减少基于图像的训练数据需求的生成式人工智能增强技术

IF 3.2 Q1 OPHTHALMOLOGY Ophthalmology science Pub Date : 2024-04-14 DOI:10.1016/j.xops.2024.100531
Dake Chen PhD , Ying Han MD, PhD , Jacque Duncan MD , Lin Jia PhD , Jing Shan MD, PhD
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引用次数: 0

摘要

目标训练数据对人工智能(AI)模型的开发起着推波助澜的作用。密集的数据要求是限制人工智能工具在数据固有稀缺的行业取得成功的主要瓶颈。在医疗保健领域,训练数据难以收集,这引发了越来越多的担忧,即目前社会弱势群体缺乏医疗保健服务的现状将转化为未来医疗保健人工智能的偏见。在本报告中,我们开发了一种自动编码器,用于增长和增强固有的稀缺数据集,以减轻我们对大数据的依赖。作为测试案例,我们使用自动编码器扩展了公开可用的视盘照片训练集,并评估了由此产生的数据集在检测青光眼性视神经病变方面训练人工智能模型的能力。AUC越高,表示检测性能越好。结果结果表明,用自动编码器生成的合成图像对数据集进行增强,可以获得更好的训练集,从而提高人工智能模型的性能。结论我们在这里的发现有助于解决人工智能模型开发对数据量和质量的要求越来越高这一难题,其意义不仅限于医疗保健领域,还将促进人工智能在所有面临类似数据挑战的领域的应用。
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Generative Artificial Intelligence Enhancements for Reducing Image-based Training Data Requirements

Objective

Training data fuel and shape the development of artificial intelligence (AI) models. Intensive data requirements are a major bottleneck limiting the success of AI tools in sectors with inherently scarce data. In health care, training data are difficult to curate, triggering growing concerns that the current lack of access to health care by under-privileged social groups will translate into future bias in health care AIs. In this report, we developed an autoencoder to grow and enhance inherently scarce datasets to alleviate our dependence on big data.

Design

Computational study with open-source data.

Subjects

The data were obtained from 6 open-source datasets comprising patients aged 40–80 years in Singapore, China, India, and Spain.

Methods

The reported framework generates synthetic images based on real-world patient imaging data. As a test case, we used autoencoder to expand publicly available training sets of optic disc photos, and evaluated the ability of the resultant datasets to train AI models in the detection of glaucomatous optic neuropathy.

Main Outcome Measures

Area under the receiver operating characteristic curve (AUC) were used to evaluate the performance of the glaucoma detector. A higher AUC indicates better detection performance.

Results

Results show that enhancing datasets with synthetic images generated by autoencoder led to superior training sets that improved the performance of AI models.

Conclusions

Our findings here help address the increasingly untenable data volume and quality requirements for AI model development and have implications beyond health care, toward empowering AI adoption for all similarly data-challenged fields.

Financial Disclosure(s)

The authors have no proprietary or commercial interest in any materials discussed in this article.

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来源期刊
Ophthalmology science
Ophthalmology science Ophthalmology
CiteScore
3.40
自引率
0.00%
发文量
0
审稿时长
89 days
期刊最新文献
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