首页> 外文期刊>American Journal of Translational Research >A multi-omics-based serial deep learning approach to predict clinical outcomes of single-agent anti-PD-1/PD-L1 immunotherapy in advanced stage non-small-cell lung cancer
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A multi-omics-based serial deep learning approach to predict clinical outcomes of single-agent anti-PD-1/PD-L1 immunotherapy in advanced stage non-small-cell lung cancer

机译:基于多族种的串行深度学习方法,以预测先进阶段非小细胞肺癌的单药抗PD-1 / PD-L1免疫疗法的临床结果

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Only 20% NSCLC patients benefit from immunotherapy with a durable response. Current biomarkers are limited by the availability of samples and do not accurately predict who will benefit from immunotherapy. To develop a unified deep learning model to integrate multimodal serial information from CT with laboratory and baseline clinical information. We retrospectively analyzed 1633 CT scans and 3414 blood samples from 200 advanced stage NSCLC patients who received single anti-PD-1/PD-L1 agent between April 2016 and December 2019. Multidimensional information, including serial radiomics, laboratory data and baseline clinical data, was used to develop and validate deep learning models to identify immunotherapy responders and nonresponders. A Simple Temporal Attention (SimTA) module was developed to process asynchronous time-series imaging and laboratory data. Using cross-validation, the 90-day deep learning-based predicting model showed a good performance in distinguishing responders from nonresponders, with an area under the curve (AUC) of 0.80 (95% CI: 0.74-0.86). Before immunotherapy, we stratified the patients into high- and low-risk nonresponders using the model. The low-risk group had significantly longer progression-free survival (PFS) (8.4 months, 95% CI: 5.49-11.31 vs . 1.5 months, 95% CI: 1.29-1.71; HR 3.14, 95% CI: 2.27-4.33; log-rank test, P 0.01) and overall survival (OS) (26.7 months, 95% CI: 18.76-34.64 vs . 8.6 months, 95% CI: 4.55-12.65; HR 2.46, 95% CI: 1.73-3.51; log-rank test, P 0.01) than the high-risk group. An exploratory analysis of 93 patients with stable disease (SD) [after first efficacy assessment according to the Response Evaluation Criteria in Solid Tumors (RECIST) 1.1] also showed that the 90-day model had a good prediction of survival and low-risk patients had significantly longer PFS (11.1 months, 95% CI: 10.24-11.96 vs . 3.3 months, 95% CI: 0.34-6.26; HR 2.93, 95% CI: 1.69-5.10; log-rank test, P0.01) and OS (31.7 months, 95% CI: 23.64-39.76 vs . 17.2 months, 95% CI: 7.22-27.18; HR 2.22, 95% CI: 1.17-4.20; log-rank test, P =0.01) than high-risk patients. In conclusion, the SimTA-based multi-omics serial deep learning provides a promising methodology for predicting response of advanced NSCLC patients to anti-PD-1/PD-L1 monotherapy. Moreover, our model could better differentiate survival benefit among SD patients than the traditional RECIST evaluation method.
机译:只有20%的NSCLC患者受益于具有耐用反应的免疫疗法。目前的生物标志物受到样本可用性的限制,并且不准确地预测谁将受益免于免疫疗法。开发统一的深度学习模型,将多峰信息从CT与实验室和基线临床信息集成。我们回顾性地分析了来自200六年四月至2019年4月至2019年4月至12月之间的200名高级NSCLC患者的1633ct扫描和3414次血液样本。多维信息,包括连续辐射瘤,实验室数据和基线临床数据,用于开发和验证深度学习模型以识别免疫疗法响应者和无反应者。开发了一个简单的时间关注(SIMTA)模块来处理异步时间序列成像和实验室数据。使用交叉验证,基于90天的深度学习的预测模型显示出与非反应者的响应者区分响应者的良好性能,曲线(AUC)为0.80(95%CI:0.74-0.86)。在免疫疗法之前,我们将患者分为使用该模型的高风险无反应者。低风险组无进展的进展存活率(PFS)(8.4个月,95%CI:5.49-11.31 vs。1.5个月,95%CI:1.29-1.71; HR 3.14,95%CI:2.27-4.33; Log-Rank测试,P <0.01)和总存活(OS)(26.7个月,95%CI:18.76-34.64 VS。8.6个月,95%CI; 4.55-12.65; HR 2.46,95%CI:1.73-3.51 ;日志秩检验,p& 0.01)比高风险组。对93例稳定疾病(SD)患者的探索性分析[根据实体肿瘤的响应评估标准(RECIST)1.1]的响应评估标准(RECIST)1.1]还表明,90天的模型对生存和低风险患者进行了良好的预测PFS(11.1个月,95%CI:10.24-11.96 vs,95%CI; HR 2.93,95%CI:1.69-5.10;日志秩检验,P <0.01)和OS (31.7个月,95%CI:23.64-39.76 vs。17.2个月,95%CI:7.22-27.18; HR 2.22,95%CI:1.17-4.20; log-ange测试,p = 0.01)比高风险患者。总之,基于SIMTA的多OMICS串行深度学习提供了一种有希望的方法,用于预测先进的NSCLC患者抗PD-1 / PD-L1单一疗法的响应。此外,我们的模型可以在SD患者中更好地区分生存效益,而不是传统的重新评估方法。

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