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Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
ADVANCED STATISTICAL METHODS-Spring Semester3+038
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseTurkish
Course LevelThird Cycle (Doctorate Degree)
Course TypeElective
Course CoordinatorAssist.Prof. Pakize YİĞİT
Name of Lecturer(s)Assist.Prof. Pakize YİĞİT
Assistant(s)
AimTo show advanced statistical methods that can be used in scientific research.
Course ContentThis course contains; 1. Introduction to multivariate statistical methods,2. r*c table chi-square tests,3. Multiple regression analysis methods,4. Logistic regression analysis 1,5. Logistic regression analysis 2,6. Probit analysis,7. ROC analysis MIDTERM,8. One-way repeated measures ANOVA,9. Two-way repeated measures ANOVA,10. One-way ANOVA for independent groups,11. Two-way ANOVA for independent groups,12. MANOVA,,13. Survival analysis methods 1,14. Survival analysis methods 2 FINAL EXAM.
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Summarize the multivariate statistical methods.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
2. Apply multivariate statistical methods on a computer.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
3. Interpret the results of statistics.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
Teaching Methods:10: Discussion Method, 12: Problem Solving Method, 13: Case Study Method, 14: Self Study Method, 16: Question - Answer Technique, 19: Brainstorming Technique, 4: Inquiry-Based Learning, 6: Experiential Learning, 8: Flipped Classroom Learning, 9: Lecture Method
Assessment Methods:E: Homework

Course Outline

OrderSubjectsPreliminary Work
11. Introduction to multivariate statistical methodsPreparation for the lecture notes previously issued.
22. r*c table chi-square testsPreparation for the lecture notes previously issued.
33. Multiple regression analysis methodsPreparation for the lecture notes previously issued.
44. Logistic regression analysis 1Preparation for the lecture notes previously issued.
55. Logistic regression analysis 2Preparation for the lecture notes previously issued.
66. Probit analysisPreparation for the lecture notes previously issued.
77. ROC analysis MIDTERMPreparation for the lecture notes previously issued.
88. One-way repeated measures ANOVAPreparation for the lecture notes previously issued.
99. Two-way repeated measures ANOVAPreparation for the lecture notes previously issued.
1010. One-way ANOVA for independent groupsPreparation for the lecture notes previously issued.
1111. Two-way ANOVA for independent groupsPreparation for the lecture notes previously issued.
1212. MANOVA,Preparation for the lecture notes previously issued.
1313. Survival analysis methods 1Preparation for the lecture notes previously issued.
1414. Survival analysis methods 2 FINAL EXAMPreparation for the lecture notes previously issued.
Resources
Lecture notes wil be given to the students.
Advanced Statistics, Larry Stephens, McGraw Hill, 2004. Bilgisayar istatistik ve tıp Dr. Murat Hayran, Dr. Oktay Özdemir. Bilimsel araştırmalarda biyoistatistik prensip ve yöntemlerinin bilinçli kullanımı Kadir Sümbüloğlu, Vildan Sümbüloğlu. Paket programlar ile istatistiksel veri analizi Kazım Özdamar 1999-1. Paket programlar ile istatistiksel veri analizi Kazım Özdamar 1999-2. Sağlık alanına özel istatistiksel yöntemler Kadir Sümbüloğlu. Sağlık Araştırmaları İçin Temel İstatistik, Murat Hayran, Mutlu Hayran. Tıbbi araştırmalarda istatistiksel analiz teknikleri “SPSS uygulamaları” Aziz Akgül.

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
Has comprehensive knowledge pertaining basic and advanced oral and maxillofacial surgery. Is aware of basic scientific problems and research topics. Can produce new hypothesis accordingly. Is capable of finding literature and following advancements in the scientific field.
2
3
4
5
6
7

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 50
Rate of Final Exam to Success 50
Total 100
ECTS / Workload Table
ActivitiesNumber ofDuration(Hour)Total Workload(Hour)
Course Hours000
Guided Problem Solving000
Resolution of Homework Problems and Submission as a Report000
Term Project000
Presentation of Project / Seminar000
Quiz000
Midterm Exam000
General Exam000
Performance Task, Maintenance Plan000
Total Workload(Hour)0
Dersin AKTS Kredisi = Toplam İş Yükü (Saat)/30*=(0/30)0
ECTS of the course: 30 hours of work is counted as 1 ECTS credit.

