Department of Gastrointestinal Surgery, Renmin Hospital of Wuhan University, Wuhan, Hubei, China.
College of Informatics, Huazhong Agricultural University, Wuhan, Hubei, China.
Sci Rep. 2023 Sep 19;13(1):15504. doi: 10.1038/s41598-023-42572-6.
Real-time and accurate estimation of surgical hemoglobin (Hb) loss is essential for fluid resuscitation management and evaluation of surgical techniques. In this study, we aimed to explore a novel surgical Hb loss estimation method using deep learning-based medical sponges image analysis. Whole blood samples of pre-measured Hb concentration were collected, and normal saline was added to simulate varying levels of Hb concentration. These blood samples were distributed across blank medical sponges to generate blood-soaked sponges. Eight hundred fifty-one blood-soaked sponges representing a wide range of blood dilutions were randomly divided 7:3 into a training group (n = 595) and a testing group (n = 256). A deep learning model based on the YOLOv5 network was used as the target region extraction and detection, and the three models (Feature extraction technology, ResNet-50, and SE-ResNet50) were trained to predict surgical Hb loss. Mean absolute error (MAE), mean absolute percentage error (MAPE), coefficient (R) value, and the Bland-Altman analysis were calculated to evaluate the predictive performance in the testing group. The deep learning model based on SE-ResNet50 could predict surgical Hb loss with the best performance (R = 0.99, MAE = 11.09 mg, MAPE = 8.6%) compared with other predictive models, and Bland-Altman analysis also showed a bias of 1.343 mg with narrow limits of agreement (- 29.81 to 32.5 mg) between predictive and actual Hb loss. The interactive interface was also designed to display the real-time prediction of surgical Hb loss more intuitively. Thus, it is feasible for real-time estimation of surgical Hb loss using deep learning-based medical sponges image analysis, which was helpful for clinical decisions and technical evaluation.
实时、准确地估计手术中的血红蛋白(Hb)丢失量对于液体复苏管理和手术技术评估至关重要。本研究旨在探索一种基于深度学习的医用海绵图像分析的新型手术 Hb 丢失估计方法。采集经预测量 Hb 浓度的全血样本,加入生理盐水以模拟不同 Hb 浓度水平。将这些血样分布到空白医用海绵上以生成血浸海绵。851 个血浸海绵代表广泛的血液稀释度,随机分为 7:3 进入训练组(n=595)和测试组(n=256)。使用基于 YOLOv5 网络的深度学习模型作为目标区域提取和检测,训练三种模型(特征提取技术、ResNet-50 和 SE-ResNet50)来预测手术中的 Hb 丢失。在测试组中计算均方误差(MAE)、平均绝对百分比误差(MAPE)、系数(R)值和 Bland-Altman 分析,以评估预测性能。基于 SE-ResNet50 的深度学习模型在预测手术 Hb 丢失方面表现最佳(R=0.99,MAE=11.09 mg,MAPE=8.6%),与其他预测模型相比,Bland-Altman 分析还显示预测与实际 Hb 丢失之间存在 1.343 mg 的偏差,且一致性界限较窄(-29.81 至 32.5 mg)。还设计了交互界面,以更直观地显示手术 Hb 丢失的实时预测。因此,基于深度学习的医用海绵图像分析可以实时估计手术中的 Hb 丢失,有助于临床决策和技术评估。