重症和手术监护临床大数据集支持系统

项目来源

国家重点研发计划(NKRD)

项目主持人

易斌

项目受资助机构

中国人民解放军第三军医大学

立项年度

2018

立项时间

未公开

项目编号

2018YFC0116702

项目级别

国家级

研究期限

未知 / 未知

受资助金额

400.00万元

学科

数字诊疗装备研发

学科代码

未公开

基金类别

“数字诊疗装备研发”重点专项

关键词

危重症事件 ; 大数据 ; 支持系统 ; Critically ill events ; Big data ; Support system

参与者

杨智勇

参与机构

未公开

项目标书摘要:面向各类监护仪器,采集数据类型多样化、关联关系繁杂化、质量良莠不齐等内在的复杂性使得监护数据的感知、表达和理解等环节存在巨大的挑战。项目通过开展多源异构数据采集、时序同步技术、数据质量与隐私控制技术、危重不良事件(窒息、昏厥、呼衰、心衰、肝衰、肾衰、脓毒症、死亡)表示及其标注方法等研究,构建监护临床样本数据集。在构建重症和手术患者临床大数据集支持系统中,本课题通过研究监护数据与其它临床数据(HIS、EMR、PACS 等)的时序关系估计及交叉参照,建立自适应分级存储策略,建设重症和手术监护临床数据库,对内部服务、成员服务、行业服务、科研服务等实现分级脱密与脱密审计机制,构建重症和手术患者临床大数据集支持系统,为前端系统开发提供数据支持服务

Application Abstract: Facing all kinds of monitoring instruments,the inherent complexity of data collection,such as diverse types,multifarious correlation and uneven quality,makes the perception,expression and understanding of monitoring data a huge challenge.The project constructed the monitoring clinical sample data set by carrying out studies on multi-source heterogeneous data collection,timing synchronization technology,data quality and privacy control technology,presentation and labeling of critical adverse events(asphyxiation,fainting,respiratory failure,heart failure,liver failure,renal failure,sepsis and death),etc.In constructing a severe clinical and surgical patients in large data sets to support system,this topic through the research on monitoring data and other clinical data(ihs,EMR,PACS,etc.)of the sequential relationship between estimated and cross references,and to establish adaptive hierarchical storage strategy,the construction of severe clinical database,and surgical care for internal service and member service,industry services,research services realizes the classification to take off the thick and dense audit mechanism,construction of intensive and surgical patients clinical supporting system for large data set,provide data support for the front-end system development services

项目受资助省

重庆市

联系人信息

杨智勇:260745265@qq.com

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  • 1.Development and validation of an ensemble learning risk model for sepsis after abdominal surgery

    • 关键词:
    • sepsis; machine learning; postoperative complications; perioperativeperiod; risk assessment.;POSTOPERATIVE SEPSIS; PREDICTION
    • Shu, Xin;Li, Yujie;Zhu, Yiziting;Yang, Zhiyong;Liu, Xiang;Hu, Xiaoyan;Yang, Chunyong;Zhao, Lei;Zhu, Tao;Chen, Yuwen;Yi, Bin
    • 《ARCHIVES OF MEDICAL SCIENCE》
    • 2025年
    • 21卷
    • 1期
    • 期刊

    Introduction: Although their importance has gained attention, the clinical applications of methods for screening patients at high risk of sepsis after abdominal surgery have been restricted. Therefore, we aimed to develop and validate models for screening patients at high risk of sepsis after abdominal surgery based on machine learning with routine variables. Material and methods: The whole dataset was composed of three representative academic hospitals in China and the Medical Information Mart for Intensive Care IV (MIMIC-IV) database. Routine clinical variables were implemented for model development. The Boruta algorithm was applied for feature selection. Afterwards, ensemble learning and eight other conventional algorithms were used for model fitting and validation based on all features and selected features. The area under the receiver operating characteristic curve analysis (DCA), and calibration curves were used for model evaluation. Results: A total of 955 patients undergoing abdominal surgery were finally analyzed (sepsis: 285, non-sepsis: 670). After feature selection, the ensemble learning model constructed by integrating k-Nearest Neighbor (I

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  • 2.The Therapeutic Effects of Baicalein on the Hepatopulmonary Syndrome in the Rat Model of Chronic Common Bile Duct Ligation

