Abstract

In this study we propose the use of text mining and machine learning methods to predict and detect Surgical Site Infections (SSIs) using textual descriptions of surgeries and post-operative patients’ records, mined from the database of a high complexity University hospital. SSIs are among the most common adverse events experienced by hospitalized patients; preventing such events is fundamental to ensure patients’ safety. Knowledge on SSI occurrence rates may also be useful in preventing future episodes. We analyzed 15,479 surgery descriptions and post-operative records testing different preprocessing strategies and the following machine learning algorithms: Linear SVC, Logistic Regression, Multinomial Naive Bayes, Nearest Centroid, Random Forest, Stochastic Gradient Descent, and Support Vector Classification (SVC). For prediction purposes, the best result was obtained using the Stochastic Gradient Descent method (79.7% ROC-AUC); for detection, Logistic Regression yielded the best performance (80.6% ROC-AUC).

Highlights

  • Surgical Site Infections (SSIs) are one of the predominant types of infection in Brazilian hospitals [1]

  • The original database was comprised of 27,648 surgical descriptions and 15,714 post-operative records

  • After excluding empty records and those that did not fit the criteria of the study, the number of records was reduced to 15,479 surgical descriptions and 12,637 post-operative records, with 98.6% of the records negative and 1.4% positive on average, according to Table 2

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Summary

Introduction

Surgical Site Infections (SSIs) are one of the predominant types of infection in Brazilian hospitals [1]. About one in thirty "clean" surgeries will suffer from complications due to SSIs. The rate is significantly higher if we consider "dirty" (i.e. contaminated), emergency, and prolonged surgeries, or procedures performed on patients with clinical comorbidities [2]. SSIs are among the most frequent Adverse Events (AEs) reported on hospitalized patients, causing a substantial increase in mortality, re-hospitalization rates, and care costs [2,3]

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