1.Establishment of human lung adenocarcinoma multidrug resistance cell lines induced by paclitaxel and the mRNA expressions of DNA pol?,mdr1,mrp1,GST-?,lrp,and topo Ⅱ genes
Zhiju WANG ; Hongkun FAN ; Min LI ; Guoqiang ZHAO ; Ziming DONG
Journal of Xi'an Jiaotong University(Medical Sciences) 1982;0(04):-
Objective To establish human lung adenocarcinoma multidrug resistance cell lines in vitro,observe their biological characteristics,and investigate the mRNA expressions of DNA pol?,mdr 1,mrp1,GST-?,lrp and topo Ⅱ genes.Methods Paclitaxel-resistant cell lines(A549/TXL20) were established in vitro by exposure to stepwise increased concentrations of the drug in a cell culture medium.Biological morphology and cell cycles were analyzed by morphometry and flow cytometry.The chemoresistance indexes of cells were measured by methyl tetrazolium assay.Evaluation of growth and in vitro drug sensitivity were performed.RT-PCR was employed to analyze the mRNA expressions of the DNA pol?,mdr 1,mrp1,GST-?,lrp,and topo Ⅱ genes.Results ① Compared with parent cells,the resistant sublines had a lower confluent density.They were smaller and mixed with giant cells in different sizes and with different numbers of nucleoli,and the growth property of A549/TXL20 did not change significantly compared with A549 cell lines.② The resistant cells,A549/TXL20,were 19.3 times more resistant to paclitaxel and 67.4 times more resistant to cisplatin than the parent cells,and also demonstrated cross-resistance to mitomycin,vinblastine,and 5-fluouracil(5-FU). ③ Compared with the A549 celllines,an unreasonably higher level of drug resistance and lower drug concentration was detected in A549/TXL20 cells after exposure to the drug in the culture medium.④ The mRNA expression level of DNA pol?,mdr1,GST-?,mrp1 andlrp genes in A549/TXL20 cells was significantly higher than that in A549 cell lines(P
2.Application of multiple clinical pathway training in clinical teaching of Laboratory Diagnostics
Hongkun WU ; Jiangyan LI ; Xiaoxia FAN ; Jun CHEN ; Lin ZHOU
Chinese Journal of Medical Education Research 2017;16(9):895-899
Objective To explore the application and significance of multiple clinical pathway training oriented teaching model in clinical teaching of laboratory diagnostic. Methods Totally 50 medical students enrolled in the Second Military Medical University from September to December in 2015 were divided into experimental group and control group. The course consists of theoretical teaching and experi-mental operation. The pathway group (n=25) were introduced into multiple clinical pathway training oriented teaching method. The theoretical teaching was carried out bysimulation examination application, simulation interpretation and simulation diagnosis and treatment, while the experimental course was carried out by using video teaching combined with actual operation. The control group was taught by traditional teaching method using slide teaching and operation display. The theoretical test including case study and operational skill tests were performed among students in both groups after 10 class hours training . The satisfaction questionnaires were conducted to evaluate the effectiveness and satisfaction of teaching guided by clinical pathway. Differences were compared with independent sample t testing using GraphPad Prism 5.0 statistical software. Results The medical records about professional theoretical test including case study and opera-tional skill test in the pathway group were superior to those in the control group with significant statistical difference (both P<0.05). The records of medical students were (81.84±7.21), (42.00±2.79) in the pathway group and (76.24 ±6.98), (37.00 ±3.71) in the control group. The questionnaire result showed that the pathway group's satisfaction was high, especially with the theoretical knowledge andsceneteaching (higher than 80%). The pathway group believed that multiple clinical pathway training helped to improve learning interest and clinical thinking ability . Conclusions Multiple clinical pathway training oriented teaching model is helpful for the medical students to achieve the basic idea of clinical pathway, improve the profes-sional ability, enhance the interest of learning and the quality of teaching, standardize teaching and promote teaching and learning.
