TY - JOUR
T1 - An improved YOLOv7-Tiny method for liquid level detection in medical infusion monitoring
AU - Chang, Yonghu
AU - Pu, Changwen
AU - Li, Shijie
AU - Tang, Yongchuan
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/9
Y1 - 2025/9
N2 - Background: Intravenous infusion is a common medical intervention, but the need for constant monitoring of fluid levels increases the psychological burden on patients and the workload on healthcare providers. Intelligent infusion monitoring systems can address these issues by providing real-time alerts when the fluid level is low. However, existing methods struggle with accuracy and adaptability in detecting fluid levels under complex conditions. Methods: This study proposes an improved YOLOv7-tiny-based method for liquid level detection in medical infusion monitoring. To improve performance, three novel modules built upon the Extended Layers Aggregation Network (ELAN)—Dynamic Snake Convolution (DS)-ELAN, Deformable Convolution Network (DCN)-ELAN, and Partial Convolution (P)-ELAN—are proposed. These modules are designed to enhance detection accuracy for elongated structures, adapt to shape variations, and optimize computational efficiency for deployment on edge devices. The proposed method was trained on a dataset of 4296 annotated infusion bottle images captured under diverse lighting and environmental conditions. Performance was evaluated using metrics such as recall, mean average precision (mAP), and inference speed. Results: Experimental results demonstrate that the improved YOLOv7-tiny method achieves superior performance compared to the baseline YOLOv7-tiny, with a recall of 88.319% and mAP@[0.5:0.95] of 90.102%, while maintaining comparable computational complexity. Ablation studies confirm the independent contributions of each proposed module to the overall performance. The enhanced method also shows robust real-time capability on embedded devices. Conclusion: The proposed method significantly improves the accuracy and usability of intelligent infusion monitoring systems, enabling real-time detection of fluid levels in medical infusion bottles. This approach reduces the workload on healthcare providers, minimizes patient risks, and demonstrates potential for broader applications in medical monitoring scenarios.
AB - Background: Intravenous infusion is a common medical intervention, but the need for constant monitoring of fluid levels increases the psychological burden on patients and the workload on healthcare providers. Intelligent infusion monitoring systems can address these issues by providing real-time alerts when the fluid level is low. However, existing methods struggle with accuracy and adaptability in detecting fluid levels under complex conditions. Methods: This study proposes an improved YOLOv7-tiny-based method for liquid level detection in medical infusion monitoring. To improve performance, three novel modules built upon the Extended Layers Aggregation Network (ELAN)—Dynamic Snake Convolution (DS)-ELAN, Deformable Convolution Network (DCN)-ELAN, and Partial Convolution (P)-ELAN—are proposed. These modules are designed to enhance detection accuracy for elongated structures, adapt to shape variations, and optimize computational efficiency for deployment on edge devices. The proposed method was trained on a dataset of 4296 annotated infusion bottle images captured under diverse lighting and environmental conditions. Performance was evaluated using metrics such as recall, mean average precision (mAP), and inference speed. Results: Experimental results demonstrate that the improved YOLOv7-tiny method achieves superior performance compared to the baseline YOLOv7-tiny, with a recall of 88.319% and mAP@[0.5:0.95] of 90.102%, while maintaining comparable computational complexity. Ablation studies confirm the independent contributions of each proposed module to the overall performance. The enhanced method also shows robust real-time capability on embedded devices. Conclusion: The proposed method significantly improves the accuracy and usability of intelligent infusion monitoring systems, enabling real-time detection of fluid levels in medical infusion bottles. This approach reduces the workload on healthcare providers, minimizes patient risks, and demonstrates potential for broader applications in medical monitoring scenarios.
KW - Deep learning
KW - Efficient layer aggregation networks
KW - Health monitoring of patients
KW - Image processing
KW - Medical infusion intelligence
UR - http://www.scopus.com/inward/record.url?scp=105009739240&partnerID=8YFLogxK
U2 - 10.1016/j.compbiomed.2025.110656
DO - 10.1016/j.compbiomed.2025.110656
M3 - 文章
AN - SCOPUS:105009739240
SN - 0010-4825
VL - 196
JO - Computers in Biology and Medicine
JF - Computers in Biology and Medicine
M1 - 110656
ER -