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Aging and HIV: Prognostication, personalization, and prevention. R Scott Braithwaite, MD, MS, FACP Chief, Section of Value and Comparative Effectiveness New York University School of Medicine; NY; U.S.A. . Personalizing screening recommendations for HIV-infected.
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Aging and HIV: Prognostication, personalization, and prevention • R Scott Braithwaite, MD, MS, FACP Chief, Section of Value and Comparative Effectiveness New York University School of Medicine; NY; U.S.A.
Personalizing screening recommendations for HIV-infected • HIV-infected population is aging • More screening recommendations applicable • Cancer, other • Increasing emphasis on personalized medicine • Health information technology • Personalize algorithms at point-of-care • How should screening recommendations be personalized for HIV-infected individuals?
Projected *Data from 2008, onward projected based on 2001-2007 trends (calculated by author), 2001-2007 data from CDC Surveillance Reports 2007. New York and San Francisco data from their Departments of Public Health.
Personalizing screening recommendations for HIV-infected • HIV is now chronic disease • Framework for personalizing screening • Braithwaite RS et al, 2009, Medical Care • Braithwaite RS et al, 2011, Med Decis Making • Estimate benefit/harm ratio based on personalized benefits, harms, and competing risks • If benefit/harm more favorable, then earlier and/or more frequent screening favored • If benefit/harm less favorable, then later and/or less frequent screening favored • If harms > benefits considering competing risks screening not recommended
Illustrative cases: Screen for colorectal cancer? • Case 1: 62 year-old male, CD4 590, undetectable viral load, first-line ARV, no major comorbidities • Case 2: 62 year-old male, CD4 46, viral load 3,500; 3rd line ARV, atrial fibrillation (on coumadin), Hep C, mild anemia
Personalizing screening • Estimate benefit/harm ratio based on personalized benefits, harms, and competing risks • If benefit/harm more favorable, then earlier and/or more frequent screening favored • If benefit/harm less favorable, then later and/or less frequent screening favored • If harms > benefits considering competing risks screening not recommended Braithwaite RS et al, Medical Care, 2009
Personalizing benefits of colorectal cancer screening • HIV increases risk for CR cancer by RR 2.3 • Therefore potential benefit from screening increased by RR 2.3 • But need to also consider other chronic diseases, medications, and risk factors
Personalizing benefits • Case 1 • Healthy 62 year-old well controlled HIV • Benefit 2.3 X greater than typical person because of HIV • Case 2 • 62 year old poorly controlled HIV and other chronic diseases • Benefit 2.3 X greater than typical person because of HIV
Personalizing screening • Estimate benefit/harm ratio based on personalized benefits, harms, and competing risks • If benefit/harm more favorable, then earlier and/or more frequent screening favored • If benefit/harm less favorable, then later and/or less frequent screening favored • If harms > benefits considering competing risks screening not recommended Braithwaite RS et al, Medical Care, 2009
Personalizing harms of colorectal cancer screening • HIV itself not known to impact harms • But need to consider other chronic diseases, medications, and risk factors
Personalizing harms • Case 1 • Healthy 62 year-old well controlled HIV • Harm unchanged from typical person • Case 2 • 62 year-old poorly controlled HIV and other chronic diseases • Harm 4.0 X that of typical person because of coumadin
Personalizing screening • Estimate benefit/harm ratio based on personalized benefits, harms, and competing risks • If benefit/harm more favorable, then earlier and/or more frequent screening favored • If benefit/harm less favorable, then later and/or less frequent screening favored • If harms > benefits considering competing risks screening not recommended Braithwaite RS et al, Medical Care, 2009
Personalizing competing risks • HIV: little effect if well controlled, large effect if poorly controlled • Need to consider other chronic diseases, medications, and risk factors • Instruments for quantification include • VACS index • Computer simulation
