2018/2019
KAN-CIHCV1604U Empirical Methods in Health Care
Innovation
English Title |
Empirical Methods in Health Care
Innovation |
|
Language |
English |
Course ECTS |
7.5 ECTS |
Type |
Elective |
Level |
Full Degree Master |
Duration |
One Quarter |
Start time of the course |
Second Quarter |
Timetable |
Course schedule will be posted at
calendar.cbs.dk |
Max. participants |
50 |
Study board |
Study Board for MSc in Business Administration and Innovation
in Health Care
|
Course
coordinator |
- Fane Naja Groes - Department of Economics
(ECON)
|
Main academic
disciplines |
- Innovation
- Statistics and quantitative methods
- Economics
|
Teaching
methods |
|
Last updated on
15-06-2018
|
Learning objectives |
- Understanding of the content and organization of data in the
Danish health registers
- Lay out testable hypotheses
- Outline an empirical strategy to test these hypotheses
- Interpret the results of the quantitative/econometric
analysis
- Critically evaluate the econometric models for bias and
causality
|
Course prerequisites |
Track 2 # Health Innovation assessment |
Examination |
Empirical
Methods in Health Care Innovation:
|
Exam
ECTS |
7,5 |
Examination form |
Oral exam based on written product
In order to participate in the oral exam, the written product
must be handed in before the oral exam; by the set deadline. The
grade is based on an overall assessment of the written product and
the individual oral performance. |
Individual or group exam |
Individual oral exam based on written group
product |
Number of people in the group |
4-5 |
Size of written product |
Max. 15 pages |
Assignment type |
Project |
Duration |
Written product to be submitted on specified date and
time.
20 min. per student, including examiners' discussion of grade,
and informing plus explaining the grade |
Grading scale |
7-step scale |
Examiner(s) |
Internal examiner and second internal
examiner |
Exam period |
Winter |
Make-up exam/re-exam |
Same examination form as the ordinary exam
If a student is ill during the
regular oral exam, he/she will be able to re-use the project at the
make-up exam. If a student is ill during the writing of the project
and did not contribute to the project, the make-up exam can be
written individually or in groups (provided that other students are
taking the make-up/re-exam). If the student did not pass the
regular exam or did not show up at the oral exam, he/she must make
a new revised project/business plan (confer advice from the
examiner) and hand it in on a new deadline specified by the
secretariat.
|
|
Course content and structure |
This course focuses on the use of applied quantitative methods
for the analysis of health and innovation in health care data.
Topics to be covered include: methods for the analysis of health
data and health care cost data; evaluation of public policies to
promote HCI; cross-country comparison of health care
responsiveness; Examining the impact of education on HCI and the
interaction between HCI and society. Lectures will cover the
research question, methodological approach and its empirical
implementation. Computer-based practical exercises will complement
the lectures to enable participants to gain experience in the
application of the methods.
Throughout the course an emphasis will be placed on the
empirical (microeconometric) methods used in addressing research
questions. These include, the linear regression model, assessing
and correcting for reporting bias in self-reports of health care
quality (responsiveness), policy evaluation techniques including
methods of matching and regression based difference-in-differences,
comparison of approaches to modelling health care cost
data.
|
Description of the teaching methods |
class and Group work |
Feedback during the teaching period |
Feedback will be given at the oral
examination |
Student workload |
class |
20 hours |
lab session |
10 hours |
preparation of sessions |
65 hours |
preparation of lab sessions |
25 hours |
student presentation |
40 hours |
exam preparation and exam |
65 hours |
|
Expected literature |
Mastering ’Metrics: The Path from Cause to Effect
by Joshua D. Angrist (Author), Jörn-Steffen Pischke (Author)
Introduction to Econometrics, 3rd Edition
James H. Stock, Harvard University
Mark W. Watson, Princeton University
|
Last updated on
15-06-2018