Medical Scientific Liaison Oncology | Medical Scientific Liaison (m/w/d) Onkologie (Essen, Hannover, Osnabrück, Göttingen, Kassel)
Bayer AG
Job Summary
As a Medical Scientific Liaison (MSL) specializing in Oncology, you will be instrumental in fostering robust partnerships with Thought Leaders (TLs) within your designated territory. Your daily responsibilities will involve implementing TL engagement strategies using omnichannel approaches, generating and documenting insights on unmet medical needs and treatment patterns, and effectively communicating these findings to cross-functional teams to inform strategic decisions. You will be responsible for disseminating scientific and research-related information, organizing advisory boards, and developing and conducting medical education events. Additionally, you will support clinical study teams, act as a contact for study leaders, and manage investigator-initiated research projects. This role offers the opportunity to make a significant impact by bridging scientific knowledge with practical application in the oncology field, collaborating closely with internal and external stakeholders, and contributing to the advancement of medical understanding and patient care.
Required Skills
Education
Academic degree in a natural science field (MD, PharmD, PhD) (preferred)
Experience
- • Relevant professional experience in Urology/Oncology (preferred)
Languages
Additional
- High willingness to travel; Class B driver's license required
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