Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology
Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology

Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology

Fellowship 36000 - 60000 € / Jahr (geschätzt) Kein Home Office möglich
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Auf einen Blick

  • Aufgaben: Join a team to develop generative models predicting tumor growth in pediatric oncology.
  • Arbeitgeber: Be part of the innovative Center for AI in Radiation Oncology at Inselspital, University of Bern.
  • Mitarbeitervorteile: Enjoy competitive salary, professional development funding, and access to top-tier datasets.
  • Warum dieser Job: Make a real impact in pediatric oncology while collaborating with experts in a dynamic environment.
  • Gewünschte Qualifikationen: PhD in computer science or related field; expertise in machine learning and medical imaging required.
  • Andere Informationen: Position starts in spring 2025; opportunities for teaching and supervising junior researchers.

Das voraussichtliche Gehalt liegt zwischen 36000 - 60000 € pro Jahr.

Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric OncologyEntry April 2025 or upon agreement Temporary for 2 yearsThe new Center for AI in Radiation Oncology (CAIRO) within the Inselspital and affiliated with the University of Bern will investigate data-driven solutions for radiation oncology applications in the context of outcome predictions, treatment personalization, and multi-modal learning. At the core of our research is the collaboration across disciplines spanning expertise in medicine, biology, computer, and data science. As part of the new group and with the support of the SNSF Starting Grant we seek a motivated postdoctoral fellow to join this growing team and contribute to interdisciplinary research partnerships. The anticipated start date is spring 2025. Be part of a newly formed team that will start in the spring of 2025! We are seeking a dedicated and talented postdoctoral researcher to contribute to an exciting project at the intersection of medical imaging, computer vision, and oncology. The focus of this position is to develop and refine generative space-time models for predicting tumor growth and response to radiotherapy (RT) in pediatric patients with diffuse midline glioma (DMG). This role offers an opportunity to address critical challenges in understanding and managing a rare and fatal brain tumor while advancing methods for personalized treatment. By leveraging state-of-the-art machine learning approaches and clinical data, this project aims to improve patient care and provide a foundation for future research into pediatric precision oncology. Investigate and implement Denoising Diffusion Implicit Models (DDIM) for generating anatomical tumor images based on MRI data.Develop a space-time generative model to predict tumor growth trajectories from synthetic longitudinal MRI data.Integrate mechanistic mathematical models to guide generative models toward clinically relevant tumor growth predictions.Train models using a unique dataset of longitudinal multi-contrast MRIs and clinical data from DMG patients.Evaluate model performance using Response Assessment in Pediatric Neuro Oncology (RAPNO) criteria, tumor segmentations, and growth probability maps.Collaborate with multidisciplinary teams, including pediatric oncology experts and machine learning researchers.Communicate with clinical experts regarding the requirements for data preparation and feature extraction.Prepare manuscripts, and presentations to disseminate findings.Be part of an engaging and collaborative team, including supervision of junior researchers.PhD in computer science, biomedical engineering, or a related field with a strong focus on machine learning or computer vision.Expertise in generative modeling (e.g., diffusion models) and experience working with medical imaging data.Some background in mechanistic mathematical modeling is a plusStrong programming skills, particularly in Python and deep learning frameworks (e.g., PyTorch, TensorFlow).Experience in software development including collaborative coding, version control, and use of compute clusters.Interest or experience in healthcare applications of AI, particularly in oncology or radiology.Excellent problem-solving skills and the ability to work both independently and collaboratively in a multidisciplinary environment.You ideally have a background in biomedical projects with experience in interdisciplinary collaboration.Motivated to work as part of a team and strive towards scientific excellence in your field.Proficient in English in writing and speaking.We offer a 2-year Postdoc position at the Faculty of Medicine of the University of Bern, 80-100% that includes:Opportunity to work on a multidisciplinary project combining medical imaging, machine learning, and clinical oncology.Access to high-quality datasets and collaboration with leading international DMG treatment centers.Competitive salary and funding for professional development opportunities.Opportunities to engage with different communities bridging data science and biomedical research leading to high-impact publicationsYou will be part of a highly motivated, multidisciplinary and collaborative teamWe encourage the attendance of relevant (inter-) national conferences to increase your visibility and present the project outcomesYou can be involved in the supervision of junior researchers and optional teaching in the labAccess to state-of-the-art computational resources and collaborative research networksOpportunities for professional development and career advancement Please submit your CV, a cover letter outlining your research interests, qualifications, and motivation for the position

Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology Arbeitgeber: jobscout24

At the Center for AI in Radiation Oncology (CAIRO) within the Inselspital and affiliated with the University of Bern, we pride ourselves on fostering a collaborative and innovative work environment that encourages interdisciplinary research. As a postdoctoral fellow, you will have access to cutting-edge resources, competitive salary, and professional development opportunities, all while contributing to impactful projects that aim to improve pediatric oncology outcomes. Join our highly motivated team and be part of a transformative journey in medical imaging and machine learning.
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Kontaktperson:

jobscout24 HR Team

StudySmarter Bewerbungstipps 🤫

So bekommst du den Job: Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology

✨Tip Number 1

Make sure to highlight your experience with generative modeling and medical imaging in any conversations or networking opportunities. This will show your expertise and align your skills with the needs of the team.

✨Tip Number 2

Engage with current research in pediatric oncology and machine learning. Being knowledgeable about recent advancements can help you stand out during discussions with potential colleagues and supervisors.

✨Tip Number 3

Connect with professionals in the field through platforms like LinkedIn or academic conferences. Building relationships with those already working in pediatric oncology or AI in healthcare can provide valuable insights and recommendations.

✨Tip Number 4

Consider reaching out to the team at the Center for AI in Radiation Oncology to express your interest and ask questions about their work. This proactive approach can demonstrate your enthusiasm and commitment to joining their team.

Diese Fähigkeiten machen dich zur top Bewerber*in für die Stelle: Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology

PhD in Computer Science, Biomedical Engineering, or related field
Expertise in Generative Modeling (e.g., Diffusion Models)
Experience with Medical Imaging Data
Strong Programming Skills in Python
Proficiency in Deep Learning Frameworks (e.g., PyTorch, TensorFlow)
Background in Mechanistic Mathematical Modeling
Experience in Software Development and Collaborative Coding
Version Control Proficiency
Familiarity with Compute Clusters
Interest in Healthcare Applications of AI, particularly in Oncology or Radiology
Excellent Problem-Solving Skills
Ability to Work Independently and Collaboratively
Experience in Interdisciplinary Collaboration
Motivated Team Player
Proficient in English (Writing and Speaking)

Tipps für deine Bewerbung 🫡

Tailor Your Cover Letter: Craft a cover letter that specifically addresses your research interests and qualifications related to generative modeling, medical imaging, and pediatric oncology. Highlight your motivation for joining the Center for AI in Radiation Oncology and how your background aligns with their goals.

Showcase Relevant Experience: In your CV, emphasize your expertise in machine learning, particularly in generative modeling and medical imaging. Include any relevant projects or publications that demonstrate your ability to work with longitudinal MRI data and mechanistic mathematical modeling.

Highlight Collaborative Skills: Since the position involves working with multidisciplinary teams, make sure to mention any previous collaborative experiences. Discuss how you have effectively communicated with clinical experts or worked alongside researchers from different fields.

Proofread and Format: Before submitting your application, carefully proofread your documents for clarity and grammatical accuracy. Ensure that your CV and cover letter are well-formatted and easy to read, as this reflects your attention to detail and professionalism.

Wie du dich auf ein Vorstellungsgespräch bei jobscout24 vorbereitest

✨Show Your Passion for Pediatric Oncology

Make sure to express your genuine interest in pediatric oncology and how your background aligns with the mission of the Center for AI in Radiation Oncology. Share any relevant experiences or projects that highlight your commitment to improving patient care in this field.

✨Demonstrate Your Technical Skills

Be prepared to discuss your expertise in generative modeling, particularly with diffusion models, and your experience with medical imaging data. Highlight specific projects where you utilized Python and deep learning frameworks like PyTorch or TensorFlow.

✨Emphasize Collaboration Experience

Since this role involves working with multidisciplinary teams, share examples of past collaborations with experts from different fields. Discuss how you effectively communicated and contributed to team goals, especially in a research setting.

✨Prepare for Problem-Solving Questions

Expect questions that assess your problem-solving abilities, particularly in the context of developing predictive models for tumor growth. Be ready to walk through your thought process and how you approach complex challenges in research.

Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology
jobscout24
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  • Postdoctoral Fellow in Generative Space-Time Modeling for Pediatric Oncology

    Fellowship
    36000 - 60000 € / Jahr (geschätzt)

    Bewerbungsfrist: 2027-03-03

  • J

    jobscout24

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