Literature DB >> 35445152

A Deep Clustering Method For Analyzing Uterine Cervix Images Across Imaging Devices.

Zhiyun Xue1, Peng Guo1, Kanan T Desai2, Anabik Pal1, Kayode O Ajenifuja3, Clement A Adepiti3, L Rodney Long1, Mark Schiffman2, Sameer Antani1.   

Abstract

Visual inspection of the cervix with acetic acid (VIA), though error prone, has long been used for screening women and to guide management for cervical cancer. The automated visual evaluation (AVE) technique, in which deep learning is used to predict precancer based on a digital image of the acetowhitened cervix, has demonstrated its promise as a low-cost method to improve on human performance. However, there are several challenges in moving AVE beyond proof-of-concept and deploying it as a practical adjunct tool in visual screening. One of them is making AVE robust across images captured using different devices. We propose a new deep learning based clustering approach to investigate whether the images taken by three different devices (a common smartphone, a custom smartphone-based handheld device for cervical imaging, and a clinical colposcope equipped with SLR digital camera-based imaging capability) can be well distinguished from each other with respect to the visual appearance/content within their cervix regions. We argue that disparity in visual appearance of a cervix across devices could be a significant confounding factor in training and generalizing AVE performance. Our method consists of four components: cervix region detection, feature extraction, feature encoding, and clustering. Multiple experiments are conducted to demonstrate the effectiveness of each component and compare alternative methods in each component. Our proposed method achieves high clustering accuracy (97%) and significantly outperforms several representative deep clustering methods on our dataset. The high clustering performance indicates the images taken from these three devices are different with respect to visual appearance. Our results and analysis establish a need for developing a method that minimizes such variance among the images acquired from different devices. It also recognizes the need for large number of training images from different sources for robust device-independent AVE performance worldwide.

Entities:  

Keywords:  automated visual inspection; cervical cancer screening; deep clustering; transfer learning

Year:  2021        PMID: 35445152      PMCID: PMC9017785          DOI: 10.1109/cbms52027.2021.00085

Source DB:  PubMed          Journal:  Proc IEEE Int Symp Comput Based Med Syst        ISSN: 2372-918X


  8 in total

1.  Interobserver agreement in the evaluation of digitized cervical images.

Authors:  Jose Jeronimo; L Stewart Massad; Philip E Castle; Sholom Wacholder; Mark Schiffman
Journal:  Obstet Gynecol       Date:  2007-10       Impact factor: 7.661

2.  An Observational Study of Deep Learning and Automated Evaluation of Cervical Images for Cancer Screening.

Authors:  Liming Hu; David Bell; Sameer Antani; Zhiyun Xue; Kai Yu; Matthew P Horning; Noni Gachuhi; Benjamin Wilson; Mayoore S Jaiswal; Brian Befano; L Rodney Long; Rolando Herrero; Mark H Einstein; Robert D Burk; Maria Demarco; Julia C Gage; Ana Cecilia Rodriguez; Nicolas Wentzensen; Mark Schiffman
Journal:  J Natl Cancer Inst       Date:  2019-09-01       Impact factor: 13.506

3.  Design and methods of a population-based natural history study of cervical neoplasia in a rural province of Costa Rica: the Guanacaste Project.

Authors:  R Herrero; M H Schiffman; C Bratti; A Hildesheim; I Balmaceda; M E Sherman; M Greenberg; F Cárdenas; V Gómez; K Helgesen; J Morales; M Hutchinson; L Mango; M Alfaro; N W Potischman; S Wacholder; C Swanson; L A Brinton
Journal:  Rev Panam Salud Publica       Date:  1997-05

4.  A demonstration of automated visual evaluation of cervical images taken with a smartphone camera.

Authors:  Zhiyun Xue; Akiva P Novetsky; Mark H Einstein; Jenna Z Marcus; Brian Befano; Peng Guo; Maria Demarco; Nicolas Wentzensen; Leonard Rodney Long; Mark Schiffman; Sameer Antani
Journal:  Int J Cancer       Date:  2020-05-19       Impact factor: 7.396

5.  Design and feasibility of a novel program of cervical screening in Nigeria: self-sampled HPV testing paired with visual triage.

Authors:  Kanan T Desai; Kayode O Ajenifuja; Adekunbiola Banjo; Clement A Adepiti; Akiva Novetsky; Cathy Sebag; Mark H Einstein; Temitope Oyinloye; Tamara R Litwin; Matt Horning; Fatai Olatunde Olanrewaju; Mufutau Muphy Oripelaye; Esther Afolabi; Oluwole O Odujoko; Philip E Castle; Sameer Antani; Ben Wilson; Liming Hu; Courosh Mehanian; Maria Demarco; Julia C Gage; Zhiyun Xue; Leonard R Long; Li Cheung; Didem Egemen; Nicolas Wentzensen; Mark Schiffman
Journal:  Infect Agent Cancer       Date:  2020-10-14       Impact factor: 2.965

6.  Evaluation of a Smartphone-Based Training Strategy Among Health Care Workers Screening for Cervical Cancer in Northern Tanzania: The Kilimanjaro Method.

Authors:  Karen E Yeates; Jessica Sleeth; Wilma Hopman; Ophira Ginsburg; Katharine Heus; Linda Andrews; Mary Rose Giattas; Safina Yuma; Godwin Macheku; Aziz Msuya; Olola Oneko
Journal:  J Glob Oncol       Date:  2016-05-04

7.  Supervised deep learning embeddings for the prediction of cervical cancer diagnosis.

Authors:  Kelwin Fernandes; Davide Chicco; Jaime S Cardoso; Jessica Fernandes
Journal:  PeerJ Comput Sci       Date:  2018-05-14
  8 in total

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