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Artificial intelligence and predictive models for early detection of acute kidney injury: transforming clinical practice

Tu T. Tran, Giae Yun, Sejoong Kim

2024BMC Nephrology24 citationsDOIOpen Access PDF

Abstract

Acute kidney injury (AKI) presents a significant clinical challenge due to its rapid progression to kidney failure, resulting in serious complications such as electrolyte imbalances, fluid overload, and the potential need for renal replacement therapy. Early detection and prediction of AKI can improve patient outcomes through timely interventions. This review was conducted as a narrative literature review, aiming to explore state-of-the-art models for early detection and prediction of AKI. We conducted a comprehensive review of findings from various studies, highlighting their strengths, limitations, and practical considerations for implementation in healthcare settings. We highlight the potential benefits and challenges of their integration into routine clinical care and emphasize the importance of establishing robust early-detection systems before the introduction of artificial intelligence (AI)-assisted prediction models. Advances in AI for AKI detection and prediction are examined, addressing their clinical applicability, challenges, and opportunities for routine implementation.

Topics & Concepts

MedicineAcute kidney injuryIntensive care medicineNarrative reviewNephrologyRenal replacement therapyPsychological interventionClinical PracticeHealth careInternal medicinePhysical therapyPsychiatryEconomic growthEconomicsAcute Kidney Injury ResearchChronic Kidney Disease and DiabetesRenal and Vascular Pathologies
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