1.Development and validation of a nomogram prediction model for in-hospital mortality risk in patients with sepsis complicated with acute pulmonary embolism.
Li HUANG ; Zhengbin WANG ; Yan ZHANG ; Xiao YUE ; Shuo WANG ; Yanxia GAO
Chinese Critical Care Medicine 2025;37(2):123-127
OBJECTIVE:
To explore the risk factors affecting the prognosis of patients with sepsis complicated with acute pulmonary embolism, and to construct and validate a nomogram predictive model for in-hospital mortality risk.
METHODS:
Based on the American Medical Information Mart for Intensive Care (MIMIC-III, MIMIC-IV) databases, the data were collected on patients with sepsis complicated with acute pulmonary embolism from 2001 to 2019, including baseline characteristics, and vital signs, disease scores, laboratory tests within 24 hours of admission to the intensive care unit (ICU), and interventions. In-hospital mortality was the outcome event. The total samples were divided into training and testing sets in a 7:3 ratio by random sampling. Univariate Cox regression analysis was used to verify the impact of all variables on the risk of in-hospital mortality, thereby screen potential influencing factors. Subsequently, a stepwise bi-directional regression method was applied to select factors one by one, leading to the construction of a nomogram prediction model. Collinearity testing was used to demonstrate the absence of strong multicollinearity among the influencing factors in the nomogram prediction model. The discrimination of the nomogram model, sequential organ failure assessment (SOFA), and simplified pulmonary embolism severity index (sPESI) was evaluated using C-index in the test set. Receiver operator characteristic curve (ROC curve) was drawn to evaluate the predictive value of various models for in-hospital mortality in patients with sepsis complicated with acute pulmonary embolism.
RESULTS:
A total of 562 patients with sepsis complicated with acute pulmonary embolism were included, including 393 in the training set and 169 in the testing set. Univariate Cox regression analysis showed that 30 factors associated with in-hospital mortality in patients with sepsis complicated with acute pulmonary embolism. Through stepwise bi-directional regression, 12 variables were ultimately selected, including gender, presence of malignant tumors, body temperature, red cell distribution width (RDW), blood urea nitrogen (BUN), serum potassium, prothrombin time (PT), 24-hour urine output, mechanical ventilation, vasoactive drugs, warfarin use, and sepsis-induced coagulopathy (SIC). Collinearity testing indicated no strong multicollinearity among the influencing factors [all variance inflation factor (VIF) > 10]. A nomogram model was constructed using the 12 variables mentioned above. The nomogram model predicted the C-index and its 95% confidence interval (95%CI) of in-hospital mortality in patients with sepsis complicated with acute pulmonary embolism better than SOFA score and sPESI [0.771 (0.725-0.816) vs. 0.579 (0.519-0.639), 0.608 (0.554-0.663)]. The ROC curve showed that the area under the curve (AUC) and its 95%CI of the nomogram model were higher than those of the SOFA score and sPESI [0.811 (0.766-0.857) vs. 0.630 (0.568-0.691), 0.623 (0.566-0.680)]. These findings were consistently replicated in the internal validation of the testing set. In both the training and testing sets, Delong's test showed that the AUC of the nomogram model was significantly higher than the SOFA score and sPESI (both P < 0.05).
CONCLUSION
The nomogram model demonstrated good predictive effectiveness for the risk of in-hospital mortality in patients with sepsis complicated with acute pulmonary embolism, enabling clinicians to predict mortality risk in advance and take timely interventions to reduce mortality.
Humans
;
Pulmonary Embolism/mortality*
;
Hospital Mortality
;
Nomograms
;
Sepsis/complications*
;
Prognosis
;
Risk Factors
;
Intensive Care Units
;
Male
;
Female
;
Middle Aged
;
Aged
2.Establishment and evaluation of a machine learning prediction model for sepsis-related encephalopathy in the elderly.
Xiao YUE ; Yiwen WANG ; Zhifang LI ; Lei WANG ; Li HUANG ; Shuo WANG ; Yiming HOU ; Shu ZHANG ; Zhengbin WANG
Chinese Critical Care Medicine 2025;37(10):937-943
OBJECTIVE:
To construct machine learning prediction model for sepsis-associated encephalopathy (SAE), and analyze the application value of the model on early identification of SAE risk in elderly septic patients.
