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Identifying Patients at Risk for Aortic Stenosis Through Learning from Multimodal Data

机译:通过从多模态数据中学习识别出存在主动脉瓣狭窄风险的患者

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In this paper we present a new method of uncovering patients with aortic valve diseases in large electronic health record systems through learning with multimodal data. The method automatically extracts clinically-relevant valvular disease features from five multimodal sources of information including structured diagnosis, echocardiogram reports, and echocardiogram imaging studies. It combines these partial evidence features in a random forests learning framework to predict patients likely to have the disease. Results of a retrospective clinical study from a 1000 patient dataset are presented that indicate that over 25 % new patients with moderate to severe aortic stenosis can be automatically discovered by our method that were previously missed from the records.
机译:在本文中,我们介绍了一种通过学习多模式数据在大型电子健康记录系统中发现主动脉瓣疾病患者的新方法。该方法从五种多模式信息源中自动提取与临床相关的瓣膜疾病特征,包括结构化诊断,超声心动图报告和超声心动图成像研究。它在随机森林学习框架中结合了这些部分证据特征,以预测可能患有该病的患者。提出了一项来自1000名患者数据集的回顾性临床研究结果,这些结果表明,使用我们的方法可以自动发现超过25%的中度至重度主动脉瓣狭窄的新患者,而这些患者以前是记录中所遗漏的。

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