Comparison of pharmacist evaluation of medication orders with predictions of a machine learning model

11/03/2020
by   Sophie-Camille Hogue, et al.
0

The objective of this work was to assess the clinical performance of an unsupervised machine learning model aimed at identifying unusual medication orders and pharmacological profiles. We conducted a prospective study between April 2020 and August 2020 where 25 clinical pharmacists dichotomously (typical or atypical) rated 12,471 medication orders and 1,356 pharmacological profiles. Based on AUPR, performance was poor for orders, but satisfactory for profiles. Pharmacists considered the model a useful screening tool.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/31/2021

Classification of fetal compromise during labour: signal processing and feature engineering of the cardiotocograph

Cardiotocography (CTG) is the main tool used for fetal monitoring during...
research
04/03/2017

On the Unreported-Profile-is-Negative Assumption for Predictive Cheminformatics

In cheminformatics, compound-target binding profiles has been a main sou...
research
06/20/2022

Metareview-informed Explainable Cytokine Storm Detection during CAR-T cell Therapy

Cytokine release syndrome (CRS), also known as cytokine storm, is one of...
research
10/13/2021

Stiffness optimisation of graded microstructal configurations using asymptotic analysis and machine learning

The article is aimed to address a combinative use of asymptotic analysis...
research
06/09/2023

Agent market orders representation through a contrastive learning approach

Due to the access to the labeled orders on the CAC40 data from Euronext,...
research
02/20/2022

Deconstructing Distributions: A Pointwise Framework of Learning

In machine learning, we traditionally evaluate the performance of a sing...
research
04/19/2023

Depth Functions for Partial Orders with a Descriptive Analysis of Machine Learning Algorithms

We propose a framework for descriptively analyzing sets of partial order...

Please sign up or login with your details

Forgot password? Click here to reset