06Insect Evolutionary
نویسندگان
چکیده
Animal societies are aggregations of cooperating individuals that are isolated from other societies by limitations of dispersal and/or hostile exclusion mechanisms. The individuals within them are more related to the members of their own society than to random individuals in the population at large and quite often this relatedness is high because societies are families or groups of families. For parasites and diseases, however, animal societies are merely patches of suitable hosts to be colonized and exploited and to ultimately produce dispersing propagules to reach other similar patches (Freeland, 1979). Living in groups or societies has generally been thought to be associated with increased parasitism (Alexander, 1974; Freeland, 1976; Hamilton, 1987; Sherman et al., 1988; Schmid-Hempel, 1998; Côté and Poulin, 1995). However, several recent studies have questioned the generality of this assertion (Watve and Jog, 1997; Lewis, 1998; Naug and Camazine, 2002; Wilson et al., 2003). Others have provided data to show that social behaviour can also be associated with reduced parasite load, due to either behavioural interactions providing an effective defence (Rosengaus et al., 1998; Hughes et al., 2002; Traniello et al., 2002), or density-dependent immune responses (Reeson et al., 1998, Barnes and Siva-Jothy, 2000, Wilson et al., 2003). These discrepancies may result from the exact mode of transmission. In fact, a meta-analysis by Côté and Poulin (1995) has shown that rates of parasitism tend to be positively correlated with group size
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