scholarly journals A data-driven approach to predict daily risk of Clostridium difficile infection at two large academic health centers

2017 ◽  
Vol 4 (suppl_1) ◽  
pp. S403-S404
Author(s):  
Maggie Makar ◽  
Jeeheh Oh ◽  
Christopher Fusco ◽  
Joseph Marchesani ◽  
Robert McCaffrey ◽  
...  

Abstract Background An estimated 293,300 healthcare-associated cases of Clostridium difficile infection (CDI) occur annually in the United States. Prior research on risk-prediction models for CDI have focused on a small number of risk factors with the goal of developing a model that works well across hospitals. We hypothesize that risk factors are, in part, hospital-specific. We applied a generalizable machine learning approach to discovering, or “learning”, hospital-specific risk-stratification models using electronic health record (EHR) data collected during the course of patient care from the Massachusetts General Hospital (MGH) and the University of Michigan Health System (UM). Methods We utilized EHR data from 115,958 adult inpatient admissions from 2012–2014 (MGH) and 258,050 adult inpatient admissions from 2010–2016 (UM) (Fig 1). We extracted patient demographics, admission details, patient history, and daily hospitalization details, resulting in 2,964 and 4,739 features in the MGH and UM models, respectively. We used L2 regularized logistic regression to learn the models and measured the discriminative performance of the models on a year of held-out data from each hospital. Results The MGH and UM models achieved AUROCs of 0.74 (CI: 0.73–0.75) and 0.77 (CI: 0.75–0.80), respectively. The relative importance of risk factors varied significantly across hospitals. In particular, in-hospital locations appeared in the set of top risk factors at one hospital and in the set of protective factors at the other. On average, both models were able to predict CDI five days in advance of clinical diagnosis (Fig 2). Conclusion We used EHR data to generate a daily estimate of the risk of CDI for each inpatient hospitalization. We applied a generalizable data-driven approach to existing data from two large institutions with different patient populations and different data formats and content. In contrast to approaches that focus on learning models that apply generally across hospitals, our proposed approach yields risk stratification models tailored to an institution’s EHR system and patient population. In turn, these hospital-specific models could allow for earlier and more accurate identification of high-risk patients. Disclosures All authors: No reported disclosures.

2018 ◽  
Vol 39 (4) ◽  
pp. 425-433 ◽  
Author(s):  
Jeeheh Oh ◽  
Maggie Makar ◽  
Christopher Fusco ◽  
Robert McCaffrey ◽  
Krishna Rao ◽  
...  

OBJECTIVEAn estimated 293,300 healthcare-associated cases ofClostridium difficileinfection (CDI) occur annually in the United States. To date, research has focused on developing risk prediction models for CDI that work well across institutions. However, this one-size-fits-all approach ignores important hospital-specific factors. We focus on a generalizable method for building facility-specific models. We demonstrate the applicability of the approach using electronic health records (EHR) from the University of Michigan Hospitals (UM) and the Massachusetts General Hospital (MGH).METHODSWe utilized EHR data from 191,014 adult admissions to UM and 65,718 adult admissions to MGH. We extracted patient demographics, admission details, patient history, and daily hospitalization details, resulting in 4,836 features from patients at UM and 1,837 from patients at MGH. We used L2 regularized logistic regression to learn the models, and we measured the discriminative performance of the models on held-out data from each hospital.RESULTSUsing the UM and MGH test data, the models achieved area under the receiver operating characteristic curve (AUROC) values of 0.82 (95% confidence interval [CI], 0.80–0.84) and 0.75 ( 95% CI, 0.73–0.78), respectively. Some predictive factors were shared between the 2 models, but many of the top predictive factors differed between facilities.CONCLUSIONA data-driven approach to building models for estimating daily patient risk for CDI was used to build institution-specific models at 2 large hospitals with different patient populations and EHR systems. In contrast to traditional approaches that focus on developing models that apply across hospitals, our generalizable approach yields risk-stratification models tailored to an institution. These hospital-specific models allow for earlier and more accurate identification of high-risk patients and better targeting of infection prevention strategies.Infect Control Hosp Epidemiol2018;39:425–433


2014 ◽  
Vol 1 (2) ◽  
Author(s):  
Jenna Wiens ◽  
Wayne N. Campbell ◽  
Ella S. Franklin ◽  
John V. Guttag ◽  
Eric Horvitz

Abstract Background.  Although many risk factors are well known, Clostridium difficile infection (CDI) continues to be a significant problem throughout the world. The purpose of this study was to develop and validate a data-driven, hospital-specific risk stratification procedure for estimating the probability that an inpatient will test positive for C difficile. Methods.  We consider electronic medical record (EMR) data from patients admitted for ≥24 hours to a large urban hospital in the U.S. between April 2011 and April 2013. Predictive models were constructed using L2-regularized logistic regression and data from the first year. The number of observational variables considered varied from a small set of well known risk factors readily available to a physician to over 10 000 variables automatically extracted from the EMR. Each model was evaluated on holdout admission data from the following year. A total of 34 846 admissions with 372 cases of CDI was used to train the model. Results.  Applied to the separate validation set of 34 722 admissions with 355 cases of CDI, the model that made use of the additional EMR data yielded an area under the receiver operating characteristic curve (AUROC) of 0.81 (95% confidence interval [CI], .79–.83), and it significantly outperformed the model that considered only the small set of known clinical risk factors, AUROC of 0.71 (95% CI, .69–.75). Conclusions.  Automated risk stratification of patients based on the contents of their EMRs can be used to accurately ide.jpegy a high-risk population of patients. The proposed method holds promise for enabling the selective allocation of interventions aimed at reducing the rate of CDI.


