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Fundamentals of Machine Learning for Healthcare

Course Cover

5

(8)

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Course Features

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Duration

12 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Beginner

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Teaching Type

Self Paced

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Video Content

12 hours

Course Description

Machine learning and artificial intelligence have the potential for healthcare to be revolutionized and offer new opportunities. We won't be able fully realize the potential of these technologies if we don't have a basic understanding of machine learning and healthcare concepts.

This course will introduce you to the fundamental concepts and principles of machine learning in medicine, and healthcare. This course will cover machine learning methods, best practices in healthcare, metrics, best practice, design, build and evaluation of machine-learning applications in healthcare.

This course is for those with no engineering background in healthcare, drug policy development or data science. It will give them the skills to critically evaluate and use these technologies.

Geoffrey Angus co-authored

Mars Huang, Contributing editor
Jin Long
Shannon Crawford
Oge Marques

Stanford University School of Medicine has been accredited by the Accreditation Council for Continuing Medical Education (ACCME). It is now able to offer continuing medical education to doctors. For important information about 1) Date of initial release and Termination/expiration dates; 2) Accreditation Statements and Credit Designation statements; and 3) Disclosure of financial relations for all persons who are responsible for activity content.

Course Overview

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Instructor-Moderated Discussions

Skills You Will Gain

What You Will Learn

Define important relationships between the fields of machine learning, biostatistics, and traditional computer programming

Learn about advanced neural network architectures for tasks ranging from text classification to object detection and segmentation

Learn important approaches for leveraging data to train, validate, and test machine learning models

Understand how dynamic medical practice and discontinuous timelines impact clinical machine learning application development and deployment

Course Instructors

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Matthew Lungren

Associate Professor

Dr. Lungren is the Co-Director of the Stanford Center for Artificial Intelligence in Medicine and Imaging and Medical School Faculty in the Department of Radiology at Stanford University Medical Cent...
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Serena Yeung

Assistant Professor

Serena Yeung is an Assistant Professor of Biomedical Data Science and, by courtesy, of Computer Science and of Electrical Engineering at Stanford University. She is also affiliated with Stanford’s Cl...

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