| Literature DB >> 33811763 |
Brady Hunt1, José Humberto Tavares Guerreiro Fregnani2,3, David Brenes1, Richard A Schwarz1, Mila P Salcedo4,5, Júlio César Possati-Resende6, Márcio Antoniazzi6, Bruno de Oliveira Fonseca6, Iara Viana Vidigal Santana7, Graziela de Macêdo Matsushita7, Philip E Castle8,9, Kathleen M Schmeler5, Rebecca Richards-Kortum1.
Abstract
We conducted a prospective evaluation of the diagnostic performance of high-resolution microendoscopy (HRME) to detect cervical intraepithelial neoplasia (CIN) in women with abnormal screening tests. Study participants underwent colposcopy, HRME and cervical biopsy. The prospective diagnostic performance of HRME using an automated morphologic image analysis algorithm was compared to that of colposcopy using histopathologic detection of CIN as the gold standard. To assess the potential to further improve performance of HRME image analysis, we also conducted a retrospective analysis assessing performance of a multi-task convolutional neural network to segment and classify HRME images. One thousand four hundred eighty-six subjects completed the study; 435 (29%) subjects had CIN Grade 2 or more severe (CIN2+) diagnosis. HRME with morphologic image analysis for detection of CIN Grade 3 or more severe diagnoses (CIN3+) was similarly sensitive (95.6% vs 96.2%, P = .81) and specific (56.6% vs 58.7%, P = .18) as colposcopy. HRME with morphologic image analysis for detection of CIN2+ was slightly less sensitive (91.7% vs 95.6%, P < .01) and specific (59.7% vs 63.4%, P = .02) than colposcopy. Images from 870 subjects were used to train a multi-task convolutional neural network-based algorithm and images from the remaining 616 were used to validate its performance. There were no significant differences in the sensitivity and specificity of HRME with neural network analysis vs colposcopy for detection of CIN2+ or CIN3+. Using a neural network-based algorithm, HRME has comparable sensitivity and specificity to colposcopy for detection of CIN2+. HRME could provide a low-cost, point-of-care alternative to colposcopy and biopsy in the prevention of cervical cancer.Entities:
Keywords: cervical cancer prevention; deep learning; diagnostic imaging; high-resolution microendoscopy; point-of-care
Mesh:
Year: 2021 PMID: 33811763 PMCID: PMC8815862 DOI: 10.1002/ijc.33543
Source DB: PubMed Journal: Int J Cancer ISSN: 0020-7136 Impact factor: 7.316