| Literature DB >> 28624882 |
Simona Pozzoli1, Marco Simonini2, Paolo Manunta1.
Abstract
Acute kidney injury (AKI) is characterized by an acute decline in renal function and is associated to increased mortality rate, hospitalization time, and total health-related costs. The severity of this 'fearsome' clinical complication might depend on, or even be worsened by, the late detection of AKI, when the diagnosis is based on the elevation of serum creatinine (SCr). For these reasons, in recent years a great number of new tools, biomarkers and predictive models have been proposed to clinicians in order to improve diagnosis and prevent the development of AKI. The purpose of this narrative paper is to review the current state of the art in prediction and early detection of AKI and outline future challenges.Entities:
Keywords: Acute kidney injury; Biomarkers; Genetics; New OMICs; Prediction
Mesh:
Substances:
Year: 2017 PMID: 28624882 PMCID: PMC5829133 DOI: 10.1007/s40620-017-0416-8
Source DB: PubMed Journal: J Nephrol ISSN: 1121-8428 Impact factor: 3.902
Overview of the most recent and promising biomarkers for early detection of AKI
| Biomarker | Settings studied | Source | Measured from | Used for | Diagnostic accuracy (ROC) |
|---|---|---|---|---|---|
| NGAL | Cardiac surgery, ER, hospitalized patients, kidney Tx, sepsis, critically-ill patients | Leukocytes, loop of henle and collecting ducts | Serum plasma | Detection of established AKI, early diagnosis, prognosis | 0.53–0.96 |
| Urine | |||||
| Cystatin-C | Hospitalized patients, cardiac surgery | Nucleated cells | Serum plasma | Detection of established AKI, early diagnosis, prognosis | 0.79–0.89 |
| Urine | |||||
| KIM-1 | Hospitalized patients, cardiac surgery | Proximal tubular cells | Urine | Increased risk of AKI, established AKI, prognosis | 0.61–0.78 |
| IL-18 | Cardiac surgery, ICU, hospitalized patients, Tx | Monocytes, dendritic cells, macrophages | Urine | Detection of established AKI, early diagnosis, prognosis | 0.70–0.95 |
| FABPs | Contrast nephropathy, Sepsis, cardiac surgery, ischemic/reperfusion injury | Hepatocytes, proximal tubular cells | Urine | Detection of established AKI, progression to CKD | 0.84–0.96 |
| TIMP-2 and IGFBP7 | Major surgery, sepsis, shock, trauma | Tubular epithelial cells | Urine | Detection of established AKI, prognosis | 0.76–0.85 |
| EO | Cardiac surgery | Adrenal cells | Plasma | Identification of patients with increased risk of AKI | 0.73–0.80 |
EO endogenous ouabain, ER emergency room, FABPs fatty acid-binding proteins, ICU intensive care unit, IGFBP7 insulin-like growth factor-binding protein 7, IL-18 interleukin-18, KIM-1 kidney injury molecule-1, NGAL neutrophil gelatinase-associated lipocalin, ROC receiver operating characteristic curve, TIMP2 tissue inhibitor of metalloproteinases 2, Tx transplantation
Fig. 1AKI development: distribution of various diagnostic tools across the timeline of the development of acute kidney injury. Clinical predictive models, identification of a favorable genetic background and biomarkers of individual susceptibility (like EO or KIM-1) could be used to identify patients with an increased risk of renal complication. All the other new biomarkers and useful diagnostic tools might be used to determine diagnosis of AKI as early as possible after the damage has occurred
Overview of the most important clinical predictive models of post-surgical AKI
| Model name | CICSS | Cleveland clinic | STS | SRI | MCSPI | AKICS | NNECDSG | CLIN-RISK |
|---|---|---|---|---|---|---|---|---|
| First author | Chertow | Thakar | Mehta | Wijeysundera | Aronson | Palomba | Brown | Simonini |
| Year of study | 1987–1994 | 1993–2002 | 2002–2004 | 1999–2004 | 1996–2000 | 2003–2005 | 2001–2005 | 2009–2012 |
| Number of patients | 42,733 | 15,838 | 449,525 | 10,751 | 2381 | 603 | 8363 | 802 |
| Outcome (%) | AKI-D (1.1) | AKI-D (1.7) | AKI-D (1.4) | AKI-D (1.3) | AKI-ND (4.8) | AKI-ND (11) | AKI-ND (3) | AKI-ND (9.9) |
| ROC | 0.76 | 0.81 | 0.84 | 0.81 | 0.84 | 0.84 | 0.72 | 0.79 |
| Validation (ROC) | Yes (0.71–0.78) | Yes (0.66–0.86) | Yes (0.75–0.81) | Yes (0.73–0.79) | Yes# (0.80) | Yes# (0.85) | Yes (0.76) | No |
| Number of variables | 7 | 13 | 10 | 8 | 8 | 8 | 11 | 8 |
| Demographics | X | X | X | X | X | X | ||
| Clinical | X | X | X | X | X | X | X | X |
| Operation type | X | X | X | X | X | X | ||
| Intraoperative | X | X | ||||||
| Postoperative | X |
AKI-D AKI requiring dialysis, AKI-ND AKI not requiring dialysis, AKICS Acute Kidney Injury After Cardiac Surgery Score, CICSS Continuous Improvement in Cardiac Surgery Study, CLIN-RISK Clinical Risk Score for AKI, MCSPI Multicenter Study of Perioperative Ischemia Score, NNECDSG Northern New England Cardiovascular Disease Study Group Score, SRI simplified renal index, STS Society of Thoracic Surgeons Bedside Risk Tool
#Only internal validation