Veterans Aging Cohort Study Risk Index (VACS Index) • Composed of age and laboratory tests currently recommended for clinical management • HIV Biomarkers: HIV-1 RNA, CD4+ count, AIDS defining conditions • “Non-HIV Biomarkers”: Hemoglobin, hepatitis C, composite markers for liver and renal injury • Developed in US veterans, validated in Europe and North America
VACS Index Highly Predictive of Long Term (5 Year) All Cause Mortality Justice, AC. et. al, HIV Med. 2010 Feb;11(2):143-51. Epub 2009 Sep 14. Justice AC. HIV and Aging: Time for a New Paradigm. Curr HIV/AIDS Rep. 2010 May;7(2):69-76
VACS Index in OPTIMA Brown S.T. et al. Poster Presentation, Abstract #16436 International AIDS Conference 2010
VACS Index Response to 1st Year of cART (+/- 80% adherence) Solid lines indicate >80% adherence Tate J. et al. Change in a prognostic index for survival in HIV infection after one year on cART by level of adherence. IDSA 2010. Poster # 1136
Computer Simulation • Widely published, calibrated and validated • Braithwaite RS et al, Am J Med, 2005 • Braithwaite RS et al, J AntimicrobChemother 2006 • Braithwaite RS et al, Value in Health, 2007 • Braithwaite RS et al, Annals Intern Med, 2008 • Braithwaite RS et al, Clin Infectious Dis 2009 • Braithwaite RS et al, Med Care, 2010 • Mechanistic, represents reasons for failing ARV • Nonadherence to ARV • Resistance accumulation • Estimates life expectancy based on age, sex, baseline CD4, baseline viral load, baseline resistance, ART adherence, ART initiating criteria, switching criteria, and sequencing
Personalizing screening • Estimate benefit/harm ratio based on personalized benefits, harms, and competing risks • If benefit/harm more favorable, then earlier and/or more frequent screening favored • If benefit/harm less favorable, then later and/or less frequent screening favored • If harms > benefits considering competing risks screening not recommended Braithwaite RS et al, Medical Care, 2009
Personalizing competing risks • Case 1 • Healthy 62 year-old well controlled HIV • VACS index: Life Expectancy >>10 years • Simulation: Life Expectancy >>10 years • Case 2 • 62 year-old poorly controlled HIV and other chronic diseases • VACS Index: Life Expectancy 4.1 years • Simulation: Life Expectancy 5.1 years
Case 1: Personalized harm/benefit of colorectal cancer screening • Benefits increased by 2.3-fold • Harms unchanged • Therefore personalized benefit/harm ratio = 2.3 • Competing risks minimally affected • HIV well controlled and does not add clinically significant mortality burden • Therefore Life Expectancy >> 10 years using either VACS index or computer simulation
Life expectancy needed for benefits from CR screening to exceed harms Braithwaite et al, Medical Care, 2009
Case 1: Personalized harm/benefit of colorectal cancer screening • Since Case 1 would require 5.3 years to have benefits exceed harms and is expected to live >> 10 years, Case 1 would benefit from colorectal cancer screening more than typical person • Raises question of whether screening should begin at earlier age or with greater frequency
Case 2: Personalized harm/benefit of colorectal cancer screening • Benefits increased by 2.3-fold • Harms increased by 4.0-fold • Therefore personalized benefit/harm ratio = 0.6 • Competing risks increased greatly • VACS index: Life Expectancy 4.1 years • Simulation: Life Expectancy: 5.1 years
Life expectancy needed for benefits from CR screening to exceed harms Braithwaite et al, Medical Care, 2009
Case 2: Personalized harm/benefit of colorectal cancer screening • Since Case 2 would require 6.0 years to have benefits exceed harms and has life expectancy of only 4.1 years (VACS index) or 5.1 years (Computer Simulation), Case 2 would not benefit from colorectal cancer screening • Benefit exceeds harms • Screening should not be part of “denominator” for quality measure or P4P
Conclusions • HIV-infected persons may benefit from personalized screening recommendations • Sometimes favor more aggressive screening • Sometimes favor less aggressive or no screening • Personalization occurs by considering effects of HIV, other chronic diseases, and risk factors • Screening-attributable benefits • Screening-attributable harms • Competing risks • Personalizing may be facilitated by HIT and EMRs