Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data

Abstract Background Mathematical models provide an understanding of the dynamics of a Plasmodium falciparum blood-stage infection (within-host models), and can predict the impact of control strategies that affect the blood-stage of malaria. However, the dynamics of P. falciparum blood-stage infectio...

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Main Authors: Thiery Masserey, Melissa A. Penny, Tamsin E. Lee
Format: Article
Language:English
Published: BMC 2022-10-01
Series:Malaria Journal
Subjects:
Online Access:https://doi.org/10.1186/s12936-022-04317-0
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author Thiery Masserey
Melissa A. Penny
Tamsin E. Lee
author_facet Thiery Masserey
Melissa A. Penny
Tamsin E. Lee
author_sort Thiery Masserey
collection DOAJ
description Abstract Background Mathematical models provide an understanding of the dynamics of a Plasmodium falciparum blood-stage infection (within-host models), and can predict the impact of control strategies that affect the blood-stage of malaria. However, the dynamics of P. falciparum blood-stage infections are highly variable between individuals. Within-host models use different techniques to capture this inter-individual variation. This struggle may be unnecessary because patients can be clustered according to similar key within-host dynamics. This study aimed to identify clusters of patients with similar parasitaemia profiles so that future mathematical models can include an improved understanding of within-host variation. Methods Patients’ parasitaemia data were analyzed to identify (i) clusters of patients (from 35 patients) that have a similar overall parasitaemia profile and (ii) clusters of patients (from 100 patients) that have a similar first wave of parasitaemia. For each cluster analysis, patients were clustered based on key features which previous models used to summarize parasitaemia dynamics. The clustering analyses were performed using a finite mixture model. The centroid values of the clusters were used to parameterize two established within-host models to generate parasitaemia profiles. These profiles (that used the novel centroid parameterization) were compared with profiles that used individual-specific parameterization (as in the original models), as well as profiles that ignored individual variation (using overall means for parameterization). Results To capture the variation of within-host dynamics, when studying the overall parasitaemia profile, two clusters efficiently grouped patients based on their infection length and the height of the first parasitaemia peak. When studying the first wave of parasitaemia, five clusters efficiently grouped patients based on the height of the peak and the speed of the clearance following the peak of parasitaemia. The clusters were based on features that summarize the strength of patient innate and adaptive immune responses. Parameterizing previous within host-models based on cluster centroid values accurately predict individual patient parasitaemia profiles. Conclusion This study confirms that patients have personalized immune responses, which explains the variation of parasitaemia dynamics. Clustering can guide the optimal inclusion of within-host variation in future studies, and inform the design and parameterization of population-based models.
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spelling doaj.art-9f2fd33429704b1fbf011a79246a1c8e2022-12-22T04:33:20ZengBMCMalaria Journal1475-28752022-10-0121111410.1186/s12936-022-04317-0Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical dataThiery Masserey0Melissa A. Penny1Tamsin E. Lee2Swiss Tropical and Public Health InstituteSwiss Tropical and Public Health InstituteSwiss Tropical and Public Health InstituteAbstract Background Mathematical models provide an understanding of the dynamics of a Plasmodium falciparum blood-stage infection (within-host models), and can predict the impact of control strategies that affect the blood-stage of malaria. However, the dynamics of P. falciparum blood-stage infections are highly variable between individuals. Within-host models use different techniques to capture this inter-individual variation. This struggle may be unnecessary because patients can be clustered according to similar key within-host dynamics. This study aimed to identify clusters of patients with similar parasitaemia profiles so that future mathematical models can include an improved understanding of within-host variation. Methods Patients’ parasitaemia data were analyzed to identify (i) clusters of patients (from 35 patients) that have a similar overall parasitaemia profile and (ii) clusters of patients (from 100 patients) that have a similar first wave of parasitaemia. For each cluster analysis, patients were clustered based on key features which previous models used to summarize parasitaemia dynamics. The clustering analyses were performed using a finite mixture model. The centroid values of the clusters were used to parameterize two established within-host models to generate parasitaemia profiles. These profiles (that used the novel centroid parameterization) were compared with profiles that used individual-specific parameterization (as in the original models), as well as profiles that ignored individual variation (using overall means for parameterization). Results To capture the variation of within-host dynamics, when studying the overall parasitaemia profile, two clusters efficiently grouped patients based on their infection length and the height of the first parasitaemia peak. When studying the first wave of parasitaemia, five clusters efficiently grouped patients based on the height of the peak and the speed of the clearance following the peak of parasitaemia. The clusters were based on features that summarize the strength of patient innate and adaptive immune responses. Parameterizing previous within host-models based on cluster centroid values accurately predict individual patient parasitaemia profiles. Conclusion This study confirms that patients have personalized immune responses, which explains the variation of parasitaemia dynamics. Clustering can guide the optimal inclusion of within-host variation in future studies, and inform the design and parameterization of population-based models.https://doi.org/10.1186/s12936-022-04317-0MalariaPlasmodium falciparumBlood-stage infectionsPatient variabilityCluster analysisMathematical model
spellingShingle Thiery Masserey
Melissa A. Penny
Tamsin E. Lee
Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
Malaria Journal
Malaria
Plasmodium falciparum
Blood-stage infections
Patient variability
Cluster analysis
Mathematical model
title Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
title_full Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
title_fullStr Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
title_full_unstemmed Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
title_short Patient variability in the blood-stage dynamics of Plasmodium falciparum captured by clustering historical data
title_sort patient variability in the blood stage dynamics of plasmodium falciparum captured by clustering historical data
topic Malaria
Plasmodium falciparum
Blood-stage infections
Patient variability
Cluster analysis
Mathematical model
url https://doi.org/10.1186/s12936-022-04317-0
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