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Combining country indicators and individual variables to predict soil-transmitted helminth infections among migrant populations: A case study from southern Italy

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Combining country indicators and individual variables to predict soil-transmitted helminth infections among migrant populations: A case study from southern Italy. / Purkiss, Jana; Pepe, Paola; Poplawski, Naím Alex Karol et al.
In: PLoS Neglected Tropical Diseases, Vol. 19, No. 6, e0012577, 13.06.2025.

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Purkiss J, Pepe P, Poplawski NAK, Maurelli MP, Gualdieri L, Rinaldi L et al. Combining country indicators and individual variables to predict soil-transmitted helminth infections among migrant populations: A case study from southern Italy. PLoS Neglected Tropical Diseases. 2025 Jun 13;19(6):e0012577. doi: 10.1371/journal.pntd.0012577

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@article{d9197161d3224fdfb355b484b22074b4,
title = "Combining country indicators and individual variables to predict soil-transmitted helminth infections among migrant populations: A case study from southern Italy",
abstract = "An increase in global migration towards developed countries along with climate change has led to the occurrence of Neglected Tropical Diseases (NTDs) in otherwise non-endemic countries. In this paper we focus on Soil Transmitted Helminth (STH) infections which disproportionately affect people living in poverty in tropical regions. To reduce the threat of STHs in migrant populations living in non-endemic countries, diagnosis and treatment are paramount but also present logistical challenges. This study investigates how statistical modelling can be used to assist the identification of individuals infected with STHs. Specifically, we show how to combine individual variables (e.g., age, sex and time in Italy) with publicly available country indicators (Human Development Index, Multidimensional Poverty Index and Inequality-adjusted Human Development Index) which describe development in the migrant{\textquoteright}s country of origin. We combine these indices and their factors in binomial mixed-effects models which can be used to predict the status of STH infections in migrant populations. By presenting a case study on migrants in southern Italy, we assess the relative importance of the individual-level variables and country-level indicators in enhancing the predictive power of the models. The results show that the country-level indices play a more important role but also highlight that individual data can help improve the model performance when combined with the former. To the best of our knowledge this is the first study investigating using country-level indicators to predict parasite infection status of migrants. Our study indicates that statistical models can play an important role in reducing the resources required to identify migrants requiring anthelmintic treatment against STHs and help to make statistically informed decisions.",
author = "Jana Purkiss and Paola Pepe and Poplawski, {Na{\'i}m Alex Karol} and Maurelli, {Maira Paola} and Luciano Gualdieri and Laura Rinaldi and Emanuele Giorgi",
year = "2025",
month = jun,
day = "13",
doi = "10.1371/journal.pntd.0012577",
language = "English",
volume = "19",
journal = "PLoS Neglected Tropical Diseases",
issn = "1935-2727",
publisher = "Public Library of Science",
number = "6",

}

RIS

TY - JOUR

T1 - Combining country indicators and individual variables to predict soil-transmitted helminth infections among migrant populations

T2 - A case study from southern Italy

AU - Purkiss, Jana

AU - Pepe, Paola

AU - Poplawski, Naím Alex Karol

AU - Maurelli, Maira Paola

AU - Gualdieri, Luciano

AU - Rinaldi, Laura

AU - Giorgi, Emanuele

PY - 2025/6/13

Y1 - 2025/6/13

N2 - An increase in global migration towards developed countries along with climate change has led to the occurrence of Neglected Tropical Diseases (NTDs) in otherwise non-endemic countries. In this paper we focus on Soil Transmitted Helminth (STH) infections which disproportionately affect people living in poverty in tropical regions. To reduce the threat of STHs in migrant populations living in non-endemic countries, diagnosis and treatment are paramount but also present logistical challenges. This study investigates how statistical modelling can be used to assist the identification of individuals infected with STHs. Specifically, we show how to combine individual variables (e.g., age, sex and time in Italy) with publicly available country indicators (Human Development Index, Multidimensional Poverty Index and Inequality-adjusted Human Development Index) which describe development in the migrant’s country of origin. We combine these indices and their factors in binomial mixed-effects models which can be used to predict the status of STH infections in migrant populations. By presenting a case study on migrants in southern Italy, we assess the relative importance of the individual-level variables and country-level indicators in enhancing the predictive power of the models. The results show that the country-level indices play a more important role but also highlight that individual data can help improve the model performance when combined with the former. To the best of our knowledge this is the first study investigating using country-level indicators to predict parasite infection status of migrants. Our study indicates that statistical models can play an important role in reducing the resources required to identify migrants requiring anthelmintic treatment against STHs and help to make statistically informed decisions.

AB - An increase in global migration towards developed countries along with climate change has led to the occurrence of Neglected Tropical Diseases (NTDs) in otherwise non-endemic countries. In this paper we focus on Soil Transmitted Helminth (STH) infections which disproportionately affect people living in poverty in tropical regions. To reduce the threat of STHs in migrant populations living in non-endemic countries, diagnosis and treatment are paramount but also present logistical challenges. This study investigates how statistical modelling can be used to assist the identification of individuals infected with STHs. Specifically, we show how to combine individual variables (e.g., age, sex and time in Italy) with publicly available country indicators (Human Development Index, Multidimensional Poverty Index and Inequality-adjusted Human Development Index) which describe development in the migrant’s country of origin. We combine these indices and their factors in binomial mixed-effects models which can be used to predict the status of STH infections in migrant populations. By presenting a case study on migrants in southern Italy, we assess the relative importance of the individual-level variables and country-level indicators in enhancing the predictive power of the models. The results show that the country-level indices play a more important role but also highlight that individual data can help improve the model performance when combined with the former. To the best of our knowledge this is the first study investigating using country-level indicators to predict parasite infection status of migrants. Our study indicates that statistical models can play an important role in reducing the resources required to identify migrants requiring anthelmintic treatment against STHs and help to make statistically informed decisions.

U2 - 10.1371/journal.pntd.0012577

DO - 10.1371/journal.pntd.0012577

M3 - Journal article

VL - 19

JO - PLoS Neglected Tropical Diseases

JF - PLoS Neglected Tropical Diseases

SN - 1935-2727

IS - 6

M1 - e0012577

ER -