Berita Kedokteran Masyarakat
Vol 41 No 09 (2025)

Utilizing “Google Trends” data to support early detection of epidemic outbreaks: a preliminary study

Rahmadina, Frisca (Unknown)
Bintoro, Bagas Suryo (Unknown)
Ramadona, Aditya Lia (Unknown)



Article Info

Publish Date
29 Sep 2025

Abstract

Purpose: This study examined the potential application of Google Trends in supporting early epidemic detection and health campaigns, using the COVID-19 pandemic in Indonesia as a case study. Method: COVID-19 case data from 2020 to 2022 were collected. Search patterns were analyzed using Indonesian keywords for symptoms: “demam”, “sakit kepala”, “pilek”, “bersin”, “sakit tenggorokan”, “perut”, “batuk”, “nafsu makan”, “muntah”, “lesu”, “mual”, and “diare.” The search patterns were then compared to the COVID-19 case data. Results: We observed a pattern alignment between Google Trends and COVID-19 case peaks. Additionally, differences in lag time were identified between search trends and case peaks across SARS-CoV-2 variants. For instance, the peaks of “sakit tenggorokan” and “batuk” searches lagged about one week for Omicron, around two weeks for Delta, and more than two weeks for Alpha. Conclusion: Internet search activity can support early detection of epidemics and inform timely health campaigns. Moreover, search trends might offer a novel approach to estimate disease incubation periods.

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Journal Info

Abbrev

bkm

Publisher

Subject

Nursing Public Health

Description

Berita Kedokteran Masyarakat (BKM Public Health and Community Medicine) is a peer-reviewed and open access journal that deals with the fields of public health and public medicine. The topics of the article will be grouped according to the main message of the author. This focus covers areas and scope ...