Motivation: In predicting HIV therapy outcomes, a critical clinical question is whether using historical information can enhance predictive capabilities compared with current or latest available data analysis. This study analyses whether historical knowledge, which includes viral mutations detected in all genotypic tests before therapy, their temporal occurrence, and concomitant viral load measurements, can bring improvements. We introduce a method to weigh mutations, considering the previously enumerated factors and the reference mutation-drug Stanford resistance tables. We compare a model encompassing history (H) with one not using it (NH). Results: The H-model demonstrates superior discriminative ability, with a higher ROC-AUC score (76.34%) than the NH-model (74.98%). Significant Wilcoxon test results confirm that incorporating historical information improves consistently predictive accuracy for treatment outcomes. The better performance of the H-model might be attributed to its consideration of latent HIV reservoirs, probably obtained when leveraging historical information. The findings emphasize the importance of temporal dynamics in mutations, offering insights into HIV infection complexities. However, our result also shows that prediction accuracy remains relatively high even when no historical information is available. Supplementary information: Supplementary material is available.

Incorporating temporal dynamics of mutations to enhance the prediction capability of antiretroviral therapy's outcome for HIV-1 / DI TEODORO, Giulia; Pirkl, Martin; Incardona, Francesca; Vicenti, Ilaria; Sönnerborg, Anders; Kaiser, Rolf; Palagi, Laura; Zazzi, Maurizio; Lengauer, Thomas. - In: BIOINFORMATICS. - ISSN 1367-4811. - 40:6(2024). [10.1093/bioinformatics/btae327]

Incorporating temporal dynamics of mutations to enhance the prediction capability of antiretroviral therapy's outcome for HIV-1

Giulia Di Teodoro
;
Laura Palagi;
2024

Abstract

Motivation: In predicting HIV therapy outcomes, a critical clinical question is whether using historical information can enhance predictive capabilities compared with current or latest available data analysis. This study analyses whether historical knowledge, which includes viral mutations detected in all genotypic tests before therapy, their temporal occurrence, and concomitant viral load measurements, can bring improvements. We introduce a method to weigh mutations, considering the previously enumerated factors and the reference mutation-drug Stanford resistance tables. We compare a model encompassing history (H) with one not using it (NH). Results: The H-model demonstrates superior discriminative ability, with a higher ROC-AUC score (76.34%) than the NH-model (74.98%). Significant Wilcoxon test results confirm that incorporating historical information improves consistently predictive accuracy for treatment outcomes. The better performance of the H-model might be attributed to its consideration of latent HIV reservoirs, probably obtained when leveraging historical information. The findings emphasize the importance of temporal dynamics in mutations, offering insights into HIV infection complexities. However, our result also shows that prediction accuracy remains relatively high even when no historical information is available. Supplementary information: Supplementary material is available.
2024
human immunodeficiency virus; antiretroviral drug; therapy prediction; rate of mutation disappearance; weighting factors for mutations; viral load; Stanford mutation-drug resistance score; machine learning
01 Pubblicazione su rivista::01a Articolo in rivista
Incorporating temporal dynamics of mutations to enhance the prediction capability of antiretroviral therapy's outcome for HIV-1 / DI TEODORO, Giulia; Pirkl, Martin; Incardona, Francesca; Vicenti, Ilaria; Sönnerborg, Anders; Kaiser, Rolf; Palagi, Laura; Zazzi, Maurizio; Lengauer, Thomas. - In: BIOINFORMATICS. - ISSN 1367-4811. - 40:6(2024). [10.1093/bioinformatics/btae327]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1697819
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