Literature DB >> 33594323

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.

Yi Yang1, Jiancheng Yang2,3,4, Lan Shen1, Jiajun Chen4, Liliang Xia1, Bingbing Ni2,3, Liang Ge4, Ying Wang5, Shun Lu1.   

Abstract

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, P<0.01) 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. AJTR
Copyright © 2021.

Entities:  

Keywords:  NSCLC; SimTA; multi-omics serial deep learning

Year:  2021        PMID: 33594323      PMCID: PMC7868825     

Source DB:  PubMed          Journal:  Am J Transl Res        ISSN: 1943-8141            Impact factor:   4.060


  15 in total

Review 1.  Current status and quality of radiomic studies for predicting immunotherapy response and outcome in patients with non-small cell lung cancer: a systematic review and meta-analysis.

Authors:  Qiuying Chen; Lu Zhang; Xiaokai Mo; Jingjing You; Luyan Chen; Jin Fang; Fei Wang; Zhe Jin; Bin Zhang; Shuixing Zhang
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-08-17       Impact factor: 9.236

2.  Multimodal integration of radiology, pathology and genomics for prediction of response to PD-(L)1 blockade in patients with non-small cell lung cancer.

Authors:  Rami S Vanguri; Jia Luo; Andrew T Aukerman; Jacklynn V Egger; Christopher J Fong; Natally Horvat; Andrew Pagano; Jose de Arimateia Batista Araujo-Filho; Luke Geneslaw; Hira Rizvi; Ramon Sosa; Kevin M Boehm; Soo-Ryum Yang; Francis M Bodd; Katia Ventura; Travis J Hollmann; Michelle S Ginsberg; Jianjiong Gao; Matthew D Hellmann; Jennifer L Sauter; Sohrab P Shah
Journal:  Nat Cancer       Date:  2022-08-29

Review 3.  A Survey on Deep Learning for Precision Oncology.

Authors:  Ching-Wei Wang; Muhammad-Adil Khalil; Nabila Puspita Firdi
Journal:  Diagnostics (Basel)       Date:  2022-06-17

Review 4.  Imaging approaches and radiomics: toward a new era of ultraprecision radioimmunotherapy?

Authors:  Roger Sun; Théophraste Henry; Adrien Laville; Alexandre Carré; Anthony Hamaoui; Sophie Bockel; Ines Chaffai; Antonin Levy; Cyrus Chargari; Charlotte Robert; Eric Deutsch
Journal:  J Immunother Cancer       Date:  2022-07       Impact factor: 12.469

Review 5.  Artificial Intelligence-based Radiomics in the Era of Immuno-oncology.

Authors:  Cyra Y Kang; Samantha E Duarte; Hye Sung Kim; Eugene Kim; Jonghanne Park; Alice Daeun Lee; Yeseul Kim; Leeseul Kim; Sukjoo Cho; Yoojin Oh; Gahyun Gim; Inae Park; Dongyup Lee; Mohamed Abazeed; Yury S Velichko; Young Kwang Chae
Journal:  Oncologist       Date:  2022-06-08       Impact factor: 5.837

Review 6.  Deep Learning With Radiomics for Disease Diagnosis and Treatment: Challenges and Potential.

Authors:  Xingping Zhang; Yanchun Zhang; Guijuan Zhang; Xingting Qiu; Wenjun Tan; Xiaoxia Yin; Liefa Liao
Journal:  Front Oncol       Date:  2022-02-17       Impact factor: 6.244

7.  Deep Learning to Predict EGFR Mutation and PD-L1 Expression Status in Non-Small-Cell Lung Cancer on Computed Tomography Images.

Authors:  Chengdi Wang; Xiuyuan Xu; Jun Shao; Kai Zhou; Kefu Zhao; Yanqi He; Jingwei Li; Jixiang Guo; Zhang Yi; Weimin Li
Journal:  J Oncol       Date:  2021-12-31       Impact factor: 4.375

8.  Nursing Observation on the Clinical Efficacy and Toxicity of Lobaplatin Compared with Cisplatin in the Treatment of Locally Advanced Hypopharyngeal Carcinoma Based on Intelligent CT Imaging.

Authors:  Yunyan Li; Guangrun Yang; Mengmeng Li; Xu Tong
Journal:  J Healthc Eng       Date:  2021-06-30       Impact factor: 2.682

9.  Machine Learning Using Real-World and Translational Data to Improve Treatment Selection for NSCLC Patients Treated with Immunotherapy.

Authors:  Arsela Prelaj; Mattia Boeri; Alessandro Robuschi; Roberto Ferrara; Claudia Proto; Giuseppe Lo Russo; Giulia Galli; Alessandro De Toma; Marta Brambilla; Mario Occhipinti; Sara Manglaviti; Teresa Beninato; Achille Bottiglieri; Giacomo Massa; Emma Zattarin; Rosaria Gallucci; Edoardo Gregorio Galli; Monica Ganzinelli; Gabriella Sozzi; Filippo G M de Braud; Marina Chiara Garassino; Marcello Restelli; Alessandra Laura Giulia Pedrocchi; Francesco Trovo'
Journal:  Cancers (Basel)       Date:  2022-01-16       Impact factor: 6.639

10.  Efficacy and Safety of Camrelizumab Monotherapy and Combination Therapy for Cancers: A Systematic Review and Meta-Analysis.

Authors:  Jiting Wang; Song Su; Jun Li; Yaling Li
Journal:  Front Oncol       Date:  2021-06-25       Impact factor: 6.244

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