Deep Learning in Diagnostic Medicine: Current Use Cases and Future Opportunities
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This event was presented live or live-streamed and has not been designated for on-demand presentation.
This Clinical Informatics Grand Rounds event will take place on Wednesday, April 15, 2020 at 4:00 P.M. Attendance for this event will only be available through Zoom.
Activity Information
Needs Statement
Attending physicians, residents, fellows, nurses, graduate students, medical students, analysts and programmers need to be regularly updated on the role of informatics in health care, the current approaches to utilize large sets of data in health care and appropriate measures to draw effective conclusions from this data. The series aims to increase knowledge of the learners in these topic areas, and to develop better means to put data to effective use in order to enhance the quality of health care and outcomes
Educational Objectives
At the conclusion of the session, the participants should be able to:
- Explain the function of Deep Learning models.
- Compare Deep Learning to other methods of data modeling, including particular strengths and weaknesses.
- Illustrate specific examples where Deep Learning provides unique value to patient diagnosis.
- Summarize current opportunities and open problems for the future of Deep Learning in medical diagnosis
Target Audience
Professional Categories
- Physicians
- Medical Students
- Fellows
- Residents
- Nurses
- Other Health Professionals
Specialties
- Allergy and Immunology
- Anesthesiology
- Colon and Rectal Surgery
- Dermatology
- Emergency Medicine
- Family and Community Medicine
- Internal Medicine
- Medical Genetics and Genomics
- Neurosurgery
- Nuclear Medicine
- Obstetrics and Gynecology
- Ophthalmology
- Orthopedics
- Otolaryngology - Head and Neck Surgery
- Pathology
- Pediatrics
- Physical Medicine and Rehabilitation
- Plastic Surgery
- Psychiatry
- Public Health and Preventive Medicine
- Radiology
- Surgery
- Thoracic Surgery
- Urology
Interest Groups
- Hospital Medicine
- Primary Care
Accreditation/Credit Designation
Baylor College of Medicine is accredited by the Accreditation Council for Continuing Medical Education (ACCME) to provide continuing medical education for physicians.
Baylor College of Medicine designates this enduring material activity for a maximum of 1.0 AMA PRA Category 1 Credit(s)™. Physicians should claim only the credit commensurate with the extent of their participation in the activity.
Activity Director
Disclosure Policy
Baylor College of Medicine (BCM) is accredited by the Accreditation Council for Continuing Medical Education (ACCME) to provide continuing medical education (CME) for physicians. BCM is committed to sponsoring CE activities that are scientifically based, accurate, current, and objectively presented.
In accordance with the ACCME Standards for Commercial Support, BCM has implemented a mechanism requiring everyone in a position to control the content of an educational activity (i.e., directors, planning committee members, faculty) to disclose any relevant financial relationships with commercial interests (drug/device companies) and manage/resolve any conflicts of interest prior to the activity. Individuals must disclose to participants the existence or non-existence of financial relationships at the time of the activity or within 24 months prior.
In addition, BCM has requested activity faculty/presenters to disclose to participants any unlabeled use or investigational use of pharmaceutical/device products; to use scientific or generic names (not trade names) in referring to products; and, if necessary to use a trade name, to use the names of similar products or those within a class. Faculty/presenters have also been requested to adhere to the ACCME's validation of clinical content statements.
BCM does not view the existence of financial relationships with commercial interests as implying bias or decreasing the value of a presentation. It is up to participants to determine whether the relationships influence the activity faculty with regard to exposition or conclusions. If at any time during this activity you feel that there has been commercial/promotional bias, notify the Activity Director or Activity Coordinator. Please answer the questions about balance and objectivity in the activity evaluation candidly.
All of the relevant financial relationships listed for these individuals have been mitigated.
Disclosures
The following individual(s) has/have reported financial or other relationship(s) with commercial entities whose products/services may relate to the educational content of this activity:
Presenter
-
Peter McCaffrey, M.D.
Assistant Professor
University of Texas Medical Branch
Disclosure:
- Consultancy: Luma Therapeutics
- Ownership Interests (stock, stock options, excluding diversified mutual funds): Vast Life Sciences (DBA VastBiome)
Activity Director
Planning Committee Members
-
Juliana J. Brixey, Ph.D., M.P.H., R.N.
Associate Professor
UTHealth School of Biomedical Informatics
Disclosure:
- Intellectual Property: McGraw Hill
-
Scott Wesley Long, M.D., Ph.D.
Assistant Professor
Houston Methodist
Disclosure:
- Consultancy: Biofire Diagnostics, LLC