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In silico trial to test COVID-19 candidate vaccines: a case study with UISS platform
Authors:Russo  Giulia  Pennisi  Marzio  Fichera  Epifanio  Motta  Santo  Raciti  Giuseppina  Viceconti  Marco  Pappalardo  Francesco
Institution:1.Department of Drug Sciences, University of Catania, 95125, Catania, Italy
;2.Department of Mathematics and Computer Science, University of Catania, 95125, Catania, Italy
;3.Computer Science Institute, DiSIT, University of Eastern Piedmont, 15121, Alessandria, Italy
;4.School of Mathematics and Statistics, University of Sheffield, Sheffield, S3 7RH, UK
;5.Archivel Farma, S.L., 08916, Badalona, Spain
;6.Experimental Tuberculosis Unit (UTE), Fundació Institut Germans Trias I Pujol (IGTP), Universitat Autònoma de Barcelona (UAB), Badalona, Spain
;7.Centro de Investigación Biomédica en Red (CIBER) de Enfermedades Respiratorias, Madrid, Spain
;8.National Research Council of Italy, 00185, Rome, Italy
;9.TuBerculosis Vaccine Initiative (TBVI), Lelystad, 8219, The Netherlands
;10.Etna Biotech S.r.l., 95121, Catania, Italy
;11.Department of Industrial Engineering, University of Bologna, 40136, Bologna, Italy
;
Abstract:Background

In 2018, about 10 million people were found infected by tuberculosis, with approximately 1.2 million deaths worldwide. Despite these numbers have been relatively stable in recent years, tuberculosis is still considered one of the top 10 deadliest diseases worldwide. Over the years, Mycobacterium tuberculosis has developed a form of resistance to first-line tuberculosis treatments, specifically to isoniazid, leading to multi-drug-resistant tuberculosis. In this context, the EU and Indian DBT funded project STriTuVaD—In Silico Trial for Tuberculosis Vaccine Development—is supporting the identification of new interventional strategies against tuberculosis thanks to the use of Universal Immune System Simulator (UISS), a computational framework capable of predicting the immunity induced by specific drugs such as therapeutic vaccines and antibiotics.

Results

Here, we present how UISS accurately simulates tuberculosis dynamics and its interaction within the immune system, and how it predicts the efficacy of the combined action of isoniazid and RUTI vaccine in a specific digital population cohort. Specifically, we simulated two groups of 100 digital patients. The first group was treated with isoniazid only, while the second one was treated with the combination of RUTI vaccine and isoniazid, according to the dosage strategy described in the clinical trial design. UISS-TB shows to be in good agreement with clinical trial results suggesting that RUTI vaccine may favor a partial recover of infected lung tissue.

Conclusions

In silico trials innovations represent a powerful pipeline for the prediction of the effects of specific therapeutic strategies and related clinical outcomes. Here, we present a further step in UISS framework implementation. Specifically, we found that the simulated mechanism of action of RUTI and INH are in good alignment with the results coming from past clinical phase IIa trials.

Keywords:
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