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Avis et commentaires pour d'étudiants pour The Data Science of Health Informatics par Université Johns-Hopkins

151 évaluations
30 avis

À propos du cours

Health data are notable for how many types there are, how complex they are, and how serious it is to get them straight. These data are used for treatment of the patient from whom they derive, but also for other uses. Examples of such secondary use of health data include population health (e.g., who requires more attention), research (e.g., which drug is more effective in practice), quality (e.g., is the institution meeting benchmarks), and translational research (e.g., are new technologies being applied appropriately). By the end of this course, students will recognize the different types of health and healthcare data, will articulate a coherent and complete question, will interpret queries designed for secondary use of EHR data, and will interpret the results of those queries....

Meilleurs avis

9 juin 2020

It gave me a very in dept understanding of different DataBases and how they are being used in the modern health care space. I would recommend it to someone who has some experience in health care.

21 mars 2021

Definitely the best course in this specialization. Lots of tangible and good resources for health practitioners to learn how to pull data and function within the U.S. Health Informatics universe.

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26 - 31 sur 31 Avis pour The Data Science of Health Informatics

par Stephen C D

3 déc. 2021

par Natschja R

18 août 2020

There were some inconsistencies in the course material. For example, the quiz in week 3 were on topics touched in week 4.

par Ravil B

17 juin 2020

It's a good course overall. However, more practical assignments can be offered to develop marketable skills.

par Madona H

20 juil. 2021

very interesting course.

the assignment was difficult

par Joanna U

11 juin 2020

its really great learning this way

par Chris I

28 août 2020

This module is very insightful.