1.Optimization of optimal printing parameters and composition ratio of dental crown and bridge resin based on digital light processing technology
Junlong LIU ; Jiayin MA ; Zhe ZHAO ; Yaoyang XIONG ; Yuanli ZHENG
Journal of Shanghai Jiaotong University(Medical Science) 2025;45(7):858-865
Objective·To fabricate a 3D-printed dental crown and bridge resin slurry using digital light processing(DLP)technology,investigate the influence of different printing parameters on its mechanical properties,determine the optimal printing parameters,and optimize the composition ratio of DLP-printed crown and bridge resin.Methods·Based on the viscosity characteristics of the mixture,the optimal ratio of urethane dimethacrylate(UDMA)to poly(propylene glycol)dimethacrylate(PPGDMA)was explored.After silanizing silicon dioxide(SiO2),it was mixed with UDMA,PPGDMA,and 2,4,6-trimethylbenzoyl bis(p-tolyl)phosphine oxide(TMO)to prepare DLP-printed dental crown and bridge resin slurries with different solid contents,and their rheological properties were tested.The Beer-Lambert equation was used to calculate the light penetration depth and critical exposure energy of the printing slurry.Based on these values,different exposure intensities,exposure times,post-curing times,and layer thicknesses were set respectively to carry out a series of printing experiments.By comparing and analyzing the flexural strength of the products under different printing parameters,the optimal printing parameter combination was screened out.Results·Viscosity tests showed that the optimal UDMA-to-PPGDMA ratio was 6∶4.The rheological behavior of printing slurries with different solid contents was tested,and the results showed that the DLP-printed dental crown and bridge resin with a solid content of 22%exhibited the best printing performance.According to the Beer-Lambert analysis,the light penetration depth Dp of the printing slurry was 119.79 μm,and the critical exposure energy Ec was 25.54 mJ/cm2.When the exposure intensity was 20 mW/cm2,the flexural strength reached a maximum of(132.39±8.92)MPa,and the difference was statistically significant(P<0.05).The flexural results of different exposure times showed that the flexural strength could reach(131.73±9.43)MPa when the single-layer exposure time was 3.0 s,and there was no significant difference when the exposure time was further increased.The flexural results of different post-curing times showed that when the post-curing time reached 30 min,there was no significant relationship between the flexural strength value and the increase in post-curing time.Regarding the influence of different layer thicknesses on the flexural performance,the test results showed that when the layer thickness was 50 μm,the result was the best,and the difference was statistically significant(P<0.001).Conclusion·Based on viscosity and rheological tests,a DLP-printable crown and bridge resin slurry was successfully developed.The optimal printing parameters were determined through statistical analysis of flexural strength:exposure intensity of 20 mW/cm2,exposure time of 3.0 s,post-curing time of 30 min,and a layer thickness of 50 μm.
2.Expert consensus on the diagnosis and treatment of cemental tear.
