A review on deep learning applications in highly multiplexed tissue imaging data analysis.

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in bioinformatics Pub Date : 2023-07-26 eCollection Date: 2023-01-01 DOI:10.3389/fbinf.2023.1159381
Mohammed Zidane, Ahmad Makky, Matthias Bruhns, Alexander Rochwarger, Sepideh Babaei, Manfred Claassen, Christian M Schürch
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引用次数: 0

Abstract

Since its introduction into the field of oncology, deep learning (DL) has impacted clinical discoveries and biomarker predictions. DL-driven discoveries and predictions in oncology are based on a variety of biological data such as genomics, proteomics, and imaging data. DL-based computational frameworks can predict genetic variant effects on gene expression, as well as protein structures based on amino acid sequences. Furthermore, DL algorithms can capture valuable mechanistic biological information from several spatial "omics" technologies, such as spatial transcriptomics and spatial proteomics. Here, we review the impact that the combination of artificial intelligence (AI) with spatial omics technologies has had on oncology, focusing on DL and its applications in biomedical image analysis, encompassing cell segmentation, cell phenotype identification, cancer prognostication, and therapy prediction. We highlight the advantages of using highly multiplexed images (spatial proteomics data) compared to single-stained, conventional histopathological ("simple") images, as the former can provide deep mechanistic insights that cannot be obtained by the latter, even with the aid of explainable AI. Furthermore, we provide the reader with the advantages/disadvantages of DL-based pipelines used in preprocessing highly multiplexed images (cell segmentation, cell type annotation). Therefore, this review also guides the reader to choose the DL-based pipeline that best fits their data. In conclusion, DL continues to be established as an essential tool in discovering novel biological mechanisms when combined with technologies such as highly multiplexed tissue imaging data. In balance with conventional medical data, its role in clinical routine will become more important, supporting diagnosis and prognosis in oncology, enhancing clinical decision-making, and improving the quality of care for patients. Since its introduction into the field of oncology, deep learning (DL) has impacted clinical discoveries and biomarker predictions. DL-driven discoveries and predictions in oncology are based on a variety of biological data such as genomics, proteomics, and imaging data. DL-based computational frameworks can predict genetic variant effects on gene expression, as well as protein structures based on amino acid sequences. Furthermore, DL algorithms can capture valuable mechanistic biological information from several spatial "omics" technologies, such as spatial transcriptomics and spatial proteomics. Here, we review the impact that the combination of artificial intelligence (AI) with spatial omics technologies has had on oncology, focusing on DL and its applications in biomedical image analysis, encompassing cell segmentation, cell phenotype identification, cancer prognostication, and therapy prediction. We highlight the advantages of using highly multiplexed images (spatial proteomics data) compared to single-stained, conventional histopathological ("simple") images, as the former can provide deep mechanistic insights that cannot be obtained by the latter, even with the aid of explainable AI. Furthermore, we provide the reader with the advantages/disadvantages of the DL-based pipelines used in preprocessing the highly multiplexed images (cell segmentation, cell type annotation). Therefore, this review also guides the reader to choose the DL-based pipeline that best fits their data. In conclusion, DL continues to be established as an essential tool in discovering novel biological mechanisms when combined with technologies such as highly multiplexed tissue imaging data. In balance with conventional medical data, its role in clinical routine will become more important, supporting diagnosis and prognosis in oncology, enhancing clinical decision-making, and improving the quality of care for patients.

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深度学习在高度复用组织成像数据分析中的应用综述。
自引入肿瘤学领域以来,深度学习(DL)影响了临床发现和生物标志物预测。DL驱动的肿瘤学发现和预测基于各种生物学数据,如基因组学、蛋白质组学和成像数据。基于DL的计算框架可以预测遗传变异对基因表达的影响,以及基于氨基酸序列的蛋白质结构。此外,DL算法可以从几种空间“组学”技术中捕获有价值的机制生物学信息,如空间转录组学和空间蛋白质组学。在此,我们回顾了人工智能(AI)与空间组学技术的结合对肿瘤学的影响,重点介绍了DL及其在生物医学图像分析中的应用,包括细胞分割、细胞表型识别、癌症预测和治疗预测。与单一染色的传统组织病理学(“简单”)图像相比,我们强调了使用高度复用图像(空间蛋白质组学数据)的优势,因为前者可以提供后者无法获得的深层机制见解,即使有可解释的人工智能的帮助。此外,我们向读者提供了在预处理高度复用的图像(细胞分割、细胞类型注释)中使用的基于DL的流水线的优点/缺点。因此,本综述还指导读者选择最适合其数据的基于DL的管道。总之,当与高度复用的组织成像数据等技术相结合时,DL继续被确立为发现新的生物学机制的重要工具。与传统医学数据相比,它在临床常规中的作用将变得更加重要,支持肿瘤学的诊断和预后,增强临床决策,提高患者的护理质量。自引入肿瘤学领域以来,深度学习(DL)影响了临床发现和生物标志物预测。DL驱动的肿瘤学发现和预测基于各种生物学数据,如基因组学、蛋白质组学和成像数据。基于DL的计算框架可以预测遗传变异对基因表达的影响,以及基于氨基酸序列的蛋白质结构。此外,DL算法可以从几种空间“组学”技术中捕获有价值的机制生物学信息,如空间转录组学和空间蛋白质组学。在此,我们回顾了人工智能(AI)与空间组学技术的结合对肿瘤学的影响,重点介绍了DL及其在生物医学图像分析中的应用,包括细胞分割、细胞表型识别、癌症预测和治疗预测。与单一染色的传统组织病理学(“简单”)图像相比,我们强调了使用高度复用图像(空间蛋白质组学数据)的优势,因为前者可以提供后者无法获得的深层机制见解,即使有可解释的人工智能的帮助。此外,我们向读者提供了在预处理高度复用的图像(细胞分割、细胞类型注释)中使用的基于DL的流水线的优点/缺点。因此,本综述还指导读者选择最适合其数据的基于DL的管道。总之,当与高度复用的组织成像数据等技术相结合时,DL继续被确立为发现新的生物学机制的重要工具。与传统医学数据相比,它在临床常规中的作用将变得更加重要,支持肿瘤学的诊断和预后,增强临床决策,提高患者的护理质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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