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Deep learning-based cancer survival prognosis from RNA-seq data: approaches and evaluations

机译:来自RNA-SEQ数据的深度学习癌症生存预后:方法和评估

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Recent advances in kernel-based Deep Learning models have introduced a new era in medical research. Originally designed for pattern recognition and image processing, Deep Learning models are now applied to survival prognosis of cancer patients. Specifically, Deep Learning versions of the Cox proportional hazards models are trained with transcriptomic data to predict survival outcomes in cancer patients. In this study, a broad analysis was performed on TCGA cancers using a variety of Deep Learning-based models, including Cox-nnet, DeepSurv, and a method proposed by our group named AECOX (AutoEncoder with Cox regression network). Concordance index and p-value of the log-rank test are used to evaluate the model performances. All models show competitive results across 12 cancer types. The last hidden layers of the Deep Learning approaches are lower dimensional representations of the input data that can be used for feature reduction and visualization. Furthermore, the prognosis performances reveal a negative correlation between model accuracy, overall survival time statistics, and tumor mutation burden (TMB), suggesting an association among overall survival time, TMB, and prognosis prediction accuracy. Deep Learning based algorithms demonstrate superior performances than traditional machine learning based models. The cancer prognosis results measured in concordance index are indistinguishable across models while are highly variable across cancers. These findings shedding some light into the relationships between patient characteristics and survival learnability on a pan-cancer level.
机译:基于内核的深度学习模型的最新进展在医学研究中引入了新的时代。最初设计用于模式识别和图像处理,深入学习模型现在应用于癌症患者的生存预后。具体而言,Cox比例危害模型的深度学习版本培训具有转录组数据,以预测癌症患者的存活结果。在这项研究中,使用各种基于深度学习的模型,包括Cox-NNet,Deepsurv和我们名为AECOX(具有Cox回归网络的AutoEncoder)提出的方法,对TCGA癌进行了广泛的分析。日志秩测试的一致性索引和p值用于评估模型性能。所有型号显示12种癌症类型的竞争结果。深度学习方法的最后一个隐藏层是可用于减少特征和可视化的输入数据的较低维度表示。此外,预后性能揭示了模型精度,总体生存时间统计和肿瘤突变负荷(TMB)之间的负相关,表明整体存活时间,TMB和预后预测准确性之间的关联。基于深度学习的算法展示了比传统的基于机器学习的模型的卓越性能。在一致性指数中测量的癌症预后结果在模型中难以区分,而癌症的高度可变。这些调查结果将一些光线缩小到患者特征与泛癌水平上的生存可读性之间的关系。

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