首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >The possibility of the combination of OCT and fundus images for improving the diagnostic accuracy of deep learning for age-related macular degeneration: a preliminary experiment
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The possibility of the combination of OCT and fundus images for improving the diagnostic accuracy of deep learning for age-related macular degeneration: a preliminary experiment

机译:OCT和眼底图像组合的可能性提高年龄相关黄斑变性深度学习的诊断准确性:初步实验

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Recently, researchers have built new deep learning (DL) models using a single image modality to diagnose age-related macular degeneration (AMD). Retinal fundus and optical coherence tomography (OCT) images in clinical settings are the most important modalities investigating AMD. Whether concomitant use of fundus and OCT data in DL technique is beneficial has not been so clearly identified. This experimental analysis used OCT and fundus image data of postmortems from the Project Macula. The DL based on OCT, fundus, and combination of OCT and fundus were invented to diagnose AMD. These models consisted of pre-trained VGG-19 and transfer learning using random forest. Following the data augmentation and training process, the DL using OCT alone showed diagnostic efficiency with area under the curve (AUC) of 0.906 (95% confidence interval, 0.891-0.921) and 82.6% (81.0-84.3%) accuracy rate. The DL using fundus alone exhibited AUC of 0.914 (0.900-0.928) and 83.5% (81.8-85.0%) accuracy rate. Combined usage of the fundus with OCT increased the diagnostic power with AUC of 0.969 (0.956-0.979) and 90.5% (89.2-91.8%) accuracy rate. The Delong test showed that the DL using both OCT and fundus data outperformed the DL using OCT alone (P value <0.001) and fundus image alone (P value <0.001). This multimodal random forest model showed even better performance than a restricted Boltzmann machine (P value=0.002) and deep belief network algorithms (P value=0.042). According to Duncan's multiple range test, the multimodal methods significantly improved the performance obtained by the single-modal methods. In this preliminary study, a multimodal DL algorithm based on the combination of OCT and fundus image raised the diagnostic accuracy compared to this data alone. Future diagnostic DL needs to adopt the multimodal process to combine various types of imaging for a more precise AMD diagnosis.
机译:最近,研究人员使用单个图像模块建立了新的深度学习(DL)模型,以诊断与年龄相关的黄斑变性(AMD)。临床环境中的视网膜眼底和光学相干断层扫描(OCT)图像是调查AMD最重要的方式。伴随DL技术中的基底和OCT数据是否有益,尚未如此明确识别。该实验分析使用了OCT和UPBOUS从项目蛋白的后期的图像数据。基于OCT,USPUS和OCT和UPBOS组合的DL被发明为诊断AMD。这些型号由预先训练的VGG-19和使用随机森林的转移学习。在数据增强和培训过程之后,单独使用OCT的DL显示曲线下面积(AUC)的诊断效率为0.906(95%置信区间,0.891-0.921)和82.6%(81.0-84.3%)精度率。单独使用眼底的DL表现出0.914(0.900-0.928)和83.5%(81.8-85.0%)精度率。 OCT的基底结合使用了0.969(0.956-0.979)和90.5%(89.2-91.8%)准确率的诊断能力。 Delong测试表明,使用OCT和眼底数据的DL使用OCT单独使用OCT(P值<0.001)和单独的眼底图像(P值<0.001)。这种多模式随机森林模型表现出比限制的Boltzmann机器(P值= 0.002)和深度信仰网络算法(P值= 0.042)更好的性能。根据Duncan的多重测距测试,多模态方法显着提高了单模态方法获得的性能。在该初步研究中,基于OCT和眼底图像组合的多模式DL算法提出了与单独数据相比的诊断准确性。未来的诊断DL需要采用多模态过程来组合各种类型的成像以获得更精确的AMD诊断。

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