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Deep Neural Models for Chronic Disease Status Detection in Free Text Clinical Records

机译:自由文本临床记录中用于慢性病状态检测的深度神经模型

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Timely identification or prediction of a disease status can be a boon to patient's life. The elements that can detect the diseases status are mostly present in free text clinical records; these records contain private information about the patients. The time-consuming manual process to identify the disease status from these clinical records can be error-prone and comes with an expense. Hence the need to automate or semi automate this process is felt in the community. In this paper, we have used deep learning techniques on the publically available i2b2 clinical datasets to detect the chronic disease status, leading to promising results.
机译:及时识别或预测疾病状态可能会给患者的生活带来福音。可以在自由文本临床记录中找到可以检测疾病状态的要素;这些记录包含有关患者的私人信息。从这些临床记录中识别疾病状态的耗时的手动过程可能容易出错,并且会产生费用。因此,在社区中感到需要使该过程自动化或半自动化。在本文中,我们在可公开获得的i2b2临床数据集上使用了深度学习技术来检测慢性疾病状态,从而产生了可喜的结果。

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