    • 关键词:
    • Baicalein; Hepatopulmonary syndrome; Common bile duct ligation;Angiogenesis; Glucose metabolism; Liver fibrosis; Glycolysis;DYSFUNCTION; METABOLISM; ANGIOGENESIS; HYPERTENSION; IMPROVES; UPDATE
    • Zeng, Ziyang;Lei, Yuhao;Yang, Chunyong;Wu, Xianfeng;Zhang, Liang;Yang, Zhiyong;Chen, Lin;Wang, Xiaobo;Belguise, Karine;Li, Yujie;Yi, Bin
    • 《JOURNAL OF CLINICAL AND TRANSLATIONAL HEPATOLOGY》
    • 2024年
    • 期刊

    Background and Aims: Hepatopulmonary syndrome (HPS) is characterized by arterial oxygenation defects due to pulmonary vascular dilation in liver disease. To date, liver transplantation remains the only effective treatment for HPS. This study aimed to explore the preventative role of baicalein in HPS development. Methods: Sixty male rats were randomly assigned to three groups: sham, common bile duct ligation (CBDL), and baicalein, receiving intraperitoneal injections of baicalein (40 mg center dot kg-1 center dot d-1, diluted in saline) for 21 days. Survival rate, liver and kidney function, and bile acid metabolism levels were evaluated. Liver and lung angiogenesis and hepatic glycogen staining were assessed, and the expression of relevant proteins was evaluated by immunohistochemistry. Results: Baicalein improved survival rates and hypoxemia in rats post-CBDL, reducing angiogenic protein levels and enhancing glucose homeostasis. Compared to the untreated group, baicalein suppressed the expression of vascular endothelial growth factor, placental growth factors, matrix metalloprotease 9 and C -X -C motif chemokine 2, and it increased the expression of glycemic regulatory proteins, including dipeptidyl peptidase-4, sirtuin 1, peroxisome proliferatoractivated receptor gamma co-activator 1 alpha, and 6-phospho fructo-2-kinase/fructose-2,6-biphosphatase 3. Conclusion: Baicalein significantly improves hepatic function and hypoxia in HPS rats by attenuating pathological angiogenesis in the liver and lungs, showing promise as a treatment for HPS.

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  • 3.Real-time non-invasive hemoglobin prediction using deep learning-enabled smartphone imaging.

    • 关键词:
    • 0 / Hemoglobins;Automatic; Deep learning; Hemoglobin; Non-invasive prediction; Smartphone
    • Chen, Yuwen;Hu, Xiaoyan;Zhu, Yiziting;Liu, Xiang;Yi, Bin
    • 《BMC medical informatics and decision making》
    • 2024年
    • 24卷
    • 1期
    • 期刊

    BACKGROUND: Accurate measurement of hemoglobin concentration is essential for various medical scenarios, including preoperative evaluations and determining blood loss. Traditional invasive methods are inconvenient and not suitable for rapid, point-of-care testing. Moreover, current models, due to their complex parameters, are not well-suited for mobile medical settings, which limits the ability to conduct frequent and rapid testing. This study aims to introduce a novel, compact, and efficient system that leverages deep learning and smartphone technology to accurately estimate hemoglobin levels, thereby facilitating rapid and accessible medical assessments.; METHODS: The study employed a smartphone application to capture images of the eye, which were subsequently analyzed by a deep neural network trained on data from invasive blood test data. Specifically, the EGE-Unet model was utilized for eyelid segmentation, while the DHA(C3AE) model was employed for hemoglobin level prediction. The performance of the EGE-Unet was evaluated using statistical metrics including mean intersection over union (MIOU), F1 Score, accuracy, specificity, and sensitivity. The DHA(C3AE) model's performance was assessed using mean absolute error (MAE), mean-square error (MSE), root mean square error (RMSE), and R^2.; RESULTS: The EGE-Unet model demonstrated robust performance in eyelid segmentation, achieving an MIOU of 0.78, an F1 Score of 0.87, an accuracy of 0.97, a specificity of 0.98, and a sensitivity of 0.86. The DHA(C3AE) model for hemoglobin level prediction yielded promising outcomes with an MAE of 1.34, an MSE of 2.85, an RMSE of 1.69, and an R^2 of 0.34. The overall size of the model is modest at 1.08M, with a computational complexity of 0.12 FLOPs (G).; CONCLUSIONS: This system presents a groundbreaking approach that eliminates the need for supplementary devices, providing a cost-effective, swift, and accurate method for healthcare professionals to enhance treatment planning and improve patient care in perioperative environments. The proposed system has the potential to enable frequent and rapid testing of hemoglobin levels, which can be particularly beneficial in mobile medical settings.; TRIAL REGISTRATION: The clinical trial was registered on the Chinese Clinical Trial Registry (No. ChiCTR2100044138) on 20/02/2021. © 2024. The Author(s).

