BSNEU-net:基于块特征图失真和可切换归一化的增强联合网,用于在异构数据集上检测急性白血病。

Rabul Saikia, Roopam Deka, Anupam Sarma, Salam Shuleenda Devi
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摘要

急性白血病的特征是未成熟白细胞(WBC)在血液和骨髓中迅速增殖。根据细胞系起源是淋巴细胞还是髓细胞,急性白血病可分为急性淋巴细胞白血病(ALL)和急性髓细胞白血病(AML)。深度学习(DL)和人工智能(AI)通过帮助临床医生快速识别疾病、减少工作量和提高诊断准确性,正在给医学科学带来革命性的变化。本文提出了一种基于深度学习的新型 BSNEU 网框架,用于检测急性白血病。它由 4 个联合块(UB)组成,并在每个联合块中加入了带可切换归一化(SN)的块特征图变形(BFMD)。联合块采用联合卷积来提取更多的判别特征。BFMD 用于获取更多通用模式,以尽量减少过拟合,而 SN 层则用于提高模型的收敛性和通用能力。在卷积层中统一使用批次归一化对迷你批次维度变化很敏感,而通过加入 SN 层可以有效解决这一问题。在此,我们提出了一个由 2400 张 ALL、AML 和健康病例的血液涂片图像组成的新数据集,因为 DL 方法需要一个规模可观且注释清晰的数据集来解决过拟合问题。此外,通过合并四种可公开访问的 ALL、AML 和健康病例基准数据集,创建了由 2700 张涂片图像组成的异构数据集。BSNEU-net 模型在新型数据集上取得了 99.37% 的准确率,在异构数据集上取得了 99.44% 的准确率,表现出色。对比分析表明,与其他方案相比,所提出的方法更具优势。
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BSNEU-net: Block Feature Map Distortion and Switchable Normalization-Based Enhanced Union-net for Acute Leukemia Detection on Heterogeneous Dataset.

Acute leukemia is characterized by the swift proliferation of immature white blood cells (WBC) in the blood and bone marrow. It is categorized into acute lymphoblastic leukemia (ALL) and acute myeloid leukemia (AML), depending on whether the cell-line origin is lymphoid or myeloid, respectively. Deep learning (DL) and artificial intelligence (AI) are revolutionizing medical sciences by assisting clinicians with rapid illness identification, reducing workload, and enhancing diagnostic accuracy. This paper proposes a DL-based novel BSNEU-net framework to detect acute leukemia. It comprises 4 Union Blocks (UB) and incorporates block feature map distortion (BFMD) with switchable normalization (SN) in each UB. The UB employs union convolution to extract more discriminant features. The BFMD is adapted to acquire more generalized patterns to minimize overfitting, whereas SN layers are appended to improve the model's convergence and generalization capabilities. The uniform utilization of batch normalization across convolution layers is sensitive to the mini-batch dimension changes, which is effectively remedied by incorporating an SN layer. Here, a new dataset comprising 2400 blood smear images of ALL, AML, and healthy cases is proposed, as DL methodologies necessitate a sizeable and well-annotated dataset to combat overfitting issues. Further, a heterogeneous dataset comprising 2700 smear images is created by combining four publicly accessible benchmark datasets of ALL, AML, and healthy cases. The BSNEU-net model achieved excellent performance with 99.37% accuracy on the novel dataset and 99.44% accuracy on the heterogeneous dataset. The comparative analysis signifies the superiority of the proposed methodology with comparing schemes.

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