Interpretable Machine Learning in Healthcare through Generalized Additive Model with Pairwise Interactions (GA2M): Predicting Severe Retinopathy of Prematurity

Tamer Karatekin, S. Sancak, G. Celik, S. Topçuoğlu, G. Karatekin, Pınar Kırcı, A. Okatan
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引用次数: 17

Abstract

We have investigated the risk factors that lead to severe retinopathy of prematurity using statistical analysis and logistic regression as a form of generalized additive model (GAM) with pairwise interaction terms (GA2M). In this process, we discuss the trade-off between accuracy and interpretability of these machine learning techniques on clinical data. We also confirm the intuition of expert neonatologists on a few risk factors, such as gender, that were previously deemed as clinically not significant in RoP prediction.
通过具有两两相互作用的广义加性模型(GA2M)在医疗保健中的可解释机器学习:预测早产儿严重视网膜病变
我们研究了导致早产儿严重视网膜病变的危险因素,使用统计分析和逻辑回归作为具有两两相互作用项(GA2M)的广义加性模型(GAM)的一种形式。在这个过程中,我们讨论了这些机器学习技术在临床数据上的准确性和可解释性之间的权衡。我们还证实了新生儿专家对一些危险因素(如性别)的直觉,这些因素以前被认为在临床上对RoP预测不重要。
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