论文标题
通过控制深神经网络的更新过程,连续诊断和预后
Continuous Diagnosis and Prognosis by Controlling the Update Process of Deep Neural Networks
论文作者
论文摘要
连续诊断和预后对于重症监护患者至关重要。它可以为及时治疗和合理资源分配提供更多机会,尤其是对于ICU的主要死亡原因而言,败血症和新的全球流行病Covid-19。尽管深度学习方法在许多医疗任务中表现出了极大的优势,但在连续模式下进行诊断和预后时,它们往往会灾难性地忘记,过度贴合,并获得结果太晚。在这项工作中,我们总结了这项任务的三个要求,提出了一个新概念,即时间序列(CCTS),并设计了一种新颖的模型培训方法,即神经网络(RU)的限制更新策略。在连续预后的背景下,我们的方法的表现优于所有基准,并在败血症预后,Covid-19死亡率预测和八种疾病分类方面达到了90%,97%和85%的平均准确性。优秀的是,我们的方法还可以赋予深入的学习能力,具有探索疾病机制并为医学研究提供新的地平线。我们已经实现了败血症和Covid-19的疾病分期,分别发现了四个阶段和典型的生物标志物。此外,我们的方法是一种数据不合时宜的和模型的插件,可用于连续预测其他疾病,并在其他领域中进行分期甚至实施CCT。
Continuous diagnosis and prognosis are essential for intensive care patients. It can provide more opportunities for timely treatment and rational resource allocation, especially for sepsis, a main cause of death in ICU, and COVID-19, a new worldwide epidemic. Although deep learning methods have shown their great superiority in many medical tasks, they tend to catastrophically forget, over fit, and get results too late when performing diagnosis and prognosis in the continuous mode. In this work, we summarized the three requirements of this task, proposed a new concept, continuous classification of time series (CCTS), and designed a novel model training method, restricted update strategy of neural networks (RU). In the context of continuous prognosis, our method outperformed all baselines and achieved the average accuracy of 90%, 97%, and 85% on sepsis prognosis, COVID-19 mortality prediction, and eight diseases classification. Superiorly, our method can also endow deep learning with interpretability, having the potential to explore disease mechanisms and provide a new horizon for medical research. We have achieved disease staging for sepsis and COVID-19, discovering four stages and three stages with their typical biomarkers respectively. Further, our method is a data-agnostic and model-agnostic plug-in, it can be used to continuously prognose other diseases with staging and even implement CCTS in other fields.