1.Study on the Adsorption of Disposable Transfusion Connective Tube and Infusion Needle for Single Use only to Nitroglycerin
Xiaohua XIE ; Jincheng TAO ; Wenjing QIAN ; Shaogang SONG ; Yi ZHAO
China Pharmacy 2001;0(07):-
OBJECTIVE:To study the adsorption of disposable transfusion connective tube and infusion needle for single use only to nitroglycerin in intravenous injection via minipump.METHODS:The intravenous injection via minipump was im-itated;the concentration change of nitroglycerin during the injection process was determined by the high performance liquid chromatography(HPLC)and ultraviolet spectrophotometry.RESULTS:Disposable transfusion connective tube and infusion needle for single use only had significant adsorption to nitroglycerin with an mean adsorption rate at(73.88?2.05)%within8hours.CONCLUSION:It is unsuitable to use those disposable transfusion connective tubes and infusion needles for single use only that have strong adsorption to nitroglycerin in the intravenous injection of nitroglycerin via minipump.
2.Effects of hydrogen sulfide on apoptosis of cardiomyocytes after cardiopulmonary resuscitation in a rat model
Xuemeng XIE ; Hao PAN ; Beibei LIU ; Di CHEN ; Jincheng ZHANG ; Guangtian YANG
Chinese Journal of Emergency Medicine 2014;23(1):19-23
Objective To explore the effects of hydrogen sulfide (H2S) on apoptosis of cardiomyocytes after cardiopulmonary resuscitation (CPR) in rat models.Methods Forty-five male SD rats were randomly into sham group (n =15),CPR group (n =15) and NaHS group (n =15).Rats of CPR group and NaHS group were operated to induce cardiac arrest by transcutaneous electrical stimulation to epicardium.In NaHS group,NaHS (5 mg/kg) was administrated via the femoral venous line 1 min before CPR.Hemodynamic variables were monitored and obtained continuously.Survival rats were sacrificed at 24 h after restoration of spontaneous circulation and the hearts were removed for analysis by RT-PCR and TUNEL assays.Blood samples were collected and plasma content of cTnT was detected.Results Compared with the CPR group,animals treated with NaHS had improved left ventricular function (P <0.01),lower plasma cTnT levels (P <0.05) and decreased apoptosis index (P < 0.01) 24 h after ROSC.The expressions of Caspase-3 mRNA,Bax mRNA and Bcl-2 mRNA in CPR group and NaHS group were higher compared with the control group (P <0.01).The NaHS group had lower expressions of Caspase-3 mRNA and Bax mRNA (P <0.01),but higher expression of Bcl-2 mRNA (P <0.05) compared with the CPR group.Conclusions Exogenous (H2S) regulated the expressions of Caspase-3,Bax and Bcl-2 mRNA,thereby preventing apoptosis of cardiomyocytes,inhibiting cTnT release and improving left ventricular function 24 h after CPR.
