| Literature DB >> 30643681 |
Chaithep Poolkhet1, Suwicha Kasemsuwan1, Sithong Phiphakhavong2, Intha Phouangsouvanh3, Khamphouth Vongxay4, Man Sub Shin5, Wantanee Kalpravidh5, Jan Hinrichs5.
Abstract
The aim of this study is to understand the role that the movement patterns of pigs, cattle and buffalo play in the spread of foot-and-mouth disease (FMD). A cross-sectional survey consisting of a questionnaire was used in a hotspot area for FMD: Xayabouli Province, Lao People's Democratic Republic. A total of 189 respondents were interviewed. We found that the key players in this network were people who were involved with more than one species of animal or occupation (multipurpose occupational node), which represents the highest number of activities of animals moved off the holding (shown with the highest out-degree centrality) and a high likelihood of being an intermediary between others (shown with the highest betweenness centrality). Moreover, the results show that the animals moved to and away from each node had few connections. Some nodes (such as traders) always received animals from the same group of cattle owners at different times. The subgroup connection within this network has many weak components, which means a connection in this network shows that some people can be reached by others, but most people were not. In this way, the number of connections present in the network was low when we defined the proportion of observed connections with all possible connections (density). These findings indicate that the network might not be busy; only one type of node is dominant which enables increased control of disease spread. We recommend that the relevant authorities implement control measures regarding the key players, which is the best way to effectively control the spread of infectious diseases.Entities:
Keywords: Buffalo; Cattle; Lao PDR; Pig; Social network analysis
Year: 2019 PMID: 30643681 PMCID: PMC6330034 DOI: 10.7717/peerj.6177
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Figure 1Map of the study area.
The cross-hatched area is Xayabouli, Lao PDR.
Interviewees’ occupations categorized into six types.
| Occupation | Definition |
|---|---|
| Animal collector | Person who buys, fattens and sells animals for profit |
| Animal producer | Person who raises animals on any type of farm for any purpose |
| Animal trader | Person who buys and sells dead and/or live animals for profit |
| Butcher | Person who sells meat for profit |
| Farm employee | Person who works on any type of farm for wages |
| Slaughterhouse worker | Person who works in a slaughterhouse for wages |
Description of the parameters used in this study.
| Parameter | Description | Reference |
|---|---|---|
| Node level | ||
| Degree centrality | The Freeman degree centrality was used to quantify the connections of each node. In this study, two types of degree centrality were analyzed. In-degree centrality measures the number of incoming ties of the node that reflected the number of in-node movements. Out-degree centrality represents the number of animal activities that reflect off-node movement. | |
| Closeness centrality | The Freeman normalization of in- and out-closeness centrality measures the geodesic distances from a node to all remaining nodes. In-closeness centrality represents the in-node movement. Out-closeness centrality represents the out-node movement. | |
| Betweenness centrality | The Freeman betweenness represents the optimal path between all pairs of nodes. A node with a high betweenness centrality indicates good potential for the flow of animal movement in the network. | |
| Subgroup level | ||
| Component | This parameter studies how a group of nodes are connected. In this study, the component might be a weak or strong component. A strong component indicates a connection within a group of nodes in the direction of the ties whereas a weak component represents a connection in a group that disregards the direction of the ties. | |
| Cut-point | The node(s) play(s) a role in connecting the components. If (a) cut-point(s) are (is) removed from the network, then the number of components will increase. | |
| Network level | ||
| Clustering coefficient | This parameter evaluates the average number of three nodes connected together. This is a triangle of a group of nodes in the network. A network with high probability of the clustering coefficient indicates that many triangles of nodes are present there. This reflects the quantity of small clusters in the network. | |
| Density | This parameter shows the actual ties that are present in the network compared to the possible ties. Calculating the density provides the results for the probability number. | |
Figure 2The total of 87 weak components is represented by different shapes and colors for each component.
Different components represent the different sizes of the members. The largest weak component contains 297 nodes (blue circles).
Figure 3(A) Sociogram of infected nodes (red squares) related to FMD and (B) sociogram of nodes according to occupation and FMD status.
The number on each tie is the number of associations of occupation and FMD status. An infected node (red square) has the highest.