Ye LIANG ; Hongrui LIU ; Chengjia XIE ; Yang YU ; Jinlong SHAO ; Chunxu LV ; Wenyan KANG ; Fuhua YAN ; Yaping PAN ; Faming CHEN ; Yan XU ; Zuomin WANG ; Yao SUN ; Ang LI ; Lili CHEN ; Qingxian LUAN ; Chuanjiang ZHAO ; Zhengguo CAO ; Yi LIU ; Jiang SUN ; Zhongchen SONG ; Lei ZHAO ; Li LIN ; Peihui DING ; Weilian SUN ; Jun WANG ; Jiang LIN ; Guangxun ZHU ; Qi ZHANG ; Lijun LUO ; Jiayin DENG ; Yihuai PAN ; Jin ZHAO ; Aimei SONG ; Hongmei GUO ; Jin ZHANG ; Pingping CUI ; Song GE ; Rui ZHANG ; Xiuyun REN ; Shengbin HUANG ; Xi WEI ; Lihong QIU ; Jing DENG ; Keqing PAN ; Dandan MA ; Hongyu ZHAO ; Dong CHEN ; Liangjun ZHONG ; Gang DING ; Wu CHEN ; Quanchen XU ; Xiaoyu SUN ; Lingqian DU ; Ling LI ; Yijia WANG ; Xiaoyuan LI ; Qiang CHEN ; Hui WANG ; Zheng ZHANG ; Mengmeng LIU ; Chengfei ZHANG ; Xuedong ZHOU ; Shaohua GE
International Journal of Oral Science 2025;17(1):61-61
Cemental tear is a rare and indetectable condition unless obvious clinical signs present with the involvement of surrounding periodontal and periapical tissues. Due to its clinical manifestations similar to common dental issues, such as vertical root fracture, primary endodontic diseases, and periodontal diseases, as well as the low awareness of cemental tear for clinicians, misdiagnosis often occurs. The critical principle for cemental tear treatment is to remove torn fragments, and overlooking fragments leads to futile therapy, which could deteriorate the conditions of the affected teeth. Therefore, accurate diagnosis and subsequent appropriate interventions are vital for managing cemental tear. Novel diagnostic tools, including cone-beam computed tomography (CBCT), microscopes, and enamel matrix derivatives, have improved early detection and management, enhancing tooth retention. The implementation of standardized diagnostic criteria and treatment protocols, combined with improved clinical awareness among dental professionals, serves to mitigate risks of diagnostic errors and suboptimal therapeutic interventions. This expert consensus reviewed the epidemiology, pathogenesis, potential predisposing factors, clinical manifestations, diagnosis, differential diagnosis, treatment, and prognosis of cemental tear, aiming to provide a clinical guideline and facilitate clinicians to have a better understanding of cemental tear.
Humans
;
Dental Cementum/injuries*
;
Consensus
;
Diagnosis, Differential
;
Cone-Beam Computed Tomography
;
Tooth Fractures/therapy*
3.Investigation on the Survival Status and Economic Burden of Patients with Cryopyrin Associated Periodic Syndrome in China
Lina GUO ; Kexin LI ; Jiayin ZHENG ; Caifeng LI ; Min SHEN ; Shipeng LI ; Ningying MAO ; Xinling WANG ; Linkang LI
Chinese Health Economics 2025;44(1):66-71,78
Objective:To explore the survival status and economic burden of disease for patients with Cryopyrin Associated Periodic Syndrome(CAPS)in China.Methods:From August 2023 to February 2024,a questionnaire survey was conducted on patients who volunteered to participate.The survey included patients'sociodemographic characteristics,current medical treatment status,disease economic burden and life quality.Results:A total of 35 valid questionnaires were collected.The average age of onset for the patients was 5.67 years,and the average duration from onset to confirmed diagnosis was 7.63 years.The average total medical cost per person in the past 12 months was 82 532.79 yuan,which is significantly higher than the national per capita disposable income of China in 2023.Conclusion:CAPS has an early onset and a long duration until diagnosis,with treatment primarily symptomatic,resulting in a heavy disease burden for patients and their families.
4.Research on Health Related Quality of Life and Disease Economic Burden of Chinese Phenylketonuria Patients
Hao DING ; Jiayin ZHENG ; Luning ZHANG ; Minglin SUN ; Tiemin ZHAI ; Linkang LI
Chinese Health Economics 2025;44(11):86-90
Objective:To assess health-related quality of life and disease burden of Chinese Phenylketonuria(PKU)patients and inform optimized management and support strategies.Methods:A cross-sectional survey is conducted to explore questionnaires.The Delphi method was applied to form a standardized questionnaire.Results:A total of 263 valid questionnaires were collected.The average patient age was 7.6 years.Younger patients reported better quality of life.Mean total medical cost per patient was 238 461.9 yuan,exceeding the 2024 national per capita disposable income.Conclusion:PKU patients are facing significant challenges in both quality of life and economic burden.
