Department of Surgery, University of Florida Health, Gainesville, FL, USA.
Department of Medicine, University of Florida Health, Gainesville, FL, USA.
Nat Rev Nephrol. 2022 Jul;18(7):452-465. doi: 10.1038/s41581-022-00562-3. Epub 2022 Apr 22.
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.
肾脏生理学通常较为复杂、非线性且异质,这限制了假设演绎推理和线性、统计方法在诊断和治疗中的应用。新出现的证据表明,人工智能 (AI) 支持的决策支持系统——使用基于学习示例的算法——可能在肾脏病学中发挥重要作用。当代 AI 应用程序可以在显著的生化变化发生之前准确预测急性肾损伤的发生;可以识别慢性肾脏病发病和进展的可改变风险因素;可以在影像学研究中识别肾脏肿瘤的准确性与人类相当甚至更高;并可能在肾移植后增强预后和决策制定。未来的 AI 应用程序有可能实时、持续地针对离散动作提出建议,并最大限度地提高实现最佳肾脏健康结果的可能性。要实现 AI 应用程序的临床整合,需要合作、多学科的承诺,以确保算法的公平性,克服临床实施的障碍,并建立具备 AI 能力的劳动力。AI 支持的决策支持应保持智慧的卓越地位,并增强而不是取代人类决策。通过用客观预测和分类来锚定直觉,这种方法应该在经验磨练的直觉受到青睐时发挥作用。