A best practices framework for spatial biology studies in drug discovery and development: enabling successful cohort studies using digital spatial profiling.

Pub Date : 2024-09-03 DOI:10.1080/01478885.2024.2391683
David Krull, Premi Haynes, Anil Kesarwani, Julien Tessier, Benjamin J Chen, Kelly Hunter, Deniliz Rodriguez, Yan Liang, Jim Mansfield, Maxine McClain, Corinne Ramos, Edward Bonnevie, Esperanza Anguiano
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Abstract

The discovery of biomarkers, essential for successful drug development, is often hindered by the limited availability of tissue samples, typically obtained through core needle biopsies. Standard 'omics platforms can consume significant amounts of tissue, forcing scientist to trade off spatial context for high-plex assays, such as genome-wide assays. While bulk gene expression approaches and standard single-cell transcriptomics have been valuable in defining various molecular and cellular mechanisms, they do not retain spatial context. As such, they have limited power in resolving tissue heterogeneity and cell-cell interactions. Current spatial transcriptomics platforms offer limited transcriptome coverage and have low throughput, restricting the number of samples that can be analyzed daily or even weekly. While the Digital Spatial Profiling (DSP) method does not provide single-cell resolution, it presents a significant advancement by enabling scalable whole transcriptome and ultrahigh-plex protein analysis from distinct tissue compartments and structures using a single tissue slide. These capabilities overcome significant constraints in biomarker analysis in solid tissue specimens. These advancements in tissue profiling play a crucial role in deepening our understanding of disease biology and in identifying potential therapeutic targets and biomarkers. To enhance the use of spatial biology tools in drug discovery and development, the DSP Scientific Consortium has created best practices guidelines. These guidelines, built on digital spatial profiling data and expertise, offer a practical framework for designing spatial studies and using current and future spatial biology platforms. The aim is to improve tissue analysis in all research areas supporting drug discovery and development.

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药物发现和开发中空间生物学研究的最佳实践框架:利用数字空间剖析成功开展队列研究。
生物标志物的发现对成功的药物开发至关重要,但通常由于组织样本的有限性而受到阻碍,这些样本通常通过核心针活检获得。标准的'omics'平台会消耗大量的组织样本,迫使科学家不得不牺牲空间环境来进行全基因组检测等高复合检测。虽然大量基因表达方法和标准单细胞转录组学在定义各种分子和细胞机制方面很有价值,但它们不能保留空间背景。因此,它们在解决组织异质性和细胞间相互作用方面的能力有限。目前的空间转录组学平台提供的转录组覆盖范围有限,通量低,限制了每天甚至每周可分析的样本数量。虽然数字空间轮廓分析(DSP)方法不能提供单细胞分辨率,但它利用单张组织切片就能对不同的组织区划和结构进行可扩展的全转录组和超高倍蛋白质分析,是一项重大进步。这些功能克服了实体组织标本生物标记分析中的重大限制。组织图谱分析的这些进步在加深我们对疾病生物学的了解以及确定潜在治疗目标和生物标记物方面发挥着至关重要的作用。为了加强空间生物学工具在药物发现和开发中的应用,DSP 科学联盟制定了最佳实践指南。这些指南以数字空间剖析数据和专业知识为基础,为设计空间研究和使用当前及未来的空间生物学平台提供了一个实用框架。其目的是改进支持药物发现和开发的所有研究领域的组织分析。
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