The Company Core Data Sheet in Light of XML-Authoring and IDMP Master Data Implementation.

Ther Innov Regul Sci

1 Cognizant Technology Solutions, Frechen, Germany.

Published: May 2017

Labeling decisions for core labeling and/or local labeling capture the outcome of all discussions on the product statements that are necessary to ensure safe and effective handling of pharmaceutical products, with a special focus on the decision concerning known, suspected, or hypothetical risks. Such decisions may determine if a topic is to be included in the label or provide a rationale for exclusion from the label. The need to provide special advice to users and the type of advice (eg, contraindications, precautions) are subject to labeling decisions as well. While the problem is well known to pharmaceutical companies, and technical solutions such as XML-based authoring/coding systems try to offer support from the information technology sector to handle the business problem, the current identification of medicinal products (IDMP) requirements raised by health authorities worldwide have put a new focus on the problem. This article will elaborate on the basic business problem and its requirements with respect to a solution.

Download full-text PDF

Source
http://dx.doi.org/10.1177/2168479016680255DOI Listing

Publication Analysis

Top Keywords

labeling decisions
8
label provide
8
business problem
8
company core
4
core data
4
data sheet
4
sheet light
4
light xml-authoring
4
xml-authoring idmp
4
idmp master
4

Similar Publications

Oral cancer is a major global health problem. It is commonly diagnosed at an advanced stage although often preceded by clinically visible oral mucosal lesions, termed oral potentially malignant disorders associated with an increased risk for oral cancer development. There is an unmet clinical need for effective screening tools to assist front-line healthcare providers to determine which patients should be referred to an oral cancer specialist for evaluation.

View Article and Find Full Text PDF

The probing of live bacteria via the incorporation of fluorescent D-amino acids (FDAAs) during peptidoglycan synthesis has been shown to be practical for visualizing both gram-positive and gram-negative bacterial species. This study demonstrates the reliability and applications of FDAA labelling for the fluorescent imaging of an obligate anaerobe.

View Article and Find Full Text PDF

Objective: This study aimed to explore the utilization of a fine-tuned language model to extract expressions related to the Age-Friendly Health Systems 4M Framework (What Matters, Medication, Mentation, and Mobility) from nursing home worker text messages, deploy automated mapping of these expressions to a taxonomy, and explore the created expressions and relationships.

Materials And Methods: The dataset included 21 357 text messages from healthcare workers in 12 Missouri nursing homes. A sample of 860 messages was annotated by clinical experts to form a "Gold Standard" dataset.

View Article and Find Full Text PDF

This dataset examines the interplay between socioeconomic status and educational outcomes among students at the Universidad Nacional de Colombia. Collected from publicly available data in collaboration with the National Directorate of Information, the dataset includes anonymized records of 3361 students from multiple university campuses during the first semester of 2021. It captures a diverse array of socioeconomic and academic variables, such as family income, residence type, tuition fee, and career choice, providing a unique basis for studying educational access in Colombia.

View Article and Find Full Text PDF

Aim: To develop a deep learning-based smart assessment model for pressure injury surface.

Design: Exploratory analysis study.

Methods: Pressure injury images from four Guangzhou hospitals were labelled and used to train a neural network model.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!