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High‐Accuracy and Lightweight Image Classification Network for Optimizing Lymphoblastic Leukemia Diagnosis

Liye Mei, Chao Lian, Suyang Han, Shuangtong Jin, Jing He, Lan Dong, Hongzhu Wang, Hui Shen, Cheng Lei, Bei Xiong

2024Microscopy Research and Technique12 citationsDOI

Abstract

Leukemia is a hematological malignancy that significantly impacts the human immune system. Early detection helps to effectively manage and treat cancer. Although deep learning techniques hold promise for early detection of blood disorders, their effectiveness is often limited by the physical constraints of available datasets and deployed devices. For this investigation, we collect an excellent-quality dataset of 17,826 morphological bone marrow cell images from 85 patients with lymphoproliferative neoplasms. We employ a progressive shrinking approach, which integrates a comprehensive pruning technique across multiple dimensions, including width, depth, resolution, and kernel size, to train our lightweight model. The proposed model achieves rapid identification of acute lymphoblastic leukemia, chronic lymphocytic leukemia, and other bone marrow cell types with an accuracy of 92.51% and a throughput of 111 slides per second, while comprising only 6.4 million parameters. This model significantly contributes to leukemia diagnosis, particularly in the rapid and accurate identification of lymphatic system diseases, and provides potential opportunities to enhance the efficiency and accuracy of medical experts in the diagnosis and treatment of lymphocytic leukemia.

Topics & Concepts

LeukemiaIdentification (biology)Bone marrowLymphoblastic LeukemiaChronic lymphocytic leukemiaCancerMedicineComputer scienceAcute lymphocytic leukemiaMalignancyArtificial intelligenceImmunologyPathologyInternal medicineBiologyBotanyDigital Imaging for Blood DiseasesAI in cancer detectionCOVID-19 diagnosis using AI
High‐Accuracy and Lightweight Image Classification Network for Optimizing Lymphoblastic Leukemia Diagnosis | Litcius