3.The effects of exogenous hydrogen sulfide on injury of rat hippocampus neurons induced by oxygen-glucose deprivation and restoration
Beibei LIU ; Hao PAN ; Di CHEN ; Xuemeng XIE ; Jincheng ZHANG ; Guangtian YANG
Chinese Journal of Emergency Medicine 2014;23(7):770-775
Objective To investigate the effects of exogenous hydrogen sulfide (H2S) on injury of rat hippocampus neurons induced by oxygen-glucose deprivation and restoration (OGD/R) and explore its mechanism.Methods Hippocampus neurons were isolated from embryonic day 16-18 (E16-18) rat embryos.Hippocampus was immediately removed and digested with 0.25% trypsin.The neurons were isolated and cultured at 37 ℃ for 7 days and neuron-specific enolase (NSE) was detected by immunohistochemical staining method to identify neurons.At 8th day,the neurons were placed in deoxygenated glucose-free medium and exposed to 95% N2-5% CO2 in an air tight chamber for 1 hour,and then replaced the glucose-free medium with original medium,and returned the cultures to a standard incubator in 5% CO2 at 37 ℃ and incubated for another 24 h.The neurons were divided into 3 groups:group Ⅰ control; group Ⅱ OGD/R,and group ⅢOGD + NaHS,the latter was further divided into 5 subgroups:groups Ⅲ1-5 with 25,50,100,200,400 μmol/L NaHS added,respectively.Then cell viability was quantified by MTT method,the level of lactate dehydrogenase (LDH) were detected,apoptosis was measured by Annexin V FITC/PI Apoptosis Kits,and RT-PCR was used to assay HIF-1 α mRNA in neurons in all groups.Results Compared with control group,the LDH level,apoptosis and expression of HIF-1α mRNA in group Ⅱ were significantly increased,the cell viability was significantly decreased (P < 0.01).There were no significant differences in the LDH level,apoptosis and expression of HIF-1 α mRNA and the cell viability between group Ⅱ and group Ⅲ1 (P > 0.05).Compared with group Ⅱ,the LDH level,apoptosis and expression of HIF-1α mRNA in group Ⅲ2-4 were significantly increased,the cell viability was significantly increased (P < 0.01).Compared with group Ⅱ,the LDH level,apoptosis and expression of HIF-1 α mRNA in the group Ⅲ 5 were significantly decreased,the cell viability was significantly decreased (P < 0.01).Conclusions H2S of low concentration has no significant effects on injury of rat hippocampus neurons induced by OGD/R.H2S of moderate doses can protect rat hippocampus neurons from OGD/R injury and H2S of high concentration can aggravate injury.The expression of HIF-1α mRNA in rat hippocampus neurons was increased after OGD/R,and the protective role of H2S is associated with increase in the expression of HIF-1α mRNA.
4.Clinical application of three-dimensional printing in the treatment of knee varus with high tibial osteotomy
Yuntao LIU ; Xin'an ZHANG ; Peng WANG ; Panpan XIE ; Jincheng HUANG ; Yongchao ZHANG ; Hongkai LIAN
Chinese Journal of Orthopaedic Trauma 2019;21(3):247-253
Objective To evaluate the clinical application of a three-dimensional (3D) printing personalized guide for medial open wedge high tibial osteotomy(MOWHTO) in the treatment of knee varus osteoarthritis.Methods A retrospective study was conducted of the 16 patients with knee varus osteoarthritis who had been treated at Department of Orthopaedics,Zhengzhou Central Hospital of Zhengzhou University from January 2016 to January 2017.They were 6 men and 10 women,aged from 49 to 65 years (mean,55.8 years).Bilateral knees were involved in 2 cases and a unilateral knee was involved in 14 cases.Their disease duration ranged from one to 12 years (mean,5.3 years).A personalized guide for MOWHTO was designed and manufactured by 3D printing for every patient preoperatively.All the patients underwent knee arthroscopy before osteotomy which was assisted by the personalized guide.The femorotibial angle (FTA),medial proximal tibial angle (MPTA),weight bearing line (WBL),posterior tibial slope (PTSA) and the patellofemoral height Insall-Salvati index (IS index) were measured on their X-ray radiographs preoperatively and 6 months postoperatively.The Hospital for Special Surgery (HSS) score and visual analogue scale (VAS) were used to evaluate the outcomes at the final follow-ups.Results All surgeries were successful.The 16 patients were followed up for 6 to 12 months (mean,9.1 months).The FTA,MPTA,WBL and IS index at postoperative 6 months were significantly improved than the preoperative values (P < 0.05).There was no significant difference between postoperative PTSA and preoperative PTSA (P =0.990).The mean VAS scores for the 16 patients at the final follow-ups were 0.8 ± 0.7 peints,significantly better than the preoperative ones (4.2 ± 0.9 points) (P < 0.05);their mean postoperative HSS scores (89.3 ± 6.7 points) were also significantly improved than the preoperative ones (61.9 ± 10.5 points) (P < 0.05).According to the HSS scores at the final follow-ups,the surgical outcomes were excellent in 14 knees,good in 3 and fair in one.Conclusion A 3D printed osteotomy guide can be used to perform precise osteotomy in MOWHTO for knee varus osteoarthritis,leading to effective correction of the alignment of the lower limb and good short-term surgical outcomes.
