Thiemann Natalie, Sonntag Svenja Rebecca, Kreikenbohm Marie, Böhmerle Giulia, Stagge Jessica, Grisanti Salvatore, Martinetz Thomas, Miura Yoko
Institute for Neuro- and Bioinformatics, University of Lübeck, 23538 Lübeck, Germany.
Department of Ophthalmology, University of Luebeck, University Hospital Schleswig-Holstein, Campus Lübeck, 23538 Lübeck, Germany.
Diagnostics (Basel). 2024 Feb 16;14(4):431. doi: 10.3390/diagnostics14040431.
The purpose of this study was to investigate the possibility of implementing an artificial intelligence (AI) approach for the analysis of fluorescence lifetime imaging ophthalmoscopy (FLIO) data even with small data. FLIO data, including the fluorescence intensity and mean fluorescence lifetime (τm) of two spectral channels, as well as OCT-A data from 26 non-smokers and 28 smokers without systemic and ocular diseases were used. The analysis was performed with support vector machines (SVMs), a well-known AI method for small datasets, and compared with the results of convolutional neural networks (CNNs) and autoencoder networks. The SVM was the only tested AI method, which was able to distinguish τ between non-smokers and heavy smokers. The accuracy was about 80%. OCT-A data did not show significant differences. The feasibility and usefulness of the AI in analyzing FLIO and OCT-A data without any apparent retinal diseases were demonstrated. Although further studies with larger datasets are necessary to validate the results, the results greatly suggest that AI could be useful in analyzing FLIO-data even from healthy subjects without retinal disease and even with small datasets. AI-assisted FLIO is expected to greatly advance early retinal diagnosis.
本研究的目的是探讨即使在数据量较小的情况下,采用人工智能(AI)方法分析荧光寿命成像检眼镜(FLIO)数据的可能性。研究使用了FLIO数据,包括两个光谱通道的荧光强度和平均荧光寿命(τm),以及来自26名不吸烟者和28名无全身及眼部疾病吸烟者的光学相干断层扫描血管造影(OCT-A)数据。分析采用支持向量机(SVM)进行,这是一种适用于小数据集的知名AI方法,并与卷积神经网络(CNN)和自动编码器网络的结果进行比较。SVM是唯一能够区分不吸烟者和重度吸烟者之间τ的测试AI方法。准确率约为80%。OCT-A数据未显示出显著差异。证明了AI在分析无明显视网膜疾病的FLIO和OCT-A数据方面的可行性和实用性。尽管需要进一步使用更大的数据集进行研究以验证结果,但这些结果强烈表明,AI即使在分析来自无视网膜疾病的健康受试者且数据量较小的FLIO数据时也可能有用。预计AI辅助的FLIO将极大地推动早期视网膜诊断的发展。