5.Application value of risk prediction model for acute kidney injury after donation of cardiac death liver transplantation based on machine learning algorithm
Guanrong CHEN ; Jinyan CHEN ; Xin HU ; Ronggao CHEN ; Yingchen HUANG ; Yao JIANG ; Zhongzhou SI ; Jiayin YANG ; Jinzhen CAI ; Li ZHUANG ; Zhicheng ZHOU ; Shusen ZHENG ; Xiao XU
Chinese Journal of Digestive Surgery 2025;24(2):236-248
Objective:To investigate the application value of risk prediction model for acute kidney injury (AKI) after donation of cardiac death (DCD) liver transplantation based on machine learning algorithm.Methods:The retrospective cohort study was conducted. The clinicopathological data of 1 001 pairs of DCD liver transplant donors and recipients at five hospitals, including The First Affiliated Hospital of Zhejiang University School of Medicine et al, in the Chinese Liver Transplan-tation Registry from January 2015 to December 2023 were collected. Of the donors, there were 825 males and 176 females. Of the recipients, there were 806 males and 195 females, aged 52 (range, 18-75)years. There were 281 recipients included using oversampling technique, and all 1 282 recipients were divided to the training set of 897 recipients and the validation set of 385 recipients by a ratio of 7∶3 using computer-generated random numbers. Seven prediction models, including Random Forest (RF), Extreme Gradient Boosting (XGBoost), Support Vector Machine (SVM), Logistic Regression (LR), Decision Tree (DT), K-Nearest Neighbors (KNN), and Categorical Boosting (CatBoost), were constructed for AKI after liver transplantation based on machine learning algorithm. Observation indicators: (1) comparison of clinicopathological characteristics between recipients with and without AKI and donors; (2) follow-up and survival of recipients with and without AKI; (3) construction and validation of nomogram prediction model of AKI after liver transplantation; (4) construction and validation of machine learning prediction model of AKI after liver transplantation. Comparison of measurement data with normal distribution between groups was conducted using the independent sample t test. Comparison of measurement data with skewed distribution between groups was conducted using the Mann-Whitney U test, and comparison among groups was conducted using the Kruskal-Wallis H test. Comparison of count data between groups was conducted using the chi-square test or corrected chi-square test. Kaplan-Meier method was used to calculate survival rates and plot survival curves. Logistic regression model was performed for univariate and multivariate analyses. The receiver operating characteristic (ROC) curve was plotted to calculate area under curve (AUC) and 95% confidence interval ( CI). The performance of prediction model was evaluated using DeLong test, accuracy, sensitivity, specificity. The calibration curve was plotted to evaluate the performance of predicted probability and actual probability. The interpretability analysis of machine learning algorithm and SHapley Additive exPlanations was used to explain the model decision separately. Results:(1) Comparison of clinicopathological characteristics between recipients with and without AKI and donors. Of 1 001 recipients, there were 360 cases with AKI and 641 cases without AKI after liver transplantation. There were significant differences in body mass index (BMI), hepatic encepha-lopathy, hepatitis B surfact antigen (HBsAg), hepatorenal syndrome (HRS) and donor diabetes, donor blood urea nitrogen, donor alanine aminotransferase, donor aspartate aminotransferase, mass of graft, volume of blood loss during liver transplantation, warm ischema time of donor liver, and operation time between recipients with and without AKI ( Z=-4.337, χ2=9.751, 9.088, H=11.142, χ2=5.286, Z=-3.360, -2.539, -3.084, -1.730, -3.497, -1.996, -2.644, P<0.05). (2) Follow-up and survival of recipients with and without AKI. All the 1 001 recipients received follow-up. The recipients with AKI after liver transplantation were followed up for 18.6(range, 0-102.3)months, and recipients