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  • 4.Dynamic Nomogram for Predicting the Risk of Perioperative Neurocognitive Disorders in Adults

    • 关键词:
    • POSTOPERATIVE COGNITIVE DYSFUNCTION; DELIRIUM; SURGERY; MODEL
    • Song, Ai-lin;Li, Yu-jie;Liang, Hao;Sun, Yi-zhu;Shu, Xin;Huang, Jia-hao;Yang, Zhi-yong;He, Wen-quan;Zhao, Lei;Zhu, Tao;Zhong, Kun-hua;Chen, Yu-wen;Lu, Kai-zhi;Yi, Bin
    • 《ANESTHESIA AND ANALGESIA》
    • 2023年
    • 137卷
    • 6期
    • 期刊

    BACKGROUND: Simple and rapid tools for screening high-risk patients for perioperative neurocognitive disorders (PNDs) are urgently needed to improve patient outcomes. We developed an online tool with machine-learning algorithms using routine variables based on multicenter data.METHODS: The entire dataset was composed of 49,768 surgical patients from 3 representative academic hospitals in China. Surgical patients older than 45 years, those undergoing general anesthesia, and those without a history of PND were enrolled. When the patient's discharge diagnosis was PND, the patient was in the PND group. Patients in the non-PND group were randomly extracted from the big data platform according to the surgical type, age, and source of data in the PND group with a ratio of 3:1. After data preprocessing and feature selection, general linear model (GLM), artificial neural network (ANN), and naive Bayes (NB) were used for model development and evaluation. Model performance was evaluated by the area under the receiver operating characteristic curve (ROCAUC), the area under the precision-recall curve (PRAUC), the Brier score, the index of prediction accuracy (IPA), sensitivity, specificity, etc. The model was also externally validated on the multiparameter intelligent monitoring in intensive care (MIMIC). database. Afterward, we developed an online visualization tool to preoperatively predict patients' risk of developing PND based on the models with the best performance.RESULTS: A total of 1051 patients (242 PND and 809 non-PND) and 2884 patients (6.2% patients with PND) were analyzed on multicenter data (model development, test [internal validation], external validation-1) and MIMIC. dataset (external validation-2). The model performance based on GLM was much better than that based on ANN and NB. The best-performing GLM model on validation-1 dataset achieved ROCAUC (0.874; 95% confidence interval [CI], 0.833-0.915), PRAUC (0.685; 95% CI, 0.584-0.786), sensitivity (72.6%; 95% CI, 61.4%-81.5%), specificity (84.4%; 95% CI, 79.3%-88.4%), Brier score (0.131), and IPA (44.7%), and of which the ROCAUC (0.761, 95% CI, 0.712-0.809), the PRAUC (0.475, 95% CI, 0.370-0.581), Brier score (0.053), and IPA (76.8%) on validation-2 dataset. Afterward, we developed an online tool (https://pnd-predictive-model-dynnom. shinyapps.io/ DynNomapp/) with 10 routine variables for preoperatively screening high-risk patients.CONCLUSIONS: We developed a simple and rapid online tool to preoperatively screen patients' risk of PND using GLM based on multicenter data, which may help medical staff's decision-making regarding perioperative management strategies to improve patient outcomes.

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  • 5.Serum Soluble Vascular Endothelial Growth Factor Receptor 1 as a Potential Biomarker of Hepatopulmonary Syndrome

    • 关键词:
    • Chronic liver disease; Hepatopulmonary syndrome; Placental growthfactor; Pathological pulmonary angiogenesis; sFlt-1; PLGF ratio;ASSOCIATION; PROGNOSIS; IMPACT
    • Li, Yu-Jie;Wu, Xian-Feng;Wang, Dan-Dan;Li, Peng;Liang, Hao;Hu, Xiao-Yan;Gan, Jia-Qi;Sun, Yi-Zhu;Li, Jun-Hong;Li, Jun;Shu, Xin;Song, Ai-Lin;Yang, Chun-Yong;Yang, Zhi-Yong;Yu, Wei-Feng;Yang, Li-Qun;Wang, Xiao-Bo;Belguise, Karine;Xia, Zheng-Yuan;Yi, Bin
    • 《JOURNAL OF CLINICAL AND TRANSLATIONAL HEPATOLOGY》
    • 2023年
    • 11卷
    • 5期
    • 期刊