2019 ◽  
Vol 6 (Supplement_2) ◽  
pp. S938-S938
Author(s):  
Joseph L DeRose ◽  
Peter Axelrod ◽  
Rafik Samuel ◽  
Heather Clauss

Abstract Background Clostridium difficile infection is a serious and common illness affecting almost 500,000 people in the United States each year. Solid-organ transplant recipients are at increased risk for this infection, with lung transplant patients being at the highest risk. Temple University Hospital (TUH) in Philadelphia has performed the most lung transplants in the United States over the last 2 years. Methods A retrospective case–control study was performed to identify patients diagnosed with C. difficile following lung transplantation at our institution between January 1, 2014 and April 30, 2018 (N = 35). We randomly selected control patients (N = 35) who had lung transplantation performed during this time but did not develop C. difficile infection. The study objectives were to characterize risk factors that are associated with C. difficile infection in lung transplant recipients and compare clinical outcomes in recipients with and without C. difficile. Statistical analysis was performed using Epi Info (CDC, Atlanta GA). Results The average age was 62.4 years, 64.7% were male, 75% were white and 69.1% of transplants were performed for underlying idiopathic pulmonary fibrosis. 52.9% of patients had “non-severe” C. difficile infection as defined by the 2018 Infectious Disease Society of America guidelines. Patients with C. difficile infection were more likely to have been treated for cytomegalovirus (CMV) viremia (OR 8.2, 95% CI 2.4–28.2, P = 0.0006) and were more likely to have received third- to fifth-generation cephalosporins (OR 4.0, 95% CI 1.4–11.2, P = 0.01) and/or carbapenems (OR 3.7, 95% CI 1.4–9.9, P = 0.02). Patients with C. difficile infection were more likely to experience multiple hospitalizations when compared with C. difficile-negative patients (3.6 vs. 8.4, P = 0.003). 22 of the 68 evaluable patients died during the study period, 9 of whom had C. difficile infection (P = NS). Conclusion Patients who received lung transplants and developed C. difficile infection were more likely to be treated for CMV viremia, receive antibiotics including cephalosporins and/or carbapenems and require repeat hospitalizations when compared with control patients who did not develop C. difficile infection following transplant. Disclosures All authors: No reported disclosures.


2012 ◽  
Vol 31 (2) ◽  
pp. 134-138 ◽  
Author(s):  
Jason Kim ◽  
Julia F. Shaklee ◽  
Sarah Smathers ◽  
Priya Prasad ◽  
Lindsey Asti ◽  
...  

2013 ◽  
Vol 144 (5) ◽  
pp. S-148
Author(s):  
Ashwin N. Ananthakrishnan ◽  
Emily Oxford ◽  
Deanna D. Nguyen ◽  
Jenny Sauk ◽  
Vijay Yajnik ◽  
...  

Biomédica ◽  
2017 ◽  
Vol 37 (1) ◽  
pp. 53 ◽  
Author(s):  
Carlos Carvajal ◽  
Carlos Pacheco ◽  
Fabián Jaimes

Introducción. La enfermedad asociada a Clostridium difficile es la principal causa de diarrea infecciosa adquirida en el hospital; su creciente incidencia, las menores tasas de respuesta al tratamiento inicial y la mayor tasa de recaídas han incrementado la carga de la enfermedad.Objetivo. Determinar las características clínicas de los pacientes hospitalizados con enfermedad asociada a C. difficile.Materiales y métodos. Se hizo un estudio de casos anidado en una cohorte. Se revisaron las historias clínicas de pacientes con diarrea iniciada durante su hospitalización a quienes se les había practicado la prueba de detección de la toxina A-B de C. difficile, entre febrero de 2010 y febrero de 2012. Se definió como caso al paciente hospitalizado con diarrea y prueba de Enzyme Linked Fluorescent Assay (ELFA) positiva para la toxina y, como control, a aquel con resultado negativo para la toxina. Se recolectaron los datos demográficos y clínicos, así como la información sobre los factores asociados, la estancia hospitalaria, el tratamiento y las complicaciones.Resultados. Durante el periodo de seguimiento se recolectaron datos de 123 pacientes, de los cuales 30 fueron positivos para la toxina. La edad media en la población de estudio fue de 49 años y el 60 % correspondía a hombres. Los síntomas predominantes fueron el dolor abdominal (35 %) y la fiebre (34 %). Las principales complicaciones fueron la alteración electrolítica y la sepsis grave asociada con disfunción renal. La mortalidad total fue de 13 % y los factores independientes asociados con la aparición de la infección fueron el uso de inhibidores de la bomba de protones y la cirugía gastrointestinal previa.Conclusiones. El uso de inhibidores de la bomba de protonesy la cirugía gastrointestinal previa fueron factores asociados con la infección por C. difficile.


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