5.A multi-modal feature fusion classification model based on distance matching and discriminative representation learning for differentiation of high-grade glioma from solitary brain metastasis
Zhenyang ZHANG ; Jincheng XIE ; Weixiong ZHONG ; Fangrong LIANG ; Ruimeng YANG ; Xin ZHEN
Journal of Southern Medical University 2024;44(1):138-145
Objective To explore the performance of a new multimodal feature fusion classification model based on distance matching and discriminative representation learning for differentiating high-grade glioma(HGG)from solitary brain metastasis(SBM).Methods We collected multi-parametric magnetic resonance imaging(MRI)data from 61 patients with HGG and 60 with SBM,and delineated regions of interest(ROI)on T1WI,T2WI,T2-weighted fluid attenuated inversion recovery(T2_FLAIR)and post-contrast enhancement T1WI(CE_T1WI)images.The radiomics features were extracted from each sequence using Pyradiomics and fused using a multimodal feature fusion classification model based on distance matching and discriminative representation learning to obtain a classification model.The discriminative performance of the classification model for differentiating HGG from SBM was evaluated using five-fold cross-validation with metrics of specificity,sensitivity,accuracy,and the area under the ROC curve(AUC)and quantitatively compared with other feature fusion models.Visual experiments were conducted to examine the fused features obtained by the proposed model to validate its feasibility and effectiveness.Results The five-fold cross-validation results showed that the proposed multimodal feature fusion classification model had a specificity of 0.871,a sensitivity of 0.817,an accuracy of 0.843,and an AUC of 0.930 for distinguishing HGG from SBM.This feature fusion method exhibited excellent discriminative performance in the visual experiments.Conclusion The proposed multimodal feature fusion classification model has an excellent ability for differentiating HGG from SBM with significant advantages over other feature fusion classification models in discrimination and classification tasks between HGG and SBM.
6.An MRI multi-sequence feature imputation and fusion mutual-aid model based on sequence deletion for differentiation of high-grade from low-grade glioma
Chuixing WU ; Weixiong ZHONG ; Jincheng XIE ; Ruimeng YANG ; Yuankui WU ; Yikai XU ; Linjing WANG ; Xin ZHEN
Journal of Southern Medical University 2024;44(8):1561-1570
Objective To evaluate the performance of magnetic resonance imaging(MRI)multi-sequence feature imputation and fusion mutual model based on sequence deletion in differentiating high-grade glioma(HGG)from low-grade glioma(LGG).Methods We retrospectively collected multi-sequence MR images from 305 glioma patients,including 189 HGG patients and 116 LGG patients.The region of interest(ROI)of T1-weighted images(T1WI),T2-weighted images(T2WI),T2 fluid attenuated inversion recovery(T2_FLAIR)and post-contrast enhancement T1WI(CE_T1WI)were delineated to extract the radiomics features.A mutual-aid model of MRI multi-sequence feature imputation and fusion based on sequence deletion was used for imputation and fusion of the feature matrix with missing data.The discriminative ability of the model was evaluated using 5-fold cross-validation method and by assessing the accuracy,balanced accuracy,area under the ROC curve(AUC),specificity,and sensitivity.The proposed model was quantitatively compared with other non-holonomic multimodal classification models for discriminating HGG and LGG.Class separability experiments were performed on the latent features learned by the proposed feature imputation and fusion methods to observe the classification effect of the samples in two-dimensional plane.Convergence experiments were used to verify the feasibility of the model.Results For differentiation of HGG from LGG with a missing rate of 10%,the proposed model achieved accuracy,balanced accuracy,AUC,specificity,and sensitivity of 0.777,0.768,0.826,0.754 and 0.780,respectively.The fused latent features showed excellent performance in the class separability experiment,and the algorithm could be iterated to convergence with superior classification performance over other methods at the missing rates of 30%and 50%.Conclusion The proposed model has excellent performance in classification task of HGG and LGG and outperforms other non-holonomic multimodal classification models,demonstrating its potential for efficient processing of non-holonomic multimodal data.
