预测泛药物化疗敏感性的深度学习转录组学模型

Eddie Guo, Pouria Torabi, Daiva E. Nielsen, Matthew Pietrosanu
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引用次数: 2

摘要

精确肿瘤学方法的出现已经开始为诊断、预后和治疗方面的临床决策提供信息。高通量技术使机器学习算法能够利用肿瘤的分子特征来产生个性化的治疗方法。然而,精确肿瘤学研究尚未开发出一种结合泛癌基因表达谱的预测性生物标志物,以将肿瘤分层为相似的药物敏感性谱。在这里,我们展示了一个具有10个隐藏层的神经网络,基于泛药物数据集准确地将癌细胞系分为两个不同的化疗反应组,准确率为89.0% (AUC = 0.904)。使用无监督聚类算法,我们发现来自癌症药物敏感性基因组学的一组细胞系基因表达数据可以聚类为两个反应组,它们在泛药物化疗敏感性方面存在显著差异。在将Boruta特征选择算法应用于该数据集之后,开发了一个深度学习模型来预测化疗反应组。该模型的高分类功效验证了我们的假设,即具有相似基因表达谱的细胞系具有相似的泛药物化疗敏感性。这一发现为使用类似的组合生物标志物来选择有效的候选药物提供了证据,这些药物可以最大限度地提高治疗反应并减少细胞毒性负担。未来的研究应该针对在本研究中定义的反应簇内的递归亚簇细胞系,以提供更高分辨率的潜在患者对化疗的反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning transcriptomic model for prediction of pan-drug chemotherapeutic sensitivity
The emergence of precision oncology approaches has begun to inform clinical decision-making in diagnostic, prognostic, and treatment contexts. High-throughput technology has enabled machine learning algorithms to use the molecular characteristics of tumors to generate personalized therapies. However, precision oncology studies have yet to develop a predictive biomarker incorporating pan-cancer gene expression profiles to stratify tumors into similar drug sensitivity profiles. Here we show that a neural network with ten hidden layers accurately classifies pancancer cell lines into two distinct chemotherapeutic response groups based on a pan-drug dataset with 89.0% accuracy (AUC = 0.904). Using unsupervised clustering algorithms, we found a cohort of cell line gene expression data from the Genomics of Drug Sensitivity in Cancer could be clustered into two response groups with significant differences in pan-drug chemotherapeutic sensitivity. After applying the Boruta feature selection algorithm to this dataset, a deep learning model was developed to predict chemotherapeutic response groups. The model’s high classification efficacy validates our hypothesis that cell lines with similar gene expression profiles present similar pan-drug chemotherapeutic sensitivity. This finding provides evidence for the potential use of similar combinatorial biomarkers to select potent candidate drugs that maximize therapeutic response and minimize the cytotoxic burden. Future investigations should aim to recursively subcluster cell lines within the response clusters defined in this study to provide a higher resolution of potential patient response to chemotherapeutics.
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