Transformer-based time-to-event prediction for chronic kidney disease deterioration

被引:2
|
作者
Zisser, Moshe [1 ]
Aran, Dvir [2 ,3 ]
机构
[1] Technion Israel Inst Technol, Fac Data & Decis Sci, IL-3200003 Haifa, Israel
[2] Technion Israel Inst Technol, Fac Biol, Sderot David Rose 21, IL-3200003 Haifa, Israel
[3] Technion Israel Inst Technol, Taub Fac Comp Sci, IL-3200003 Haifa, Israel
关键词
deep-learning; transformer; survival analysis; clinical data; chronic kidney disease; SURVIVAL;
D O I
10.1093/jamia/ocae025
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objective Deep-learning techniques, particularly the Transformer model, have shown great potential in enhancing the prediction performance of longitudinal health records. Previous methods focused on fixed-time risk prediction, however, time-to-event prediction is often more appropriate for clinical scenarios. Here, we present STRAFE, a generalizable survival analysis Transformer-based architecture for electronic health records.Materials and Methods The input for STRAFE is a sequence of visits with SNOMED-CT codes in OMOP-CDM format. A Transformer-based architecture was developed to calculate probabilities of the occurrence of the event in each of 48 months. Performance was evaluated using a real-world claims dataset of over 130 000 individuals with stage 3 chronic kidney disease (CKD).Results STRAFE showed improved mean absolute error (MAE) compared to other time-to-event algorithms in predicting the time to deterioration to stage 5 CKD. Additionally, STRAFE showed an improved area under the receiver operating curve compared to binary outcome algorithms. We show that STRAFE predictions can improve the positive predictive value of high-risk patients by 3-fold. Finally, we suggest a novel visualization approach to predictions on a per-patient basis.Discussion Time-to-event predictions are the most appropriate approach for clinical predictions. Our deep-learning algorithm outperformed not only other time-to-event prediction algorithms but also fixed-time algorithms, possibly due to its ability to train on censored data. We demonstrated possible clinical usage by identifying the highest-risk patients.Conclusions The ability to accurately identify patients at high risk and prioritize their needs can result in improved health outcomes, reduced costs, and more efficient use of resources.
引用
收藏
页码:980 / 990
页数:11
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