Integrating Physiological Time Series and Clinical Notes with
Transformer for Early Prediction of Sepsis
- URL: http://arxiv.org/abs/2203.14469v1
- Date: Mon, 28 Mar 2022 03:19:03 GMT
- Title: Integrating Physiological Time Series and Clinical Notes with
Transformer for Early Prediction of Sepsis
- Authors: Yuqing Wang, Yun Zhao, Rachael Callcut, Linda Petzold
- Abstract summary: Sepsis is a leading cause of death in the Intensive Care Units (ICU)
We propose a multimodal Transformer model for early sepsis prediction.
We use the physiological time series data and clinical notes for each patient within $36$ hours of ICU admission.
- Score: 10.791880225915255
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Sepsis is a leading cause of death in the Intensive Care Units (ICU). Early
detection of sepsis is critical for patient survival. In this paper, we propose
a multimodal Transformer model for early sepsis prediction, using the
physiological time series data and clinical notes for each patient within $36$
hours of ICU admission. Specifically, we aim to predict sepsis using only the
first 12, 18, 24, 30 and 36 hours of laboratory measurements, vital signs,
patient demographics, and clinical notes. We evaluate our model on two large
critical care datasets: MIMIC-III and eICU-CRD. The proposed method is compared
with six baselines. In addition, ablation analysis and case studies are
conducted to study the influence of each individual component of the model and
the contribution of each data modality for early sepsis prediction.
Experimental results demonstrate the effectiveness of our method, which
outperforms competitive baselines on all metrics.
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