without AKI after liver transplantation were followed up for 31.9(range, 0.1-105.5)months. The 1-, 3-, and 5-year overall survival rates were 72.1%, 63.5%, and 59.3% of recipients with AKI, versus 86.7%, 76.7%, and 72.5% of recipients without AKI, respectively, showing a significant difference in overall survival between them ( χ2=26.028, P<0.05). (3) Construction and validation of nomogram predic-tion model of AKI after liver transplantation. Results of multivariate analysis showed that recipient BMI, recipient creatinine, recipient HBsAg, recipient HRS, donor blood urea nitrogen, donor crea-tinine, anhepatic phase and volume of blood loss during liver transplantation were independent risk factors for AKI of recipients after liver transplantation ( odds ratio=1.113, 0.998, 0.605, 1.580, 1.047, 0.998, 1.006, 1.157, 95% CI as 1.070-1.157, 0.996-1.000, 0.450-0.812, 1.021-2.070, 1.021-1.074, 0.996-0.999, 1.000-1.012, 1.045-1.281, P<0.05). The nomogram prediction model of AKI after liver transplantation was constructed based on the results of multivariate analysis. Results of ROC curve showed that the AUC of 0.666 (95% CI as 0.637-0.696). (4) Construction and validation of machine learning prediction model of AKI after liver transplantation. Based on the Lasso regression analysis, seven machine learning algorithm prediction models, including RF, XGBoost, SVM, LR, DT, KNN, and CatBoost, were constructed, with ROC curves of the validation set plotted. The AUC of above models were 0.863, 0.841, 0.721, 0.637, 0.620, 0.708, 0.731, accuracies were 0.764, 0.782, 0.701, 0.592, 0.605, 0.605, 0.681, sensitivities were 0.764, 0.789, 0.719, 0.588, 0.694, 0.694, 0.704, specificities were 0.763, 0.774, 0.683, 0.597, 0.511, 0.511, 0.656, respectively. Delong test showed that the RF model with the highest AUC of 0.863(95% CI as 0.828-0.899). Calibration curve analysis showed the predicted probability closest to the actual probability of RF model, indicating the model with a good validation value. Further sorting of SHAP of different clinical factors based on RF model showed that recipient BMI, donor blood urea nitrogen, volume of blood loss during liver transplantation, donor age had large effects on the output outcomes. Conclusion:The nomogram prediction model and seven machine learning algorithm prediction models for AKI after DCD liver transplantation are constructed, and the RF model based on machine learning has a better predictive performance.
6.Puerarin inhibits hydrogen peroxide induced ferroptosis of RSC96 cells through the Nrf2/SLC7A11/GPX4 pathway
Jiayin WANG ; Si ZHENG ; Ming LI ; Qing ZHU ; Longju CHEN
Chinese Journal of Neuroanatomy 2025;41(2):194-200
Objective:To investigate the inhibitory effect and mechanism of puerarin(Pue)on hydrogen peroxide(H2 O2)induced ferroptosis in the rat Schwann cell derived cell line RSC96.Methods:The RSC96 cells were incuba-ted with H2 O2 to establish a cellular injury model,while a subset of cells were co-incubated with H2 O2 and Pue.The vi-ability of cells was examined using the CCK-8 assay.The intracellular levels of glutathione(GSH),total superoxide dismutase(T-SOD),reactive oxygen species(ROS),malondialdehyde(MDA),and ferrous ions(Fe2+)levels were quantified using commercial kits.Western blot was employed to detect the protein expression level of glutathione peroxi-dase 4(GPX4),cyclooxygenase-2(COX-2),solute carrier family 7 member 11(SLC7A11),nuclear factor erythroid 2-related factor 2(Nrf2),and heme oxygenase-1(HO-1).Immunofluorescence assay was performed to examine the expression and nuclear distribution of Nrf2.Results:Pue pretreatment significantly increased the survival rate of H2 O2-treated RSC96 cells,increased the intracellular content of GSH and T-SOD,and inhibited the concentration of ROS and MDA.It also activated the nuclear translocation of Nrf2 and upregulated GPX4,SLC7A11,HO-1,and Nrf2 proteins in RSC96 cells;This effect was abolished by the Nrf2 inhibitor ML385.Conclusion:Pue treatment alleviated the H2 O2-induced ferroptosis of RSC96 cells via the Nrf2/SLC7A11/GPX4 signaling pathway.
