PhD Position in Artificial Intelligence and Medical Imaging – Cardiac Diagnostics at Norwegian University of Science and Technology
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Study Artificial Intelligence for Cardiac Imaging at NTNU
The Norwegian University of Science and Technology (NTNU) is offering a fully funded PhD position in Artificial Intelligence (AI) and Medical Imaging at the Department of Circulation and Medical Imaging within the Faculty of Medicine and Health Sciences. This doctoral opportunity focuses on AI-driven cardiac diagnostics, combining cutting-edge machine learning techniques with real-world echocardiography and clinical data. The position is based at St. Olavs University Hospital in Trondheim and involves collaboration with leading Norwegian hospitals and research institutions. NTNU is one of Europe’s top technical-scientific universities, hosting over 43,000 students and 9,000 employees dedicated to research and innovation for societal impact.
Research Project: AI for Multimodal Cardiac Function Assessment
The PhD project, titled: “Beyond Images – Multimodal Learning for Improved Assessment of Cardiac Function and Outcome Prediction using Artificial Intelligence and Echocardiography” aims to revolutionize cardiovascular disease diagnosis through advanced AI models.
Research Focus Areas
Self-supervised learning for echocardiography
Multimodal machine learning combining imaging and clinical data
Risk prediction models for cardiovascular diseases
Explainable AI for medical decision support
Outcome prediction in heart failure, myocardial infarction, and aortic stenosis
Cardiovascular disease remains the leading cause of death worldwide. While AI has improved measurement automation in cardiac imaging, this project addresses a critical gap: integrated, patient-centered analysis that combines imaging, physiological signals, and demographic data. The research leverages:
Large-scale curated echocardiographic datasets (>4,000 normative cases)
Clinical outcome data from over 10,000 patients
Population studies including HUNT and Tromsø cohorts
Key Responsibilities
As a PhD Candidate in AI and Medical Imaging, you will:
Develop self-supervised learning models for cardiac function representation
Design multimodal fusion architectures integrating imaging, ECG, blood pressure, and clinical data
Build interpretable AI models for clinical transparency
Validate predictive AI frameworks across cardiac conditions
Publish in high-impact journals and present at international conferences
Complete the NTNU PhD programme in Medicine and Health Sciences
Write and defend a doctoral thesis
Academic Requirements
Mandatory Qualifications
Master’s degree (minimum 120 ECTS) in:
Artificial Intelligence
Computer Science
Medical Technology
Physics
Applied Mathematics
Informatics or related technical field
Strong academic record (equivalent to B or better on NTNU grading scale)
Programming experience in Python
Experience with machine learning frameworks (e.g., PyTorch, TensorFlow)
Admission eligibility for NTNU’s PhD programme
Excellent written and spoken English
Preferred Qualifications
Deep learning for medical image analysis
Self-supervised or representation learning
Multimodal data fusion
Large dataset processing
Research publications
Knowledge of echocardiography (advantage, not required)
Employment Conditions and Salary
Position code: PhD Candidate (1017)
Salary: From NOK 550,800 per year
3-year employment (no teaching obligations)
Pension contributions to Norwegian Public Service Pension Fund
Access to national employee benefits
Admission to the PhD programme in Medical Technology is required within three months of employment.
Why Study in Trondheim, Norway?
Trondheim is Norway’s technology capital, known for:
Strong research ecosystem
Modern European lifestyle
Clean environment and low crime rates
Excellent public healthcare and welfare system
Family-friendly policies and subsidized childcare
Access to nature and outdoor activities
NTNU promotes diversity, equal opportunity, and inclusive research environments.
Application Documents Required
Applicants must submit:
Bachelor’s and Master’s transcripts and diplomas
CV
Motivation letter
Master’s thesis (or draft if recently submitted)
Publications (if applicable)
Certificates
Contact details for two academic references
All documents must be submitted electronically before the deadline.
Research Environment and Collaboration
This PhD position includes collaboration between:
NTNU
SINTEF Digital
St. Olavs University Hospital
Oslo University Hospital
Sørlandet Hospital
Tromsø University Hospital
The project operates at the intersection of AI research, medical imaging, cardiovascular medicine, and clinical innovation, offering access to unique national datasets and interdisciplinary expertise.
