直觉
医学
肾病科
肾脏疾病
重症监护医学
人工智能
临床决策
决策支持系统
肾移植
机器学习
风险分析(工程)
移植
计算机科学
内科学
认知科学
心理学
作者
Tyler J. Loftus,Benjamin Shickel,Tezcan Ozrazgat‐Baslanti,Yuanfang Ren,Benjamin S. Glicksberg,Jie Cao,Karandeep Singh,Lili Chan,Girish N. Nadkarni,Azra Bihorac
标识
DOI:10.1038/s41581-022-00562-3
摘要
Kidney pathophysiology is often complex, nonlinear and heterogeneous, which limits the utility of hypothetical-deductive reasoning and linear, statistical approaches to diagnosis and treatment. Emerging evidence suggests that artificial intelligence (AI)-enabled decision support systems - which use algorithms based on learned examples - may have an important role in nephrology. Contemporary AI applications can accurately predict the onset of acute kidney injury before notable biochemical changes occur; can identify modifiable risk factors for chronic kidney disease onset and progression; can match or exceed human accuracy in recognizing renal tumours on imaging studies; and may augment prognostication and decision-making following renal transplantation. Future AI applications have the potential to make real-time, continuous recommendations for discrete actions and yield the greatest probability of achieving optimal kidney health outcomes. Realizing the clinical integration of AI applications will require cooperative, multidisciplinary commitment to ensure algorithm fairness, overcome barriers to clinical implementation, and build an AI-competent workforce. AI-enabled decision support should preserve the pre-eminence of wisdom and augment rather than replace human decision-making. By anchoring intuition with objective predictions and classifications, this approach should favour clinician intuition when it is honed by experience.
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