Acknowledgement to Reviewers of Informatics in 2018

Journal Title: Informatics - Year 2019, Vol 6, Issue 1

Abstract

Rigorous peer-review is the corner-stone of high-quality academic publishing. The editorial team greatly appreciates the reviewers who contributed their knowledge and expertise to the journal’s editorial process over the past 12 months. In 2018, a total of 43 papers were published in the journal, with a median time to first decision of 24 days and a median time to publication of 68 days.

Authors and Affiliations

Informatics Editorial Office

Keywords

Related Articles

Molecular Imaging of Bacterial Infections in vivo: The Discrimination between Infection and Inflammation

Molecular imaging by definition is the visualization of molecular and cellular processes within a given system. The modalities and reagents described here represent a diverse array spanning both pre-clinical and clinic...

A Smart Sensor Data Transmission Technique for Logistics and Intelligent Transportation Systems

When it comes to Internet of Things systems that include both a logistics system and an intelligent transportation system, a smart sensor is one of the key elements to collect useful information whenever and wherever n...

Modeling the Construct of an Expert Evidence-Adaptive Knowledge Base for a Pressure Injury Clinical Decision Support System

The selection of appropriate wound products for the treatment of pressure injuries is paramount in promoting wound healing. However, nurses find it difficult to decide on the most optimal wound product(s) due to limite...

Disabling and Enabling Technologies for Learning in Higher Education for All: Issues and Challenges for Whom?

Integration, inclusion, and equity constitute fundamental dimensions of democracy in post-World War II societies and their institutions. The study presented here reports upon the ways in which individuals and instituti...

AVIST: A GPU-Centric Design for Visual Exploration of Large Multidimensional Datasets

This paper presents the Animated VISualization Tool (AVIST), an exploration-oriented data visualization tool that enables rapidly exploring and filtering large time series multidimensional datasets. AVIST highlights in...

Download PDF file
  • EP ID EP44173
  • DOI https://doi.org/10.3390/informatics6010003
  • Views 250
  • Downloads 0

How To Cite

Informatics Editorial Office (2019). Acknowledgement to Reviewers of Informatics in 2018. Informatics, 6(1), -. https://europub.co.uk/articles/-A-44173