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DOI: 10.1002/adtp.202000034
¤ OpenAccess: Hybrid
This work has “Hybrid” OA status. This means it is free under an open license in a toll-access journal.

Project IDentif.AI: Harnessing Artificial Intelligence to Rapidly Optimize Combination Therapy Development for Infectious Disease Intervention

Aynur Abdulla,Boqian Wang,Qian Feng,Theodore Kee,Agata Blasiak,Yoong Hun Ong,Lissa Hooi,Falgunee K. Parekh,Rafael Soriano,Gene G. Olinger,Jussi Keppo,Chris L. Hardesty,Edward Kai‐Hua Chow,Dean Ho,Xianting Ding

Repurposing
Drug repositioning
Medicine
2020
In 2019/2020, the emergence of coronavirus disease 2019 (COVID-19) resulted in rapid increases in infection rates as well as patient mortality. Treatment options addressing COVID-19 included drug repurposing, investigational therapies such as remdesivir, and vaccine development. Combination therapy based on drug repurposing is among the most widely pursued of these efforts. Multi-drug regimens are traditionally designed by selecting drugs based on their mechanism of action. This is followed by dose-finding to achieve drug synergy. This approach is widely-used for drug development and repurposing. Realizing synergistic combinations, however, is a substantially different outcome compared to globally optimizing combination therapy, which realizes the best possible treatment outcome by a set of candidate therapies and doses toward a disease indication. To address this challenge, the results of Project IDentif.AI (Identifying Infectious Disease Combination Therapy with Artificial Intelligence) are reported. An AI-based platform is used to interrogate a massive 12 drug/dose parameter space, rapidly identifying actionable combination therapies that optimally inhibit A549 lung cell infection by vesicular stomatitis virus within three days of project start. Importantly, a sevenfold difference in efficacy is observed between the top-ranked combination being optimally and sub-optimally dosed, demonstrating the critical importance of ideal drug and dose identification. This platform is disease indication and disease mechanism-agnostic, and potentially applicable to the systematic N-of-1 and population-wide design of highly efficacious and tolerable clinical regimens. This work also discusses key factors ranging from healthcare economics to global health policy that may serve to drive the broader deployment of this platform to address COVID-19 and future pandemics.
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    Project IDentif.AI: Harnessing Artificial Intelligence to Rapidly Optimize Combination Therapy Development for Infectious Disease Intervention” is a paper by Aynur Abdulla Boqian Wang Qian Feng Theodore Kee Agata Blasiak Yoong Hun Ong Lissa Hooi Falgunee K. Parekh Rafael Soriano Gene G. Olinger Jussi Keppo Chris L. Hardesty Edward Kai‐Hua Chow Dean Ho Xianting Ding published in 2020. It has an Open Access status of “hybrid”. You can read and download a PDF Full Text of this paper here.