Irradiation Immunity Interaction Lab, Australian National University, Canberra, ACT, Australia.
Division of Genome Sciences & Cancer, John Curtin School of Medical Research, Australian National University, Canberra, ACT, Australia.
Front Immunol. 2023 Aug 3;14:1211064. doi: 10.3389/fimmu.2023.1211064. eCollection 2023.
Machine learning (ML) is a valuable tool with the potential to aid clinical decision making. Adoption of ML to this end requires data that reliably correlates with the clinical outcome of interest; the advantage of ML is that it can model these correlations from complex multiparameter data sets that can be difficult to interpret conventionally. While currently available clinical data can be used in ML for this purpose, there exists the potential to discover new "biomarkers" that will enhance the effectiveness of ML in clinical decision making. Since the interaction of the immune system and cancer is a hallmark of tumor establishment and progression, one potential area for cancer biomarker discovery is through the investigation of cancer-related immune cell signatures. Hence, we hypothesize that blood immune cell signatures can act as a biomarker for cancer progression.
To probe this, we have developed and tested a multiparameter cell-surface marker screening pipeline, using flow cytometry to obtain high-resolution systemic leukocyte population profiles that correlate with detection and characterization of several cancers in murine syngeneic tumor models.
We discovered a signature of several blood leukocyte subsets, the most notable of which were monocyte subsets, that could be used to train CATboost ML models to predict the presence and type of cancer present in the animals.
Our findings highlight the potential utility of a screening approach to identify robust leukocyte biomarkers for cancer detection and characterization. This pipeline can easily be adapted to screen for cancer specific leukocyte markers from the blood of cancer patient.
机器学习(ML)是一种很有价值的工具,具有辅助临床决策的潜力。为了达到这个目的,需要使用与感兴趣的临床结果可靠相关的数据;ML 的优势在于它可以从复杂的多参数数据集建模这些相关性,而这些数据集通常很难用传统方法进行解释。虽然目前可用的临床数据可用于 ML 实现此目的,但存在发现新“生物标志物”的潜力,这将提高 ML 在临床决策中的有效性。由于免疫系统和癌症的相互作用是肿瘤建立和进展的标志,因此癌症生物标志物发现的一个潜在领域是通过研究与癌症相关的免疫细胞特征。因此,我们假设血液免疫细胞特征可以作为癌症进展的生物标志物。
为了探究这一点,我们开发并测试了一种多参数细胞表面标志物筛选方案,使用流式细胞术获取与在同种异体肿瘤模型中检测和表征几种癌症相关的高分辨率系统白细胞群体特征。
我们发现了几个血液白细胞亚群的特征,其中最显著的是单核细胞亚群,可以用于训练 CATboost ML 模型来预测动物中癌症的存在和类型。
我们的研究结果突出了筛选方法识别用于癌症检测和特征描述的稳健白细胞生物标志物的潜在用途。该方案可以很容易地适应从癌症患者的血液中筛选用于癌症特异性白细胞标记物。