Career Prospects
Graduates of this PhD programme will gain:
Advanced expertise in AI for healthcare
Experience with large-scale clinical data
Publications in leading AI and medical imaging journals
International research visibility
Strong career pathways in academia, healthcare technology, or industry
Contact Information
For academic questions: Andreas Østvik Department of Circulation and Medical Imaging NTNU For recruitment process inquiries: HR Advisor, NTNU If you are passionate about artificial intelligence, medical imaging, and improving cardiac care through multimodal machine learning, this fully funded PhD at NTNU offers a unique opportunity to contribute to the future of digital healthcare. Apply now at:
Linköping University PhD 2026 in AI for Medical Imaging
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If you are planning to pursue a PhD in Europe at the intersection of artificial intelligence and healthcare, the opportunity at Linköping University is a strong choice. This fully funded PhD focuses on deep learning for medical imaging, with real-world applications in early lung cancer detection.
PhD Position Overview
University: Linköping University
Location: Linköping
Department: Biomedical Engineering
Supervisor: Anders Eklund
Program: Data-Driven Life Science (DDLS)
Degree Level: PhD
Duration: 4–5 Years
Deadline: May 14, 2026
Research Focus
This PhD is part of Sweden’s national Data-Driven Life Science (DDLS) initiative, aimed at advancing AI-driven biomedical research.
The project focuses on:
Deep learning for medical image analysis
Early detection of lung cancer
Combining:
High-resolution CT scan data
Clinical variables (age, smoking status, etc.)
Classifying lung nodules as benign or malignant
The research uses large-scale datasets (30,000+ subjects) and aims to improve diagnostic accuracy in healthcare systems.
Key Research Areas
Computer vision for medical imaging
Deep learning model development
Multi-modal data fusion (imaging + clinical data)
Large-scale biomedical data analysis
AI applications in precision medicine and diagnostics
Scholarship Benefits
The PhD position offers:
Starting salary of SEK 36,400/month (increases annually)
Fully funded PhD training (no tuition fees)
Access to advanced AI infrastructure, including:
High-performance computing systems
Participation in a national research program (DDLS)
Collaboration with:
Hospitals
AI research labs
Opportunities for teaching (up to 20%)
Eligibility Criteria
Applicants must meet the following requirements:
Master’s degree in:
Biomedical Engineering
Computer Science
Machine Learning
Electrical Engineering
Statistics or related fields
Strong background in:
Deep learning
Computer vision
Mathematics
Programming skills (especially Python)
English language proficiency
Preferred qualifications:
Experience in medical image analysis
Knowledge of large-scale data processing
Responsibilities
Selected candidates will:
Develop AI models for lung cancer detection
Analyze large medical imaging datasets
Collaborate with clinicians and researchers
Publish research in scientific journals
Participate in academic discussions and research meetings
Research Environment
Linköping University is one of Sweden’s leading institutions in AI and engineering, with strong links to national initiatives such as:
DDLS (Data-Driven Life Science)
WASP (AI research program)
ELLIIT (IT and mobile communication research)
The research group collaborates closely with hospitals and international partners, providing a highly interdisciplinary environment.
Application Process
To apply, candidates must:
Submit an online application before the deadline
Include academic transcripts and CV
Provide proof of qualifications and experience
Late or incomplete applications will not be considered.
Why Study in Sweden?
Sweden offers:
High-quality research and education
Strong focus on innovation and AI
Excellent work-life balance
International and inclusive academic culture
Final Thoughts
This PhD in Biomedical Engineering is ideal for candidates interested in AI, healthcare, and real-world impact. With access to large datasets, advanced computing resources, and interdisciplinary collaboration, it provides an excellent platform for building a career in medical AI research.
University of Stavanger PhD 2026 in Energy Engineering
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If you are planning to pursue a fully funded PhD in sustainable energy, the opportunity at University of Stavanger offers an excellent pathway into advanced research in geothermal systems. This PhD fellowship focuses on optimizing energy transfer in shallow geothermal wells, combining experimental work, modeling, and AI-driven optimization.
PhD Position Overview
University: University of Stavanger
Location: Stavanger
Department: Energy and Petroleum Engineering
Supervisor: Kristian Gjerstad
Degree Level: PhD
Start Date: August 2026
Duration: 3 Years
Deadline: May 30, 2026
Research Focus
This PhD project explores efficient and sustainable geothermal energy systems, aiming to improve heating and cooling technologies.
Key research objectives include:
Optimizing energy transfer in shallow geothermal wells
Reducing energy losses in circulation systems
Improving cost efficiency per kWh
Developing thermal and hydraulic models
Applying AI-based and hybrid optimization methods
Key Research Questions
How does well design affect heat transfer and energy losses?
