Addressing global public health challenges, by developing a quantum computing solution to improve current AI models, predict more quickly and accurately patterns of resistance and identifying new chemical compounds with low resistance on more targeted bacteria.
CURATED BY OQI
Outline of the use case
Global Antibiotic Research and Development Partnership (GARDP)
University of Copenhagen
WHO declared antimicrobial resistance (AMR) as one of the top ten threats to global public health.
Low- and middle- income countries, and certain population groups such as children and the elderly, are hit the hardest by AMR. AMR also has an economic cost, as it affects productivity and economic growth. The World Bank estimates that if AMR is unchecked, by 2030, an additional 24.1 million people could be forced into extreme poverty.
Despite the significant economic, environmental, and societal costs, the development of new antimicrobials has not kept pace with the emergence of resistance, leaving healthcare providers with fewer options for treating infections. No new classes of antibiotics have been discovered in the past decades.
HOW QUANTUM COULD HELP
An approach to AMR research is to identify new drugs that have more targeted action to specific diseases and that are efficient against any known resistance mechanism. Machine learning methods are used to find new and efficient combination of compounds. Such predictive models learn relationships between large chemical diversity found in libraries of chemical compounds and experimental in vitro observations, and then predict novel mixes with improved efficacies (in terms of targeted disease treatment and resistance).
A quantum computing solution, based on quantum machine learning, could potentially be developed as an alternative or complement to classical machine learning algorithms for the prediction of patterns of resistance and of new chemical compounds with low resistance on more targeted bacteria. The key goal would be to obtain higher-quality mixes with fewer experimentation-learning cycles, as the number of cycles involves expensive on-demand experiments.
OQI Partners are institutions (such as quantum computing providers, education providers, leading expert organizations from private or public sector, or institutions represented in the OQI Advisory Committee) recognized as a credible participant in the scientific and/or diplomatic community.
OQI Members are institutions such as NGOs, IGOs, countries, or organizations with leading expertise in quantum computing, application domains, specific use case areas, SDGs, impact, diplomacy, governance and other related fields from the public, private and philanthropic sector) recognized as a credible participant in the scientific and/or diplomatic community.
OQI Friends are individuals (such as experts from the private or public sector, countries, citizens) who are committed to open science, inclusivity and all values as set out in OQI’s charter and associate themselves with the OQI.
Friends represent the OQI to their communities, abiding to OQI values.
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