2019
DOI: 10.1016/j.envres.2019.108721
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Legionella and legionellosis in touristic-recreational facilities: Influence of climate factors and geostatistical analysis in Southern Italy (2001–2017)

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Cited by 32 publications
(34 citation statements)
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“…This result was consistent with a research in Ohio which showed that water temperature had an association with Legionella colonization [27]. However, is not consistent with a research in Italy that showed presence of Legionella was not affected by water temperature [32]. Sample collection in this study was carried for a full one year.…”
Section: Discussionsupporting
confidence: 82%
“…This result was consistent with a research in Ohio which showed that water temperature had an association with Legionella colonization [27]. However, is not consistent with a research in Italy that showed presence of Legionella was not affected by water temperature [32]. Sample collection in this study was carried for a full one year.…”
Section: Discussionsupporting
confidence: 82%
“…For example, Fisman and Dunn et al found the largest effects to be higher relative humidity/precipitation on day 9, but they also detected an effect of wind speed on day 7 [5,21]. With respect to temperature, contradictory results have been reported in the direction of the effect (negative [14,15] and positive [16][17][18][19]) and in the lag. Halsby et al reported a high disease risk at high temperatures (up to 9 weeks delay) with high relative humidity [17].…”
Section: Discussionmentioning
confidence: 99%
“…The Euclidean distance (shortest straight-line distance) was used among each patch, with the 'Inverse distance' spatial relationship parameter, which proportionally weights the influence of neighboring features with respect to the target feature depending on their distance, e.g. the more distant one patch is from another, the lower their mutual influence will be (ESRI 2010, De Giglio et al 2019, Iannella et al 2019a, Sánchez-Martín et al 2019. Considering all these settings, sampling bias is buffered as much as possible, both because of the low relative influence that the HSA gave to the non-sampled patch (based on the Inverse distance parameter) and because of the false positives' detection and correction.…”
Section: Gi* Statistics For Hotspot and Coldspot Analysismentioning
confidence: 99%
“…Despite their scientific accuracy, all these approaches often lack a measure of statistical significance, i.e. the identification of a coldspot or hotspot which significantly differs from its surroundings, based on zonal-statistics (De Giglio et al 2019, Iannella et al 2019a, Sánchez-Martín et al 2019. In this study, we aim at identifying the main hotspots for the conservation of the European stygobitic Crustacea Copepoda Harpacticoida at the groundwater habitat scale addressing our study to available species records.…”
Section: Introductionmentioning
confidence: 99%