Artificial intelligence (AI) and machine learning (ML) have the potential to increase diagnostic accuracy, decrease diagnostic errors, and improve patient outcomes. The Data Augmented, Technology Assisted Medical Decision Making (DATA-MD) course will teach you how to use AI to augment your diagnostic decision-making. The National Academy of Medicine (NAM) recommends ensuring that clinicians can effectively use technology - including AI - to improve the diagnostic process. To use these technologies effectively in your clinical practice, you will need to determine when use of AI is appropriate, interpret the outputs of AI, read medical literature about AI, and explain to patients the role that AI plays in their care. In this course, you’ll explore the ethical considerations and potential biases when making medical decisions informed by AI/ML-based technologies. DATA-MD is a one of a kind curriculum designed to provide an introduction to the use of AI in the diagnostic process.
This course was created with the needs of medical students, residents, fellows, practicing physicians, advanced practice providers, and registered nurses in mind. Others, like educators, computer programmers, and data scientists, may also find value in the course.
Continuing Medical Education Information:
This activity is released for CME credit on 07/30/2024 and expires 06/31/2027.
The University of Michigan Medical School is accredited by the Accreditation Council for Continuing Medical Education (ACCME) to provide continuing medical education for physicians.
The University of Michigan Medical School designates this enduring material for a maximum of 3.5 AMA PRA Category 1 Credit(s)™. Physicians should claim only the credit commensurate with the extent of their participation in the activity.
Dr. Cornelius James and Jessica Virzi, planner and co-planner for this educational activity, have no relevant financial relationship(s) with ineligible companies to disclose.
Maggie Makar, Benjamin Li, and Nicholson Price, presenters of this educational activity, have no relevant financial relationship(s) with ineligible companies to disclose. Karandeep Singh, presenter for this educational activity, was a consultant for Flatiron Health. The relevant financial relationship listed for this individual has been mitigated. Cheri Breadon and Jessica Virzi are the coordinators for this activity.
After this activity, participants will be able to
-Use AI to augment your diagnostic clinical decision-making
-Describe the strengths and limitations of AI/ML-based technology in the diagnostic process
-Interpret statistical measures frequently used to evaluate the performance of ML models
-Critically appraise studies that include AI/ML and determine the applicability of study results in clinical practice
If you would like to earn CME credit for participating in this course, please review the information, including expected results, presenters, their disclosures, and CME credit at this website prior to beginning the activity: https://umich.cloud-cme.com/course/courseoverview?P=0&EID=61826
In week 1, you will be introduced to artificial intelligence (AI) and machine learning (ML) and the vocabulary necessary to effectively communicate with relevant stakeholders. You will learn about some of the applications of AI/ML in healthcare and the challenges associated with using these technologies in healthcare.
Das ist alles enthalten
17 Videos6 Lektüren5 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
17 Videos•Insgesamt 71 Minuten
Welcome to the Course•3 Minuten
Welcome to Module 1•1 Minute
⭐ Meet A.I.L.A.•2 Minuten
What Is Big Data?•6 Minuten
Locating the Data and Datasets•4 Minuten
AI/ML in Health Care•9 Minuten
Meet Professor Maggie Makar•1 Minute
What is ML?•4 Minuten
Methodologies•4 Minuten
Supervised Learning•10 Minuten
Unsupervised Learning•4 Minuten
Reinforcement Learning•5 Minuten
⭐Deep Learning•3 Minuten
⭐How Models Are Developed: Part 1•2 Minuten
⭐How Models Are Developed: Part 2•2 Minuten
⭐How Models Are Developed: Part 3•3 Minuten
Challenges With Model Development•10 Minuten
6 Lektüren•Insgesamt 42 Minuten
Course Syllabus•10 Minuten
Pre-Course Survey•10 Minuten
Meet Your Instructor •1 Minute
Continuing Medical Education (CME) Information•1 Minute
Bibliography•10 Minuten
Module 1 Lecture Notes•10 Minuten
5 Aufgaben•Insgesamt 55 Minuten
Module 1 Graded Assignment•20 Minuten
Knowledge Check: Big Data•5 Minuten
Knowledge Check: AI/ML in Health Care•5 Minuten
Knowledge Check: Methodologies •10 Minuten
Knowledge Check: Model Development•15 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
What do you find most exciting using AI/ML in health care? •10 Minuten
Foundational Biostatistics and Epidemiology in AI/ML for Health Care Professionals
Modul 2•3 Stunden abzuschließen
Moduldetails
In Module 2 you will learn the concepts and statistical measures necessary for interpretation of results of diagnostic studies that include ML.
