Department of Computer Science and Engineering, Manipal Institute of Technology (MIT), Manipal Academy of Higher Education(MAHE), Manipal, India.
Department of I&CT, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal, India.
Med Biol Eng Comput. 2019 Aug;57(8):1783-1811. doi: 10.1007/s11517-019-01984-1. Epub 2019 Jun 14.
Blood is composed of white blood cells, red blood cells, and platelets. Segmentation of the blood smear cells and extraction of features of the cells is essential in the field of medicine. Acute lymphoblastic leukemia is a form of blood cancer caused due to the abnormal increase in the production of immature white blood cells in the bone marrow. It mostly affects the children below 5 years and adults above 50 years of age. Due to the late diagnosis and cost of the devices used for the determination, the mortality rate has increased drastically. Flow cytometry technique that performs automated counting fails to identify the abnormal cells. Manual recount performed using hemocytometer are prone to errors and are imprecise. The proposed work aims to survey different computer-aided system techniques used to segment the blood smear image. The primary objective here is to derive knowledge from the different methodologies used for extracting features from white blood cells and develop a system that would accurately segment the blood smear image by overcoming the drawbacks of the previous works. The objective mentioned above is achieved in two ways. Firstly, a novel algorithm is developed to segment the nucleus and cytoplasm of white blood cell. Secondly, a model is built to extract the features and train the model. The different supervised classifiers are compared, and the one with the highest accuracy is used for the classification. Six hundred images are used in the experimentation. InfoGainAttributeEval and the Ranker Search method are used to achieve the feature selection which in turn helps in improvising the classifier performance. The result shows the classification of the acute lymphoblastic leukemia into its three respective categories namely: ALL-L1, ALL-L2, ALL-L3. The model can differentiate between a normal peripheral blood smear and an abnormal blood smear. The extracted feature values of a cancerous cell and a normal cell are also shown. The performance of the model is evaluated using the test images stained with various stains. The proposed algorithm achieved an overall accuracy of 98.6%. The promising results show that it can be used as a diagnostic tool by the pathologists. Graphical abstract.
血液由白细胞、红细胞和血小板组成。在医学领域,血液涂片细胞的分割和细胞特征的提取是至关重要的。急性淋巴细胞白血病是一种血癌,由于骨髓中不成熟白细胞的异常增加而引起。它主要影响 5 岁以下的儿童和 50 岁以上的成年人。由于诊断较晚以及用于确定的设备成本较高,死亡率急剧上升。执行自动计数的流式细胞术技术无法识别异常细胞。使用血细胞计数器进行的手动重计容易出错且不准确。本研究旨在调查用于分割血涂片图像的不同计算机辅助系统技术。主要目的是从用于从白细胞中提取特征的不同方法中获取知识,并开发一种能够克服先前工作的缺点的系统,准确地分割血涂片图像。上述目标通过两种方式实现。首先,开发了一种新算法来分割白细胞的核和细胞质。其次,建立了一个模型来提取特征并训练模型。比较了不同的监督分类器,并使用具有最高准确性的分类器进行分类。在实验中使用了 600 张图像。InfoGainAttributeEval 和 Ranker Search 方法用于实现特征选择,这反过来有助于提高分类器的性能。结果显示将急性淋巴细胞白血病分为三个相应类别:ALL-L1、ALL-L2、ALL-L3。该模型可以区分正常外周血涂片和异常血涂片。还显示了癌细胞和正常细胞的提取特征值。使用用不同染色剂染色的测试图像评估模型的性能。所提出的算法的整体准确率达到 98.6%。有希望的结果表明,它可以作为病理学家的诊断工具。