Cargando…

Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort

BACKGROUND: Clostridium difficileinfection (CDI) outbreaks were associated with increase in unfavorable outcomes. Identifying and predicting risk of developing complications (cCDI) early in the course of illness could improve clinical decision-making. We developed and validated a prediction rule for...

Descripción completa

Detalles Bibliográficos
Autores principales: Chakra, Claire Nour Abou, Mcgeer, Allison, Labbé, Annie-Claude, Simor, Andrew E, Gold, Wayne, Muller, Matthew P, Powis, Jeff, Katz, Kevin, Cadarette, Suzanne, Pépin, Jacques, Garneau, Julian R, Valiquette, Louis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5631134/
http://dx.doi.org/10.1093/ofid/ofx163.1003
_version_ 1783269377095761920
author Chakra, Claire Nour Abou
Mcgeer, Allison
Labbé, Annie-Claude
Simor, Andrew E
Gold, Wayne
Muller, Matthew P
Powis, Jeff
Katz, Kevin
Cadarette, Suzanne
Pépin, Jacques
Garneau, Julian R
Valiquette, Louis
author_facet Chakra, Claire Nour Abou
Mcgeer, Allison
Labbé, Annie-Claude
Simor, Andrew E
Gold, Wayne
Muller, Matthew P
Powis, Jeff
Katz, Kevin
Cadarette, Suzanne
Pépin, Jacques
Garneau, Julian R
Valiquette, Louis
author_sort Chakra, Claire Nour Abou
collection PubMed
description BACKGROUND: Clostridium difficileinfection (CDI) outbreaks were associated with increase in unfavorable outcomes. Identifying and predicting risk of developing complications (cCDI) early in the course of illness could improve clinical decision-making. We developed and validated a prediction rule for cCDI. METHODS: Adult inpatients with confirmed CDI in 10 Canadian hospitals were enrolled and followed for 90 days. Data within 48h of CDI diagnosis were collected: demographics, underlying illnesses, past medical and drug history, clinical signs, blood tests, and strain ribotype. cCDI was defined as one or more of: colonic perforation, toxic megacolon, colectomy, need of vasopressors, ICU admission due to CDI, or if CDI contributed to 30-day death. Predictors’ selection was supported by experts’ opinion suggesting 17 clinical criteria. Cross-validation technique was used (2:1 ratio) and multivariable logistic regression for predictive modeling in the derivation subset. The optimal model was assessed by area under ROC curve (AUC) and prediction error (PE). A predictive score was built by assigning points proportional to adjusted risk estimates. RESULTS: Among 1380 patients enrolled, 1050 were used for predictive modeling (median age 70 years and one-third infected by ribotype 027 strains). Cases were split into training (n = 700) and validation sets (n = 350). A cCDI occured in 8% and 6.6% respectively. The optimal model with a PE of 5% and an AUC of 0.84 in the validation set included WCC (< 4, 12–19.9, or ≥20 × 10(9)/L), BUN≥11 mmol/L, serum albumin <25 g/L, heart rate > 90/minute, and respiratory rate >20/minute. A predictive score of min 0 and max 13 points was derived. A score ≥7 points was associated with 70% cases of cCDI, showed 68% sensitivity (95% CI, 55–80) in the derivation set and 70% (51–88) in the validation set, a specificity of 73% (69–76) and 76% (72–81) respectively, 17% PPV (9–25), and 97% NPV (95–99) in both sets. CONCLUSION: Using a large multicenter prospective cohort and robust modeling approach, we derived a predictive score that included easily available measures at the bedside. The score showed acceptable performance. Further validation is needed on cohorts with different characterstics (non-outbreak setting, higher rate of cCDI). Other approaches such as combination of biomarkers could be more predictive of cCDI. DISCLOSURES: J. Powis, Merck: Grant Investigator, Research grant; GSK: Grant Investigator, Research grant; Roche: Grant Investigator, Research grant; Synthetic Biologicals: Investigator, Research grant
format Online
Article
Text
id pubmed-5631134
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-56311342017-11-07 Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort Chakra, Claire Nour Abou Mcgeer, Allison Labbé, Annie-Claude Simor, Andrew E Gold, Wayne Muller, Matthew P Powis, Jeff Katz, Kevin Cadarette, Suzanne Pépin, Jacques Garneau, Julian R Valiquette, Louis Open Forum Infect Dis Abstracts BACKGROUND: Clostridium difficileinfection (CDI) outbreaks were associated with increase in unfavorable outcomes. Identifying and predicting risk of developing complications (cCDI) early in the course of illness could improve clinical decision-making. We developed and validated a prediction rule for cCDI. METHODS: Adult inpatients with confirmed CDI in 10 Canadian hospitals were enrolled