基于ORIENT-3研究数据的人工神经网络系统预测辛替单抗治疗鳞状细胞非小细胞肺癌的疗效。

IF 4.6 2区 医学 Q2 IMMUNOLOGY
Tongji Xie, Guangyu Fan, Le Tang, Puyuan Xing, Yuankai Shi
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引用次数: 0

摘要

背景:用于预测晚期鳞状细胞非小细胞肺癌(sqNSCLC)对程序性细胞死亡蛋白1单克隆抗体应答的现有生物标志物和模型不够准确。我们利用ORIENT-3研究的数据构建人工神经网络(ANN)系统来预测sintilmab对sqNSCLC的疗效。方法:构建4个基于大量RNA数据的人工神经网络系统,用于预测新替单抗治疗的sqNSCLC患者的疾病控制(DC)、免疫DC (iDC)、客观反应(OR)和免疫或(iOR)。在体积和空间层面分别对ORIENT-3研究患者和现实世界患者进行机制探索。结果:对辛替单抗有不同反应的sqNSCLC患者表现出各自独特的转录组谱。4种人工神经网络系统在测试队列中显示出较高的准确率(DC、iDC、OR和iOR的AUC分别为0.83、0.89、0.93和0.94)。人工神经网络系统的性能优于线性模型系统,具有较高的稳定性。整体水平上的机制探索提示,ANN系统评分越低(反应越差)的患者免疫相关通路富集比例越高。空间水平上的机制探索表明,对免疫治疗反应较好的患者,肿瘤簇和细胞毒性T细胞斑点都较少。解释:这四个ANN系统在预测sqNSCLC患者对sintilimab的反应方面显示出较高的准确性、稳健性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural network systems to predict the response to sintilimab in squamous-cell non-small-cell lung cancer based on data of ORIENT-3 study.

Background: Existing biomarkers and models for predicting response to programmed cell death protein 1 monoclonal antibody in advanced squamous-cell non-small cell lung cancer (sqNSCLC) did not have enough accuracy. We used data from the ORIENT-3 study to construct artificial neural network (ANN) systems to predict the response to sintilimab for sqNSCLC.

Methods: Four ANN systems based on bulk RNA data to predict disease control (DC), immune DC (iDC), objective response (OR) and immune OR (iOR) were constructed and tested for patients with sqNSCLC treated with sintilimab. The mechanism exploration on the bulk and the spatial level were performed in patients from the ORIENT-3 study and the real world, respectively.

Findings: sqNSCLC patients with different responses to sintilimab showed each unique transcriptomic spectrum. Four ANN systems showed high accuracy in the test cohort (AUC of DC, iDC, OR and iOR were 0.83, 0.89, 0.93 and 0.94, respectively). The performance of ANN systems was better than that of linear model systems and showed high stability. The mechanism exploration on the bulk level suggested that patients with lower ANN system scores (worse response) had a higher ratio of immune-related pathways enrichment. The mechanism exploration on the spatial level indicated that patients with better response to immunotherapy had fewer clusters of both tumor and cytotoxicity T cell spots.

Interpretation: The four ANN systems showed high accuracy, robustness and stability in predicting the response to sintilimab for patients with sqNSCLC.

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来源期刊
CiteScore
10.50
自引率
1.70%
发文量
207
审稿时长
1 months
期刊介绍: Cancer Immunology, Immunotherapy has the basic aim of keeping readers informed of the latest research results in the fields of oncology and immunology. As knowledge expands, the scope of the journal has broadened to include more of the progress being made in the areas of biology concerned with biological response modifiers. This helps keep readers up to date on the latest advances in our understanding of tumor-host interactions. The journal publishes short editorials including "position papers," general reviews, original articles, and short communications, providing a forum for the most current experimental and clinical advances in tumor immunology.
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