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Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning

Publication ,  Conference
Albitar, M; Xu-Monette, ZY; Shahbaba, B; De Dios, I; Wang, Y; Manman, D; Tzankov, A; Visco, C; Bhagat, G; Dybkær, K; Tam, W; Hsi, ED; Zu, Y ...
Published in: Blood
November 13, 2019

Introduction: Targeted RNA sequencing using Next Generation Sequencing (NGS) has significant advantages over transcriptome sequencing. In addition to information on mutations, fusion and alternative splicing, RNA quantification using targeted RNA sequencing is sensitive, reproducible and provides better dynamic range. We used targeted RNA sequencing for RNA profiling of diffuse large B-cell lymphoma (DLBCL) and explored its utility in the sub-classification of DLBC to ABC and GCB. Method: RNA extracted from 441 FFPE lymphnode samples with DLBC lymphoma and sequenced targeting 1408 genes. These cases were previously subclassified as ABC vs GCB using expression profiling and immunohistochemistry. We first normalized RNA expression data to PAX5 expression, then we tried to narrow down important markers using univariate significance tests. Setting the cutoff for false discovery rate at 0.0001, 48 variables remained significant, including 46 RNA levels and two genes (MYD88 and EZH2) mutation status. Using 60% of samples as training set, we used multiple statistical approaches for classification. Deep learning emerged as the best approach. We used autoencoder with 5 hidden layers and developed a model for classification of ABC vs GCB. To further improve on classification, we divided patients in each subgroup based on survival using simple tree model. In this tree model, expression level of CD58 emerged as a powerful prognostic marker for the ABC group and RLTPR expression in the GCB group. Results: Using probability of scoring developed based on deep learning and logestic regression, approximately 30% of the cases had a score between 0.5 and 0.75. For the remaining 70% of patients, the ABC vs GCB classification showed sensitivity and specificity of 96% and 97% for the testing set. We also applied the same approach to 60 independent cases classified using NanoString (Lymph2Cx). Our model showed sensitivity and specificity of 96% and 97% in the NanoString independent cases. Using the tree model for further classification of the ABC and GCB classes, CD58 mRNA levels separated the ABC group into two subgroups (ABC1 and ABC2) and RLTPR mRNA separated the GCB into two subgroups (GCB1 and GCB2) with significant difference in overall survival (P=0.0010) and progression-free survival (PFS) (P=0.0027). Conclusion: Targeted RNA sequencing is very reliable and practical for the subclassification of DLBCL and can provide clinical-grade reproducible test for prognostically subclassification of DLBCL.Figure

Duke Scholars

Published In

Blood

DOI

EISSN

1528-0020

ISSN

0006-4971

Publication Date

November 13, 2019

Volume

134

Issue

Supplement_1

Start / End Page

2891 / 2891

Publisher

American Society of Hematology

Related Subject Headings

  • Immunology
  • 3213 Paediatrics
  • 3201 Cardiovascular medicine and haematology
  • 3101 Biochemistry and cell biology
  • 1114 Paediatrics and Reproductive Medicine
  • 1103 Clinical Sciences
  • 1102 Cardiorespiratory Medicine and Haematology
 

Citation

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MLA
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Albitar, M., Xu-Monette, Z. Y., Shahbaba, B., De Dios, I., Wang, Y., Manman, D., … Young, K. H. (2019). Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning. In Blood (Vol. 134, pp. 2891–2891). American Society of Hematology. https://doi.org/10.1182/blood-2019-126927
Albitar, Maher, Zijun Yidan Xu-Monette, Babak Shahbaba, Ivan De Dios, Yingjun Wang, Deng Manman, Alexandar Tzankov, et al. “Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning.” In Blood, 134:2891–2891. American Society of Hematology, 2019. https://doi.org/10.1182/blood-2019-126927.
Albitar M, Xu-Monette ZY, Shahbaba B, De Dios I, Wang Y, Manman D, et al. Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning. In: Blood. American Society of Hematology; 2019. p. 2891–2891.
Albitar, Maher, et al. “Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning.” Blood, vol. 134, no. Supplement_1, American Society of Hematology, 2019, pp. 2891–2891. Crossref, doi:10.1182/blood-2019-126927.
Albitar M, Xu-Monette ZY, Shahbaba B, De Dios I, Wang Y, Manman D, Tzankov A, Visco C, Bhagat G, Dybkær K, Tam W, Hsi ED, Ponzoni M, Ferreri AJM, Moller M, Piris MA, Van Krieken JHJM, Zu Y, Ma W, Kantarjian HM, Li Y, Young KH. Cell of Origin Classification of DLBCL Using Targeted NGS Expression Profiling and Deep Learning. Blood. American Society of Hematology; 2019. p. 2891–2891.

Published In

Blood

DOI

EISSN

1528-0020

ISSN

0006-4971

Publication Date

November 13, 2019

Volume

134

Issue

Supplement_1

Start / End Page

2891 / 2891

Publisher

American Society of Hematology

Related Subject Headings

  • Immunology
  • 3213 Paediatrics
  • 3201 Cardiovascular medicine and haematology
  • 3101 Biochemistry and cell biology
  • 1114 Paediatrics and Reproductive Medicine
  • 1103 Clinical Sciences
  • 1102 Cardiorespiratory Medicine and Haematology