and followed for 90 days. Data within 48h of CDI diagnosis were collected: demographics, underlying illnesses, past medical and drug history, clinical signs, blood tests, and strain ribotype. cCDI was defined as one or more of: colonic perforation, toxic megacolon, colectomy, need of vasopressors, ICU admission due to CDI, or if CDI contributed to 30-day death. Predictors’ selection was supported by experts’ opinion suggesting 17 clinical criteria. Cross-validation technique was used (2:1 ratio) and multivariable logistic regression for predictive modeling in the derivation subset. The optimal model was assessed by area under ROC curve (AUC) and prediction error (PE). A predictive score was built by assigning points proportional to adjusted risk estimates. RESULTS: Among 1380 patients enrolled, 1050 were used for predictive modeling (median age 70 years and one-third infected by ribotype 027 strains). Cases were split into training (n = 700) and validation sets (n = 350). A cCDI occured in 8% and 6.6% respectively. The optimal model with a PE of 5% and an AUC of 0.84 in the validation set included WCC (< 4, 12–19.9, or ≥20 × 10(9)/L), BUN≥11 mmol/L, serum albumin <25 g/L, heart rate > 90/minute, and respiratory rate >20/minute. A predictive score of min 0 and max 13 points was derived. A score ≥7 points was associated with 70% cases of cCDI, showed 68% sensitivity (95% CI, 55–80) in the derivation set and 70% (51–88) in the validation set, a specificity of 73% (69–76) and 76% (72–81) respectively, 17% PPV (9–25), and 97% NPV (95–99) in both sets. CONCLUSION: Using a large multicenter prospective cohort and robust modeling approach, we derived a predictive score that included easily available measures at the bedside. The score showed acceptable performance. Further validation is needed on cohorts with different characterstics (non-outbreak setting, higher rate of cCDI). Other approaches such as combination of biomarkers could be more predictive of cCDI. DISCLOSURES: J. Powis, Merck: Grant Investigator, Research grant; GSK: Grant Investigator, Research grant; Roche: Grant Investigator, Research grant; Synthetic Biologicals: Investigator, Research grant Oxford University Press 2017-10-04 /pmc/articles/PMC5631134/ http://dx.doi.org/10.1093/ofid/ofx163.1003 Text en © The Author 2017. Published by Oxford University Press on behalf of Infectious Diseases Society of America. http://creativecommons.org/licenses/by-nc-nd/4.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs licence (http://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial reproduction and distribution of the work, in any medium, provided the original work is not altered or transformed in any way, and that the work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Abstracts
Chakra, Claire Nour Abou
Mcgeer, Allison
Labbé, Annie-Claude
Simor, Andrew E
Gold, Wayne
Muller, Matthew P
Powis, Jeff
Katz, Kevin
Cadarette, Suzanne
Pépin, Jacques
Garneau, Julian R
Valiquette, Louis
Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title_full Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title_fullStr Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title_full_unstemmed Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title_short Derivation and Validation of a Clinical Prediction Rule for Complications of Clostridium difficile Infection Using a Multicenter Prospective Cohort
title_sort derivation and validation of a clinical prediction rule for complications of clostridium difficile infection using a multicenter prospective cohort
topic Abstracts
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5631134/
http://dx.doi.org/10.1093/ofid/ofx163.1003
work_keys_str_mv AT chakraclairenourabou derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT mcgeerallison derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT labbeannieclaude derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT simorandrewe derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT goldwayne derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT mullermatthewp derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT powisjeff derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT katzkevin derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT cadarettesuzanne derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT pepinjacques derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT garneaujulianr derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort
AT valiquettelouis derivationandvalidationofaclinicalpredictionruleforcomplicationsofclostridiumdifficileinfectionusingamulticenterprospectivecohort