Back to Search Start Over

Point-of-care cervical cancer screening using deep learning-based microholography

Authors :
Lucas Rohrer
Thomas C. Randall
Victoria D'Agostino
Seonki Hong
Cesar M. Castro
Misha Pivovarov
Maria Avila-Wallace
Hyungsoon Im
Divya Pathania
Ismail Degani
Christian Landeros
Hakho Lee
Ralph Weissleder
Source :
Theranostics
Publication Year :
2019
Publisher :
Ivyspring International Publisher, 2019.

Abstract

Most deaths (80%) from cervical cancer occur in regions lacking adequate screening infrastructures or ready access to them. In contrast, most developed countries now embrace human papillomavirus (HPV) analyses as standalone screening; this transition threatens to further widen the resource gap. Methods: We describe the development of a DNA-focused digital microholography platform for point-of-care HPV screening, with automated readouts driven by customized deep-learning algorithms. In the presence of high-risk HPV 16 or 18 DNA, microbeads were designed to bind the DNA targets and form microbead dimers. The resulting holographic signature of the microbeads was recorded and analyzed. Results: The HPV DNA assay showed excellent sensitivity (down to a single cell) and specificity (100% concordance) in detecting HPV 16 and 18 DNA from cell lines. Our deep learning approach was 120-folder faster than the traditional reconstruction method and completed the analysis in < 2 min using a single CPU. In a blinded clinical study using patient cervical brushings, we successfully benchmarked our platform's performance to an FDA-approved HPV assay. Conclusions: Reliable and decentralized HPV testing will facilitate cataloguing the high-risk HPV landscape in underserved populations, revealing HPV coverage gaps in existing vaccination strategies and informing future iterations.

Details

Language :
English
ISSN :
18387640
Volume :
9
Issue :
26
Database :
OpenAIRE
Journal :
Theranostics
Accession number :
edsair.doi.dedup.....ce8b515fdfa3537be987f6581c9b9b55