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Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha

INTRODUCTION: Malaria is a public health emergency in India and Odisha. The national malaria elimination programme aims to expedite early identification, treatment and follow-up of malaria cases in hot-spots through a robust health system, besides focusing on efficient vector control. This study, a...

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Autores principales: Panda, Bhuputra, Mohapatra, Mrinal Kar, Paital, Saswati, Kumbhakar, Sreya, Dutta, Ambarish, Kadam, Shridhar, Salunke, Subhash, Pradhan, M. M., Khurana, Anil, Nayak, Debadatta, Manchanda, R. K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6730888/
https://www.ncbi.nlm.nih.gov/pubmed/31490940
http://dx.doi.org/10.1371/journal.pone.0221223
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author Panda, Bhuputra
Mohapatra, Mrinal Kar
Paital, Saswati
Kumbhakar, Sreya
Dutta, Ambarish
Kadam, Shridhar
Salunke, Subhash
Pradhan, M. M.
Khurana, Anil
Nayak, Debadatta
Manchanda, R. K.
author_facet Panda, Bhuputra
Mohapatra, Mrinal Kar
Paital, Saswati
Kumbhakar, Sreya
Dutta, Ambarish
Kadam, Shridhar
Salunke, Subhash
Pradhan, M. M.
Khurana, Anil
Nayak, Debadatta
Manchanda, R. K.
author_sort Panda, Bhuputra
collection PubMed
description INTRODUCTION: Malaria is a public health emergency in India and Odisha. The national malaria elimination programme aims to expedite early identification, treatment and follow-up of malaria cases in hot-spots through a robust health system, besides focusing on efficient vector control. This study, a result of mass screening conducted in a hot-spot in Odisha, aimed to assess prevalence, identify and estimate the risks and develop a management tool for malaria elimination. METHODS: Through a cross-sectional study and using WHO recommended Rapid Diagnostic Test (RDT), 13221 individuals were screened. Information about age, gender, education and health practices were collected along with blood sample (5 μl) for malaria testing. Altitude, forestation, availability of a village health worker and distance from secondary health center were captured using panel technique. A multi-level poisson regression model was used to analyze association between risk factors and prevalence of malaria, and to estimate risk scores. RESULTS: The prevalence of malaria was 5.8% and afebrile malaria accounted for 79 percent of all confirmed cases. Higher proportion of Pv infections were afebrile (81%). We found the prevalence to be 1.38 (1.1664–1.6457) times higher in villages where the Accredited Social Health Activist (ASHA) didn’t stay; the risk increased by 1.38 (1.0428–1.8272) and 1.92 (1.4428–2.5764) times in mid- and high-altitude tertiles. With regard to forest coverage, villages falling under mid- and highest-tertiles were 2.01 times (1.6194–2.5129) and 2.03 times (1.5477–2.6809), respectively, more likely affected by malaria. Similarly, villages of mid tertile and lowest tertile of education had 1.73 times (1.3392–2.2586) and 2.50 times (2.009–3.1244) higher prevalence of malaria. CONCLUSION: Presence of ASHA worker in villages, altitude, forestation, and education emerged as principal predictors of malaria infection in the study area. An easy-to-use risk-scoring system for ranking villages based on these risk factors could facilitate resource prioritization for malaria elimination.
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spelling pubmed-67308882019-09-16 Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha Panda, Bhuputra Mohapatra, Mrinal Kar Paital, Saswati Kumbhakar, Sreya Dutta, Ambarish Kadam, Shridhar Salunke, Subhash Pradhan, M. M. Khurana, Anil Nayak, Debadatta Manchanda, R. K. PLoS One Research Article INTRODUCTION: Malaria is a public health emergency in India and Odisha. The national malaria elimination programme aims to expedite early identification, treatment and follow-up of malaria cases in hot-spots through a robust health system, besides focusing on efficient vector control. This study, a result of mass screening conducted in a hot-spot in Odisha, aimed to assess prevalence, identify and estimate the risks and develop a management tool for malaria elimination. METHODS: Through a cross-sectional study and using WHO recommended Rapid Diagnostic Test (RDT), 13221 individuals were screened. Information about age, gender, education and health practices were collected along with blood sample (5 μl) for malaria testing. Altitude, forestation, availability of a village health worker and distance from secondary health center were captured using panel technique. A multi-level poisson regression model was used to analyze association between risk factors and prevalence of malaria, and to estimate risk scores. RESULTS: The prevalence of malaria was 5.8% and afebrile malaria accounted for 79 percent of all confirmed cases. Higher proportion of Pv infections were afebrile (81%). We found the prevalence to be 1.38 (1.1664–1.6457) times higher in villages where the Accredited Social Health Activist (ASHA) didn’t stay; the risk increased by 1.38 (1.0428–1.8272) and 1.92 (1.4428–2.5764) times in mid- and high-altitude tertiles. With regard to forest coverage, villages falling under mid- and highest-tertiles were 2.01 times (1.6194–2.5129) and 2.03 times (1.5477–2.6809), respectively, more likely affected by malaria. Similarly, villages of mid tertile and lowest tertile of education had 1.73 times (1.3392–2.2586) and 2.50 times (2.009–3.1244) higher prevalence of malaria. CONCLUSION: Presence of ASHA worker in villages, altitude, forestation, and education emerged as principal predictors of malaria infection in the study area. An easy-to-use risk-scoring system for ranking villages based on these risk factors could facilitate resource prioritization for malaria elimination. Public Library of Science 2019-09-06 /pmc/articles/PMC6730888/ /pubmed/31490940 http://dx.doi.org/10.1371/journal.pone.0221223 Text en © 2019 Panda et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Panda, Bhuputra
Mohapatra, Mrinal Kar
Paital, Saswati
Kumbhakar, Sreya
Dutta, Ambarish
Kadam, Shridhar
Salunke, Subhash
Pradhan, M. M.
Khurana, Anil
Nayak, Debadatta
Manchanda, R. K.
Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title_full Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title_fullStr Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title_full_unstemmed Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title_short Prevalence of afebrile malaria and development of risk-scores for gradation of villages: A study from a hot-spot in Odisha
title_sort prevalence of afebrile malaria and development of risk-scores for gradation of villages: a study from a hot-spot in odisha
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6730888/
https://www.ncbi.nlm.nih.gov/pubmed/31490940
http://dx.doi.org/10.1371/journal.pone.0221223
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