Verily Life Sciences LLC, South San Francisco, California.
Verily Life Sciences LLC, South San Francisco, California.
Mod Pathol. 2024 Feb;37(2):100377. doi: 10.1016/j.modpat.2023.100377. Epub 2023 Nov 4.
Conventional histopathology involves expensive and labor-intensive processes that often consume tissue samples, rendering them unavailable for other analyses. We present a novel end-to-end workflow for pathology powered by hyperspectral microscopy and deep learning. First, we developed a custom hyperspectral microscope to nondestructively image the autofluorescence of unstained tissue sections. We then trained a deep learning model to use autofluorescence to generate virtual histologic stains, which avoids the cost and variability of chemical staining procedures and conserves tissue samples. We showed that the virtual images reproduce the histologic features present in the real-stained images using a randomized nonalcoholic steatohepatitis (NASH) scoring comparison study, where both real and virtual stains are scored by pathologists (D.T., A.D.B., R.K.P.). The test showed moderate-to-good concordance between pathologists' scoring on corresponding real and virtual stains. Finally, we developed deep learning-based models for automated NASH Clinical Research Network score prediction. We showed that the end-to-end automated pathology platform is comparable with an independent panel of pathologists for NASH Clinical Research Network scoring when evaluated against the expert pathologist consensus scores. This study provides proof of concept for this virtual staining strategy, which could improve cost, efficiency, and reliability in pathology and enable novel approaches to spatial biology research.
传统的组织病理学涉及昂贵且劳动密集型的过程,这些过程通常会消耗组织样本,导致这些样本无法用于其他分析。我们提出了一种基于高光谱显微镜和深度学习的新型端到端病理学工作流程。首先,我们开发了一种定制的高光谱显微镜,以非破坏性的方式对未染色的组织切片进行自发荧光成像。然后,我们训练了一个深度学习模型,利用自发荧光来生成虚拟组织学染色,从而避免了化学染色过程的成本和可变性,并保留了组织样本。我们通过随机非酒精性脂肪性肝炎 (NASH) 评分比较研究表明,虚拟图像使用户能够重现真实染色图像中的组织学特征,在该研究中,病理学家(D.T.、A.D.B.、R.K.P.)对真实和虚拟染色进行评分。测试结果表明,病理学家对真实和虚拟染色的评分具有中度至良好的一致性。最后,我们开发了基于深度学习的自动 NASH 临床研究网络评分预测模型。我们表明,当根据专家病理学家共识评分进行评估时,端到端自动化病理学平台在 NASH 临床研究网络评分方面可与独立病理学家小组相媲美。这项研究为虚拟染色策略提供了概念验证,这可能会提高病理学的成本、效率和可靠性,并为空间生物学研究提供新的方法。