3.Expression and significance of Dysadherin mRNA in renal clear cell carcinoma
Hong XIAO ; Guiling FAN ; Huixia ZHENG ; Gang LIANG ; Yanglu ZHAO ; Ning LI ; Caixia CHENG ; Hongkun WANG ; Jianfang LIANG
Cancer Research and Clinic 2012;24(8):512-514
Objective To investigate the expression of Dysadherin and analyze its role in renal clear cell carcinoma (RCCC).Methods RT-PCR and immunohistochemical were used to detect the expression of Dysadherin in 60 cases of fresh RCCC and 60 adjacent normal renal tissues(male 35,female 25; age 37-78,median age 61; >7 cm 24,≤7 cm 36; Ⅰ/Ⅱ 39,Ⅲ/Ⅳ 21).Results Dysadherin mRNA expression in RCCC tissues (2.0043±0.2890) was higher than that in adjacent normal renal tissues (0.8461 ±0.2479) (t =6.8020,P < 0.05).Dysadherin expression was associated with nuclear grade.The expression of Dysadherin in nucleus grade Ⅲ and Ⅳ tumors were significantly higher than that in nucleus grade Ⅰ and Ⅱ tumors [the mRNA expression were 4.6224±0.3194,2.7780±0.2288,the positive rates of protein were 64.1% (25/39),95.2 % (20/21) (t =6.5750,x2 =5.495,P < 0.05)].There was no association between the expression of Dysadherin with sex (t =1.0530,x2 =0.023),age(t =0.0511,x2 =0.089) and tumor size (t =1.0330,x2 =0.370) (P > 0.05).Conclusion In RCCC,Dysadherin expression is positively associated with tumor aggressiveness based on grading.It seems that Dysadherin may be a valuable prognostic marker in RCCC.
4.Construction and identification of lentiviral vector of siRNA specific for Beclin1 gene.
Wenyu WANG ; Guoqiang ZHAO ; Yun ZHOU ; Hongkun FAN ; Gang WU
Journal of Biomedical Engineering 2013;30(1):131-135
The lentiviral vector was used for construction of a recombinant mediating RNA interference (RNAi) against Beclin1 gene in this study. Recombinant vector plasmid was transfected into non small cell lung cancer (NSCLC) A549 cells by liposome. PCR results showed that three amplified positive fragments were inserted into pRNAT-U6. 2/Lenti vectors. DNA sequencing results showed that the three recombinant lentivirus plasmids, pRNAT-U6. 2/Lenti-si356, pRNAT-U6. 2/Lenti-si423 and pRNAT-U6. 2/ Lenti-si684 were constructed successfully. After transfection with liposome, RT-PCR and Western blot analysis confirmed that the expression of Beclin1 mRNA and protein was inhibited in the three recombinant lentivirus plasmids transfected groups, and gene silencing efficacy was 35.56%, 89.22% and 66.78%, respectively. The results demonstrated that the lentiviral vectors of RNAi targeting Beclin1 gene were successfully constructed, and NSCLC A549 stable cell line with Beclin1 gene knockdown was established. This study finally provided a new cell model to explore the biological behavior of the Beclin1 gene in NSCLC A549 cells.