METHODS:
Patients aged over 60 years with a primary diagnosis of sepsis admitted to intensive care unit (ICU) from 2008 to 2023 were selected from Medical Information Mart for Intensive Care-IV 2.2 (MIMIC-IV 2.2). Demographic variables, disease severity scores, comorbidities, interventions, laboratory indicators, and hospitalization details were collected. Key factors associated with SAE were identified using univariate Logistic regression analysis. The data were randomly divided into training and validation sets in a 7 : 3 ratio. Multivariable Logistic regression analysis was conducted in the training set and visualized using a nomogram model for prediction of SAE. The discrimination of the model was evaluated in the validation set using the receiver operator characteristic curve (ROC curve), and its calibration was assessed using calibration curve. Furthermore, multiple machine learning algorithms, including multi-layer perceptron (MLP), support vector machine (SVM), naive bayes (NB), gradient boosting machine (GBM), random forest (RF), and extreme gradient boosting (XGB), were constructed in the training set. Their predictive performance was subsequently evaluated on the validation set. Taking the XGB model as an example, the interpretability of the model through the SHapley Additive exPlanations (SHAP) algorithm was enhanced to identify the key predictive factors and their contributions.
RESULTS:
A total of 2 204 septic patients were finally enrolled, of whom 840 developed SAE (38.1%). A total of 21 variables associated with SAE were screened through univariate Logistic regression analysis. Multivariable Logistic regression analysis showed that endotracheal intubation [odds ratio (OR) = 0.40, 95% confidence interval (95%CI) was 0.19-0.88, P < 0.001], oxygen therapy (OR = 0.76, 95%CI was 0.53-0.95, P = 0.023), tracheotomy (OR = 0.20, 95%CI was 0.07-0.53, P < 0.001), continuous renal replacement therapy (CRRT; OR = 0.32, 95%CI was 0.15-0.70, P < 0.001), cerebrovascular disease (OR = 0.31, 95%CI was 0.16-0.60, P < 0.001), rheumatic disease (OR = 0.44, 95%CI was 0.19-0.99, P < 0.001), male (OR = 0.68, 95%CI was 0.54-0.86, P = 0.001), and maximum anion gap (AG; OR = 0.95, 95%CI was 0.93-0.97, P < 0.001) were associated with an decreased probability of SAE, and age (OR = 1.05, 95%CI was 1.03-1.06, P < 0.001), acute physiology score III (APSIII; OR = 1.02, 95%CI was 1.01-1.02, P < 0.001), Oxford acute severity of illness score (OASIS; OR = 1.04, 95%CI was 1.03-1.06, P < 0.001), and length of hospital stay (OR = 1.01, 95%CI was 1.01-1.02, P < 0.001) were associated with an increased probability of SAE. A nomogram model was constructed based on these variables. In the validation set, ROC curve analysis showed that the model achieved an area under the ROC curve (AUC) of 0.723, and the calibration curve showed good consistency between the predicted probability of the model and the observed probability. Among the machine learning algorithms, including MLP, SVM, NB, GBM, RF, and XGB, the SVM model and RF model demonstrated relatively good predictive performance, with AUC of 0.748 and 0.739, respectively, and the sensitivity was both exceeding 85%. The predictive performance of the XGB model was explained through SHAP analysis, and the results indicated that APSIII score (SHAP value was 0.871), age (SHAP value was 0.521), and OASIS score (SHAP value was 0.443) were important factors affecting the predictive performance of the model.
CONCLUSIONS
The machine learning-based SAE prediction model exhibits good predictive capability and holds significant application value for the early identification of SAE risk in elderly septic patients.
Humans
;
Machine Learning
;
Aged
;
Sepsis-Associated Encephalopathy
;
Sepsis/complications*
;
Intensive Care Units
;
Logistic Models
;
Middle Aged
;
Male
;
ROC Curve
;
Female
;
Bayes Theorem
;
Nomograms
;
Support Vector Machine
;
Algorithms
3.Effect of tuberculosis prevention and control in Wuhan in 2016 - 2021
Zhouqin LU ; Yuehua LI ; Meilan ZHOU ; Zhengbin ZHANG ; Dan TIAN ; Jianjie WANG ; Aiping YU ; Gang WU
Journal of Public Health and Preventive Medicine 2024;35(3):73-76
Objective To analyze and evaluate the implementation effect of tuberculosis prevention and control program in Wuhan, and to provide reference for scientific formulation of tuberculosis prevention and control measures. Methods Using the National Tuberculosis Information Management System, descriptive statistical analysis was carried out on the medical record information of pulmonary tuberculosis patients registered in Wuhan , 2016 - 2021. Results A total of 34 937 cases of pulmonary tuberculosis were registered in Wuhan , with an average annual incidence rate of 49.85/100 000. The incidence rate showed a downward trend year by year, with a statistically significant difference in 2016—2021 (χ2trend = 708.387, P<0.001). The patients mainly came from referrals, accounting for 71.86%, and the proportion of referrals varied significantly among different years (χ2=355.541, P<0.001). The diagnosis type was mainly pathogenic negative, accounting for 49.12%. The proportion of pathogenic negative had statistically significant difference among different years (χ2=1 354.830, P<0.001). The proportion of patients cured and completed the course of treatment reached 93.98%, with statistically significant differences in the proportions among different years (cured, χ2=1 080.252, P<0.001; completed the treatment course, χ2= 933.655, P<0.001). The sputum examination rate of newly diagnosed patients in each year reached over 90%, and the overall completion rate reached over 95%. The proportion of positive pathogens showed an increasing trend year by year. Conclusion The overall epidemic situation of tuberculosis in Wuhan is declining year by year, and tuberculosis prevention and control work has achieved remarkable results. Active screening in key areas and populations should be strengthened, and prevention and control strategies should be formulated by emphasizing the key and difficult points.
