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Deep neural network classification based on somatic mutations potentially predicts clinical benefit of immune checkpoint blockade in lung adenocarcinoma

机译:基于体细胞突变的深度神经网络分类可能预测免疫检查点阻断肺腺癌的临床益处

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Although several biomarkers have been proposed to predict the response of patients with lung adenocarcinoma (LUAD) to immune checkpoint blockade (ICB) therapy, existing challenges such as test platform uniformity, cutoff value definition, and low frequencies restrict their effective clinical application. Here, we attempted to use deep neural networks (DNNs) based on somatic mutations to predict the clinical benefit of ICB to LUAD patients undergoing immunotherapy. We used DNNs to train and validate the predictive model in three cohorts. Kaplan-Meier estimates determined the overall survival (OS) and progression-free survival (PFS) between specific subgroups. Then, we performed a relevant analysis on the multiple-dimension data types including immune cell infiltration, programmed death receptor 1 ligand (PD-L1) expression, and tumor mutational burden (TMB) from cohorts of LUAD public database and immunotherapeutic patients. Two classification groups (C1 and C2) in the training and two validation sets were identified for the efficacy of ICB via the DNN algorithm. Patients in C1 showed remarkably long OS and PFS to programmed death 1 (PD-1) inhibitors. The C1 group was significantly associated with increased expression of immune cell infiltration, immune checkpoints, activated T-effectors, and interferon gamma signature. C1 group also exhibited significantly higher TMB, neoantigens, transversion, or transition than the C2 group. This work provides novel insights that classification of DNNs using somatic mutations in LUAD could serve as a potentially predictive approach in developing a strategy for anti-PD-1/PD-L1 immunotherapy. ?2020, ?2020 The Author(s). Published with license by Taylor & Francis Group, LLC.
机译:虽然已经提出了几种生物标志物预测肺腺癌(Luad)患者的响应免受免疫检查点阻断(ICB)治疗,但现有的挑战如测试平台均匀性,截止值定义和低频限制了其有效的临床应用。在这里,我们试图基于体细胞突变使用深神经网络(DNN),以预测ICB对所接受免疫疗法的肺部患者的临床益处。我们使用DNN培训并验证三个队列中的预测模型。 Kaplan-Meier估计确定了特定亚组之间的整体存活率(OS)和无进展生存(PFS)。然后,我们对多维数据类型进行了相关的分析,包括免疫细胞浸润,编程死亡受体1配体(PD-L1)表达(PD-L1)表达,以及来自鲁拉公共数据库和免疫治疗患者的群体的肿瘤突变负担(TMB)。训练中的两个分类组(C1和C2)和两个验证集通过DNN算法识别了ICB的功效。 C1中的患者显示出显着的长OS和PFS,编程死亡1(PD-1)抑制剂。 C1组与免疫细胞浸润,免疫检查点,活化T效应和干扰素γ签名的表达增加显着相关。 C1组还表现出比C2组的显着更高的TMB,NeoAntigens,横转化或过渡。这项工作提供了新的洞察力,即使用路障中的躯体突变的DNN分类可以作为开发抗PD-1 / PD-L1免疫疗法策略的潜在预测方法。 ?2020,?2020作者。泰勒和弗朗西斯集团,LLC发布牌照。

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