TY - GEN
T1 - Multi-modal Contrastive Learning for Healthcare Data Analytics
AU - Li, Rui
AU - Gao, Jing
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - Electronic Health Record (EHR) is a digital version of patient's medical charts. EHR consists of longitudinal multi-modal data including demographics, diagnosis, clinical notes and clinical features. Plenty of data analytics works have been performed on EHR data. Among them, predictive modeling has been widely explored and most researches use single modality to perform the prediction task. Comparing with previous researches using single modal data, utilizing the multi-modal data can boost the prediction performance for a variety of downstream tasks. In this paper, in order to maintain the hierarchy of diagnosis codes, we embed diagnosis codes in hyperbolic space, and we utilize a hyperbolic transformer to model the sequential diagnosis information in multiple admissions. Meanwhile, we use multi-modal contrastive loss to capture the relation between diagnosis and clinical features. And we propose supervised contrastive loss in the multi-label setting. We perform two downstream tasks including diagnosis prediction and mortality prediction on two public datasets. Experiments on real-world datasets demonstrate the effectiveness of multi-modal contrastive loss in healthcare.
AB - Electronic Health Record (EHR) is a digital version of patient's medical charts. EHR consists of longitudinal multi-modal data including demographics, diagnosis, clinical notes and clinical features. Plenty of data analytics works have been performed on EHR data. Among them, predictive modeling has been widely explored and most researches use single modality to perform the prediction task. Comparing with previous researches using single modal data, utilizing the multi-modal data can boost the prediction performance for a variety of downstream tasks. In this paper, in order to maintain the hierarchy of diagnosis codes, we embed diagnosis codes in hyperbolic space, and we utilize a hyperbolic transformer to model the sequential diagnosis information in multiple admissions. Meanwhile, we use multi-modal contrastive loss to capture the relation between diagnosis and clinical features. And we propose supervised contrastive loss in the multi-label setting. We perform two downstream tasks including diagnosis prediction and mortality prediction on two public datasets. Experiments on real-world datasets demonstrate the effectiveness of multi-modal contrastive loss in healthcare.
KW - diagnosis prediction
KW - hyperbolic neural networks
KW - mortality prediction
KW - multi-modal contrastive learning
UR - https://www.scopus.com/pages/publications/85139022226
U2 - 10.1109/ICHI54592.2022.00029
DO - 10.1109/ICHI54592.2022.00029
M3 - Conference contribution
AN - SCOPUS:85139022226
T3 - Proceedings - 2022 IEEE 10th International Conference on Healthcare Informatics, ICHI 2022
SP - 120
EP - 127
BT - Proceedings - 2022 IEEE 10th International Conference on Healthcare Informatics, ICHI 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 10th IEEE International Conference on Healthcare Informatics, ICHI 2022
Y2 - 11 June 2022 through 14 June 2022
ER -