4.Prediction of critical energy release rate for cortical bone structure under different failure modes
Ruoxun FAN ; Yitong WANG ; Zhengbin JIA
Chinese Journal of Tissue Engineering Research 2024;28(36):5779-5784
BACKGROUND:Critical energy release rate is a global fracture parameter that could be measured during the failing process,and its value may change under different failure modes even in the same structure. OBJECTIVE:To propose an approach to predict the critical energy release rate in the femoral cortical bone structure under different failure modes. METHODS:Three-point bending and axial compression experiments and the corresponding fracture simulations were performed on the rat femoral cortical bone structures.Different critical energy release rates were repeatedly assigned to the models to perform fracture simulation,and the predicted load-displacement curves in each simulation were compared with the experimental data to back-calculate the critical energy release rate.The successful fit was that the differences in the fracture parameters between the predicted and experimental results were less than 5%. RESULTS AND CONCLUSION:(1)The results showed that the cortical bone structure occurred tensile open failure under three-point bending load,and the predicted critical energy release rate was 0.16 N/mm.(2)The same cortical bone structure occurred shear open failure under axial compression load,and the predicted critical energy release rate was 0.12 N/mm,which indicates that the critical energy release rate of the same cortical bone structure under different failure modes was different.(3)A comprehensive analysis from the perspectives of material mechanical properties and damage mechanism was conducted to reveal the reasons for the differences in the critical energy release rate in the cortical bone structure under different failure modes,which provided a theoretical basis for the measurement of the energy release rate and the accurate fracture simulation.
5.Effects of Different Running Speeds on Tissue-Level Failure Strain in Rat Femoral Cortical Bone
Ruoxun FAN ; Weijun WANG ; Zhengbin JIA
Journal of Medical Biomechanics 2024;39(1):62-68
Objective To predict the tissue-level failure strain of the cortical bone and discuss the effects of different running speeds on the mechanical properties of rat femoral cortical bone.Methods The threshold for cortical bone tissue-level failure strain was assigned,and fracture simulation under three-point bending was performed on a rat femoral finite element model.The predicted load-displacement curves in each simulation were compared and fitted with the experimental data to back-calculate the tissue-level failure strain.Results The cortical bone tissue-level failure strains at different running speeds were statistically different,which indicated that different running speeds had certain impacts on the micromechanical properties of the cortical bone structures.At a running speed of 12 m/min,the cortical bone structure expressed the greatest tissue-level failure strain,and at a running speed of 20 m/min,the cortical bone structure expressed the lowest tissue-level failure strain.Conclusions Based on the changing trends of tissue-level failure strain and in combination with the changes in macro-level failure load and tissue-level elastic modulus of cortical bone structures,the effects of different running speeds on the mechanical properties of cortical bone structures were discussed in this study.The appropriate running speed for improving the mechanical properties of the cortical bone was explored,thereby providing a theoretical basis for improving bone strength through running exercises.
