Rojas Frank, Hernandez Sharia, Lazcano Rossana, Laberiano-Fernandez Caddie, Parra Edwin Roger
Department of Translational Molecular Pathology, The University of Texas MD Anderson Cancer Center, Houston, TX, United States.
Front Oncol. 2022 Jun 27;12:889886. doi: 10.3389/fonc.2022.889886. eCollection 2022.
A robust understanding of the tumor immune environment has important implications for cancer diagnosis, prognosis, research, and immunotherapy. Traditionally, immunohistochemistry (IHC) has been regarded as the standard method for detecting proteins , but this technique allows for the evaluation of only one cell marker per tissue sample at a time. However, multiplexed imaging technologies enable the multiparametric analysis of a tissue section at the same time. Also, through the curation of specific antibody panels, these technologies enable researchers to study the cell subpopulations within a single immunological cell group. Thus, multiplexed imaging gives investigators the opportunity to better understand tumor cells, immune cells, and the interactions between them. In the multiplexed imaging technology workflow, once the protocol for a tumor immune micro environment study has been defined, histological slides are digitized to produce high-resolution images in which regions of interest are selected for the interrogation of simultaneously expressed immunomarkers (including those co-expressed by the same cell) by using an image analysis software and algorithm. Most currently available image analysis software packages use similar machine learning approaches in which tissue segmentation first defines the different components that make up the regions of interest and cell segmentation, then defines the different parameters, such as the nucleus and cytoplasm, that the software must utilize to segment single cells. Image analysis tools have driven dramatic evolution in the field of digital pathology over the past several decades and provided the data necessary for translational research and the discovery of new therapeutic targets. The next step in the growth of digital pathology is optimization and standardization of the different tasks in cancer research, including image analysis algorithm creation, to increase the amount of data generated and their accuracy in a short time as described herein. The aim of this review is to describe this process, including an image analysis algorithm creation for multiplex immunofluorescence analysis, as an essential part of the optimization and standardization of the different processes in cancer research, to increase the amount of data generated and their accuracy in a short time.
深入了解肿瘤免疫环境对癌症诊断、预后、研究及免疫治疗具有重要意义。传统上,免疫组织化学(IHC)一直被视为检测蛋白质的标准方法,但该技术每次只能对一个组织样本中的一种细胞标志物进行评估。然而,多重成像技术能够同时对组织切片进行多参数分析。此外,通过精心设计特定的抗体组合,这些技术使研究人员能够研究单个免疫细胞群体内的细胞亚群。因此,多重成像为研究人员提供了更好地了解肿瘤细胞、免疫细胞及其相互作用的机会。在多重成像技术工作流程中,一旦确定了肿瘤免疫微环境研究的方案,就将组织学切片数字化以生成高分辨率图像,然后使用图像分析软件和算法选择感兴趣区域,用于同时检测表达的免疫标志物(包括同一细胞共表达的标志物)。目前大多数可用的图像分析软件包都使用类似的机器学习方法,其中组织分割首先定义构成感兴趣区域的不同成分,细胞分割则定义软件分割单个细胞时必须利用的不同参数,如细胞核和细胞质。在过去几十年中,图像分析工具推动了数字病理学领域的巨大发展,并为转化研究和发现新的治疗靶点提供了必要的数据。数字病理学发展的下一步是优化和标准化癌症研究中的不同任务,包括创建图像分析算法,以在短时间内增加生成的数据量及其准确性,如本文所述。本综述的目的是描述这一过程,包括创建用于多重免疫荧光分析的图像分析算法,作为癌症研究中不同过程优化和标准化的重要组成部分,以在短时间内增加生成的数据量及其准确性。