    Background and Aims: The results of basic research im plicate the vascular endothelial growth factor (VEGF) family as a potential target of hepatopulmonary syndrome (HPS). However, the negative results of anti-angiogenetic therapy in clinical studies have highlighted the need for markers for HPS. Therefore, we aimed to determine whether VEGF fam-ily members and their receptors can be potential biomarkers for HPS through clinical and experimental studies. Methods: Clinically, patients with chronic liver disease from two medi -cal centers were enrolled and examined for HPS. Patients were divided into HPS, intrapulmonary vascular dilation [pos-itive contrast-enhanced echocardiography (CEE) and normal oxygenation] and CEE-negative groups. Baseline information and perioperative clinical data were compared between HPS and non-HPS patients. Serum levels of VEGF family mem-bers and their receptors were measured. In parallel, HPS rats were established by common bile duct ligation. Liver, lung and serum samples were collected for the evaluation of pathophysiologic changes, as well as the expression levels of the above factors. Results: In HPS rats, all VEGF family members and their receptors underwent significant changes; however, only soluble VEGFR1 (sFlt-1) and the sFlt-1/ pla-cental growth factor (PLGF) ratio were changed in almost the same manner as those in HPS patients. Furthermore, through feature selection and internal and external valida-tion, sFlt-1 and the sFlt-1/PLGF ratio were identified as the - most important variables to distinguish HPS from non-HPS patients. Conclusions: Our results from animal and human studies indicate that sFlt-1 and the sFlt-1/PLGF ratio in serum are potential markers for HPS.

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  • 6.An Efficient Method for Deidentifying Protected Health Information in Chinese Electronic Health Records: Algorithm Development and Validation

    • 关键词:
    • EHR; PHI; personal information; protected data; protected information;patient information; health information; de-identification; de-identify;privacy; TinyBert; model; development; algorithm; machine learning; CRF;data augmentation; health record; medical record;DE-IDENTIFICATION
    • Wang, Peng;Li, Yong;Yang, Liang;Li, Simin;Li, Linfeng;Zhao, Zehan;Long, Shaopei;Wang, Fei;Wang, Hongqian;Li, Ying;Wang, Chengliang
    • 《JMIR MEDICAL INFORMATICS》
    • 2022年
    • 10卷
    • 8期
    • 期刊

    Background: With the popularization of electronic health records in China, the utilization of digitalized data has great potential for the development of real-world medical research. However, the data usually contains a great deal of protected health information and the direct usage of this data may cause privacy issues. The task of deidentifying protected health information in electronic health records can be regarded as a named entity recognition problem. Existing rule-based, machine learning-based, or deep learning-based methods have been proposed to solve this problem. However, these methods still face the difficulties of insufficient Chinese electronic health record data and the complex features of the Chinese language.Objective: This paper proposes a method to overcome the difficulties of overfitting and a lack of training data for deep neural networks to enable Chinese protected health information deidentification. Methods: We propose a new model that merges TinyBERT (bidirectional encoder representations from transformers) as a text feature extraction module and the conditional random field method as a prediction module for deidentifying protected health information in Chinese medical electronic health records. In addition, a hybrid data augmentation method that integrates a sentence generation strategy and a mention-replacement strategy is proposed for overcoming insufficient Chinese electronic health records.Results: We compare our method with 5 baseline methods that utilize different BERT models as their feature extraction modules. Experimental results on the Chinese electronic health records that we collected demonstrate that our method had better performance (microprecision: 98.7%, microrecall: 99.13%, and micro-F1 score: 98.91%) and higher efficiency (40% faster) than all the BERT-based baseline methods.Conclusions: Compared to baseline methods, the efficiency advantage of TinyBERT on our proposed augmented data set was kept while the performance improved for the task of Chinese protected health information deidentification.