6.Development and validation of a nomogram for predicting 3-month mortality risk in patients with sepsis-associated acute kidney injury
Xiao YUE ; Zhifang LI ; Lei WANG ; Li HUANG ; Zhikang ZHAO ; Panpan WANG ; Shuo WANG ; Xiyun GONG ; Shu ZHANG ; Zhengbin WANG
Chinese Critical Care Medicine 2024;36(5):465-470
Objective:To develop and evaluate a nomogram prediction model for the 3-month mortality risk of patients with sepsis-associated acute kidney injury (S-AKI).Methods:Based on the American Medical Information Mart for Intensive Care-Ⅳ (MIMIC-Ⅳ), clinical data of S-AKI patients from 2008 to 2021 were collected.Initially, 58 relevant predictive factors were included, with all-cause mortality within 3 months as the outcome event. The data were divided into training and testing sets at a 7∶3 ratio. In the training set, univariate Logistic regression analysis was used for preliminary variable screening. Multicollinearity analysis, Lasso regression, and random forest algorithm were employed for variable selection, combined with the clinical application value of variables, to establish a multivariable Logistic regression model, visualized using a nomogram. In the testing set, the predictive value of the model was evaluated through internal validation. The receiver operator characteristic curve (ROC curve) was drawn, and the area under the curve (AUC) was calculated to evaluate the discrimination of nomogram model and Oxford acute severity of illness score (OASIS), sequential organ failure assessment (SOFA), and systemic inflammatory response syndrome score (SIRS). The calibration curve was used to evaluate the calibration, and decision curve analysis (DCA) was performed to assess the net benefit at different probability thresholds.Results:Based on the survival status at 3 months after diagnosis, patients were divided into 7?768 (68.54%) survivors and 3?566 (31.46%) death. In the training set, after multiple screenings, 7 variables were finally included in the nomogram model: Logistic organ dysfunction system (LODS), Charlson comorbidity index, urine output, international normalized ratio (INR), respiratory support mode, blood urea nitrogen, and age. Internal validation in the testing set showed that the AUC of nomogram model was 0.81 [95% confidence interval (95% CI) was 0.80-0.82], higher than the OASIS score's 0.70 (95% CI was 0.69-0.71) and significantly higher than the SOFA score's 0.57 (95% CI was 0.56-0.58) and SIRS score's 0.56 (95% CI was 0.55-0.57), indicating good discrimination. The calibration curve demonstrated that the nomogram model's calibration was better than the OASIS, SOFA, and SIRS scores. The DCA curve suggested that the nomogram model's clinical net benefit was better than the OASIS, SOFA, and SIRS scores at different probability thresholds. Conclusions:A nomogram prediction model for the 3-month mortality risk of S-AKI patients, based on clinical big data from MIMIC-Ⅳ and including seven variables, demonstrates good discriminative ability and calibration, providing an effective new tool for assessing the prognosis of S-AKI patients.
7.Relation Between Micro-Level Energy Release Rate in the Cortical Bone and Rat Age
Liping HUANG ; Yitong WANG ; Chen HU ; Huajie WU ; Zhengbin JIA ; Ruoxun FAN
Journal of Medical Biomechanics 2024;39(4):631-636
Objective To predict the micro-level energy release rate in the rat femoral cortical bone and investigate the variation in the micro-level energy release rate with age.Methods Based on previous experimental data and numerical simulation of fracture modes for cortical bone,load-displacement curves and fracture modes measured by simulation and experiment were compared,and the micro-level energy release rates of rat femoral cortical bone at different months were predicted by back-calculation.Results It was predicted that the micro-level energy release rate of rat femoral cortical bone at 1-,3-,5-,7-,9-,11-,and 15-month age was 0.08-0.12,0.12-0.14,0.15-0.19,0.25-0.28,0.23-0.25,0.19-0.22,and 0.13-0.16 N/mm,respectively.Conclusions The decrease in the microlevel energy release rate with increasing age led to a decreasing failure load,indicating that the microlevel energy release rate is one of the main factors determining fracture occurrence;however,no significant decrease was observed at the time of fracture,indicating that the microlevel energy release rate was not linearly proportional to the fracture time.These results can help explain the mechanism of cortical bone fractures at the clinical level.
