Algorithm Development Steps for a predictive model for nocturnal repositioning of critical care patients based on regular sleep body mobilization patterns using Machine Learning

Published: 6 July 2023| Version 1 | DOI: 10.17632/ywy5wzrp2v.1
Contributor:
Olga Cortes

Description

A repositioning frequency algorithm was designed to monitor normal individuals during the sleep period considering the two input variables with quantitative data (BMI and age), to derive a decision tree to define the position changes suggested by age groups (group 1 adults: 18-45 years and group No 2_Older adults: ≥ 46 years), and according to the BMI (Group 1. Normal: 18.5 to 24.9; Group 2 overweight: ≥ 25) during sleep time, using Python language and the scikit-learn.org library.

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Institutions

Fundacion Cardioinfantil Instituto de Cardiologia, Universidad Del Rosario Escuela de Medicina y Ciencias de la Salud

Categories

Text Processing

Funding

Ministerio de Ciencia y Tecnología

Code: 277884467846, Contract No. 439–2020.

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