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Cancer Care Engineering: The Cancer Prevention Perspective

Dorothy Teegarden, Ph.D . Oncological Sciences Center Lead , Cancer Prevention and Control Program Department of Foods and Nutrition. Cancer Care Engineering: The Cancer Prevention Perspective. Cancer Prevention Impact. Diet 30% of cancer deaths are related to diet (Doll, 1981).

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Cancer Care Engineering: The Cancer Prevention Perspective

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  1. Dorothy Teegarden, Ph.D. Oncological Sciences Center Lead, Cancer Prevention and Control Program Department of Foods and Nutrition Cancer Care Engineering: The Cancer Prevention Perspective

  2. Cancer Prevention Impact • Diet • 30% of cancer deaths are related to diet (Doll, 1981). • Tobacco use • 30% or 170,000 cancer deaths in the United States in 2006 (ACS, 2006). • Other modifiable factors • Environmental exposures • Obesity • Lack of physical activity. • Could achieve by 2015 (IoM, 2004): • 19% decline in new cancer cases • 29% decline in the rate of cancer deaths

  3. Initiation Environmental Genetic Preneoplasm Neoplasm Benign Or Malignant Normal Growth Promotion Environmental Genetic Identify and/or Prevent Exposures Very Early Detection Identify Genetic Risks Multistage Cancer Progression

  4. Multi-stage Carcinogenesis Normal Initiation Promotion Progression Metastases Risk/Benefit Cancer Prevention/Chemoprevention

  5. Cancer Prevention/Chemoprevention Genetics Modifiable/Environment Chemopreventive Compounds Behavioral Modeling Behavior Modification Methodology Animal Models Epidemiology Molecular Mechanisms Clinical Trials Policy Healthcare Systems/Communication Cells Nutrition Biomarkers/Imaging Early Detection

  6. Cancer Research in Indiana • Purdue University • NCI Cancer Center • Oncological Sciences Center • Indiana University • NCI Cancer Center • IU School of Medicine • Hoosier Oncology Group • Family Practice Network

  7. Oncological Sciences CenterResearch Areas • Cancer Prevention and Control • Cancer Nanotechnology • Cancer Biomarkers • Novel Engineered Diagnostic and Therapeutic Devices • Cancer Care Engineering

  8. A Systems Approach to the Prevention & Treatment of Cancer Cancer Care Engineering

  9. Cancer Care Engineering Goals Cancer Prevention and Chemoprevention We want to know who will develop specific cancers (environment/gene interactions) and what strategies will prevent the development of that cancer.

  10. Cancer Prevention & Chemoprevention • Cancer Prevention by Dietary Agents • Nutrient and botanical • Chemoprevention • Very early detection • Biomarkers and imaging • Identification of risk factors • Behavioral modification/Public Policy approaches to reduce risk • Smoking cessation • Reducing incidence of obesity • Application of knowledge in healthcare settings

  11. Treat Cancer and Cancer Prevention as a System • Interdisciplinary Team Approach • Enabling Systems Infrastructure • Data Integration • Patient Data, Literature Data, HSR Data • Rapid Communication • Efficient clinical validation • Hypothesis generation • Community-based Approach

  12. CCE ModelBedside to Bench and Back 1. Sample Acquisition/Management Community-based oncology clinics Undiagnosed populations 5. Real-time Visualization of Data Purdue University 6. Immediate Clinical Analysis & Clinical Feedback Indiana University Cancer Center 2. Data Acquisition OMICS, Prevention Data Indiana University School of Medicine Regenstrief Institute Purdue University 7. Discovery Research Driven by Model Predictions Purdue University Indiana University Cancer Center 3. Data Storage/Query Center Purdue University 4. Predictive Statistical Modeling Purdue University New Directed Sampling Iterative Models Refined Predictive Outcomes Analyzed

  13. Purdue University Don Bergstrom, PhD Richard Borch, MD, PhD Marietta Harrison, PhD Julie Nagel, PhD Joseph Pekny, PhD Dorothy Teegarden, PhD IU Cancer Center Mark Kelley, PhD James Klaunig, PhD Pat Loehrer, MD Chris Sweeney, MBBS Stephen Williams, MD CCE Leadership Team Oncological Sciences Center e-Enterprise Center Regenstrief Center for Healthcare Engineering Purdue Cancer Center