Apoptosis Regulatory Proteins
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genetics
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Autophagy
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genetics
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Base Sequence
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Beclin-1
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Carcinoma, Non-Small-Cell Lung
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genetics
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pathology
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Cell Line, Tumor
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Genetic Vectors
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genetics
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Humans
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Lentivirus
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genetics
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Lung Neoplasms
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genetics
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pathology
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Membrane Proteins
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genetics
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Molecular Sequence Data
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RNA Interference
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RNA, Small Interfering
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genetics
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Transfection
5.Value of machine learning models based on structural MRI for diagnosis of Parkinson disease
Yang YA ; Erlei WANG ; Lirong JI ; Nan ZOU ; Yiqing BAO ; Chengjie MAO ; Weifeng LUO ; Hongkun YIN ; Guohua FAN
Chinese Journal of Radiology 2023;57(4):370-377
Objective:To explore the value of machine learning models based on multiple structural MRI features for diagnosis of Parkinson disease (PD).Methods:The clinical and imaging data of 60 PD patients (PD group) diagnosed in the Neurology Department of the Second Affiliated Hospital of Soochow University from November 2017 to August 2019 and 56 normal elderly people (NC group) recruited from the community were retrospectively analyzed. All subjects underwent brain MR imaging. Multiple structural MRI features were extracted from cerebellum, deep nuclei and of brain cortex based on different partition templates. The Mann-Whitney U test, as well as least absolute shrinkage and selection operator regression were used to select the most discriminating features. Finally, logistic regression (LR) and linear discriminant analysis (LDA) classifier combined with the 5-fold cross-validation scheme were used to construct the models based on structural features of cerebellum, deep nuclei and cortex, and a combined model based on all features. The receiver operating characteristic curves were drawn, and the diagnostic performance and clinical net benefit of each model were evaluated by the area under curve (AUC) and the decision curve analysis (DCA). Results:In total, four cerebellum (asymmetry index of Lobule Ⅵ volume, asymmetry index of Lobule ⅦB cortical thickness, asymmetry index of total gray matter volume and absolute value of right Lobule Ⅵ gray matter volume), 3 deep nuclei (absolute value of right nucleus accumbens volume, absolute and relative value of total nucleus accumbens volume) and 3 cortex features (local gyration index of left PFm, local fractal dimension of right superior frontal gyrus and sulcal depth of left superior occipital gyrus) were selected as the most discriminating features, and the related models were constructed. In validation set, the AUC of cerebellum, deep nuclei, cortex and combined models for diagnosis of PD based on LR classifier were 0.692, 0.641, 0.747 and 0.816; the AUC of cerebellum, deep nuclei, cortex and combined models for diagnosis of PD based on LDA classifier were 0.726, 0.610, 0.752 and 0.818. The diagnostic efficiency of the combined models based on LR and LDA classifiers were significantly better than those of other models ( P<0.05). The DCA curve demonstrated that the combined models based on LR and LDA classifiers showed the highest clinical net benefit. Conclusion:The combined models with all structural features of cerebellum, deep nuclei and cortex included based on LR and LDA classifiers showed favorable performance and clinical net benefit for diagnosis of PD, which have the potential application value in clinical diagnosis.
6.CT radiomics and clinical indicators combined model in early prediction the severity of acute pancreatitis
Dandan XU ; Aoqi XIAO ; Weisen YANG ; Yan GU ; Dan JIN ; Guojian YIN ; Hongkun YIN ; Guohua FAN ; Junkang SHEN ; Liang XU
Chinese Journal of Emergency Medicine 2024;33(10):1383-1389
Objective:To explore the value of the Nomogram model established by CT radiomics combined with clinical indicators for prediction of the severity of early acute pancreatitis (AP).Methods:From January 2016 to March 2023, the AP patients in the Second Affiliated Hospital of Soochow University were retrospectively collected. According to the revised Atlanta classification and definition of acute pancreatitis in 2012, all patients were divided into the severe group and the non-severe group. All patients were first diagnosed, and abdominal CT plain scan and enhanced scan were completed within 1 week. Patients were randomly (random number) divided into training and validation groups at a ratio of 7:3. The pancreatic parenchyma was delineated as the region of interest on each phase CT images, and the radiomics features were extracted by python software. LASSO regression and 10-fold cross-validation were used to reduce the dimension and select the optimal features to establish the radiomics signature. Multivariate Logistic regression was used to select the independent predictors of severe acute pancreatitis (SAP), and a clinical model was established. A Nomogram model was established by combining CT radiomics signature and clinical independent predictors. Receiver operating characteristic (ROC) curve and decision curve analysis (DCA) were used to evaluate the predictive efficacy of each model.Results:Total of 205 AP patients were included (59 cases in severe group, 146 cases in non-severe group). 3, 5, 5 and 5 optimal radiomics features were selected from the plain CT scan, arterial phase, venous phase and delayed phase images of all patients, and the radiomics models were established. Among them, the arterial phase radiomics model had relatively better performance in predicting SAP, with an area under curve (AUC) of 0.937 in the training group and 0.913 in the validation group. Multivariate Logistic regression showed that C-reactive protein (CRP) and lactate dehydrogenase (LDH) were independent predictors of SAP, and they were used to establish a clinical model. The AUC in the training and validation groups were 0.879 and 0.889, respectively. The Nomogram model based on arterial phase CT radiomics signature, CRP and LDH was established, and the AUC was 0.956 and 0.947 in the training group and validation group, respectively. DCA showed that the net benefit of Nomogram model was higher than that of clinical model or radiomics model alone.Conclusions:The Nomogram model established by CT radiomics combined with clinical indicators has high application value for early prediction of the severity of AP, which is conducive to the formulation of clinical treatment plans and prognosis evaluation.
