1.Predictive value of dual-modality ultrasound combined with S-Detect for cervical lymph node metastasis in papillary thyroid carcinoma
Zelin XU ; Zhenhao ZHENG ; Yaqian DENG ; Guanming ZENG ; Tingting DU ; Peishan ZHU ; Wen LIU ; Jun LI
The Journal of Practical Medicine 2025;41(16):2581-2589
Objective To evaluate the predictive value of dual-modality ultrasound,incorporating conventional ultrasound and ultrasound elastography,in combination with S-Detect for cervical lymph node metastasis(CLNM)in patients with papillary thyroid carcinoma(PTC).Methods A retrospective analysis was conducted on the clinical data of 135 patients diagnosed with PTC who received treatment at the First Affiliated Hospital of Shihezi University between November 2023 and August 2024.For all patients,clinical baseline characteristics,conventional ultrasound findings,ultrasound elastography results,and S-Detect analysis data were collected.Independent predictors of CLNM in PTC were identified,and predictive models were developed.Receiver operating characteristic(ROC)curves were generated to compare the area under the curve(AUC)of the models.The most effective predictive model was selected to construct a risk probability nomogram,and the predictive performance and clinical applicability of this nomogram were subsequently evaluated.Results Age,maximum nodule diameter,boundary characteristics,capsular invasion,transverse-sectional morphological findings assessed by S-Detect,and ECI-based elasticity grading were identified as independent predictors of CLNM in PTC(all P<0.05).The AUC of the predictive model constructed using these six variables was 0.890(95%CI:0.835~0.945).The calibration curve demonstrated strong agreement between predicted and observed outcomes,and decision curve analysis indicated that the nomogram provided a favorable net clinical benefit within a threshold probability range of 2%to 91.5%.Conclusions Age,maximum nodule diameter,boundary characteristics,capsular invasion,sonographic features assessed by S-Detect in the transverse plane,and ECI-based elasticity grading are independent predictors of CLNM in PTC.A nomogram model incorporating these parameters demonstrates effective performance in predicting the likelihood of CLNM.
2.Predictive value of dual-modality ultrasound combined with S-Detect for cervical lymph node metastasis in papillary thyroid carcinoma
Zelin XU ; Zhenhao ZHENG ; Yaqian DENG ; Guanming ZENG ; Tingting DU ; Peishan ZHU ; Wen LIU ; Jun LI
The Journal of Practical Medicine 2025;41(16):2581-2589
Objective To evaluate the predictive value of dual-modality ultrasound,incorporating conventional ultrasound and ultrasound elastography,in combination with S-Detect for cervical lymph node metastasis(CLNM)in patients with papillary thyroid carcinoma(PTC).Methods A retrospective analysis was conducted on the clinical data of 135 patients diagnosed with PTC who received treatment at the First Affiliated Hospital of Shihezi University between November 2023 and August 2024.For all patients,clinical baseline characteristics,conventional ultrasound findings,ultrasound elastography results,and S-Detect analysis data were collected.Independent predictors of CLNM in PTC were identified,and predictive models were developed.Receiver operating characteristic(ROC)curves were generated to compare the area under the curve(AUC)of the models.The most effective predictive model was selected to construct a risk probability nomogram,and the predictive performance and clinical applicability of this nomogram were subsequently evaluated.Results Age,maximum nodule diameter,boundary characteristics,capsular invasion,transverse-sectional morphological findings assessed by S-Detect,and ECI-based elasticity grading were identified as independent predictors of CLNM in PTC(all P<0.05).The AUC of the predictive model constructed using these six variables was 0.890(95%CI:0.835~0.945).The calibration curve demonstrated strong agreement between predicted and observed outcomes,and decision curve analysis indicated that the nomogram provided a favorable net clinical benefit within a threshold probability range of 2%to 91.5%.Conclusions Age,maximum nodule diameter,boundary characteristics,capsular invasion,sonographic features assessed by S-Detect in the transverse plane,and ECI-based elasticity grading are independent predictors of CLNM in PTC.A nomogram model incorporating these parameters demonstrates effective performance in predicting the likelihood of CLNM.
3.Value of PLR in efficacy and prognosis of targeted therapy for NSCLC with EGFR mutation
Guanming JIANG ; Kejun LIU ; Qinquan TAN ; Yihong ZENG ; Haiji YUAN ; Shunhuan LIN
The Journal of Practical Medicine 2019;35(4):533-536
Objective To explore the value of PLR in peripheral blood in the efficacy and prognosis of targeted therapy for NSCLC with EGFR-mutated. Methods Ninety patients with EGFR-mutant of NSCLC were selected, and the PLR was calculated before targeted therapy. The PLR median was used as a cut-off point for grouping, and they were assigned to group A (low PLR group) and group B (high PLR group). All patients were treated with EGFR-TKIs. Relationship between PLR and clinicopathological features was analyzed. Objective efficacy, ORR, DCR, PFS and OS between the two groups were compared. Results Before EGFR-TKIs therapy, median PLR was 139, and there were 44 patients in group A, and 46 in group B. There were statistical differences regarding smoking, tumor location, histological differentiation, T staging, and clinical staging between group A and B (P <0.05). The rates of PR, ORR and DCR in group A were higher than those in group B, and the PD rate was lower than that in group B (P < 0.05). Log-rank test showed that median OS and median PFS in group A were longer than those in group B (P= 0.001). Conclusions PLR in peripheral blood has certain reference value for therapeutic effect and prognosis evaluation on NSCLC with EGFR-mutation. Low PLR of NSCLC patients with EGFR-mutation has higher efficacy and longer survival time after targeted therapy, and it is an independent and prognostic factor.

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