Pantanowitz Liron, Pearce Thomas, Abukhiran Ibrahim, Hanna Matthew, Wheeler Sarah, Soong T Rinda, Tafti Ahmad P, Pantanowitz Joshua, Lu Ming Y, Mahmood Faisal, Gu Qiangqiang, Rashidi Hooman H
Department of Pathology, University of Pittsburgh Medical Center, Pittsburgh, Pennsylvania; Computational Pathology and AI Center of Excellence (CPACE), University of Pittsburgh, School of Medicine, Pittsburgh, Pennsylvania.
Department of Pathology, University of Pittsburgh Medical Center, Pittsburgh, Pennsylvania; Computational Pathology and AI Center of Excellence (CPACE), University of Pittsburgh, School of Medicine, Pittsburgh, Pennsylvania.
Mod Pathol. 2025 Mar;38(3):100680. doi: 10.1016/j.modpat.2024.100680. Epub 2024 Dec 13.
The use of artificial intelligence (AI) within pathology and health care has advanced extensively. We have accordingly witnessed an increased adoption of various AI tools that are transforming our approach to clinical decision support, personalized medicine, predictive analytics, automation, and discovery. The familiar and more reliable AI tools that have been incorporated within health care thus far fall mostly under the nongenerative AI domain, which includes supervised and unsupervised machine learning (ML) techniques. This review article explores how such nongenerative AI methods, rooted in traditional rules-based systems, enhance diagnostic accuracy, efficiency, and consistency within medicine. Key concepts and the application of supervised learning models (ie, classification and regression) such as decision trees, support vector machines, linear and logistic regression, K-nearest neighbor, and neural networks are explained along with the newer landscape of neural network-based nongenerative foundation models. Unsupervised learning techniques, including clustering, dimensionality reduction, and anomaly detection, are also discussed for their roles in uncovering novel disease subtypes or identifying outliers. Technical details related to the application of nongenerative AI algorithms for analyzing whole slide images are also highlighted. The performance, explainability, and reliability of nongenerative AI models essential for clinical decision-making is also reviewed, as well as challenges related to data quality, model interpretability, and risk of data drift. An understanding of which AI-ML models to employ and which shortcomings need to be addressed is imperative to safely and efficiently leverage, integrate, and monitor these traditional AI tools in clinical practice and research.
人工智能(AI)在病理学和医疗保健领域的应用已取得了广泛进展。相应地,我们目睹了各种人工智能工具的采用率不断提高,这些工具正在改变我们在临床决策支持、个性化医疗、预测分析、自动化和发现方面的方法。迄今为止,已纳入医疗保健领域的常见且更可靠的人工智能工具大多属于非生成式人工智能领域,其中包括监督式和无监督式机器学习(ML)技术。这篇综述文章探讨了这种基于传统规则系统的非生成式人工智能方法如何提高医学诊断的准确性、效率和一致性。文中解释了监督学习模型(即分类和回归)的关键概念及应用,如决策树、支持向量机、线性和逻辑回归、K近邻算法以及神经网络,同时也介绍了基于神经网络的非生成式基础模型的新情况。还讨论了无监督学习技术,包括聚类、降维和异常检测在发现新型疾病亚型或识别异常值方面的作用。文中还强调了与应用非生成式人工智能算法分析全切片图像相关的技术细节。对临床决策至关重要的非生成式人工智能模型的性能、可解释性和可靠性也进行了综述,以及与数据质量、模型可解释性和数据漂移风险相关的挑战。了解使用哪些人工智能-机器学习模型以及需要解决哪些缺点,对于在临床实践和研究中安全、有效地利用、整合和监控这些传统人工智能工具至关重要。