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  • 7.Learning to predict in-hospital mortality risk in the intensive care unit with attention-based temporal convolution network

    • 关键词:
    • In-hospital mortality risk; ICU; Temporal Convolution Network; AttentionMechanism; Time series; Artificial Intelligence;PROGNOSTIC ACCURACY; SUSPECTED INFECTION; SAPS-II; SEVERITY; SCORE
    • Chen, Yu-wen;Li, Yu-jie;Deng, Peng;Yang, Zhi-yong;Zhong, Kun-hua;Zhang, Li-ge;Chen, Yang;Zhi, Hong-yu;Hu, Xiao-yan;Gu, Jian-teng;Ning, Jiao-lin;Lu, Kai-zhi;Zhang, Ju;Xia, Zheng-yuan;Qin, Xiao-lin;Yi, Bin
    • 《BMC ANESTHESIOLOGY》
    • 2022年
    • 22卷
    • 1期
    • 期刊

    Background Dynamic prediction of patient mortality risk in the ICU with time series data is limited due to high dimensionality, uncertainty in sampling intervals, and other issues. A new deep learning method, temporal convolution network (TCN), makes it possible to deal with complex clinical time series data in ICU. We aimed to develop and validate it to predict mortality risk using time series data from MIMIC III dataset. Methods A total of 21,139 records of ICU stays were analysed and 17 physiological variables from the MIMIC III dataset were used to predict mortality risk. Then we compared the model performance of the attention-based TCN with that of traditional artificial intelligence (AI) methods. Results The area under receiver operating characteristic (AUCROC) and area under precision-recall curve (AUC-PR) of attention-based TCN for predicting the mortality risk 48 h after ICU admission were 0.837 (0.824 -0.850) and 0.454, respectively. The sensitivity and specificity of attention-based TCN were 67.1% and 82.6%, respectively, compared to the traditional AI method, which had a low sensitivity (< 50%). Conclusions The attention-based TCN model achieved better performance in the prediction of mortality risk with time series data than traditional AI methods and conventional score-based models. The attention-based TCN mortality risk model has the potential for helping decision-making for critical patients.

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  • 8.Venous thromboembolism risk assessment of surgical patients in Southwest China using real-world data: establishment and evaluation of an improved venous thromboembolism risk model

    • 关键词:
    • Venous thromboembolism; Risk assessment model; Caprini; Surgicalpatients; Machine learning;CLINICAL PRESENTATION; PULMONARY-EMBOLISM; MAJOR SURGERY; COMPLICATIONS;EPIDEMIOLOGY; THROMBOSIS; CANCER; VALIDATION; CRITERION; DIAGNOSIS
    • Wang, Peng;Wang, Yao;Yuan, Zhaoying;Wang, Fei;Wang, Hongqian;Li, Ying;Wang, Chengliang;Li, Linfeng
    • 《BMC MEDICAL INFORMATICS AND DECISION MAKING》
    • 2022年
    • 22卷
    • 1期
    • 期刊

    Background Venous thromboembolism (VTE) risk assessment in surgical patients is important for the appropriate diagnosis and treatment of patients. The commonly used Caprini model is limited by its inadequate ability to discriminate between risk stratums on the surgical population in southwest China and lengthy risk factors. The purpose of this study was to establish an improved VTE risk assessment model that is accurate and simple. Methods This study is based on the clinical data from 81,505 surgical patients hospitalized in the Southwest Hospital of China between January 1, 2019 and June 18, 2021. Among the population, 559 patients developed VTE. An improved VTE risk assessment model, SW-model, was established through Logistic Regression, with comparisons to both Caprini and Random Forest. Results The SW-model incorporated eight risk factors. The area under the curve (AUC) of SW-model (0.807 [0.758, 0.853], 0.804 [0.765, 0.840]), are significantly superior (p = 0.001 and p = 0.044) to those of the Caprini (0.705 [0.652, 0.757], 0.758 [0.719, 0795]) on two test sets, but inferior (p < 0.001 and p = 0.002) to Random Forest (0.854 [0.814, 0.890], 0.839 [0.806, 0.868]). In decision curve analysis, within threshold range from 0.015 to 0.04, the DCA curves of the SW-model are superior to Caprini and two default strategies. Conclusions The SW-model demonstrated a higher discriminative capability to distinguish VTE positive in surgical patients compared with the Caprini model. Compared to Random Forest, Logistic Regression based SW-model provided interpretability which is essential in guarantee the procedure of risk assessment transparent to clinicians.

