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Research > by Group
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Current research projects sorted by sub-group within BHI
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| Faculty lead |
Peter Tarczy-Hornoch |
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| Subarea |
Bioinformatics |
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A research project that is investigating the application in the genetic
domain of data integration systems that can process semi-structured
data. The research focuses on development and representation of a
mediated schema, user interface, query reformulator, and interfaces to
a set of distributed network accessible genomic databases. The research
is being carried out in collaboration with the Department of Computer
Science and Engineering. Funding is via a grant from the National
Library of Medicine and the National Human Genome Research Institute of
the National Institutes of Health.
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| Faculty lead |
John Gennari |
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| Subarea |
Bioinformatics |
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We are interested in modeling knowledge that describes
cell-signaling pathways. Our ultimate goal is to provide tools and
support for biology researchers who need to understand the complexities
of large, tightly connected and interacting cell-signaling pathways.
One example of such a support tool is Chalkboard, a system for
reasoning over pathway knowledge, and for exploring downstream
implications of pathway linkages.
As a domain area, we focus on the pathways that may be
involved in the pathogenesis of Alzheimer's disease (AD). As an
example of interacting pathways, we have found some interesting
examples between these AD pathways and pathways involved in Diabetes
Mellitus.
Our methods emphasize the contruction of robust ontologies for representing knowledge. Like the Open Biomedical Ontologies (OBO) efforts and the foundational model of anatomy, we follow the approach of developing reference ontologies that can support multiple applications. See also John Gennari's research interest page. This work in collaboration with Drs. Jesse Wiley and Dan Cook.
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| Faculty lead |
Ira Kalet |
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| Subarea |
Clinical Informatics |
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The goal of this project is to produce a theoretical model that
predicts the distribution of microscopic spread of tumor cells (local
and regional metastases), including the locations and probabilities
of finding positive nodes in each region. We are using a recursive
path search applied to known lymphatic anatomical information in the
Foundational Model of Anatomy (FMA) to predict the locations of
potentially involved regions, and a simple sequence of Markov models to
calculate the probabilities for each region. If successful this will
lead to more precision and accuracy in designing radiation therapy
plans customised to individual patients.
This project also includes a sub-project to develop a
knowledge-based mapping scheme that can automatically generate
lymphatic node regions on individual patients, using standard
anatomical models and deformable image registration techniques. Image
registration by itself is not sufficiently accurate to automatically
locate these regions on patients, unless there is some way to choose a
reference model that is close in shape to the individual patient.
Thus, a library of reference models is needed and some way of selecting
a best match from the library before the final registration.
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| Faculty lead |
Valerie Daggett |
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| Subarea |
Bioinformatics |
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Our goal is to perform realistic molecular modeling studies relating to protein stability, function, and folding. Protein folding is one of the fundamental unsolved problems in molecular biology. A protein must assume a stable and precisely ordered conformation to perform its biological function properly. Although much is known of the structural details of the native folded conformation of proteins, very little is known about the actual folding process.
An understanding of protein folding has important implications for all biological processes, including protein degradation, protein translocation, aging, and human diseases, including cancer and amyloid diseases. The solution to the protein folding problem also has applications in the human genome project and biotechnology. Given that protein folding is of such widespread importance to human health and the fact that experimental approaches only provide limited amounts of information on the structural transitions and interactions occurring during protein folding, we are using computer simulation methods in an attempt to delineate the important forces acting during this process.
We have also become involved in biomaterial and biosensor design, making use of what we have learned in our structural, dynamics, and folding studies of well-studied globular proteins. Other areas of interest include: structural and dynamical consequences of amino acid mutations, hydrophobic hydration, force field and software development, and dynameomics.
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| Faculty lead |
Anne Turner |
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| Subarea |
Public Health Informatics |
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In the absence of a standard method for data collection, local public health departments must devise their own strategies for data collection and analysis. This study will investigate the community assessment strategies of local public health organizations in Washington State to establish key data integration needs.
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| Faculty lead |
John Gennari |
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| Subarea |
Clinical Informatics |
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We are studying the effectiveness of drug alerting in the CPOE system at the VA Puget Sound.
When clinicians enter orders, a rule-based program checks the order for
any potential problems with patient allergies or interactions with
current medications. Our research has shown that there is a very high
rate of clinicians continuing with orders despite these warnings -- an
alert override rate of 75-90 percent.
We are interested in this result as a motivating
springboard to study the overall process of ordering, and how this
process is changed and could be (should be) improved by the use of
technology. We approach this problem broadly, using ethnographic tools
and methods. More specifically, we plan to comprehensively study the
ordering environment from a Cognitive Work Analysis (CWA) framework.
