Machine and Deep Learning Methods for Predicting Immune Checkpoint Blockade Response

被引:0
|
作者
Ho, Danliang [1 ]
Motani, Mehul [2 ]
机构
[1] Natl Univ Singapore, NUS Grad Sch, Integrat Sci & Engn Programme, Singapore, Singapore
[2] Natl Univ Singapore, Integrat Sci & Engn Programme, Dept Elect & Comp Engn,Inst Data Sci, Coll Design & Engn,1 Inst Hlth,Inst Digital Med W, Singapore, Singapore
来源
关键词
immunotherapy; deep learning; tabular data;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Immune checkpoint blockade (ICB) therapy has improved treatment options in various cancer malignancies and holds promise for increasing the overall survival of treated patients. However, only a small proportion of patients benefit from ICB treatment. Furthermore, ICB therapy has been known to induce adverse autoimmunity reactions in certain patients. These two reasons motivate the clinical need to identify factors that predict a patient's response to ICB treatment. In our study, we developed several machine and deep learning-based models to predict response to ICB treatment, using a real-world tabular dataset across sixteen cancer types. We showed that our best model CB16, which is based on gradient boosting, outperforms all-known published results for this task, with sensitivity and specificity scores of 80.6% and 78.8% respectively. Our model also offers insights to clinical interpretability through the use of the SHAP explanation framework, which are consistent with known important predictors. Next, in order to see if deep learning can improve performance, we propose a methodology for the design of deep neural networks that addresses the lack of spatial and temporal structure in tabular data. Our approach is based on a combination of learning ordered representations and ensembling techniques. We show that, for the ICB prediction problem, current SOTA deep-learning architectures such as TabNet and Tab-Transformer do not perform well while our method achieves good performance. Our method achieves an F1 score 12.4 percentage points beyond that of Tab-Transformer, and sensitivity and specificity scores of 77.3% and 62.2% respectively. Through our work, we hope to improve the task of predicting ICB response, and contribute towards the creation of high-performance and interpretable AI models for real-world tabular data.
引用
收藏
页码:512 / 529
页数:18
相关论文
共 50 条
  • [31] Hallmarks of response, resistance, and toxicity to immune checkpoint blockade
    Morad, Golnaz
    Helmink, Beth A.
    Sharma, Padmanee
    Wargo, Jennifer A.
    CELL, 2021, 184 (21) : 5309 - 5337
  • [32] Predicting response of tumors to immune checkpoint therapy
    Brownell, I.
    JOURNAL OF INVESTIGATIVE DERMATOLOGY, 2018, 138 (12) : 2499 - 2499
  • [33] Machine learning methods for predicting tumor response in lung cancer
    El Naqa, Issam
    WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2012, 2 (02) : 173 - 181
  • [34] Immune Checkpoint Blockade
    Naidoo, Jarushka
    Page, David B.
    Wolchok, Jedd D.
    HEMATOLOGY-ONCOLOGY CLINICS OF NORTH AMERICA, 2014, 28 (03) : 585 - +
  • [35] Prediction of response and toxicity to immune checkpoint inhibitor therapies (ICI) in melanoma using deep neural networks machine learning
    Dawood, Zarmeena
    Coudray, Nicolas
    Kim, Randie H.
    Nomikou, Sofia
    Moran, Una
    Weber, Jeffrey S.
    Pavlick, Anna C.
    Wilson, Melissa
    Tsirigos, Aristotelis
    Osman, Iman
    JOURNAL OF CLINICAL ONCOLOGY, 2018, 36 (15)
  • [36] Identification of immune checkpoint and cytokine signatures associated with the response to immune checkpoint blockade in gastrointestinal cancers
    Zhao, Chuanhua
    Wu, Lihong
    Liang, Dandan
    Chen, Huan
    Ji, Shoujian
    Zhang, Guanxiong
    Yang, Keyan
    Hu, Ying
    Mao, Beibei
    Liu, Tianshu
    Yu, Yiyi
    Zhang, Henghui
    Xu, Jianming
    CANCER IMMUNOLOGY IMMUNOTHERAPY, 2021, 70 (09) : 2669 - 2679
  • [37] Identification of immune checkpoint and cytokine signatures associated with the response to immune checkpoint blockade in gastrointestinal cancers
    Chuanhua Zhao
    Lihong Wu
    Dandan Liang
    Huan Chen
    Shoujian Ji
    Guanxiong Zhang
    Keyan Yang
    Ying Hu
    Beibei Mao
    Tianshu Liu
    Yiyi Yu
    Henghui Zhang
    Jianming Xu
    Cancer Immunology, Immunotherapy, 2021, 70 : 2669 - 2679
  • [38] SERS Multiplex Profiling of Melanoma Circulating Tumor Cells for Predicting the Response to Immune Checkpoint Blockade Therapy
    Li, Junrong
    Wuethrich, Alain
    Zhang, Zhen
    Wang, Jing
    Lin, Lynlee L.
    Behren, Andreas
    Wang, Yuling
    Trau, Matt
    ANALYTICAL CHEMISTRY, 2022, 94 (42) : 14573 - 14582
  • [39] Baseline endogenous corticosteroid as a biomarker for predicting response to immune checkpoint blockade in patients with metastatic cancer.
    Wang, Jun
    Cui, Yu
    Guan, Yaping
    Yin, Beibei
    Xie, Qi
    JOURNAL OF CLINICAL ONCOLOGY, 2022, 40 (16)
  • [40] Predicting non-small cell lung cancer response to immune checkpoint inhibitors with machine learning based on heterogeneous biomarkers
    Schmutz, Hugo
    Mattei, Pierre-Alexandre
    Tricarico, Pierre
    Contu, Sara
    Hugonnet, Florent
    Guisier, Florian
    Decazes, Pierre
    Chardin, David
    Humbert, Olivier
    JOURNAL OF CLINICAL ONCOLOGY, 2023, 41 (16)