| Literature DB >> 33869907 |
Nuning Nuraini1,2, Ilham Saiful Fauzi1, Muhammad Fakhruddin3,1, Ardhasena Sopaheluwakan4, Edy Soewono1,2.
Abstract
BACKGROUND: Dengue is one of the most rapidly spreading vector-borne diseases, which is considered to be a major health concern in tropical and sub-tropical countries. It is strongly believed that the spread and abundance of vectors are related to climate. Construction of climate-based mathematical model that integrates meteorological factors into disease infection model becomes compelling challenge since the climate is positively associated with both incidence and vector existence.Entities:
Keywords: Climate; Dengue; Descriptive analysis; Host-vector model; Infection rate; Prediction
Year: 2021 PMID: 33869907 PMCID: PMC8040269 DOI: 10.1016/j.idm.2021.03.005
Source DB: PubMed Journal: Infect Dis Model ISSN: 2468-0427
Fig. 1Climate conditions in Semarang: (a) temperature and humidity; (b) precipitation.
Fig. 2Total number of hospitalized dengue cases in Semarang.
Description of variables and parameters used in mathematical model.
| Symbol | Description | Unit |
|---|---|---|
| The total number of host population | human | |
| The total number of vector population | mosquito | |
| The number of susceptible host | human | |
| The number of infected host | human | |
| The number of recovered host | human | |
| The number of susceptible vector | mosquito | |
| The number of infected vector | mosquito | |
| Host natural birth and mortality rate | 1/day | |
| Vector mortality rate | 1/day | |
| Biting rate | 1/day | |
| Probability of transmission from vector to host | – | |
| Probability of transmission from host to vector | – | |
| Host recovery rate | 1/day |
The parameter’s value used in the numerical simulation.
| Symbol | Value | References |
|---|---|---|
| 0.8692–0.1590 ⋅ | ||
| 0.0043 ⋅ | ||
| estimated | – | |
| 1/30 | ||
| 56.9 | ||
| 3 ⋅ | – | |
| 1.5 ⋅ 106 | – |
Fig. 3Simulation output of biological model with optimized infection rate β as an input.
Fig. 4Cross correlation between infection rate β and meteorological variables: humidity and precipitation (a), and partial auto correlation of infection rate parameter (b).
Parameters value of ARDL model obtained from least square method.
| Index | Parameter | Parameter | Parameter | Parameter |
|---|---|---|---|---|
| 0 | −0.00052294 | – | 0.00319727 | −0.00265627 |
| 1 | – | 0.65171741 | 0.00000715 | 0.00093975 |
| 2 | – | 0.53265423 | −0.00030062 | −0.00046613 |
| 3 | – | 0.16792327 | 0.00399376 | 0.00301602 |
| 4 | – | 0.03438798 | 0.00275943 | 0.00047711 |
| 5 | – | −0.11585929 | 0.00344218 | 0.00273902 |
| 6 | – | −0.05917912 | −0.00525431 | −0.00212843 |
| 7 | – | −0.11625592 | 0.00304796 | −0.00191348 |
| 8 | – | −0.10037522 | −0.00426935 | 0.00048030 |
| 9 | – | −0.09324618 | 0.00298708 | −0.00088273 |
| 10 | – | −0.00638086 | −0.00309367 | 0.00369078 |
| 11 | – | −0.03559310 | 0.00175723 | −0.00324581 |
| 12 | – | −0.07290953 | −0.00371671 | 0.00035899 |
| 13 | – | 0.07590263 | 0.00371369 | 0.00028356 |
| 14 | – | 0.12553525 | −0.00286295 | 0.00050869 |
| 15 | – | 0.01997659 | 0.00219171 | −0.00030315 |
| 16 | – | 0.01361322 | 0.00136257 | 0.00010011 |
| 17 | – | −0.00777663 | −0.00264828 | 0.00124748 |
| 18 | – | −0.02271438 | −0.00387731 | −0.00217288 |
Fig. 5Simulation output of biological model with climate-based infection rate.
Fig. 6Forecasting dengue during increasing period (b) using extended infection rate (a).
Fig. 7Forecasting dengue during decreasing period (b) using extended infection rate (a).
Fig. 8Cross correlation between dengue incidence, humidity, and precipitation.
Fig. 9Association between daily mean incidence and temperature (a), humidity (b), and precipitation (c) at certain lag in Semarang with optimal range denoted by light color.