Our Mission

Our mission is to create an expansive, AI-driven knowledge platform, meticulously crafted from diverse, publicly available datasets with goal of revolutionizing patient care and safety.

What is medicX?

medicX is a groundbreaking digital platform blending healthcare and technology to revolutionize access to medical information. Utilizing AI, it offers healthcare professionals accurate, current, and clear insights into medicines and drug interactions, enhancing patient care and safety.

medicX Preview (coming soon)

The research and development of medicX is an ongoing innovation endevour. In this initial release, we've integrated data from several pharmaceutical data sources into our own knowledge framework. Additionally, we offer an advanced drug drug interaction service, enabling the clear and precise identification of interactions between multiple drugs.

More Information

medicX started as a research project in 2018 at the Department of Artificial Intelligence within the University of Malta focusing on the use of AI to reduce the problems that might result from polypharmacy.

medicX Knowledge Graph

medicX leverages on the curation and provision of extensive medical knowledge, meticulously harvested from a multitude of publicly available data sources. The Knowledge Graph transforms how healthcare information is accessed and utilized, enabling a deeper understanding of drug related knowledge.

AI-driven Services

medicX is revolutionizing healthcare with AI-driven solutions, harnessing the power of machine learning and knowledge graphs to deliver advanced, personalized medical insights. Our technology empowers healthcare professionals to make more informed decisions, enhancing patient care and advancing the future of medicine

medicX Facts

medicX through numbers

9038

Medicinal Products

2170

Active Ingredients

115,285

Drug-Drug Interactions

1,734

Adverse Drug Events

Publications

Mining drug-drug interactions for healthcare professionals

In this paper, we propose medicX, a system that can detect DDIs in biomedical texts by leveraging on different machine learning techniques. The main components within medicX are the Drug Named Entity Recognition (DNER) component and the DDI Identification component.

Lizzy Farrugia, Charlie Abela

APPIS 2020: Proceedings of the 3rd International Conference on Applications of Intelligent Systems. January 2020 Article No.: 12, Pages 1–6

Predicting Drug-Drug Interactions Using Knowledge Graphs

In this paper, we propose the medicX end-to-end framework that integrates several drug features from public drug repositories into a KG and embeds the nodes in the graph using various translation, factorisation and Neural Network (NN) based KG Embedding (KGE) methods. Ultimately, we use a Machine Learning (ML) algorithm that predicts unknown DDIs

Lizzy Farrugia, Lilian M. Azzopardi, Jeremy Debattista and Charlie Abela

arXiv preprint, 2023

medicX-KG:a knowledge graph for pharmacists’ drug information needs

This paper presents the development of the medicX-KG knowledge graph, that is tailored to the pharmaceutical landscape. Our KG serves as a centralised resource, integrating data from multiple authoritative sources, including information from DrugBank, PubChem and the British National Formulary (BNF). Furthermore, individual countries provide medicine-related information that is more specific to that country through the relevant Medicines Authority (or Agency).

Lizzy Farrugia, Lilian M. Azzopardi, Jeremy Debattista and Charlie Abela

Journal of Biomedical Semantics, 2025

Latest News

Team

Meet the medicX team

Charlie Abela

Principal Investigator Expert in Knowledge Graphs and AI

Lilian Azzopardi

Expert in Pharmacy

Lizzy Farrugia

Research Support Officer

Jeremy Debattista

Expert in Data Governance and Knowledge Graphs
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