7.A multi-modal feature fusion classification model based on distance matching and discriminative representation learning for differentiation of high-grade glioma from solitary brain metastasis
Zhenyang ZHANG ; Jincheng XIE ; Weixiong ZHONG ; Fangrong LIANG ; Ruimeng YANG ; Xin ZHEN
Journal of Southern Medical University 2024;44(1):138-145
Objective To explore the performance of a new multimodal feature fusion classification model based on distance matching and discriminative representation learning for differentiating high-grade glioma(HGG)from solitary brain metastasis(SBM).Methods We collected multi-parametric magnetic resonance imaging(MRI)data from 61 patients with HGG and 60 with SBM,and delineated regions of interest(ROI)on T1WI,T2WI,T2-weighted fluid attenuated inversion recovery(T2_FLAIR)and post-contrast enhancement T1WI(CE_T1WI)images.The radiomics features were extracted from each sequence using Pyradiomics and fused using a multimodal feature fusion classification model based on distance matching and discriminative representation learning to obtain a classification model.The discriminative performance of the classification model for differentiating HGG from SBM was evaluated using five-fold cross-validation with metrics of specificity,sensitivity,accuracy,and the area under the ROC curve(AUC)and quantitatively compared with other feature fusion models.Visual experiments were conducted to examine the fused features obtained by the proposed model to validate its feasibility and effectiveness.Results The five-fold cross-validation results showed that the proposed multimodal feature fusion classification model had a specificity of 0.871,a sensitivity of 0.817,an accuracy of 0.843,and an AUC of 0.930 for distinguishing HGG from SBM.This feature fusion method exhibited excellent discriminative performance in the visual experiments.Conclusion The proposed multimodal feature fusion classification model has an excellent ability for differentiating HGG from SBM with significant advantages over other feature fusion classification models in discrimination and classification tasks between HGG and SBM.
8.An MRI multi-sequence feature imputation and fusion mutual-aid model based on sequence deletion for differentiation of high-grade from low-grade glioma
Chuixing WU ; Weixiong ZHONG ; Jincheng XIE ; Ruimeng YANG ; Yuankui WU ; Yikai XU ; Linjing WANG ; Xin ZHEN
Journal of Southern Medical University 2024;44(8):1561-1570
Objective To evaluate the performance of magnetic resonance imaging(MRI)multi-sequence feature imputation and fusion mutual model based on sequence deletion in differentiating high-grade glioma(HGG)from low-grade glioma(LGG).Methods We retrospectively collected multi-sequence MR images from 305 glioma patients,including 189 HGG patients and 116 LGG patients.The region of interest(ROI)of T1-weighted images(T1WI),T2-weighted images(T2WI),T2 fluid attenuated inversion recovery(T2_FLAIR)and post-contrast enhancement T1WI(CE_T1WI)were delineated to extract the radiomics features.A mutual-aid model of MRI multi-sequence feature imputation and fusion based on sequence deletion was used for imputation and fusion of the feature matrix with missing data.The discriminative ability of the model was evaluated using 5-fold cross-validation method and by assessing the accuracy,balanced accuracy,area under the ROC curve(AUC),specificity,and sensitivity.The proposed model was quantitatively compared with other non-holonomic multimodal classification models for discriminating HGG and LGG.Class separability experiments were performed on the latent features learned by the proposed feature imputation and fusion methods to observe the classification effect of the samples in two-dimensional plane.Convergence experiments were used to verify the feasibility of the model.Results For differentiation of HGG from LGG with a missing rate of 10%,the proposed model achieved accuracy,balanced accuracy,AUC,specificity,and sensitivity of 0.777,0.768,0.826,0.754 and 0.780,respectively.The fused latent features showed excellent performance in the class separability experiment,and the algorithm could be iterated to convergence with superior classification performance over other methods at the missing rates of 30%and 50%.Conclusion The proposed model has excellent performance in classification task of HGG and LGG and outperforms other non-holonomic multimodal classification models,demonstrating its potential for efficient processing of non-holonomic multimodal data.