Ultimately, our this analysis should directly impact the design of
systems aimed to improve the physician ordering process. This project
in collaboration with Dr. Tom Payne and Ching-Ping Lin.
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| Faculty lead |
Ira Kalet |
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| Subarea |
Clinical Informatics |
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Radiation treatment planning optimization has recently received much attention due to the advent of inverse planning techniques for Intensity Modulated Radiation Therapy. As useful as these algorithms are, they all have difficulty in handling the predominant problems in radiation therapy. These problems include decisions based on models formulated with incomplete data, incomplete and qualitative presriptions, and mutually contradictory constraints/objectives. Our project is aimed at using belief nets (also known as Bayes' nets) to provide better methods at guiding the optimization process and choosing the most clinically appropriate solution.
This project is led by Mark Phillips, Ph.D., Radiation Oncology.
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| Faculty lead |
Peter Myler |
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| Subarea |
Bioinformatics |
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Our current research is focused on using genome-wide laboratory and
bioinformatics-based approaches to study regulation of gene expression
in protozoan parasites. This work has been greatly enhanced by the
recent completion of the trypanosomatid genome sequence, in which we
played a leadership role. One NIH-funded sub-project seeks to
characterize the molecular machinery involved in the unique
polycistronic transcription of protein-coding genes in trypanosomatids.
This involves both wet lab (molecular genetics, microarray, proteomics,
EMSA, ChIP) and computational (sequence analysis, motif identification,
microarray analysis) approaches.
A second sub-project uses DNA microarrays to identify
changes in gene expression during differentiation of Leishmania between
the insect and mammalian stages. As part of the Trypanosomatid program
at SBRI, Dr. Myler is also actively involved in the discovery of new
drugs against trypanosomes and Leishmania, as well as development of
improved diagnostics for infection with these parasites.
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| Faculty lead |
Ira Kalet |
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| Subarea |
Clinical Informatics |
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This project aims to identify the challenges of representing and
reasoning with drug mechanism knowledge and to evaluate potential
informatics solutions to these challenges throughthe process of developing a knowledge-based system capable of predicting clinically relevant DDIs that occur via metabolic
mechanisms. In previous work, we designed a simple, rule-based, model
of metabolic inhibition and induction and applied it to a database
containing assertions about 267 drugs.
This pilot system taught us
that drug mechanism knowledge is often dynamic, missing, or uncertain.
We are developing methods to address these properties of mechanism
knowledge. In particular we are investigating the use of a Truth
Maintenance System to link changes in the evidence support for
assertions about drug properties to the set of drug-drug interactions
and noninteractions the system predicts. This work in collaboration
with Richard Boyce.
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> Top of Page |
| Faculty lead |
Ira Kalet |
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| Subarea |
Clinical Informatics |
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The Prism Project is a long term development project to build a base
for exploration of new ideas in radiation treatment. It models
individual patient anatomy, radiation machinery, and is currently being
extended to model the biological effects of the radiation on tumors and
normal tissue. It has been used for testing of knowledge based
automated planning techniques, as well as providing a context for
eventual testing of the results of the Clinical Target Volume project.
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| Faculty lead |
George Demiris |
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| Subarea |
Clinical Informatics and Personal Health Informatics |
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The aim of this project is to study the design, implementation and
evaluation of smart home technologies that aim to support older adults,
increase their independence and quality of life as they age in place.
Funding agencies: NSF, NIH, Administration on Aging
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| Faculty lead |
George Demiris |
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| Subarea |
Clinical Informatics |
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The aim of this project is to explore the use of videophone technology
as an intervention that reduces caregiver anxiety and increases the
participation of patients and caregivers in interdisciplinary team
meetings in hospice. Funding agencies: NIH R21, Hartford Foundation.
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| Faculty lead |
Sherrilyne Fuller |
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| Subarea |
Bioinformatics |
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Telemakus: Mining and Mapping Research Findings to Promote Knowledge Discovery
Specialization has resulted in much of the recent advancement in
science. However, an unfortunate consequence of specialization has been
poor communication across research domains, which hampers the knowledge
discovery process. The Telemakus system offers an opportunity to
re-envision the way we represent, retrieve and assimilate research
findings from the published literature. The long-term goal is to
develop a system that will provide tools and concept mapping algorithms
to be applied to any domain which presents research findings as numeric
data in support of the knowledge discovery process. Formalizing the
representation methods and results of scientific research offers a new
approach to conceptualize and dynamically aggregate research findings
within and across scientific domains with the potential to ultimately
improve and, indeed, speed up the scientific discovery process.
The first Telemakus knowledge resources provide
active knowledge exploration maps and resources on: 1) the basic
biology of caloric restriction in aging and 2) biomarkers in Alzheimers
disease and mild cognitive impairment. Knowledge bases in communicable
and infectious diseases (initial focus on influenza) are currently
under development. The knowledge bases are freely available and can be
found at the Telemakus web site.
