Utilising unsupervised machine learning to predict outbreaks of respiratory tract infections in acute Irish hospitals (2016-2021).

Journal: Public health in practice (Oxford, England)
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Abstract

OBJECTIVES: To apply unsupervised machine learning (ML) to predict outbreaks of respiratory tract infections (RTIs) in acute Irish hospitals (2016-2021). STUDY DESIGN: A retrospective study. METHODS: RTIs data was extracted from Irish hospital inpatient enquiry (HIPE). Three k-modes clustering models were developed, whose resulting clusters were compared via graphical visualisation of main RTIs to choose the model which captured the outbreaks best. To understand the individual RTIs behind the outbreaks, further exploration was carried out. RESULTS: Nearly half a million patients (491,099) were admitted to 55 acute Irish hospitals with an RTI. Model 2, including 212 diagnostic groups according to hierarchical clustering, was able to capture all outbreaks. Further analysis resulted in five diagnostic codes that contributed with two thirds of all RTI hospitalisations throughout the six years (acute lower RTI (28.24%), pneumonia (20.76%), chronic obstructive pulmonary disease with acute lower RTI (7.52%), COVID-19 (2020-2021) (5.13%), and acute upper RTI (4.37%)). CONCLUSION: Unsupervised ML (K-modes clustering) can be useful in predicting RTIs outbreaks in acute Irish hospitals. Further analysis identified five RTI diagnostic codes that contributed most to outbreaks, which if monitored, may alert hospitals of potential RTI outbreaks.

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