IVCVLGQMMay 6, 2022

RCMNet: A deep learning model assists CAR-T therapy for leukemia

arXiv:2205.04230v149 citationsh-index: 142
Originality Incremental advance
AI Analysis

This work addresses the problem of accurate cell identification for CAR-T therapy in leukemia patients, though it is incremental as it builds on existing methods with hybrid improvements.

The researchers tackled the challenge of identifying CAR-T cells for leukemia therapy by developing RCMNet, a deep learning model combining CNN and Transformer, which achieved 99.63% accuracy on a public dataset and 83.36% on a clinical CAR-T dataset.

Acute leukemia is a type of blood cancer with a high mortality rate. Current therapeutic methods include bone marrow transplantation, supportive therapy, and chemotherapy. Although a satisfactory remission of the disease can be achieved, the risk of recurrence is still high. Therefore, novel treatments are demanding. Chimeric antigen receptor-T (CAR-T) therapy has emerged as a promising approach to treat and cure acute leukemia. To harness the therapeutic potential of CAR-T cell therapy for blood diseases, reliable cell morphological identification is crucial. Nevertheless, the identification of CAR-T cells is a big challenge posed by their phenotypic similarity with other blood cells. To address this substantial clinical challenge, herein we first construct a CAR-T dataset with 500 original microscopy images after staining. Following that, we create a novel integrated model called RCMNet (ResNet18 with CBAM and MHSA) that combines the convolutional neural network (CNN) and Transformer. The model shows 99.63% top-1 accuracy on the public dataset. Compared with previous reports, our model obtains satisfactory results for image classification. Although testing on the CAR-T cells dataset, a decent performance is observed, which is attributed to the limited size of the dataset. Transfer learning is adapted for RCMNet and a maximum of 83.36% accuracy has been achieved, which is higher than other SOTA models. The study evaluates the effectiveness of RCMNet on a big public dataset and translates it to a clinical dataset for diagnostic applications.

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