Curriculum Vitae

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Curriculum Vitae Curriculum Vitae Lisa Manuela Rogge • M.A. Development Economics • B.Sc. Economics Education Since April 2018 PhD studies in the course of the Research and Training Group “Globalization and Development” Supervized by Prof. Dr. Sebastian Vollmer (University of Göttingen), Prof. Dr. Martin Gassebner (Leibniz University of Hannover) April 2015 Georg-August University of Göttingen, Germany - October 2017 Degree: Master of Arts Development Economics (grade: very good) Master thesis: “Health insurance reform in Indonesia: Implications for health facility usage and economic consequences” (grade: very good) supervised by Prof. Dr. Sebastian Vollmer October 2011 Humboldt University of Berlin, Germany - October 2014 Degree: Bachelor of Science in Economics (grade: good) Bachelor thesis: “An analysis of development traps in fragile states in the context of the transition from MDGs to the post-2015 agenda” (grade: good) supervised by Prof. Dr. Ulrich Kamecke Publications Diba, Farah; Ichsan; Muhsin; Marthoenis; Sofyan, Hizir; Andalas, Mohd; Monfared, Ida, Richert, Kathartina; Kaplan, Lennart; Rogge, Lisa; Doria, Siobhan; Samadi, Vollmer, Sebastian Healthcare providers’ perception of referral system in maternal care facilities in Aceh, Indonesia: a cross-sectional study. BMJ Open 2019; doi: 10.1136/bmjopen-2019-031484 Seuring, Till; Marthoenis; Rhode, Sabrina; Rogge, Lisa; Rau, Holger; Besançon, Stéphane et al. (2019): Using peer education to improve diabetes management and outcomes in a low- income setting: a randomized controlled trial. In Trials 20 (1), p. 548. DOI: 10.1186/s13063- 019-3656-1. Other ongoing projects Health Insurance Reform in Indonesia: Implications for Health Facility Usage and Health Expenditure, with Sebastian Vollmer Did you know? The Effect of SMS Reminders on Health Screening Uptake in Indonesia., with Anna Reuter, Maja Marcus and Sebastian Vollmer preregistered at: http://www.socialscienceregistry.org/trials/5047 The Effect of a Mobile Phone-based Information Intervention on the Usage of Free Health Insurance in Pakistan, with Andreas Landmann and Sebastian Vollmer Noncommunicable Disease Perceptions in the Elderly of Aceh, Indonesia. Joint work with Farah Diba and Marthoenis from Syiah Kuala University as well as Anna Reuter, Lisa Rogge, and Sebastian Vollmer Conferences / Seminars Presentation: 2020 Global Health Economics Seminar, Heidelberg Institute of Public Health 2019 Guest lecture, Master of Public Health, Syiah Kuala University, Banda Aceh, Indonesia 2nd PhD workshop of the German Health Economics Association (DGGÖ), Göttingen 2018 1st Sustainability and Development Conference, Ann Arbor, MI, USA Participation: 2nd international Conference on Globalization and Development, Göttingen 1st PhD workshop of the German Health Economics Association (DGGÖ), Heidelberg Refereeing World Development Long-term experience abroad November-December RCT baseline data collection in Banda Aceh, Indonesia 2019 Leading data collection and implementation of a trial evaluating the effect of an SMS intervention on policy effectiveness, namely the take-up of a national health screening program January – March 2019 RCT baseline data collection in Banda Aceh, Indonesia Leading data collection and implementation of the trial evaluating the effectiveness of diabetes peer education as a replication study in the course of the International Diabetes Federation’s Bridges project July - October 2016 RCT baseline data collection in Band Aceh, Indonesia Student research assistant in the joint research project of University of Göttingen and Syiah Kuala University evaluating the effectiveness of the WHO Safe Childbirth Checklist January – July 2016 University of Stellenbosch, South Africa semester abroad funded by the DAAD-ISAP scholarship September 2013 Ecole Normale Supérieure de Cachan and University Sorbonne- - April 2014 Panthéon, Paris, France Semester abroad and internship participating in the ERASMUS exchange program August 2008 10-month student exchange at Airport High School, Carleton, - June 2009 Michigan, USA Teaching October 2019 – March University of Göttingen, Chair of Development Economics 2020 Advanced topics in Stata, focusing on programming in stata, Master level September, October 2015 University of Göttingen, Chair of Econometrics Tutor for preparatory course in mathematics for first year economics students Curriculum Vitae Lisa Manuela Rogge • M.A. Development Economics • B.Sc. Economics Professional experience December 2017 Gesellschaft für Internationale Zusammenarbeit (GIZ) Bonn - March 2018 Internship with BACKUP Health focusing on quality and risk management as well as monitoring and evaluation July 2016 University of Göttingen, Chair of Development Economics - December 2017 Student research assistant in project to evaluate the WHO Safe Childbirth Checklist: field research and follow-up November 2014 Geschenke der Hoffnung e.V. - March 2015 Assistant in fundraising/ PR department for projects funded by the and November 2017 Christian NGO that supports and advertises projects of development cooperation January - April 2014 Permanent mission of Germany to the OECD in Paris, France Internship with the German counsellor for development policy: attending and reporting on meetings of the Development Assistance Committee, the Development Centre, the ambassador’s council and others March – May 2013 German United Nations Association Berlin-Brandenburg branch (DGVN): assisting the NGO’s office in organizing its key events such as the Otto-Hahn peace medal ceremony or an information event at the Berlin office of the International Labor Organization Languages German Native speaker English Business fluent (toefl: 112) French fluent in speech and writing (DELF, DAAD language certificate C1) Latin “Latinum” proficiency certificate Spanish Conversational knowledge Afrikaans, Indonesian Basic knowledge Computer skills Very good knowledge, daily use STATA, Microsoft Office Basic knowledge MatLab, R, QGIS, Eviews, Oxmetrics, SPSS, LaTeX, SAP .
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