Postgraduate Course: Credits Awarded to Taught Courses [University of Glasgow] Data Science MED5378 (PUHR11107)
Course Outline
| School | Deanery of Molecular, Genetic and Population Health Sciences | 
College | College of Medicine and Veterinary Medicine | 
 
| Credit level (Normal year taken) | SCQF Level 11 (Postgraduate) | 
 
| Course type | Online Distance Learning | 
Availability | Not available to visiting students | 
 
| SCQF Credits | 20 | 
ECTS Credits | 10 | 
 
 
| Summary | This is a placeholder course, designed to record marks for the University of Glasgow part of the programme, PRPHDISPME1F: Precision Medicine (PhD with Integrated Study) | 
 
| Course description | 
    
    Please see [University of Glasgow] Data Science - Identifying, Combining and Analysing Health Data Sets MED5378
    
    
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Entry Requirements (not applicable to Visiting Students)
| Pre-requisites | 
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Co-requisites |  | 
 
| Prohibited Combinations |  | 
Other requirements |  None | 
 
 
Course Delivery Information
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| Academic year 2024/25, Not available to visiting students (SS1) 
  
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Quota:  None | 
 
| Course Start | 
Flexible | 
 
Timetable  | 
	
Timetable | 
| Learning and Teaching activities (Further Info) | 
 
 Total Hours:
200
(
 Lecture Hours 10,
 Seminar/Tutorial Hours 20,
 Programme Level Learning and Teaching Hours 4,
Directed Learning and Independent Learning Hours
166 )
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| Assessment (Further Info) | 
 
  Written Exam
0 %,
Coursework
100 %,
Practical Exam
0 %
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| Additional Information (Assessment) | 
Students must submit at least 75% by weight of the components (including examinations) of the course's summative assessment. | 
 
| Feedback | 
Not entered | 
 
| No Exam Information | 
 
Learning Outcomes 
    On completion of this course, the student will be able to:
    
        - Critically discuss the key issues of disclosure control and information governance related to the use of administrative health data for research purposes
 - Evaluate the theoretical principles of data linkage methods, including an understanding of available sources and limitations of linked data sets
 - Critically assess possible sources of bias and measurement error in administrative health data
 - Create and interpret quantitative output after data management, data manipulation and transformation of large linked datasets, including linking datasets with different structures
 - Evaluate the research methods needed to conceptualise and derive numerators and denominators typically used in the analysis of health data
 
     
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Additional Information
| Graduate Attributes and Skills | 
Not entered | 
 
| Keywords | Not entered | 
 
 
Contacts 
| Course organiser | Dr Susan Farrington 
Tel: (0131) 332 2471 
Email:  | 
Course secretary | Mrs Maree Hardie 
Tel:  
Email:  | 
   
 
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