MGAM021c Analysis and Data Management for Healthcare Specialisation - practice

Faculty of Medicine
Spring 2012
Extent and Intensity
0/1. 1 credit(s). Type of Completion: z (credit).
Teacher(s)
RNDr. Ondřej Májek, Ph.D. (seminar tutor)
RNDr. Jiří Jarkovský, Ph.D. (seminar tutor)
RNDr. Michaela Cvanová, Ph.D. (seminar tutor)
Mgr. Alena Zoľáková (seminar tutor)
Michaela Gregorovičová (assistant)
Guaranteed by
prof. RNDr. Ladislav Dušek, Ph.D.
Institute of Biostatistics and Analyses – Other Departments for Educational and Scientific Research Activities – Faculty of Medicine
Supplier department: Institute of Biostatistics and Analyses – Other Departments for Educational and Scientific Research Activities – Faculty of Medicine
Timetable of Seminar Groups
MGAM021c/GE: Tue 12:00–14:30 F01B1/709
MGAM021c/ZDRL: Thu 14:00–16:30 F01B1/709
Prerequisites
Biostatistics - any theoretical course
Course Enrolment Limitations
The course is also offered to the students of the fields other than those the course is directly associated with.
fields of study / plans the course is directly associated with
Course objectives
In the end of the course student should be able to apply basic principles of biostatistical analysis and utilize them in his/her research work: Using MS Excel for data preprocessing Using Statistica for Windows for data analysis Application of charts in MS Office and Statistica software for data visualisation Application of descriptive statistics in Statistica for Windows Application of statistical tests in Statistica for Windows
Syllabus
  • A. Data analysis
  • 1. Basic principles of statistical analysis. Probability in presentation of analysis results. Basics of experimental design and hypothesis testing.; Nominal, ordinal and continuous data in clinical research and their visualization. Special characteristics of clinical data and their subsequences for analysis. Description of data, descriptive statistic, distribution. Calibration, prognosis, models.;
  • 2. Statistical distributions and their usage as model distribution (normal, log-normal, binomial, Poisson, Student, F, Chi square); Confidence intervals, estimation of statistical parameters and their presentation. Estimation of arithmetic mean, geometric mean, median and variability. Statistical summary of discrete and continuous data.
  • 3. Univariate analysis of continuous data. One-sample and two-sample test. T-test for dependent and independent data. Basics of analysis of variance one way and multi-way ANOVA, post-hoc tests. Non parametric tests (Mann-Whitney test, Wald-Worowitz test, Kolmogorov-Smirnov two-sample test, Kruskal-Wallis test). Visualization and presentation of results of statistical tests.; * Univariate analysis of discrete data. One-sample and two-sample test. Presentation and estimation of percentages data. Binomial test, Fisher exact test, goodness of fit test, analysis of frequency tables.
  • 4. Basics of correlation and regression analysis. Parametric and non-parametric correlation. Linear regression. Application and visualization of correlation and regression. Basic principles of polynomial and non-linear regression.; Basic principles of multivariate and logistic regression. Multivariate and logistic regression as predictive tools for clinical data. Quality of models and their problems. Multivariate regression in prediction of clinically important parameters example. Logistic regression individualized prediction of patients. Presentation of predictive models.
  • 5. Survival analysis. Probability of survival. Kaplan-Meier survival analysis and parameters estimates /median survival times.../. Range of approaches for comparison of two or more survival curves /Log-rank test, hazard ratio, log rank for trends, confidence intervals for survival probability/. "Cohort life tables" and their analysis of survival. Modeling of survival, Cox regression. Examples and application. Design of studies focused on survival analysis quantitative aspects of experimental design, samples size estimation. Survival analysis for stratified clinical trials. EORTC standards for experimental design of survival analysis. Internet and survival analysis: consultation on trials aimed on survival analysis, software for survival analysis. Nomograms for design of survival analysis trials.
  • 6. Multivariate analysis of clinical data; introduction into modern method for analysis of huge amounts of data. Principles of multivariate methods and their application for clinical data analysis. Multivariate and univariate data analysis mutual collaboration or discrepancy? Multivariate data exploration, available tests for multivariate distribution. Multivariate similarity/distance of objects or variables review of important metrics. Dynamic regression models. Neural networks as a possible modeling technique. Data mining and automated analysis of data. Experiments optimizing; application of multivariate methods in sampling design.
  • B. Information technologies
  • 7. Network - data transfer, hardware, software; Network - Internet. Types of nets, IP - network. Internet; How to connect to the Internet
  • 8. Client x server architecture, Clients, Servers, Services; Network services. FTP - file transfer, Sharing disks and printers, E-mail, services SMTP, POP3, IMAP. Other services, Remote desktop, telnet, talk, Skype;
  • 9. Authorization, Authentication, Login, Password, Cryprography; Security, reducing risk of networks transfer and communication
  • C. Management of clinical trial
  • 10. Terminology, legal topics
  • 11. Data analysis in clinical trial, design of experiment, power analysis
  • 12. Randomisation and monitoring of clinical trials
Literature
  • ALTMAN, Douglas G. Practical statistics for medical research. 1st ed. Boca Raton: Chapmann & Hall/CRC, 1991, xii, 611. ISBN 0412276305. info
  • HAVRÁNEK, Tomáš. Statistika pro biologické a lékařské vědy. 1. vyd. Praha: Academia, 1993, 476 s. ISBN 8020000801. info
  • MELOUN, Milan and Jiří MILITKÝ. Statistické zpracování experimentálních dat. [1. vyd.]. Praha: Plus, 1994, 839 s. ISBN 80-85297-56-6. info
  • ZAR, Jerrold H. Biostatistical analysis. 4th ed. Upper Saddle River, N.J.: Prentice Hall, 1999, [941] s. ISBN 013081542X. info
  • CHOW, Shein-Chung and Jen-Pei LIU. Design and analysis of clinical trials : concepts and methodologies. 2nd ed. Hoboken, N.J.: Wiley-Interscience, 2004, xiii, 729. ISBN 0471249858. info
  • MCFADDEN, Eleanor. Management of data in clinical trials. New York: John Wiley & Sons, 1998, xi, 210. ISBN 047130316X. info
  • MEINERT, Curtis L. Clinical trials : design, conduct, and analysis. Edited by Susan Tonascia. New York: Oxford University Press, 1986, xxvi, 469. ISBN 0195035682. info
  • Norleans M. X. Statistical methods for clinical trials. Marcel Dekker. 2001. 257 pp.
  • Předpis 472/2000 Sb., Vyhláška Ministerstva zdravotnictví a Ministerstva zemědělství, kterou se stanoví správná klinická praxe a bližší podmínky klinického hodnocení léčiv
  • McFaden, Eleanor. Managenent of data in clinical trials. 1st ed. New York: John Willey & Sons, 1998. xi, 210s, ISBN 0-471-30316-X
  • Předpis 101/2000 Sb., Zákon o ochraně osobních údajů a o změně některých zákonů
  • POCOCK, Stuart J. Clinical trials : a practical approach. Chichester: John Wiley & Sons, 1999, xii, 266. ISBN 0471901555. info
Teaching methods
Practical training using computers
Assessment methods
Individual projects on correct application of statistical methods on example data
Language of instruction
Czech
Further Comments
Study Materials
The course is also listed under the following terms Spring 2007, Spring 2008, Spring 2009, Spring 2010, Spring 2011, Spring 2013.
  • Enrolment Statistics (Spring 2012, recent)
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