Frequency Domain Deep Learning With Non-Invasive Features for Intraoperative Hypotension Prediction

被引:0
作者
Moon, Jeong-Hyeon [1 ]
Lee, Garam [2 ]
Lee, Seung Mi [2 ,3 ]
Ryu, Jiho [4 ]
Kim, Dokyoon [2 ]
Sohn, Kyung-Ah [1 ]
机构
[1] Ajou Univ, Dept Artificial Intelligence, Suwon 16499, South Korea
[2] Univ Penn, Perelman Sch Med, Dept Biostat Epidemiol & Informat, Philadelphia 19104, PA USA
[3] Seoul Natl Univ, Coll Med, Dept Obstet & Gynecol, Seoul 03087, South Korea
[4] Ajou Univ, Dept Software & Comp Engn, Suwon 16499, South Korea
基金
新加坡国家研究基金会;
关键词
Hypotension; Bioinformatics; Discrete Fourier transforms; Biological system modeling; Surgery; Feature extraction; Deep learning; Fourier analysis; feature extraction; hypotension detection; NONCARDIAC SURGERY; MYOCARDIAL INJURY; ACUTE KIDNEY; ASSOCIATION; PRESSURE; OUTCOMES; RISK;
D O I
10.1109/JBHI.2024.3403109
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Background: Intraoperative hypotension can lead to postoperative organ dysfunction. Previous studies primarily used invasive arterial pressure as the key biosignal for the detection of hypotension. However, these studies had limitations in incorporating different biosignal modalities and utilizing the periodic nature of biosignals. To address these limitations, we utilized frequency-domain information, which provides key insights that time-domain analysis cannot provide, as revealed by recent advances in deep learning. With the frequency-domain information, we propose a deep-learning approach that integrates multiple biosignal modalities. Methods: We used the discrete Fourier transform technique, to extract frequency information from biosignal data, which we then combined with the original time-domain data as input for our deep learning model. To improve the interpretability of our results, we incorporated recent interpretable modules for deep-learning models into our analysis. Results: We constructed 75 994 segments from the data of 3226 patients to predict hypotension during surgery. Our proposed frequency-domain deep-learning model outperformed conventional approaches that rely solely on time-domain information. Notably, our model achieved a greater increase in AUROC performance than the time-domain deep learning models when trained on non-invasive biosignal data only (AUROC 0.898 [95% CI: 0.885-0.91] vs. 0.853 [95% CI: 0.839-0.867]). Further analysis revealed that the 1.5-3.0 Hz frequency band played an important role in predicting hypotension events. Conclusion: Utilizing the frequency domain not only demonstrated high performance on invasive data but also showed significant performance improvement when applied to non-invasive data alone. Our proposed framework offers clinicians a novel perspective for predicting intraoperative hypotension.
引用
收藏
页码:5718 / 5728
页数:11
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