Title: Is It Possible to Use Computer Methods
1Is It Possible to Use Computer Methods to Get
the Information a Biopsy Provides without
Performing a Biopsy? Jim DeLeo, NIH Clinical
Center Facilitator
This or this?
Thursday, November 15, 2007 330 to 500
p.m. at the National Institutes of
Health Clinical Center (Building 10) Medical
Board Room (Room 2C116) This session is
sponsored by the NIH Biomedical Computing
Interest Group www.nih-bcig.org Additional
information 301-496-0191
2The bad news is
- According to the Journal of the
- American Medical Association
- medical treatment is the third-
- leading cause of death.
- From A New Earth, by Eckhart Tolle
3Unnecessary Biopsies
- Video Alert for unnecessary biopsies
- Revolutionary Breakthrough in Breast Cancer
Detection... reduce the need for biopsies. In
fact, the American Cancer Society confirms only
20 percent of biopsies ...http//vids.myspace.com
- http//www.healthcentral.com/video/408/2051.html
4Prostate Cancer
- Predictive computer model reduces unnecessary
biopsies by more than one-third - June 25, 2003. Using a predictive computer
model could reduce - unnecessary prostate biopsies by almost 38,
according to a study - conducted by Oregon Health Science University
researchers. The - study was presented at the American Society of
Clinical Oncology's - annual meeting in Chicago.
- "While current prostate cancer screening
practices are good at - helping us find patients with cancer, they
unfortunately also identify - many patients who don't have cancer. In fact,
three out of four men who - undergo a prostate biopsy do not have cancer at
all," said Mark Garzotto, - MD, lead study investigator and member of the
OHSU Cancer Institute. - "Until now most patients with abnormal screening
results were counseled - to have prostate biopsies because physicians were
unable to - discriminate between those with cancer and those
without cancer."
5Blood Tests Provide Alternative to Liver Biopsy
for Assessing Status of Liver Disease in HCV
Patients
- Oneida TheraDiagnostics Ltd has launched two
non-invasive blood tests for assessing the extent
of liver disease in patients infected with
hepatitis C virus (HCV). Developed by
hepatologists at the Pitie-Salpetriere Hospital
and BioPredictive in France, the two tests are
called FibroTest and ActiTest. - The new tests provide easily accessible
alternatives to liver biopsy, which is currently
used to assess liver fibrosis and
necroinflammatory activity in these patients. The
tests do not replace the use of liver biopsy,
however, which may be the appropriate diagnostic
in many cases. Whether to use these new blood
tests instead of a liver biopsy should be
discussed between each individual patient and
his/her primary care physician or liver
specialist. - Although liver biopsy has long been considered
the gold standard for monitoring the status of
HCV and to determine therapy options, it is an
invasive procedure that carries some risk of
serious complications. The new assays use a
combination of six serum biochemical markers,
plus age and gender data, in a patented algorithm
to determine the degree of liver fibrosis and the
level of ongoing necroinflammatory activity.
6NIH Core Strategic Vision
- NIH Director Elias Zerhouni, M.D. has recently
emphasized - the following characteristics of the NIH Core
Strategic - Vision
- 1. to transform medicine and health from a
curative to a preemptive paradigm. - 2. to support basic research to identify the
earliest molecular stages of disease in complex
biological systems. - 3. to accelerate translation of findings from
the bench to the bedside to the community. - 4. to provide the evidence and knowledge base to
allow for a rational transformation of our
healthcare system.
7NIH Core Strategic Vision
- Predictive
- Preemptive Medicine
- Personalized
8- Computer Science
- Data Mining
- Machine Learning
- Medical Composite Index
- Intelligent Virtual Biopsy
9Data Mining
Data Preparation
Data Gathering
Data Preprocessing
Data Standard- ization
Data Selection
Data Production
Feature Extraction
Feature Normal- ization
Data Pooling
Knowledge Discovery
Basic Statistics
Data Visualization
Unsupervised Learning
Supervised Learning
Semi-supervised Learning
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16Other Considerations
- ROC Methodology
- Prevalence
- Misclassification Costs
- Ensembling
- Hybridized Methodologies
-
17Simulated Data ROC Plot
18PSA ROC Plots
Normal vs. Cancer Area 0.95
N/C
B/C
Benign vs. Cancer Area 0.79
sensitivity
1 - specificity
19An Intelligent Agent
20E N S E M B L E O U T P U T
P A T I E N T D A T A
21Hybrid of Decision Trees and ANN Ensembles
SA1
SB2
SB1
DC1
DC2
SC1
SC2
DD1
DD2
DD3
DE6
DD4
DD5
22Prostate Cancer Virtual Biopsy ANN
23Biopsy Replacement Levels
24Extreme Multidisciplinary Team Work
25Scientific Computing Section Clinical Center,
National Institutes of Health, Bethesda,
MD Summer 2007
26Idiopathic Inflammatory Myopathy Extreme
MultidisciplinaryTeam
Scientific Computing Section Clinical Center,
National Institutes of Health, Bethesda,
MD Summer 2007
27Questions
- Is It Possible to Use Computer Methods
- to Get the Information a Biopsy Provides
- without Performing a Biopsy?
- What should we start with?
- - most likely to succeed application
- - where there exists data
- How do we proceed to rapidly move from
- bench to bedside to community with the
first - application?
28Is It Possible to Use Computer Methods to Get
the Information a Biopsy Provides without
Performing a Biopsy? Jim DeLeo, NIH Clinical
Center Facilitator
This or this?
Thursday, November 15, 2007 330 to 500
p.m. at the National Institutes of
Health Clinical Center (Building 10) Medical
Board Room (Room 2C116) This session is
sponsored by the NIH Biomedical Computing
Interest Group www.nih-bcig.org Additional
information 301-496-0191