Temporal Monitoring and Predicting of the Abundance of Malaria Vectors Using Time Series Analysis of Remote Sensing Data through Google Earth Engine

نویسندگانFahimeh Youssefi; Mohammad Javad Valadan Zoej; Ahmad Ali Hanafi-Bojd; Alireza Borhani Dariane; Mehdi Khaki; Alireza Safdarinezhad; Ebrahim Ghaderpour
نشریهSensors
ارائه به نام دانشگاهدانشگاه تفرش
شماره صفحات1-23
شماره سریال22
شماره مجلد5
ضریب تاثیر (IF)3.576
نوع مقالهOriginal Research
تاریخ انتشار2022-03-02
رتبه نشریهISI
نوع نشریهالکترونیکی
کشور محل چاپسوئیس
نمایه نشریهhttps://www.mdpi.com/journal/sensors

چکیده مقاله

In many studies regarding the field of malaria, environmental factors have been acquired in single-time, multi-time or a short-time series using remote sensing and meteorological data. Selecting the best periods of the year to monitor the habitats of Anopheles larvae can be effective in better and faster control of malaria outbreaks. In this article, high-risk times for three regions in Iran, including Qaleh-Ganj, Sarbaz and Bashagard counties with a history of malaria prevalence were estimated. For this purpose, a series of environmental factors affecting the growth and survival of Anopheles were used over a seven-year period through the Google Earth Engine. The results of this study indicated two high-risk times for Qaleh-Ganj and Bashagard counties and three high-risk times for Sarbaz county over the course of a year observing an increase in the abundance of Anopheles mosquitoes. Further evaluation of the results against the entomological data available in previous studies showed that the high-risk times predicted in this study were consistent with an increase in the abundance of Anopheles mosquitoes in the study areas. The proposed method is extremely useful for temporal prediction of the increase in abundance of Anopheles mosquitoes in addition to the use of optimal data aimed at monitoring the exact location of Anopheles habitats.

لینک ثابت مقاله

tags: malaria; remote sensing; climate; Anopheles; Google Earth Engine; hydro-climate time series; trend analysis