| Literature DB >> 31809623 |
Zhu Liduzi Jiesisibieke1, Tao-Hsin Tung2,3, Qin-Yi Xu1, Pei-En Chen4, Shih-Yung Hsu5, Yongguang Liu6, Ching-Wen Chien1.
Abstract
Aim: The objective of this study was to assess whether an elderly patient's frailty was associated with acute kidney injury (AKI) and to examine whether severe frailty group had an increased risk of AKI than mild-moderate group.Entities:
Keywords: Acute kidney injury; elderly; frailty
Mesh:
Year: 2019 PMID: 31809623 PMCID: PMC6913666 DOI: 10.1080/0886022X.2019.1679644
Source DB: PubMed Journal: Ren Fail ISSN: 0886-022X Impact factor: 2.606
Figure 1.PRISMA study flow chart.
Characteristics of included studies.
| Number | Study, year, country, database used | Study Design | Study Duration | Study subjects | Mean age of study subjects | Assigned Groups | Outcomes | NOS Scorea |
|---|---|---|---|---|---|---|---|---|
| 1 | Khaled Abdel-Kader, 2018, USA, Pubmed | Secondary analysis of a prospective cohort study | 4 years | 243 AKI | 57(AKI); | According to Clinical Frailty Scale, patients are classified to 7 groups. | AKI was associated with higher CFS scores at 3 and 12 months. | S**** |
| 2 | Bellal Joseph, 2016, USA, Pubmed | Prospective cohort study | 2 years | 93 Nonfrail; | 68.52 ± 9.55(Non-frail); | AKI and No-AKI | Frail patients were more likely to develop AKI. (P = 0.03) | S*** |
| 3 | Sarah Marton, 2018, UK, Pubmed | Prospective cohort study | 2 weeks following admission | 31 AKI | 82.6 ± 7.5(AKI); | Severe frailty | Severe frailty was associated with AKI (p = 0.01). | S** |
| 4 | Seon Ha Beak, 2016, Korea, | Retrospective cohort study | 1 year | 183 mild frail; | 73.8 ± 4.7(mild frail); | AKI and Non-AKI | The frailest group had an increased risk of AKI than other groups. | S**** |
ascale domains: S-selection of study group; C-comparability; O-outcome assessment
Figure 2.Odds of AKI in elder patients with frailty. CI: confidence interval; SE: standard error.
Figure 3.Risk of AKI in elder patients with frailty. CI: confidence interval; SE: standard error.
Risk of bias assessment using ROBINS-I.
| Author | Types of research | Pre-intervention | At intervention | Postintervention | Total | ||||
|---|---|---|---|---|---|---|---|---|---|
| Bias due to confounding | Bias in selection of participants into study | Bias in classification of interventions | Bias due to deviations from intended interventions | Bias due to missing | Bias in measurement of outcomes | Bias in selection of the reported outcomes | Total bias | ||
| Khaled Abdel-Kader (2018) | Prospective cohort study | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk |
| Bellal Joseph (2016) | Prospective cohort study | Low risk | Moderate risk | Low risk | Moderate risk | Low risk | Low risk | Low risk | Low risk |
| Sarah Marton (2018) | Prospective cohort study | Low risk | Moderate risk | Low risk | Low risk | Low risk | Moderate risk | Low risk | Moderate risk |
| Seon Ha Beak (2016) | Retrospective cohort study | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk | Low risk |