8.Value of derived NLR as a predictive biomarker for immunotherapy response in advanced non-small cell lung cancer
Lei ZHANG ; Zhendong QIAN ; Zhengbin WU ; Jingjing WANG
International Journal of Laboratory Medicine 2024;45(12):1474-1481
Objective To investigate the value of derived neutrophil to lymphocyte ratio(dNLR)as a pre-dictive biomarker for immunotherapy response in advanced non-small cell lung cancer(NSCLC).Methods A total of 92 patients with advanced NSCLC who received anti-programmed cell death receptor(PD-1)combined therapy in the hospital from August 2018 to December 2019 were selected as the research objects.Peripheral blood samples were collected within 24 h before immunotherapy,complete blood cell count was measured,and dNLR was calculated.Patients with advanced NSCLC were treated with PD-1 inhibitors or combination regi-mens,and the response to immunotherapy was evaluated by objective response rate(ORR)and disease control rate(DCR).The receiver operating characteristic(ROC)curve was used to analyze the predictive value of dN-LR for the diagnosis and response to immunotherapy in advanced NSCLC.Multivariate Logistic regression model was used to analyze the relationship between dNLR and immunotherapy response in advanced NSCLC.Kaplan-Meier survival curve and Log-Rank test were used to analyze the overall survival(OS),progression-free survival(PFS)and disease-specific survival(DSS)of the low dNLR group and the high dNLR group.Re-sults The ORR and DCR of advanced NSCLC patients after immunotherapy were 32.61%and 65.22%,re-spectively,and the PFS and OS were 17.0(8.5,25.5)and 24.0(12.7,36.1)months,respectively.The dNLR of DCR group was lower than that of non-DCR group(P<0.001).The dNLR of ORR group was lower than that of non-ORR group(P<0.001).The area under the curve of dNLR for predicting DCR or ORR was 0.897(95%CI 0.829-0.965)and 0.874(95%CI 0.795-0.953),respectively.Multivariate Logistic regres-sion analysis showed that dNLR≥2.28 increased the risk of non-response to immunotherapy,and this inde-pendent relationship still existed after further adjustment for objective confounding factors(P<0.05).Sur-vival curve results showed that patients with high dNLR had significantly shorter PFS,OS,and DSS(P<0.05).Multivariate Cox regression analysis showed that high dNLR was an independent factor affecting the poor prognosis of patients with advanced NSCLC(P<0.05).Conclusion High dNLR advanced NSCLC pa-tients are more difficult to benefit from immune therapy,and prognosis is worse.dNLR is promising as a pre-dictive biomarker for immunotherapy response in advanced NSCLC.
9.Diagnostic quality analysis of negative etiological pulmonary tuberculosis test results in Wuhan
Jianjie WANG ; Jun CHEN ; Ling XU ; Zhirui BAI ; Zhengbin ZHANG ; Yuehua LI
International Journal of Laboratory Medicine 2024;45(18):2197-2200,2206
Objective To analyze the diagnosis status of negative etiological pulmonary tuberculosis test re-sults in Wuhan,and to provide scientific basis for improving the diagnosis strategy of etiological negative pul-monary tuberculosis.Methods From January 1 to February 28,2019,a total of 241 patients with negative eti-ological tuberculosis who were registered,reported and treated in 1 municipal and 2 district-level designated hospitals were selected.The medical record data,chest imaging examination and laboratory examination re-sults of the selected patients were reviewed and extracted,and the quality of etiological examination and ima-ging examination of patients with negative etiological pulmonary tuberculosis were analyzed.Results Among the 241 patients,88.8%(214/241)of the patients met the diagnostic criteria for negative etiological pulmona-ry tuberculosis,and 96.3%(232/241)of the patients had chest imaging examinations that were consistent with the original diagnostic results.Patients received sputum smear examination,sputum culture,and molecu-lar biology test accounted for 97.9%(236/241),73.9%(178/241)and 65.6%(158/241),respectively.Patients received anti-tuberculosis antibody test,tuberculin skin test,y-interferon release and diagnostic anti-infection treatment accounted for 54.8%(132/241),46.5%(112/241),26.1%(63/241),and 53.1%(128/241),respec-tively.The sputum culture detection rate of urban area was higher than those of central and remote urban are-as,the rate of central urban area was higher than that of remote urban areas,and the molecular biology detec-tion rate of urban area was higher than those of central and remote urban area,with statistical significance(P<0.001).The detection rate of anti-tuberculosis antibody of urban area was lower than that of central ur-ban area,and the differences were statistically significant(P<0.001).The rate of diagnostic anti-infective therapy of central urban area was higher than that of urban area and the remote urban area,and the rate in ur-ban area was higher than that of remote urban area,and the differences were statistically significant(P<0.001).Conclusion It is necessary to further standardize the diagnosis of negative etiological pulmonany tu-berculosis of designated tuberculosis hospitals.The proportion of diagnostic anti-infection treatment and auxil-iary examination at the municipal level needs to be increased,and the frequency and items of laboratory etio-logical examination at the district level need to be increased.
10.Progresses of phage display technology application in fully human antibody discovery
Bixia LIU ; Yuan LIU ; Jing XIE ; Zhengbin GUO ; Bin WANG ; Qianfei ZUO ; Rui ZHANG
Immunological Journal 2023;39(10):910-915
Phage antibody display technology is currently the most widely used in vitro antibody screening technology,which uses bacteriophages as a vector,and inserts exogenous antibody library genes into phage capsid protein genes,and expresses the capsid protein on the phage surface while also displays the antibody protein.Antibody drugs play an important role in tumor immunity and microbial immunity due to their targeting advantages,which is also an important driving force for them to become a hot spot in the field of pharmaceutical research and development.Therefore,this article reviews the background,basic principles,antibody library types and antibody fragment types of phage display technology,and looks forward to the latest progress and application prospects of fully human antibodies.


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