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学生对 Stanford University 提供的 Introduction to Clinical Data 的评价和反馈

4.6
461 个评分

课程概述

This course introduces you to a framework for successful and ethical medical data mining. We will explore the variety of clinical data collected during the delivery of healthcare. You will learn to construct analysis-ready datasets and apply computational procedures to answer clinical questions. We will also explore issues of fairness and bias that may arise when we leverage healthcare data to make decisions about patient care. In support of improving patient care, Stanford Medicine is jointly accredited by the Accreditation Council for Continuing Medical Education (ACCME), the Accreditation Council for Pharmacy Education (ACPE), and the American Nurses Credentialing Center (ANCC), to provide continuing education for the healthcare team. Visit the FAQs below for important information regarding 1) Date of the original release and expiration date; 2) Accreditation and Credit Designation statements; 3) Disclosure of financial relationships for every person in control of activity content....

热门审阅

OA

Mar 14, 2021

The course program is very intuitive and challenging. Overall, it is a very good course and I will recommend it to anyone interested in understanding clinical data, in particular for data scientists.

SA

Jan 7, 2023

In High School I wanted to study computer science and Biology together, but there was no option for that career track and here I am thirty years later, full filling that dream through Coursera.

筛选依据:

1 - Introduction to Clinical Data 的 25 个评论(共 77 个)

创建者 Frank C

Nov 15, 2020

Overall, the information in the course was useful. However, the videos in most modules were very short and could have been combined into more logical segments. The assessments were often disconnected from the actual material covered, meaning that questions were asked about topics that had not been discussed. The assessments needs to be reworked to reflect the actual content taught OR the modules need to be more fully developed to cover the content of the assessments.

创建者 Crystal X

Nov 5, 2020

Very clear and well-organized course. I have learned quite a bit about the different types of clinical data, why they are important, and how to transfer them to analytical useable data sets.

创建者 Stephan R

Oct 27, 2020

Good introductory course covering key features of the various data that are gathered or used in health care. No prior knowledge about the topic is required.

创建者 Will B

Feb 20, 2023

The course is well organized and information dense - very efficient and very clearly explained. Highly recommend for a solid overview of clinical data in healthcare.

创建者 Dr. R A A I

Dec 5, 2020

Examples are narrow and give the appearance of snippets rather than instruction. Course not well aligned,

创建者 Budianto T B

Jan 22, 2021

Main lecturer was difficult to understand -- I needed to spend time going back over and over on transcript of lecture and change the sentence structure on my notes to be able to comprehend. It was a rather disheartening experience

创建者 David R V

Mar 27, 2021

There was some interesting information in this course but it was too basic and stayed too basic. Really, if you added up all the 1 and 2 minute videos for any given week, you wouldn't even get a single good lecture out of it.

创建者 Yolanda T

Aug 8, 2022

Videos are too short, some are just seconds long. The videos were not informative enough. There is one presenter that speaks so fast that you can't understand what he is saying. I would have liked more practice examples.

创建者 Nikki J

Nov 20, 2020

It would be helpful to be able to see all items that need to be completed. I took the final test and it says I've only completed 2 of 5 courses.

创建者 Kushal A S

Oct 17, 2020

Nicely Framed and Executed in a simple language so anyone can catch up earliest.

创建者 Tony C

Aug 6, 2024

Really dislike that you do not show the correct answer and explain why an answer is incorrect.

创建者 Gnana S R

Nov 22, 2024

Module 7 was just theory. Better intuitive examples can be given in all the modules.

创建者 omar j

May 16, 2024

I felt it is a bit offsetting and boring, exams and quizzes are quite difficult, It can be better. Thank you!

创建者 Sha N s

Mar 18, 2025

where is my certificate????????

创建者 Matthew S R

Nov 22, 2024

Questions are debatable.

创建者 Rozarina

Aug 28, 2023

Great introduction and overview of how medical ethics, medical data, clinical trials, and other non-standard data can play into the formation of ML workflow and pipeline towards generating algorithms that can give health insights, and feed into improving patient care. Approaches to forming appropriate research questions related to types analysis and patient data is valuable for those who are migrating into Health AI from other fields.

创建者 Marek Ś

Apr 7, 2024

Solid knowledge about how to work with clinical data, covering all important differences as compared to typical data science tasks. For me the most useful concepts were: dealing with unstructured data (esp. clinical text), knowledge graphs and electronic phenotyping.

创建者 Olabode “ A

Mar 15, 2021

The course program is very intuitive and challenging. Overall, it is a very good course and I will recommend it to anyone interested in understanding clinical data, in particular for data scientists.

创建者 Sameer i A

Jan 8, 2023

In High School I wanted to study computer science and Biology together, but there was no option for that career track and here I am thirty years later, full filling that dream through Coursera.

创建者 Chalita

Jul 2, 2021

I like this course because duration that instrutors teach it isn't too lone it easy to understand. And you can gain more your skills.

创建者 FSJ W

Dec 28, 2022

Excellent intro with the right amount of information to provide a good overview of the subject without confusing

创建者 Elba A

Jan 1, 2025

Amazing! Outstanding! Gives much more insight even than courses released for engineers and data scientists.

创建者 zoi k

Nov 15, 2023

really interesting, especially when data questions and types of data and patients timeline where explained