两种机器学习模型节省青光眼筛查程序:一种基于神经网络的方法。

IF 3 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Wolfgang Hitzl, Markus Lenzhofer, Melchior Hohensinn, Herbert Anton Reitsamer
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引用次数: 0

摘要

背景:在青光眼筛查项目中,很大比例的患者在随访10年内仍然没有开角型青光眼(OAG)或不需要眼内眼压(IOP)降低治疗。是否有可能在初步检查中识别出大部分患者,从而在此时安全地将其排除在外?方法:6889例患者接受了完整的眼科检查,包括初次检查时客观视神经头和定量椎间盘测量,平均随访11.1年,获得585例患者的完整资料。对两个神经网络模型进行了训练和广泛测试。为了允许模型在有疑问的情况下拒绝做出预测,我们加入了一个拒绝选项。结果:第一个终点“10年内保持无oag且不接受降血压治疗”的预测在57%的病例中被拒绝,而在其余病例(43%)中,253/253(=100%)获得了正确的预测。第二个终点“10年内无oag”的第二个预测模型拒绝对46.4%的受试者进行预测。其余病例(53.6%)中,271/271(=100%)预测正确。结论:最重要的是,没有假阴性或假阳性的眼睛预测。总体而言,43%的眼睛可以安全地排除在青光眼筛查计划之外长达10年,以确保眼睛保持无oag,不需要降低眼压的治疗。相应的模型大大减少了眼科医生的筛查和工作量。在未来,更好的预测器和模型可能会增加安全预测的患者数量,进一步节省青光眼筛查的时间和医疗预算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Two Machine Learning Models to Economize Glaucoma Screening Programs: An Approach Based on Neural Nets.

Two Machine Learning Models to Economize Glaucoma Screening Programs: An Approach Based on Neural Nets.

Two Machine Learning Models to Economize Glaucoma Screening Programs: An Approach Based on Neural Nets.

Background: In glaucoma screening programs, a large proportion of patients remain free of open-angle glaucoma (OAG) or have no need of intraocular eye pressure (IOP)-lowering therapy within 10 years of follow-up. Is it possible to identify a large proportion of patients already at the initial examination and, thus, to safely exclude them already at this point? Methods: A total of 6889 subjects received a complete ophthalmological examination, including objective optic nerve head and quantitative disc measurements at the initial examination, and after an average follow-up period of 11.1 years, complete data were available of 585 individuals. Two neural network models were trained and extensively tested. To allow the models to refuse to make a prediction in doubtful cases, a reject option was included. Results: A prediction for the first endpoint, 'remaining OAG-free and no IOP-lowering therapy within 10 years', was rejected in 57% of cases, and in the remaining cases (43%), 253/253 (=100%) received a correct prediction. The second prediction model for the second endpoint 'remaining OAG-free within 10 years' refused to make a prediction for 46.4% of all subjects. In the remaining cases (53.6%), 271/271 (=100%) were correctly predicted. Conclusions: Most importantly, no eye was predicted false-negatively or false-positively. Overall, 43% all eyes can safely be excluded from a glaucoma screening program for up to 10 years to be certain that the eye remains OAG-free and will not need IOP-lowering therapy. The corresponding model significantly reduces the screening performed by and work load of ophthalmologists. In the future, better predictors and models may increase the number of patients with a safe prediction, further economizing time and healthcare budgets in glaucoma screening.

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来源期刊
Journal of Personalized Medicine
Journal of Personalized Medicine Medicine-Medicine (miscellaneous)
CiteScore
4.10
自引率
0.00%
发文量
1878
审稿时长
11 weeks
期刊介绍: Journal of Personalized Medicine (JPM; ISSN 2075-4426) is an international, open access journal aimed at bringing all aspects of personalized medicine to one platform. JPM publishes cutting edge, innovative preclinical and translational scientific research and technologies related to personalized medicine (e.g., pharmacogenomics/proteomics, systems biology). JPM recognizes that personalized medicine—the assessment of genetic, environmental and host factors that cause variability of individuals—is a challenging, transdisciplinary topic that requires discussions from a range of experts. For a comprehensive perspective of personalized medicine, JPM aims to integrate expertise from the molecular and translational sciences, therapeutics and diagnostics, as well as discussions of regulatory, social, ethical and policy aspects. We provide a forum to bring together academic and clinical researchers, biotechnology, diagnostic and pharmaceutical companies, health professionals, regulatory and ethical experts, and government and regulatory authorities.
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