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Center for Public Health Informatics
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> Top of Page |
| Faculty lead |
Anne Turner |
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| Subarea |
Public Health Informatics |
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| Subgroup |
Center for Public Health Informatics |
> Group Link |
Investigations into the online searching behavior of public health
professionals to determine the criteria used by public health
professionals use to find quality public health information on the
internet. These findings will be incorporated into the development of a
"smart" web-based crawler to identify and summarize relevant quality
public health gray literature documents. The project is being done in
collaboration with Syracuse University's Center for Natural Language
Processing (Elizabeth Liddy, PI)
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> Top of Page |
| Faculty lead |
Anne Turner |
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| Subarea |
Public Health Informatics |
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| Subgroup |
Center for Public Health Informatics |
> Group Link |
A Robert Wood Johnson Foundation funded "Common Ground" project to
investigate the business processes and workflow of local health
departments in the area of chronic disease prevention and control. In
conjunction with Kitsap County Health District, this project will 1)
identify a common set of processes for public health chronic disease
activities; 2) provide a common framework for identifying possible
inefficiencies in current health department practices and 3) define a
set of requirements for development of a chronic disease information
system.
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> Top of Page |
| Faculty lead |
Anne Turner |
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| Subarea |
Public Health Informatics |
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| Subgroup |
Center for Public Health Informatics |
> Group Link |
A detailed qualitative investigation of the information workflow of
communicable disease activities of a Washington State local health
department. A framework based on contextual inquiry and participatory
design is being used to evaluate the adoption of electronic disease
reporting systems.
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> Top of Page |
| Faculty lead |
Sherrilyne Fuller |
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| Subarea |
Bioinformatics |
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| Subgroup |
Center for Public Health Informatics |
> Group Link |
The goal of the myPublicHealth project
is the design, development and evaluation of an interactive digital
knowledge management system. This system will support the collection,
description, management, and retrieval of public health documents, data
sets, guidelines, learning objects, and tools in a public health
knowledge repository. Rapid access to these resources will be achieved
by integrative web services that support and enhance retrieval of
critical information needed for decision-making by public health
professionals.
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Genetic Data Integration Research Group
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> Top of Page |
| Faculty lead |
Peter Tarczy-Hornoch |
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| Subarea |
Translational Informatics |
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| Subgroup |
Genetic Data Integration Research Group |
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The goal of this project is the design and implementation of
information integration systems that handle uncertainty about data and
results at all levels of the integration process. The U2 System (short
for UII--Uncertain Information Integration) will model uncertainty at
all levels of the system. In order to ensure the ultimate real world
utility of the U2 system, we develop it in consultation with diverse
biological researchers building on our experience on the BioMediator
system. National Science Foundation.
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iMed
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| Faculty lead |
Wanda Pratt |
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| Subarea |
Clinical Informatics and Personal Health Informatics |
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| Subgroup |
iMed |
> Group Link |
The long-term objective of this research is to promote the use of published information by facilitating fast, easy, and effective access to the scientific literature. To achieve this objective, we are using existing knowledge bases to incorporate text-mining and categorization techniques into search and document-management interfaces.
The goal is to investigate and develop intelligent interfaces that would allow users to see a summary of the information in their entire set of search results, explore the topics that they find most interesting, share that information with others, and use the same contextualized interface to manage the documents of interest. The initial focus is on people who use the biomedical literature to perform information-intensive tasks, such as writing review articles, planning a research path, or simply keeping up with an area of interest.
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| Faculty lead |
Wanda Pratt |
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| Subarea |
Personal Health Informatics |
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| Subgroup |
iMed |
> Group Link |
As clinicians are forced to decrease time spent with patients and the
specialization and fragmentation of care increases, patients are
required to play an increasingly prominent role in their health care.
Yet, few information tools exist to support patients in this active
role. In particular, patients often must coordinate their health care
across multiple clinicians, learn new health terminology, make
treatment choices, manage their home care, track insurance benefits,
etc.
At the same time, patients are trying to maintain their normal
professional and personal lives, but the intense information management
demands placed on them can interfere with all those activities. Little
is known about this information management work of patients, but such
knowledge must be a first step towards developing the tools that
patients need to support their active role. The long-term objective of
this research is both to understand patients’| information management
work and to develop new technology that will support that work.
Specifically, we propose to (1) develop a model of patients’| personal
health information management work, (2) develop new technology that
supports patients in that work, and (3) evaluate the effectiveness of
our new technology in helping patients manage their personal health
information, participate in their own health care, and maintain their
daily life activities.
