Development and external validation of deep learning clinical prediction models using variable-length time series data

Author:

Bashiri Fereshteh S1ORCID,Carey Kyle A2,Martin Jennie1,Koyner Jay L2,Edelson Dana P2,Gilbert Emily R3,Mayampurath Anoop14,Afshar Majid14,Churpek Matthew M14

Affiliation:

1. Department of Medicine, University of Wisconsin-Madison , Madison, WI 53792, United States

2. Department of Medicine, University of Chicago , Chicago, IL 60637, United States

3. Department of Medicine, Loyola University , Chicago, IL 60153, United States

4. Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison , Madison, WI 53726, United States

Abstract

Abstract Objectives To compare and externally validate popular deep learning model architectures and data transformation methods for variable-length time series data in 3 clinical tasks (clinical deterioration, severe acute kidney injury [AKI], and suspected infection). Materials and Methods This multicenter retrospective study included admissions at 2 medical centers that spanned 2007-2022. Distinct datasets were created for each clinical task, with 1 site used for training and the other for testing. Three feature engineering methods (normalization, standardization, and piece-wise linear encoding with decision trees [PLE-DTs]) and 3 architectures (long short-term memory/gated recurrent unit [LSTM/GRU], temporal convolutional network, and time-distributed wrapper with convolutional neural network [TDW-CNN]) were compared in each clinical task. Model discrimination was evaluated using the area under the precision-recall curve (AUPRC) and the area under the receiver operating characteristic curve (AUROC). Results The study comprised 373 825 admissions for training and 256 128 admissions for testing. LSTM/GRU models tied with TDW-CNN models with both obtaining the highest mean AUPRC in 2 tasks, and LSTM/GRU had the highest mean AUROC across all tasks (deterioration: 0.81, AKI: 0.92, infection: 0.87). PLE-DT with LSTM/GRU achieved the highest AUPRC in all tasks. Discussion When externally validated in 3 clinical tasks, the LSTM/GRU model architecture with PLE-DT transformed data demonstrated the highest AUPRC in all tasks. Multiple models achieved similar performance when evaluated using AUROC. Conclusion The LSTM architecture performs as well or better than some newer architectures, and PLE-DT may enhance the AUPRC in variable-length time series data for predicting clinical outcomes during external validation.

Funder

National Institutes of Health

National Institute of General Medical Sciences

National Heart, Lung, and Blood Institute

National Institute of Diabetes, Digestive and Kidney Diseases

Publisher

Oxford University Press (OUP)

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