Course Identification

Introduction to statistics for life sciences
20253132

Lecturers and Teaching Assistants

Dr. Moshe Glickman
Dana Yacobi, Adva Kaully, Itay Talpir

Course Schedule and Location

2025
Second Semester
Monday, 09:15 - 12:00, Wolfson Auditorium

Tutorials
Sunday, 12:15 - 14:00, Benoziyo, room 290c
Monday, 15:15 - 17:00, WSoS, Rm A
Wednesday, 09:15 - 11:00, WSoS, Rm A
Wednesday, 13:15 - 15:00, WSoS, Rm A
Thursday, 14:15 - 16:00, WSoS, Rm C
Thursday, 10:15 - 12:00,
24/03/2025
30/06/2025

Field of Study, Course Type and Credit Points

Life Sciences: Lecture; Obligatory; 4.00 points

Comments

The lectures from May 5 onwards will be held at Wolfson Auditorium, hours remain the same.
On Monday, June 9 the course will be held at Botnar hall at Belfer building.

Prerequisites

No

Restrictions

150

Language of Instruction

English

Attendance and participation

Expected and Recommended

Grade Type

Numerical (out of 100)

Grade Breakdown (in %)

20%
80%

Evaluation Type

Examination

Scheduled date 1

21/07/2025
Ebner Auditorium,Benoziyo Biochemistry Auditorium 191
0900-1200
The exam will take place at Ebner Auditorium & Benoziyo Biochemistry Auditorium 191

Scheduled date 2

11/08/2025
Benoziyo Biochemistry Auditorium 191
0900-1200
N/A

Estimated Weekly Independent Workload (in hours)

N/A

Syllabus

This course will introduce students to basic and mid-level statistical methodology. The course will familiarize the students with basic statistical concepts (median, mean, variance, etc.) and carry on to more complex statistical tools such as distributions, hypothesis testing, and more. The bulk of the course is intended for covering the most popular statistical tests in use: t-tests, chi-square, ANOVA, regressions, and more. We will discuss both parametric and non-parametric statistical tests. The principal aim of the course is to instill the students with a basic understanding of statistical thought, so they can apply statistical reasoning in new and unfamiliar areas of research.
Topics to be discussed (not necessarily in the below mentioned order):
1. Basic concepts: Measurement scales; Variables; Transformations; Data plotting
2. Central tendencies; Measures of variability
3. The Normal distribution; Sampling distributions
4. Hypothesis Testing; Type I and type II errors
5. One-sample t-test: Power; Confidence Interval
6. Two-sample t-tests (matched and independent samples)
7. Probability, Combinatorics, Bayes' rule
8. The binomial distribution; chi-square test
9. Correlation & Regression
10. Multiple Regression
11. ANOVA
12. Post-hoc comparisons
13. Repeated measures designs
14. Nonparametric tests

Learning Outcomes

Upon successful completion of this course students should be be able to:
1. Execute different basic and medium level prominent statistical tests.
2. Differentiate between statistical needs and their applicable tests.
3. Apply the knowledge gained in this course in new and unfamiliar areas of research.

Reading List

Main Bibliography:
Statistical methods for psychology (8th edition)/ Howell, D. C. (Wadsworth, 2012).
Other Bibliography:
Mathematical Statistics and Data Analysis (3rd edition)/ Rice, J. A. (Duxbury Advanced, 2006).
A Handbook of Numerical and Statistical Techniques, with Examples Mainly from the Life Sciences / Pollard, J. H. (Cambridge University Press, 1977).
http://ebooks.cambridge.org/ebook.jsf?bid=CBO9780511569692

Website

N/A