A machine learning stacking model accurately estimating gastric fluid volume in patients undergoing elective sedated gastrointestinal endoscopy.

Postgraduate medicine Pub Date : 2024-04-01 Epub Date: 2024-03-22 DOI:10.1080/00325481.2024.2333720
Yuqing Yan, Yuzhan Jin, Yaoyi Guo, Mingtao Ma, Yue Feng, Yi Zhong, Chen Chen, Chun Ge, Jianjun Zou, Yanna Si
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Abstract

Background: The current point-of-care ultrasound (POCUS) assessment of gastric fluid volume primarily relies on the traditional linear approach, which often suffers from moderate accuracy. This study aimed to develop an advanced machine learning (ML) model to estimate gastric fluid volume more accurately.

Methods: We retrospectively analyzed the clinical data and POCUS data (D1: craniocaudal diameter, D2: anteroposterior diameter) of 1386 patients undergoing elective sedated gastrointestinal endoscopy (GIE) at Nanjing First Hospital to predict gastric fluid volume using ML techniques, including six different ML models and a stacking model. We evaluated the models using the adjusted Coefficient of Determination (R2), mean absolute error (MAE) and root mean square error (RMSE). The SHapley Additive exPlanations (SHAP) method was used to interpret the importance of the variables. Finally, a web calculator was constructed to facilitate its clinical application.

Results: The stacking model (Linear regression + Multilayer perceptron) performed best, with the highest adjusted R2 of 0.718 (0.632 to 0.804). The mean prediction bias was 4 ml (MAE: 4.008 (3.68 to 4.336)), which is better than that of the linear model. D1 and D2 ranked high in the SHAP plot and performed better in the right lateral decubitus (RLD) than in the supine position. The web calculator can be accessed at https://cheason.shinyapps.io/Stacking_regressor/.

Conclusion: The stacking model and its web calculator can serve as practical tools for accurately estimating gastric fluid volume in patients undergoing elective sedated GIE. It is recommended that anesthesiologists measure D1 and D2 in the patient's RLD position.

机器学习堆叠模型可准确估计接受择期镇静胃肠道内窥镜检查患者的胃液量。
背景:目前的床旁超声(POCUS)胃液容量评估主要依赖于传统的线性方法,其准确性往往不高。本研究旨在开发一种先进的机器学习(ML)模型,以更准确地估计胃液容量:我们回顾性分析了在南京市第一医院接受择期镇静消化内镜检查(GIE)的1386名患者的临床数据和POCUS数据(D1:颅尾径,D2:前胸径),利用ML技术预测胃液量,包括6种不同的ML模型和1种堆叠模型。我们使用调整后的决定系数(R2)、平均绝对误差(MAE)和均方根误差(RMSE)对模型进行了评估。我们还使用了 SHapley Additive exPlanations(SHAP)方法来解释变量的重要性。最后,还制作了一个网络计算器,以方便临床应用:叠加模型(线性回归 + 多层感知器)表现最佳,调整后的 R2 最高,为 0.718(0.632 至 0.804)。平均预测偏差为 4 毫升(MAE:4.008(3.68 至 4.336)),优于线性模型。D1和D2在SHAP图中排名靠前,右侧卧位(RLD)比仰卧位表现更好。网络计算器可通过 https://cheason.shinyapps.io/Stacking_regressor/.Conclusion 访问:堆叠模型及其网络计算器可作为实用工具,用于准确估计接受择期镇静 GIE 患者的胃液量。建议麻醉医师在患者仰卧位时测量 D1 和 D2。
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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