  14. Immediate Communication A System Wide Awareness • Instantaneous Picture of Indiana Cancer Care System • Multidisciplinary Staffing • Community Oncologist Accessibility • Dissemination of New Data Patterns • Allow Data Driven Resource Allocation

  15. Environment Oxidative Stress Parameters Vitamin D Status Dietary Intake Bioinformatics Colon Cancer Susceptibility: Role of Oxidative Stress (and Vitamin D) Study Design Genetic Variants (SNPs) Oxidative Stress (enzymatic production and removal) Epigenetic Methylation Vitamin D Metabolism Colon Cancer Development and Progression

  16. 1.Input Patient “omics” Data 2. Predict Subject Response to Intervention Input Healthy Control “omics” Data 3. Input Clinical Data (Disease Development in Healthy Controls, biomarkers) 6. Predict Development of Disease in Healthy Individuals and Effectiveness of Nutritional Interventions 4. Model Identifies Necessary New Data 5. Input Necessary New Data Biomarker Identification & Validation Early Detection and Risk Assessment Cancer Care EngineeringPrevention and Control System Analysis Model Situation Room

  17. 300 350 400 450 500* * Mean daily solar radiation in g-cal/cm2 High Epithelial Cell Cancer Rates are Associated with Low UV Exposure - 42 oN - 35 oN - 28 oN www3.cancer.gov/atlasplus/

  18. Colon Cancer Susceptibility: Role of Oxidative Stress (and Vitamin D) James Klaunig Center for the Environment; IU Cancer Center Dorothy Teegarden Purdue University Cancer Center, Oncological Sciences Center Mark Kelley IU Cancer Center Lisa Kamendulis IU Cancer Center

  19. Oxidative stress Balance oxidant>antioxidants Damage (proteins, lipid and nucleic acids) Cancer Factors that Impact Oxidative Stress Overproduction of reactive oxygen species Faulty or inadequate enzymatic antioxidant defenses Inadequate intake of antioxidants Faulty or inadequate DNA repair Association with genetic variants Vitamin D Status Colon cancer prevention Inhibits proliferation, induces differentiation, stimulates apoptosis Genetic variants associated with colon cancer progression Promote enhanced oxidative defenses Oxidative Stress, Vitamin D and Colon Cancer

  20. Colon Cancer Susceptibility: Role of Oxidative Stress (and Vitamin D) Chemoprevention strategies involving both antioxidant and vitamin D supplementation may be useful for preventing colon carcinogenesis. Hypothesis The formation and progression of preneoplastic colon lesions (or a subset thereof) is dependent on the induction of oxidative stress and damage that is due in part, to genetic susceptibility factors and/or dietary and lifestyle factors that influence oxidative stress status.

  21. Environment Oxidative Stress Parameters Vitamin D Status Dietary Intake Bioinformatics Colon Cancer Susceptibility: Role of Oxidative Stress (and Vitamin D) Study Design Genetic Variants (SNPs) Oxidative Stress (enzymatic production and removal) Epigenetic Methylation Vitamin D Metabolism Colon Cancer Development and Progression

  22. Factors Influencing Serum 25OH D Levels • White vs African American = +12.8 nmol/L • South vs North = +6.4 nmol/L • Low vs High BMI = +8.6 nmol/L • Active vs Inactive = +13.5 nmol/L • High vs Low Diet vitamin D = +10.4 nmol/L • Autumn vs Winter = +13.5 nmol/L Active, skinny, white Southerner = +41.3 nmol/L!!!! Giovannucci et al. J Natl Cancer Inst 2006;98:451

  23. Systems Infrastructure • Sample Acquisition • OMIC Analyses • Iterative Predictive Modeling • Instant Feedback to Clinics • Clinical Data Driving Basic Research BEDSIDE LABORATORY Enabling Individualized Treatment & Prevention Plans

  24. Project Long Term Goals • Establish Cancer Care System Infrastructure • Provide Instantaneous Communication Vehicle • Stratify Patients • Prevention Strategies • Response to Therapy • Clinical Trials • ID and Validate Clinically Relevant Biomarkers • ID Therapeutic Targets • ID Barriers to Effective Healthcare Delivery

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