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  • 9.A Simple and Quick Screening Method for Intrapulmonary Vascular Dilation in Cirrhotic Patients Based on Machine Learning

    • 关键词:
    • Hepatopulmonary syndrome; Intrapulmonary vascular dilation; Cirrhosis;Screening; Machine learning;HEPATOPULMONARY SYNDROME; DILATATIONS; HYPERTENSION; OXYGENATION; IMPACT
    • Li, Yu-Jie;Tang, Xi;Li, Peng;Yang, Zhi-Yong;Zhi, Hong-Yu;Li, Xiao-Jun;Chen, Yang;Deng, Peng;Qin, Xiao-Lin;Gu, Jian-Teng;Ning, Jiao-Lin;Lu, Kai-Zhi;Zhang, Ju;Xia, Zheng-Yuan;Chen, Yu-Wen;Yi, Bin
    • 《JOURNAL OF CLINICAL AND TRANSLATIONAL HEPATOLOGY》
    • 2021年
    • 9卷
    • 5期
    • 期刊

    Background and Aims: Screening for hepatopulmonary syndrome in cirrhotic patients is limited due to the need to perform contrast enhanced echocardiography (CEE) and arterial blood gas (ABG) analysis. We aimed to develop a simple and quick method to screen for the presence of in-trapulmonary vascular dilation (IPVD) using noninvasive and easily available variables with machine learning (ML) algorithms. Methods: Cirrhotic patients were enrolled from our hospital. All eligible patients underwent CEE, ABG analysis and physical examination. We developed a two-step model based on three ML algorithms, namely, adap-tive boosting (termed AdaBoost), gradient boosting deci-sion tree (termed GBDT) and eXtreme gradient boosting (termed Xgboost). Noninvasive variables were input in the first step (the NI model), and for the second step (the NIBG model), a combination of noninvasive variables and ABG re-sults were used. Model performance was determined by the area under the curve of receiver operating characteristics (AUCROCs), precision, recall, F1-score and accuracy. Re-sults: A total of 193 cirrhotic patients were ultimately ana-lyzed. The AUCROCs of the NI and NIBG models were 0.850

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  • 10.A better method for the dynamic, precise estimating of blood/haemoglobin loss based on deep learning of artificial intelligence

    • 关键词:
    • Intra-operative blood loss; intra-operative haemoglobin loss; denselyconnected convolutional networks; feature extraction technology;BLOOD-LOSS
    • Li, Yu-Jie;Zhang, Li-Ge;Zhi, Hong-Yu;Zhong, Kun-Hua;He, Wen-Quan;Chen, Yang;Yang, Zhi-Yong;Chen, Lin;Bai, Xue-Hong;Qin, Xiao-Lin;Li, Dan-Feng;Wang, Dan-Dan;Gu, Jian-Teng;Ning, Jiao-Lin;Lu, Kai-Zhi;Zhang, Ju;Xia, Zheng-Yuan;Chen, Yu-Wen;Yi, Bin
    • 《ANNALS OF TRANSLATIONAL MEDICINE》
    • 2020年
    • 8卷
    • 19期
    • 期刊

    Background: Dynamic and precise estimation of blood loss (EBL) is quite important for perioperative management. To date, the Triton System, based on feature extraction technology (FET), has been applied to estimate intra-operative haemoglobin (Hb) loss but is unable to directly assess the amount of blood loss. We aimed to develop a method for the dynamic and precise EBL and estimate Hb loss (EHL) based on artificial intelligence (AI).Methods: We collected surgical patients' non-recycled blood to generate blood-soaked sponges at a set gradient of volume. After image acquisition and preprocessing, FET and densely connected convolutional networks ( DenseNet) were applied for EBL and EHL. The accuracy was evaluated using R2, the mean absolute error (MAE), the mean square error (MSE), and the Bland-Altman analysis.Results: For EBL, the R2, MAE and MSE for the method based on DenseNet were 0.966 (95% CI: 0.962-0.971), 0.186 (95% CI: 0.167-0.207) and 0.096 (95% CI: 0.084-0.109), respectively. For EHL, the R2, MAE and MSE for the method based on DenseNet were 0.941 (95% CI: 0.934-0.948), 0.325 (95% CI: 0.293-0.355) and 0.284 (95% CI: 0.251-0.317), respectively. The accuracies of EBL and EHL based on DenseNet were more satisfactory than that of FET. Bland-Altman analysis revealed a bias of 0.02 ml with narrow limits of agreement (LOA) (-0.47 to 0.52 mL) and of 0.05 g with narrow LOA (-0.87 to 0.97 g) between the methods based on DenseNet and actual blood loss and Hb loss.Conclusions: We developed a simpler and more accurate AI-based method for EBL and EHL, which may be more fit for surgeries primarily using sponges and with a small to medium amount of blood loss.

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