What operating conditions maximize energy output?
How can models better predict geothermal system performance?
Research Tasks
The selected candidate will work on:
Experimental studies on heat transfer and pressure loss
Building and modifying flow loop systems
Developing computational thermal and hydraulic models
Applying AI and control algorithms for system optimization
Validating models using real-world data
Expected Outcomes
The project aims to deliver:
Advanced models for geothermal system design
Improved energy efficiency and sustainability
Practical solutions for future green energy systems
Scholarship Benefits
This fully funded PhD includes:
Annual salary of NOK 550,800
Pension and insurance benefits
Access to Norway’s public healthcare system
Paid parental leave and social benefits
Free Norwegian language courses
Relocation support
Access to sports facilities and wellness services
Eligibility Criteria
Applicants must meet the following requirements:
Master’s degree in:
Energy Engineering
Physics
Computer Science
Petroleum Engineering or related fields
Strong academic record (minimum grade equivalent to B)
Skills in:
Numerical modeling
Data analysis or AI
Experience in:
Experimental work (preferred)
Software development
Strong English proficiency
English Language Requirements
Applicants must provide one of the following:
TOEFL (minimum 90)
IELTS (minimum 6.5)
Cambridge CAE/CPE
PTE Academic (minimum 62)
Exemptions apply for candidates with prior education in English-speaking countries or EU/EEA programs.
Application Requirements
To apply, candidates must submit:
CV and academic records
Motivation letter
Research proposal (mandatory)
Certificates and diplomas
Proof of English proficiency
Relevant publications (if available)
Applications must be submitted through the official online portal.
Why Choose Stavanger?
Stavanger is a leading energy hub in Europe, making it an ideal location for research in sustainable technologies. The University of Stavanger is known for:
Strong industry collaboration in energy sectors
Focus on green transition and sustainability
International research environment
High quality of life and work-life balance
Final Thoughts
This PhD fellowship is ideal for candidates interested in renewable energy, AI-driven optimization, and engineering innovation. With strong financial support and access to cutting-edge research facilities, it offers a valuable opportunity to contribute to the future of sustainable energy systems.
Eindhoven University of Technology PhD 2026 in Statistical Bioinformatics
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If you are planning to pursue a PhD in Europe with strong financial support, the opportunity at Eindhoven University of Technology is one of the best options available. This fully funded PhD position in Statistical Bioinformatics offers competitive salary, advanced research training, and access to a world-class innovation ecosystem in the Netherlands.
Overview of the PhD Position
Host Institution: Eindhoven University of Technology
Location: Eindhoven
Department: Mathematics and Computer Science
Supervisor: Jeanine Duistermaat
Degree Level: PhD
Deadline: May 16, 2026
Duration: 4 Years
Employment Type: Full-time
Research Focus
This PhD project focuses on statistical data integration in biomedical research, particularly using advanced models for complex biological datasets.
Key research areas include:
Development of latent variable models for multi-omics data
Statistical modeling of longitudinal biological datasets
Integration of datasets such as:
Proteomics
Metabolomics
Transcriptomics
Assessing model performance and goodness-of-fit
Creating R packages for practical implementation
The research contributes directly to improving understanding of disease mechanisms, diagnosis, and treatment strategies.
Scholarship Benefits
The PhD position offers a strong financial and professional package:
Monthly salary between €3,059 – €3,881
Annual bonuses:
8.3% year-end bonus
8% holiday allowance
Pension scheme and paid leave benefits
Travel, remote work, and internet allowances
Access to:
High-quality research infrastructure
Training and career development programs
Sports and campus facilities
Support for international candidates, including relocation assistance
Eligibility Criteria
To qualify for this PhD position, applicants must meet the following requirements:
Master’s degree in:
Mathematics
Statistics
Or a closely related field
Strong background in:
Statistical modeling
Data analysis
Interest in biomedical applications and interdisciplinary research
Good communication and academic writing skills
English proficiency (minimum C1 level)
Additional advantages:
Experience with biological datasets
Programming skills (especially in R or similar tools)
Responsibilities
Selected candidates will:
Develop new statistical methods for multi-omics data
Apply models to real-world biomedical datasets
Build and maintain software tools (R packages)
Collaborate with interdisciplinary research teams
Present research at conferences and publish findings
Contribute to teaching (10–15% workload)
Application Process
To apply, candidates must submit:
Motivation letter
Updated CV (including publications and references)
Academic transcripts
Contact details of referees
Applications must be submitted through the official online portal. Incomplete or email submissions are not accepted.
