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学生对 Icahn School of Medicine at Mount Sinai 提供的 Dynamical Modeling Methods for Systems Biology 的评价和反馈

4.7
220 个评分

课程概述

An introduction to dynamical modeling techniques used in contemporary Systems Biology research. We take a case-based approach to teach contemporary mathematical modeling techniques. The course is appropriate for advanced undergraduates and beginning graduate students. Lectures provide biological background and describe the development of both classical mathematical models and more recent representations of biological processes. The course will be useful for students who plan to use experimental techniques as their approach in the laboratory and employ computational modeling as a tool to draw deeper understanding of experiments. The course should also be valuable as an introductory overview for students planning to conduct original research in modeling biological systems. This course focuses on dynamical modeling techniques used in Systems Biology research. These techniques are based on biological mechanisms, and simulations with these models generate predictions that can subsequently be tested experimentally. These testable predictions frequently provide novel insight into biological processes. The approaches taught here can be grouped into the following categories: 1) ordinary differential equation-based models, 2) partial differential equation-based models, and 3) stochastic models....

热门审阅

GS

Nov 24, 2020

Interesting subject, I liked the practical approach. The tests are not easy but I liked the homework style approach. It forces you to understand the subject better than the regular quizzes.

ED

May 28, 2018

New to systems biology and I am really impressed with the clear explanations. Currently, on week 4 but aiming to finish to the end. Thanks to the dude who made it! :) #lifesaver

筛选依据:

26 - Dynamical Modeling Methods for Systems Biology 的 43 个评论(共 43 个)

创建者 Thiago T V

Jan 16, 2016

I liked it a lot!

创建者 Musalula S

Sep 11, 2016

Great course

创建者 廖文杰

Apr 19, 2016

terrific!

创建者 mac g

Jan 17, 2018

great

创建者 Salvador C A

Dec 10, 2015

good

创建者 BHARATI M

Sep 25, 2025

4

创建者 Ricardo S

Jun 30, 2016

T

创建者 Jacob M

Aug 8, 2023

Course is available at all times, but the link to MATLAB is not.

The material is excellent and the lessons are enjoyable. It could benefit from a little more background in mathematics before diving into the code itself, and a little more focus on diagrams in each problem would help systematize how to apply these principles.

创建者 Christopher N

Sep 12, 2023

I really enjoyed the course. It was exactly what I was looking for. However, project files (*.sboj) were missing from downloads. I would like to have used Simbiology. Luckily, MATLAB files (*.m) were still available. Otherwise, I would have given the course 5 stars.

创建者 MARCELA M M

Sep 27, 2020

Nice course thank you! I consider the first assignment is confusing and the descriptions of assignment in general could be improved. Also, I think the predefined ODE solvers must be used from the begining instead of manually implement Euler's method. THANKS!

创建者 Samuel B

Feb 12, 2021

Very good course. The first 5 weeks are incredible, the last couple weeks are decidedly of a lower quality with no assignments to accompany the material.

创建者 Stefano M

Feb 16, 2017

Very interesting course: I'm a Computer Engineer and I found very interesting the lessons about bistability and about stochastic modelling.

创建者 Bill T

Dec 17, 2015

Very informative course with good exercises. Would recommend having PDE example code, as well.

创建者 Meghana D

Jul 3, 2021

The assignments seemed very tough. Other than that this course was very knowledgeable.

创建者 Hazem H

Feb 6, 2016

it's quite very interesting

创建者 Akhil K

May 27, 2019

Good

创建者 Judhajit S

Jul 21, 2023

Good course but not able to apply learnings from this course as Capstone Project is still not available

创建者 Jonathan G

Mar 30, 2016

a little too much for my taste, but I learned a lot cellular biology.