Interlenghi Matteo, Sborgia Giancarlo, Venturi Alessandro, Sardone Rodolfo, Pastore Valentina, Boscia Giacomo, Landini Luca, Scotti Giacomo, Niro Alfredo, Moscara Federico, Bandi Luca, Salvatore Christian, Castiglioni Isabella
DeepTrace Technologies S.R.L., 20122 Milan, Italy.
Department of Medical Science, Neuroscience and Sense Organs, Eye Clinic, University of Bari Aldo Moro, 70121 Bari, Italy.
Diagnostics (Basel). 2023 Sep 15;13(18):2965. doi: 10.3390/diagnostics13182965.
The present study was conducted to investigate the potential of radiomics to develop an explainable AI-based system to be applied to ultra-widefield fundus retinographies (UWF-FRTs) with the objective of predicting the presence of the early signs of Age-related Macular Degeneration (AMD) and stratifying subjects with low- versus high-risk of AMD. The ultimate aim was to provide clinicians with an automatic classifier and a signature of objective quantitative image biomarkers of AMD. The use of Machine Learning (ML) and radiomics was based on intensity and texture analysis in the macular region, detected by a Deep Learning (DL)-based macular detector. Two-hundred and twenty six UWF-FRTs were retrospectively collected from two centres and manually annotated to train and test the algorithms. Notably, the combination of the ML-based radiomics model and the DL-based macular detector reported 93% sensitivity and 74% specificity when applied to the data of the centre used for external testing, capturing explainable features associated with drusen or pigmentary abnormalities. In comparison to the human operator's annotations, the system yielded a 0.79 Cohen , demonstrating substantial concordance. To our knowledge, these results are the first provided by a radiomic approach for AMD supporting the suitability of an explainable feature extraction method combined with ML for UWF-FRT.
本研究旨在探讨放射组学开发一种基于人工智能的可解释系统的潜力,该系统将应用于超广角眼底视网膜图像(UWF-FRT),以预测年龄相关性黄斑变性(AMD)早期体征的存在,并对AMD低风险和高风险受试者进行分层。最终目标是为临床医生提供一个自动分类器和AMD客观定量图像生物标志物的特征。机器学习(ML)和放射组学的应用基于通过基于深度学习(DL)的黄斑检测器检测到的黄斑区域的强度和纹理分析。从两个中心回顾性收集了226张UWF-FRT,并进行人工标注以训练和测试算法。值得注意的是,当将基于ML的放射组学模型和基于DL的黄斑检测器相结合应用于用于外部测试的中心的数据时,报告的灵敏度为93%,特异性为74%,捕捉到了与玻璃膜疣或色素异常相关的可解释特征。与人工操作者的标注相比,该系统的Cohen's κ系数为0.79,表明一致性较高。据我们所知,这些结果是放射组学方法首次为AMD提供的,支持了一种可解释特征提取方法与ML相结合用于UWF-FRT的适用性。