Dozent/in |
Javier Montoya Dr. sc. ETH |
Veranstaltungsart |
Vorlesung |
Code |
HS231421 |
Semester |
Herbstsemester 2023 |
Durchführender Fachbereich |
Gesundheitswissenschaften |
Studienstufe |
Bachelor |
Termin/e |
Do, 21.09.2023, 14:15 - 16:00 Uhr, HS 4 Do, 28.09.2023, 14:15 - 16:00 Uhr, HS 4 Do, 05.10.2023, 14:15 - 16:00 Uhr, HS 4 Do, 12.10.2023, 14:15 - 16:00 Uhr, 3.A05 Do, 19.10.2023, 14:15 - 16:00 Uhr, HS 4 Do, 02.11.2023, 14:15 - 16:00 Uhr, HS 14 Do, 09.11.2023, 14:15 - 16:00 Uhr, HS 4 Do, 16.11.2023, 14:15 - 16:00 Uhr, HS 3 Do, 23.11.2023, 14:15 - 16:00 Uhr, HS 4 Do, 30.11.2023, 14:15 - 16:00 Uhr, HS 4 Do, 07.12.2023, 14:15 - 16:00 Uhr, HS 4 Do, 14.12.2023, 14:15 - 16:00 Uhr, HS 4 Do, 21.12.2023, 14:15 - 16:00 Uhr, HS 4 Di, 16.01.2024, 15:00 - 16:15 Uhr, HS 1 (Prüfung) |
Weitere Daten |
This is an introductory course on applied Artificial Intelligence in Digital Health. |
Umfang |
2 Semesterwochenstunden |
Inhalt |
• Introduction and Foundations of Artificial Intelligence and Deep Learning: what are the fundamental concepts associated to Artificial Intelligence/Deep Learning?
• Applications of Artificial Intelligence in digital health: what are examples of applications of Artificial Intelligence in the medical field?
• Supervised, Unsupervised, and Reinforcement Learning: what are the commontypes of Artificial Intelligence methods?
• Introduction to Clinical Data: what are the different types of data available in clinical settings and how can they be used for diagnosis?
• The Deep Learning Pipeline in Digital Health: what are the key building blocks of Artificial Intelligence systems and how do such systems are trained and evaluated?
• Computer Vision in Medical Imaging: how can visual information be used to assist medical diagnosis in medical imaging?
• Natural Language Processing in Healthcare: how can clinical text documents be used to obtain valuable medical insights?
• Trustworthy Artificial Intelligence and Interpretability: what are the challenges and considerations aiming at trustworthy and interpretable Artificial Intelligence in Healthcare?
• Ethical considerations and Regulations for Artificial Intelligence in Digital Healthwhat are the existing and emerging regulations and guidelines for using ArtificiaIntelligence in the context of Digital Health?
• Future Perspectives and emerging trends in AI for digital healthcare: what are the current trends and future perspectives of applied AI in Digital Health? |
Schlagworte |
Nachhaltigkeit |
Lernziele |
After completing the course, students will be able to:
• Understand and describe the fundamental principles of Artificial Intelligence in the context of the medical field.
• Identify the different components of AI systems and how such systems are trained and evaluated on medical data.
• Gain familiarity with existing AI models relying on visual and/or text data intended for medical diagnosis.
• Analyze the regulations and ethical implications when developing AI systems for healthcare.
• Understand the different roles among professionals when implementing crossdomain AI projects for healthcare:healthcare
professionals, researchers, and data scientists.
• Evaluate critically the capabilities and limitations of AI models in digital health.
• Improve soft skills: presentation, communication, problem-solving, and teamwork. |
Voraussetzungen |
• Attendance and Engagement: regular attendance to the class and self-study arebeneficial to successfully complete the course.
• Collaborative Learning: collaboration and exchange with peers through group discussions and joint projects will help to improve the learning experience.
• Active Learning and Critical Thinking: Proactively learning and analyzing the applicability of AI systems together with their benefits, challenges, and
limitations are important for succeeding in the course. |
Sprache |
Englisch |
Anmeldung |
https://elearning.hsm-unilu.ch/course/view.php?id=673
|
Prüfung |
40% group project and 60% final online exam
(multiple choice, short answer, etc.) with open notes. |
Abschlussform / Credits |
40% group project and 60% final written exam / 3 Credits
|
Hinweise |
Teaching methods:
The teaching methods are based on lectures, interactive discussions, multimedia resources, case studies, group
project(s), and guest speaker. |
Hörer-/innen |
Ja |
Material |
The teaching material includes selected book chapters, research papers, online tutorials, and medical datasets.
moodle e-learning platform for class material and evaluation. |
Literatur |
The corresponding references and readings will be provided in digital form on the moodle e-learning platform.
|