Prediction of Transfusion among In-patient Population using Temporal Pattern based Clinical Similarity Graphs.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Amara Tariq, Leon Su, Bhavik Patel, Imon Banerjee
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Abstract

Intelligent prediction of risk of blood transfusion among hospitalized patients can identify at-risk patients and provide timely information to the hospital to plan and reserve resources to meet the demand of blood transfusion. While previously proposed solutions focus on sub-populations such as patients admitted to ICU after gastrointestinal bleeding or postpartum patients with hemorrhage, we design a predictive model applicable to complete in-patient population. Our model relies on patients' similarity graph based on temporal patterns among clinical history of the patients. These graphs are processed through graph convolutional neural network (GCNN) to estimate node or patient level risk of blood transfusion. Thus, our model not only learns from the patient's own clinical history but also from other patients with similar clinical history. The model is also capable of fusing diverse data elements from electronic health records (EHR) such as demographic information, billing codes, and recorded vital signs. Our model was validated on both internal and external sets and outperformed all comparative baseline models.

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利用基于时态模式的临床相似性图预测住院病人输血情况
对住院病人输血风险的智能预测可以识别高危病人,并为医院提供及时信息,以规划和储备资源,满足输血需求。之前提出的解决方案主要针对胃肠道出血后入住重症监护室的患者或产后大出血患者等亚人群,而我们设计的预测模型适用于所有住院患者。我们的模型依赖于基于患者临床病史之间时间模式的患者相似性图。这些图通过图卷积神经网络(GCNN)进行处理,以估计节点或患者层面的输血风险。因此,我们的模型不仅能从患者自身的临床病史中学习,还能从具有相似临床病史的其他患者身上学习。该模型还能融合电子健康记录(EHR)中的各种数据元素,如人口统计信息、账单代码和记录的生命体征。我们的模型在内部和外部数据集上都得到了验证,其性能优于所有比较基线模型。
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