9.Opportunities and challenges of incretin-based hypoglycemic agents treating type 2 diabetes mellitus from the perspective of physiological disposition.
Yaochen XIE ; Qian ZHOU ; Qiaojun HE ; Xiaoyi WANG ; Jincheng WANG
Acta Pharmaceutica Sinica B 2023;13(6):2383-2402
The treatment of patients with diabetes mellitus, which is characterized by defective insulin secretion and/or the inability of tissues to respond to insulin, has been studied for decades. Many studies have focused on the use of incretin-based hypoglycemic agents in treating type 2 diabetes mellitus (T2DM). These drugs are classified as GLP-1 receptor agonists, which mimic the function of GLP-1, and DPP-4 inhibitors, which avoid GLP-1 degradation. Many incretin-based hypoglycemic agents have been approved and are widely used, and their physiological disposition and structural characteristics are crucial in the discovery of more effective drugs and provide guidance for clinical treatment of T2DM. Here, we summarize the functional mechanisms and other information of the drugs that are currently approved or under research for T2DM treatment. In addition, their physiological disposition, including metabolism, excretion, and potential drug-drug interactions, is thoroughly reviewed. We also discuss similarities and differences in metabolism and excretion between GLP-1 receptor agonists and DPP-4 inhibitors. This review may facilitate clinical decision making based on patients' physical conditions and the avoidance of drug-drug interactions. Moreover, the identification and development of novel drugs with appropriate physiological dispositions might be inspired.
10.Traditional Chinese Medicine Intervention in Sepsis Based on TLR4 Signaling Pathway: A Review
Jing YAN ; Sheng XIE ; Laian GE ; Guangyao WANG ; Zhu LIU ; Bingjie HAN ; Yaoxuan ZENG ; Jinchan PENG ; Jincheng QIAN ; Liqun LI
Chinese Journal of Experimental Traditional Medical Formulae 2024;30(19):282-291
Sepsis is one of the common severe diseases caused by the dysregulated host response to infection, which seriously threatens the life and health of human beings all over the world. The incidence and mortality of the disease are extremely high, and it has always been an urgent problem to be solved in the field of acute and critical diseases. At present, anti-infection, fluid resuscitation, mechanical ventilation and other programs are most used in clinic to treat sepsis, but their poor prognosis and high cost and other issues remain to be resolved. Therefore, it is necessary to explore a new, efficient, safe and inexpensive drug and treatment model at this stage. The treatment of traditional Chinese medicine (TCM) is based on syndrome differentiation and holistic concept. It can effectively regulate the progression of sepsis, maintain the homeostasis of the body, and has fewer adverse reactions. It has achieved good clinical results. In recent years, a large number of studies have shown that TCM can reduce the inflammatory response by regulating the Toll-like receptor 4(TLR4) signaling pathway, thereby reducing the severity and mortality of sepsis patients. However, there is still a lack of systematic exposition of TCM regulating TLR4 signaling pathway in the treatment of sepsis. Therefore, this article summarizes the relationship between TLR4 signaling pathway and sepsis and the mechanism of TCM in the disease by searching and consulting relevant literature in recent years. It is found that some Chinese medicine monomers and active ingredients, Chinese medicine compounds and Chinese medicine preparations can effectively reduce systemic inflammatory response, repair organ damage and improve the prognosis of sepsis by inhibiting the activation of TLR4 signaling pathway. However, due to various limitations, some studies have directly focused on the differential expression and function of TLR4, ignoring the downstream molecular expression and phenotypic effects of TLR4. The alternative mechanism, relationship and specific molecular mechanism of the pathway are still unclear. There are problems such as unclear pharmacokinetics and unclear mechanism in the pro- and anti-inflammatory balance, which need to be further studied and explored in order to provide new ideas for the potential treatment and drug development for sepsis.