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find Author "GUO Yongqing" 2 results
  • Efficacy of different surgical procedures in treatment of primary spontaneous pneumothorax

    Objective To evaluate whether surgical intervention can be performed in initial onset of primary spontaneous pneumothorax (PSP) patients and whether pleural abrasion should be performed regularly in PSP treatment. Methods The clinical data of 326 PSP patients undergoing bullectomy or bullectomy combined with pleural abrasion (BLPA) between January 2008 and December 2013 were retrospectively reviewed. There were 267 males and 59 females, with a mean age of 24 years ranging from 20 to 31 years. Results The initial onset of PSP was in 229 patients, and recurrent PSP in 115 patients. Ten patients had postoperative PSP recurrence after a mean follow-up of 47 months ranging from 1 to 95 months. For the patients with initial onset of PSP, the recurrence rate was 3.1% (7/229), and that in patients with recurrent PSP was 2.6% (3/115, P=0.82). Compared with the bullectomy group (5.8%, 7/120), recurrence rate in the BLPA group was lower (1.3%, 3/224, P=0.02). There were no mortalities or significant complications in both groups. There was significant difference in body mass index (P=0.04), intraoperative adhesion (P<0.05), operation duration (P<0.01), number of bullae (P<0.01), and bullae location (P<0.01) between bullectomy and BLPA groups. Postoperative drainage (P<0.01), air leak (P=0.01) and extubation duration (P<0.01) were significantly lower in the bullectomy group. Total cost was significantly higher in the BLPA group (P<0.01). Conclusion Surgical intervention could provide satisfactory outcomes for PSP patients. Compared with bullectomy, BLPA has much lower recurrence rate, but with more drainage, longer drainage duration and higher cost.

    Release date:2017-12-04 10:31 Export PDF Favorites Scan
  • Verification, comparison and melioration of different prediction models for solitary pulmonary nodule

    Objective To identify risk factors that affect the verification of malignancy in patients with solitary pulmonary nodule (SPN) and verify different prediction models for malignant probability of SPN. Methods We retrospectively analyzed the clinical data of 117 SPN patients with definite postoperative pathological diagnosis who underwent surgical procedure in China-Japan Friendship Hospital from March to September 2017. There were 59 males and 58 females aged 59.10±11.31 years ranging from 24 to 83 years. Imaging features of the nodule including maximum diameter, location, spiculation, lobulation, calcification and serum level of CEA and Cyfra21-1 were assessed as potential risk factors. Univariate analysis was used to establish statistical correlation between risk factors and postoperative pathological diagnosis. Receiver operating characteristic (ROC) curve was drawn by different predictive models for the malignant probability of SPN to get areas under the curves (AUC), sensitivity, specificity, positive predictive values, negative predictive values for each model. The predictive effectiveness of each model was statistically assessed subsequently. Results Among 117 patients, 93 (79.5%) were malignant and 24 (20.5%) were benign. Statistical difference was found between the benign and malignant group in age, maximum diameter, serum level of CEA and Cyfra21-1, spiculation, lobulation and calcification of the nodules. The AUC value was 0.813±0.051 (Mayo model), 0.697±0.066 (VA model) and 0.854±0.045 (Peking University People's Hospital model), respectively. Conclusion Age, maximum diameter of the nodule, serum level of CEA and Cyfra21-1, spiculation, lobulation and calcification are potential independent risk factors associated with the malignant probability of SPN. Peking University People's Hospital model is of high accuracy and clinical value for patients with SPN. Adding serum index into the prediction model as a new risk factor and adjusting the weight of age in the model may improve the accuracy of prediction for SPN.

    Release date:2018-06-01 07:11 Export PDF Favorites Scan
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