Literature DB >> 25104569

Postoperative 30-day mortality in patients undergoing surgery for colorectal cancer: development of a prognostic model using administrative claims data.

S de Vries1, D B Jeffe, N O Davidson, A D Deshpande, M Schootman.   

Abstract

PURPOSE: To develop a prognostic model to predict 30-day mortality following colorectal cancer (CRC) surgery using the Surveillance, Epidemiology, and End Results (SEER)-Medicare-linked data and to assess whether race/ethnicity, neighborhood, and hospital characteristics influence model performance.
METHODS: We included patients aged 66 years and older from the linked 2000-2005 SEER-Medicare database. Outcome included 30-day mortality, both in-hospital and following discharge. Potential prognostic factors included tumor, treatment, sociodemographic, hospital, and neighborhood characteristics (census-tract-poverty rate). We performed a multilevel logistic regression analysis to account for nesting of CRC patients within hospitals. Model performance was assessed using the area under the receiver operating characteristic curve (AUC) for discrimination and the Hosmer-Lemeshow goodness-of-fit test for calibration.
RESULTS: In a model that included all prognostic factors, important predictors of 30-day mortality included age at diagnosis, cancer stage, and mode of presentation. Race/ethnicity, census-tract-poverty rate, and hospital characteristics were independently associated with 30-day mortality, but they did not influence model performance. Our SEER-Medicare model achieved moderate discrimination (AUC = 0.76), despite suboptimal calibration.
CONCLUSIONS: We developed a prognostic model that included tumor, treatment, sociodemographic, hospital, and neighborhood predictors. Race/ethnicity, neighborhood, and hospital characteristics did not improve model performance compared with previously developed models.

Entities:  

Mesh:

Year:  2014        PMID: 25104569      PMCID: PMC4216620          DOI: 10.1007/s10552-014-0451-x

Source DB:  PubMed          Journal:  Cancer Causes Control        ISSN: 0957-5243            Impact factor:   2.506


  38 in total

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5.  Development and validation of a mortality risk-adjustment model for patients hospitalized for exacerbations of chronic obstructive pulmonary disease.

Authors:  Ying P Tabak; Xiaowu Sun; Richard S Johannes; Linda Hyde; Andrew F Shorr; Peter K Lindenauer
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6.  Assessment of operative risk in colorectal cancer surgery: the Cleveland Clinic Foundation colorectal cancer model.

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Review 7.  Influence of caseload and surgical speciality on outcome following surgery for colorectal cancer: a review of evidence. Part 1: short-term outcome.

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10.  Comparison of individual surgeon's performance. Risk-adjusted analysis with POSSUM scoring system.

Authors:  P M Sagar; M N Hartley; J MacFie; B A Taylor; G P Copeland
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4.  Prediction of 90-day mortality after surgery for colorectal cancer using standardized nationwide quality-assurance data.

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6.  Nationwide in-hospital mortality following colonic cancer resection according to hospital volume in Germany.

Authors:  J Diers; J Wagner; P Baum; S Lichthardt; C Kastner; N Matthes; S Löb; H Matthes; C-T Germer; A Wiegering
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7.  In-Hospital Mortality and Complication Rates According to Health Insurance Data in Patients Undergoing Hyperthermic Intraperitoneal Chemotherapy for Peritoneal Surface Malignancies in Germany.

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9.  Validity of the CR-POSSUM model in surgery for colorectal cancer in Spain (CCR-CARESS study) and comparison with other models to predict operative mortality.

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  10 in total

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