Detail Informations of the Course

Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
ADVANCED STATISTICAL METHODS-Spring Semester3+038
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseTurkish
Course LevelThird Cycle (Doctorate Degree)
Course TypeElective
Course CoordinatorAssist.Prof. Pakize YİĞİT
Name of Lecturer(s)Assist.Prof. Pakize YİĞİT
Assistant(s)
AimTo show advanced statistical methods that can be used in scientific research.
Course ContentThis course contains; 1. Introduction to multivariate statistical methods,2. r*c table chi-square tests,3. Multiple regression analysis methods,4. Logistic regression analysis 1,5. Logistic regression analysis 2,6. Probit analysis,7. ROC analysis MIDTERM,8. One-way repeated measures ANOVA,9. Two-way repeated measures ANOVA,10. One-way ANOVA for independent groups,11. Two-way ANOVA for independent groups,12. MANOVA,,13. Survival analysis methods 1,14. Survival analysis methods 2 FINAL EXAM.
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Summarize the multivariate statistical methods.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
2. Apply multivariate statistical methods on a computer.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
3. Interpret the results of statistics.10, 12, 13, 14, 16, 19, 4, 6, 8, 9E
Teaching Methods:10: Discussion Method, 12: Problem Solving Method, 13: Case Study Method, 14: Self Study Method, 16: Question - Answer Technique, 19: Brainstorming Technique, 4: Inquiry-Based Learning, 6: Experiential Learning, 8: Flipped Classroom Learning, 9: Lecture Method
Assessment Methods:E: Homework

Course Outline

OrderSubjectsPreliminary Work
11. Introduction to multivariate statistical methodsPreparation for the lecture notes previously issued.
22. r*c table chi-square testsPreparation for the lecture notes previously issued.
33. Multiple regression analysis methodsPreparation for the lecture notes previously issued.
44. Logistic regression analysis 1Preparation for the lecture notes previously issued.
55. Logistic regression analysis 2Preparation for the lecture notes previously issued.
66. Probit analysisPreparation for the lecture notes previously issued.
77. ROC analysis MIDTERMPreparation for the lecture notes previously issued.
88. One-way repeated measures ANOVAPreparation for the lecture notes previously issued.
99. Two-way repeated measures ANOVAPreparation for the lecture notes previously issued.
1010. One-way ANOVA for independent groupsPreparation for the lecture notes previously issued.
1111. Two-way ANOVA for independent groupsPreparation for the lecture notes previously issued.
1212. MANOVA,Preparation for the lecture notes previously issued.
1313. Survival analysis methods 1Preparation for the lecture notes previously issued.
1414. Survival analysis methods 2 FINAL EXAMPreparation for the lecture notes previously issued.
Resources
Lecture notes wil be given to the students.
Advanced Statistics, Larry Stephens, McGraw Hill, 2004. Bilgisayar istatistik ve tıp Dr. Murat Hayran, Dr. Oktay Özdemir. Bilimsel araştırmalarda biyoistatistik prensip ve yöntemlerinin bilinçli kullanımı Kadir Sümbüloğlu, Vildan Sümbüloğlu. Paket programlar ile istatistiksel veri analizi Kazım Özdamar 1999-1. Paket programlar ile istatistiksel veri analizi Kazım Özdamar 1999-2. Sağlık alanına özel istatistiksel yöntemler Kadir Sümbüloğlu. Sağlık Araştırmaları İçin Temel İstatistik, Murat Hayran, Mutlu Hayran. Tıbbi araştırmalarda istatistiksel analiz teknikleri “SPSS uygulamaları” Aziz Akgül.

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
Has comprehensive knowledge pertaining basic and advanced oral and maxillofacial surgery. Is aware of basic scientific problems and research topics. Can produce new hypothesis accordingly. Is capable of finding literature and following advancements in the scientific field.
2
3
4
5
6
7

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 50
Rate of Final Exam to Success 50
Total 100

Numerical Data

Student Success

Ekleme Tarihi: 27/11/2023 - 03:01Son Güncelleme Tarihi: 27/11/2023 - 03:01