of incidence, pattern and treatment (PEMET study–UroCCR 124)
- Contribution to journal › Article
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Mark
Urban air pollution disrupts placental microarchitecture and shifts hofbauer cells towards a pro-inflammatory state
- Contribution to journal › Article
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Mark
Active labour management and multiprofessional teamwork are cornerstones in preventing postpartum paemorrhage : EBCOG commentary on "The new world health Organization's (WHO) postpartum haemorrhage (PPH) guideline 2025"
- Contribution to journal › Article
- 2025
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Mark
Association between plasma interferon-γ levels and preeclampsia in pregnant women screened for tuberculosis infection
- Contribution to journal › Article
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Mark
Visual acuity outcomes up to 12 years and risk factors for visual impairment in a national cohort of extremely preterm born children – The Extremely Preterm Infants in Sweden Study (EXPRESS)
(2025) In Acta Ophthalmologica
- Contribution to journal › Article
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Mark
Airway hyperresponsiveness to mannitol in relation to inspiratory and expiratory resistance in subjects with asthma, COPD, and healthy smokers
- Contribution to journal › Article
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Mark
Implications of Changing the Diagnostic Criteria for Gestational Diabetes Mellitus (CDC4G) : A Healthcare Cost Analysis Alongside a Stepped Wedge Cluster Randomised Trial
(2025) In BJOG: An International Journal of Obstetrics and Gynaecology
- Contribution to journal › Article
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Mark
Validation and proposal of a clinical intervention cutoff in fetal scalp blood for the point-of care-lactate meter StatStrip®2
- Contribution to journal › Article
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Mark
Prospective long-term follow-up of sexuality and body image in women with primary vulvar cancer
- Contribution to journal › Article
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Mark
Machine learning-enhanced gas sensor technology identifies ovarian and endometrial cancer of all stages through plasma volatile organic compound patterns
- Contribution to journal › Article
