CAPTURING THE DIFFERENCES BETWEEN HUMORAL IMMUNITY IN THE NORMAL AND TUMOR ENVIRONMENTS FROM REPERTOIRE-SEQ OF B-CELL RECEPTORS USING SUPERVISED MACHINE LEARNING

Capturing the differences between humoral immunity in the normal and tumor environments from repertoire-seq of B-cell receptors using supervised machine learning

Capturing the differences between humoral immunity in the normal and tumor environments from repertoire-seq of B-cell receptors using supervised machine learning

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Abstract Background The recent success of immunotherapy in treating tumors has attracted increasing interest in research related to the adaptive immune system in the tumor microenvironment.Recent advances in next-generation sequencing technology enabled the sequencing of whole T-cell receptors (TCRs) and B-cell receptors (BCRs)/immunoglobulins (Igs) in the tumor microenvironment.Since BCRs/Igs in tumor tissues have high affinities for tumor-specific antigens, the patterns of their amino acid sequences and other sequence-independent features such as the number of somatic hypermutations (SHMs) may differ between the normal and tumor microenvironments.

However, given the high diversity of BCRs/Igs and the rarity of recurrent sequences among individuals, it is far more difficult to capture such differences in BCR/Ig sequences than in TCR sequences.The aim of this study was to explore the possibility of discriminating BCRs/Igs in tumor and in normal jilungin dreaming tea tissues, by capturing these differences using supervised machine learning methods applied to RNA sequences of BCRs/Igs.Results RNA sequences of BCRs/Igs were obtained from matched normal and tumor specimens from 90 gastric cancer patients.

BCR/Ig-features obtained in Rep-Seq were used to classify individual BCR/Ig sequences into normal or tumor classes.Different machine learning models using various features were constructed as well as gradient boosting machine (GBM) classifier combining these models.The results demonstrated that BCR/Ig sequences between normal and tumor microenvironments exhibit their differences.

Next, by using a GBM trained to classify individual BCR/Ig sequences, we tried to classify sets of BCR/Ig sequences into normal or tumor classes.As a result, an area under the curve (AUC) value of 0.826 was achieved, suggesting that BCR/Ig repertoires have deva curl arc angel distinct sequence-level features in normal and tumor tissues.

Conclusions To the best of our knowledge, this is the first study to show that BCR/Ig sequences derived from tumor and normal tissues have globally distinct patterns, and that these tissues can be effectively differentiated using BCR/Ig repertoires.

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