Kaur Manjit, AlZubi Ahmad Ali, Jain Arpit, Singh Dilbag, Yadav Vaishali, Alkhayyat Ahmed
School of Computer Science and Artificial Intelligence, SR University, Warangal 506371, India.
Department of Computer Science, Community College, King Saud University, Riyadh 11421, Saudi Arabia.
Diagnostics (Basel). 2023 Aug 24;13(17):2752. doi: 10.3390/diagnostics13172752.
Acute lymphoblastic leukemia (ALL) is a life-threatening hematological malignancy that requires early and accurate diagnosis for effective treatment. However, the manual diagnosis of ALL is time-consuming and can delay critical treatment decisions. To address this challenge, researchers have turned to advanced technologies such as deep learning (DL) models. These models leverage the power of artificial intelligence to analyze complex patterns and features in medical images and data, enabling faster and more accurate diagnosis of ALL. However, the existing DL-based ALL diagnosis suffers from various challenges, such as computational complexity, sensitivity to hyperparameters, and difficulties with noisy or low-quality input images. To address these issues, in this paper, we propose a novel Deep Skip Connections-Based Dense Network (DSCNet) tailored for ALL diagnosis using peripheral blood smear images. The DSCNet architecture integrates skip connections, custom image filtering, Kullback-Leibler (KL) divergence loss, and dropout regularization to enhance its performance and generalization abilities. DSCNet leverages skip connections to address the vanishing gradient problem and capture long-range dependencies, while custom image filtering enhances relevant features in the input data. KL divergence loss serves as the optimization objective, enabling accurate predictions. Dropout regularization is employed to prevent overfitting during training, promoting robust feature representations. The experiments conducted on an augmented dataset for ALL highlight the effectiveness of DSCNet. The proposed DSCNet outperforms competing methods, showcasing significant enhancements in accuracy, sensitivity, specificity, F-score, and area under the curve (AUC), achieving increases of 1.25%, 1.32%, 1.12%, 1.24%, and 1.23%, respectively. The proposed approach demonstrates the potential of DSCNet as an effective tool for early and accurate ALL diagnosis, with potential applications in clinical settings to improve patient outcomes and advance leukemia detection research.
急性淋巴细胞白血病(ALL)是一种危及生命的血液系统恶性肿瘤,需要早期准确诊断以便进行有效治疗。然而,ALL的人工诊断耗时且可能延误关键治疗决策。为应对这一挑战,研究人员已转向深度学习(DL)模型等先进技术。这些模型利用人工智能的力量来分析医学图像和数据中的复杂模式及特征,从而能够更快、更准确地诊断ALL。然而,现有的基于DL的ALL诊断面临各种挑战,如计算复杂性、对超参数的敏感性以及处理噪声或低质量输入图像的困难。为解决这些问题,在本文中,我们提出了一种新颖的基于深度跳跃连接的密集网络(DSCNet),专为使用外周血涂片图像进行ALL诊断而定制。DSCNet架构集成了跳跃连接、自定义图像滤波、库尔贝克 - 莱布勒(KL)散度损失和随机失活正则化,以增强其性能和泛化能力。DSCNet利用跳跃连接来解决梯度消失问题并捕捉长距离依赖关系,同时自定义图像滤波增强输入数据中的相关特征。KL散度损失用作优化目标,实现准确预测。随机失活正则化用于防止训练期间的过拟合,促进稳健的特征表示。在ALL增强数据集上进行的实验突出了DSCNet的有效性。所提出的DSCNet优于竞争方法,在准确率、灵敏度、特异性、F分数和曲线下面积(AUC)方面均有显著提高,分别提高了1.25%、1.32%、1.12%、1.24%和1.23%。所提出的方法证明了DSCNet作为早期准确ALL诊断的有效工具的潜力,在临床环境中具有潜在应用,可改善患者预后并推进白血病检测研究。