| Literature DB >> 35207002 |
Jana Sami1, Sophie Lemoupa Makajio1,2, Emilien Jeannot3,4, Bruno Kenfack5, Roser Viñals6, Pierre Vassilakos1,7, Patrick Petignat1.
Abstract
Visual inspection with acetic acid (VIA) is recommended by the World Health Organization for primary cervical cancer screening or triage of human papillomavirus-positive women living in low-resource settings. Nonetheless, traditional VIA with the naked-eye is associated with large variabilities in the detection of pre-cancer and with a lack of quality control. Digital-VIA (D-VIA), using high definition cameras, allows magnification and zooming on transformation zones and suspicious cervical regions, as well as simultaneously compare native and post-VIA images in real-time. We searched MEDLINE and LILACS between January 2015 and November 2021 for relevant studies conducted in low-resource settings using a smartphone device for D-VIA. The aim of this review was to provide an evaluation on available data for smartphone use in low-resource settings in the context of D-VIA-based cervical cancer screenings. The available results to date show that the quality of D-VIA images is satisfactory and enables CIN1/CIN2+ diagnosis, and that a smartphone is a promising tool for cervical cancer screening monitoring and for on- and off-site supervision, and training. The use of artificial intelligence algorithms could soon allow automated and accurate cervical lesion detection.Entities:
Keywords: VIA/VILI; artificial intelligence; cervical cancer screening; digital colposcopy; low and middle-income countries; smartphone-based; training
Year: 2022 PMID: 35207002 PMCID: PMC8871553 DOI: 10.3390/healthcare10020391
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Flowchart of articles selection.
Studies evaluating the performance of a digital colposcopy using a smartphone for cervical cancer screening in LMIC.
| Study | Population | Intervention and Device | Outcome and Results | Strengths and Weaknesses |
|---|---|---|---|---|
| Mungo et al., 2021 [ | Western Kenya | D-VIA images taken by nonphysicians. | ||
| Goldstein et al., 2019 [ | China (rural Yunnan areas) | VIA and digital images. | ||
| Thay et al., 2019 [ | Cambodia | VIA and digital images. | ||
| Tran et al., 2018 [ | Madagascar | Forty-five gynecologists (different levels of expertise) assessed D-VIA images. | ||
| Gallay et al., 2017 [ | Madagascar | Four clinicians assessed D-VIA images and classified them in an app called “Exam”. | ||
| Urner et al., 2017 [ | Madagascar | Fifteen clinician evaluated D-VIA images (off-site). | ||
| Catarino et al., 2015 [ | Madagascar | Comparison of VIA (on-site) and D-VIA (off-site). | ||
| Ricard-Gauthier et al., 2015 [ | Madagascar | Comparison of VIA and D-VIA (on-site) and D-VIA (off-site). |
Abbreviations: CIN (cervical intraepithelial neoplasia), DC (digital colposcopy), D-VIA (smartphone-based visual inspection with acetic acid), D-VILI (smartphone-based visual inspection with Lugol iodine), ECC (Endocervical curettage), HPV–Hr (human papilloma virus–high risk), HPV-positive (human papilloma virus positive), NR (not reported), Se (sensitivity), Sp (specificity), y (years old). * All HPV-positive; ** 56/250 women were HPV-positive.
Studies evaluating feasibility of smartphone-based screening program in LMICs, staff training, and on/off-site supervision.
| Studies | Population | Intervention | Results, Comment |
|---|---|---|---|
| Asgary et al., 2020 [ | Eswatini | Smartphone-based VIA screening program, standard VIA training, refresher course, and 6-month mHealth mentorship. | |
| Yeates et al., 2020 [ | Tanzania | Smartphone-enhanced VIA platform (SEVIA) for “real-time secure sharing of cervical images”. | |
| Asgary et al., 2019 [ | Ghana | Providers’ perceptions and experiences: 15 nurses, 1 nurse supervisor, 1 expert reviewer. | |
| Quercia et al., 2018 [ | Madagascar | Registration of cervical cancer screening program data onto a secure web-based platform, for monitoring purposes. | |
| Sharma et al., 2018 [ | India | Assessment of nurses’ judgment for diagnosis of cervical pre-cancerous lesions using smartphone images. | |
| Asgary et al., 2016 [ | Ghana | Providers completed a 2-week on-site training in VIA, followed by a 3-month VIA training supported by text messaging by an expert reviewer (real-time feedback). | |
| Peterson et al., 2016 [ | Kenya | Training of providers using pictures taken. | |
| Yeates et al., 2016 [ | Tanzania | Training providers to perform D-VIA with real-time support from regional experts, images sent through a smartphone application. | Feasibility of smartphone camera to perform “Enhanced VIA” and level of agreement between trainee and expert over time (agreement 96.8%), Response timing (real-time), 1–5 min 48.4% and <10 min 60% of the time. |
Abbreviations: D-VIA (smartphone-based visual inspection with acetic acid), EVA (enhanced visual assessment), HIV (human immunodeficiency virus), HPV (human papilloma virus), mHealth (mobile health), NR (not reported), SEVIA (smartphone enhanced visual assessment), VIA (visual inspection with acetic acid), y (years old). * 128/247 women were HIV-positive. ** 2561/10,545 women were HIV-positive.
Articles on artificial intelligence application for CC screening.
| Studies | Population | Objective | Device | Intervention | Results |
|---|---|---|---|---|---|
| Kudva et al., 2018 [ | India | Develop a decision support system for cervical cancer screening with an inbuilt image processing algorithm. | Android device with a camera of 13 Mpx. | 102 images | Accuracy 97.9%, Se 99.0%, Sp 97.1%, AUC NR. |
| Bae et al., | South Korea, | Develop a new cervical cancer screening technique and implement a machine-learning algorithm using images taken during VIA with a smartphone-based endoscope. | Smartphone-based endoscope. | 40 images (2 per patient). | Accuracy 78.3%, Se 75.8%, Sp 80.3%, AUC 0.805. |
| Xue Z. et al., 2020 [ | Various countries | Evaluate accuracy of automated visual evaluation (AVE) on smartphone images. | MobileODT system (smartphone with lens). | 7587 images. | Accuracy NR, Se NR, Sp NR, AUC 0.87 (95% CI 0.81–0.92). |
| Viñals et al., 2021 [ | Cameroon, | Development of a smartphone-based algorithm to detect cervical precancer from the dynamic features (dynamics of aceto-whitening). | Samsung Galaxy S5 | 44 dynamic images; | AI accuracy 89%, Se 90%, Sp 87%, AUC NR. |
Abbreviations: AI (artificial intelligence), AUC (area under the curve), Mpx (megapixels), NR (not reported), Se (sensitivity), Sp (specificity), VIA (visual inspection with acetic acid).