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Lifelong Learning Based Disease Diagnosis on Clinical Notes

机译:基于终身学习的疾病诊断临床笔记

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Current deep learning based disease diagnosis systems usually fall short in catastrophic forgetting, i.e., directly fine-tuning the disease diagnosis model on new tasks usually leads to abrupt decay of performance on previous tasks. What is worse, the trained diagnosis system would be fixed once deployed but collecting training data that covers enough diseases is infeasible, which inspires us to develop a lifelong learning diagnosis system. In this work, we propose to adopt attention to combine medical entities and context, embedding episodic memory and consolidation to retain knowledge, such that the learned model is capable of adapting to sequential disease-diagnosis tasks. Moreover, we establish a new benchmark, named Jarvis-40, which contains clinical notes collected from various hospitals. Experiments show that the proposed method can achieve state-of-the-art performance on the proposed benchmark.
机译:目前的深度学习疾病诊断系统通常在灾难性遗忘中缺乏短暂,即,直接微调新任务的疾病诊断模型通常会导致以前任务的突然衰退。 更糟糕的是,训练有素的诊断系统一旦部署但收集患有足够疾病的培训数据是不可行的,这激励我们开发终身学习诊断系统。 在这项工作中,我们建议采取注意,将医学实体和背景结合,嵌入了集中记忆和整合以保留知识,使得学习模式能够适应连续疾病诊断任务。 此外,我们建立了一个名为Jarvis-40的新基准,其中包含从各种医院收集的临床票据。 实验表明,该方法可以在所提出的基准上实现最先进的性能。

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