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Genomics of Septic Shock-Associated Kidney Injury

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Title: Genomics of Septic Shock-Associated Kidney Injury


1
Genomics of Septic Shock-Associated Kidney Injury
  • Rajit K. Basu, MD
  • Assistant Professor, Division of Critical Care
  • Center for Acute Care Nephrology
  • Cincinnati Childrens Hospital Medical Center

1st International Symposium on AKI in
Children 7th International Conference Pediatric
Continuous Renal Replacement Therapy September
2012
2
Disclosures
  • Speaker is partially funded by the Gambro Renal
    Products for the TAKING-FOCUS clinical research
    study

3
The problem of sepsis and AKI
  • Sepsis1
  • Leading cause of death in critically ill adults
    (1/4)
  • Mortality of severe sepsis is 352, costs gt 15
    billion/yr
  • 42,000 pediatric cases/yr of septic shock in US2
  • Mortality 9, 4,400 deaths / yr, gt2
    billion/yr
  • Acute kidney injury (AKI)
  • 6 of all adult ICU patients (RIFLE)3
  • 2.5-10 of all pediatric ICU patients (pRIFLE)4
  • Sepsis associated AKI (SA-AKI)
  • Most frequent etiology of AKI in adults (
    33-50)5
  • Most frequent etiology of AKI in children
    (25-50)6
  • Combined mortality 50 (PICARD 2011)

1 Angus, CCM 2001 2 Levy, CCM 2010 3
Watson, AJRCC 2003 4 Uchino, JAMA 2005 5
Schneider, CCM 2010 6 Bagshaw, CC 2008 7
Duzova, Peds Neph 2010
4
The cardiac angina paradigm
Detection ? Improved outcomes?
Acute Myocardial Infarction (AMI)
5
Identifying the renal troponin for SSAKI?
6
Markers of kidney function in SSAKI
  • No troponin-I for SSAKI currently exists
  • Common indices of kidney function inadequate
    for diagnosis and classification
  • Both urine and serum studies of function with
    marginal identification, prognosis, predictive
    power
  • Where could a potential SSAKI biomarker come from
    (that matches the diverse pathophysiology?)
  • Where do putative SSAKI biomarkers come from?
  • Majority developed in models of non-septic AKI
  • Ischemic AKI (including cardiopulmonary bypass)
  • Nephrotoxic AKI
  • Pathophysiology of SA-AKI is multifactorial
  • Combination of ischemic, inflammatory,
    nephrotoxic, apoptotic AKI
  • Studies of AKI biomarkers not stratified purely
    by sepsis etiology

7
Biomarkers Severe Sepsis Associated AKI (SSAKI)
  • Incidental SSAKI biomarker studies
  • PROWESS
  • Study of drotrecogin-alfa (Activated Protein C)
    for sepsis
  • Biomarkers for sepsis also with notable
    performance for prediction of AKI (IL-6,
    APACHE-II score) (Chawla, CJASN 2007)
  • NORASEPT
  • Study of murine monoclonal Ab to tumor necrosis
    factor for treatment of sepsis
  • Association of TNF-a and inflammation with ?rate
    of SSAKI (Iglesias, AJKD 2003)
  • PICARD
  • Prospective study examining the history,
    treatment, outcomes of ARF
  • ARF patients had higher pro-inflammatory markers
    (Simmons, KI 2004)

8
Biomarkers Severe Sepsis Associated AKI (SSAKI)
  • Where are the dedicated SSAKI biomarker studies?
  • Few and far between
  • Sepsis studies ? highly heterogeneous given
    severity of illness differences (SOI) between
    patients
  • Barrier to proper study of biomarkers and therapy
    for sepsis
  • Complicates any study of SSAKI
  • NIDDK workshop regarding SSAKI trials (Molitoris,
    CJASN 2012)
  • Homogeneity of patients paramount
  • Classification/stratification of cohorts by SOI
    score
  • Standard biomarkers
  • pNGAL is raised in patients with SIRS, severe
    sepsis, and septic shock and should be used with
    caution as a marker of AKI in ICU patients with
    septic shock (Martensson, Intens Care Med 2010)
  • The inflammatory response induced by sepsis has
    no impact on the levels of cystatin C in plasma
    during the first week in the ICU (Martensson,
    Neph Dial Trans 2012)