7.Machine learning models for predicting the risk stratification of gastrointestinal stromal tumor based on the radiomic features of CT
Chenchen ZHANG ; Hongkun YIN ; Rui YU ; Yiqing BAO ; Shuo ZHAO ; Guohua FAN
Journal of Practical Radiology 2024;40(7):1111-1115
Objective To construct the machine learning models based on the radiomic features of non-contrast and enhanced CT and to evaluate the predictive value in the risk stratification of gastrointestinal stromal tumor(GIST).Methods A total of 182 patients with pathologically confirmed GIST were randomly divided into a training set and a validation set at a ratio of 7∶3.The volume of interest(VOI)was outlined in the non-contrast phase,arterial phase and venous phase,and its radiomic features were extracted.The most valuable radiomic features were selected using the least absolute shrinkage and selection operator(LASSO)algorithm.The logistic regression(LR)classifier was used to construct the prediction models based on single-phase or multi-phase images.The predictive efficacy of the different models was compared by using receiver operating characteristic(ROC)curves.Results Four,three,and four radiomic features were selected in the non-contrast phase,arterial phase and venous phase,and 4 models were constructed in total.Among the single-phase models,the venous phase had better predictive efficacy,with the area under the curve(AUC)of 0.932[95%confidence interval(CI)0.873-0.969]and 0.924(95%CI 0.819-0.979)in the training and validation sets.The predictive efficacy of the combined model was improved,with the AUC of 0.946(95%CI 0.891-0.978)and 0.938(95%CI 0.838-0.986).Conclusion The venous phase model can predict the risk stratification of GIST accurately,and the prediction efficacy can be improved by combining the non-contrast and arterial phases.
8.The value of clinical model, deep learning model based on baseline noncontrast CT and the combination of the two in predicting hematoma expansion in cerebral hemorrhage
Yeqing WANG ; Dai SHI ; Hongkun YIN ; Huiling ZHANG ; Liang XU ; Guohua FAN ; Junkang SHEN
Chinese Journal of Radiology 2024;58(5):488-495
Objective:To investigate the predictive value of clinical factor model, deep learning model based on baseline plain CT images, and combination of both for predicting hematoma expansion in cerebral hemorrhage.Methods:The study was cross-sectional. Totally 471 cerebral hemorrhage patients who were firstly diagnosed in the Second Affiliated Hospital of Soochow University from January 2017 to December 2021 were collected retrospectively. These patients were randomly divided into a training dataset ( n=330) and a validation dataset ( n=141) at a ratio of 7∶3 by using the random function. All patients underwent two noncontrast CT examinations within 24 h and an increase in hematoma volume of >33% or an absolute increase in hematoma volume of >6 ml was considered hematoma enlargement. According to the presence or absence of hematoma enlargement, all patients were divided into hematoma enlargement group and hematoma non-enlargement group.Two-sample t test, Mann-Whitney U test or χ2 test were used for univariate analysis. The factors with statistically significant differences were included in multivariate logistic regression analysis, and independent influences related to hematoma enlargement were screened out to establish a clinical factor model. ITK-SNAP software was applied to manually label and segment the cerebral hemorrhage lesions on plain CT images to train and build a deep learning model based on ResNet50 architecture. A combination model for predicting hematoma expansion in cerebral hemorrhage was established