Lu Sheng-Chieh, Swisher Christine L, Chung Caroline, Jaffray David, Sidey-Gibbons Chris
Section of Patient-Centered Analytics, Division of Internal Medicine, The University of Texas MD Anderson Cancer Center, Houston, TX, United States.
The Ronin Project, San Mateo, CA, United States.
Front Oncol. 2023 Feb 28;13:1129380. doi: 10.3389/fonc.2023.1129380. eCollection 2023.
Machine learning-based tools are capable of guiding individualized clinical management and decision-making by providing predictions of a patient's future health state. Through their ability to model complex nonlinear relationships, ML algorithms can often outperform traditional statistical prediction approaches, but the use of nonlinear functions can mean that ML techniques may also be less interpretable than traditional statistical methodologies. While there are benefits of intrinsic interpretability, many model-agnostic approaches now exist and can provide insight into the way in which ML systems make decisions. In this paper, we describe how different algorithms can be interpreted and introduce some techniques for interpreting complex nonlinear algorithms.
基于机器学习的工具能够通过预测患者未来的健康状况来指导个性化的临床管理和决策。通过其对复杂非线性关系进行建模的能力,机器学习算法通常可以超越传统的统计预测方法,但使用非线性函数可能意味着机器学习技术的可解释性也可能比传统统计方法更低。虽然内在可解释性有其好处,但现在存在许多与模型无关的方法,这些方法可以深入了解机器学习系统的决策方式。在本文中,我们描述了如何解释不同的算法,并介绍了一些解释复杂非线性算法的技术。