Projects per year
Abstract
(ICU) and other settings. They affect the quality and reliability of clinical research and patient care. Manual annotation of artifacts is costly and time-consuming, rendering it impractical. Automated methods are desired. Here, we propose a novel fully unsupervised approach to detect artifacts in clinical-standard, minute-by-minute resolution ICU data without any prior labeling or signal-specific knowledge. Our approach combines a variational autoencoder (VAE) and an isolation forest (IF) into a hybrid model to learn features and identify anomalies in different types of vital signs, such as blood pressure, heart rate, and intracranial pressure. We evaluate our approach on a real-world ICU dataset and compare it with supervised benchmark models based on long short-term memory (LSTM) and XGBoost and statistical methods such as ARIMA. We show that our unsupervised approach achieves comparable sensitivity to fully supervised methods and generalizes well to an external dataset. We also visualize the latent space learned by the VAE and demonstrate its ability to disentangle clean and noisy samples. Our approach offers a promising solution for cleaning ICU data in clinical research and practice without the need for any labels whatsoever.
Original language | Undefined/Unknown |
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Article number | 109610 |
Journal | Computers in Biology and Medicine |
Volume | 186 |
Early online date | 31 Dec 2024 |
DOIs | |
Publication status | E-pub ahead of print - 31 Dec 2024 |
Projects
- 1 Finished
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Data-driven anomaly detection in ICU signals with denoising autoencoders
2/03/20 → 31/03/22
Project: Research