Download presentation
Presentation is loading. Please wait.
Published byDamon Blankenship Modified over 9 years ago
1
The effect of surgeon volume on procedure selection in non-small cell lung cancer surgeries Dr. Christian Finley MD MPH FRCSC McMaster University
2
Disclosures I have no conflict of interest disclosures to report
3
Background Ginsburg et al. Modern thirty-day operative mortality for surgical resections in lung cancer. J Thorac Cardiovasc Surg. 1983 Nov;86(5):654-8. Pneumonectomy Mortality = 6.2% Lobectomy Mortality = 2.9% 25% Pneumonectomy rate
4
Harpole et al. Prognostic models of thirty-day mortality and morbidity after major pulmonary resection. J Thorac Cardiovasc Surg. 1999 May;117(5):969-79. Pneumonectomy Mortality = 11.5% Lobectomy Mortality = 4.0% 18% Pneumonectomy rate Background
5
Pneumonectomy: the burden of death after discharge and predictors of surgical mortality Ann Thorac Surg. 2014 Dec;98(6):1976-81; discussion 1981-2. The burden of death following discharge after lobectomy. Eur J Cardiothorac Surg. 2014 Nov 24. Pneumonectomy Mortality = 4.4% 90 day = 10.8% Lobectomy Mortality = 1.4% 90 day = 3.3% Background
6
Decision making Large geographical variation in the surgical resection rate for NSCLC ▫ 3-18% A high frequency of resection was strongly inversely associated with overall mortality ▫ HR 0.88, 95% CI 0.86-0.91 Moderately associated with mortality amongst the resected patients ▫ HR 1.15, 95% CI 0.98-1.36 5420 deaths could be avoided whereas about 146 more deaths could be expected amongst the resected patients Riaz et al. Eur J Cancer. 2012 Jan;48(1):54-60
7
Objective This study aims to examine surgeon choices for non-small cell lung cancer (NSCLC) and if surgeon volume predicts the type of procedure chosen Controlling for patient demographics, co- morbidity, year of surgery and institutional factors
8
Methods The dataset was constructed from the population-based linked databases accessed via the Institute for Clinical Evaluate Sciences ▫ Ontario Cancer Registry ▫ Ontario Health Insurance Plan claims ▫ Canadian Institutes for Health Information Discharge Abstract Database (CIHI-DAD) ▫ National Ambulatory Care Reporting Service database (NACRS)
9
Population: All pulmonary resections for primary NSCLC Time period: 2004 – 2011 De-identified information collected on: Patient Factors Gender, age, income quintile, location of residence (rural vs. urban), comorbidity Procedural details Year of procedure, institution volume, surgeon volume Outcomes Length of stay, in-hospital mortality and 90-day post- discharge mortality Methods
10
Multilevel logistic regression analyses were performed to examine factors that influence a surgeon’s choice of surgery ▫ A three-level random effects model was used to control for the cluster effect of physician nested within institution Ninety-day mortality for each procedure was calculated Outcomes Analysis
11
Due to limited availability, stage data could not be included as a predictor variable in the regression model Accurate stage data was available for the only the last two years of study, 2010 and 2011 ▫ These were added to the multilevel regression model in order to examine trends that could be attributed to stage of disease Outcomes Analysis – Stage Data
12
8070 patients that underwent surgical resection for NSCLC, of whom 4070 (50.4%) were male 124 unique physicians and 45 institutions Distribution of resection types: Pneumonectomy: 842 (10.4%) Fell from 14.8% to 7.6% from 2004 to 2011 Lobectomy: 6212 (77.0%) Wedge resection 1002 (12.4%) 12.1% to 10.7% from 2004 to 2011 Results
13
Average 90-day mortality: ▫ Pneumonectomy = 12.6% ▫ Lobectomy = 3.9% 2.6% in 2011 ▫ Wedge resection = 5.7% 2.8% in 2011 Results
15
Physician volume, age, year of procedure, gender, and Charlson Comorbidity Index were all predictive of selecting pneumonectomy as choice of surgery After adjusting for all other variables, the results indicated that for each additional 10 unit increase in physician volume, the risk of performing a pneumonectomy decreases by 9.1% ▫ (95% CI=8.2 to 10.0, p=0.04) Multivariate Model
17
While patient and temporal factors influence the type of resection a patient receives for NSCLC, surgeon volume is also a strong predictor This study may be limited by minimal stage data, but the suggestion that a surgeon’s total procedural volume for NSCLC significantly influences procedure selection has implications on how we deliver care to this patient population Conclusion
Similar presentations
© 2024 SlidePlayer.com Inc.
All rights reserved.