Using online search activity for earlier detection of gynaecological malignancy

Jennifer F. Barcroft,Elad Yom-Tov, Vasilieos Lampos, Laura Burney Ellis, David Guzman, Víctor Ponce-López,Tom Bourne,Ingemar J. Cox,Srdjan Saso

BMC Public Health(2024)

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摘要
Ovarian cancer is the most lethal and endometrial cancer the most common gynaecological cancer in the UK, yet neither have a screening program in place to facilitate early disease detection. The aim is to evaluate whether online search data can be used to differentiate between individuals with malignant and benign gynaecological diagnoses. This is a prospective cohort study evaluating online search data in symptomatic individuals (Google user) referred from primary care (GP) with a suspected cancer to a London Hospital (UK) between December 2020 and June 2022. Informed written consent was obtained and online search data was extracted via Google takeout and anonymised. A health filter was applied to extract health-related terms for 24 months prior to GP referral. A predictive model (outcome: malignancy) was developed using (1) search queries (terms model) and (2) categorised search queries (categories model). Area under the ROC curve (AUC) was used to evaluate model performance. 844 women were approached, 652 were eligible to participate and 392 were recruited. Of those recruited, 108 did not complete enrollment, 12 withdrew and 37 were excluded as they did not track Google searches or had an empty search history, leaving a cohort of 235. The cohort had a median age of 53 years old (range 20–81) and a malignancy rate of 26.0
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关键词
Ovarian neoplasms,Endometrial neoplasms,Early detection of cancer,Cancer screening test,Internet,Health
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