Bibi Nighat, Sikandar Misba, Ud Din Ikram, Almogren Ahmad, Ali Sikandar
Department of Information Technology, TheUniversity of Haripur, Haripur 22620, Pakistan.
Department of Computer Science, College of Computer and Information Sciences, King Saud University, Riyadh 11633, Saudi Arabia.
J Healthc Eng. 2020 Dec 3;2020:6648574. doi: 10.1155/2020/6648574. eCollection 2020.
For the last few years, computer-aided diagnosis (CAD) has been increasing rapidly. Numerous machine learning algorithms have been developed to identify different diseases, e.g., leukemia. Leukemia is a white blood cells- (WBC-) related illness affecting the bone marrow and/or blood. A quick, safe, and accurate early-stage diagnosis of leukemia plays a key role in curing and saving patients' lives. Based on developments, leukemia consists of two primary forms, i.e., acute and chronic leukemia. Each form can be subcategorized as myeloid and lymphoid. There are, therefore, four leukemia subtypes. Various approaches have been developed to identify leukemia with respect to its subtypes. However, in terms of effectiveness, learning process, and performance, these methods require improvements. This study provides an Internet of Medical Things- (IoMT-) based framework to enhance and provide a quick and safe identification of leukemia. In the proposed IoMT system, with the help of cloud computing, clinical gadgets are linked to network resources. The system allows real-time coordination for testing, diagnosis, and treatment of leukemia among patients and healthcare professionals, which may save both time and efforts of patients and clinicians. Moreover, the presented framework is also helpful for resolving the problems of patients with critical condition in pandemics such as COVID-19. The methods used for the identification of leukemia subtypes in the suggested framework are Dense Convolutional Neural Network (DenseNet-121) and Residual Convolutional Neural Network (ResNet-34). Two publicly available datasets for leukemia, i.e., ALL-IDB and ASH image bank, are used in this study. The results demonstrated that the suggested models supersede the other well-known machine learning algorithms used for healthy-versus-leukemia-subtypes identification.
在过去几年中,计算机辅助诊断(CAD)发展迅速。人们开发了众多机器学习算法来识别不同疾病,例如白血病。白血病是一种与白细胞(WBC)相关的疾病,会影响骨髓和/或血液。白血病的快速、安全且准确的早期诊断对治愈和挽救患者生命起着关键作用。基于发展情况,白血病主要有两种形式,即急性白血病和慢性白血病。每种形式又可细分为髓系和淋系。因此,共有四种白血病亚型。人们已开发出各种方法来识别白血病亚型。然而,在有效性、学习过程和性能方面,这些方法仍需改进。本研究提供了一个基于医疗物联网(IoMT)的框架,以加强并实现对白血病的快速安全识别。在所提出的IoMT系统中,借助云计算,临床设备与网络资源相连。该系统允许患者和医护人员之间就白血病的检测、诊断和治疗进行实时协调,这可以节省患者和临床医生的时间和精力。此外,所提出的框架对于解决COVID - 19等大流行期间重症患者的问题也很有帮助。在所建议的框架中用于识别白血病亚型的方法是密集卷积神经网络(DenseNet - 121)和残差卷积神经网络(ResNet - 34)。本研究使用了两个公开可用的白血病数据集,即ALL - IDB和ASH图像库。结果表明,所建议的模型优于其他用于健康与白血病亚型识别的知名机器学习算法。