Learning using privileged information with logistic regression on acute respiratory distress syndrome detection

IF 6.1 2区 医学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence in Medicine Pub Date : 2024-08-14 DOI:10.1016/j.artmed.2024.102947
Zijun Gao , Shuyang Cheng , Emily Wittrup , Jonathan Gryak , Kayvan Najarian
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Abstract

The advanced learning paradigm, learning using privileged information (LUPI), leverages information in training that is not present at the time of prediction. In this study, we developed privileged logistic regression (PLR) models under the LUPI paradigm to detect acute respiratory distress syndrome (ARDS), with mechanical ventilation variables or chest x-ray image features employed in the privileged domain and electronic health records in the base domain. In model training, the objective of privileged logistic regression was designed to incorporate data from the privileged domain and encourage knowledge transfer across the privileged and base domains. An asymptotic analysis was also performed, yielding sufficient conditions under which the addition of privileged information increases the rate of convergence in the proposed model. Results for ARDS detection show that PLR models achieve better classification performances than logistic regression models trained solely on the base domain, even when privileged information is partially available. Furthermore, PLR models demonstrate performance on par with or superior to state-of-the-art models under the LUPI paradigm. As the proposed models are effective, easy to interpret, and highly explainable, they are ideal for other clinical applications where privileged information is at least partially available.

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利用特权信息和逻辑回归对急性呼吸窘迫综合征的检测进行学习
高级学习范式,即使用特权信息学习(LUPI),在训练中利用预测时不存在的信息。在本研究中,我们在 LUPI 范式下开发了特权逻辑回归(PLR)模型来检测急性呼吸窘迫综合征(ARDS),特权域采用机械通气变量或胸部 X 光图像特征,基础域采用电子健康记录。在模型训练中,特权逻辑回归的目标是纳入特权域的数据,并鼓励在特权域和基础域之间进行知识转移。此外,还进行了渐近分析,得出了增加特权信息可提高拟议模型收敛速度的充分条件。ARDS 检测结果表明,即使在特权信息部分可用的情况下,PLR 模型的分类性能也优于仅在基域上训练的逻辑回归模型。此外,在 LUPI 范式下,PLR 模型的性能与最先进的模型相当或更胜一筹。由于所提出的模型有效、易于解释、可解释性强,因此非常适合于至少有部分特权信息的其他临床应用。
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来源期刊
Artificial Intelligence in Medicine
Artificial Intelligence in Medicine 工程技术-工程:生物医学
CiteScore
15.00
自引率
2.70%
发文量
143
审稿时长
6.3 months
期刊介绍: Artificial Intelligence in Medicine publishes original articles from a wide variety of interdisciplinary perspectives concerning the theory and practice of artificial intelligence (AI) in medicine, medically-oriented human biology, and health care. Artificial intelligence in medicine may be characterized as the scientific discipline pertaining to research studies, projects, and applications that aim at supporting decision-based medical tasks through knowledge- and/or data-intensive computer-based solutions that ultimately support and improve the performance of a human care provider.
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