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A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study.

Publication ,  Conference
Ghasemi Saghand, P; El Naqa, I; Tan, AC; Xie, M; Dai, D; Chen, JL; Ratan, A; McCarter, M; Carpten, JD; Shah, H; Ikeguchi, A; Tripathi, A ...
Published in: Journal of Clinical Oncology
June 1, 2022

2619 Background: Immune checkpoint inhibitors (ICIs) have made significant improvements in the treatment of cancer patients (pts), but many continue to experience primary or secondary resistance. Here, we leveraged clinical and genomic data to identify prognostic biomarkers in pts treated with ICIs utilizing a pan-cancer approach. Methods: Pts were enrolled to the Total Cancer Care protocol across 18 cancer centers within the Oncology Research Information Exchange Network (ORIEN). RNA-seq was performed on tumors following the RSEM pipeline and gene expressions were quantified as Transcript Per Million (TPM) and were logarithmically normalized. An Auto-Encoder Survival Deep Network (AE-SDN) architecture was developed that combined the reconstruction loss of AE with Cox regression for modeling time to event. For comparison, immunoscore for each pt was calculated based on the estimated densities of tumor CD3+ and CD8+ T cells (Galon, 2020) utilizing CIBERSORTx. The quality of overall survival (OS) predictions was assessed using Harrell’s concordance index (C-index). Log-rank test was used to assess stratified group differences (by ICI or cancer histology) along with Kaplan-Meier (KM) survival analysis of AE-SDN and immunoscore. Results: Pts (n=522) with 4 cancer types including melanoma (n=125), renal cell carcinoma (n=149), non-small cell lung cancer (n=128) and head and neck cancer (n=120) treated with 6 ICI regimens were included in this analysis. ICI regimens were nivolumab (n=219), pembrolizumab (n=202), ipilimumab+nivolumab (n=69), ipilimumab (n=30), avelumab (n=1) and cemiplimab (n=1). The Table summarizes the overall C-index and associated 95% CIs and log-rank P values for the entire cohort (regardless of histology) resulting from our proposed AE-SDN model and the separate estimated immunoscore categorization. AE-SDN top selected genes were mostly related to immunity, carcinogenesis and tumor suppression. The corresponding KM plots showed significantly wider separations of the survival curves in favor of our proposed AE-SDN model relative to the immunoscore with more than 20% improvement in prediction power. Conclusions: Deep network machine learning analysis is a promising approach to identifying relevant prognostic biomarkers in cancer pts treated with ICI. This may lead to novel therapeutic predictive signatures and identification of mechanisms of ICI resistance. Our AE-SDN gene expression signature was significantly prognostic and outperformed the estimated CD3+, CD8+ T Cell immunoscore. Further refinements to our prediction power are ongoing along with more advanced neural network architectures to elucidate related functional pathways. [Table: see text]

Duke Scholars

Published In

Journal of Clinical Oncology

DOI

EISSN

1527-7755

ISSN

0732-183X

Publication Date

June 1, 2022

Volume

40

Issue

16_suppl

Start / End Page

2619 / 2619

Publisher

American Society of Clinical Oncology (ASCO)

Related Subject Headings

  • Oncology & Carcinogenesis
  • 3211 Oncology and carcinogenesis
  • 1112 Oncology and Carcinogenesis
  • 1103 Clinical Sciences
 

Citation

APA
Chicago
ICMJE
MLA
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Ghasemi Saghand, P., El Naqa, I., Tan, A. C., Xie, M., Dai, D., Chen, J. L., … Tarhini, A. A. (2022). A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study. In Journal of Clinical Oncology (Vol. 40, pp. 2619–2619). American Society of Clinical Oncology (ASCO). https://doi.org/10.1200/jco.2022.40.16_suppl.2619
Ghasemi Saghand, Payman, Issam El Naqa, Aik Choon Tan, Mengyu Xie, Donghai Dai, James Lin Chen, Aakrosh Ratan, et al. “A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study.” In Journal of Clinical Oncology, 40:2619–2619. American Society of Clinical Oncology (ASCO), 2022. https://doi.org/10.1200/jco.2022.40.16_suppl.2619.
Ghasemi Saghand P, El Naqa I, Tan AC, Xie M, Dai D, Chen JL, et al. A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study. In: Journal of Clinical Oncology. American Society of Clinical Oncology (ASCO); 2022. p. 2619–2619.
Ghasemi Saghand, Payman, et al. “A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study.Journal of Clinical Oncology, vol. 40, no. 16_suppl, American Society of Clinical Oncology (ASCO), 2022, pp. 2619–2619. Crossref, doi:10.1200/jco.2022.40.16_suppl.2619.
Ghasemi Saghand P, El Naqa I, Tan AC, Xie M, Dai D, Chen JL, Ratan A, McCarter M, Carpten JD, Shah H, Ikeguchi A, Tripathi A, Puzanov I, Arnold SM, Churchman ML, Hwu P, Conejo-Garcia J, Dalton WS, Weiner GJ, Tarhini AA. A deep learning approach utilizing clinical and molecular data for identifying prognostic biomarkers in patients treated with immune checkpoint inhibitors: An ORIEN pan-cancer study. Journal of Clinical Oncology. American Society of Clinical Oncology (ASCO); 2022. p. 2619–2619.

Published In

Journal of Clinical Oncology

DOI

EISSN

1527-7755

ISSN

0732-183X

Publication Date

June 1, 2022

Volume

40

Issue

16_suppl

Start / End Page

2619 / 2619

Publisher

American Society of Clinical Oncology (ASCO)

Related Subject Headings

  • Oncology & Carcinogenesis
  • 3211 Oncology and carcinogenesis
  • 1112 Oncology and Carcinogenesis
  • 1103 Clinical Sciences