Deep Learning Model for Predicting Immunotherapy Response in Advanced Non−Small Cell Lung Cancer

IF 22.5 1区 医学 Q1 ONCOLOGY JAMA Oncology Pub Date : 2024-12-26 DOI:10.1001/jamaoncol.2024.5356
Mehrdad Rakaee, Masoud Tafavvoghi, Biagio Ricciuti, Joao V. Alessi, Alessio Cortellini, Fabrizio Citarella, Lorenzo Nibid, Giuseppe Perrone, Elio Adib, Claudia A. M. Fulgenzi, Cassio Murilo Hidalgo Filho, Alessandro Di Federico, Falah Jabar, Sayed Hashemi, Ilias Houda, Elin Richardsen, Lill-Tove Rasmussen Busund, Tom Donnem, Idris Bahce, David J. Pinato, Åslaug Helland, Lynette M. Sholl, Mark M. Awad, David J. Kwiatkowski
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Abstract

ImportanceOnly a small fraction of patients with advanced non−small cell lung cancer (NSCLC) respond to immune checkpoint inhibitor (ICI) treatment. For optimal personalized NSCLC care, it is imperative to identify patients who are most likely to benefit from immunotherapy.ObjectiveTo develop a supervised deep learning−based ICI response prediction method; evaluate its performance alongside other known predictive biomarkers; and assess its association with clinical outcomes in patients with advanced NSCLC.Design, Setting, and ParticipantsThis multicenter cohort study developed and independently validated a deep learning−based response stratification model for predicting ICI treatment outcome in patients with advanced NSCLC from whole slide hematoxylin and eosin–stained images. Images for model development and validation were obtained from 1 participating center in the US and 3 in the European Union (EU) from August 2014 to December 2022. Data analyses were performed from September 2022 to May 2024.ExposureMonotherapy with ICIs.Main Outcomes and MeasuresModel performance measured by clinical end points and objective response rate (ORR) differentiation power vs other predictive biomarkers, ie, programmed death-ligand 1 (PD-L1), tumor mutational burden (TMB), and tumor-infiltrating lymphocytes (TILs).ResultsA total of 295 581 image tiles from 958 patients (mean [SD] age, 66.0 [10.6] years; 456 [48%] females and 502 [52%] males) treated with ICI for NSCLC were included in the analysis. The US-based development cohort consisted of 614 patients with median (IQR) follow-up time of 54.5 (38.2-68.1) months, and the EU-based validation cohort, 344 patients with 43.3 (27.4-53.9) months of follow-up. The ORR to ICI was 26% in the developmental cohort and 28% in the validation cohort. The deep learning model’s area under the receiver operating characteristic curve (AUC) for ORR was 0.75 (95% CI, 0.64-0.85) in the internal test set and 0.66 (95% CI, 0.60-0.72) in the validation cohort. In a multivariable analysis, the deep learning model’s score was an independent predictor of ICI response in the validation cohort for both progression-free (hazard ratio, 0.56; 95% CI, 0.42-0.76; P &amp;lt; .001) and overall survival (hazard ratio, 0.53; 95% CI, 0.39-0.73; P &amp;lt; .001). The tuned deep learning model achieved a higher AUC than TMB, TILs, and PD-L1 in the internal set; in the validation cohort, it was superior to TILs and comparable with PD-L1 (AUC, 0.67; 95% CI, 0.60-0.74), with a 10-percentage point improvement in specificity. In the validation cohort, combining the deep learning model with PD-L1 scores achieved an AUC of 0.70 (95% CI, 0.63-0.76), outperforming either marker alone, with a response rate of 51% compared to 41% for PD-L1 (≥50%) alone.Conclusions and RelevanceThe findings of this cohort study demonstrate a strong and independent deep learning−based feature associated with ICI response in patients with NSCLC across various cohorts. Clinical use of this deep learning model could refine treatment precision and better identify patients who are likely to benefit from ICI for treatment of advanced NSCLC.
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预测晚期非小细胞肺癌免疫治疗反应的深度学习模型
只有一小部分晚期非小细胞肺癌(NSCLC)患者对免疫检查点抑制剂(ICI)治疗有反应。为了获得最佳的个性化非小细胞肺癌治疗,必须确定最有可能从免疫治疗中获益的患者。目的建立一种基于监督深度学习的ICI响应预测方法;与其他已知的预测性生物标志物一起评估其性能;并评估其与晚期非小细胞肺癌患者临床结果的关系。设计、环境和参与者这项多中心队列研究开发并独立验证了基于深度学习的反应分层模型,该模型可通过苏木精和伊红染色全切片图像预测晚期NSCLC患者ICI治疗结果。用于模型开发和验证的图像从2014年8月至2022年12月从美国的1个参与中心和欧盟的3个参与中心获得。数据分析时间为2022年9月至2024年5月。暴露单药治疗。主要结果和测量方法通过临床终点和客观缓解率(ORR)分化能力与其他预测性生物标志物(即程序性死亡配体1 (PD-L1)、肿瘤突变负荷(TMB)和肿瘤浸润淋巴细胞(TILs))来衡量模型的性能。结果958例患者共获得295 581张图像贴片(平均[SD]年龄66.0[10.6]岁;456例(48%)女性和502例(52%)男性接受了非小细胞肺癌的ICI治疗。美国开发队列包括614例患者,中位(IQR)随访时间为54.5(38.2-68.1)个月,欧盟验证队列包括344例患者,随访时间为43.3(27.4-53.9)个月。发展组到ICI的ORR为26%,验证组为28%。深度学习模型的接受者工作特征曲线下面积(AUC)在内部测试集中为0.75 (95% CI, 0.64-0.85),在验证队列中为0.66 (95% CI, 0.60-0.72)。在多变量分析中,深度学习模型的评分是验证队列中ICI反应的独立预测因子,无进展(风险比,0.56;95% ci, 0.42-0.76;P, amp;肝移植;.001)和总生存率(风险比,0.53;95% ci, 0.39-0.73;P, amp;肝移植;措施)。调整后的深度学习模型在内部集的AUC高于TMB、TILs和PD-L1;在验证队列中,它优于TILs,与PD-L1相当(AUC, 0.67;95% CI, 0.60-0.74),特异性提高了10个百分点。在验证队列中,将深度学习模型与PD-L1评分相结合的AUC为0.70 (95% CI, 0.63-0.76),优于单独使用任何一种标记物,反应率为51%,而单独使用PD-L1(≥50%)的反应率为41%。结论和相关性这项队列研究的结果表明,在不同队列的NSCLC患者中,ICI反应具有强大且独立的基于深度学习的特征。该深度学习模型的临床应用可以提高治疗精度,更好地识别可能受益于ICI治疗晚期NSCLC的患者。
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来源期刊
JAMA Oncology
JAMA Oncology Medicine-Oncology
自引率
1.80%
发文量
423
期刊介绍: JAMA Oncology is an international peer-reviewed journal that serves as the leading publication for scientists, clinicians, and trainees working in the field of oncology. It is part of the JAMA Network, a collection of peer-reviewed medical and specialty publications.
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