M.Tech in Biomedical Engineering
Semester-wise syllabus for an M.Tech in Biomedical Engineering
Semester 1: Core Foundations
Courses:
1. Human Anatomy and Physiology
- Systems physiology, cell biology, and biomechanics of tissues/organs.
2. Biomedical Instrumentation
- Sensors, biosignal acquisition (ECG, EEG, EMG), and medical imaging basics (MRI, CT, ultrasound).
3. Biomechanics
- Stress-strain analysis, gait analysis, prosthetics, and biomaterial mechanics.
4. Medical Electronics
- Circuit design for medical devices, amplifiers, filters, and safety standards (IEC 60601).
5. Research Methodology
- Technical writing, statistical tools (Python/MATLAB), and ethics in biomedical research.
Labs:
- Biomechanics Lab (motion capture, force plate analysis)
- Medical Device Prototyping Lab (Arduino/Raspberry Pi for biosignal acquisition)
Semester 2: Advanced Topics & Electives
Core Courses:
1. Medical Imaging Systems
- Advanced MRI/CT physics, image reconstruction algorithms, and AI in diagnostics.
2. Biomaterials and Tissue Engineering
- Biocompatibility, scaffolds, 3D bioprinting, and regenerative medicine.
Electives (Examples):
- Bioinformatics and Genomics (NGS data analysis, personalized medicine)
- Rehabilitation Engineering (exoskeletons, neuroprosthetics)
- Healthcare Robotics (surgical robots, assistive devices)
- Neural Engineering (brain-computer interfaces, neural implants)
- Clinical Engineering (hospital equipment management, FDA regulations)
Labs:
- Medical Imaging Lab (MATLAB/Python for image processing)
- Biomaterials Testing Lab (tensile testing, cell culture techniques)
Semester 3: Specialization & Project Work
Electives (Examples):
- AI/ML in Healthcare (predictive diagnostics, radiomics)
- Nanomedicine (drug delivery, nanorobots)
- Wearable Health Tech (smart sensors, IoT-enabled devices)
- Cardiovascular Engineering (stents, pacemakers, hemodynamics)
- Telemedicine and Digital Health (remote monitoring, EHR systems)
Project/Dissertation:
- Phase 1: Topic selection (e.g., AI-based cancer detection, low-cost prosthetic design, wearable glucose monitors), literature review, and proposal.
- Seminars: Presentations on trends like neural implants, CRISPR-based therapies, or AI-driven drug discovery.
Semester 4: Thesis/Project Completion
Thesis/Project:
- Full-time focus on prototyping (e.g., medical device development), clinical simulations, or data-driven research (e.g., genomic analysis).
- Final documentation, viva voce defense, and collaboration with hospitals/research institutes (e.g., AIIMS, ICMR).
Additional Components:
- Industrial Internship (optional, with firms like Siemens Healthineers, GE Healthcare, or startups).
- Workshops: Training in 3D bioprinting, FDA compliance, or AI tools (TensorFlow for medical imaging).
Elective Tracks (Specializations):
1. Medical Devices and Diagnostics
- Wearables, point-of-care devices, and imaging systems.
2. Biomaterials and Tissue Engineering
- Smart biomaterials, organ-on-a-chip, and regenerative therapies.
3. AI and Data Science in Healthcare
- Predictive analytics, radiomics, and personalized medicine.
4. Rehabilitation and Assistive Technologies
- Prosthetics, exoskeletons, and assistive robotics.