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Structural Informatics
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| Faculty lead |
Jim Brinkley |
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| Subarea |
Bioinformatics |
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| Subgroup |
Structural Informatics |
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Symbolic representations for anatomy, as exemplified by the
Foundational Model of Anatomy, are combined with spatial or image-based
representation in a distributed information system. Various structural
information servers access the spatial and symbolic resources, and
various authoring and end-user client programs implement several
applications. Among these applications are a foundational model explorer (FME), a graphical query engine to the FMA called Emily, a StruQL-based query engine for the FMA called OQAFMA, a natural language front-end that composes StruQL queries, a Lisp-based FMA server, a web-based image manager, FMA-based image retrieval, interactive atlases of anatomy, and a dynamic 3-D scene generator.
Sub-projects include: BodyGen. Digital Anatomist Atlases, Digital Anatomist Jigsaw Puzzle, Dynamic Scene Generator, Image Manager WIRM Repository, Skandha4, Who Wants to Be A (Digital) Anatomist?, WIRM, and Biolucida. See web pages for more details.
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| Faculty lead |
Jim Brinkley |
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| Subarea |
Bioinformatics |
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| Subgroup |
Structural Informatics |
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| Symbolic representation of anatomy ranging from the macroscopic to
molecular level. Over 60,000 concepts representing all structures
visible to 1 mm, and many structures at the microscopic and molecular
levels, are arranged in various ontologies using the Protege
frame-based knowledge acquisition tool. The ontologies are then made
available by various servers that are part of the Digital Anatomist
Information System.
Sub-projects include: Emily, Foundational Model Explorer, Foundational Model of Anatomy DB, GAPP Server, NOQAFMA, OQAFMA DB, OQAFMA Server, and WebGAPP.
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| Faculty lead |
Linda Shapiro |
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| Subarea |
Bioinformatics |
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| Subgroup |
Structural Informatics |
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The goal of this research project is to develop a unified methodology
for organization and retrieval of biological data from scientific
experiments. This methodology will permit biomedical researchers to
organize and access their critical data in ways that permit them to
perform major analyses which were previously very difficult (due to the
sheer volume of data), and which will provide new insights into their
work.
Our project builds on existing work in experiment management,
approximate queries, and content-based image retrieval. A probabilistic
query framework for multimedia data is being developed that provides
users with a unified way to access various types of data. Coming from
multiple sources, this data is diverse and heterogeneous, including
time series signals such as neuron firing patterns, 2D images such as
X-rays or photographs, 3D image volumes such as CT and MRI scans, and
4-dimensional data such as fMRI image volumes over time. These
different types of data will be loosely linked together to provide a
unified view, and will be organized in a way that is both easy for
users to understand as well as efficient for query access. The new
probabilistic query framework and data organization methodologies will
permit queries that are able to handle these multiple types of related
data, both alphanumeric and signal/image data, in a uniform way. For
example, the queries will be able to handle both single data types and
multiple related data types, such as registered CT and MRI scans or
neuronal firing patterns and related fMRI data. A prototype system is
being built and evaluated on three different applications: a study of
language sites in the human brain, an analysis of the relationship of
cataract formation to genetic factors, and a study of craniofacial
disorders in children.
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| Faculty lead |
Jim Brinkley |
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| Subarea |
Bioinformatics |
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| Subgroup |
Structural Informatics |
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An on-line information system for managing and visualizing data
about the human brain. In this case a structural model is used as a
framework for organizing other information.
Related subprojects: Brain Browser Web Interface, Brain Map WIRM Repository, Brain Visualizer Graphics Server, Single-Cell Recording EMS, X_Batch, XBrain and MindSeer.
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Tuesday 10/7/08
Clinical Informatics Colloquium
11:00-11:50 | RR-134
Speaker: Ching-Ping Lin
CPOE Workflow
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Tuesday 10/7/08
MEBI 590 Lecture Series
12:00-12:50 | RR-134
Speaker: Nick Anderson, PhD
Title: "Developing a scalable framework for interinstitutional clinical federated querying in the CTSA consortium"
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Tuesday 10/7/08
Colloquium in Public Health Informatics
01:00-01:50 | I-132
Speaker: Sunny Consolvo
Title: "Flowers or a Robot Army, Encouraging Awareness and Activity with Personal Mobile Displays"
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Tuesday 10/14/08
Clinical Informatics Colloquium
11:00-11:50 | RR-134
Speaker: Ken Hammond, M.D.
Clinical documentation
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Tuesday 10/14/08
MEBI 590 Lecture Series
12:00-12:50 | RR-134
Speaker: Scott Evans, MS, PhD, FACMI
"Computer Identification of Patients with and at High Risk for Venous Thrombolytic Events"
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