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Machine learning approaches toward an understanding of acute kidney injury: current trends and future directions. | LitMetric

AI Article Synopsis

  • Acute kidney injury (AKI) poses serious health risks and financial burdens, prompting efforts to prevent and predict it using artificial intelligence (AI).
  • Recent advancements in AI show potential for early detection of AKI and prognosis prediction, but integrating these systems into everyday clinical practice remains difficult due to data challenges and model limitations.
  • To enhance the effectiveness of AI in predicting AKI, it's important to establish standardized criteria, encourage international collaboration for better data collection, and improve the reliability of AI outputs in real-world healthcare settings.

Article Abstract

Acute kidney injury (AKI) is a significant health challenge associated with adverse patient outcomes and substantial economic burdens. Many authors have sought to prevent and predict AKI. Here, we comprehensively review recent advances in the use of artificial intelligence (AI) to predict AKI, and the associated challenges. Although AI may detect AKI early and predict prognosis, integration of AI-based systems into clinical practice remains challenging. It is difficult to identify AKI patients using retrospective data; information preprocessing and the limitations of existing models pose problems. It is essential to embrace standardized labeling criteria and to form international multi-institutional collaborations that foster high-quality data collection. Additionally, existing constraints on the deployment of evolving AI technologies in real-world healthcare settings and enhancement of the reliabilities of AI outputs are crucial. Such efforts will improve the clinical applicability, performance, and reliability of AKI Clinical Support Systems, ultimately enhancing patient prognoses.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11569930PMC
http://dx.doi.org/10.3904/kjim.2024.098DOI Listing

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