xCell 2.0:细胞类型比例估算的稳健算法可预测对免疫检查点阻断疗法的反应

Almog Angel, Loai Naom, Shir Nabet-Levy, Dvir Aran
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摘要

背景:从大量基因表达数据中准确估计细胞类型比例对于了解复杂组织和疾病背后的细胞异质性至关重要。xCell 2.0 采用改进的方法生成细胞类型基因特征,包括自动处理细胞类型依赖性和更稳健的特征生成:我们使用 9 个人类和小鼠参考集以及 26 个验证数据集(包括 1,749 个样本和 67 种细胞类型),将 xCell 2.0 与 10 种流行的去卷积方法进行了比较。此外,我们还利用独立的解卷积 DREAM 挑战赛数据集对 xCell 2.0 进行了验证。作为应用测试案例,我们整理了 2,007 名接受免疫检查点阻断(ICB)预处理的患者的泛癌症数据。使用 xCell 2.0 和其他方法生成了肿瘤微环境(TME)的特征,并通过嵌套交叉验证将这些特征输入 LightGBM 模型,以获得对 ICB 反应的稳健预测:基准测试结果表明,在不同的参考数据集上,xCell 2.0的表现优于所有其他测试方法,在不同的生物环境中表现出卓越的准确性和一致性。在ICB反应预测任务中,xCell 2.0衍生的TME特征与仅使用癌症类型和治疗信息的模型相比,显著提高了预测准确性,并优于其他解卷积方法和已建立的ICB预测分数。它既可通过网络应用程序使用,也可作为兼容 Bioconductor 的软件包使用,并配备了大量用于人类和小鼠研究的预训练细胞类型特征。ICB 反应预测的改进凸显了 xCell 2.0 在推进癌症和其他疾病的精准医疗方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
xCell 2.0: Robust Algorithm for cell type Proportion Estimation Predicts Response to Immune Checkpoint Blockade
Background: Accurate estimation of cell type proportions from bulk gene expression data is essential for understanding the cellular heterogeneity underlying complex tissues and diseases. Here, we introduce xCell 2.0, an advanced version of the xCell algorithm, featuring a training function that permits the utilization of any reference dataset. xCell 2.0 generates cell type gene signatures using an improved methodology, including automated handling of cell type dependencies and more robust signature generation. Methods: We benchmarked xCell 2.0 against ten popular deconvolution methods using nine human and mouse reference sets and 26 validation datasets, encompassing 1,749 samples and 67 cell types. Additionally, we validated xCell 2.0 using the independent Deconvolution DREAM Challenge dataset. As an applicative test case, we curated pan-cancer data of 2,007 patients pre-treated with immune checkpoint blockade (ICB). Features of the tumor microenvironment (TME) were generated using xCell 2.0 and other methods and fed into a LightGBM model using nested cross-validation to obtain robust predictions of ICB response. Results: Benchmarking results showed that xCell 2.0 outperformed all other tested methods across distinct reference datasets, demonstrating superior accuracy and consistency across diverse biological contexts. xCell 2.0 also showed the best performance in minimizing spillover effects between related cell types. In the ICB response prediction task, xCell 2.0-derived TME features significantly improved prediction accuracy compared to models using only cancer type and treatment information, and outperformed other deconvolution methods and established ICB prediction scores. Conclusions: xCell 2.0 is a versatile and robust tool for cell type deconvolution that maintains high performance across various reference types and biological contexts. It is available both via a web application and as a Bioconductor-compatible package, equipped with a large collection of pre-trained cell type signatures for human and mouse research. The improved prediction of ICB responses highlights the potential of xCell 2.0 to advance precision medicine in cancer and other diseases.
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