In clinical diagnostics and research involving histopathology, formalin fixed paraffin embedded (FFPE) tissue is almost universally favored for its superb image quality. However, tissue processing time (more than 24 hours) can slow decision-making. In contrast, fresh frozen (FF) processing (less than 1 hour) can yield rapid information but diagnostic accuracy is suboptimal due to lack of clearing, morphologic deformation and more frequent artifacts. Here, we bridge this gap using artificial intelligence. We synthesize FFPE-like images ,virtual FFPE, from FF images using a generative adversarial network (GAN) from 98 paired kidney samples derived from 40 patients. Five board-certified pathologists evaluated the results in a blinded test. Image quality of the virtual FFPE data was assessed to be high and showed a close resemblance to real FFPE images. Clinical assessments of disease on the virtual FFPE images showed a higher inter-observer agreement compared to FF images. The nearly instantaneously generated virtual FFPE images can not only reduce time to information but can facilitate more precise diagnosis from routine FF images without extraneous costs and effort.
翻译:在涉及生理病理学的临床诊断和研究中,正规固定石蜡嵌入(FFPE)组织几乎普遍有利于其超大图像质量,然而,组织处理时间(超过24小时)可以减缓决策速度,相比之下,新鲜冷冻(FF)处理(少于1小时)可产生快速信息,但诊断准确性不理想,因为缺乏清洁、皮肤畸形和更频繁的人工制品。在这里,我们利用人工智能弥合了这一差距。我们利用来自40名病人的98个配对肾样本的FFPE(GAN)基因对抗网络(GAN)综合了FFPE类似图像的虚拟FFPE图像,这几乎是瞬间生成的FFPE图像,不仅可以缩短信息时间,而且有助于在盲目测试中评估结果。虚拟FFPE数据图像的图像质量很高,而且与实际FFPE图像的临床评估表明,与FFPE图像相比,观测人之间的一致程度更高。