• A.C. Meyers Vænge 15, A

    2450 Copenhagen SV

    Denmark

  • Sdr. Skovvej 15

    9000 Aalborg

    Denmark

20142021

Research activity per year

If you made any changes in Pure these will be visible here soon.

Personal profile

Research profile

Tine Jess, Professor, MD, DMSc, Director of Center for Molecular Prediction of Inflammatory Bowel Disease, PREDICT, Department of Clinical Medicine, Aalborg University Copenhagen. 

Tine Jess has a yearlong carrier within the field of inflammatory bowel disease (IBD) epidemiology. At age 33, she defended her doctoral thesis on prognosis of IBD from Denmark and the Mayo Clinic, US.. Alongside, she was co-responsible for creation of a Department of Epidemiology at Novo Nordisk A/S. At age 35, she received a Female Research Leader Grant from the Danish Council of Independent Research and ran a large and successful research group in Copenhagen during 2010-2016, which numerous important contributions to the field published in Gastroenterology, Gut, BMJ, JAMA and New England Journal of Medicine. At age 39, she became professor of Gastroenterology and Epidemiology, and the later years, she has been heading Center for Clinical Research and Prevention in the Capital Region of Denmark and Department of Epidemiology Research at Statens Serum Institut in Copenhagen.

Tine Jess has received the UNESCO For Women in Science Award, the UEGW Rising Star Award, a Danish Medal of Honor, she has served as Vice Chair of the Young Academy of the Royal Danish Society of Science and Letters, Head of the Epidemiological Committee of the European Crohn Colitis Organization, member of the ministerial Task Force working to increase the number of women in science, InnoWoman for Innovation Fund Denmark, and Board Member in 'Selskab for Teroterisk og Anvendt Terapi af 1923'. 

Education/Academic qualification

Doctor of Medical Science, DMSc

Award Date: 28 Apr 2008

External positions

Board Member, Selskab for Teoretisk og Anvendt Terapi af 1923

1 Aug 2018 → …

Fingerprint

The fingerprint consists of automatically generated concepts related to the associated persons. It is updated automatically, when new content is added.
  • 1 Similar Profiles

Network

Dive into details by clicking on the dots.