by combining independent clinical influences with deep learning scores. The value of the clinical factor model, the deep learning model, and the combination model for predicting hematoma expansion in cerebral hemorrhage was evaluated using receiver operating characteristic (ROC) curves and decision curves in the training and validation datasets. Results:Among 471 cerebral hemorrhage patients, 136 cases were in the hematoma enlargement group and 335 cases were in the hematoma non-enlargement group. Regression analyses showed that male ( OR=1.790, 95% CI 1.136-2.819, P=0.012), time of occurrence ( OR=0.812, 95% CI 0.702-0.939, P=0.005), history of oral anticoagulants ( OR=2.157, 95% CI 1.100-4.229, P=0.025), admission Glasgow Coma Scale score ( OR=0.866, 95% CI 0.807-0.929, P<0.001) and red blood cell distribution width ( OR=1.045, 95% CI 1.010-1.081, P=0.011) were the independent factors for predicting hematoma expansion in cerebral hemorrhage. ROC curve analysis showed that in the training dataset, the area under the curve (AUC) of clinical factor model, deep learning model and combination model were 0.688 (95% CI 0.635-0.738), 0.695 (95% CI 0.642-0.744) and 0.747 (95% CI 0.697-0.793) respectively. The AUC of the combination model was better than that of the clinical model ( Z=0.54, P=0.011) and the deep learning model ( Z=2.44, P=0.015). In the validation dataset, the AUC of clinical factor model, deep learning model and combination model were 0.687 (95% CI 0.604-0.763), 0.683 (95% CI 0.599-0.759) and 0.736 (95% CI 0.655-0.806) respectively, with no statistical significance. Decision curves showed that the combination model had the highest net benefit rate and strong clinical practicability. Conclusions:Both the deep learning model and the clinical factor model established in this study have some predictive value for hematoma expansion in cerebral hemorrhage; the combination model established by the two together has the highest predictive value and can be applied to predict hematoma expansion.
9.Comparative Genomics Reveals Evolutionary Drivers of Sessile Life and Left-right Shell Asymmetry in Bivalves
Zhang YANG ; Mao FAN ; Xiao SHU ; Yu HAIYAN ; Xiang ZHIMING ; Xu FEI ; Li JUN ; Wang LILI ; Xiong YUANYAN ; Chen MENGQIU ; Bao YONGBO ; Deng YUEWEN ; Huo QUAN ; Zhang LVPING ; Liu WENGUANG ; Li XUMING ; Ma HAITAO ; Zhang YUEHUAN ; Mu XIYU ; Liu MIN ; Zheng HONGKUN ; Wong NAI-KEI ; Yu ZINIU
Genomics, Proteomics & Bioinformatics 2022;(6):1078-1091
Bivalves are species-rich mollusks with prominent protective roles in coastal ecosystems.Across these ancient lineages,colony-founding larvae anchor themselves either by byssus produc-tion or by cemented attachment.The latter mode of sessile life is strongly molded by left-right shell asymmetry during larval development of Ostreoida oysters such as Crassostrea hongkongensis.Here,we sequenced the genome of C.hongkongensis in high resolution and compared it to reference bivalve genomes to unveil genomic determinants driving cemented attachment and shell asymmetry.Importantly,loss of the homeobox gene Antennapedia(Antp)and broad expansion of lineage-specific extracellular gene families are implicated in a shift from byssal to cemented attachment in bivalves.Comparative transcriptomic analysis shows a conspicuous divergence between left-right asymmetrical C.hongkongensis and symmetrical Pinctada fucata in their expression profiles.Especially,a couple of orthologous transcription factor genes and lineage-specific shell-related gene families including that encoding tyrosinases are elevated,and may cooperatively govern asymmet-rical shell formation in Ostreoida oysters.