Hybrid Deep Learning-Based Enhanced Occlusion Segmentation in PICU Patient Monitoring

IF 2.7 Q3 ENGINEERING, BIOMEDICAL IEEE Open Journal of Engineering in Medicine and Biology Pub Date : 2024-11-20 DOI:10.1109/OJEMB.2024.3503499
Mario Francisco Munoz;Hoang Vu Huy;Thanh-Dung Le;Philippe Jouvet;Rita Noumeir
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Abstract

Remote patient monitoring has emerged as a prominent non-invasive method, using digital technologies and computer vision (CV) to replace traditional invasive monitoring. While neonatal and pediatric departments embrace this approach, Pediatric Intensive Care Units (PICUs) face the challenge of occlusions hindering accurate image analysis and interpretation. Goal: In this study, we propose a hybrid approach to effectively segment common occlusions encountered in remote monitoring applications within PICUs. Our approach centers on creating a deep-learning pipeline for limited training data scenarios. Methods: First, a combination of the well-established Google DeepLabV3+ segmentation model with the transformer-based Segment Anything Model (SAM) is devised for occlusion segmentation mask proposal and refinement. We then train and validate this pipeline using a small dataset acquired from real-world PICU settings with a Microsoft Kinect camera, achieving an Intersection-over-Union (IoU) metric of 85%. Results: Both quantitative and qualitative analyses underscore the effectiveness of our proposed method. The proposed framework yields an overall classification performance with 92.5% accuracy, 93.8% recall, 90.3% precision, and 92.0% F1-score. Consequently, the proposed method consistently improves the predictions across all metrics, with an average of 2.75% gain in performance compared to the baseline CNN-based framework. Conclusions: Our proposed hybrid approach significantly enhances the segmentation of occlusions in remote patient monitoring within PICU settings. This advancement contributes to improving the quality of care for pediatric patients, addressing a critical need in clinical practice by ensuring more accurate and reliable remote monitoring.
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基于混合深度学习的PICU患者监护中增强闭塞分割
远程患者监护已成为一种突出的非侵入性监护方法,利用数字技术和计算机视觉(CV)取代传统的侵入性监护。虽然新生儿和儿科科室采用这种方法,但儿科重症监护病房(picu)面临着闭塞阻碍准确图像分析和解释的挑战。目的:在本研究中,我们提出了一种混合方法来有效分割picu内远程监测应用中遇到的常见咬合。我们的方法集中于为有限的训练数据场景创建一个深度学习管道。方法:首先,将谷歌DeepLabV3+分割模型与基于变压器的分割模型SAM (Segment Anything model)相结合,提出并细化遮挡分割掩码;然后,我们使用微软Kinect摄像头从现实世界的PICU设置中获取的小数据集来训练和验证该管道,实现了85%的交叉-联盟(IoU)指标。结果:定量和定性分析都强调了我们提出的方法的有效性。提出的框架产生了92.5%的准确率、93.8%的召回率、90.3%的精度和92.0%的f1分数的总体分类性能。因此,所提出的方法持续提高了所有指标的预测,与基于cnn的基准框架相比,性能平均提高了2.75%。结论:我们提出的混合方法显著提高了PICU设置中远程患者监测闭塞的分割。这一进步有助于提高儿科患者的护理质量,通过确保更准确和可靠的远程监测来解决临床实践中的关键需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.50
自引率
3.40%
发文量
20
审稿时长
10 weeks
期刊介绍: The IEEE Open Journal of Engineering in Medicine and Biology (IEEE OJEMB) is dedicated to serving the community of innovators in medicine, technology, and the sciences, with the core goal of advancing the highest-quality interdisciplinary research between these disciplines. The journal firmly believes that the future of medicine depends on close collaboration between biology and technology, and that fostering interaction between these fields is an important way to advance key discoveries that can improve clinical care.IEEE OJEMB is a gold open access journal in which the authors retain the copyright to their papers and readers have free access to the full text and PDFs on the IEEE Xplore® Digital Library. However, authors are required to pay an article processing fee at the time their paper is accepted for publication, using to cover the cost of publication.
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