7.Optimization of optimal printing parameters and composition ratio of dental crown and bridge resin based on digital light processing technology
Junlong LIU ; Jiayin MA ; Zhe ZHAO ; Yaoyang XIONG ; Yuanli ZHENG
Journal of Shanghai Jiaotong University(Medical Science) 2025;45(7):858-865
Objective·To fabricate a 3D-printed dental crown and bridge resin slurry using digital light processing(DLP)technology,investigate the influence of different printing parameters on its mechanical properties,determine the optimal printing parameters,and optimize the composition ratio of DLP-printed crown and bridge resin.Methods·Based on the viscosity characteristics of the mixture,the optimal ratio of urethane dimethacrylate(UDMA)to poly(propylene glycol)dimethacrylate(PPGDMA)was explored.After silanizing silicon dioxide(SiO2),it was mixed with UDMA,PPGDMA,and 2,4,6-trimethylbenzoyl bis(p-tolyl)phosphine oxide(TMO)to prepare DLP-printed dental crown and bridge resin slurries with different solid contents,and their rheological properties were tested.The Beer-Lambert equation was used to calculate the light penetration depth and critical exposure energy of the printing slurry.Based on these values,different exposure intensities,exposure times,post-curing times,and layer thicknesses were set respectively to carry out a series of printing experiments.By comparing and analyzing the flexural strength of the products under different printing parameters,the optimal printing parameter combination was screened out.Results·Viscosity tests showed that the optimal UDMA-to-PPGDMA ratio was 6∶4.The rheological behavior of printing slurries with different solid contents was tested,and the results showed that the DLP-printed dental crown and bridge resin with a solid content of 22%exhibited the best printing performance.According to the Beer-Lambert analysis,the light penetration depth Dp of the printing slurry was 119.79 μm,and the critical exposure energy Ec was 25.54 mJ/cm2.When the exposure intensity was 20 mW/cm2,the flexural strength reached a maximum of(132.39±8.92)MPa,and the difference was statistically significant(P<0.05).The flexural results of different exposure times showed that the flexural strength could reach(131.73±9.43)MPa when the single-layer exposure time was 3.0 s,and there was no significant difference when the exposure time was further increased.The flexural results of different post-curing times showed that when the post-curing time reached 30 min,there was no significant relationship between the flexural strength value and the increase in post-curing time.Regarding the influence of different layer thicknesses on the flexural performance,the test results showed that when the layer thickness was 50 μm,the result was the best,and the difference was statistically significant(P<0.001).Conclusion·Based on viscosity and rheological tests,a DLP-printable crown and bridge resin slurry was successfully developed.The optimal printing parameters were determined through statistical analysis of flexural strength:exposure intensity of 20 mW/cm2,exposure time of 3.0 s,post-curing time of 30 min,and a layer thickness of 50 μm.
8.Puerarin inhibits hydrogen peroxide induced ferroptosis of RSC96 cells through the Nrf2/SLC7A11/GPX4 pathway
Jiayin WANG ; Si ZHENG ; Ming LI ; Qing ZHU ; Longju CHEN
Chinese Journal of Neuroanatomy 2025;41(2):194-200
Objective:To investigate the inhibitory effect and mechanism of puerarin(Pue)on hydrogen peroxide(H2 O2)induced ferroptosis in the rat Schwann cell derived cell line RSC96.Methods:The RSC96 cells were incuba-ted with H2 O2 to establish a cellular injury model,while a subset of cells were co-incubated with H2 O2 and Pue.The vi-ability of cells was examined using the CCK-8 assay.The intracellular levels of glutathione(GSH),total superoxide dismutase(T-SOD),reactive oxygen species(ROS),malondialdehyde(MDA),and ferrous ions(Fe2+)levels were quantified using commercial kits.Western blot was employed to detect the protein expression level of glutathione peroxi-dase 4(GPX4),cyclooxygenase-2(COX-2),solute carrier family 7 member 11(SLC7A11),nuclear factor erythroid 2-related factor 2(Nrf2),and heme oxygenase-1(HO-1).Immunofluorescence assay was performed to examine the expression and nuclear distribution of Nrf2.Results:Pue pretreatment significantly increased the survival rate of H2 O2-treated RSC96 cells,increased the intracellular content of GSH and T-SOD,and inhibited the concentration of ROS and MDA.It also activated the nuclear translocation of Nrf2 and upregulated GPX4,SLC7A11,HO-1,and Nrf2 proteins in RSC96 cells;This effect was abolished by the Nrf2 inhibitor ML385.Conclusion:Pue treatment alleviated the H2 O2-induced ferroptosis of RSC96 cells via the Nrf2/SLC7A11/GPX4 signaling pathway.
