Cargando…

The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review

BACKGROUND: The internet is a primary source of health information for patients, supplementing physician care. Google Trends (GT), a popular tool, allows the exploration of public interest in health-related phenomena. Despite the growing volume of GT studies, none have focused explicitly on oncology...

Descripción completa

Detalles Bibliográficos
Autores principales: Kamiński, Mikołaj, Czarny, Jakub, Skrzypczak, Piotr, Sienicki, Krzysztof, Roszak, Magdalena
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10439473/
https://www.ncbi.nlm.nih.gov/pubmed/37540544
http://dx.doi.org/10.2196/47582
_version_ 1785092952585928704
author Kamiński, Mikołaj
Czarny, Jakub
Skrzypczak, Piotr
Sienicki, Krzysztof
Roszak, Magdalena
author_facet Kamiński, Mikołaj
Czarny, Jakub
Skrzypczak, Piotr
Sienicki, Krzysztof
Roszak, Magdalena
author_sort Kamiński, Mikołaj
collection PubMed
description BACKGROUND: The internet is a primary source of health information for patients, supplementing physician care. Google Trends (GT), a popular tool, allows the exploration of public interest in health-related phenomena. Despite the growing volume of GT studies, none have focused explicitly on oncology, creating a need for a systematic review to bridge this gap. OBJECTIVE: We aimed to systematically characterize studies related to oncology using GT to describe its utilities and biases. METHODS: We included all studies that used GT to analyze Google searches related to malignancies. We excluded studies written in languages other than English. The search was performed using the PubMed engine on August 1, 2022. We used the following search input: “Google trends” AND (“oncology” OR “cancer” or “malignancy” OR “tumor” OR “lymphoma” OR “multiple myeloma” OR “leukemia”). We analyzed sources of bias that included using search terms instead of topics, lack of confrontation of GT statistics with real-world data, and absence of sensitivity analysis. We performed descriptive statistics. RESULTS: A total of 85 articles were included. The first study using GT for oncology research was published in 2013, and since then, the number of publications has increased annually. The studies were categorized as follows: 22% (19/85) were related to prophylaxis, 20% (17/85) pertained to awareness events, 11% (9/85) were celebrity-related, 13% (11/85) were related to COVID-19, and 47% (40/85) fell into other categories. The most frequently analyzed cancers were breast (n=28), prostate (n=26), lung (n=18), and colorectal cancers (n=18). We discovered that of the 85 studies, 17 (20%) acknowledged using GT topics instead of search terms, 79 (93%) disclosed all search input details necessary for replicating their results, and 34 (40%) compared GT statistics with real-world data. The most prevalent methods for analyzing the GT data were correlation analysis (55/85, 65%) and peak analysis (43/85, 51%). The authors of only 11% (9/85) of the studies performed a sensitivity analysis. CONCLUSIONS: The number of studies related to oncology using GT data has increased annually. The studies included in this systematic review demonstrate a variety of concerning topics, search strategies, and statistical methodologies. The most frequently analyzed cancers were breast, prostate, lung, colorectal, skin, and cervical cancers, potentially reflecting their prevalence in the population or public interest. Although most researchers provided reproducible search inputs, only one-fifth used GT topics instead of search terms, and many studies lacked a sensitivity analysis. Scientists using GT for medical research should ensure the quality of studies by providing a transparent search strategy to reproduce results, preferring to use topics over search terms, and performing robust statistical calculations coupled with sensitivity analysis.
format Online
Article
Text
id pubmed-10439473
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-104394732023-08-20 The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review Kamiński, Mikołaj Czarny, Jakub Skrzypczak, Piotr Sienicki, Krzysztof Roszak, Magdalena J Med Internet Res Review BACKGROUND: The internet is a primary source of health information for patients, supplementing physician care. Google Trends (GT), a popular tool, allows the exploration of public interest in health-related phenomena. Despite the growing volume of GT studies, none have focused explicitly on oncology, creating a need for a systematic review to bridge this gap. OBJECTIVE: We aimed to systematically characterize studies related to oncology using GT to describe its utilities and biases. METHODS: We included all studies that used GT to analyze Google searches related to malignancies. We excluded studies written in languages other than English. The search was performed using the PubMed engine on August 1, 2022. We used the following search input: “Google trends” AND (“oncology” OR “cancer” or “malignancy” OR “tumor” OR “lymphoma” OR “multiple myeloma” OR “leukemia”). We analyzed sources of bias that included using search terms instead of topics, lack of confrontation of GT statistics with real-world data, and absence of sensitivity analysis. We performed descriptive statistics. RESULTS: A total of 85 articles were included. The first study using GT for oncology research was published in 2013, and since then, the number of publications has increased annually. The studies were categorized as follows: 22% (19/85) were related to prophylaxis, 20% (17/85) pertained to awareness events, 11% (9/85) were celebrity-related, 13% (11/85) were related to COVID-19, and 47% (40/85) fell into other categories. The most frequently analyzed cancers were breast (n=28), prostate (n=26), lung (n=18), and colorectal cancers (n=18). We discovered that of the 85 studies, 17 (20%) acknowledged using GT topics instead of search terms, 79 (93%) disclosed all search input details necessary for replicating their results, and 34 (40%) compared GT statistics with real-world data. The most prevalent methods for analyzing the GT data were correlation analysis (55/85, 65%) and peak analysis (43/85, 51%). The authors of only 11% (9/85) of the studies performed a sensitivity analysis. CONCLUSIONS: The number of studies related to oncology using GT data has increased annually. The studies included in this systematic review demonstrate a variety of concerning topics, search strategies, and statistical methodologies. The most frequently analyzed cancers were breast, prostate, lung, colorectal, skin, and cervical cancers, potentially reflecting their prevalence in the population or public interest. Although most researchers provided reproducible search inputs, only one-fifth used GT topics instead of search terms, and many studies lacked a sensitivity analysis. Scientists using GT for medical research should ensure the quality of studies by providing a transparent search strategy to reproduce results, preferring to use topics over search terms, and performing robust statistical calculations coupled with sensitivity analysis. JMIR Publications 2023-08-04 /pmc/articles/PMC10439473/ /pubmed/37540544 http://dx.doi.org/10.2196/47582 Text en ©Mikołaj Kamiński, Jakub Czarny, Piotr Skrzypczak, Krzysztof Sienicki, Magdalena Roszak. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 04.08.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Review
Kamiński, Mikołaj
Czarny, Jakub
Skrzypczak, Piotr
Sienicki, Krzysztof
Roszak, Magdalena
The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title_full The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title_fullStr The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title_full_unstemmed The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title_short The Characteristics, Uses, and Biases of Studies Related to Malignancies Using Google Trends: Systematic Review
title_sort characteristics, uses, and biases of studies related to malignancies using google trends: systematic review
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10439473/
https://www.ncbi.nlm.nih.gov/pubmed/37540544
http://dx.doi.org/10.2196/47582
work_keys_str_mv AT kaminskimikołaj thecharacteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT czarnyjakub thecharacteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT skrzypczakpiotr thecharacteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT sienickikrzysztof thecharacteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT roszakmagdalena thecharacteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT kaminskimikołaj characteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT czarnyjakub characteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT skrzypczakpiotr characteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT sienickikrzysztof characteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview
AT roszakmagdalena characteristicsusesandbiasesofstudiesrelatedtomalignanciesusinggoogletrendssystematicreview