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SYNOPSIS:

The well-known phenomenon of "information explosion" has impacted virtually all areas of human enterprise, and healthcare has become no exception. While one might quibble whether more information is actually being created, there is no disagreement that vastly more information is being electronically captured and stored. Latent within the proliferation of such machine readable archives of information lays previously impractical metrics, capabilities for linkages and association, and ultimately new knowledge. The over-used moniker of "big data" is applied to the rise of vast, potentially-federated data sources, analytic methods for their interpretation, and emergent findings. Despite this non-precision, most observers agree that there is something new and different emergent in the opportunistic mining of disparate data on an unprecedented scale.

Examples of impressive inferences from big data abound in finance, marketing, education, social sciences, and economics. More focused, "big science" opportunities are self-evident in astronomy, physics, and arguably the discovery of the Higgs Boson (which really was inferred from perturbations observed across Exabytes of experimental particle-accelerator data). In biology and medicine the sweet spot has historically been in the human genome, where genotype-phenotype associations emerge from "genome-wide association studies" done at massive scale — more so in the present era of whole-genome sequencing.

The promise of best-evidence discovery, comparative effectiveness research, new outcomes analyses, adverse event discovery, and improved clinical care in general that might emerge from big-data methods applied to large, federated, clinical data repositories is intriguing. There is "gold in them hills," and the potential benefits of well-conducted data mining must not be lightly dismissed.

However, caution must dominate an otherwise unfettered analyses of clinical information, as the consequences of skewed, biased, spurious, or otherwise "wrong" answers can have serious adverse impact. While most of us are quite content to have a target answer appear "on the page" of a Google search result, somehow having the right answer "on the list" but not chosen for healthcare interventions may be interpreted as malpractice in some litigious countries — not to mention likely sub-optimal outcomes for a patient. Clinical decision support resources may recommend a spectrum of options to a clinician — who presumably has the responsibility of synthesizing such advice and selecting the optimal path, though few would argue that the amount of information and the complexity of their interactions have long ago exceeded the unaided human capacity for cognition, reliable processing, or well-balanced interpretation.

The importance of comparable and consistently represented clinical information, either at entry or through normalization to a canonical form, must remain as a necessary step before big-data methods can be meaningfully or safely applied to clinical data repositories.

   

need for decision support systems in radiology is growing given the dramatic increase in imaging utilization, intensity and workload. Dr. Summers' laboratory at NIH focuses on the application of advanced image processing and machine learning techniques to provide decision support for radiology image interpretation. As a body radiologist and CT subspecialist, Dr. Summers has chosen to focus his research on the development of decision support for thoracoabdominal CT image interpretation.In this talk, Dr. Summers will discuss his laboratory's approach to full automation of body CT interpretation. In the last three years, his laboratory has made substantial progress towards this goal. Topics will include fully-automated detection and segmentation of major body organs and their lesions, including spine and spine lesions and lymphadenopathy. Validation results will be presented. Dr. Summers will describe potential unrecognized benefits of fully-automated quantitation on routine body CT scans without the need for additional radiation exposure. He will also discuss the impact of advances in deep learning to radiology image analysis.Session details...

BIO:

Ronald Christopher Chute, M.D. Summers received a B.A. degree in Physics and M.D. and Ph.D. degrees in Medicine/Anatomy and Cell Biology from the University of Pennsylvania. Dr. Summers completed a medical internship at the Presbyterian-University of Pennsylvania Hospital in Philadelphia, Pennsylvania, a radiology residency at the University of Michigan in Ann Arbor, Michigan, and an MRI fellowship at Duke University in Durham, North Carolina. In 1994, he joined the Diagnostic Radiology Department at the NIH Clinical Center in Bethesda, Maryland, where he is now a tenured Senior Investigator and Staff Radiologist. Dr. Summers is currently Chief of the Clinical Image Processing Service and directs the Imaging Biomarkers and Computer-Aided Diagnosis (CAD) Laboratory. In 2000, he received the Presidential Early Career Award for Scientists and Engineers, presented by Dr. Neal Lane, President Bill Clinton’s science advisor. In 2012, he received the NIH Director’s Award, presented by NIH Director Dr. Francis Collins. His research interests include virtual colonoscopy, CAD, multi-organ multi-atlas registration and development of large radiologic image databases. Dr. Summers' clinical areas of specialty are thoracic and gastrointestinal radiology and body cross-sectional imaging.

SUMMARY:

Topic: Progress in Fully-Automated Body CT Image Interpretation — 2015 Update

Speaker: Ronald M. Summers, M.D., Ph.D., Senior Investigator, NIH Clinical Image Processing Service, Imaging Biomarkers and Computer-Aided Diagnosis Laboratory

received his undergraduate and medical training at Brown University, internal medicine residency at Dartmouth College, and doctoral training in Epidemiology at Harvard University. He is Board Certified in Internal Medicine and Clinical Informatics, and is a Fellow of the American College of Physicians, the American College of Epidemiology, and the American College of Medical Informatics. He is presently the Bloomberg Distinguished Professor of Health Informatics at Johns Hopkins University, as well as professor of Medicine, Public Health, and Nursing. Additionally, he is Chief Health Research Information Officer for Johns Hopkins Medicine. He also chairs the World Health Organization (WHO) ICD-11 Revision.

Dr. Chute became founding Chair of Biomedical Informatics at Mayo in 1988, and retired as Professor of Biomedical Informatics and Section Head in 2014. He was PI on Mayo’s CTSA Informatics core, the eMERGE cooperative agreement on genotype to phenotype association, the Pharmacogenomics Research Network Ontology Resource, the LexGrid projects, and co-PI on the National Center for Biomedical Ontology. Recent grants as PI include the HHS/Office of the National Coordinator (ONC) SHARP (Strategic Health IT Advanced Research Projects) on Secondary EHR Data Use and the ONC Beacon Community (Co-PI). Dr. Chute chaired Mayo’s Data Governance Committee and served on Mayo’s enterprise IT Oversight Committee, and CTSA Executive Committee. Recently held external positions include Chair, ISO Health Informatics Technical Committee (ISO TC215), service as an index member on the Health Information Technology Standards Committee for the Office of the National Coordinator in the US DHHS, a member of the HL7 Advisory Council, and the initial Chair of the Biomedical Computing and Health Informatics study section at NIH.  

SUMMARY:

Topic: Big Data Meets Healthcare: The Case for Comparability and Consistency

Speaker: Christopher Chute, M.D.

Date: Wednesday, May 27Date: Wednesday, April 29, 2015

Time: 11 AM – 12 PM ET

You are invited to listen to Dr. SummersChute's presentation in Room 2W910-912 in the NCI Shady Grove Building on Medical Center Drive or via WebEx.

Presentation: A screen cast of the presentation will be available for viewing after the event on our Speaker Series Videos page and on the NCI CBIIT Speaker Series YouTube Playlist

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About the NCI CBIIT Speaker Series:

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