Maity Maitreya, Mungle Tushar, Dhane Dhiraj, Maiti A K, Chakraborty Chandan
School of Medical Science and Technology, Indian Institute of Technology Kharagpur, Kharagpur, West Bengal, 721302, India.
Midnapore Medical College and Hospital, Midnapore, West Bengal, 721101, India.
J Med Syst. 2017 Apr;41(4):56. doi: 10.1007/s10916-017-0691-x. Epub 2017 Feb 28.
The analysis of pathophysiological change to erythrocytes is important for early diagnosis of anaemia. The manual assessment of pathology slides is time-consuming and complicated regarding various types of cell identification. This paper proposes an ensemble rule-based decision-making approach for morphological classification of erythrocytes. Firstly, the digital microscopic blood smear images are pre-processed for removal of spurious regions followed by colour normalisation and thresholding. The erythrocytes are segmented from background image using the watershed algorithm. The shape features are then extracted from the segmented image to detect shape abnormality present in microscopic blood smear images. The decision about the abnormality is taken using proposed multiple rule-based expert systems. The deciding factor is majority ensemble voting for abnormally shaped erythrocytes. Here, shape-based features are considered for nine different types of abnormal erythrocytes including normal erythrocytes. Further, the adaptive boosting algorithm is used to generate multiple decision tree models where each model tree generates an individual rule set. The supervised classification method is followed to generate rules using a C4.5 decision tree. The proposed ensemble approach is precise in detecting eight types of abnormal erythrocytes with an overall accuracy of 97.81% and weighted sensitivity of 97.33%, weighted specificity of 99.7%, and weighted precision of 98%. This approach shows the robustness of proposed strategy for erythrocytes classification into abnormal and normal class. The article also clarifies its latent quality to be incorporated in point of care technology solution targeting a rapid clinical assistance.
红细胞病理生理变化的分析对于贫血的早期诊断很重要。对病理切片进行人工评估在识别各类细胞时既耗时又复杂。本文提出一种基于规则的集成决策方法用于红细胞的形态学分类。首先,对数字显微镜下的血液涂片图像进行预处理,去除伪区域,接着进行颜色归一化和阈值处理。使用分水岭算法从背景图像中分割出红细胞。然后从分割后的图像中提取形状特征,以检测显微镜下血液涂片图像中存在的形状异常。利用所提出的基于多条规则的专家系统对异常情况做出决策。决策因素是对形状异常的红细胞进行多数集成投票。在此,针对包括正常红细胞在内的九种不同类型的异常红细胞考虑基于形状的特征。此外,使用自适应增强算法生成多个决策树模型,每个模型树生成一个单独的规则集。采用监督分类方法,使用C4.5决策树生成规则。所提出的集成方法在检测八种类型的异常红细胞方面非常精确,总体准确率为97.81%,加权灵敏度为97.33%,加权特异性为99.7%,加权精度为98%。该方法显示了将红细胞分类为异常和正常类别的所提策略的稳健性。本文还阐明了其潜在质量,可纳入针对快速临床辅助的即时护理技术解决方案中。