Why Choose TU Eindhoven?
Eindhoven University of Technology is located in the Brainport Eindhoven region, one of Europe’s leading technology hubs. The university is known for:
Strong collaboration with high-tech industries
Cutting-edge research in AI, data science, and engineering
A highly international academic environment
Practical, impact-driven research approach
Final Thoughts
This PhD in Statistical Bioinformatics is ideal for candidates who want to combine advanced mathematics, data science, and biomedical research in a fully funded European program. With strong academic support and industry connections, it offers an excellent pathway for a research career in data-driven healthcare.
University of Luxembourg PhD in Civil Engineering 2026
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The University of Luxembourg is offering a fully funded PhD position in Civil Engineering with a focus on hybrid composite structures. This doctoral opportunity is part of the European HySCom project, aimed at developing next-generation structural systems using advanced materials such as UHPC and steel-concrete composites.
The position is hosted by the Faculty of Science, Technology and Medicine (FSTM) and provides a strong combination of experimental research, numerical modelling, and industry collaboration.
PhD Position Overview
Level of Study: PhD (Doctoral Researcher)
Institution: University of Luxembourg
Faculty: Faculty of Science, Technology and Medicine (FSTM)
Department: Engineering (DoE)
Supervisor: Markus Schäfer
Location: Luxembourg City (Kirchberg Campus)
Duration: 36 months
Start Date: June 15, 2026
Salary: €41,976 per year (gross, full-time)
Language Requirement: English (minimum B2 level)
Project Overview – HySCom
This PhD position is part of the Eurostars HySCom project, focusing on the development of innovative hybrid composite columns combining:
Reinforced concrete
Structural steel
Steel Fibre Reinforced Ultra-High Performance Concrete (SFRUHPC)
The project is conducted in collaboration with a leading German industrial partner, providing real-world engineering applications alongside academic research.
Research Areas
The doctoral research will include:
Material characterization of concrete and UHPC
Development and optimization of UHPC mixtures
Experimental testing (small-scale and large-scale structural tests)
Push tests and column tests
Advanced nonlinear finite element modelling (Abaqus)
Fire and ambient condition simulations
Structural design model development
Parametric studies and model validation
Key Responsibilities
The selected candidate will:
Conduct laboratory-based experimental research
Develop and validate computational models
Perform 3D nonlinear FEM simulations
Publish results in international journals
Present findings at global conferences
Support teaching and academic activities
Eligibility Criteria
Applicants must meet the following requirements:
Education
Master’s degree in:
Civil Engineering
Structural Engineering
Related engineering discipline
Technical Skills
Strong knowledge of:
Structural engineering
Steel–concrete composite systems
Construction materials (concrete, UHPC)
Familiarity with:
Eurocodes (EN 1990, EN 1992, EN 1993, EN 1994)
Experience with:
Nonlinear FEM (preferably Abaqus, GMNIA)
Additional Requirements
Interest in experimental and numerical research
Strong analytical and problem-solving skills
English proficiency (minimum B2 level)
Salary and Benefits
This is a fully funded doctoral position offering:
€41,976 annual gross salary
Full-time employment (40 hours/week)
Access to advanced laboratory and simulation facilities
Collaboration with industry partners
Opportunities to attend international conferences
Multicultural research environment
Required Application Documents
Applicants must submit:
Curriculum Vitae (CV)
Motivation letter
Academic transcripts
Contact details of 1–2 referees
Applications must be submitted through the official online system. Email applications are not accepted.
How to Apply
To apply for this PhD position:
Prepare all required documents
Submit your application through the official University of Luxembourg HR portal
Apply as early as possible (rolling selection process)
Contract Details
Position Title: Doctoral Researcher
Contract Type: Fixed-term (36 months)
Working Hours: Full-time (40 hours/week)
Campus: Kirchberg, Luxembourg
About the Faculty (FSTM)
The Faculty of Science, Technology and Medicine at the University of Luxembourg is a multidisciplinary hub covering:
Engineering
Computer Science
Physics and Mathematics
Life Sciences and Medicine
The Department of Engineering focuses on innovative and sustainable solutions for modern infrastructure and industry challenges.
Why Apply for This PhD?
This opportunity is ideal for candidates who want to:
Work on cutting-edge composite materials and structures
Gain hands-on laboratory and simulation experience
Collaborate with industry partners
Build an international research career in Europe
Contribute to sustainable infrastructure development