Home  »  Faculty of Health Sciences »  Program of Healthcare Management (Turkish)

COURSE UNIT TITLECOURSE UNIT CODESEMESTERTHEORY + PRACTICE (Hour)ECTS
HEALTH INFORMATION TECHNOLOGIES AND AI APPLICATIONS HCM481 - 3 + 0 5

TYPE OF COURSE UNITElective Course
LEVEL OF COURSE UNITBachelor's Degree
YEAR OF STUDY-
SEMESTER-
NUMBER OF ECTS CREDITS ALLOCATED5
NAME OF LECTURER(S)Assistant Professor Tansel Uyar
LEARNING OUTCOMES OF THE COURSE UNIT At the end of this course, the students;
1) Explain the basic concepts about the role and operation of computer systems in health information technologies.
2) Will be able to explain the basics of artificial intelligence
systems used in health information technologies and the concepts of functioning mechanisms.
3) Evaluate the performance of systems containing artificial intelligence.
4) Can create systems containing artificial intelligence at a
basic level by making applications in the creation of systems containing artificial intelligence.
5) Can explain basic concepts such as data, information,database, and query.
6) Explain the variables in the decision-making process and
the basic concepts of multi-criteria decision-making mechanisms in health management activities.
7) By following the developments about health information
technologies, gain the ability to transfer newly learned information and methods.
MODE OF DELIVERYFace to face
PRE-REQUISITES OF THE COURSENo
RECOMMENDED OPTIONAL PROGRAMME COMPONENTThere are no lessons related with the suggested lesson.
COURSE DEFINITIONWithin the scope of this course; Information on the basics of today's computer technologies, the basics of artificial intelligence-based decision support systems and working mechanisms that can be used frequently in the field of health management, the basics of database management, which is also the basis of health management applications, the decision-making processes in the field of health management and the basics of multi-criteria decision-making mechanisms are given.Various applications of related topics are also supported by practical information in the laboratory environment. In addition, students are encouraged to research with homework and projects in order to follow up-to-date methods and mechanisms in related topics.
COURSE CONTENTS
WEEKTOPICS
1st Week Computer Technologies in the Field of Health
2nd Week Artificial Intelligence Fundamentals and Decision Support Systems
3rd Week Artificial Intelligence Approaches
4th Week Artificial Intelligence Laboratory Applications
5th Week Database Management
6th Week Database Management
7th Week Multiple-Criteria Decision Analysis
8th Week Midterm Exam
9th Week Multiple-Criteria Decision Analysis
10th Week Fuzzy Logic and Multiple-Criteria Decision Analysis
11th Week Laboratory Applications
12th Week Laboratory Applications
13th Week Project Presentations and Discussion
14th Week Project Presentations and Discussion
RECOMENDED OR REQUIRED READINGHandbook of Medical Informatics, by Mark A. Musen (Author), J.van Bemmel (Editor), 2002, Elsevier
Machine Learning For Absolute Beginners a Step by Step guide: Algorithms For Supervised and Unsupervised Learning with Real World Applications, by William Sullivan (Author), Raymond Kazuya (Publisher), 2017
Heaton, J. (2018). Ian Goodfellow, Yoshua Bengio, and Aaron Courville: Deep learning: The MIT Press, 2016, 800 pp, ISBN: 0262035618.
PLANNED LEARNING ACTIVITIES AND TEACHING METHODSLecture,Presentation,Questions/Answers,Case Study
ASSESSMENT METHODS AND CRITERIA
 QuantityPercentage(%)
Mid-term125
Assignment125
Project125
Total(%)75
Contribution of In-term Studies to Overall Grade(%)75
Contribution of Final Examination to Overall Grade(%)25
Total(%)100
LANGUAGE OF INSTRUCTIONTurkish
WORK PLACEMENT(S)No
  

KEY LEARNING OUTCOMES (KLO) / MATRIX OF LEARNING OUTCOMES (LO)
LO1LO2LO3LO4LO5LO6LO7
K1             
K2             
K3             
K4             
K5             
K6             
K7             
K8             
K9             
K10