Das ist alles enthalten
15 Videos3 Lektüren5 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
15 Videos•Insgesamt 57 Minuten
Welcome to Module 2•1 Minute
Evidence-Based Medicine (EBM)•3 Minuten
Overlap of EBM, AI, and ML•3 Minuten
The Diagnostic Process•4 Minuten
Clinical Questions•5 Minuten
Correlation vs. Causation•2 Minuten
Hypothesis Testing•3 Minuten
Confidence Intervals•3 Minuten
Frequency Measures•1 Minute
Probability and Bayesian Statistical Analysis•10 Minuten
What are some concerns that you have about using machine learning in clinical practice?•10 Minuten
Using AI/ML to Augment Diagnostic Decisions
Modul 3•3 Stunden abzuschließen
Moduldetails
In Module 3, you will develop the skills necessary to critically evaluate diagnostic studies that include AI/ML. This week emphasizes the skills necessary to efficiently and effectively use AI/ML to augment diagnostic decisions. step.
Das ist alles enthalten
14 Videos3 Lektüren2 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
14 Videos•Insgesamt 81 Minuten
Welcome to Module 3•1 Minute
⭐Clinical Case: Part 1•2 Minuten
The Diagnostic Process•6 Minuten
Critical Appraisal •8 Minuten
Validity of the Results (Part 1)•1 Minute
Validity of the Results (Part 1 Continued)•10 Minuten
Validity of the Results (Part 2)•10 Minuten
Validity of the Results (Part 2 Continued)•9 Minuten
What Are the Results?•9 Minuten
⭐Clinical Case: Part 2•3 Minuten
Do Results Apply? •5 Minuten
Do Results Apply?•7 Minuten
Do Results Apply? (Continued)•3 Minuten
Monitoring Performance•6 Minuten
3 Lektüren•Insgesamt 30 Minuten
Core Reading: Assessment of Accuracy of an Artificial Intelligence Algorithm to Detect Melanoma in Images of Skin Lesions•10 Minuten
Bibliography•10 Minuten
Module 3 Lecture Notes•10 Minuten
2 Aufgaben•Insgesamt 45 Minuten
Module 3 Graded Assignment•30 Minuten
Diabetic Retinopathy Case•15 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
Describe at least two unique features of diagnostic studies that include ML. •10 Minuten
Ethical and Legal Use of AI/ML in the Diagnostic Process
Modul 4•3 Stunden abzuschließen
Moduldetails
In the final Module of this course, you will review the current legal and ethical landscape of AI/ML in medicine, possible social biases that may be perpetuated by AI/ML algorithms, and recommendations for avoiding these.
Das ist alles enthalten
15 Videos4 Lektüren6 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
15 Videos•Insgesamt 75 Minuten
Welcome to Week 4 •1 Minute
Medical Ethics•5 Minuten
Data Availability •3 Minuten
Data Collection and Curation•3 Minuten
Meet Professor Nicholson Price•0 Minuten
Patient Privacy and Data•8 Minuten
⭐Data Ownership•3 Minuten
Goals of Governance Key Stakeholders•11 Minuten
Sources and Dimensions of Algorithmic Bias•11 Minuten
Bias and Performance Over Time•8 Minuten
Clinician Response to Bias•2 Minuten
Transparency•5 Minuten
Who Is Liable When Something Goes Wrong?•8 Minuten
Trust•3 Minuten
Takeaways For Providers•4 Minuten
4 Lektüren•Insgesamt 31 Minuten
Bibliography•10 Minuten
Week 4 Lecture Notes•10 Minuten
Post-course survey•10 Minuten
Claim Your Continuing Medical Education (CME) Credits•1 Minute
6 Aufgaben•Insgesamt 50 Minuten
Module 4 Graded Assignment•20 Minuten
Knowledge Check: Intro to Ethical and Legal Use of AI/ML in the Diagnostic Process•5 Minuten
Knowledge Check: Data Protection•5 Minuten
Knowledge Check: Governance, Why Does It Exist?•5 Minuten
Knowledge Check: Health Care AI & Bias•10 Minuten
Knowledge Check: Transparency•5 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
What factors will influence your trust in AI-based technologies designed for use in health care? •10 Minuten
The mission of the University of Michigan is to serve the people of Michigan and the world through preeminence in creating, communicating, preserving and applying knowledge, art, and academic values, and in developing leaders and citizens who will challenge the present and enrich the future.
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