Development and Validation of the First Smart TV-Based Visual Acuity Test: A Prospective Study

Author:

Labiris GeorgiosORCID,Delibasis KonstantinosORCID,Panagiotopoulou Eirini-KanellaORCID,Pigadas Vassilis,Bakirtzis MinasORCID,Panagis Christos,Dardabounis Doukas,Ntonti Panagiota

Abstract

(1) Background: While smartphones are among the primary devices used in telemedical applications, smart TV healthcare apps are not prevalent despite smart TVs’ penetrance in home settings. The present study’s objective was to develop and validate the first smart TV-based visual acuity (VA) test (Democritus Digital Visual Acuity Test (DDiVAT)) that allows a reliable VA self-assessment. (2) Methods: This is a prospective validation study. DDiVAT introduces several advanced features for reliable VA self-testing; among them: automatic calibration, voice recognition, voice guidance, automatic calculation of VA indexes, and a smart TV-based messaging system. Normal and low vision participants were included in the validation. DDiVAT VA results (VADDiVAT) were compared against the ones from: (a) the gold-standard conventional ETDRS (VAETDRS), and, (b) an independent ophthalmologist who monitored the self-examination testing (VARES). Comparisons were performed by noninferiority test (set at 2.5-letters) and intraclass correlation coefficients (ICCs). DDiVAT’s test-retest reliability was assessed within a 15-day time-window. (3) Results: A total of 300 participants (185 and 115 with normal and low vision, respectively) responded to ETDRS and DDiVAT. Mean difference in letters was −0.05 for VAETDRS–VARES, 0.62 for VARES–VADDiVAT, and 0.67 for VAETDRS–VADDiVAT, significantly lower than the 2.5 letter noninferiority margin. ICCs indicated an excellent level of agreement, collectively and for each group (0.922-0.996). All displayed letters in DDiVAT presented a similar difficulty. The overall accuracy of the voice recognition service was 96.01%. ICC for VADDiVAT test-retest was 0.957. (4) Conclusions: The proposed DDiVAT presented non-significant VA differences with the ETDRS, suggesting that it can be used for accurate VA self-assessment in telemedical settings, both for normal and low-vision patients.

Funder

Bayer Hellas

Publisher

MDPI AG

Subject

Health Information Management,Health Informatics,Health Policy,Leadership and Management

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Validation of a web-based distance visual acuity test;Journal of Cataract and Refractive Surgery;2023-07

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