9
Biomarkers Severe Sepsis Associated AKI (SSAKI)
  • Human models
  • Association of SSAKI and ?inflammatory phenotype
  • HLA genotype associated with severe AKI (Payen,
    PLoS One 2012)
  • TGF-b, TNF-a, IL-6, KC, MIP-1a, MCP-1 all linked
    to ?rates of AKI
  • Animal models
  • Initial ischemic models led to identification of
    prominent biomarkers (Devarajan, Mol Med 2003)
  • Models of sepsis in animals are JUST as
    heterogeneous as human patients
  • Degree of sepsis variable
  • observed variability in susceptibility to septic
    AKI in our models replicates that of human
    disease (Benes, Crit Care 2011)
  • Rates of AKI after sepsis inconsistent
  • Meprin 1- a elevated (though AKI was variable)
    (Holly, KI 2006)
  • Later reports indicate no correlation between
    Meprin -1 and AKI

10
Biomarkers Severe Sepsis Associated AKI (SSAKI)
  • There is a need to identify AKI biomarkers
  • Specific to patients with SSAKI
  • Especially in pediatrics
  • Limited number of studies

AKI Cr gt 2 mg/dl BUN gt 100 mg/dl
dialysis NGAL performance Sens 86
Spec 39 PPV 39
NPV 94 ROC 0.68 (0.56-0.79) Wheeler
(PCCM, 2008)
AKI Markers in SSAKI Poor Specificity Poor
Discrimination Poor Precision
11
Microarray ? biomarkers for SSAKI
  • METHODS
  • Inclusion
  • Age lt 10, diagnosis of septic shock
  • Controls from ambulatory departments
  • Whole blood derived RNA, 1st 24 hours of
    presentation
  • Microarray using Human Genome U133 Plus 2.0
    GeneChip
  • Hybridization vs. 80,000 gene probes
  • 53 normal controls used for normalization
  • SSAKI
  • Defined as gt 2x creatinine persistent to 7 days
    (resolved creatinine elevations not included)
  • Patients with mortality before 7 days were
    included
  • Outcomes
  • SSAKI Morbidity and mortality tracked to 28
    days

Basu, Crit Care, 2011
12
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
13
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
14
Testing the prediction of each patient for SSAKI
or no SSAKI using gene expression
Leave-one-out cross validation procedure for
derivation cohort (148 without SSAKI, 31 with
SSAKI)
Basu, Crit Care, 2011
15
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
16
Microarray ? biomarkers for SSAKI
  • Differentially regulated probes analyzed for
    readily measurable products
  • Protein expression readily measured in serum
  • Matrix metalloproteinase-8 (MMP-8)
  • Neutrophil elastase-2 (Ela-2)
  • Tested serum MMP-8 and Ela-2 expression versus
    development of SSAKI in derivation cohort
  • 150 samples analyzed (84)
  • 132 no SSAKI (88), 18 with SSAKI (12)

17
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
18
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
19
Microarray ? biomarkers for SSAKI
Basu, Crit Care, 2011
20
Microarray ? biomarkers for SSAKI
NGAL
86
39
39
94
Basu, Crit Care, 2011
21
Genomics ? SSAKI biomarkers
  • 1st attempt to characterize biomarkers for SA-AKI
    (vs. all cause-AKI)
  • 1st 24 hours expression of 21 gene probes
    demonstrate high reliability for prediction of
    persistent AKI
  • Protein products of two gene probes from list
    measured in serum carry high sensitivity and
    negative predictive value
  • Biological links of MMP-8 and Ela-2 to SSAKI are
    unclear
  • MMP-8 association with sepsis being investigated
    (Solan, CCM 2012)
  • Gene expression micro-array can be leveraged to
    identify putative biomarkers of SSAKI

22
Conclusions
  • Biomarkers for SSAKI will need to come from
    select patients properly stratified
  • Genomics offer a potential avenue for biomarker
    identification
  • Still in its infancy
  • Will allow for
  • Stratification of patients by severity of SSAKI
  • Patient specific decision making
  • Potential outcome variable

23
Acknowledgements
  • Cincinnati Childrens Hospital
  • Hector R. Wong
  • Stuart L. Goldstein
  • Prasad Devarajan
  • Center for Acute Care Nephrology
  • Division of Critical Care
  • Collaborators (Multiple Institutions)
  • Stephen Standage
  • Natalie Cvijanovich
  • Geoffrey Allen
  • Neal Thomas
  • Robert Freishtat
  • Nick Anas
  • Keith Meyer
  • Paul Checchia
  • Richard Lin
  • Thomas Shanley
  • Mike Bigham
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