1.Study on the electric field transmission characteristics of conducted-electrode tumor treating fields.
Kaida LIU ; Junxia ZHANG ; Jiaqi SHI ; Haohan FANG ; Xing LI
Journal of Biomedical Engineering 2025;42(5):964-969
Tumor treating fields (TTF) therapy is an innovative tumor treatment modality. Currently, the TTF devices predominantly employ insulated ceramic electrodes as the electric field transmission medium, resulting in low energy transfer efficiency of the electric field and poor portability of the devices. This study proposed an innovative TTF transmission mode and independently designed a conducted-electrode TTF cell culture dish utilizing inert titanium materials. The electric field conduction characteristics were verified through finite element simulations and experimental tests. Finally, based on the self-manufactured conducted-electrode TTF cell culture dish, experiments on the proliferation inhibition of U87 tumor cells by TTF were conducted. The results demonstrated that under an applied TTF voltage of 10 V and frequency of 200 kHz, the electric field intensities within the medium for conducted and insulated electrodes are approximately 2.5 V/cm and 0.7 V/cm, respectively. Compared to conventional insulated TTF systems, the conducted-electrode TTF configuration exhibited a lower electrode voltage drop and a higher electric field intensity in the culture medium, indicating superior electric field transmission efficiency. Following 36 hours of treatment with conducted-electrode TTF on U87 cells, the proliferation inhibition rate reached approximately 50%, demonstrating effective suppression of tumor cell growth. This approach presents a potential direction for optimizing TTF treatment modality and device design.
Humans
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Electrodes
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Neoplasms/pathology*
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Cell Line, Tumor
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Cell Proliferation/radiation effects*
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Electric Stimulation Therapy/methods*
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Electromagnetic Fields
2.Research progress in macrophage metabolic reprogramming caused by Mycobacterium tuberculosis infection
Jiaying GUO ; Haohan LIU ; Yu PANG ; Shanshan LI
Chinese Journal of Microbiology and Immunology 2025;45(6):535-540
Macrophages play a pivotal role in host defense against Mycobacterium tuberculosis ( Mtb) infection. Their metabolic processes and metabolites are essential for maintaining immune homeostasis, responding to invading pathogens, and orchestrating subsequent immune responses. Therefore, a comprehensive understanding of macrophage metabolic reprogramming during Mtb infection is critical for deciphering the intricate mechanisms underlying the host immune response against tuberculosis. This review summarizes recent advances in how macrophages regulate immune responses through core metabolic pathways, including glucose metabolism, oxidative phosphorylation, lipid metabolism, and amino acid metabolism, in the context of Mtb infection. The insights provided here offer new perspectives and potential strategies for future tuberculosis prevention and targeted therapy.
3.Research progress in macrophage metabolic reprogramming caused by Mycobacterium tuberculosis infection
Jiaying GUO ; Haohan LIU ; Yu PANG ; Shanshan LI
Chinese Journal of Microbiology and Immunology 2025;45(6):535-540
Macrophages play a pivotal role in host defense against Mycobacterium tuberculosis ( Mtb) infection. Their metabolic processes and metabolites are essential for maintaining immune homeostasis, responding to invading pathogens, and orchestrating subsequent immune responses. Therefore, a comprehensive understanding of macrophage metabolic reprogramming during Mtb infection is critical for deciphering the intricate mechanisms underlying the host immune response against tuberculosis. This review summarizes recent advances in how macrophages regulate immune responses through core metabolic pathways, including glucose metabolism, oxidative phosphorylation, lipid metabolism, and amino acid metabolism, in the context of Mtb infection. The insights provided here offer new perspectives and potential strategies for future tuberculosis prevention and targeted therapy.
4.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
5.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
6.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
7.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
8.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
9.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.
10.Establishment and Validation of a Platinum Resistance Recurrence Prediction Model for Advanced Epithelial Ovarian Cancer
Yaping JIANG ; Haohan WANG ; Xianling NING ; Zujiao YANG ; Wenyan WANG ; Zhoumei LIU ; Xielan YANG
Journal of Practical Obstetrics and Gynecology 2024;40(5):374-380
Objective:To analyze the influencing factors of platinum resistant recurrence in advanced epithelial ovarian cancer(AEOC),establish a nomogram model to predict platinum-resistant recurrence of AEOC,and inter-nally validate it.Methods:The clinicopathological data of 577 AEOC patients who achieved complete remission af-ter initial treatment in the Department of Gynecology,Yunnan Cancer Hospital from June 1,2013 to December 31,2021 were collected.According to whether the platinum free interval(PFI)was less than 6 months,the patients were divided into platinum-resistant recurrence group(130 cases)and non-platinum-resistant group(447 cases,including patients with platinum-sensitive recurrence and no recurrence after 6 months of follow-up).Multivariate Logistic regression analysis was used to screen for the independent risk factors affecting the recurrence of plati-num-resistant patients.Based on the independent risk factors,a nomogram prediction model was established,and Bootstrap method was used for internal verification.The area under the ROC curve(AUC),calibration curve and decision curve(DCA)were used to evaluate the performance of the model.Results:①There were statistically sig-nificant differences in age,bilateral ovarian invasion,FIGO staging,menopause,neoadjuvant chemotherapy(NACT),chemotherapy interval(TTC),platelet count(PLT),platelet count/lymphocyte count ratio(PLR),fibrino-gen/lymphocyte count ratio(FLR),prognostic nutritional index(PNI),albumin(ALB),CA125 level,ascites volume,residual lesions,perioperative chemotherapy frequency,and CA125 half-life between the two groups(P<0.05).②Multivariate Logistic regression analysis showed that bilateral ovarian invasion,FIGO stage Ⅳ,TTC>16 days,ini-tial ascites volume>1000ml,perioperative chemotherapy frequency>9 times,surgery with R2 resection,CA125 half-life>52 days were independent risk factors for recurrence of platinum-resistant AEOC patients(OR>1,P<0.05).③The AUC of the nomogram model constructed based on the above 7 indicators was 0.791(95%Cl 0.747-0.835),and the calibration curve and ideal curve fitted well.DCA showed that the net benefit interval of the model was 0.037-0.800.Conclusions:The nomogram prediction model based on independent risk factors for the recurrence of platinum-resistance of AEOC patients has good discrimination,calibration and clinical appli-cability,which can better predict the recurrence risk of platinum-resistance in AEOC patients after the initial treat-ment.

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