9.Research on Health Related Quality of Life and Disease Economic Burden of Chinese Phenylketonuria Patients
Hao DING ; Jiayin ZHENG ; Luning ZHANG ; Minglin SUN ; Tiemin ZHAI ; Linkang LI
Chinese Health Economics 2025;44(11):86-90
Objective:To assess health-related quality of life and disease burden of Chinese Phenylketonuria(PKU)patients and inform optimized management and support strategies.Methods:A cross-sectional survey is conducted to explore questionnaires.The Delphi method was applied to form a standardized questionnaire.Results:A total of 263 valid questionnaires were collected.The average patient age was 7.6 years.Younger patients reported better quality of life.Mean total medical cost per patient was 238 461.9 yuan,exceeding the 2024 national per capita disposable income.Conclusion:PKU patients are facing significant challenges in both quality of life and economic burden.
10.Application value of risk prediction model for acute kidney injury after donation of cardiac death liver transplantation based on machine learning algorithm
Guanrong CHEN ; Jinyan CHEN ; Xin HU ; Ronggao CHEN ; Yingchen HUANG ; Yao JIANG ; Zhongzhou SI ; Jiayin YANG ; Jinzhen CAI ; Li ZHUANG ; Zhicheng ZHOU ; Shusen ZHENG ; Xiao XU
Chinese Journal of Digestive Surgery 2025;24(2):236-248
Objective:To investigate the application value of risk prediction model for acute kidney injury (AKI) after donation of cardiac death (DCD) liver transplantation based on machine learning algorithm.Methods:The retrospective cohort study was conducted. The clinicopathological data of 1 001 pairs of DCD liver transplant donors and recipients at five hospitals, including The First Affiliated Hospital of Zhejiang University School of Medicine et al, in the Chinese Liver Transplan-tation Registry from January 2015 to December 2023 were collected. Of the donors, there were 825 males and 176 females. Of the recipients, there were 806 males and 195 females, aged 52 (range, 18-75)years. There were 281 recipients included using oversampling technique, and all 1 282 recipients were divided to the training set of 897 recipients and the validation set of 385 recipients by a ratio of 7∶3 using computer-generated random numbers. Seven prediction models, including Random Forest (RF), Extreme Gradient Boosting (XGBoost), Support Vector Machine (SVM), Logistic Regression (LR), Decision Tree (DT), K-Nearest Neighbors (KNN), and Categorical Boosting (CatBoost), were constructed for AKI after liver transplantation based on machine learning algorithm. Observation indicators: (1) comparison of clinicopathological characteristics between recipients with and without AKI and donors; (2) follow-up and survival of recipients with and without AKI; (3) construction and validation of nomogram prediction model of AKI after liver transplantation; (4) construction and validation of machine learning prediction model of AKI after liver transplantation. Comparison of measurement data with normal distribution between groups was conducted using the independent sample t test. Comparison of measurement data with skewed distribution between groups was conducted using the Mann-Whitney U test, and comparison among groups was conducted using the Kruskal-Wallis H test. Comparison of count data between groups was conducted using the chi-square test or corrected chi-square test. Kaplan-Meier method was used to calculate survival rates and plot survival curves. Logistic regression model was performed for univariate and multivariate analyses. The receiver operating characteristic (ROC) curve was plotted to calculate area under curve (AUC) and 95% confidence interval ( CI). The performance of prediction model was evaluated using DeLong test, accuracy, sensitivity, specificity. The