Artificial neural network identified a 20‐gene panel in predicting immunotherapy response and survival benefits after anti‐PD1/PD‐L1 treatment in glioblastoma patients

Author:

Wang Yaning1ORCID,Wang Zihao1,Guo Xiaopeng1,Cao Yaning1ORCID,Xing Hao1,Wang Yuekun1,Xing Bing1,Wang Yu1ORCID,Yao Yong1,Ma Wenbin1ORCID

Affiliation:

1. Department of Neurosurgery, Center for Malignant Brain Tumors, National Glioma MDT Alliance, Peking Union Medical College Hospital Chinese Academy of Medical Sciences and Peking UnionMedical College Beijing China

Abstract

AbstractBackgroundImmune checkpoint inhibitors (ICIs) are a promising immunotherapy approach, but glioblastoma clinical trials have not yielded satisfactory results.ObjectiveTo screen glioblastoma patients who may benefit from immunotherapy.MethodsEighty‐one patients receiving anti‐PD1/PD‐L1 treatment from a large‐scale clinical trial and 364 patients without immunotherapy from The Cancer Genome Atlas (TCGA) were included. Patients in the ICI‐treated cohort were divided into responders and nonresponders according to overall survival (OS), and the most critical responder‐relevant features were screened using random forest (RF). We constructed an artificial neural network (ANN) model and verified its predictive value with immunotherapy response and OS.ResultsWe defined two groups of ICI‐treated glioblastoma patients with large differences in survival benefits as nonresponders (OS ≤6 months, n = 18) and responders (OS ≥17 months, n = 8). No differentially mutated genes were observed between responders and nonresponders. We performed RF analysis to select the most critical responder‐relevant features and developed an ANN with 20 input variables, five hidden neurons and one output neuron. Receiver operating characteristic analysis and the DeLong test demonstrated that the ANN had the best performance in predicting responders, with an AUC of 0.97. Survival analysis indicated that ANN‐predicted responders had significantly better OS rates than nonresponders.ConclusionThe 20‐gene panel developed by the ANN could be a promising biomarker for predicting immunotherapy response and prognostic benefits in ICI‐treated GBM patients and may guide oncologists to accurately select potential responders for the preferential use of ICIs.

Funder

National Natural Science Foundation of China

Publisher

Wiley

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