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Profiling Patients by Intensity of Nursing Care: An Operative Approach Using Machine Learning.

Honoria OcagliCorrado LaneraGiulia LorenzoniIlaria ProsepeDanila AzzolinaSabrina BortolottoLucia StivanelloMario DeganDario Gregori
Published in: Journal of personalized medicine (2020)
Physical function is a patient-oriented indicator and can be considered a proxy for the assignment of healthcare personnel. The study aims to create an algorithm that classifies patients into homogeneous groups according to physical function. A two-step machine-learning algorithm was applied to administrative data recorded between 2015 and 2018 at the University Hospital of Padova. A clustering-large-applications (CLARA) algorithm was used to partition patients into homogeneous groups. Then, machine learning technique (MLT) classifiers were used to categorize the doubtful records. Based on the results of the CLARA algorithm, records were divided into three groups according to the Barthel index: <45, >65, ≥45 and ≤65. The support vector machine was the MLT showing the best performance among doubtful records, reaching an accuracy of 66%. The two-step algorithm, since it splits patients into low and high resource consumption, could be a useful tool for organizing healthcare personnel allocation according to the patients' assistance needs.
Keyphrases
  • machine learning
  • end stage renal disease
  • chronic kidney disease
  • ejection fraction
  • newly diagnosed
  • prognostic factors
  • deep learning
  • peritoneal dialysis
  • patient reported outcomes
  • rna seq