Department of Computing, Faculty of Arts, Computing and Creative Industry, Universiti Pendidikan Sultan Idris, Malaysia.
Department of Computing, Faculty of Arts, Computing and Creative Industry, Universiti Pendidikan Sultan Idris, Malaysia.
Comput Methods Programs Biomed. 2018 May;158:93-112. doi: 10.1016/j.cmpb.2018.02.005. Epub 2018 Feb 3.
Acute leukaemia diagnosis is a field requiring automated solutions, tools and methods and the ability to facilitate early detection and even prediction. Many studies have focused on the automatic detection and classification of acute leukaemia and their subtypes to promote enable highly accurate diagnosis.
This study aimed to review and analyse literature related to the detection and classification of acute leukaemia. The factors that were considered to improve understanding on the field's various contextual aspects in published studies and characteristics were motivation, open challenges that confronted researchers and recommendations presented to researchers to enhance this vital research area.
We systematically searched all articles about the classification and detection of acute leukaemia, as well as their evaluation and benchmarking, in three main databases: ScienceDirect, Web of Science and IEEE Xplore from 2007 to 2017. These indices were considered to be sufficiently extensive to encompass our field of literature.
Based on our inclusion and exclusion criteria, 89 articles were selected. Most studies (58/89) focused on the methods or algorithms of acute leukaemia classification, a number of papers (22/89) covered the developed systems for the detection or diagnosis of acute leukaemia and few papers (5/89) presented evaluation and comparative studies. The smallest portion (4/89) of articles comprised reviews and surveys.
Acute leukaemia diagnosis, which is a field requiring automated solutions, tools and methods, entails the ability to facilitate early detection or even prediction. Many studies have been performed on the automatic detection and classification of acute leukaemia and their subtypes to promote accurate diagnosis.
Research areas on medical-image classification vary, but they are all equally vital. We expect this systematic review to help emphasise current research opportunities and thus extend and create additional research fields.
急性白血病的诊断是一个需要自动化解决方案、工具和方法的领域,并且能够促进早期发现甚至预测。许多研究都集中在急性白血病及其亚型的自动检测和分类上,以促进高度准确的诊断。
本研究旨在回顾和分析与急性白血病检测和分类相关的文献。考虑了提高对发表研究中该领域各种上下文方面和特征的理解的因素,包括动机、研究人员面临的开放性挑战以及向研究人员提出的增强这一重要研究领域的建议。
我们从 2007 年到 2017 年在三个主要数据库中系统地搜索了所有关于急性白血病分类和检测以及评估和基准测试的文章:ScienceDirect、Web of Science 和 IEEE Xplore。这些索引被认为足够广泛,可以涵盖我们的文献领域。
根据我们的纳入和排除标准,选择了 89 篇文章。大多数研究(58/89)集中在急性白血病分类的方法或算法上,许多论文(22/89)涵盖了急性白血病检测或诊断的开发系统,少数论文(5/89)提出了评估和比较研究。最小的部分(4/89)的文章包括综述和调查。
急性白血病诊断是一个需要自动化解决方案、工具和方法的领域,需要能够促进早期检测甚至预测。许多研究都集中在急性白血病及其亚型的自动检测和分类上,以促进准确诊断。
医学图像分类的研究领域各不相同,但都同样重要。我们希望本系统综述能够帮助强调当前的研究机会,从而扩展和创造更多的研究领域。