Skip to main content

Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations.

Publication ,  Journal Article
Skerrett, E; Miao, Z; Asiedu, MN; Richards, M; Crouch, B; Sapiro, G; Qiu, Q; Ramanujam, N
Published in: BME frontiers
January 2022

Objective and Impact Statement. We use deep learning models to classify cervix images-collected with a low-cost, portable Pocket colposcope-with biopsy-confirmed high-grade precancer and cancer. We boost classification performance on a screened-positive population by using a class-balanced loss and incorporating green-light colposcopy image pairs, which come at no additional cost to the provider. Introduction. Because the majority of the 300,000 annual deaths due to cervical cancer occur in countries with low- or middle-Human Development Indices, an automated classification algorithm could overcome limitations caused by the low prevalence of trained professionals and diagnostic variability in provider visual interpretations. Methods. Our dataset consists of cervical images (n=1,760) from 880 patient visits. After optimizing the network architecture and incorporating a weighted loss function, we explore two methods of incorporating green light image pairs into the network to boost the classification performance and sensitivity of our model on a test set. Results. We achieve an area under the receiver-operator characteristic curve, sensitivity, and specificity of 0.87, 75%, and 88%, respectively. The addition of the class-balanced loss and green light cervical contrast to a Resnet-18 backbone results in a 2.5 times improvement in sensitivity. Conclusion. Our methodology, which has already been tested on a prescreened population, can boost classification performance and, in the future, be coupled with Pap smear or HPV triaging, thereby broadening access to early detection of precursor lesions before they advance to cancer.

Duke Scholars

Published In

BME frontiers

DOI

EISSN

2765-8031

ISSN

2765-8031

Publication Date

January 2022

Volume

2022

Start / End Page

9823184
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Skerrett, E., Miao, Z., Asiedu, M. N., Richards, M., Crouch, B., Sapiro, G., … Ramanujam, N. (2022). Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations. BME Frontiers, 2022, 9823184. https://doi.org/10.34133/2022/9823184
Skerrett, Erica, Zichen Miao, Mercy N. Asiedu, Megan Richards, Brian Crouch, Guillermo Sapiro, Qiang Qiu, and Nirmala Ramanujam. “Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations.BME Frontiers 2022 (January 2022): 9823184. https://doi.org/10.34133/2022/9823184.
Skerrett E, Miao Z, Asiedu MN, Richards M, Crouch B, Sapiro G, et al. Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations. BME frontiers. 2022 Jan;2022:9823184.
Skerrett, Erica, et al. “Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations.BME Frontiers, vol. 2022, Jan. 2022, p. 9823184. Epmc, doi:10.34133/2022/9823184.
Skerrett E, Miao Z, Asiedu MN, Richards M, Crouch B, Sapiro G, Qiu Q, Ramanujam N. Multicontrast Pocket Colposcopy Cervical Cancer Diagnostic Algorithm for Referral Populations. BME frontiers. 2022 Jan;2022:9823184.

Published In

BME frontiers

DOI

EISSN

2765-8031

ISSN

2765-8031

Publication Date

January 2022

Volume

2022

Start / End Page

9823184