Using online search activity for earlier detection of gynaecological malignancy

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Using online search activity for earlier detection of gynaecological malignancy. / Barcroft, Jennifer F.; Yom-Tov, Elad; Lampos, Vasilieos; Ellis, Laura Burney; Guzman, David; Ponce-López, Víctor; Bourne, Tom; Cox, Ingemar J.; Saso, Srdjan.

I: BMC Public Health, Bind 24, Nr. 1, 608, 2024.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Barcroft, JF, Yom-Tov, E, Lampos, V, Ellis, LB, Guzman, D, Ponce-López, V, Bourne, T, Cox, IJ & Saso, S 2024, 'Using online search activity for earlier detection of gynaecological malignancy', BMC Public Health, bind 24, nr. 1, 608. https://doi.org/10.1186/s12889-024-17673-0

APA

Barcroft, J. F., Yom-Tov, E., Lampos, V., Ellis, L. B., Guzman, D., Ponce-López, V., Bourne, T., Cox, I. J., & Saso, S. (2024). Using online search activity for earlier detection of gynaecological malignancy. BMC Public Health, 24(1), [608]. https://doi.org/10.1186/s12889-024-17673-0

Vancouver

Barcroft JF, Yom-Tov E, Lampos V, Ellis LB, Guzman D, Ponce-López V o.a. Using online search activity for earlier detection of gynaecological malignancy. BMC Public Health. 2024;24(1). 608. https://doi.org/10.1186/s12889-024-17673-0

Author

Barcroft, Jennifer F. ; Yom-Tov, Elad ; Lampos, Vasilieos ; Ellis, Laura Burney ; Guzman, David ; Ponce-López, Víctor ; Bourne, Tom ; Cox, Ingemar J. ; Saso, Srdjan. / Using online search activity for earlier detection of gynaecological malignancy. I: BMC Public Health. 2024 ; Bind 24, Nr. 1.

Bibtex

@article{53ce88039a7348578091b4d73ed12b79,
title = "Using online search activity for earlier detection of gynaecological malignancy",
abstract = "Background: 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. Methods: 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. Results: The cohort had a median age of 53 years old (range 20–81) and a malignancy rate of 26.0%. There was a difference in online search data between those with a benign and malignant diagnosis, noted as early as 360 days in advance of GP referral, when search queries were used directly, but only 60 days in advance, when queries were divided into health categories. A model using online search data from patients (n = 153) who performed health-related search and corrected for sample size, achieved its highest sample-corrected AUC of 0.82, 60 days prior to GP referral. Conclusions: Online search data appears to be different between individuals with malignant and benign gynaecological conditions, with a signal observed in advance of GP referral date. Online search data needs to be evaluated in a larger dataset to determine its value as an early disease detection tool and whether its use leads to improved clinical outcomes.",
keywords = "Cancer screening test, Early detection of cancer, Endometrial neoplasms, Health, Internet, Ovarian neoplasms",
author = "Barcroft, {Jennifer F.} and Elad Yom-Tov and Vasilieos Lampos and Ellis, {Laura Burney} and David Guzman and V{\'i}ctor Ponce-L{\'o}pez and Tom Bourne and Cox, {Ingemar J.} and Srdjan Saso",
year = "2024",
doi = "10.1186/s12889-024-17673-0",
language = "English",
volume = "24",
journal = "BMC Public Health",
issn = "1471-2458",
publisher = "BioMed Central Ltd.",
number = "1",

}

RIS

TY - JOUR

T1 - Using online search activity for earlier detection of gynaecological malignancy

AU - Barcroft, Jennifer F.

AU - Yom-Tov, Elad

AU - Lampos, Vasilieos

AU - Ellis, Laura Burney

AU - Guzman, David

AU - Ponce-López, Víctor

AU - Bourne, Tom

AU - Cox, Ingemar J.

AU - Saso, Srdjan

PY - 2024

Y1 - 2024

N2 - Background: 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. Methods: 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. Results: The cohort had a median age of 53 years old (range 20–81) and a malignancy rate of 26.0%. There was a difference in online search data between those with a benign and malignant diagnosis, noted as early as 360 days in advance of GP referral, when search queries were used directly, but only 60 days in advance, when queries were divided into health categories. A model using online search data from patients (n = 153) who performed health-related search and corrected for sample size, achieved its highest sample-corrected AUC of 0.82, 60 days prior to GP referral. Conclusions: Online search data appears to be different between individuals with malignant and benign gynaecological conditions, with a signal observed in advance of GP referral date. Online search data needs to be evaluated in a larger dataset to determine its value as an early disease detection tool and whether its use leads to improved clinical outcomes.

AB - Background: 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. Methods: 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. Results: The cohort had a median age of 53 years old (range 20–81) and a malignancy rate of 26.0%. There was a difference in online search data between those with a benign and malignant diagnosis, noted as early as 360 days in advance of GP referral, when search queries were used directly, but only 60 days in advance, when queries were divided into health categories. A model using online search data from patients (n = 153) who performed health-related search and corrected for sample size, achieved its highest sample-corrected AUC of 0.82, 60 days prior to GP referral. Conclusions: Online search data appears to be different between individuals with malignant and benign gynaecological conditions, with a signal observed in advance of GP referral date. Online search data needs to be evaluated in a larger dataset to determine its value as an early disease detection tool and whether its use leads to improved clinical outcomes.

KW - Cancer screening test

KW - Early detection of cancer

KW - Endometrial neoplasms

KW - Health

KW - Internet

KW - Ovarian neoplasms

U2 - 10.1186/s12889-024-17673-0

DO - 10.1186/s12889-024-17673-0

M3 - Journal article

C2 - 38462622

AN - SCOPUS:85187412222

VL - 24

JO - BMC Public Health

JF - BMC Public Health

SN - 1471-2458

IS - 1

M1 - 608

ER -

ID: 385587800