用于识别青光眼药物的手持式深度学习工具的临床验证。

IF 1.6 Q3 OPHTHALMOLOGY
Journal of Ophthalmic & Vision Research Pub Date : 2024-06-21 eCollection Date: 2024-04-01 DOI:10.18502/jovr.v19i2.13983
Christopher D Yang, Jasmine Wang, Ludovico Verniani, Melika Ghalehei, Lauren E Chen, Ken Y Lin
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引用次数: 0

摘要

目的:验证一种基于卷积神经网络(CNN)的智能手机应用程序,用于识别视力正常和受损患者的青光眼眼药水用药:方法:研究人员纳入了 68 名至少单眼视力 (VA) 为 20/70 或更差的患者,这些患者于 2021 年 1 月至 2022 年 8 月期间在一家学术性青光眼诊所就诊。不包括不讲英语的患者。入选受试者参加了一项活动,在该活动中,受试者识别了一组预先确定和排序的六种青光眼局部用药,首先在不使用 CNN 的情况下,然后在使用 CNN 的情况下,每个受试者共进行了六次连续测量。在活动过程中和活动结束后,将收集对标准化调查的答复。主要定量结果是药物识别的准确性和时间。主要定性结果是对智能手机应用易用性的主观评价:结果:使用 CNN 后,青光眼局部用药识别准确率(OR = 12.005,P 0.001)和用药时间(OR = 0.007,P 0.001)均有独立提高。在青光眼患者(OR = 4.771,P = 0.036)或至少单眼视力≤20/70(OR = 4.463,P = 0.013)和青光眼患者(OR = 0.065,P = 0.017)中,使用 CNN 可明显提高用药准确性。CNN的使用与受试者报告的药物识别难易度呈显著正相关(X2(1) = 66.117,P 0.001):结论:我们基于 CNN 的智能手机应用程序能有效提高青光眼眼药水识别的准确性并缩短识别时间。该工具可用于门诊环境,通过提高青光眼患者的用药依从性来避免可预防的视力损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Validation of a Handheld Deep Learning Tool for Identification of Glaucoma Medications.

Purpose: To validate a convolutional neural network (CNN)-based smartphone application for the identification of glaucoma eye drop medications in patients with normal and impaired vision.

Methods: Sixty-eight patients with visual acuity (VA) of 20/70 or worse in at least one eye who presented to an academic glaucoma clinic from January 2021 through August 2022 were included. Non-English-speaking patients were excluded. Enrolled subjects participated in an activity in which they identified a predetermined and preordered set of six topical glaucoma medications, first without the CNN and then with the CNN for a total of six sequential measurements per subject. Responses to a standardized survey were collected during and after the activity. Primary quantitative outcomes were medication identification accuracy and time. Primary qualitative outcomes were subjective ratings of ease of smartphone application use.

Results: Topical glaucoma medication identification accuracy (OR = 12.005, P < 0.001) and time (OR = 0.007, P < 0.001) both independently improved with CNN use. CNN use significantly improved medication accuracy in patients with glaucoma (OR = 4.771, P = 0.036) or VA 20/70 in at least one eye (OR = 4.463, P = 0.013) and medication identification time in patients with glaucoma (OR = 0.065, P = 0.017). CNN use had a significant positive association with subject-reported ease of medication identification (X2(1) = 66.117, P < 0.001).

Conclusion: Our CNN-based smartphone application is efficacious at improving glaucoma eye drop identification accuracy and time. This tool can be used in the outpatient setting to avert preventable vision loss by improving medication adherence in patients with glaucoma.

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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
63
审稿时长
30 weeks
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