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Title: Machine Learning in Infectious Disease for Risk Factor Identification and Hypothesis Generation: Proof of Concept Using Invasive Candidiasis

Journal Article · · Open Forum Infectious Diseases
 [1];  [2];  [2];  [2];  [3];  [2]; ORCiD logo [2]
  1. National Institutes of Health (NIH), Rockville, MD (United States)
  2. National Institutes of Health (NIH), Bethesda, MD (United States)
  3. Univ. of Massachusetts, Lowell, MA (United States)

Machine learning (ML) models can handle large data sets without assuming underlying relationships and can be useful for evaluating disease characteristics, yet they are more commonly used for predicting individual disease risk than for identifying factors at the population level. We offer a proof of concept applying random forest (RF) algorithms to Candida-positive hospital encounters in an electronic health record database of patients in the United States. Candida-positive encounters were extracted from the Cerner HealthFacts database; invasive infections were laboratory-positive sterile site Candida infections. Features included demographics, admission source, care setting, physician specialty, diagnostic and procedure codes, and medications received before the first positive Candida culture. We used RF to assess risk factors for 3 outcomes: any invasive candidiasis (IC) vs non-IC, within-species IC vs non-IC (eg, invasive C. glabrata vs noninvasive C. glabrata), and between-species IC (eg, invasive C. glabrata vs all other IC). Fourteen of 169 (8%) variables were consistently identified as important features in the ML models. When evaluating within-species IC, for example, invasive C. glabrata vs non-invasive C. glabrata, we identified known features like central venous catheters, intensive care unit stay, and gastrointestinal operations. In contrast, important variables for invasive C. glabrata vs all other IC included renal disease and medications like diabetes therapeutics, cholesterol medications, and antiarrhythmics. Known and novel risk factors for IC were identified using ML, demonstrating the hypothesis-generating utility of this approach for infectious disease conditions about which less is known, specifically at the species level or for rarer diseases.

Research Organization:
Oak Ridge Institute for Science and Education (ORISE), Oak Ridge, TN (United States)
Sponsoring Organization:
National Science Foundation (NSF); US Air Force Office of Scientific Research (AFOSR); USDOE Office of Science (SC)
Grant/Contract Number:
SC0014664
OSTI ID:
1982717
Journal Information:
Open Forum Infectious Diseases, Journal Name: Open Forum Infectious Diseases Journal Issue: 8 Vol. 9; ISSN 2328-8957
Publisher:
Oxford Academic - Infectious Diseases Society of AmericaCopyright Statement
Country of Publication:
United States
Language:
English

References (36)

Machine learning for clinical decision support in infectious diseases: a narrative review of current applications journal May 2020
Machine learning in infection management using routine electronic health records: tools, techniques, and reporting of future technologies journal October 2020
Candidemia and Invasive Candidiasis journal June 2021
Development and validation of a clinical prediction rule for candidemia in hospitalized patients with severe sepsis and septic shock journal August 2015
Healthcare-associated ventriculitis and meningitis in a neuro-ICU: Incidence and risk factors selected by machine learning approach journal June 2018
Epidemiology of antifungal susceptibility: Review of literature journal September 2018
Variable selection using random forests journal October 2010
Introduction to Machine Learning in Digital Healthcare Epidemiology journal November 2018
Immune defence against Candida fungal infections journal September 2015
Combining Biomarkers with EMR Data to Identify Patients in Different Phases of Sepsis journal September 2017
Machine learning for emerging infectious disease field responses journal January 2022
Problematic Dichotomization of Risk for Intensive Care Unit (ICU)–Acquired Invasive Candidiasis: Results Using a Risk-Predictive Model to Categorize 3 Levels of Risk From a Multicenter Prospective Cohort of Australian ICU Patients journal September 2016
Importance of Candida Species Other than C. albicans as Pathogens in Oncology Patients journal January 1995
Invasive Candidiasis Species Distribution and Trends, United States, 2009–2017 journal August 2020
A multicentre study to evaluate the impact of timing of caspofungin administration on outcomes of invasive candidiasis in non-immunocompromised adult patients journal June 2010
Clinical predictive models of invasive Candida infection: A systematic literature review journal July 2021
Risk Factors for Candidemia After Open Heart Surgery: Results From a Multicenter Case–Control Study journal June 2020
Coding Algorithms for Defining Comorbidities in ICD-9-CM and ICD-10 Administrative Data journal January 2005
Algorithms on regulatory lockdown in medicine journal December 2019
Candida Infective Endocarditis: an Observational Cohort Study with a Focus on Therapy journal April 2015
Delaying the Empiric Treatment of Candida Bloodstream Infection until Positive Blood Culture Results Are Obtained: a Potential Risk Factor for Hospital Mortality journal August 2005
Diagnosing Invasive Candidiasis journal May 2018
Candida: Platelet Interaction and Platelet Activity in vitro journal September 2018
Comparison of ARIMA and Random Forest time series models for prediction of avian influenza H5N1 outbreaks journal August 2014
Validation and comparison of clinical prediction rules for invasive candidiasis in intensive care unit patients: a matched case-control study journal January 2011
Predicting invasive fungal disease due to Candida species in non-neutropenic, critically ill, adult patients in United Kingdom critical care units journal September 2016
Development and validation of a diagnostic model for early differentiation of sepsis and non-infectious SIRS in critically ill children - a data-driven approach using machine-learning algorithms journal March 2018
A comparison of a multistate inpatient EHR database to the HCUP Nationwide Inpatient Sample journal June 2015
Step away from stepwise journal September 2018
Variable generalization performance of a deep learning model to detect pneumonia in chest radiographs: A cross-sectional study journal November 2018
Wetlands, wild Bovidae species richness and sheep density delineate risk of Rift Valley fever outbreaks in the African continent and Arabian Peninsula journal July 2017
Candidemia after cardiac surgery in the intensive care unit: an observational study journal March 2011
Hospital Resource Utilization and Costs of Inappropriate Treatment of Candidemia journal April 2010
Candida parapsilosis endocarditis. Report of cases and review of the literature journal September 2020
Predicting Infectious Disease Using Deep Learning and Big Data journal July 2018
Predicting invasive fungal disease due to Candida species in non-neutropenic, critically ill, adult patients in United Kingdom critical care units collection January 2016