calibration curve was plotted to evaluate the performance of predicted probability and actual probability. The interpretability analysis of machine learning algorithm and SHapley Additive exPlanations was used to explain the model decision separately. Results:(1) Comparison of clinicopathological characteristics between recipients with and without AKI and donors. Of 1 001 recipients, there were 360 cases with AKI and 641 cases without AKI after liver transplantation. There were significant differences in body mass index (BMI), hepatic encepha-lopathy, hepatitis B surfact antigen (HBsAg), hepatorenal syndrome (HRS) and donor diabetes, donor blood urea nitrogen, donor alanine aminotransferase, donor aspartate aminotransferase, mass of graft, volume of blood loss during liver transplantation, warm ischema time of donor liver, and operation time between recipients with and without AKI ( Z=-4.337, χ2=9.751, 9.088, H=11.142, χ2=5.286, Z=-3.360, -2.539, -3.084, -1.730, -3.497, -1.996, -2.644, P<0.05). (2) Follow-up and survival of recipients with and without AKI. All the 1 001 recipients received follow-up. The recipients with AKI after liver transplantation were followed up for 18.6(range, 0-102.3)months, and recipients without AKI after liver transplantation were followed up for 31.9(range, 0.1-105.5)months. The 1-, 3-, and 5-year overall survival rates were 72.1%, 63.5%, and 59.3% of recipients with AKI, versus 86.7%, 76.7%, and 72.5% of recipients without AKI, respectively, showing a significant difference in overall survival between them ( χ2=26.028, P<0.05). (3) Construction and validation of nomogram predic-tion model of AKI after liver transplantation. Results of multivariate analysis showed that recipient BMI, recipient creatinine, recipient HBsAg, recipient HRS, donor blood urea nitrogen, donor crea-tinine, anhepatic phase and volume of blood loss during liver transplantation were independent risk factors for AKI of recipients after liver transplantation ( odds ratio=1.113, 0.998, 0.605, 1.580, 1.047, 0.998, 1.006, 1.157, 95% CI as 1.070-1.157, 0.996-1.000, 0.450-0.812, 1.021-2.070, 1.021-1.074, 0.996-0.999, 1.000-1.012, 1.045-1.281, P<0.05). The nomogram prediction model of AKI after liver transplantation was constructed based on the results of multivariate analysis. Results of ROC curve showed that the AUC of 0.666 (95% CI as 0.637-0.696). (4) Construction and validation of machine learning prediction model of AKI after liver transplantation. Based on the Lasso regression analysis, seven machine learning algorithm prediction models, including RF, XGBoost, SVM, LR, DT, KNN, and CatBoost, were constructed, with ROC curves of the validation set plotted. The AUC of above models were 0.863, 0.841, 0.721, 0.637, 0.620, 0.708, 0.731, accuracies were 0.764, 0.782, 0.701, 0.592, 0.605, 0.605, 0.681, sensitivities were 0.764, 0.789, 0.719, 0.588, 0.694, 0.694, 0.704, specificities were 0.763, 0.774, 0.683, 0.597, 0.511, 0.511, 0.656, respectively. Delong test showed that the RF model with the highest AUC of 0.863(95% CI as 0.828-0.899). Calibration curve analysis showed the predicted probability closest to the actual probability of RF model, indicating the model with a good validation value. Further sorting of SHAP of different clinical factors based on RF model showed that recipient BMI, donor blood urea nitrogen, volume of blood loss during liver transplantation, donor age had large effects on the output outcomes. Conclusion:The nomogram prediction model and seven machine learning algorithm prediction models for AKI after DCD liver transplantation are constructed, and the RF model based on machine learning has a better predictive performance.

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