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首页> 外文期刊>Scientific reports. >Benchmarking Deep Learning Architectures for Predicting Readmission to the ICU and Describing Patients-at-Risk
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Benchmarking Deep Learning Architectures for Predicting Readmission to the ICU and Describing Patients-at-Risk

机译:基准深入学习架构,用于预测ICU的再入院,并描述患者风险

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To compare different deep learning architectures for predicting the risk of readmission within 30 days of discharge from the intensive care unit (ICU). The interpretability of attention-based models is leveraged to describe patients-at-risk. Several deep learning architectures making use of attention mechanisms, recurrent layers, neural ordinary differential equations (ODEs), and medical concept embeddings with time-aware attention were trained using publicly available electronic medical record data (MIMIC-III) associated with 45,298 ICU stays for 33,150 patients. Bayesian inference was used to compute the posterior over weights of an attention-based model. Odds ratios associated with an increased risk of readmission were computed for static variables. Diagnoses, procedures, medications, and vital signs were ranked according to the associated risk of readmission. A recurrent neural network, with time dynamics of code embeddings computed by neural ODEs, achieved the highest average precision of 0.331 (AUROC: 0.739, F 1 -Score: 0.372). Predictive accuracy was comparable across neural network architectures. Groups of patients at risk included those suffering from infectious complications, with chronic or progressive conditions, and for whom standard medical care was not suitable. Attention-based networks may be preferable to recurrent networks if an interpretable model is required, at only marginal cost in predictive accuracy.
机译:比较不同的深度学习架构,以预测从重症监护单元(ICU)排放后30天内入院风险。利用关注的模型的可解释性来描述患者风险。利用注意机制,经常性层,神经常规方程(ODES)和医学概念嵌入的几个深度学习架构,以及使用与45,298 ICU相关的可公开的电子医疗数据(MIMIC-III)培训时感受到时间感知注意力的培训33,150名患者。贝叶斯推断用于计算基于关注的模型的重量后面。计算与再次入院风险增加的差距,用于静态变量。根据随访的相关风险排名诊断,程序,药物和生命体征。经常性的神经网络,通过神经杂物计算的代码嵌入时间的时间动态,实现了0.331的最高平均精度(AUCOC:0.739,F 1-CORE:0.372)。在神经网络架构上的预测准确性相当。患者的患者患者包括患有传染性并发​​症的患者,慢性或渐进条件,以及标准医疗保健不合适。如果需要可解释的模型,则基于关注的网络可能是优选的经复制网络,仅在预测准确度下的边际成本。

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