隐藏的患者联系:利用超图神经网络预测临床通信中的激素治疗停药情况

Qingyuan Song, Yunfei Hu, Congning Ni, Zhijun Yin
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引用次数: 0

摘要

激素疗法是乳腺癌患者的重要辅助治疗手段,但停药的情况并不少见。本文的目的是对临床沟通建模进行研究,以预测激素治疗药物的停药情况。值得注意的是,我们利用超图神经网络捕捉了从临床交流中推断出的患者的隐藏联系。结合临床通讯内容以及人口统计学、保险和癌症分期信息,我们的模型达到了 67.9% 的 AUC,明显优于其他基线,如图卷积网络(65.3%)、随机森林(62.7%)和支持向量机(62.8%)。我们的研究表明,将临床通信中编码的隐藏患者联系纳入预测模型可提高其性能。未来的研究将考虑结合结构化医疗记录和临床通讯,以更好地预测停药情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Hidden Patient Connections: Predicting Hormonal Therapy Medication Discontinuation Using Hypergraph Neural Network on Clinical Communications.

Hormonal therapy is an important adjuvant treatment for breast cancer patients, but medication discontinuation of such therapy is not uncommon. The goal of this paper is to conduct research on the modeling of clinic communications, which have shown value in understanding medication discontinuation, to predict the discontinuation of hormonal therapy medications. Notably, we leveraged the Hypergraph Neural Network to capture the hidden connections of patients that were inferred from clinical communications. Combining the content of clinical communications as well as the demographics, insurance, and cancer stage information, our model achieved an AUC of 67.9%, which significantly outperformed other baselines such as Graph Convolutional Network (65.3%), Random Forest (62.7%), and Support Vector Machine (62.8%). Our study suggested that incorporating the hidden patient connections encoded in clinical communications into prediction models could boost their performance. Future research would consider combining structured medical records and clinical communications to better predict medication discontinuation.

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